Why Gemfury? Push, build, and install  RubyGems npm packages Python packages Maven artifacts PHP packages Go Modules Debian packages RPM packages NuGet packages

Repository URL to install this package:

Details    
python3-numpy / usr / lib / python3 / dist-packages / numpy / random / mtrand.cpython-38-x86_64-linux-gnu.so
Size: Mime:
ELF>`¿@¸®
@8@8¬8¬°°°
"
"àààlŽlŽ}€0ˆI}ÐШ¨¨  ÈÈÈ$$Såtd¨¨¨  Påtd”0”0”0llQåtdRåtd}GNUÀGNU~î\4–Õ6HaU`îÔMÚ>̶ž	Q„"
€ "ý†ePhC)~ñ8:)@„CPÔ%E,2“Ñ`:…4PŒOb²žŸ ¢£¤¥§¨©«¬­¯±²³´µ¶·¸º»¼½¿ÀÁÂÄÅÆÈÉÊËÌÍÏÐÑÒÔÖØÙÚÜÝÞßàáâäåæçèéêëìíîïñòôõö÷ùÃk/ºcÞ9±ç¬=øóѳÅe䞓Å„F3ÙùÞŠ}áh”“ݪ¼<§@*)R³Ìx¥)²yó.GøCYdýSÆTL±Ñù£(a
²Ïgl Ž7ÖÇ“e$a³×eA	ö°Ç|êD\~뒉‹má«ïÍڟ“~3^]Ñ=§9¯pçYh©o…s‰֒À1w˵樅ãç?@•tçÈ	ºa«q3`%%a	Má윀#ßP	ÍH)‡Š¯i­X§ELuʘˆ¥Í#P{Þ`+~ù< X´¥÷m#Œ´ƒ`GÆäPeßÝFZÕۨm¢¡“ãåQkΑÒÓ75£{éëŽWqғš]¥''3}0ñE#ª]
øˆÁ?[eۃ1<‘ؔ΃Ït»SNDg#öÑçÒ/á«ï+ñ*²¼ß‘±êÿ¡·ØeFܽ—ù`cJݼã×á­áÇàmú3
Ó.ÔOM)%
 Ø
®@©:
Î	(ûS€J“‰YµÃf.êD	BÊ
dæ¶
»®	jeœFå
y{¡º×îÇÓnä
n	Ò÷ã
óO®ˆW Ìòv¬)¾	ÔÅ[	À‰	p Þþ
Uù
T²Öàÿ€§
k:ïÈdÎ=Ÿ	²å]cªÍ¤d5Pú Ô{	ÅŸ:ƒd–, ô	ö¾à		(~F"‰v/ÇÚ<?¢wP„(U
‘aÜо_a~¦¾ËŒ¢Ÿ
i€„0£3K‡Wó°¡ó
 ŽŸOð›Æ† ÈQ•éÓp¡7ð‚[>࣒– ¸£€ÈŒ
#+
@‘
›“8˜¥ŠM€¤ŒŠ ¥o‡
à	t
ð	T°€c
 ¿´
“*@ķƺø& 9
P‘3Ñ»¯ÜP’AðÂJ"€—Ê’À}3Áà…§uŽ	ô0¿d§PCk§É|PѯɈ†´B®ð‡\
Ž	Ë5"ó …3Àà _”
 ’QK
=vŽ
ЧÝÙ
“IAPƒþv
’AµŸz¦Vý@¡,á „É
‘){
?^	 ½
@¡٠Ìä}°ª* ÁZp¦à¡D
Ѝ	û
à“£…€|4²°¹[5P™–åàªß
Ðð·­ôÎ:Y¦fŒàž
p…*IÅŠÿ°¢
 Ÿ‰0p£lhÆ‹ÃЀ+ÐÐyТW®° (à ˆ/__gmon_start___ITM_deregisterTMCloneTable_ITM_registerTMCloneTable__cxa_finalize_Py_NoneStructPyBaseObject_TypePyThreadState_Get_Py_CheckRecursionLimitPyObject_Call_Py_CheckRecursiveCallPyErr_OccurredPyExc_SystemErrorPyErr_SetStringPyObject_GetAttrrandom_intervalmemcpy_PyThreadState_UncheckedGetPyFrame_NewPyEval_EvalFrameEx_Py_DeallocPyExc_DeprecationWarningPyErr_WarnFormatPyExc_TypeErrorPyErr_FormatPyExc_OverflowErrorPyLong_AsLongPyLong_TypePyObject_GC_UnTrackPyObject_CallFinalizerFromDeallocPyErr_NormalizeExceptionPyException_SetTraceback__stack_chk_failPyObject_GetAttrStringPyExc_ValueErrorPyOS_snprintfPyErr_WarnExPyModule_GetDictPyDict_NewPyImport_ImportModuleLevelObjectPyList_NewPyDict_GetItemStringPyModule_GetNamePyExc_ImportErrorPyCapsule_IsValidPyCapsule_GetNamePyCapsule_GetPointerPyDict_SetItemStringPyExc_AttributeErrorPyErr_ExceptionMatchesPyErr_ClearPyInterpreterState_GetIDPyModule_NewObjectPyDict_NextPyUnicode_TypememcmpPyObject_RichCompare_Py_TrueStruct_Py_FalseStructPyObject_IsTrue_PyUnicode_ReadyPyDict_GetItemWithErrorPyExc_KeyErrorPyErr_SetObjectPyTuple_PackPySlice_NewPyLong_FromSsize_tPyList_TypePyTuple_TypePyObject_GetItemPyUnicode_AsUnicodePyUnicode_ComparePyTuple_NewPyEval_EvalCodeExPyExc_NameError_PyDict_GetItem_KnownHashPyLong_AsUnsignedLongPyExc_StopIterationPyErr_GivenExceptionMatchesPyFunction_TypePyCFunction_TypePyTraceBack_Here_PyObject_GetDictPtrPyObject_NotPyObject_SetAttrPyUnicode_FromStringPyUnicode_FromFormatPyCode_NewPyMem_ReallocPyMem_MallocPyDict_Copylegacy_waldPyDict_Sizerandom_rayleighlegacy_lognormalrandom_logisticrandom_gumbelrandom_laplacelegacy_powerlegacy_weibulllegacy_paretorandom_vonmiseslegacy_standard_tlegacy_standard_cauchylegacy_noncentral_chisquarelegacy_chisquarelegacy_noncentral_flegacy_flegacy_gammalegacy_standard_gammalegacy_normallegacy_gausslegacy_standard_exponentiallegacy_exponentiallegacy_betaPyDict_SetItemrandom_double_fillPyDict_TypePyNumber_AddPyNumber_InPlaceAddPyExc_RuntimeErrorPy_GetVersionPyFrame_TypePyBytes_FromStringAndSizePyUnicode_FromStringAndSizePyImport_AddModulePyObject_SetAttrStringPyUnicode_InternFromStringPyUnicode_DecodePyObject_HashPyFloat_FromDoublePyLong_FromLongPyLong_FromString__pyx_module_is_main_numpy__random__mtrandPyImport_GetModuleDict_Py_EllipsisObjectPyType_ReadyPyCapsule_NewPyImport_ImportModulePyCapsule_TypePyExc_ExceptionPyType_ModifiedPyCFunction_NewEx_PyDict_NewPresizedPyNumber_IndexPyLong_AsSsize_tPyExc_IndexErrorPyMethod_TypePyObject_SetItemlegacy_random_logserieslegacy_random_geometriclegacy_random_zipflegacy_random_poissonlegacy_negative_binomialPyObject_IsInstancePyNumber_LongPyFloat_TypePySequence_ContainsPyFloat_AsDoublePyObject_SizePyUnicode_FormatPyNumber_RemainderPyExc_UnboundLocalError_PyType_LookupPyEval_SaveThreadlegacy_random_multinomialPyEval_RestoreThreadPySequence_Tuplerandom_positive_intlegacy_random_binomiallegacy_random_hypergeometricrandom_uniformrandom_triangularPySequence_ListPyNumber_MultiplyPyList_AsTuplePyList_AppendPyObject_GetIterPyNumber_InPlaceTrueDividePyNumber_SubtractPyInit_mtrandPyModuleDef_Initlogsqrtpowexprandom_binomial_inversionrandom_binomial_btpefloorloggamlogfactorialexpflogfrandom_floatrandom_doublerandom_standard_exponentialrandom_standard_exponential_fillrandom_standard_exponential_frandom_standard_exponential_zigrandom_standard_exponential_zig_fillrandom_standard_exponential_zig_frandom_gauss_zigrandom_gauss_zig_fillrandom_gauss_zig_frandom_standard_gamma_zigrandom_standard_gamma_zig_fpowfsqrtfrandom_positive_int64random_positive_int32random_uintrandom_normal_zigrandom_exponentialrandom_gammarandom_gamma_floatrandom_betarandom_chisquarerandom_frandom_standard_cauchyrandom_paretorandom_weibullrandom_powerrandom_lognormalrandom_standard_trandom_negative_binomialrandom_noncentral_chisquarerandom_noncentral_frandom_waldacosfmodrandom_geometric_searchrandom_geometric_inversionceilrandom_bounded_uint64random_buffered_bounded_uint32random_buffered_bounded_uint16random_buffered_bounded_uint8random_buffered_bounded_boolrandom_bounded_uint64_fillrandom_bounded_uint32_fillrandom_bounded_uint16_fillrandom_bounded_uint8_fillrandom_bounded_bool_filllibm.so.6libc.so.6GLIBC_2.14GLIBC_2.2.5GLIBC_2.4GLIBC_2.29GLIBC_2.271@”‘–;ui	Fii
R'ui	F‰‘–\‡‘–g`9 9à“à“@k
0Ê
Pk
€Î
`k
ÀÉ
pk
ÀÉ
€k
ÐÒ
ˆk
(Ò
k
ÀÉ
 k
HÊ
¨k
ÀÉ
Àk
ÀÉ
Ðk
ÀÉ
àk
ðÍ
èk
°Ï
ðk
ÀÉ
øk
°Ð
 l
ÐÒ
(l
ÀÉ
0l
Ê
8l
8Ì
`l
ðÍ
hl
°Ï
pl
ÀÉ
€l
ðÍ
ˆl
°Ï
l
ÀÉ
 l
ÀÉ
Àl
`Î
Èl
HÊ
Ðl
ÀÉ
àl
Ê
èl
ÀÉ
m
Ê
m
HÊ
m
ÀÉ
 m
èÐ
(m
øÐ
0m
ÀÉ
@m
èÐ
Hm
øÐ
Pm
ØÌ
Xm
ÀÉ
pm
Ñ
xm
ÀÉ
 m
Ñ
¨m
ØÌ
°m
ÀÉ
Àm
ÀÉ
Ðm
Ñ
Øm
ÀÉ
n
˜Í
n
èÎ
n
ÀÉ
 n
ÐÒ
(n
ÀÉ
@n
ÐÒ
Hn
ÀÉ
`n
ÐÒ
hn
ÀÉ
€n
`Î
ˆn
HÊ
n
ÀÉ
 n
`Î
¨n
HÊ
°n
ÀÉ
Àn
`Î
Èn
HÊ
Ðn
ÀÉ
àn
ØÍ
èn
ÐÉ
ðn
ÀÉ
o
HÊ
o
ÀÉ
 o
ØÍ
(o
HÊ
0o
ÀÉ
@o
˜Î
Ho
¸Í
Po
pÊ
Xo
ÀÉ
€o
XÍ
ˆo
8Ì
o
ÀÉ
 o
XÍ
¨o
8Ì
°o
ÀÉ
Ào
ÀÎ
Èo
ÀÉ
ào
ÐÒ
èo
ÀÉ
p
8Ì
p
ÀÉ
 p
ðÌ
(p
8Í
0p
xÌ
8p
ÀÉ
Pp
8Ì
Xp
ÀÉ
€p
ØÍ
ˆp
8Ñ
p
ÀÉ
˜p
˜Ñ
 p
ÐÈ
Àp
XÍ
Èp
ˆË
Ðp
ÀÉ
àp
xÒ
èp
ÀÉ
q
0Ê
 q
Õ
(q
ÀHq
Õ
Pq
ÀÙpq
Õ
xq
€˜q
øÔ
 q
@Àq
ðÔ
Èq

èq
èÔ
ðq
ðÛr
àÔ
r
ÀÜ8r
ØÔ
@r
`r
ÐÔ
hr
߈r
ÈÔ
r
pݰr
ÀÔ
¸r
pÝØr
¸Ô
àr
Às
°Ô
s
PÛ(s
¨Ô
0s
àPs
 Ô
Xs
àÛxs
˜Ô
€s
àÛ s
Ô
¨s
 ÕÈs
ˆÔ
Ðs
 Øðs
€Ô
øs
àst
xÔ
 t
€×@t
pÔ
Ht
 sht
hÔ
pt
àØt
`Ô
˜t
`׸t
XÔ
Àt
`sàt
PÔ
èt
ÀÖu
HÔ
u
 s0u
@Ô
8u
 ÖXu
8Ô
`u
àÔ€u
0Ô
ˆu
àr¨u
(Ô
°u
 rÐu
 Ô
Øu
 øu
Ô
v
`r v
Ô
(v
`Hv
Ô
Pv
 pv
Ô
xv
à˜v
øÓ
 v
 ÖÀv
ðÓ
Èv
€Öèv
èÓ
ðv
 w
àÓ
w
Ö8w
ØÓ
@w
@×`w
ÐÓ
hw
€Øˆw
ÈÓ
w
`Ö°w
ÀÓ
¸w
 רw
¸Ó
àw
`x
°Ó
x
 (x
¨Ó
0x
 ÔPx
 Ó
Xx
`Øxx
˜Ó
€x
àÕ x
Ó
¨x
àÈx
ˆÓ
Ðx
 ðx
€Ó
øx
 ry
xÓ
 y
`@y
pÓ
Hy
 hy
hÓ
py
ÀՐy
`Ó
˜y
à
¸y
XÓ
Ày
@Öày
PÓ
èy
`Ôz
HÓ
z
Ø0z
@Ó
8z
 ÕXz
8Ó
`z
à×€z
0Ó
ˆz
Àרz
(Ó
°z
ÛÐz
 Ó
Øz
Ûøz
Ó
{
íá {
Ó
({
€
H{
Ó
P{
 	p{
Ó
x{
`ݘ{
øÒ
 {
àqÀ{
ðÒ
È{
°Üè{
èÒ
ð{
Ìá|
àÒ
|
ßá8|
ØÒ
@|
Ýá`|
ÐÒ
h|
ëáˆ|
ÈÒ
|
ëá°|
ÀÒ
¸|
ר|
¸Ò
à|
 q}
°Ò
}
ÀØ(}
¨Ò
0}
@
P}
 Ò
X}
`qx}
˜Ò
€}
Èá }
Ò
¨}
ÄáÈ}
ˆÒ
Ð}
¨àð}
€Ò
ø}
HÞ~
xÒ
 ~
žà@~
pÒ
H~
øÞh~
hÒ
p~
Àá~
`Ò
˜~
Ã߸~
XÒ
À~
‚áà~
PÒ
è~
˜à
HÒ

ðÞ0
@Ò
8
¼ßX
8Ò
`
àÞ€
0Ò
ˆ
}á¨
(Ò
°
éáÐ
 Ò
Ø
éáø
Ò
€
xá €
Ò
(€
xáH€
Ò
P€
8Þp€
Ò
x€
8Þ˜€
øÑ
 €
`c
ðÑ
Ȁ
@Ûè€
èÑ
ð€
sá
àÑ

sá8
ØÑ
@
@Ú`
ÐÑ
h
’àˆ
ÈÑ

’ఁ
ÀÑ
¸
àa؁
¸Ñ
à

‚
°Ñ
‚
ØÞ(‚
¨Ñ
0‚
ØÞP‚
 Ñ
X‚
ÐÞx‚
˜Ñ
€‚
ÐÛ ‚
Ñ
¨‚
ÀȂ
ˆÑ
Ђ
PÝð‚
ۄ
ø‚
P݃
xÑ
 ƒ
àY@ƒ
pÑ
Hƒ
µßhƒ
hÑ
pƒ
µßƒ
`Ñ
˜ƒ
@O¸ƒ
XÑ

ˆààƒ
PÑ
èƒ
 Ù„
HÑ
„
ná0„
@Ñ
8„
0ÛX„
8Ñ
`„
¼á€„
0Ñ
ˆ„
€¨„
(Ñ
°„
@Є
 Ñ
؄
®ßø„
Ñ
…
§ß …
Ñ
(…
iáH…
Ñ
P…
Úáp…
Ñ
x…
Úᘅ
øÐ
 …
|à
ðÐ
ȅ
|àè…
èÐ
ð…
và†
àÐ
†
và8†
ØÐ
@†
@Ý`†
ÐÐ
h†
@݈†
ÈÐ
†
@ɰ†
ÀÐ
¸†
¸á؆
¸Ð
à†
 ß‡
°Ð
‡
pà(‡
¨Ð
0‡
jàP‡
 Ð
X‡
 Üx‡
˜Ð
€‡
`à ‡
Ð
¨‡
´áȇ
ˆÐ
Ї
Zàð‡
€Ð
ø‡
`áˆ
xÐ
 ˆ
ÀÛ@ˆ
pÐ
Hˆ
ÀÛhˆ
hÐ
pˆ
çᐈ
`Ð
˜ˆ
çḈ
XÐ

 Bàˆ
PÐ
èˆ
Tà‰
HÐ
‰
ÈÞ0‰
@Ð
8‰
(ÞX‰
8Ð
`‰
™ß€‰
0Ð
ˆ‰
Nਉ
(Ð
°‰
NàЉ
 Ð
؉
 7ø‰
Ð
Š
Hà Š
Ð
(Š
0ÝHŠ
Ð
PŠ
0ÝpŠ
Ð
xŠ
à0˜Š
øÏ
 Š
°á

ðÏ
Ȋ
 ÝèŠ
èÏ
ðŠ
 Ý‹
àÏ
‹
À8‹
ØÏ
@‹
ÀÞ`‹
ÐÏ
h‹
’߈‹
ÈÏ
‹
’ß°‹
ÀÏ
¸‹
À؋
¸Ï
à‹
݌
°Ï
Œ
Tá(Œ
¨Ï
0Œ
ÛPŒ
 Ï
XŒ
ÛxŒ
˜Ï
€Œ
€ Œ
Ï
¨Œ
×áȌ
ˆÏ
Ќ
‹ßðŒ
€Ï
øŒ
€ß
xÏ
 
Bà@
pÏ
H
¬áh
hÏ
p
<à
`Ï
˜
6ญ
XÏ

0àà
PÏ
è
0àŽ
HÏ
Ž
Oá0Ž
@Ï
8Ž
OáXŽ
8Ï
`Ž
¸Þ€Ž
0Ï
ˆŽ
ðÚ¨Ž
(Ï
°Ž
JáЎ
 Ï
؎
ÞøŽ
Ï

*à 
Ï
(
ÞH
Ï
P
øÝp
Ï
x
Ü˜
øÎ
 
Eá
ðÎ
ȏ
èÝè
èÎ
ð
$à
àÎ

$à8
ØÎ
@
¨á`
ÐÎ
h
r߈
ÈÎ

åᰐ
ÀÎ
¸
¤áؐ
¸Î
à
¤á‘
°Î
‘
°Þ(‘
¨Î
0‘
°ÞP‘
 Î
X‘
 ¼x‘
˜Î
€‘
@á ‘
Î
¨‘
Ýȑ
ˆÎ
Б
€Üð‘
€Î
ø‘
kß’
xÎ
 ’
àÚ@’
pÎ
H’
;áh’
hÎ
p’
pܐ’
`Î
˜’
 á¸’
XÎ

 áà’
PÎ
è’
6á“
HÎ
“
`Ü0“
@Î
8“
ØÝX“
8Î
`“
ØÝ€“
0Î
ˆ“
 ¨“
(Î
°“
ðÜГ
 Î
ؓ
ðÜø“
Î
”
`ó ”
Î
(”
àÜH”
Î
P”
àÜp”
Î
x”
€è˜”
øÍ
 ”
1á
ðÍ
Ȕ
œáè”
èÍ
ð”
(á•
àÍ
•
 Ú8•
ØÍ
@•
á`•
ÐÍ
h•
ሕ
ÈÍ
•
€°•
ÀÍ
¸•
 ×ؕ
¸Í
à•
á–
°Í
–
PÜ(–
¨Í
0–
¨ÞP–
 Í
X–
@Üx–
˜Í
€–
Ôá –
Í
¨–
ÔáȖ
ˆÍ
Ж
°Ûð–
€Í
ø–
°Û—
xÍ
 —
`Ý@—
pÍ
H—
`Ùh—
hÍ
p—
`ِ—
`Í
˜—
à̸—
XÍ

ãáà—
PÍ
è—
ãá˜
HÍ
˜
á0˜
@Í
8˜
fßX˜
8Í
`˜
ဘ
0Í
ˆ˜
ᨘ
(Í
°˜
àÖИ
 Í
ؘ
@ø˜
Í
™
á ™
Í
(™
àÙH™
Í
P™
àÙp™
Í
x™
 À˜™
øÌ
 ™

ðÌ
ș
àè™
èÌ
ð™
àš
àÌ
š
€Ù8š
ØÌ
@š
ûà`š
ÐÌ
hš
ûàˆš
ÈÌ
š
 Ù°š
ÀÌ
¸š
 Ùؚ
¸Ì
àš
¶›
°Ì
›
€Û(›
¨Ì
0›
€ÛP›
 Ì
X›
à©x›
˜Ì
€›
_ß ›
Ì
¨›
_ßț
ˆÌ
Л
@›ð›
€Ì
ø›
Ñáœ
xÌ
 œ
 Þ@œ
pÌ
Hœ
 Þhœ
hÌ
pœ
àœ
`Ì
˜œ
›¸œ
XÌ

À
àœ
PÌ
èœ
0ܝ
HÌ

@Ù0
@Ì
8
ÈÝX
8Ì
`
áဝ
0Ì
ˆ
á᨝
(Ì
°
 ØН
 Ì
؝
Xßø
Ì
ž
Xß ž
Ì
(ž
ŒHž
Ì
Pž
 Ûpž
Ì
xž
 Û˜ž
øË
 ž
à¸
ðË
Ȟ
Pßèž
èË
ðž
˜ÞŸ
àË
Ÿ
˜Þ8Ÿ
ØË
@Ÿ
 °`Ÿ
ÐË
hŸ
°ÚˆŸ
ÈË
Ÿ
˜á°Ÿ
ÀË
¸Ÿ
à؟
¸Ë
àŸ
à 
°Ë
 
@( 
¨Ë
0 
€
P 
 Ë
X 
@Øx 
˜Ë
€ 
pÕ  
Ë
¨ 
öàȠ
ˆË
Р
àð 
€Ë
ø 
à¡
xË
 ¡
 Ü@¡
pË
H¡
àh¡
hË
p¡
ñà¡
`Ë
˜¡
ñม
XË
!
Ißà¡
PË
è¡
 «¢
HË
¢
Þ0¢
@Ë
8¢
ÞX¢
8Ë
`¢
 t€¢
0Ë
ˆ¢
ਢ
(Ë
°¢
àТ
 Ë
آ
¤ø¢
Ë
£
Bß £
Ë
(£
BßH£
Ë
P£
 Úp£
Ë
x£
 Ú˜£
øÊ
 £
i#
ðÊ
ȣ
 Ûè£
èÊ
ð£
 Û¤
àÊ
¤
€ž8¤
ØÊ
@¤
Ú`¤
ÐÊ
h¤
ìàˆ¤
ÈÊ
¤
ìà°¤
ÀÊ
¸¤
úßؤ
¸Ê
à¤
ôߥ
°Ê
¥
¸Ý(¥
¨Ê
0¥
¸ÝP¥
 Ê
X¥
`x¥
˜Ê
€¥
;ß ¥
Ê
¨¥
ˆÞȥ
ˆÊ
Х
€Þð¥
€Ê
ø¥
pÛ¦
xÊ
 ¦
¨Ý@¦
pÊ
H¦
îßh¦
hÊ
p¦
îߐ¦
`Ê
˜¦
çฦ
XÊ
&
4ßà¦
PÊ
è¦
4ß§
HÊ
§
èß0§
@Ê
8§
èßX§
8Ê
`§
`Û€§
0Ê
ˆ§
âਧ
(Ê
°§
âàЧ
 Ê
ا
€]ø§
Ê
¨
ÐÜ ¨
Ê
(¨
ÐÜH¨
Ê
P¨
@]p¨
Ê
x¨
âߘ¨
øÉ
 ¨
âß(
ðÉ
Ȩ
xÞè¨
èÉ
ð¨
xÞ©
àÉ
©
 ›8©
ØÉ
@©
Ýà`©
ÐÉ
h©
Ü߈©
ÈÉ
©
Üß°©
ÀÉ
¸©
Øàة
¸É
à©

°É
ª
Îà(ª
¨É
0ª
ÚPª
 É
Xª
Úxª
˜É
ۻ
 ’ ª
É
¨ª
ÙȪ
ˆÉ
Ъ
Ùðª
ۃ
øª
@«
xÉ
 «
ÈÚ@«
pÉ
H«
ÈÚh«
hÉ
p«
@…«
`É
˜«
€Ú¸«
XÉ
+
€Úà«
PÉ
è«
`~¬
HÉ
¬
Ü0¬
@É
8¬
ÜX¬
8É
`¬
`P€¬
0É
ˆ¬
Öߨ¬
(É
°¬
ÖßЬ
 É
ج
PÕø¬
É
­
 P ­
É
(­
áH­
É
P­
pÞp­
É
x­
˜Ý˜­
øÈ
 ­
`Ú-
ðÈ
ȭ
‹áè­
èÈ
ð­
Éà®
àÈ
®
Àà8®
ØÈ
@®
hÞ`®
ÐÈ
h®
‡áˆ®
ÈÈ
®
ÀJ°®
ÀÈ
¸®
Üخ
¸È
à®
ܯ
°È
¯
`A(¯
¨È
0¯
ÍáP¯
 È
X¯
-ßx¯
˜È
€¯
&ß ¯
È
¨¯
&ßȯ
ˆÈ
Я
ßð¯
€È
ø¯
Ðß°
xÈ
 °
`Þ@°
pÈ
H°
`Þh°
hÈ
p°
6°
`È
˜°
߸°
XÈ
0
À5à°
PÈ
è°
ß±
HÈ
±
ˆÝ0±
@È
8±
ˆÝX±
8È
`±
À)€±
0È
ˆ±
ºà¨±
(È
°±
ºàб
 È
ر
 tø±
È
²
µà ²
È
(²
µàH²
È
P²
xÝp²
È
x²
XÞ˜²
øÇ
 ²
XÞ2
ðÇ
Ȳ
àè²
èÇ
ð²
@
³
àÇ
³
Êß8³
ØÇ
@³
°à`³
ÐÇ
h³
°àˆ³
ÈÇ
³
 ´
Ò ´
Æ
(´
`´
h´
ðÂx´
Tĸ´
P÷д
 ?ø´
 =(µ
 ÓPµ
p÷Xµ
9`µ
 Bˆµ
 ¶
˜µ
@¶
ȵ
ð~ص
p:@¶
H¶
à9P¶
0E ¶
¨¶
 Ð6
!ȶ
PÞà¶
.è¶
@Ê·
·
 5·
Àh
 ·
Ù(·
€ã8·
€d
@·
9H·
 bX·
`]
`·
Th·
°Çx·
àW
€·
Mˆ·
à˜·
 W
 ·
H¨·
 ¾¸·
àQ
7
<ȷ
P»ط
 J
à·
3è·
€¸ø·
ÀG
¸
U¸
°â¸
`B
 ¸
=(¸
°‘8¸
@7
@¸
CH¸
#X¸
À5
`¸
þh¸
ªx¸
 +
€¸
ȸ
˜¸
À
 ¸
Ô¨¸
pü¸¸
@
8
ãȸ
0ôظ
 
à¸
è¸
°Hø¸
€
¹
#¹
°µ¹
 
 ¹
,(¹
 ±8¹
ó	@¹
H¹
@®X¹
é	`¹
h¹
Pªx¹
Þ	€¹
ˆ¹
¦˜¹
àÐ	 ¹
¨¹
P¡¸¹
ÀÄ	9
ýȹ
ðع
<	à¹
òè¹
°™ø¹
 ²	º
âº
ð–º
 ©	 º
×(º
“8º
@œ	@º
ÎHº
PXº
@	`º
Çhº
ð‹xº
@	€º
¿ˆº
ˆ˜º
`t	 º
¹¨º
0…¸º
 g	:
±Ⱥ
 غ
[	àº
ªèº
}øº
àH	»
¡»
y»
€=	 »
—(»
ðt8»
À,	@»
ŽH»
 qX»
À#	`»
‰h»
`mx»
€	€»
ˈ»
°/˜»
 	 »
	¨»
 ¸»
 	;
Ȼ
Ðػ
àõà»
øè»
ø»
 í¼
ó¼
@¼
`ã ¼
¹(¼
€8¼
 Ý@¼
´H¼
PØX¼
àÍ`¼
éh¼
Àx¼
À¼
Öˆ¼
Ð]˜¼
€² ¼
I¨¼
ླྀ¼
`§<
ªȼ
pªؼ
@œà¼
Iè¼
p8ø¼
à˜½
Q½
€„½
 •@½
XH½
`fX½
 ”`½
qh½
àix½
 ”àŽèŽ	ðŽ
øŽÞ&, -(.0/8I@KHLPMXQ`Wh_pfxg€iˆln˜o p¨q°w¸z|ȏ€Џ†؏‰àè”ðšøœ (08@HP
X`hpx€ˆ˜ ¨°¸ȐАؐàè ð!ø"‘#‘$‘%‘' ‘((‘)0‘*8‘+@‘0H‘1P‘2X‘3`‘4h‘5p‘6x‘7€‘8ˆ‘9‘:˜‘; ‘<¨‘=°‘>¸‘?@ȑAБBؑCà‘Dè‘Eð‘Fø‘G’H’J’N’O ’P(’R0’S8’T@’UH’VP’XX’Y`’Zh’[p’\x’]€’^ˆ’`’a˜’b ’c¨’d°’e¸’hjȒkВmؒrà’sè’tð’uø’v“x“y“{“} “~(“0“8“‚@“ƒH“„P“…X“‡`“ˆh“Šp“‹x“Œ€“Žˆ““˜“‘ “’¨““°“•¸“–—ȓ˜Г™ؓ›óúHƒìH‹AßH…ÀtÿÐHƒÄÃÿ5âßòÿ%ãßóúhòéáÿÿÿóúhòéÑÿÿÿóúhòéÁÿÿÿóúhòé±ÿÿÿóúhòé¡ÿÿÿóúhòé‘ÿÿÿóúhòéÿÿÿóúhòéqÿÿÿóúhòéaÿÿÿóúh	òéQÿÿÿóúh
òéAÿÿÿóúhòé1ÿÿÿóúhòé!ÿÿÿóúh
òéÿÿÿóúhòéÿÿÿóúhòéñþÿÿóúhòéáþÿÿóúhòéÑþÿÿóúhòéÁþÿÿóúhòé±þÿÿóúhòé¡þÿÿóúhòé‘þÿÿóúhòéþÿÿóúhòéqþÿÿóúhòéaþÿÿóúhòéQþÿÿóúhòéAþÿÿóúhòé1þÿÿóúhòé!þÿÿóúhòéþÿÿóúhòéþÿÿóúhòéñýÿÿóúh òéáýÿÿóúh!òéÑýÿÿóúh"òéÁýÿÿóúh#òé±ýÿÿóúh$òé¡ýÿÿóúh%òé‘ýÿÿóúh&òéýÿÿóúh'òéqýÿÿóúh(òéaýÿÿóúh)òéQýÿÿóúh*òéAýÿÿóúh+òé1ýÿÿóúh,òé!ýÿÿóúh-òéýÿÿóúh.òéýÿÿóúh/òéñüÿÿóúh0òéáüÿÿóúh1òéÑüÿÿóúh2òéÁüÿÿóúh3òé±üÿÿóúh4òé¡üÿÿóúh5òé‘üÿÿóúh6òéüÿÿóúh7òéqüÿÿóúh8òéaüÿÿóúh9òéQüÿÿóúh:òéAüÿÿóúh;òé1üÿÿóúh<òé!üÿÿóúh=òéüÿÿóúh>òéüÿÿóúh?òéñûÿÿóúh@òéáûÿÿóúhAòéÑûÿÿóúhBòéÁûÿÿóúhCòé±ûÿÿóúhDòé¡ûÿÿóúhEòé‘ûÿÿóúhFòéûÿÿóúhGòéqûÿÿóúhHòéaûÿÿóúhIòéQûÿÿóúhJòéAûÿÿóúhKòé1ûÿÿóúhLòé!ûÿÿóúhMòéûÿÿóúhNòéûÿÿóúhOòéñúÿÿóúhPòéáúÿÿóúhQòéÑúÿÿóúhRòéÁúÿÿóúhSòé±úÿÿóúhTòé¡úÿÿóúhUòé‘úÿÿóúhVòéúÿÿóúhWòéqúÿÿóúhXòéaúÿÿóúhYòéQúÿÿóúhZòéAúÿÿóúh[òé1úÿÿóúh\òé!úÿÿóúh]òéúÿÿóúh^òéúÿÿóúh_òéñùÿÿóúh`òéáùÿÿóúhaòéÑùÿÿóúhbòéÁùÿÿóúhcòé±ùÿÿóúhdòé¡ùÿÿóúheòé‘ùÿÿóúhfòéùÿÿóúhgòéqùÿÿóúhhòéaùÿÿóúhiòéQùÿÿóúhjòéAùÿÿóúhkòé1ùÿÿóúhlòé!ùÿÿóúhmòéùÿÿóúhnòéùÿÿóúhoòéñøÿÿóúhpòéáøÿÿóúhqòéÑøÿÿóúhròéÁøÿÿóúhsòé±øÿÿóúhtò顸ÿÿóúhuò鑸ÿÿóúhvò選ÿÿóúhwòéqøÿÿóúhxòéaøÿÿóúòÿ%ØDóúòÿ%=ØDóúòÿ%5ØDóúòÿ%-ØDóúòÿ%%ØDóúòÿ%ØDóúòÿ%ØDóúòÿ%
ØDóúòÿ%ØDóúòÿ%ý×Dóúòÿ%õ×Dóúòÿ%í×Dóúòÿ%å×Dóúòÿ%Ý×Dóúòÿ%Õ×Dóúòÿ%Í×Dóúòÿ%Å×Dóúòÿ%½×Dóúòÿ%µ×Dóúòÿ%­×Dóúòÿ%¥×Dóúòÿ%×Dóúòÿ%•×Dóúòÿ%×Dóúòÿ%…×Dóúòÿ%}×Dóúòÿ%u×Dóúòÿ%m×Dóúòÿ%e×Dóúòÿ%]×Dóúòÿ%U×Dóúòÿ%M×Dóúòÿ%E×Dóúòÿ%=×Dóúòÿ%5×Dóúòÿ%-×Dóúòÿ%%×Dóúòÿ%×Dóúòÿ%×Dóúòÿ%
×Dóúòÿ%×Dóúòÿ%ýÖDóúòÿ%õÖDóúòÿ%íÖDóúòÿ%åÖDóúòÿ%ÝÖDóúòÿ%ÕÖDóúòÿ%ÍÖDóúòÿ%ÅÖDóúòÿ%½ÖDóúòÿ%µÖDóúòÿ%­ÖDóúòÿ%¥ÖDóúòÿ%ÖDóúòÿ%•ÖDóúòÿ%ÖDóúòÿ%…ÖDóúòÿ%}ÖDóúòÿ%uÖDóúòÿ%mÖDóúòÿ%eÖDóúòÿ%]ÖDóúòÿ%UÖDóúòÿ%MÖDóúòÿ%EÖDóúòÿ%=ÖDóúòÿ%5ÖDóúòÿ%-ÖDóúòÿ%%ÖDóúòÿ%ÖDóúòÿ%ÖDóúòÿ%
ÖDóúòÿ%ÖDóúòÿ%ýÕDóúòÿ%õÕDóúòÿ%íÕDóúòÿ%åÕDóúòÿ%ÝÕDóúòÿ%ÕÕDóúòÿ%ÍÕDóúòÿ%ÅÕDóúòÿ%½ÕDóúòÿ%µÕDóúòÿ%­ÕDóúòÿ%¥ÕDóúòÿ%ÕDóúòÿ%•ÕDóúòÿ%ÕDóúòÿ%…ÕDóúòÿ%}ÕDóúòÿ%uÕDóúòÿ%mÕDóúòÿ%eÕDóúòÿ%]ÕDóúòÿ%UÕDóúòÿ%MÕDóúòÿ%EÕDóúòÿ%=ÕDóúòÿ%5ÕDóúòÿ%-ÕDóúòÿ%%ÕDóúòÿ%ÕDóúòÿ%ÕDóúòÿ%
ÕDóúòÿ%ÕDóúòÿ%ýÔDóúòÿ%õÔDóúòÿ%íÔDóúòÿ%åÔDóúòÿ%ÝÔDóúòÿ%ÕÔDóúòÿ%ÍÔDóúòÿ%ÅÔDóúòÿ%½ÔDóúòÿ%µÔDóúòÿ%­ÔDóúòÿ%¥ÔDóúòÿ%ÔDóúòÿ%•ÔDóúòÿ%ÔDóúòÿ%…ÔDóúòÿ%}ÔDAVI‰öH‰ÖAUI‰ÕATUD‰ÅSH‰ËHìÐdH‹%(H‰„$È1ÀèJùÿÿH…À„«I‰ÄH‹@ö€«€u H‹zÏL‰éL‰òH5!H‹81ÀèSþÿÿëmM‹L$ I9Ùs#H‹@ÏI‰ØL‰éL‰òH5ˆ!H‹81Àè&þÿÿë@ÿÍuMI9ÙvHH‰åPL‰ñM‰èAQHØ!I‰ÙH‰ï¾È1ÀèFúÿÿ1ÒH‰î1ÿèêøÿÿZY…ÀyIÿ$uL‰çèæøÿÿE1äH‹„$ÈdH3%(tè[ùÿÿHÄÐL‰à[]A\A]A^ÃAWI‰ÿAVI‰öH5õ?AUI‰ÍATUSH‰ÓAPèDøÿÿH…À„½L‰öH‰ÇH‰ÅèÍûÿÿI‰ÄH…Àu(L‰ÿè­úÿÿL‰ñH5“!H‰ÂH‹ÙÎH‹81Àè?ýÿÿëqL‰îH‰ÇèÂúÿÿ…Àu9L‰çè¶÷ÿÿL‰ÿH‰ÃèkúÿÿI‰ÙM‰èL‰ñH‰ÂH‹ÎH5y!H‹81Àè÷üÿÿë)L‰îL‰çèúüÿÿH‰H…ÀtHÿMA¼uH‰ïèÞ÷ÿÿëHÿMuH‰ïèÎ÷ÿÿAƒÌÿZD‰à[]A\A]A^A_ÃAWI‰ÿAVI‰öH5ø>AUI‰ÍATUSH‰ÓAPèG÷ÿÿH…À„½L‰öH‰ÇH‰ÅèÐúÿÿI‰ÄH…Àu(L‰ÿè°ùÿÿL‰ñH5!H‰ÂH‹ÜÍH‹81ÀèBüÿÿëqL‰îH‰ÇèÅùÿÿ…Àu9L‰çè¹öÿÿL‰ÿH‰ÃènùÿÿI‰ÙM‰èL‰ñH‰ÂH‹ÍH5!H‹81Àèúûÿÿë)L‰îL‰çèýûÿÿH‰H…ÀtHÿMA¼uH‰ïèáöÿÿëHÿMuH‰ïèÑöÿÿAƒÌÿZD‰à[]A\A]A^A_ÃAVI‰ÎAUI‰õH‰ÖATUSD‰ÃèUöÿÿH…Àt5H;ÑÌH‰ÅuE1ä€ãtH‰êL‰öL‰ïè^õÿÿA‰ÄHÿMu)H‰ïèmöÿÿëH‹ìÌAƒÌÿH‹8èˆ÷ÿÿ…ÀtèŸøÿÿE1ä[D‰à]A\A]A^ÃóúAVAUI‰ýATUQèÜøÿÿH‹xè÷ÿÿH‹ìÐHƒúÿuH‰ßÐHÿÀtë#H9ÐtH‹|ÌH55 H‹8è­öÿÿE1äéýL‹%&
M…ät	Iÿ$éèH5$=L‰ïèqõÿÿI‰ÆH…ÀtÌH‰ÇèÁõÿÿIÿH‰ÅuL‰÷è¡õÿÿH…ít¯H‰ïèÄúÿÿI‰ÆH…À„ŽA¸H
Û<H‰ÆL‰ïHÙ<è«þÿÿ…ÀxkA¸H
Ê<L‰öL‰ïHÆ<èˆþÿÿ…ÀxHA¸H
·<L‰öL‰ïH¶<èeþÿÿ…Àx%E1ÀH
ª<L‰öL‰ïH¦<èEþÿÿ…ÀxI‰ìëHÿM…ÿÿÿH‰ïèèôÿÿZL‰à]A\A]A^ÃóúAWAVAUATUH‰ýSHìH‹
dH‹%(H‰„$1ÀH…Òt'H9ú„ÕsH‹uÊH5î%H‹8èFõÿÿƒÈÿé·sLl$8A¸19H—=¾L‰ïè˜õÿÿH\$<è>úÿÿH=¾H‰ßH‰Á1ÀèuõÿÿŠD$<8D$8u
ŠD$>8D$:tbLd$@¾È1ÀI‰ÙH»%L‰çL–?L‰éè9õÿÿ1ÿºL‰æèÚóÿÿ…Ày'Hè;Çñ
H‰Þ
ÇÜ
‘^éyH‹(Ê1ÿH‹@ HƒèH‰§
èBöÿÿH‰Ã
H…Àu'H˜;Ç¡
H‰Ž
nj
•^é)1öH=n;è1óÿÿH‰z
H…Àu'HW;Ç`
H‰M
ÇK
–^éè1öH=-;è@øÿÿH…Àu'H;Ç&
H‰
Ç
—^é®HÿEH‰ïH‰-.
èøÿÿH‰
H…Àu'H×:Çà
H‰Í
ÇË
½^éhHÿH=ß;è_òÿÿH‰Ð
H…Àu'H•:Çž
H‰‹
lj
¿^é&HÿH=¦;èòÿÿH‰†
H…Àu'HS:Ç\
H‰I
ÇG
Á^éäHÿH‹X
H5l;H‹=Z
èíñÿÿ…Ày'H:Ç
H‰
Çÿ
Ã^éœH˩	L‹+M…ít}ŠC 
C!H‹{t:€{"tèöÿÿI‰Eë:H‹CH‹SHpÿH…Òt
1Éè~öÿÿI‰Eëè³öÿÿI‰EëH‹CHpÿèPñÿÿI‰EH‹H‹8H…ÿ„±è(õÿÿHÿÀ„£HƒÃ(é{ÿÿÿWÀèóÿÿH‰×ÿ	H…À„‚òöèóÿÿH‰²ÿ	H…À„eòáèäòÿÿH‰ÿ	H…À„H1ÿè
óÿÿH‰nÿ	H…À„1¿èóòÿÿH‰Lÿ	H…À„1Ò1öH=(:ècöÿÿH‰$ÿ	H…À„÷HƒÏÿèºòÿÿH‰ÿ	H…À„ÞH‹kƃ8„õH‹;
H‹5”
H‹=½
è`óÿÿ…À‰ÓHj8Çs
H‰`
Ç^
Ê^Hƒ=†
tLHƒ=t
tH‹
;
‹A
H=®;‹50
ès—H‹=T
H…ÿt7HÿHÇA
u'èòïÿÿë èëòÿÿH…ÀuH‹_ÆH5h;H‹8èðÿÿ1ÀHƒ=
”À÷ØéõnH¾7ÇÇ
H‰´
Dz
Å^éOÿÿÿèðÿÿH‰ÅH…Àu'HŠ7Ç“
H‰€
Ç~
Î^éÿÿÿH5ï:H‰Çè¢òÿÿH…ÀuAH‹Ž
H5Ô:H‰ïèîÿÿ…Ày'H57Ç>
H‰+
Ç)
Ð^éÆþÿÿH‹=Å
è ‰H‰
H…Àu'Hö6Çÿ
nH‰ì
Çê
&[é‡þÿÿH‹=&
èáˆH‰Ò

H…Àu'H·6ÇÀ
vH‰­
Ç«
'[éHþÿÿH‹=W
袈H‰‹

H…Àu'Hx6ǁ
¢H‰n
Çl
([é	þÿÿH‹=8
ècˆH‰D

H…Àu'H96ÇB
ÏH‰/
Ç-
)[éÊýÿÿH‹=™ÿ	è$ˆH…Àu'H6Ç


H‰÷

Çõ

*[é’ýÿÿH‹=©	
èì‡H‰Å	
H…Àu'HÂ5ÇË

jH‰¸

Ƕ

+[éSýÿÿH‹=	
譇H‰~	
H…Àu'Hƒ5ÇŒ

¿H‰y

Çw

,[éýÿÿH‹=›þ	èn‡H…Àu'HK5ÇT

H‰A

Ç?

-[éÜüÿÿH‹=Ë
è6‡H‰ÿ
H…Àu'H5Ç

DH‰

Ç

.[éüÿÿH‹=Ô
è÷†H…Àu'H66ÇÝ	
XH‰Ê	
ÇÈ	
/[éeüÿÿH‹=\
迆H‰€
H…Àu'H÷5Çž	
H‰‹	
lj	
0[é&üÿÿH‹5ý
¿1Àè9òÿÿH‰¢ú	H…Àu'HO4ÇX	
"H‰E	
ÇC	
A[éàûÿÿH‹5Ç
¿1ÀèóñÿÿH‰Tú	H…Àu'H	4Ç	
nH‰ÿ
Çý
L[éšûÿÿH‹5a
¿1Àè­ñÿÿH‰ú	H…Àu'HÃ3ÇÌ
¢H‰¹
Ç·
W[éTûÿÿH‹›
H‹5<
¿1Àè`ñÿÿH‰±ù	H…Àu'Hv3Ç
ÍH‰l
Çj
b[éûÿÿH‹56û	¿1ÀèñÿÿH‰cù	H…Àu'H03Ç9
H‰&
Ç$
m[éÁúÿÿH‹5èú	¿1ÀèÔðÿÿH‰ù	H…Àu'Hê2Çó
H‰à
ÇÞ
x[é{úÿÿH‹5’û	¿1ÀèŽðÿÿH‰Çø	H…Àu'H¤2Ç­
H‰š
ǘ
ƒ[é5úÿÿH‹ù	H‹5U
¿1ÀèAðÿÿH‰jø	H…Àu'HW2Ç`
H‰M
ÇK
Ž[éèùÿÿH‹Ÿø	H‹5¨
¿1ÀèôïÿÿH‰ø	H…Àu'H
2Ç
H‰
Çþ
™[é›ùÿÿL‹%À¿1ÀL‰áL‰âL‰æè¥ïÿÿH‰¾÷	H…Àu'H»1ÇÄ
H‰±
ǯ
¤[éLùÿÿH‹‹
H‹5ü
¿1ÀèXïÿÿH‰i÷	H…Àu'Hn1Çw
fH‰d
Çb
¯[éÿøÿÿH‹¦÷	H‹5¯÷	¿1ÀèïÿÿH‰÷	H…Àu'H!1Ç*
¤H‰
Ç
º[é²øÿÿH‹5i
¿1ÀèÅîÿÿH‰Æö	H…Àu'HÛ0Çä
ýH‰Ñ
ÇÏ
Å[éløÿÿH‹5
¿1ÀèîÿÿH‰xö	H…Àu'H•0Çž
ÿH‰‹
lj
Ð[é&øÿÿH‹5å
¿1Àè9îÿÿH‰*ö	H…Àu'HO0ÇX
H‰E
ÇC
Û[éà÷ÿÿH‹5§
¿1ÀèóíÿÿH‰Üõ	H…Àu'H	0Ç
H‰ÿ
Çý
æ[éš÷ÿÿH‹5Ñú	¿1Àè­íÿÿH‰Žõ	H…Àu'HÃ/ÇÌ
H‰¹
Ç·
ñ[éT÷ÿÿH‹5#
¿1ÀègíÿÿH‰@õ	H…Àu'H}/dž
H‰s
Çq
ü[é÷ÿÿH‹5½ù	¿1Àè!íÿÿH‰òô	H…Àu'H7/Ç@
H‰-
Ç+
\éÈöÿÿH‹5ù	¿1ÀèÛìÿÿH‰¤ô	H…Àu'Hñ.Çú
H‰ç
Çå
\é‚öÿÿH‹5)ù	¿1Àè•ìÿÿH‰Vô	H…Àu'H«.Ç´
H‰¡
ÇŸ
\é<öÿÿH‹5[
¿1ÀèOìÿÿH‰ô	H…Àu'He.Çn
3H‰[
ÇY
(\éöõÿÿH‹5ýù	¿1Àè	ìÿÿH‰ºó	H…Àu'H.Ç(
6H‰
Ç
3\é°õÿÿH‹5¿
¿1ÀèÃëÿÿH‰ló	H…Àu'HÙ-Çâ
:H‰Ï
ÇÍ
>\éjõÿÿH‹5Ñ
¿1Àè}ëÿÿH‰ó	H…Àu'H“-Çœ
_H‰‰
LJ
I\é$õÿÿH‹5cÿ	¿1Àè7ëÿÿH‰Ðò	H…Àu'HM-ÇV
¿H‰C
ÇA
T\éÞôÿÿH‹5}ú	¿1ÀèñêÿÿH‰‚ò	H…Àu'H-Ç
…H‰ý
Çû
_\é˜ôÿÿH‹5Wù	¿1Àè«êÿÿH‰4ò	H…Àu'HÁ,ÇÊ
‡H‰·
ǵ
j\éRôÿÿH‹5éù	¿1ÀèeêÿÿH‰æñ	H…Àu'H{,Ç„
‰H‰q
Ço
u\éôÿÿH‹5û÷	¿1ÀèêÿÿH‰˜ñ	H…Àu'H5,Ç>
¶
H‰+
Ç)
€\éÆóÿÿH‹5•ø	¿1ÀèÙéÿÿH‰Jñ	H…Àu'Hï+Çø
‘H‰å
Çã
‹\é€óÿÿH‹5¿û	¿1Àè“éÿÿH‰üð	H…Àu'H©+Dz
“H‰Ÿ
ǝ
–\é:óÿÿH‹5ø	¿1ÀèMéÿÿH‰®ð	H…Àu'Hc+Çl
•H‰Y
ÇW
¡\éôòÿÿL‰âL‰æL‰çè<èÿÿH‰=ñ	H…Àu'H"+Ç+
›H‰
Ç
¬\é³òÿÿH‹5Rû	¿1ÀèÆèÿÿH‰ð	H…Àu'HÜ*Çåÿ	³H‰Òÿ	ÇÐÿ	·\émòÿÿH‹´þ	H‹5ú	¿1ÀèyèÿÿH‰Êï	H…Àu'H*ǘÿ	¹H‰…ÿ	ǃÿ	Â\é òÿÿH‹5Wú	¿1Àè3èÿÿH‰|ï	H…Àu'HI*ÇRÿ	¼H‰?ÿ	Ç=ÿ	Í\éÚñÿÿH‹51ð	L‰â¿1ÀèêçÿÿH‰+ï	H…Àu'H*Ç	ÿ	¿H‰öþ	Çôþ	Ø\é‘ñÿÿH‹5˜ñ	¿1Àè¤çÿÿH‰Ýî	H…Àu'Hº)ÇÃþ	H‰°þ	Ç®þ	ã\éKñÿÿH‹5Êú	¿1Àè^çÿÿH‰î	H…Àu'Ht)Ç}þ	ŸH‰jþ	Çhþ	î\éñÿÿH‹t·H‹5µï	¿1ÀèçÿÿH‰:î	H…Àu'H')Ç0þ	þH‰þ	Çþ	ù\é¸ðÿÿH‹5¯ï	¿1ÀèËæÿÿH‰ìí	H…Àu'Há(Çêý	DH‰×ý	ÇÕý	]érðÿÿH‹5©ô	1?è…æÿÿH…Àu'H*Ç«ý	H‰˜ý	Ç–ý	]é3ðÿÿH‹5bô	1?èFæÿÿH…Àu'HÅ)Çlý	H‰Yý	ÇWý	]éôïÿÿH‹5»û	1?èæÿÿH…Àu'H†)Ç-ý	2H‰ý	Çý	%]éµïÿÿH‹5¼û	1?èÈåÿÿH…Àu'HG)Çîü	XH‰Ûü	ÇÙü	0]évïÿÿH‹5uû	1?è‰åÿÿH…Àu'H)ǯü	pH‰œü	Çšü	;]é7ïÿÿH‹5¦ò	¿1ÀèJåÿÿH‰cì	H…Àu'HÂ(Çiü	H‰Vü	ÇTü	F]éñîÿÿH‹5Xò	1?èåÿÿH…Àu'Hƒ(Ç*ü	H‰ü	Çü	Q]é²îÿÿH‹‘ô	H‹5ø	1?è¾äÿÿH…Àu'HÛ&Çäû	‡H‰Ñû	ÇÏû	\]élîÿÿH‹Óû	L‹
Äû	VA¸1É1ö1ÿAQh‡ÿ5²ï	ÿ5ôò	RRPRRºèåÞÿÿHƒÄPH…Àu'Hn&Çwû	‡H‰dû	Çbû	_]éÿíÿÿH‹Þó	H‹5_÷	1?èäÿÿH…Àu'H(&Ç1û	ŽH‰û	Çû	h]é¹íÿÿH‹ û	L‹
û	QA¸1É1ö1ÿAQhŽÿ5wï	ÿ5Aò	RRPRRºè2ÞÿÿHƒÄPH…Àu'H»%ÇÄú	ŽH‰±ú	ǯú	k]éLíÿÿH{ê	H=ôØ	H‰…ú	H¶]H‰_ê	HH`H‰Yê	èLßÿÿ…Ày'HZ%Çcú	%H‰Pú	ÇNú	¨]éëìÿÿH‹=2ú	1Ò1öL‹%—Ù	èêáÿÿH‰ÅH…Àt>H‹5Sï	H‰ÂL‰çèpáÿÿ…ÀH‹ExHÿÈH‰EuBH‰ïèçÜÿÿë8HÿÈH‰EuH‰ïèÔÜÿÿHÖ$Çßù	%H‰Ìù	ÇÊù	¯]égìÿÿH‹5ø	H‹=çù	HØ	èƒßÿÿ…Ày'H‘$Çšù	%H‰‡ù	Ç…ù	°]é"ìÿÿHÑ×	H=•%H‰{ø	ènßÿÿH‰ÅH…Àu'H·%ÇQù		H‰>ù	Ç<ù	¾]éÙëÿÿA¸¹pH‰ÇH¯%H5>%è.âÿÿH…Àu'Hj%Çù		H‰ñø	Çïø	Ç]éaZHÿMuH‰ïèÄÛÿÿH=ø$èØÞÿÿH‰ÅH…Àu'H*%Ç»ø	H‰¨ø	Ǧø	É]éCëÿÿA¸¹ H‰ÇHe&H5¨$è˜áÿÿH…Àu'HÝ$Çnø	H‰[ø	ÇYø	Ì]éËYHÿMuH‰ïè.ÛÿÿH=b$èBÞÿÿH‰ÅH…Àu'H$Ç%ø	H‰ø	Çø	Î]é­êÿÿA¸¹ H‰ÇHt$H5$èáÿÿH…Àu'HP$ÇØ÷	H‰Å÷	ÇÃ÷	Ñ]é5YHÿMuH‰ïè˜ÚÿÿH=/$è¬ÝÿÿH‰ÅH…Àu'Hè#Ǐ÷	ÎH‰|÷	Çz÷	Ó]éêÿÿA¸¹`H‰ÇHì#H5ß#èlàÿÿH‰÷	H…Àu'H”#Ç;÷	ÎH‰(÷	Ç&÷	Ö]é˜XA¸¹H
H‰ïHž#H5‹#èàÿÿH…Àu'HG#Çîö	åH‰Ûö	ÇÙö	Ø]éKXA¸¹0H‰ïHZ#H5>#èËßÿÿH‰lö	H…Àu'Hó"Çšö	éH‰‡ö	Ç…ö	Ú]é÷WA¸¹PH‰ïH#H5ê"èwßÿÿH‰ö	H…Àu'HŸ"ÇFö	òH‰3ö	Ç1ö	Ü]é£WA¸¹ØH‰ïHÄ"H5–"è#ßÿÿH…Àu'HR"Çùõ	–H‰æõ	Çäõ	Þ]éVWHÿMuH‰ïè¹ØÿÿH=}"èÍÛÿÿH‰ÅH…Àu'H§ ǰõ	H‰õ	Ç›õ	í]é8èÿÿH
V"H8õ	H‰ÇH5S"è©ßÿÿ…Ày'H_ Çhõ	H‰Uõ	ÇSõ	î]éÜVH
"Hèô	H‰ïH5"èaßÿÿ…Ày'H Ç õ	H‰
õ	Çõ	ï]é”VH
ä!H˜ô	H‰ïH5Ü!èßÿÿ…Ày'HÏÇØô	H‰Åô	ÇÃô	ð]éLVHÿMuH‰ïè˜×ÿÿH=\!è¬ÚÿÿH‰ÅH…Àu'H†Çô	H‰|ô	Çzô	^éçÿÿH
V	Hÿó	H‰ÇH5S!è…ßÿÿ…Ày'H>ÇGô	H‰4ô	Ç2ô	^éÒUH
^	H¯ó	H‰ïH5!è=ßÿÿ…Ày'HöÇÿó	H‰ìó	Çêó	^éŠUH
ü H_ó	H‰ïH5!èõÞÿÿ…Ày'H®Ç·ó	H‰¤ó	Ç¢ó	^éBUH
&	Hó	H‰ïH5É è­Þÿÿ…Ày'HfÇoó	H‰\ó	ÇZó	^éúTH
&	H¿ò	H‰ïH5 èeÞÿÿ…Ày'HÇ'ó	H‰ó	Çó	^é²TH
þ	Hoò	H‰ïH5J èÞÿÿ…Ày'HÖÇßò	H‰Ìò	ÇÊò	^éjTH
Î
Hò	H‰ïH5 èÕÝÿÿ…Ày'HŽÇ—ò	H‰„ò	Ç‚ò	^é"TH
†
HÏñ	H‰ïH5ÐèÝÿÿ…Ày'HFÇOò	H‰<ò	Ç:ò	^éÚSHÿMuH‰ïèÕÿÿH=¢è#ØÿÿH‰ÅH…Àu'HýÇò	H‰óñ	Çññ	
^éŽäÿÿH
H6ñ	H‰ÇH5tèüÜÿÿ…Ày'HµÇ¾ñ	H‰«ñ	Ç©ñ	^é`SH
Í
Hæð	H‰ïH59è´Üÿÿ…Ày'HmÇvñ	H‰cñ	Çañ	^éSH
…
H–ð	H‰ïH5þèlÜÿÿ…Ày'H%Ç.ñ	H‰ñ	Çñ	
^éÐRH
=
HFð	H‰ïH5Ãè$Üÿÿ…Ày'HÝÇæð	H‰Óð	ÇÑð	^éˆRH
õ	Höï	H‰ïH5‡èÜÛÿÿ…Ày'H•Çžð	H‰‹ð	ljð	^é@RH
­	H¦ï	H‰ïH5Jè”Ûÿÿ…Ày'HMÇVð	H‰Cð	ÇAð	^éøQH
e	HVï	H‰ïH5èLÛÿÿ…Ày'HÇð	H‰ûï	Çùï	^é°QH
	Hï	H‰ïH5ÒèÛÿÿ…Ày'H½ÇÆï	H‰³ï	DZï	^éhQH
ÕH¶î	H‰ïH5–è¼Úÿÿ…Ày'HuÇ~ï	H‰kï	Çiï	^é QHÿMuH‰ïè>ÒÿÿH‹=Gå	1Ò1öè.\H‰ÅH…Àu'H(Ç1ï	H‰ï	Çï	ì^é¹áÿÿH‹5å	H‹=1ï	H‰ÂèYÖÿÿ…Ày'HçÇðî	H‰Ýî	ÇÛî	î^éPHÿMuH‰ïè°ÑÿÿH‹=à	1Ò1öè [H‰ÅH…Àu'HšÇ£î	H‰î	ÇŽî	ø^é+áÿÿH‹5Bà	H‹=£î	H‰ÂèËÕÿÿ…Ày'HYÇbî	H‰Oî	ÇMî	ú^é‘OHÿMuH‰ïè"ÑÿÿH‹=Sä	1Ò1öè[H‰ÅH…Àu'HÇî	H‰î	Çî	_éàÿÿH‹5,ä	H‹=î	H‰Âè=Õÿÿ…Ày'HËÇÔí	H‰Áí	Ç¿í	_éOHÿMuH‰ïè”Ðÿÿ¿èJÏÿÿH‰ÅH…Àu'H„Ǎí	H‰zí	Çxí	_éàÿÿH‹Tæ	H‹UH‰îHÿH‰H‹=èè	ºè6ZI‰ÄH…Àu*H0E1íÇ6í	H‰#í	Ç!í	_éeNHÿMuH‰ïèöÏÿÿH‹5ïå	L‰çèkH‰ÅH…Àu'HáÇêì	H‰×ì	ÇÕì	_ééNH‹5±å	H‹=êì	H‰ÂèÔÿÿ…Ày*H M‰åǦì	H‰“ì	Ç‘ì	_éÕMHÿMuH‰ïèfÏÿÿIÿ$uL‰çèXÏÿÿ¿èÎÿÿI‰ÄH…Àu'HHÇQì		H‰>ì	Ç<ì	%_éÙÞÿÿH‹°ê	I‹T$L‰æHÿH‰H‹={ã	ºèùXH‰ÅH…Àu'HóÇüë		H‰éë	Ççë	*_éûMIÿ$uL‰çè¼ÎÿÿH‹5Mê	H‰ïèÍiI‰ÄH…Àu*H§E1íÇ­ë		H‰šë	ǘë	-_éÜLH‹5ê	H‹=­ë	H‰ÂèÕÒÿÿ…Ày*HcM‰åÇië		H‰Vë	ÇTë	/_é˜LIÿ$uL‰çè)ÎÿÿHÿMuH‰ïèÎÿÿHÇD$ HÇD$(HÇD$0èÍÿÿH‰ÃH‹€H‹(H…ít	H;-¤uH‹PH…ÒtH‰ÐëáL‹`L‹pH…ítHÿEM…ätIÿ$M…ötIÿH=ÎèÄÐÿÿH‰ÇH…À„€H5ÓH‰D$è7ÍÿÿH‹|$I‰ÇHÿuèuÍÿÿM…ÿuH‹ñ£H5¯H‹8èÎÿÿé=H‹ƣI9Gt,H‹!£H5ÚH‹8èòÍÿÿIÿ…L‰ÿè!Íÿÿé1öL‰ÿèÒÿÿIÿH‰Xê	uL‰ÿèþÌÿÿH‹Gê	H…ÀuH‹ˢH5FH‹8èœÍÿÿé¿ÿ=	H‹ê	t&ÿº	H5‰ÁH‹¢H‹81Àè–Ñÿÿé‰ÿ˜ƒøH‹áé	w'ÿ˜º
H5•‰ÁH‹T¢H‹81ÀèZÑÿÿëPÿ…ÀuH‹7¢H5¸H‹81Àè6Ñÿÿë,ÿÈtH‹¢H5ÊH‹81ÀèÑÿÿëH…í…ðéùH‹ù¡L‹{XL-qÇé	L‰-é	Çé	®VL‹M9ø„òM…ÿ„ªI‹@H‹€¨ºàƒI‹@H‰D$1ÀH9D$~M;|À„·HÿÀëé1ÒH9T$ŽfI‹tÐI9÷„—I‹Gö€«€„§Aö‡«@„™H‹FH‹€¨ºàsdö†«@t[I‹XH…ÉtL‹I1ÀI9Á~<H;tÁ„<HÿÀëëL‰øH‹€H9Æ„$H…Àuë1ÀH;5c¡”À…HÿÂéSÿÿÿºàsL‰ÿH‰T$L‰D$è(dL‹D$H‹T$ëÌL‰ÿH‰T$L‰D$èjËÿÿH‹T$L‹D$ë®I‹Wö‚«€t`Aö‡«@tVºàsPAö€«@tFI‹—XH…ÒtH‹J1ÀH9ÁŽ@L;DÂtxHÿÀëëM‹¿M9øtgM…ÿuï1ÀL;¦ ”ÀëL‰ÆL‰ÿèæÊÿÿ…ÀuEéHÿMuH‰ïèÊÿÿM…ätIÿ$uL‰çèÊÿÿM…ö„5Iÿ…,L‰÷èòÉÿÿéH‹
öæ	‹üæ	H=V‹5ëæ	è.qHL$0HT$(H‰ßHt$ èÇP…ÀyL‰-¼æ	Ǿæ	
ǰæ	ÈVëjH‹5Ö	H‹=på	1ÒèQKI‰ÇH…ÀuL‰-‚æ	Ç„æ	Çvæ	ÔVë0H‰ÇèD`IÿuL‰ÿèGÉÿÿL‰-Pæ	ÇRæ	ÇDæ	ØVH‹»L‰ñL‰âH‰îèwXH‹|$ H…ÿt
HÿuèÉÿÿH‹|$(H…ÿt
HÿuèïÈÿÿH‹|$0H…ÿ„ÌGHÿ…ÃGèÓÈÿÿé¹GH‹å	òèŽÊÿÿH‰ÅH…Àu'H¸ÇÁå	_H‰®å	Ǭå	C_éIØÿÿH‹°ä	H‹5!Û	H‰êH‹¸èâÌÿÿ…Ày'HpÇyå	_H‰få	Çdå	E_é¨FHÿMuH‰ïè9ÈÿÿH‹=Zä	è
ËÿÿH‹ŽžH‹=Gä	HÿH‰mÖ	èpmH‰ÅH…Àu'H
Çå	SH‰å	Çþä	[_é›×ÿÿH‹5Ú	H‹=å	H‰Âè;Ìÿÿ…Ày'HÉÇÒä	SH‰¿ä	ǽä	]_éFHÿMuH‰ïè’ÇÿÿH‹Ëä	H‹DÔ	H9Xu#H‹-/Ô	H…ítHÿEëZH‹=Ù	è€aH‰ÅëH‹=|Ù	HÔ	H5Ô	èáaH‰ÅH…íu'H;ÇDä	UH‰1ä	Ç/ä	g_éÌÖÿÿH‹5óß	H‰ïèÃII‰ÄH…Àu*HýE1íÇä	UH‰ðã	Çîã	i_é2EHÿMuH‰ïèÃÆÿÿH‹5¤ß	H‹=õã	L‰âèËÿÿ…Ày'H«Ç´ã	UH‰¡ã	ÇŸã	l_é³EIÿ$uL‰çètÆÿÿH‹­ã	H‹Ó	H9Xu#L‹%Ó	M…ätIÿ$ëZH‹=oØ	èb`I‰ÄëH‹=^Ø	H×Ò	H5ØÒ	èÃ`I‰ÄM…äu'HÇ&ã	VH‰ã	Çã	v_é®ÕÿÿH‹5ÅÞ	L‰çè¥HH‰ÅH…Àu'Hß
Çèâ	VH‰Õâ	ÇÓâ	x_éçDIÿ$uL‰çè¨ÅÿÿH‹5yÞ	H‹=Úâ	H‰êèÊÿÿ…Ày'H
Ç™â	VH‰†â	Ç„â	{_éÈCHÿMuH‰ïèYÅÿÿH‹’â	H‹ëÑ	H9Xu#H‹-ÖÑ	H…ítHÿEëZH‹=T×	èG_H‰ÅëH‹=C×	H¬Ñ	H5­Ñ	è¨_H‰ÅH…íu'H
Çâ	WH‰øá	Çöá	…_é“ÔÿÿH‹5rÝ	H‰ïèŠGI‰ÄH…Àu*HÄE1íÇÊá	WH‰·á	ǵá	‡_éùBHÿMuH‰ïèŠÄÿÿH‹5#Ý	H‹=¼á	L‰âèäÈÿÿ…Ày'HrÇ{á	WH‰há	Çfá	Š_ézCIÿ$uL‰çè;ÄÿÿH‹tá	H‹½Ð	H9Xu#L‹%¨Ð	M…ätIÿ$ëZH‹=6Ö	è)^I‰ÄëH‹=%Ö	H~Ð	H5Ð	èŠ^I‰ÄM…äu'HäÇíà	XH‰Úà	ÇØà	”_éuÓÿÿH‹5Ü	L‰çèlFH‰ÅH…Àu'H¦Ç¯à	XH‰œà	Çšà	–_é®BIÿ$uL‰çèoÃÿÿH‹5ÀÛ	H‹=¡à	H‰êèÉÇÿÿ…Ày'HWÇ`à	XH‰Mà	ÇKà	™_éAHÿMuH‰ïè ÃÿÿH‹Yà	H‹’Ï	H9Xu#H‹-}Ï	H…ítHÿEëZH‹=Õ	è]H‰ÅëH‹=
Õ	HSÏ	H5TÏ	èo]H‰ÅH…íu'HÉ
ÇÒß	YH‰¿ß	ǽß	£_éZÒÿÿH‹5ÙÚ	H‰ïèQEI‰ÄH…Àu*H‹
E1íÇ‘ß	YH‰~ß	Ç|ß	¥_éÀ@HÿMuH‰ïèQÂÿÿH‹5ŠÚ	H‹=ƒß	L‰âè«Æÿÿ…Ày'H9
ÇBß	YH‰/ß	Ç-ß	¨_éAAIÿ$uL‰çèÂÿÿH‹;ß	H‹dÎ	H9Xu#L‹%OÎ	M…ätIÿ$ëZH‹=ýÓ	èð[I‰ÄëH‹=ìÓ	H%Î	H5&Î	èQ\I‰ÄM…äu'H«	Ç´Þ	ZH‰¡Þ	ÇŸÞ	²_é<ÑÿÿH‹5#Ù	L‰çè3DH‰ÅH…Àu'Hm	ÇvÞ	ZH‰cÞ	ÇaÞ	´_éu@Iÿ$uL‰çè6ÁÿÿH‹5ר	H‹=hÞ	H‰êèÅÿÿ…Ày'H	Ç'Þ	ZH‰Þ	ÇÞ	·_éV?HÿMuH‰ïèçÀÿÿH‹ Þ	H‹9Í	H9Xu#H‹-$Í	H…ítHÿEëZH‹=âÒ	èÕZH‰ÅëH‹=ÑÒ	HúÌ	H5ûÌ	è6[H‰ÅH…íu'HÇ™Ý	[H‰†Ý	Ç„Ý	Á_é!ÐÿÿH‹5¨×	H‰ïèCI‰ÄH…Àu*HRE1íÇXÝ	[H‰EÝ	ÇCÝ	Ã_é‡>HÿMuH‰ïèÀÿÿH‹5Y×	H‹=JÝ	L‰âèrÄÿÿ…Ày'HÇ	Ý	[H‰öÜ	ÇôÜ	Æ_é?Iÿ$uL‰çèɿÿÿH‹Ý	H‹Ì	H9Xu#L‹%öË	M…ätIÿ$ëZH‹=ÄÑ	è·YI‰ÄëH‹=³Ñ	HÌË	H5ÍË	èZI‰ÄM…äu'HrÇ{Ü	\H‰hÜ	ÇfÜ	Ð_éÏÿÿH‹5zÖ	L‰çèúAH‰ÅH…Àu'H4Ç=Ü	\H‰*Ü	Ç(Ü	Ò_é<>Iÿ$uL‰çèý¾ÿÿH‹5.Ö	H‹=/Ü	H‰êèWÃÿÿ…Ày'HåÇîÛ	\H‰ÛÛ	ÇÙÛ	Õ_é=HÿMuH‰ï设ÿÿH‹çÛ	H‹àÊ	H9Xu#H‹-ËÊ	H…ítHÿEëZH‹=©Ð	èœXH‰ÅëH‹=˜Ð	H¡Ê	H5¢Ê	èýXH‰ÅH…íu'HWÇ`Û	]H‰MÛ	ÇKÛ	ß_éèÍÿÿH‹5'Õ	H‰ïèß@I‰ÄH…Àu*HE1íÇÛ	]H‰Û	Ç
Û	á_éN<HÿMuH‰ïè߽ÿÿH‹5ØÔ	H‹=Û	L‰âè9Âÿÿ…Ày'HÇÇÐÚ	]H‰½Ú	Ç»Ú	ä_éÏ<Iÿ$uL‰ç落ÿÿH‹ÉÚ	H‹²É	H9Xu#L‹%É	M…ätIÿ$ëZH‹=‹Ï	è~WI‰ÄëH‹=zÏ	HsÉ	H5tÉ	èßWI‰ÄM…äu'H9ÇBÚ	^H‰/Ú	Ç-Ú	î_éÊÌÿÿH‹5ÉÓ	L‰çèÁ?H‰ÅH…Àu'HûÇÚ	^H‰ñÙ	ÇïÙ	ð_é<Iÿ$uL‰çèļÿÿH‹5}Ó	H‹=öÙ	H‰êèÁÿÿ…Ày'H¬ÇµÙ	^H‰¢Ù	Ç Ù	ó_éä:HÿMuH‰ïèu¼ÿÿH‹®Ù	H‹‡È	H9Xu#H‹-rÈ	H…ítHÿEëZH‹=pÎ	ècVH‰ÅëH‹=_Î	HHÈ	H5IÈ	èÄVH‰ÅH…íu'HÇ'Ù	_H‰Ù	ÇÙ	ý_é¯ËÿÿH‹5ÎÒ	H‰ïè¦>I‰ÄH…Àu*HàE1íÇæØ	_H‰ÓØ	ÇÑØ	ÿ_é:HÿMuH‰ï覻ÿÿH‹5Ò	H‹=ØØ	L‰âèÀÿÿ…Ày'HŽÇ—Ø	_H‰„Ø	Ç‚Ø	`é–:Iÿ$uL‰çèW»ÿÿH‹Ø	H‹YÇ	H9Xu#L‹%DÇ	M…ätIÿ$ëZH‹=RÍ	èEUI‰ÄëH‹=AÍ	HÇ	H5Ç	è¦UI‰ÄM…äu'HÇ	Ø	`H‰ö×	Çô×	`é‘ÊÿÿH‹5pÑ	L‰çèˆ=H‰ÅH…Àu'HÂÇË×	`H‰¸×	Ƕ×	`éÊ9Iÿ$uL‰ç苺ÿÿH‹5$Ñ	H‹=½×	H‰êèå¾ÿÿ…Ày'HsÇ|×	`H‰i×	Çg×	`é«8HÿMuH‰ïè<ºÿÿH‹u×	H‹.Æ	H9Xu#H‹-Æ	H…ítHÿEëZH‹=7Ì	è*TH‰ÅëH‹=&Ì	HïÅ	H5ðÅ	è‹TH‰ÅH…íu'HåÇîÖ	aH‰ÛÖ	ÇÙÖ	`évÉÿÿH‹5-Ð	H‰ïèm<I‰ÄH…Àu*H§E1íÇ­Ö	aH‰šÖ	ǘÖ	`éÜ7HÿMuH‰ïèm¹ÿÿH‹5ÞÏ	H‹=ŸÖ	L‰âèǽÿÿ…Ày'HUÇ^Ö	aH‰KÖ	ÇIÖ	 `é]8Iÿ$uL‰çè¹ÿÿH‹WÖ	H‹Å	H9Xu#L‹%ëÄ	M…ätIÿ$ëZH‹=Ë	èSI‰ÄëH‹=Ë	HÁÄ	H5ÂÄ	èmSI‰ÄM…äu'HÇÇÐÕ	bH‰½Õ	Ç»Õ	*`éXÈÿÿH‹5Î	L‰çèO;H‰ÅH…Àu'H‰Ç’Õ	bH‰Õ	Ç}Õ	,`é‘7Iÿ$uL‰çèR¸ÿÿH‹5ËÍ	H‹=„Õ	H‰ê謼ÿÿ…Ày'H:ÇCÕ	bH‰0Õ	Ç.Õ	/`ér6HÿMuH‰ïè¸ÿÿH‹<Õ	H‹ÕÃ	H9Xu#H‹-ÀÃ	H…ítHÿEëZH‹=þÉ	èñQH‰ÅëH‹=íÉ	H–Ã	H5—Ã	èRRH‰ÅH…íu'H¬ÿǵÔ	cH‰¢Ô	Ç Ô	9`é=ÇÿÿH‹5ŒÌ	H‰ïè4:I‰ÄH…Àu*HnÿE1íÇtÔ	cH‰aÔ	Ç_Ô	;`é£5HÿMuH‰ïè4·ÿÿH‹5=Ì	H‹=fÔ	L‰â莻ÿÿ…Ày'HÿÇ%Ô	cH‰Ô	ÇÔ	>`é$6Iÿ$uL‰çèå¶ÿÿH‹Ô	H‹§Â	H9Xu#L‹%’Â	M…ätIÿ$ëZH‹=àÈ	èÓPI‰ÄëH‹=ÏÈ	HhÂ	H5iÂ	è4QI‰ÄM…äu'HŽþÇ—Ó	dH‰„Ó	Ç‚Ó	H`éÆÿÿH‹5VË	L‰çè9H‰ÅH…Àu'HPþÇYÓ	dH‰FÓ	ÇDÓ	J`éX5Iÿ$uL‰çè¶ÿÿH‹5
Ë	H‹=KÓ	H‰êèsºÿÿ…Ày'HþÇ
Ó	dH‰÷Ò	ÇõÒ	M`é94HÿMuH‰ïèʵÿÿH‹Ó	H‹|Á	H9Xu#H‹-gÁ	H…ítHÿEëZH‹=ÅÇ	è¸OH‰ÅëH‹=´Ç	H=Á	H5>Á	èPH‰ÅH…íu'HsýÇ|Ò	eH‰iÒ	ÇgÒ	W`éÅÿÿH‹5#Ê	H‰ïèû7I‰ÄH…Àu*H5ýE1íÇ;Ò	eH‰(Ò	Ç&Ò	Y`éj3HÿMuH‰ïèû´ÿÿH‹5ÔÉ	H‹=-Ò	L‰âèU¹ÿÿ…Ày'HãüÇìÑ	eH‰ÙÑ	Ç×Ñ	\`éë3Iÿ$uL‰ç謴ÿÿH‹åÑ	H‹NÀ	H9Xu#L‹%9À	M…ätIÿ$ëZH‹=§Æ	èšNI‰ÄëH‹=–Æ	HÀ	H5À	èûNI‰ÄM…äu'HUüÇ^Ñ	fH‰KÑ	ÇIÑ	f`éæÃÿÿH‹5}È	L‰çèÝ6H‰ÅH…Àu'HüÇ Ñ	fH‰
Ñ	ÇÑ	h`é3Iÿ$uL‰çèà³ÿÿH‹51È	H‹=Ñ	H‰êè:¸ÿÿ…Ày'HÈûÇÑÐ	fH‰¾Ð	ǼÐ	k`é2HÿMuH‰ï葳ÿÿH‹ÊÐ	H‹#¿	H9Xu#H‹-¿	H…ítHÿEëZH‹=ŒÅ	èMH‰ÅëH‹={Å	Hä¾	H5å¾	èàMH‰ÅH…íu'H:ûÇCÐ	gH‰0Ð	Ç.Ð	u`éËÂÿÿH‹5JÇ	H‰ïèÂ5I‰ÄH…Àu*HüúE1íÇÐ	gH‰ïÏ	ÇíÏ	w`é11HÿMuH‰ïè²ÿÿH‹5ûÆ	H‹=ôÏ	L‰âè·ÿÿ…Ày'HªúdzÏ	gH‰ Ï	ÇžÏ	z`é²1Iÿ$uL‰çès²ÿÿH‹¬Ï	H‹õ½	H9Xu#L‹%à½	M…ätIÿ$ëZH‹=nÄ	èaLI‰ÄëH‹=]Ä	H¶½	H5·½	èÂLI‰ÄM…äu'HúÇ%Ï	hH‰Ï	ÇÏ	„`é­ÁÿÿH‹5ÌÅ	L‰çè¤4H‰ÅH…Àu'HÞùÇçÎ	hH‰ÔÎ	ÇÒÎ	†`éæ0Iÿ$uL‰ç觱ÿÿH‹5€Å	H‹=ÙÎ	H‰êè¶ÿÿ…Ày'HùǘÎ	hH‰…Î	ǃÎ	‰`éÇ/HÿMuH‰ïèX±ÿÿH‹‘Î	H‹
ʼ	H9Hu#H‹-µ¼	H…ítHÿEëZH‹=SÃ	èFKH‰ÅëH‹=BÃ	H‹¼	H5Œ¼	è§KH‰ÅH…íu'HùÇ
Î	iH‰÷Í	ÇõÍ	“`é’ÀÿÿH‹5iÄ	H‰ïè‰3I‰ÄH…Àu*HÃøE1íÇÉÍ	iH‰¶Í	Ç´Í	•`éø.HÿMuH‰ï艰ÿÿH‹5Ä	H‹=»Í	L‰âèã´ÿÿ…Ày'HqøÇzÍ	iH‰gÍ	ÇeÍ	˜`éy/Iÿ$uL‰çè:°ÿÿH‹sÍ	H‹œ»	H9Xu#L‹%‡»	M…ätIÿ$ëZH‹=5Â	è(JI‰ÄëH‹=$Â	H]»	H5^»	è‰JI‰ÄM…äu'Hã÷ÇìÌ	jH‰ÙÌ	Ç×Ì	¢`ét¿ÿÿH‹53Ã	L‰çèk2H‰ÅH…Àu'H¥÷Ç®Ì	jH‰›Ì	Ç™Ì	¤`é­.Iÿ$uL‰çèn¯ÿÿH‹5çÂ	H‹= Ì	H‰êèȳÿÿ…Ày'HV÷Ç_Ì	jH‰LÌ	ÇJÌ	§`éŽ-HÿMuH‰ïè¯ÿÿH‹XÌ	H‹
qº	H9Hu#H‹-\º	H…ítHÿEëZH‹=Á	è
IH‰ÅëH‹=	Á	H2º	H53º	ènIH‰ÅH…íu'HÈöÇÑË	kH‰¾Ë	ǼË	±`éY¾ÿÿH‹5Â	H‰ïèP1I‰ÄH…Àu*HŠöE1íǐË	kH‰}Ë	Ç{Ë	³`é¿,HÿMuH‰ïèP®ÿÿH‹5±Á	H‹=‚Ë	L‰â課ÿÿ…Ày'H8öÇAË	kH‰.Ë	Ç,Ë	¶`é@-Iÿ$uL‰çè®ÿÿH‹:Ë	H‹C¹	H9Xu#L‹%.¹	M…ätIÿ$ëZH‹=ü¿	èïGI‰ÄëH‹=ë¿	H¹	H5¹	èPHI‰ÄM…äu'HªõdzÊ	lH‰ Ê	ÇžÊ	À`é;½ÿÿH‹5jÀ	L‰çè20H‰ÅH…Àu'HlõÇuÊ	lH‰bÊ	Ç`Ê	Â`ét,Iÿ$uL‰çè5­ÿÿH‹5À	H‹=gÊ	H‰ê菱ÿÿ…Ày'HõÇ&Ê	lH‰Ê	ÇÊ	Å`éU+HÿMuH‰ïèæ¬ÿÿH‹Ê	H‹
¸	H9Hu#H‹-¸	H…ítHÿEëZH‹=á¾	èÔFH‰ÅëH‹=о	Hٷ	H5ڷ	è5GH‰ÅH…íu'HôǘÉ	mH‰…É	ǃÉ	Ï`é ¼ÿÿH‹57¿	H‰ïè/I‰ÄH…Àu*HQôE1íÇWÉ	mH‰DÉ	ÇBÉ	Ñ`é†*HÿMuH‰ïè¬ÿÿH‹5è¾	H‹=IÉ	L‰âèq°ÿÿ…Ày'HÿóÇÉ	mH‰õÈ	ÇóÈ	Ô`é+Iÿ$uL‰çèȫÿÿH‹É	H‹ê¶	H9Xu#L‹%ն	M…ätIÿ$ëZH‹=ý	è¶EI‰ÄëH‹=²½	H«¶	H5¬¶	èFI‰ÄM…äu'HqóÇzÈ	nH‰gÈ	ÇeÈ	Þ`é»ÿÿH‹5ù½	L‰çèù-H‰ÅH…Àu'H3óÇ<È	nH‰)È	Ç'È	à`é;*Iÿ$uL‰çèüªÿÿH‹5­½	H‹=.È	H‰êèV¯ÿÿ…Ày'HäòÇíÇ	nH‰ÚÇ	ÇØÇ	ã`é)HÿMuH‰ï譪ÿÿH‹æÇ	H‹
¿µ	H9Hu#H‹-ªµ	H…ítHÿEëZH‹=¨¼	è›DH‰ÅëH‹=—¼	H€µ	H5µ	èüDH‰ÅH…íu'HVòÇ_Ç	oH‰LÇ	ÇJÇ	í`éç¹ÿÿH‹5¶¼	H‰ïèÞ,I‰ÄH…Àu*HòE1íÇÇ	oH‰Ç	Ç	Ç	ï`éM(HÿMuH‰ïèީÿÿH‹5g¼	H‹=Ç	L‰âè8®ÿÿ…Ày'HÆñÇÏÆ	oH‰¼Æ	ǺÆ	ò`éÎ(Iÿ$uL‰ç菩ÿÿH‹ÈÆ	H‹‘´	H9Xu#L‹%|´	M…ätIÿ$ëZH‹=Š»	è}CI‰ÄëH‹=y»	HR´	H5S´	èÞCI‰ÄM…äu'H8ñÇAÆ	pH‰.Æ	Ç,Æ	ü`éɸÿÿH‹5@»	L‰çèÀ+H‰ÅH…Àu'HúðÇÆ	pH‰ðÅ	ÇîÅ	þ`é(Iÿ$uL‰çèèÿÿH‹5ôº	H‹=õÅ	H‰êè­ÿÿ…Ày'H«ðÇ´Å	pH‰¡Å	ÇŸÅ	aéã&HÿMuH‰ïèt¨ÿÿH‹­Å	H‹
f³	H9Hu#H‹-Q³	H…ítHÿEëZH‹=oº	èbBH‰ÅëH‹=^º	H'³	H5(³	èÃBH‰ÅH…íu'HðÇ&Å	qH‰Å	ÇÅ	a鮷ÿÿH‹5º	H‰ïè¥*I‰ÄH…Àu*HßïE1íÇåÄ	qH‰ÒÄ	ÇÐÄ	
aé&HÿMuH‰ï襧ÿÿH‹5¶¹	H‹=×Ä	L‰âèÿ«ÿÿ…Ày'HïÇ–Ä	qH‰ƒÄ	ǁÄ	aé•&Iÿ$uL‰çèV§ÿÿH‹Ä	H‹8²	H9Xu#L‹%#²	M…ätIÿ$ëZH‹=Q¹	èDAI‰ÄëH‹=@¹	Hù±	H5ú±	è¥AI‰ÄM…äu'HÿîÇÄ	rH‰õÃ	ÇóÃ	a鐶ÿÿH‹5ϸ	L‰çè‡)H‰ÅH…Àu'HÁîÇÊÃ	rH‰·Ã	ǵÃ	aéÉ%Iÿ$uL‰ç芦ÿÿH‹5ƒ¸	H‹=¼Ã	H‰êèäªÿÿ…Ày'HrîÇ{Ã	rH‰hÃ	ÇfÃ	aéª$HÿMuH‰ïè;¦ÿÿH‹tÃ	H‹

±	H9Hu#H‹-ø°	H…ítHÿEëZH‹=6¸	è)@H‰ÅëH‹=%¸	Hΰ	H5ϰ	èŠ@H‰ÅH…íu'HäíÇíÂ	sH‰ÚÂ	ÇØÂ	)aéuµÿÿH‹5œ·	H‰ïèl(I‰ÄH…Àu*H¦íE1íǬÂ	sH‰™Â	Ç—Â	+aéÛ#HÿMuH‰ïèl¥ÿÿH‹5M·	H‹=žÂ	L‰âèƩÿÿ…Ày'HTíÇ]Â	sH‰JÂ	ÇHÂ	.aé\$Iÿ$uL‰çè¥ÿÿH‹VÂ	H‹߯	H9Xu#L‹%ʯ	M…ätIÿ$ëZH‹=·	è?I‰ÄëH‹=·	H ¯	H5¡¯	èl?I‰ÄM…äu'HÆìÇÏÁ	tH‰¼Á	ǺÁ	8aéW´ÿÿH‹5n¶	L‰çèN'H‰ÅH…Àu'HˆìÇ‘Á	tH‰~Á	Ç|Á	:aé#Iÿ$uL‰çèQ¤ÿÿH‹5"¶	H‹=ƒÁ	H‰ê諨ÿÿ…Ày'H9ìÇBÁ	tH‰/Á	Ç-Á	=aéq"HÿMuH‰ïè¤ÿÿH‹;Á	H‹
´®	H9Hu#H‹-Ÿ®	H…ítHÿEëZH‹=ýµ	èð=H‰ÅëH‹=ìµ	Hu®	H5v®	èQ>H‰ÅH…íu'H«ëÇ´À	uH‰¡À	ÇŸÀ	Gaé<³ÿÿH‹5;µ	H‰ïè3&I‰ÄH…Àu*HmëE1íÇsÀ	uH‰`À	Ç^À	Iaé¢!HÿMuH‰ïè3£ÿÿH‹5ì´	H‹=eÀ	L‰â荧ÿÿ…Ày'HëÇ$À	uH‰À	ÇÀ	Laé#"Iÿ$uL‰çèä¢ÿÿH‹À	H‹†­	H9Xu#L‹%q­	M…ätIÿ$ëZH‹=ߴ	èÒ<I‰ÄëH‹=δ	HG­	H5H­	è3=I‰ÄM…äu'HêÇ–¿	vH‰ƒ¿	ǁ¿	Vaé²ÿÿH‹5ݳ	L‰çè%H‰ÅH…Àu'HOêÇX¿	vH‰E¿	ÇC¿	XaéW!Iÿ$uL‰çè¢ÿÿH‹5‘³	H‹=J¿	H‰êèr¦ÿÿ…Ày'HêÇ	¿	vH‰ö¾	Çô¾	[aé8 HÿMuH‰ïèɡÿÿH‹¿	H‹
[¬	H9Hu#H‹-F¬	H…ítHÿEëZH‹=ij	è·;H‰ÅëH‹=³³	H¬	H5¬	è<H‰ÅH…íu'HréÇ{¾	wH‰h¾	Çf¾	eaé±ÿÿH‹5B²	H‰ïèú#I‰ÄH…Àu*H4éE1íÇ:¾	wH‰'¾	Ç%¾	gaéiHÿMuH‰ïèú ÿÿH‹5ó±	H‹=,¾	L‰âèT¥ÿÿ…Ày'HâèÇë½	wH‰ؽ	Çֽ	jaéêIÿ$uL‰ç諠ÿÿH‹ä½	H‹-«	H9Xu#L‹%«	M…ätIÿ$ëZH‹=¦²	è™:I‰ÄëH‹=•²	Hîª	H5ïª	èú:I‰ÄM…äu'HTèÇ]½	xH‰J½	ÇH½	taéå¯ÿÿH‹5±	L‰çèÜ"H‰ÅH…Àu'Hèǽ	xH‰½	Ç
½	vaéIÿ$uL‰çèߟÿÿH‹50	H‹=½	H‰êè9¤ÿÿ…Ày'HÇçÇм	xH‰½¼	Ç»¼	yaéÿHÿMuH‰ï萟ÿÿH‹ɼ	H‹
ª	H9Hu#H‹-í©	H…ítHÿEëZH‹=‹±	è~9H‰ÅëH‹=z±	Hé	H5ĩ	èß9H‰ÅH…íu'H9çÇB¼	yH‰/¼	Ç-¼	ƒaéʮÿÿH‹5ɯ	H‰ïèÁ!I‰ÄH…Àu*HûæE1íǼ	yH‰î»	Çì»	…aé0HÿMuH‰ïè^ÿÿH‹5z¯	H‹=ó»	L‰âè£ÿÿ…Ày'H©æÇ²»	yH‰Ÿ»	ǝ»	ˆaé±Iÿ$uL‰çèržÿÿH‹«»	H‹Ԩ	H9Xu#L‹%¿¨	M…ätIÿ$ëZH‹=m°	è`8I‰ÄëH‹=\°	H•¨	H5–¨	èÁ8I‰ÄM…äu'HæÇ$»	zH‰»	Ç»	’a鬭ÿÿH‹5c®	L‰çè£ H‰ÅH…Àu'HÝåÇæº	zH‰Ӻ	ÇѺ	”aéåIÿ$uL‰ç覝ÿÿH‹5®	H‹=غ	H‰êè¢ÿÿ…Ày'HŽåÇ—º	zH‰„º	Ç‚º	—aéÆHÿMuH‰ïèWÿÿH‹º	H‹
©§	H9Hu#H‹-”§	H…ítHÿEëZH‹=R¯	èE7H‰ÅëH‹=A¯	Hj§	H5k§	è¦7H‰ÅH…íu'HåÇ	º	{H‰ö¹	Çô¹	¡a鑬ÿÿH‹50­	H‰ïèˆI‰ÄH…Àu*HÂäE1íÇȹ	{H‰µ¹	dz¹	£aé÷HÿMuH‰ï舜ÿÿH‹5á¬	H‹=º¹	L‰âèâ ÿÿ…Ày'HpäÇy¹	{H‰f¹	Çd¹	¦aéxIÿ$uL‰çè9œÿÿH‹r¹	H‹{¦	H9Xu#L‹%f¦	M…ätIÿ$ëZH‹=4®	è'6I‰ÄëH‹=#®	H<¦	H5=¦	èˆ6I‰ÄM…äu'HâãÇë¸	|H‰ظ	Çָ	°aés«ÿÿH‹5ú«	L‰çèjH‰ÅH…Àu'H¤ãÇ­¸	|H‰š¸	ǘ¸	²aé¬Iÿ$uL‰çèm›ÿÿH‹5®«	H‹=Ÿ¸	H‰êèǟÿÿ…Ày'HUãÇ^¸	|H‰K¸	ÇI¸	µaéHÿMuH‰ïè›ÿÿH‹W¸	H‹
P¥	H9Hu#H‹-;¥	H…ítHÿEëZH‹=­	è5H‰ÅëH‹=­	H¥	H5¥	èm5H‰ÅH…íu'HÇâÇз	}H‰½·	Ç»·	¿aéXªÿÿH‹5Ǫ	H‰ïèOI‰ÄH…Àu*H‰âE1íǏ·	}H‰|·	Çz·	Áaé¾HÿMuH‰ïèOšÿÿH‹5xª	H‹=·	L‰â詞ÿÿ…Ày'H7âÇ@·	}H‰-·	Ç+·	Äaé?Iÿ$uL‰çèšÿÿH‹9·	H‹"¤	H9Xu#L‹%
¤	M…ätIÿ$ëZH‹=û«	èî3I‰ÄëH‹=ê«	Hã£	H5ä£	èO4I‰ÄM…äu'H©áDz¶	~H‰Ÿ¶	ǝ¶	Îaé:©ÿÿH‹5‘©	L‰çè1H‰ÅH…Àu'HkáÇt¶	~H‰a¶	Ç_¶	ÐaésIÿ$uL‰çè4™ÿÿH‹5E©	H‹=f¶	H‰ê莝ÿÿ…Ày'HáÇ%¶	~H‰¶	Ƕ	ÓaéTHÿMuH‰ïèå˜ÿÿH‹¶	H‹
÷¢	H9Hu#H‹-â¢	H…ítHÿEëZH‹=àª	èÓ2H‰ÅëH‹=Ϫ	H¸¢	H5¹¢	è43H‰ÅH…íu'HŽàÇ—µ	H‰„µ	Ç‚µ	Ýaé¨ÿÿH‹5î§	H‰ïèI‰ÄH…Àu*HPàE1íÇVµ	H‰Cµ	ÇAµ	ßaé…HÿMuH‰ïè˜ÿÿH‹5Ÿ§	H‹=Hµ	L‰âèpœÿÿ…Ày'Hþßǵ	H‰ô´	Çò´	âaéIÿ$uL‰çèǗÿÿH‹µ	H‹ɡ	H9Xu#L‹%´¡	M…ätIÿ$ëZH‹=©	èµ1I‰ÄëH‹=±©	HŠ¡	H5‹¡	è2I‰ÄM…äu'HpßÇy´	€H‰f´	Çd´	ìaé§ÿÿH‹5ˆ¦	L‰çèøH‰ÅH…Àu'H2ßÇ;´	€H‰(´	Ç&´	îaé:Iÿ$uL‰çèû–ÿÿH‹5<¦	H‹=-´	H‰êèU›ÿÿ…Ày'HãÞÇì³	€H‰ٳ	Ç׳	ñaéHÿMuH‰ï謖ÿÿH‹å³	H‹
ž 	H9Hu#H‹-‰ 	H…ítHÿEëZH‹=§¨	èš0H‰ÅëH‹=–¨	H_ 	H5` 	èû0H‰ÅH…íu'HUÞÇ^³	H‰K³	ÇI³	ûa鿥ÿÿH‹5=¥	H‰ïèÝI‰ÄH…Àu*HÞE1ídz	H‰
³	dz	ýaéLHÿMuH‰ïèݕÿÿH‹5î¤	H‹=³	L‰âè7šÿÿ…Ày'HÅÝÇβ	H‰»²	ǹ²	béÍIÿ$uL‰ç莕ÿÿH‹Dz	H‹pŸ	H9Xu#L‹%[Ÿ	M…ätIÿ$ëZH‹=‰§	è|/I‰ÄëH‹=x§	H1Ÿ	H52Ÿ	èÝ/I‰ÄM…äu'H7ÝÇ@²	‚H‰-²	Ç+²	
béȤÿÿH‹5¤	L‰çè¿H‰ÅH…Àu'HùÜDz	‚H‰ï±	Çí±	béIÿ$uL‰çè”ÿÿH‹5»£	H‹=ô±	H‰êè™ÿÿ…Ày'HªÜdz±	‚H‰ ±	Çž±	béâHÿMuH‰ïès”ÿÿH‹¬±	H‹
Ež	H9Hu#H‹-0ž	H…ítHÿEëZH‹=n¦	èa.H‰ÅëH‹=]¦	Hž	H5ž	èÂ.H‰ÅH…íu'HÜÇ%±	ƒH‰±	DZ	b魣ÿÿH‹5¼¢	H‰ïè¤I‰ÄH…Àu*HÞÛE1íÇä°	ƒH‰Ѱ	Çϰ	béHÿMuH‰ï褓ÿÿH‹5m¢	H‹=ְ	L‰âèþ—ÿÿ…Ày'HŒÛÇ•°	ƒH‰‚°	Ç€°	bé”Iÿ$uL‰çèU“ÿÿH‹ް	H‹	H9Xu#L‹%	M…ätIÿ$ëZH‹=P¥	èC-I‰ÄëH‹=?¥	H؜	H5ٜ	è¤-I‰ÄM…äu'HþÚǰ	„H‰ô¯	Çò¯	(b鏢ÿÿH‹5v¡	L‰çè†H‰ÅH…Àu'HÀÚÇɯ	„H‰¶¯	Ç´¯	*béÈIÿ$uL‰ç艒ÿÿH‹5*¡	H‹=»¯	H‰êèã–ÿÿ…Ày'HqÚÇz¯	„H‰g¯	Çe¯	-bé©HÿMuH‰ïè:’ÿÿH‹K¥	1öH=Z–	蕑ÿÿH‰ÅH…Àu'HÚÇ(¯	‡H‰¯	ǯ	7b鰡ÿÿH‹5£	H‹=(¯	H‰ÂèP–ÿÿ…Ày'HÞÙÇç®	‡H‰Ԯ	ÇҮ	9béHÿMuH‰ï觑ÿÿH‹¸¤	1öH=§•	è‘ÿÿH‰ÅH…Àu'HŒÙÇ•®	ŽH‰‚®	Ç€®	Cbé¡ÿÿH‹5ü¢	H‹=•®	H‰Â轕ÿÿ…Ày'HKÙÇT®	ŽH‰A®	Ç?®	EbéƒHÿMuH‰ïè‘ÿÿ¿3èʏÿÿH‰ÅH…Àu'HÙÇ
®	•H‰ú­	Çø­	Ob镠ÿÿH‹@H‹°©	HÿH‰H‹“©	HÿH‰PH‹M©	HÿH‰PH‹÷¨	HÿH‰PH‹Ѩ	HÿH‰P H‹+¨	HÿH‰P(H‹½§	HÿH‰P0H‹Ÿ§	HÿH‰P8H‹Y§	HÿH‰P@H‹+§	HÿH‰PHH‹ý¦	HÿH‰PPH‹Ϧ	HÿH‰PXH‹™¦	HÿH‰P`H‹“¥	HÿH‰PhH‹¥	HÿH‰PpH‹ï¤	HÿH‰PxH‹ɤ	HÿH‰€H‹0¤	HÿH‰ˆH‹¤	HÿH‰H‹–£	HÿH‰˜H‹=£	HÿH‰ H‹£	HÿH‰¨H‹ë¢	HÿH‰°H‹b¢	HÿH‰¸H‹9¢	HÿH‰ÀH‹¢	HÿH‰ÈH‹ϡ	HÿH‰ÐH‹f¡	HÿH‰ØH‹5¡	HÿH‰àH‹¡	HÿH‰èH‹ã 	HÿH‰ðH‹ 	HÿH‰øH‹™ 	HÿH‰H‹h 	HÿH‰H‹7 	HÿH‰H‹Ο	HÿH‰H‹•Ÿ	HÿH‰ H‹lŸ	HÿH‰(H‹3Ÿ	HÿH‰0H‹ڞ	HÿH‰8H‹±ž	HÿH‰@H‹ˆž	HÿH‰HH‹_ž	HÿH‰PH‹6ž	HÿH‰XH‹	HÿH‰`H‹D	HÿH‰hH‹	HÿH‰pH‹ڜ	HÿH‰xH‹™œ	H‹5"§	H‹=«	HÿH‰€H‹Rœ	HÿH‰ˆH‹	©	HÿH‰H‰êèÿ‘ÿÿ…Ày'HÕÇ–ª	•H‰ƒª	ǁª	êbéÅHÿMuH‰ïèVÿÿ¿,輒ÿÿH‰ÅH…Àu'HFÕÇOª	H‰<ª	Ç:ª	òbéלÿÿH‹ž	H‹5§	H‰Çèw‘ÿÿ…Ày'HÕǪ	H‰û©	Çù©	ôbé=H‹…ž	H‹5N§	H‰ïè6‘ÿÿ…Ày'HÄÔÇͩ	H‰º©	Ǹ©	õbéü
H‹äœ	H‹5å¦	H‰ïèõÿÿ…Ày'HƒÔÇŒ©	H‰y©	Çw©	öbé»
H‹ë›	H‹5„¦	H‰ï贐ÿÿ…Ày'HBÔÇK©	H‰8©	Ç6©	÷béz
H‹ž	H‹5£¦	H‰ïèsÿÿ…Ày'HÔÇ
©	H‰÷¨	Çõ¨	øbé9
H‹a¤	H‹5"§	H‰ïè2ÿÿ…Ày'HÀÓÇɨ	H‰¶¨	Ç´¨	ùbéø	H‹#	H‹5Ѧ	H‰ïèñÿÿ…Ày'HÓLj¨	H‰u¨	Çs¨	úbé·	H‹‡š	H‹5p¥	H‰ï谏ÿÿ…Ày'H>ÓÇG¨	H‰4¨	Ç2¨	ûbév	H‹.	H‹5§¥	H‰ïèoÿÿ…Ày'HýÒǨ	H‰ó§	Çñ§	übé5	H‹½œ	H‹5V¥	H‰ïè.ÿÿ…Ày'H¼ÒÇŧ	H‰²§	ǰ§	ýbéôH‹Tœ	H‹5
¥	H‰ïèíŽÿÿ…Ày'H{ÒÇ„§	H‰q§	Ço§	þbé³H‹kš	H‹5Œ¤	H‰ï謎ÿÿ…Ày'H:ÒÇC§	H‰0§	Ç.§	ÿbérH‹b	H‹5ˤ	H‰ïèkŽÿÿ…Ày'HùÑǧ	H‰ï¦	Çí¦	cé1H‹š	H‹5¤	H‰ïè*Žÿÿ…Ày'H¸ÑÇf	H‰®¦	Ǭ¦	céðH‹x 	H‹5±¤	H‰ïèéÿÿ…Ày'HwÑÇ€¦	H‰m¦	Çk¦	cé¯H‹o 	H‹5x¤	H‰ï訍ÿÿ…Ày'H6ÑÇ?¦	H‰,¦	Ç*¦	cénH‹vœ	H‹5ϣ	H‰ïègÿÿ…Ày'HõÐÇþ¥	H‰ë¥	Çé¥	cé-H‹
¡	H‹5¤	H‰ïè&ÿÿ…Ày'H´Ðǽ¥	H‰ª¥	Ǩ¥	céìH‹œ	H‹5U£	H‰ïèåŒÿÿ…Ày'HsÐÇ|¥	H‰i¥	Çg¥	cé«H‹«˜	H‹5œ¢	H‰ï褌ÿÿ…Ày'H2ÐÇ;¥	H‰(¥	Ç&¥	céjH‹
˜	H‹5;¢	H‰ïècŒÿÿ…Ày'HñÏÇú¤	H‰ç¤	Çå¤	cé)H‹ɖ	H‹5ڡ	H‰ïè"Œÿÿ…Ày'H°Ïǹ¤	H‰¦¤	Ǥ¤		céèH‹`š	H‹59¢	H‰ïèá‹ÿÿ…Ày'HoÏÇx¤	H‰e¤	Çc¤	
cé§H‹ÿ•	H‹5H¡	H‰ï蠋ÿÿ…Ày'H.ÏÇ7¤	H‰$¤	Ç"¤	céfH‹~™	H‹5Ÿ¡	H‰ïè_‹ÿÿ…Ày'HíÎÇö£	H‰ã£	Çá£	cé%H‹-œ	H‹5ơ	H‰ïè‹ÿÿ…Ày'H¬Îǵ£	H‰¢£	Ç £	
céäH‹	H‹5•¡	H‰ïè݊ÿÿ…Ày'HkÎÇt£	H‰a£	Ç_£	cé£H‹;›	H‹5<¡	H‰ï蜊ÿÿ…Ày'H*ÎÇ3£	H‰ £	Ç£	cébH‹âš	H‹5ó 	H‰ïè[Šÿÿ…Ày'HéÍÇò¢	H‰ߢ	Çݢ	cé!H‹)—	H‹5* 	H‰ïèŠÿÿ…Ày'H¨ÍDZ¢	H‰ž¢	Çœ¢	céàH‹h”	H‹5‰Ÿ	H‰ïèىÿÿ…Ày'HgÍÇp¢	H‰]¢	Ç[¢	céŸH‹·”	H‹5`Ÿ	H‰ï蘉ÿÿ…Ày'H&ÍÇ/¢	H‰¢	Ç¢	cé^H‹¾	H‹5O 	H‰ïèW‰ÿÿ…Ày'HåÌÇî¡	H‰ۡ	Ç١	céH‹…˜	H‹5ŽŸ	H‰ïè‰ÿÿ…Ày'H¤ÌÇ­¡	H‰š¡	ǘ¡	céÜH‹—	H‹5Ÿ	H‰ïèՈÿÿ…Ày'HcÌÇl¡	H‰Y¡	ÇW¡	cé›H‹˒	H‹54ž	H‰ï蔈ÿÿ…Ày'H"ÌÇ+¡	H‰¡	Ç¡	céZH‹š	H‹5Ÿ	H‰ïèSˆÿÿ…Ày'HáËÇê 	H‰נ	Çՠ	céH‹š	H‹5ž	H‰ïèˆÿÿ…Ày'H ËÇ© 	H‰– 	Ç” 	céØH‹@˜	H‹5až	H‰ïèчÿÿ…Ày'H_ËÇh 	H‰U 	ÇS 	cé—H‹_—	H‹5ž	H‰ï萇ÿÿ…Ày'HËÇ' 	H‰ 	Ç 	céVH‹6—	H‹5ם	H‰ïèO‡ÿÿ…Ày'HÝÊÇæŸ	H‰ӟ	Çџ	céH‹Eš	H‹5æ	H‰ïè‡ÿÿ…Ày'HœÊÇ¥Ÿ	H‰’Ÿ	ǐŸ	céÔH‹“	H‹5͜	H‰ïè͆ÿÿ…Ày'H[ÊÇdŸ	H‰QŸ	ÇOŸ	cé“H‹ó”	H‹5ܜ	H‰ï茆ÿÿ…Ày$HÊÇ#Ÿ	H‰Ÿ	ÇŸ	cëUH‹5‘	H‹=&Ÿ	H‰êèN†ÿÿ…Ày$HÜÉÇåž	H‰Ҟ	ÇО	 cëHÿM…ܑÿÿH‰ï褁ÿÿéϑÿÿHÿMuH‰ï葁ÿÿM…í„B‘ÿÿIÿM…8‘ÿÿL‰ïèvÿÿé+‘ÿÿHÿM…!‘ÿÿH‰ïè_ÿÿé‘ÿÿHÿM…
‘ÿÿH‰ïèHÿÿéýÿÿHÿM…óÿÿH‰ïè1ÿÿ鿐ÿÿHÿM…ܐÿÿH‰ïèÿÿéϐÿÿH‹
ž	‹$ž	H=~Ì‹5ž	èV(HøÈÇž	H‰î	Çì	:_鉐ÿÿM‰åé?ÿÿÿH‹Œ$dH3%(tè?ÿÿHÄ[]A\A]A^A_ÃóúH=B{	é½ÿÿf.„H=Ʉ	H„	H9øtH‹&VH…Àt	ÿà€Ã€H=™„	H5’„	H)þH‰ðHÁî?HÁøHÆHÑþtH‹ÍVH…ÀtÿàfDÀóú€=U„	u+UHƒ=²VH‰åtH‹=žZèy~ÿÿèdÿÿÿÆ-„	]ÃÀóúéwÿÿÿ€óúH‹íUÇGPHÇGXHƒÐóúATI‰ÔUH‰õSH‰ûH‹H…ÿt	H‰ÖÿՅÀuH‹»è1ÀH…ÿt[L‰æH‰è]A\ÿà[]A\Ãff.„óúH‹GHƒÃA‰ð‰ðAƒèxeIcÈHÁá9T|PE…À~S1öë€}9pA9ð~'D‰Á)ñ‰ÈÁèÈÑøðHcÈHÁá‹L9Ñ~×A‰ÀA9ðÙ9ʟ¶ÒÐÃ@À‹O1Àëâf„óúHƒìö‡ªu71öÿ—0H…Àt!H‹£›	H‰PH‹ÈTHƒH‰PH‰èHƒÄÃ@H‹ÑTH‹5’›	1Òÿ8ë¹H‹GE1ÀL‹H‹@¨ uL‹G¨uL‰ÇAÿá1ÉL‰ÇAÿá„AVAUI‰ÕATI‰ôUH‰ýSH‹GL‹°€M…ötw躀ÿÿ‹X KH‹T‰H ;nL‰æL‰êH‰ïAÿÖI‰Ä蒀ÿÿ‹p Vÿ‰P ‹HÎ=È~9Ê|#M…ät\[L‰à]A\A]A^ÄÁø@9Ê}ÝèQ€ÿÿÆ@$ëÒ[]A\A]A^éK‚ÿÿH=Q¤èìÿÿ…Àt‚„E1äë§èc€ÿÿI‰ÄH…ÀuëH‹SH5=¤H‹8è~ÿÿé|ÿÿÿH‹GH‹€H…ÀtÿàfDés‚ÿÿóúAWL~ÿAVAUATUSHƒìL‰$M…ÿ~mHG L‰ûH‰ÕI‰ÌH‰D$H¯ÙM‰ÍH$@H‹|$L‰þèã…H‹$H‰êL‰ïI¯ÄL4L‰öèyÿÿH‰ÞH‰êL‰÷èkÿÿH‰ßH‰êL‰îè]ÿÿL)ãIƒïu´H‹ÅRHƒHƒÄ[]A\A]A^A_Ãf.„AVI‰ÎAUATI‰üUH‰õSH‰Óèw{ÿÿ1ÉL‰òL‰æH‰ÇI‰Åè”{ÿÿH…ÀtpH‹
8™	I‰Ä1ÀLáH…Û~H‹TÅHƒH‰ÁHƒÀH9Ãuê1öL‰çè}ÿÿI‰ÆA‹E PA‰U Iƒ,$tA‰E [L‰ð]A\A]A^ÃL‰çèØ{ÿÿA‹E ƒèëÜE1öëÛf.„UH‹GH‰ýL‹@ö€«t3H‹œQL‰~Hµ¢H‹81ÀèKÿÿA‰ÀH‰èE…Àu&]ÃfDH‹qQH‰òH‰ñH5,£H‹81ÀèJ€ÿÿHƒmt1À]ÀH‰ïè@{ÿÿ1Àëëff.„UHƒìH‹Gö€«„êH‹GHƒÀHƒø‡£H1ÈHc‚HÐ>ÿà€1ÀHƒÄ]Ä‹GHƒÄ]À‹W‹GHÁâH	ÂHcʉÐH9ÑtËH‹ÚPH5£¢H‹8èc{ÿÿ¸ÿÿÿÿë®@‹W‹GHÁâH	ÂH÷ÚHcʉÐH9ÑuÅHƒÄ]Ä‹GHƒÄ]÷ØÃèp}ÿÿHcÈH9È„fÿÿÿHƒøÿu•èI}ÿÿH…Àt‹¸ÿÿÿÿéLÿÿÿf.„H‹@`H…ÀtkH‹€€H…Àt_ÿÐH‰ÅH…ÀtUH‹rPH9Eu,@H‰ïèÈþÿÿHƒm…ÿþÿÿH‰ï‰D$èáyÿÿ‹D$éêþÿÿH‰ïH5éÃè	þÿÿH‰ÅH…ÀuÁéxÿÿÿè·|ÿÿH…À…jÿÿÿH‹§OH5×ÀH‹8èXzÿÿéOÿÿÿóúUH‹GH‰ýö€¨ukH‰ïèƒÿÿH‹}H…ÿtHÇEHƒ/t<H‹½èH…ÿtHDžèHƒ/tH‹EH‰ï]H‹€@ÿàfDè#yÿÿëâèyÿÿë½f„Hƒ¸ˆt‹öGøu…è{zÿÿ…À„xÿÿÿ]ÐAUI‰õATI‰ÔUH‰ÍSH‰ûHƒì(dH‹%(H‰D$1ÀH‹GXHT$Ht$HÇGXH‰$H‹G`HÇG`H‰D$H‹GhHÇGhH‰çH‰D$èÆxÿÿHƒ{X…ëH‹t$H‹|$H…öt ègwÿÿ…ÀˆÏH‹t$H‹|$H…ötHƒH‹$H…ÒtHƒH…ÿtHƒH‹ƒI‰UI‰<$H‰uL‹L‹`H‹hH‰H‰xH‰pM…ÀtIƒ(tRM…ätIƒ,$tVH…ítHƒmt*1ÀH‹L$dH3%(…»HƒÄ([]A\A]Ãf„H‰ïè¸wÿÿëÌfDL‰Çè¨wÿÿë¤fDL‰çè˜wÿÿë fDH‹<$IÇEIÇ$HÇEH…ÿtHƒ/t1H‹|$H…ÿtHƒ/t9H‹|$H…ÿtHƒ/t¸ÿÿÿÿéWÿÿÿ€è3wÿÿëȐè+wÿÿëàf„èwÿÿëÀè¤wÿÿ@ATUHƒìL‹GXL‹g`H‰wXH‹ohH‰W`H‰OhM…ÀtIƒ(tFM…ätIƒ,$t*H…ítHƒmtHƒÄ]A\ÃfDHƒÄH‰ï]A\é±vÿÿL‰çè¨vÿÿëÌfDL‰Çè˜vÿÿë°fDóúUSH‰ûHƒìH‹-´LH‹H‹EH‰kHƒÀH‰EH…ÿt
Hƒ/tMH‹EH‹»èHƒÀH‰«èH‰EH…ÿtHƒ/tHƒÄ1À[]Àè#vÿÿHƒÄ1À[]Ãf.„èvÿÿë¬f„AVAUI‰ýATUS‰ÓH…ötvH‹=/“	I‰ôè{ÿÿI‰ÆH…À„Òè®yÿÿH‰ÅH…À„ÁL‰ïA‰ØL‰áH‰ÂL‰öè^yÿÿI‰ÅHƒmt[L‰è]A\A]A^ÄH‰ïèˆuÿÿ[L‰è]A\A]A^Ã@1ÿè1tÿÿI‰ÄH…ÀthH‹=ª’	èzÿÿI‰ÆH…ÀtEè0yÿÿH‰ÅH…Àt8L‰ïA‰ØL‰áH‰ÂL‰öèäxÿÿIƒ,$I‰Å…{ÿÿÿL‰çèuÿÿHƒm…oÿÿÿ끐Iƒ,$uL‰çèuÿÿE1í[]L‰èA\A]A^ÃfAVI‰öAUA‰ÕATUSH‰ûHƒì dH‹%(H‰D$1ÀLd$Hl$HÇD$HÇD$€1ÉL‰âH‰îH‰ßè¨xÿÿ…ÀtTH‹D$H‹@ö€«uÚH‹{JL‰òH5ŸH‹81ÀèWyÿÿ1ÀH‹L$dH3%(uKHƒÄ []A\A]A^ÄD‰èE…íuÓH‹L$¸H…ÉtÄH‹"JL‰òH5àžH‹81Àèþxÿÿ1Àë¥è•tÿÿDóúUH‰ýSHƒìH‹H…öt2H‰óHƒHƒ/t
H‰]HƒÄ1À[]ÃèËsÿÿH‰]HƒÄ1À[]ÃfDH‹éIëÈff.„@AUA‰ÕATUSHƒìH9÷„¢H‹JH9GH‰ýI‰ô”ÂH9F”Ò„÷„À„ï€ ‰­A€|$ ‰¹H‹UI9T$…ÚH‹EI‹L$H9È@•ÆHƒøÿ•À@„Æt
Hƒùÿ…´¶u E¶D$ ‰ðD‰ÁÀèÀéƒàƒá8È…‘@öÆ …'H‹}HAöÀ „aIL$0It$HAƒà@HEñ¶ȃù„Sƒù„Z‹D‹A9ÈuHHƒú„¶¶ÀH¯Ðè²tÿÿ‰Â1Ò•ÀAƒýu,1Ò”Àë#f.„H‹¡HH9Ýu„Àt1ÀAƒý”ÀHƒÄ[]A\A]Ã@I9Üu„ÒußH‰ïD‰êL‰æè‘rÿÿH‰ÅH…À„ŠH;^H”ÀH;-,H”ÂÂuH9Ýu8¶ÀHƒmu§H‰ï‰D$èòqÿÿ‹D$ë•@1ÀAƒý”ÀHƒÄ[]A\A]Ã@H‰ïèXuÿÿëÁfDHM0H}Hƒæ@HEùéÉþÿÿ@èspÿÿ…À‰Fþÿÿ¸ÿÿÿÿé:ÿÿÿL‰çèXpÿÿ…À‰7þÿÿëãfDI‹t$Hé§þÿÿfD¶D¶é¯þÿÿ@·D·éŸþÿÿff.„ATUH‰õHƒìèQwÿÿI‰ÄH…ÀtHƒHƒÄL‰à]A\Ãf.„ètÿÿH…ÀuáH‹EH‰îö€«uH‹ÿFH‹8èqÿÿë?1Àè¹vÿÿH‰ÅH…Àt¬H‰ÆH‹×FH‹8èïpÿÿHƒmu“H‰ïè°pÿÿë‰ff.„ATUHƒìL‹L‹gH‰7H‹oH‰WH‰OM…ÀtIƒ(tHM…ätIƒ,$t,H…ítHƒmtHƒÄ]A\ÄHƒÄH‰ï]A\éApÿÿL‰çè8pÿÿëÊfDL‰Çè(pÿÿë®fDAVAUATUH‰ýSHƒì H‹H‹_pH…Û„ H‹CH…À„“H…ÉtH‹1HƒÄ H‰ï[]A\A]A^ÿàf.„E…À…¿L‹-øEE1öH…Ò„„H‹2H‹âEL‰ïè²tÿÿI‰ÅM…ötIƒ.uL‰÷èŒoÿÿM…ítCL‰îH‰ïÿSIƒmI‰Ät\HƒÄ L‰à[]A\A]A^Ã@H‹YEH‹WH5FšH‹81Àè4tÿÿHƒÄ E1ä[L‰à]A\A]A^ÐE…Éu[H‹\EH‰Öérÿÿÿ@L‰ïèoÿÿëšfD1ÿD‰L$H‰T$H‰t$è²pÿÿH‹t$H‹T$H…ÀD‹L$I‰ÅI‰Æ…ÿÿÿëŽfH‰÷èˆpÿÿI‰ÄH…Àt8H‹ñDL‰ïH‰Æè¾sÿÿI‰ÅM…ötIƒ.t8Iƒ,$…	ÿÿÿL‰çènÿÿéüþÿÿM…ö„;ÿÿÿIƒ.…1ÿÿÿL‰÷èmnÿÿéôþÿÿL‰÷è`nÿÿë¾ff.„ATUH‰ýSHƒìH‹GH;EtxH;Dt?H‹XhH…Û„’H‹CH…À„…H…öy	ƒâ…·HƒÄH‰ï[]A\ÿàf.„ƒâH‰ðt	H…öyHG…ÉtH;EsEH‹DÅHƒHƒÄ[]A\ÃâH‰ðt	H…öyHG…ÉtH9EvH‹UH‹ÂHƒHƒÄ[]A\ÃH‰÷èHoÿÿI‰ÄH…Àt`H‰ÆH‰ïèUnÿÿIƒ,$uÕL‰çH‰D$èamÿÿH‹D$ëÁf.„H‹H…Ò„=ÿÿÿH‰t$ÿÒH‹t$H…ÀxHÆH‹Cé ÿÿÿ€1Àé€ÿÿÿH‹:CH‰t$H‹8è5nÿÿH‹t$…ÀtÜH‰t$èBoÿÿH‹CH‹t$éÝþÿÿ@AWAVAUATUH,ÎSH‰óHƒìHH‰|$L|$(Lt$ H‰$Ll$0L‰D$dH‹%(H‰D$81ÀHÇD$ HÇD$(HÇD$0H‹|$L‰ùL‰òL‰îè}pÿÿ…À„wH‹MH‹t$ H…É„æH‰ÊH‰èëH‹PHƒÀH…ÒtH92uîH‹T$(H‹<$H)ØH‰ë¤@H‹Fö€«„³I‰ìë]f.„Hƒ(„•¶G ƒà`<`„vH‹O@Hƒ~(„¶F ƒà`<`„(H‹F@H9Á„(I‹L$IƒÄH…Ét-H‹9H9÷u¥H‹L$(H‹<$L‰àH)ØIƒ<$H‰…ÿÿÿH‹t$ fH9ëu]éžfDHƒ(„ƶG ƒà`<`„–L‹g@Hƒ~(„–¶F ƒà`<`„(H‹F@I9Ä„(HƒÃH9Ý„FH‹H‹8H9÷u£H‹T$H‰ñH5–H‹ý@H‹81Àèãoÿÿ¸ÿÿÿÿH‹\$8dH3%(…½HƒÄH[]A\A]A^A_ÃH‰÷H‰L$èKmÿÿH‹t$ H‹L$¶F ƒà`<`…ÚþÿÿfH‹FH9Á…ØþÿÿI‹$H‹8èWnÿÿ…Àxc„ØþÿÿH‹t$ é¸þÿÿH‹Oé…þÿÿ€èëlÿÿI‹$H‹¶A ƒà`<`tH‹I@H‹t$ éYþÿÿH‹IH‹t$ éHþÿÿf.„èmÿÿH…Àt™éÿÿÿH‹FI9Ä…ØþÿÿH‹H‹8èÈmÿÿ…Àˆ»H‹t$ „ÒþÿÿHƒÃH9Ý…ºþÿÿH‰ñH‹T$H5‘”éÀþÿÿ@Hƒ~(L‹g…jþÿÿH‰÷è9lÿÿH‹t$ éXþÿÿè*lÿÿH‹H‹¶B ƒà`<`tL‹b@H‹t$ é)þÿÿL‹bH‹t$ éþÿÿH‹Fö€«…ÜýÿÿH‹U?H‹T$H5é“H‹81Àè/nÿÿ¸ÿÿÿÿéGþÿÿè0lÿÿH…À…4þÿÿH‹t$ éòýÿÿè¨iÿÿ„AUATUH‰ýH‹H‹‡¨©@uv©€tö…«@tv1ÿèkÿÿI‰ÅH…ÀtO1ÒH‰ÆH‰ïèŠmÿÿIƒmI‰ÄtpM…ät3I‹L$ö«@tmL‰æH‰ïèÒhÿÿfIƒ,$u]L‰çA\A]éŒhÿÿ@]A\A]ÃfH‰î]A\A]é£hÿÿH‹i>]H5ù“A\A]H‹8éiÿÿDL‰ïèHhÿÿë†fDH‹9>H‰êH5“H‹81ÀèmÿÿëƒAWAVAUI‰õATI‰ÔUSH‰ûHƒìL‹L‹wH‹o è¨jÿÿ‹H Q‰P H‹ð=;¨A‹G…ÀuAƒ$C„µH‹K0H‹S(1ÀH…ítH‹EHƒÅHƒìE‰àE1ÉL‰öQL‰ÿL‰éR1ÒPUjèöjÿÿHƒÄ0I‰Äè:jÿÿ‹p Vÿ‰P H‹‚=‹=È!Áø@9Â|HƒÄL‰à[]A\A]A^A_ÃDƒè29Â}âèôiÿÿÆ@$ë×fDH=Žèœiÿÿ…À„DÿÿÿE1ä븀H…ít#H‹EHƒÅM…äu	IcWH9Ât/H‹K0H‹S(é:ÿÿÿIcWL9âuêL‰âL‰ñL‰îL‰ÿèfêÿÿI‰Äé?ÿÿÿL‰ñH‰îL‰ÿèPêÿÿI‰Äé)ÿÿÿ„L‹VM…ÒŽº1Àë€HƒÀI9ÂtH9|Æuð¸Ãf1ÉfDH‹TÎH‹Bö€«€tpö‚«@tgH9útÐL‹‡XM…Àt,M‹HM…É~M1Àë€HƒÀI9Át9I;TÀuðëžfDH‰øDH‹€H9„€ÿÿÿH…ÀuëH;\<„nÿÿÿHƒÁI9Ê…qÿÿÿ1ÀÃfDAUI‰ýATL‰îHƒìH‹=ƒ	H‹GH‹€H…ÀtÿÐI‰ÄM…ätHƒÄL‰àA\A]ÃDèëjÿÿI‰ÄM…äuâH‹,<L‰êH5;­H‹81ÀèhjÿÿHƒÄL‰àA\A]Ãff.„AUI‰õH‰þATUH‰ýSH‰ÓHƒìH‹WH‹=‚	èzhÿÿI‰ÄH‹p‚	H‹@I‰EL‰#M…ätIƒ$HƒÄL‰à[]A\A]ÃDèhÿÿH…ÀuãHƒÄH‰ï[]A\A]éÿÿÿff.„AUI‰õATHƒìH‹GH‹€H…ÀtÿÐI‰ÄM…ät#HƒÄL‰àA\A]ÀèóiÿÿI‰ÄM…äuàH‹;H‹8è¹eÿÿ…ÀtÊH‹þ:L‰êH5F¬H‹81ÀèZiÿÿë­„ATHƒìH‹Gö€«„ÙHƒö€«t,L‹gID$Hƒø‡Hf±Hc‚HÐ>ÿà„H‰|$è¦ÿÿÿH‹|$I‰ÄfDHƒ/tHƒÄL‰àA\ÄèÛcÿÿHƒÄL‰àA\ÐD‹gëÒf.„D‹g‹GIÁäI	Äë¸D‹g‹GIÁäI	ÄI÷Üë¥DD‹gA÷ÜMcäë”H‰|$è’fÿÿH‹|$I‰Ä뀄H‹@`H…ÀtGH‹€€H…Àt;ÿÐH‰ÇH…Àt1H‹@H;®9„ûþÿÿH5T­ètçÿÿH‰ÇH…Àu.IÇÄÿÿÿÿé.ÿÿÿèfÿÿH…ÀuêH‹9H5?ªH‹8èÀcÿÿëÒH‹@é°þÿÿDATHƒìH‹Gö€«„ÙHƒö€«t,L‹gID$Hƒø‡H
°Hc‚HÐ>ÿà„H‰|$è¦ÿÿÿH‹|$I‰ÄfDHƒ/tHƒÄL‰àA\ÄèkbÿÿHƒÄL‰àA\ÐD‹gëÒf.„D‹g‹GIÁäI	Äë¸D‹g‹GIÁäI	ÄI÷Üë¥DD‹gA÷ÜMcäë”H‰|$è"eÿÿH‹|$I‰Ä뀄H‹@`H…ÀtGH‹€€H…Àt;ÿÐH‰ÇH…Àt1H‹@H;>8„ûþÿÿH5ä«èæÿÿH‰ÇH…Àu.IÇÄÿÿÿÿé.ÿÿÿè«dÿÿH…ÀuêH‹Ÿ7H5ϨH‹8èPbÿÿëÒH‹@é°þÿÿDAUATI‰ü¿USH‰óHƒìèdÿÿH…À„½HƒH‰ÅH‰XI‹D$L‹¨€M…턵èècÿÿH‹97‹H Q‰P ;°1ÒL‰çH‰îAÿÕI‰Äè½cÿÿ‹H Qÿ‰P ‹HÎ=È~(9Ê|.M…ä„›Hƒmt,HƒÄL‰à[]A\A]ÃfDÁø@9Ê}ÒèqcÿÿÆ@$ëÇH‰ïè°`ÿÿHƒÄL‰à[]A\A]ÃfHƒÄE1ä[L‰à]A\A]ÀL‰ç1ÒH‰îè;eÿÿI‰Äë‹fDH=9‡èÔbÿÿ…À„<ÿÿÿ@E1äéeÿÿÿèKcÿÿI‰ÄH…ÀuëH‹ì5H5%‡H‹8èí`ÿÿé=ÿÿÿ„UHƒìH‹Gö€«t~H‹GHƒøt<HƒøtH…Àtx?HƒÄ]éícÿÿD1ÀHƒÄ]ËG‹WHƒÄ]HÁàH	ÐÃD‹GHƒÄ]ÀH‹Ù5H5‚‹H‹8èb`ÿÿHÇÀÿÿÿÿë³f„H‹@`H…ÀttH‹€€H…ÀthÿÐH‰ÅH…Àt^H‹Ò5H9Eu.@H‰ïè8ÿÿÿHƒm…gÿÿÿH‰ïH‰D$è@_ÿÿH‹D$éPÿÿÿH‰ïH5G©ègãÿÿH‰ÅH…Àu¿HÇÀÿÿÿÿé-ÿÿÿèbÿÿH…ÀuêH‹5H52¦H‹8è³_ÿÿëҐH‹Gö€«tkH‹GHPHƒúwUH
:¬Hc‘HÊ>ÿâ@À‹GÃ@‹G‹WHÁàH	ÐÃf‹G‹WHÁàH	ÐH÷ØÃ€‹G÷ØH˜Ãé‹aÿÿUHƒìH‹@`H…ÀtvH‹€€H…ÀtjÿÐH‰ÅH…Àt`H‹µ4H9Eu€H‰ïèHÿÿÿHƒmt)HƒÄ]ÃH‰ïH5<¨è\âÿÿH‰ÅH…ÀuÔHÇÀÿÿÿÿëÚH‰ïH‰D$èû]ÿÿH‹D$ëÃèï`ÿÿH…ÀuÖH‹ã3H5¥H‹8è”^ÿÿë¾fATUSHƒìH…ÿ…èÚ\ÿÿH‹xXH‰ÃH…ÿu1ÀHƒÄ[]A\ÃH‹)4H‹0H9÷…¯L‹c`H‹khHÇCXHÇC`HÇChHƒ/tM…ätIƒ,$tKH…ít¨Hƒmu¡H‰ïèG]ÿÿë—DHƒ/t:H‹#3H‰òH5)‰H‹81ÀèbÿÿHƒÄ¸ÿÿÿÿ[]A\ÐL‰çè]ÿÿë«fDH‰t$èö\ÿÿH‹t$ëµ€èã\ÿÿéwÿÿÿH‹Gö€«€t_ö‡«@tVH‹FH‹€¨©€t]ö†«@tTH‹—XH…Òt`H‹J1ÀH…É~fDH;t„øþÿÿHƒÀH9Áuì¸ÿÿÿÿéÆþÿÿH‰|$è]ÿÿH‹|$…À…ÎþÿÿëݩtàH‰|$è˜õÿÿH‹|$ëÞH‰øH‹€H9Æ„¡þÿÿH…Àuë1ÀH;5€2”Àë¸ff.„ATUSHƒìè#[ÿÿH‹xXH…ÿu1ÀHƒÄ[]A\ÀH‰ÃH‹n2H‹0H9þueL‹c`H‹khHÇCXHÇC`HÇChHƒ/t8M…ätIƒ,$tH…ít¥HƒmužH‰ïè[ÿÿë”fDL‰çè€[ÿÿëÚfDès[ÿÿëÁH‹Gö€«€tbö‡«@tYH‹FH‹€¨©€t`ö†«@tWH‹—XH…ÒtcH‹J1ÀH…É~f„H;t„?ÿÿÿHƒÀH9Áuì¸ÿÿÿÿé
ÿÿÿH‰|$è¨[ÿÿH‹|$…À…ÿÿÿëݩtàH‰|$è(ôÿÿH‹|$ëÞH‰øH‹€H9Æ„èþÿÿH…Àuë1ÀH;51”Àë¸ff.„AUATUH‰ýSHƒìH‹GH;Ð0„2H;+1…¥H‹O‹Qö„•E1íƒâ L‹atiè]ÿÿH‹U0‹p V‰P ;1öL‰ïAÿÔI‰ÄèÜ\ÿÿ‹‹p Vÿ‰P A΁ùÈ~69ÂŒ®M…ä„ÍHƒÄL‰à[]A\A]ÀL‹oë‘f.„ÁùI9Â}Èët@L‹ €L‹-êv	M…䄹èd\ÿÿ‹X SH‹¯/‰P ;¼1ÒL‰îH‰ïAÿÔI‰Äè9\ÿÿ‹p Vÿ‰P ‹HÎ=ÈÁø@9ʍXÿÿÿfDè\ÿÿÆ@$éDÿÿÿfHƒÄ1Ò1ö[]A\A]éñÿÿDè3\ÿÿI‰ÄH…ÀtaE1äéÿÿÿH=éè„[ÿÿ…À„Ðþÿÿëßf.„HƒÄL‰îH‰ï1Ò[]A\A]é©]ÿÿf„H=©èD[ÿÿ…À„0ÿÿÿëŸH‹s.H5¬H‹8ètYÿÿéªþÿÿff.„@AWAVAUI‰ýATA‰ôUH‰ÍS‰ÓHƒì(è¢WÿÿI‰ÇE…ä…Î…Û„&A‰ÞE1äH‹=Yu	H…ÿ„ØD‹
Au	D‰òD‰ÎèÙÿÿA9Á޽H˜HÁàHøD9p…ªL‹ Iƒ$H‹[u	1ÉL‰æL‰ÿè^WÿÿH‰ÅH…À„B‰XlH‰ÇèGYÿÿIƒ,$t HƒmH‰ït(HƒÄ([]A\A]A^A_ÀL‰çèÈWÿÿHƒmH‰ïuØHƒÄ([]A\A]A^A_é«WÿÿH‹=Ñt	H…ÿ„H‹@XM‹w`IÇGXIÇG`H‰$I‹GhIÇGhH‰D$è†[ÿÿH‰ÁH…À„H‹8H‹Ð[	H9G…vL‹·[	M…Àt2H‹K-I9ÀtL;g-t:L‰Çè­Xÿÿ…Àt.E1äë)è_Yÿÿ€H‹-H‹5o	E1äH‹= t	èÛYÿÿH‹$I‹XM‹O`M‹GhM‰w`I‰GXH‹D$I‰GhH…ÿt
Hƒ/„#M…Ét
Iƒ)„4M…Àt
Iƒ(„õE…ä„þÿÿE‰æA÷Þé!þÿÿf„H‰ïè¨ZÿÿH‰ÅH…À„†þÿÿE…ä„2L‰îD‰áH>ž1ÀH=KžèèTÿÿI‰ÅM…í„LþÿÿH‹]s	HƒìE1À1ÉL‹
Es	1Ò1ö1ÿAQSAUUPPPPPèVÿÿHƒÄPI‰ÄH‹EHƒèH‰EH…À„£Iƒm„ˆM…ä„ùýÿÿH‹=Ðr	E…ö„­ýÿÿH…ÿ„6D‹
¯r	D‰òD‰ÎètÖÿÿHcèA9鎈HcÍHÁáHùD9q„‰‹‚r	A9ÁtxD‰ÊfDHcƒêHÁàóoDð9Õ|èAƒÁD‰qL‰!D‰
Fr	Iƒ$é*ýÿÿ@H‰ïèpYÿÿH‰ÅH…À„NýÿÿE1öL‰ïèYYÿÿI‰ÅéÜþÿÿ‹r	A9Á…ÁDh@IcõHÁæè!VÿÿH‰ÇH…À„ÓüÿÿHcÍD‹
Ûq	H‰Üq	HÁáD‰-Íq	HÁD9ÍŒDÿÿÿé`ÿÿÿ„Iƒ,$…ÏüÿÿL‰çéïüÿÿDL‰Çè TÿÿéþýÿÿL‰D$L‰$èŠTÿÿL‹D$L‹$éÁýÿÿ@L‰ÏL‰$èlTÿÿL‹$é·ýÿÿL‰ïèXTÿÿékþÿÿH‰ïèHTÿÿéPþÿÿH‹=iq	H‹5Rl	H‹GH‹€H…À„=ÿÐH‰ÇH…ÿ„üüÿÿH‰|$è–UÿÿH‹|$…ÀH‹…¶HƒèH‰„øH‹ú)H9*…êüÿÿé·üÿÿH‹5ék	H‰L$H‹VèûVÿÿH‹L$H‰'X	I‰ÀH‹H‹@H‰X	éZüÿÿf„¿è6YÿÿH…À„[ûÿÿH¾@H‰dp	H‰5Up	D‰pL‰ Iƒ$é2ûÿÿ@HÁåH/éÛýÿÿHƒèH‰…üÿÿH‹D)I‰ÀH‰D$L‰D$èSÿÿL‹D$H‹D$éØûÿÿH‹9L‰!Hƒ/…ÙúÿÿèöRÿÿéÏúÿÿL‹*)H‹û(ë¸è,XÿÿH‰Çé»þÿÿ@óúAWAVAUI‰ÕATI‰ôUH…Ò…¼H‹ío	Iƒ$H‹=a\	H9x…×H‹-H\	H…í„7HƒEH‹EH‹57d	H‰ïH‹€H…À„ÿÐI‰ÆH‹EHƒèM…ö„H‰EH…À„éI‹FL‹¸€M…ÿ„õèØTÿÿH‹-)(‹H Q‰P ;UOL‰êL‰÷L‰æAÿ×I‰Çè«Tÿÿ‹x Wÿ‰P ‹EHÎ=È~59Ê|aM…ÿ„8Iƒ.t2Iƒ,$t:M…ítIƒmtO]L‰øA\A]A^A_ÃfÁø@9Ê}Åë$@L‰÷è˜QÿÿIƒ,$uÆL‰çè‰Qÿÿë¼€è+TÿÿÆ@$ë”DL‰ïèhQÿÿ]L‰øA\A]A^A_ÃH‰ïèPQÿÿé
ÿÿÿH
J™H‰E¾rNº“H‰
<n	Ç>n	“Ç0n	rNH…À„ŸH=™E1ÿè`øÿÿé)ÿÿÿºH5™L‰ïèôÛÿÿ…ÀtL‰ïèhUÿÿI‰ÅH…À…þÿÿE1ÿéÿÿÿ@H‹=áb	HjZ	H5kZ	èFëÿÿH‰ÅH…í…þÿÿH
œ˜¾pNº“Ç›m	“H‰
ˆm	džm	pNéZÿÿÿf„è«UÿÿI‰ÆéôýÿÿH‹=qb	èdêÿÿH‰Å뜀L‰êL‰æL‰÷èêTÿÿI‰ÇH…À…FþÿÿfDIƒ.¾uNH
˜º“H‰
m	Çm	“Çm	uN…ÓþÿÿL‰÷èÚOÿÿH‹
ãl	‹él	‹5ßl	é³þÿÿfH=‰vè$Rÿÿ…À„ýÿÿë’f.„è›RÿÿH…À…zÿÿÿH‹;%H5tvH‹8è<Pÿÿé_ÿÿÿ€H‰ïèhOÿÿH‹
ql	‹wl	‹5ml	éAþÿÿóúAWAVAUI‰ÕATI‰ôUH…Ò…¼H‹ml	Iƒ$H‹=ÑX	H9x…×H‹-¸X	H…í„7HƒEH‹EH‹5·`	H‰ïH‹€H…À„ÿÐI‰ÆH‹EHƒèM…ö„H‰EH…À„éI‹FL‹¸€M…ÿ„õèXQÿÿH‹-©$‹H Q‰P ;UOL‰êL‰÷L‰æAÿ×I‰Çè+Qÿÿ‹x Wÿ‰P ‹EHÎ=È~59Ê|aM…ÿ„8Iƒ.t2Iƒ,$t:M…ítIƒmtO]L‰øA\A]A^A_ÃfÁø@9Ê}Åë$@L‰÷èNÿÿIƒ,$uÆL‰çè	Nÿÿë¼€è«PÿÿÆ@$ë”DL‰ïèèMÿÿ]L‰øA\A]A^A_ÃH‰ïèÐMÿÿé
ÿÿÿH
ʕH‰E¾NºŒH‰
¼j	Ǿj	ŒÇ°j	NH…À„ŸH=µ•E1ÿèàôÿÿé)ÿÿÿºH5­•L‰ïètØÿÿ…ÀtL‰ïèèQÿÿI‰ÅH…À…þÿÿE1ÿéÿÿÿ@H‹=a_	HÚV	H5ÛV	èÆçÿÿH‰ÅH…í…þÿÿH
•¾NºŒÇj	ŒH‰
j	Çj	NéZÿÿÿf„è+RÿÿI‰ÆéôýÿÿH‹=ñ^	èäæÿÿH‰Å뜀L‰êL‰æL‰÷èjQÿÿI‰ÇH…À…FþÿÿfDIƒ.¾"NH
‘”ºŒH‰
Œi	ÇŽi	ŒÇ€i	"N…ÓþÿÿL‰÷èZLÿÿH‹
ci	‹ii	‹5_i	é³þÿÿfH=	sè¤Nÿÿ…À„ýÿÿë’f.„èOÿÿH…À…zÿÿÿH‹»!H5ôrH‹8è¼Lÿÿé_ÿÿÿ€H‰ïèèKÿÿH‹
ñh	‹÷h	‹5íh	éAþÿÿóúAWAVAUATUH‰õSH‰ûHƒì(L‹5é!L‹ndH‹%(H‰D$1ÀHÇ$HÇD$L‰t$H…Ò…žIƒý„tIƒý…ÒH‹V(H‹E L‹MH‹«èHƒìHsHH=hA¸HƒEH‰éAVjÿ5èd	ÿ5ºY	jÿ52\	Pjÿ5¹_	ÿ£g	I‰ÄHƒÄPH…À„#Hƒm„H‹D$dH3%(…<HƒÄ(L‰à[]A\A]A^A_ÃfH‰×è¸IÿÿH‹5i_	L‰çI‰ÇH‹VIƒïèîMÿÿH‰$H…À…öL‹mDIƒýH
ՒHגAÀHMÈE¶ÀIƒÀHƒìH‹k H½’H5vAUL
“H‹81Àè:OÿÿHL’¾2ÇPg	ô
ÇBg	2H‰3g	XZH
#’ºô
H=~vE1äèfñÿÿé	ÿÿÿL‰òé’þÿÿ„H‰ïèèIÿÿéëþÿÿI‰ÔIƒý„£qM…í„øþÿÿIƒý…H‹FH‰×H‰$èžHÿÿI‰ÇH‹5¼Z	L‰çH‹VèØLÿÿH‰D$H…À„{IƒïM…ÿL‹$H‹D$H‹T$éþÿÿf.„Iƒý…ÞH‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$è$HÿÿI‰ÇM…ÿ~¯H‰âL{‘L‰éL‰çH5ÿè0Üÿÿ…ÀyH‘¾2Çf	ô
H‰ÿe	Çýe	2é¿þÿÿHƒm¾:2H
ؐº3H‰
Óe	ÇÕe	3ÇÇe	:2tH=uèðÿÿé¤ýÿÿ@H‰ïèHÿÿH‹
™e	‹Ÿe	‹5•e	ëÎH
A¸éðýÿÿfDH‹5éX	L‰çH‹VèKÿÿH…À„ÿÿÿH‰D$IƒïéÿÿÿfDH‹F H‰×H‰D$H‹FH‰$èGÿÿI‰Çé‰þÿÿHƒìH‹H
EH5&tjL
&‘A¸H9H‹81ÀèÆLÿÿH؏Y^H‰Öd	¾ø1ÇÓd	ô
ÇÅd	ø1é‡ýÿÿè3HÿÿH
äA¸éýÿÿóúAVAUATUSH‰ûHƒì L‹
þU	H‹-§dH‹%(H‰D$1ÀL‹fL‰$H‰l$H…Ò…iIƒü„WIƒü„=M…䄼M…äHsM‰àH
`HoHIÈHƒìH‹IÁø?ATI÷ÐH5"sH‹8L
!Aƒà1ÀèÍKÿÿHߎ¾‹1Çãc	°
ÇÕc	‹1H‰Æc	XZH
¶Žº°
H=9sE1íèùíÿÿH‹D$dH3%(…7HƒÄ L‰è[]A\A]A^ÃDI‰êH‹`	L‹£èHƒìHs H‹àT	H=©3A¸Iƒ$L‰áUjRPjRL‰ÒPjÿ57W	ÿ±b	I‰ÅHƒÄPH…ÀtuIƒ,$…qÿÿÿL‰çèFÿÿédÿÿÿDL‹V L‹NëfDI‰êëïI‰ÕIƒü„óIƒüt}M…ä…˜þÿÿH‰×è¬DÿÿI‰ÆH…À@L‹$L‹T$é5ÿÿÿfIƒ,$¾±1H
˜ºï
H‰
“b	Ç•b	ï
LJb	±1„ÙH=úqè½ìÿÿé¿þÿÿ„H‹F H‰×H‰D$H‹FH‰$è'DÿÿH…À~‚H‰âL†L‰áL‰ïH5ëúè6Øÿÿ…À‰^ÿÿÿH¾z1Çb	°
H‰b	Çÿa	z1é.þÿÿfH‹FH‰×H‰$èÀCÿÿI‰ÆM…öŽÿÿÿH‹5MU	L‰ïH‹VèñGÿÿH…À„vÿÿÿH‰D$IFÿécÿÿÿf.„L‰çèˆDÿÿH‹
‘a	‹—a	‹5a	éÿÿÿH‹5U	L‰ïH‹VèGÿÿH…Àt”H‰$IƒîëèÙDÿÿf„óúAVAUATUH‰ÕSH‰ûHƒì H‹³R	L‹-TdH‹%(H‰D$1ÀH‹R	L‹fH‰$H‰D$L‰l$H…í…ªIƒü„à¢M…ä„ÁIƒü…ÓM‰êL‹NL‹£èHƒìHsHH=úA¸Iƒ$L‰áAUjÿ5J]	RL‰Òjÿ5T	Pjÿ5X	ÿ`	I‰ÅHƒÄPH…À„Iƒ,$t@H‹D$dH3%(…
HƒÄ L‰è[]A\A]A^Ã@Iƒü…ÖL‹V(H‹F é]ÿÿÿL‰çèCÿÿë¶fDI‰ÑM‰êéEÿÿÿDH‹F M‰êé0ÿÿÿM…äH
2‹H4‹M‰àHIÈIÁø?I÷ÐAƒàHƒìH‹ÆH&‹H5ènATL
è‹H‹81Àè•GÿÿH§Š¾	1Ç«_	B
ǝ_		1H‰Ž_	XZH
~ŠºB
H=1oE1íèÁéÿÿéüþÿÿ@H
¢ŠA¸éuÿÿÿfDIƒü„† M…ä„7Iƒü…)ÿÿÿH‹FH‰ïH‰$èý@ÿÿI‰ÆM…ö~TH‹5žR	H‰ïH‹Vè2EÿÿH…ÀtH‰D$IƒîM…ö~.H‹5hR	H‰ïH‹VèEÿÿH…À„4H‰D$IƒîM…ö"L‹$H‹D$L‹T$H‹,P	é×ýÿÿ€Iƒü….ÿÿÿH‹F(H‰ïH‰D$H‹F H‰D$H‹FH‰$èT@ÿÿI‰Æë¥€Iƒ,$¾/1H
P‰º«
H‰
K^	ÇM^	«
Ç?^	/1tH=æmèyèÿÿé´ýÿÿ@L‰çèAÿÿH‹
^	‹^	‹5
^	ëÎH‰ïèØ?ÿÿI‰ÆH…ÀŽ+ÿÿÿH‹5}U	H‰ïH‹Vè	DÿÿH…À„»þÿÿH‰$Iƒîé©þÿÿH‹F H‰ïH‰D$H‹FH‰$è‡?ÿÿI‰Æé«þÿÿH‰âLìˆL‰áH‰ïH5(öè“Óÿÿ…À‰ºþÿÿHmˆ¾õ0Çq]	B
H‰^]	Ç\]	õ0éÃýÿÿèÊ@ÿÿf.„óúAVAUATUH‰ÕSH‰ûHƒì H‹£N	L‹-DdH‹%(H‰D$1ÀH‹}N	L‹fH‰$H‰D$L‰l$H…í…ªIƒü„à¢M…ä„ÁIƒü…ÓM‰êL‹NL‹£èHƒìHs H=z,A¸Iƒ$L‰áAUjÿ5:Y	RL‰Òjÿ5†P	Pjÿ5•T	ÿ÷[	I‰ÅHƒÄPH…À„Iƒ,$t@H‹D$dH3%(…
HƒÄ L‰è[]A\A]A^Ã@Iƒü…ÖL‹V(H‹F é]ÿÿÿL‰çè?ÿÿë¶fDI‰ÑM‰êéEÿÿÿDH‹F M‰êé0ÿÿÿM…äH
"‡H$‡M‰àHIÈIÁø?I÷ÐAƒàHƒìH‹¶H ‡H5ØjATL
؇H‹81Àè…CÿÿH—†¾z0Ç›[	ò	Ǎ[	z0H‰~[	XZH
n†ºò	H=QkE1íè±åÿÿéüþÿÿ@H
’†A¸éuÿÿÿfDIƒü„† M…ä„7Iƒü…)ÿÿÿH‹FH‰ïH‰$èí<ÿÿI‰ÆM…ö~TH‹5O	H‰ïH‹Vè"AÿÿH…ÀtH‰D$IƒîM…ö~.H‹5XN	H‰ïH‹Vèü@ÿÿH…À„4H‰D$IƒîM…ö"L‹$H‹D$L‹T$H‹L	é×ýÿÿ€Iƒü….ÿÿÿH‹F(H‰ïH‰D$H‹F H‰D$H‹FH‰$èD<ÿÿI‰Æë¥€Iƒ,$¾ 0H
@…º=
H‰
;Z	Ç=Z	=
Ç/Z	 0tH=jèiäÿÿé´ýÿÿ@L‰çèø<ÿÿH‹
Z	‹Z	‹5ýY	ëÎH‰ïèÈ;ÿÿI‰ÆH…ÀŽ+ÿÿÿH‹5õQ	H‰ïH‹Vèù?ÿÿH…À„»þÿÿH‰$Iƒîé©þÿÿH‹F H‰ïH‰D$H‹FH‰$èw;ÿÿI‰Æé«þÿÿH‰âLæ„L‰áH‰ïH5øñèƒÏÿÿ…À‰ºþÿÿH]„¾f0ÇaY	ò	H‰NY	ÇLY	f0éÃýÿÿèº<ÿÿf.„óúAVAUATUH‰ÕSH‰ûHƒì H‹“J	L‹-4dH‹%(H‰D$1ÀH‹mJ	L‹fH‰$H‰D$L‰l$H…í…ªIƒü„à¢M…ä„ÁIƒü…ÓM‰êL‹NL‹£èHƒìHs H=ú'A¸Iƒ$L‰áAUjÿ5*U	RL‰Òjÿ5vL	Pjÿ5…P	ÿçW	I‰ÅHƒÄPH…À„Iƒ,$t@H‹D$dH3%(…
HƒÄ L‰è[]A\A]A^Ã@Iƒü…ÖL‹V(H‹F é]ÿÿÿL‰çèø:ÿÿë¶fDI‰ÑM‰êéEÿÿÿDH‹F M‰êé0ÿÿÿM…äH
ƒHƒM‰àHIÈIÁø?I÷ÐAƒàHƒìH‹¦HƒH5ÈfATL
ȃH‹81Àèu?ÿÿH‡‚¾ë/Ç‹W	|	Ç}W	ë/H‰nW	XZH
^‚º|	H=qgE1íè¡áÿÿéüþÿÿ@H
‚‚A¸éuÿÿÿfDIƒü„† M…ä„7Iƒü…)ÿÿÿH‹FH‰ïH‰$èÝ8ÿÿI‰ÆM…ö~TH‹5öJ	H‰ïH‹Vè=ÿÿH…ÀtH‰D$IƒîM…ö~.H‹5HJ	H‰ïH‹Vèì<ÿÿH…À„4H‰D$IƒîM…ö"L‹$H‹D$L‹T$H‹H	é×ýÿÿ€Iƒü….ÿÿÿH‹F(H‰ïH‰D$H‹F H‰D$H‹FH‰$è48ÿÿI‰Æë¥€Iƒ,$¾0H
0ºí	H‰
+V	Ç-V	í	ÇV	0tH=&fèYàÿÿé´ýÿÿ@L‰çèè8ÿÿH‹
ñU	‹÷U	‹5íU	ëÎH‰ïè¸7ÿÿI‰ÆH…ÀŽ+ÿÿÿH‹5åM	H‰ïH‹Vèé;ÿÿH…À„»þÿÿH‰$Iƒîé©þÿÿH‹F H‰ïH‰D$H‹FH‰$èg7ÿÿI‰Æé«þÿÿH‰âL߀L‰áH‰ïH5ÈíèsËÿÿ…À‰ºþÿÿHM€¾×/ÇQU	|	H‰>U	Ç<U	×/éÃýÿÿèª8ÿÿf.„óúAVAUATUH‰ÕSH‰ûHƒì H‹ƒF	L‹-$dH‹%(H‰D$1ÀH‹]F	L‹fH‰$H‰D$L‰l$H…í…ªIƒü„à¢M…ä„ÁIƒü…ÓM‰êL‹NL‹£èHƒìHs H=Z#A¸Iƒ$L‰áAUjÿ5Q	RL‰Òjÿ5fH	Pjÿ5uL	ÿ×S	I‰ÅHƒÄPH…À„Iƒ,$t@H‹D$dH3%(…
HƒÄ L‰è[]A\A]A^Ã@Iƒü…ÖL‹V(H‹F é]ÿÿÿL‰çèè6ÿÿë¶fDI‰ÑM‰êéEÿÿÿDH‹F M‰êé0ÿÿÿM…äH
HM‰àHIÈIÁø?I÷ÐAƒàHƒìH‹–HH5¸bATL
¸H‹81Àèe;ÿÿHw~¾\/Ç{S	'	ÇmS	\/H‰^S	XZH
N~º'	H=‰cE1íè‘Ýÿÿéüþÿÿ@H
r~A¸éuÿÿÿfDIƒü„† M…ä„7Iƒü…)ÿÿÿH‹FH‰ïH‰$èÍ4ÿÿI‰ÆM…ö~TH‹5æF	H‰ïH‹Vè9ÿÿH…ÀtH‰D$IƒîM…ö~.H‹58F	H‰ïH‹VèÜ8ÿÿH…À„4H‰D$IƒîM…ö"L‹$H‹D$L‹T$H‹üC	é×ýÿÿ€Iƒü….ÿÿÿH‹F(H‰ïH‰D$H‹F H‰D$H‹FH‰$è$4ÿÿI‰Æë¥€Iƒ,$¾‚/H
 }ºw	H‰
R	ÇR	w	ÇR	‚/tH=>bèIÜÿÿé´ýÿÿ@L‰çèØ4ÿÿH‹
áQ	‹çQ	‹5ÝQ	ëÎH‰ïè¨3ÿÿI‰ÆH…ÀŽ+ÿÿÿH‹5ÕI	H‰ïH‹VèÙ7ÿÿH…À„»þÿÿH‰$Iƒîé©þÿÿH‹F H‰ïH‰D$H‹FH‰$èW3ÿÿI‰Æé«þÿÿH‰âLÖ|L‰áH‰ïH5˜éècÇÿÿ…À‰ºþÿÿH=|¾H/ÇAQ	'	H‰.Q	Ç,Q	H/éÃýÿÿèš4ÿÿf.„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5
L‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äHê{H
Ú{HOÈŸÀH½|¶ÀL
‚{LOÊL@HƒìH‹g	ATHç{H5‡_H‹81Àè=8ÿÿHO{¾Í.ÇSP	ÃÇEP	Í.H‰6P	XZH
&{ºÃH=‰`E1äèiÚÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹‰L	H‹«èHƒìHsHH‹KA	H=ÔúA¸HƒEH‰éAVjRPjRL‰ÒPjÿ5)L	ÿO	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïèh2ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×è1ÿÿH‹5ÁK	L‰ïI‰ÇH‹VIƒïèN5ÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾ó.H
Øyº"	H‰
ÓN	ÇÕN	"	ÇÇN	ó.tH=_èÙÿÿé“þÿÿ@H‰ïè1ÿÿH‹
™N	‹ŸN	‹5•N	ëÎH‹F H‰×H‰D$H‹FH‰$èO0ÿÿH…ÀŽ^ÿÿÿH‰âLÕyL‰áL‰ïH5oæèZÄÿÿ…À‰:ÿÿÿH4y¾½.Ç8N	ÃH‰%N	Ç#N	½.éâýÿÿfDH‹FH‰×H‰$èà/ÿÿI‰Çéçþÿÿ„H‹5iA	L‰ïH‹Vè
4ÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿè81ÿÿ„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5¹L‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äHŠxH
zxHOÈŸÀH]y¶ÀL
"xLOÊL@HƒìH‹ATHxH5'\H‹81ÀèÝ4ÿÿHïw¾O.ÇóL	aÇåL	O.H‰ÖL	XZH
ÆwºaH=Q]E1äè	×ÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹)I	H‹«èHƒìHsHH‹ë=	H=$÷A¸HƒEH‰éAVjRPjRL‰ÒPjÿ5ÉH	ÿ»K	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïè/ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×è¸-ÿÿH‹5aH	L‰ïI‰ÇH‹VIƒïèî1ÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾u.H
xvº¾H‰
sK	ÇuK	¾ÇgK	u.tH=æ[è¡Õÿÿé“þÿÿ@H‰ïè0.ÿÿH‹
9K	‹?K	‹55K	ëÎH‹F H‰×H‰D$H‹FH‰$èï,ÿÿH…ÀŽ^ÿÿÿH‰âL{vL‰áL‰ïH5ïâèúÀÿÿ…À‰:ÿÿÿHÔu¾?.ÇØJ	aH‰ÅJ	ÇÃJ	?.éâýÿÿfDH‹FH‰×H‰$è€,ÿÿI‰Çéçþÿÿ„H‹5	>	L‰ïH‹Vè­0ÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿèØ-ÿÿ„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5YL‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äH*uH
uHOÈŸÀHýu¶ÀL
ÂtLOÊL@HƒìH‹§ATH5uH5ÇXH‹81Àè}1ÿÿHt¾Ñ-Ç“I	Ç…I	Ñ-H‰vI	XZH
ftºH=ZE1äè©ÓÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹ÉE	H‹«èHƒìHsHH‹‹:	H=”óA¸HƒEH‰éAVjRPjRL‰ÒPjÿ5iE	ÿ[H	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïè¨+ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×èX*ÿÿH‹5E	L‰ïI‰ÇH‹VIƒïèŽ.ÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾÷-H
sº\H‰
H	ÇH	\ÇH	÷-tH=®XèAÒÿÿé“þÿÿ@H‰ïèÐ*ÿÿH‹
ÙG	‹ßG	‹5ÕG	ëÎH‹F H‰×H‰D$H‹FH‰$è)ÿÿH…ÀŽ^ÿÿÿH‰âL#sL‰áL‰ïH5oß蚽ÿÿ…À‰:ÿÿÿHtr¾Á-ÇxG	H‰eG	ÇcG	Á-éâýÿÿfDH‹FH‰×H‰$è )ÿÿI‰Çéçþÿÿ„H‹5©:	L‰ïH‹VèM-ÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿèx*ÿÿ„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5ùÿL‹ndH‹%(H‰D$1ÀHÇ$HÇD$L‰t$H…Ò…žIƒý„tIƒý…ÒH‹V(H‹E L‹MH‹«èHƒìHs H=8+A¸HƒEH‰éAVjÿ5øB	ÿ5Ê7	jÿ5â>	Pjÿ5‰=	ÿ³E	I‰ÄHƒÄPH…À„#Hƒm„H‹D$dH3%(…<HƒÄ(L‰à[]A\A]A^A_ÃfH‰×èÈ'ÿÿH‹59=	L‰çI‰ÇH‹VIƒïèþ+ÿÿH‰$H…À…öL‹mDIƒýH
åpHçpAÀHMÈE¶ÀIƒÀHƒìH‹{þHqH5TAUL
qH‹81ÀèJ-ÿÿH\p¾S-Ç`E	­ÇRE	S-H‰CE	XZH
3pº­H=VE1äèvÏÿÿé	ÿÿÿL‰òé’þÿÿ„H‰ïèø'ÿÿéëþÿÿI‰ÔIƒý„£qM…í„øþÿÿIƒý…H‹FH‰×H‰$è®&ÿÿI‰ÇH‹5l=	L‰çH‹Vèè*ÿÿH‰D$H…À„{IƒïM…ÿL‹$H‹D$H‹T$éþÿÿf.„Iƒý…ÞH‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$è4&ÿÿI‰ÇM…ÿ~¯H‰âLÐoL‰éL‰çH5õÛè@ºÿÿ…ÀyHo¾A-Ç"D	­H‰D	Ç
D	A-é¿þÿÿHƒm¾y-H
ènºûH‰
ãC	ÇåC	ûÇ×C	y-tH=¦TèÎÿÿé¤ýÿÿ@H‰ïè &ÿÿH‹
©C	‹¯C	‹5¥C	ëÎH
ÒnA¸éðýÿÿfDH‹5ù6	L‰çH‹Vè)ÿÿH…À„ÿÿÿH‰D$IƒïéÿÿÿfDH‹F H‰×H‰D$H‹FH‰$è%ÿÿI‰Çé‰þÿÿHƒìH‹üH
UnH56RjL
6oA¸HŽnH‹81ÀèÖ*ÿÿHèmY^H‰æB	¾7-ÇãB	­ÇÕB	7-é‡ýÿÿèC&ÿÿH
ômA¸éýÿÿóúAWAVAUATUH‰õSH‰ûHƒì(L‹5¹ûL‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äHŠmH
zmHOÈŸÀH]n¶ÀL
"mLOÊL@HƒìH‹ûATH¥mH5'QH‹81ÀèÝ)ÿÿHïl¾Ê,ÇóA	OÇåA	Ê,H‰ÖA	XZH
ÆlºOH=ÑRE1äè	ÌÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹)>	H‹«èHƒìHsHH‹Ó2	H=ÄïA¸HƒEH‰éAVjRPjRL‰ÒPjÿ5<	ÿ»@	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïè$ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×è¸"ÿÿH‹5™;	L‰ïI‰ÇH‹VIƒïèî&ÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾ð,H
xkº§H‰
s@	Çu@	§Çg@	ð,tH=fQè¡Êÿÿé“þÿÿ@H‰ïè0#ÿÿH‹
9@	‹?@	‹55@	ëÎH‹F H‰×H‰D$H‹FH‰$èï!ÿÿH…ÀŽ^ÿÿÿH‰âL“kL‰áL‰ïH5×èúµÿÿ…À‰:ÿÿÿHÔj¾º,ÇØ?	OH‰Å?	ÇÃ?	º,éâýÿÿfDH‹FH‰×H‰$è€!ÿÿI‰Çéçþÿÿ„H‹5	3	L‰ïH‹Vè­%ÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿèØ"ÿÿ„óúAVAUATUSH‰ûHƒìL‹-^øL‹fdH‹%(H‰D$1ÀL‰,$H…Ò…MM…ä„<Iƒü„ÂM…äH9jH
)jHIÈL‰àHÛiHÁø?L
kM…äLIÊL@HƒìH‹²÷ATH[jH5ÒMH‹81Àèˆ&ÿÿHši¾L,Çž>	ǐ>	L,H‰>	XZH
qiºH=¬OE1íè´ÈÿÿH‹D$dH3%(…±HƒÄL‰è[]A\A]A^ÃH‹VH‹Ý:	HƒìHsHE1ÀL‹£èL‹
œ/	H=uíIƒ$L‰áAUjPAQjPAQjPÿx=	I‰ÅHƒÄPH…Àt\Iƒ,$…}ÿÿÿL‰çèÉ ÿÿépÿÿÿ@L‰êëH‰ÕM…ä„äIƒü…°þÿÿH‹FH‰×H‰$è‚ÿÿH…ÀrH‹$éXÿÿÿ@Iƒ,$¾r,H
xhºLH‰
s=	Çu=	LÇg=	r,tH=–Nè¡Çÿÿéèþÿÿ@L‰çè0 ÿÿH‹
9=	‹?=	‹55=	ëÎH‰âLÃhL‰áH‰ïH5”Ôè³ÿÿ…À‰jÿÿÿHùg¾>,Çý<	H‰ê<	Çè<	>,é\þÿÿH‰×è°ÿÿI‰ÆH…ÀŽ'ÿÿÿH‹5=0	H‰ïH‹Vèá"ÿÿH…ÀtH‰$IFÿéýþÿÿè ÿÿf.„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5™õL‹ndH‹%(H‰D$1ÀHÇ$HÇD$L‰t$H…Ò…žIƒý„tIƒý…ÒH‹V(H‹E L‹MH‹«èHƒìHsHH=ˆçA¸HƒEH‰éAVjÿ5˜8	ÿ5j-	jÿ5r2	Pjÿ5™6	ÿS;	I‰ÄHƒÄPH…À„#Hƒm„H‹D$dH3%(…<HƒÄ(L‰à[]A\A]A^A_ÃfH‰×èhÿÿH‹5I6	L‰çI‰ÇH‹VIƒïèž!ÿÿH‰$H…À…öL‹mDIƒýH
…fH‡fAÀHMÈE¶ÀIƒÀHƒìH‹ôHÖfH5=JAUL
=gH‹81Àèê"ÿÿHüe¾×+Ç;	¿Çò:	×+H‰ã:	XZH
Óeº¿H=>LE1äèÅÿÿé	ÿÿÿL‰òé’þÿÿ„H‰ïè˜ÿÿéëþÿÿI‰ÔIƒý„£qM…í„øþÿÿIƒý…H‹FH‰×H‰$èNÿÿI‰ÇH‹5ü0	L‰çH‹Vèˆ ÿÿH‰D$H…À„{IƒïM…ÿL‹$H‹D$H‹T$éþÿÿf.„Iƒý…ÞH‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$èÔÿÿI‰ÇM…ÿ~¯H‰âL”eL‰éL‰çH55Ñèà¯ÿÿ…ÀyH¾d¾Å+ÇÂ9	¿H‰¯9	Ç­9	Å+é¿þÿÿHƒm¾ý+H
ˆdº	H‰
ƒ9	Ç…9		Çw9	ý+tH=ÖJè±Ãÿÿé¤ýÿÿ@H‰ïè@ÿÿH‹
I9	‹O9	‹5E9	ëÎH
rdA¸éðýÿÿfDH‹5™,	L‰çH‹Vè=ÿÿH…À„ÿÿÿH‰D$IƒïéÿÿÿfDH‹F H‰×H‰D$H‹FH‰$è·ÿÿI‰Çé‰þÿÿHƒìH‹´ñH
õcH5ÖGjL
ÖdA¸HRdH‹81Àèv ÿÿHˆcY^H‰†8	¾»+ǃ8	¿Çu8	»+é‡ýÿÿèãÿÿH
”cA¸éýÿÿóúAWAVAUATUH‰õSH‰ûHƒì(L‹5YñL‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äH*cH
cHOÈŸÀHýc¶ÀL
ÂbLOÊL@HƒìH‹§ðATHkcH5ÇFH‹81Àè}ÿÿHb¾N+Ç“7	{Ç…7	N+H‰v7	XZH
fbº{H=	IE1äè©ÁÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹É3	H‹«èHƒìHsHH‹‹(	H=dâA¸HƒEH‰éAVjRPjRL‰ÒPjÿ5¡1	ÿ[6	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïè¨ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×èXÿÿH‹591	L‰ïI‰ÇH‹VIƒïèŽÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾t+H
aººH‰
6	Ç6	ºÇ6	t+tH=žGèAÀÿÿé“þÿÿ@H‰ïèÐÿÿH‹
Ù5	‹ß5	‹5Õ5	ëÎH‹F H‰×H‰D$H‹FH‰$èÿÿH…ÀŽ^ÿÿÿH‰âLYaL‰áL‰ïH5¿Ì蚫ÿÿ…À‰:ÿÿÿHt`¾>+Çx5	{H‰e5	Çc5	>+éâýÿÿfDH‹FH‰×H‰$è ÿÿI‰Çéçþÿÿ„H‹5©(	L‰ïH‹VèMÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿèxÿÿ„óúAWAVAUATUH‰ýSH‰óHƒì8L‹5ùíL‹fdH‹%(H‰D$(1ÀHÇ$HÇD$HÇD$L‰t$H…Ò…ÍIƒü„›Iƒü„IƒüH·_H
§_HMȝÀHƒì¶ÀATH`L@H‹=íH5fCL
h`H‹81ÀèÿÿH'_¾Ð*Ç+4	.Ç4	Ð*H‰4	XZH
þ^º.H=ÑEE1íèA¾ÿÿH‹D$(dH3%(…¥HƒÄ8L‰è[]A\A]A^A_ÃIƒü‡=ÿÿÿI‰ÕH$dJc¢HÐ>ÿàH‹FL‰ïH‰$èzÿÿI‰ÇIƒüåM…ä„_Iƒü„yéæDH‹V0H‹K(H‹C L‹KL‹¥èHƒìHuHH=úßA¸Iƒ$AVjÿ5Å)	QL‰ájÿ5Ù-	Pjÿ5À-	ÿš2	I‰ÅHƒÄPH…À„’Iƒ,$…ÿÿÿL‰çèçÿÿéÿÿÿfL‰òé|ÿÿÿH‹F0H‰D$H‹C(H‰D$H‹C L‰ïH‰D$H‹CH‰$èÿÿI‰ÇIƒü…ÿÿÿéÏIƒü…M…ÿåL‹$H‹D$H‹L$H‹T$éÿÿÿDIƒ,$¾ö*H
`]ºvH‰
[2	Ç]2	vÇO2	ö*„H=D腼ÿÿé?þÿÿL‰ïèÿÿI‰ÇH‹5Æ,	L‰ïIƒïH‹Vè>ÿÿH‰$H…À„ÀH‹5²,	L‰ïH‹VèÿÿH‰D$H…À„7IƒïH‹5m(	L‰ïH‹VèùÿÿH‰D$H…À„«IƒïéÿÿÿfH‹5)%	L‰ïH‹VèÍÿÿH…ÀtH‰D$IƒïM…ÿŽñþÿÿH‰âLC]L‰áL‰ïH5oÈèz§ÿÿ…À‰ÍþÿÿHT\¾¼*ÇX1	.H‰E1	ÇC1	¼*é*ýÿÿfDL‰çèÿÿH‹
!1	‹'1	‹51	éÏþÿÿHƒìH‹õéH
6\H5@jL
]A¸H¨\H‹81Àè·ÿÿHÉ[Y^H‰Ç0	¾²*ÇÄ0	.Ƕ0	²*éüÿÿHƒìH‹ŽéA¸H5±?jL
±\H
¹[H‹8H>\1ÀèPÿÿHb[_¾¬*H‰\0	AXÇ\0	.ÇN0	¬*é5üÿÿL‹cé·ûÿÿè³ÿÿóúAWAVAUATUH‰õSH‰ûHƒì(L‹59éL‹ndH‹%(H‰D$1ÀHÇ$HÇD$L‰t$H…Ò…žIƒý„tIƒý…ÒH‹V(H‹E L‹MH‹«èHƒìHsHH=øàA¸HƒEH‰éAVjÿ58,	ÿ5
!	jÿ52*	Pjÿ5*	ÿó.	I‰ÄHƒÄPH…À„#Hƒm„H‹D$dH3%(…<HƒÄ(L‰à[]A\A]A^A_ÃfH‰×èÿÿH‹5É)	L‰çI‰ÇH‹VIƒïè>ÿÿH‰$H…À…öL‹mDIƒýH
%ZH'ZAÀHMÈE¶ÀIƒÀHƒìH‹»çH–ZH5Ý=AUL
ÝZH‹81ÀèŠÿÿHœY¾<*Ç .	ÖÇ’.	<*H‰ƒ.	XZH
sYºÖH=v@E1ä趸ÿÿé	ÿÿÿL‰òé’þÿÿ„H‰ïè8ÿÿéëþÿÿI‰ÔIƒý„£qM…í„øþÿÿIƒý…H‹FH‰×H‰$èîÿÿI‰ÇH‹5¼(	L‰çH‹Vè(ÿÿH‰D$H…À„{IƒïM…ÿL‹$H‹D$H‹T$éþÿÿf.„Iƒý…ÞH‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$ètÿÿI‰ÇM…ÿ~¯H‰âLTYL‰éL‰çH5UÄ耣ÿÿ…ÀyH^X¾**Çb-	ÖH‰O-	ÇM-	**é¿þÿÿHƒm¾b*H
(Xº)H‰
#-	Ç%-	)Ç-	b*tH=?èQ·ÿÿé¤ýÿÿ@H‰ïèàÿÿH‹
é,	‹ï,	‹5å,	ëÎH
XA¸éðýÿÿfDH‹59 	L‰çH‹VèÝÿÿH…À„ÿÿÿH‰D$IƒïéÿÿÿfDH‹F H‰×H‰D$H‹FH‰$èWÿÿI‰Çé‰þÿÿHƒìH‹TåH
•WH5v;jL
vXA¸HXH‹81ÀèÿÿH(WY^H‰&,	¾ *Ç#,	ÖÇ,	 *é‡ýÿÿèƒÿÿH
4WA¸éýÿÿóúAWAVAUATUH‰õSH‰ûHƒì(L‹5ùäL‹fdH‹%(H‰D$1ÀH‹.	HÇ$L‰t$H‰D$H…Ò…ƒIƒü„qIƒü„WIƒü„ÍM…äH´VH
¤VHOÈAŸÀL
UVHWE¶ÀLOÈODHƒìH‹.äHWATH5N:H‹81ÀèÿÿHV¾³)Ç+	ˆÇ+	³)H‰ý*	XZH
íUºˆH==E1äè0µÿÿH‹D$dH3%(…¿HƒÄ(L‰à[]A\A]A^A_Ãf.„L‰òL‹MH‹«èHƒìHsHH=ÕA¸HƒEH‰éAVjÿ5#'	ÿ5õ	jÿ5m	Pjÿ5	ÿÞ)	I‰ÄHƒÄPH…À„Hƒm…cÿÿÿH‰ïè+
ÿÿéVÿÿÿfDH‹V(H‹E évÿÿÿL‰òëïI‰ÕIƒü„‹IM…ä„HIƒü…yþÿÿH‹FH‰×H‰$èÆÿÿI‰ÇM…ÿªL‹$H‹D$H‹T$éÿÿÿ€Iƒü…¾H‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$ètÿÿI‰ÇM…ÿ~²H‰âL_UL‰áL‰ïH55À耟ÿÿ…Ày’H^T¾ )Çb)	ˆH‰O)	ÇM)	 )éEþÿÿHƒm¾Ù)H
(TºÑH‰
#)	Ç%)	ÑÇ)	Ù)t5H=6;èQ³ÿÿéþÿÿ@H
2TA¸L

Ué–ýÿÿ€H‰ïèÀÿÿH‹
É(	‹Ï(	‹5Å(	ë®H‰×è
ÿÿH‹5i	L‰ïI‰ÇH‹VIƒïèÆÿÿH‰$H…À…¦þÿÿL‹eéýÿÿH‹F H‰×H‰D$H‹FH‰$èG
ÿÿI‰ÇM…ÿށþÿÿH‹5Ô	L‰ïH‹VèxÿÿH…À„³þÿÿH‰D$Iƒïé þÿÿH‹51	L‰ïH‹VèMÿÿH…Àt½H‰D$Iƒïë©èˆÿÿ„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5	áL‹fdH‹%(H‰D$1ÀHÇ$L‰t$H…Ò…gIƒü„MIƒü„ÃM…äHÚRH
ÊRHOÈŸÀH­S¶ÀL
rRLOÊL@HƒìH‹WàATH2SH5w6H‹81Àè-ÿÿH?R¾()ÇC'	=Ç5'	()H‰&'	XZH
Rº=H=i9E1äèY±ÿÿH‹D$dH3%(…HHƒÄ(L‰à[]A\A]A^A_ÃL‹V L‹MH‹y#	H‹«èHƒìHsHH‹;	H=tÎA¸HƒEH‰éAVjRPjRL‰ÒPjÿ5I	ÿ&	I‰ÄHƒÄPH…À„›Hƒm…gÿÿÿH‰ïèX	ÿÿéZÿÿÿM‰òé|ÿÿÿ„I‰ÕIƒü„CIƒü„ÁM…䅍þÿÿH‰×èÿÿH‹5á	L‰ïI‰ÇH‹VIƒïè>ÿÿH‰$H…À„KM…ÿL‹$L‹T$éÿÿÿf.„Hƒm¾N)H
ÈPº‚H‰
Ã%	ÇÅ%	‚Ç·%	N)tH=þ7èñ¯ÿÿé“þÿÿ@H‰ïè€ÿÿH‹
‰%	‹%	‹5…%	ëÎH‹F H‰×H‰D$H‹FH‰$è?ÿÿH…ÀŽ^ÿÿÿH‰âL QL‰áL‰ïH5߻èJ›ÿÿ…À‰:ÿÿÿH$P¾)Ç(%	=H‰%	Ç%	)éâýÿÿfDH‹FH‰×H‰$èÐÿÿI‰Çéçþÿÿ„H‹5Y	L‰ïH‹Vèý
ÿÿH…À„nÿÿÿH‰D$IGÿéWÿÿÿL‹eé
ýÿÿè(ÿÿ„óúAVAUATUH‰ÕSH‰ûHƒì H‹	L‹-¤ÝdH‹%(H‰D$1ÀH‹Ý	L‹fH‰$H‰D$L‰l$H…í…ªIƒü„à¢M…ä„ÁIƒü…ÓM‰êL‹NH‹
Á 	HƒìHsHL‹£èH=ÒA¸Iƒ$AUjQRL‰Òjÿ5ç	PjQL‰áÿZ#	I‰ÅHƒÄPH…À„Iƒ,$tCH‹D$dH3%(…HƒÄ L‰è[]A\A]A^ÀIƒü…ÖL‹V(H‹F é]ÿÿÿL‰çèhÿÿë³fDI‰ÑM‰êéEÿÿÿDH‹F M‰êé0ÿÿÿM…äH
‚NH„NM‰àHIÈIÁø?I÷ÐAƒàHƒìH‹ÜHOH582ATL
8OH‹81Àèå
ÿÿH÷M¾ª(Çû"	×Çí"	ª(H‰Þ"	XZH
ÎMº×H=Q5E1íè­ÿÿéùþÿÿ@H
òMA¸éuÿÿÿfDIƒü„† M…ä„7Iƒü…)ÿÿÿH‹FH‰ïH‰$èMÿÿI‰ÆM…ö~TH‹5f	H‰ïH‹Vè‚ÿÿH…ÀtH‰D$IƒîM…ö~.H‹5¸	H‰ïH‹Vè\ÿÿH…À„4H‰D$IƒîM…ö"L‹$H‹D$L‹T$H‹|	é×ýÿÿ€Iƒü….ÿÿÿH‹F(H‰ïH‰D$H‹F H‰D$H‹FH‰$è¤ÿÿI‰Æë¥€Iƒ,$¾Ð(H
 Lº7H‰
›!	ǝ!	7Ǐ!	Ð(tH=4èɫÿÿé±ýÿÿ@L‰çèXÿÿH‹
a!	‹g!	‹5]!	ëÎH‰ïè(ÿÿI‰ÆH…ÀŽ+ÿÿÿH‹5U	H‰ïH‹VèYÿÿH…À„»þÿÿH‰$Iƒîé©þÿÿH‹F H‰ïH‰D$H‹FH‰$è×ÿÿI‰Æé«þÿÿH‰âLÑLL‰áH‰ïH5X·èã–ÿÿ…À‰ºþÿÿH½K¾–(ÇÁ 	×H‰® 	Ǭ 	–(éÃýÿÿèÿÿf.„óúAUATUSH‰ûHƒìL‹
 ÙL‹fdH‹%(H‰D$1ÀL‰$H…Ò…?M…ä„.Iƒü„ÄM…äH{KH
kKHIÈL‰àHKHÁø?L
CLM…äLIÊL@HƒìH‹ôØATHÞKH5/H‹81ÀèÊÿÿHÜJ¾(Çà	›ÇÒ	(H‰Ã	XZH
³Jº›H=^2E1äèö©ÿÿH‹D$dH3%(…ÍHƒÄL‰à[]A\A]Ã@H‹VH‹«èHƒìHsHE1ÀH=£ÅHƒEH‰éAQjAQAQjAQAQjAQÿÃ	I‰ÄHƒÄPH…ÀtgHƒmuŠH‰ïèÿÿé}ÿÿÿL‰ÊëŸH‰ÕM…䄤Iƒü…¾þÿÿH‹FH‰×H‰$èÒÿÿL‹
ØH…ÀÁH‹$é]ÿÿÿf„Hƒm¾A(H
¸IºÑH‰
³	ǵ	Ñǧ	A(tH=F1èá¨ÿÿéæþÿÿ@H‰ïèpÿÿH‹
y	‹	‹5u	ëÎH‰×è@ÿÿL‹
×H…ÀI‰ÅŽkÿÿÿH‹5Æ	H‰ïH‹VèjÿÿL‹
[×H…Àt
H‰$IEÿé6ÿÿÿH‰âLúIL‰áH‰ïH5j´è”ÿÿ…ÀxH‹$L‹
×éuþÿÿHãH¾
(Çç	›H‰Ô	ÇÒ	
(éþÿÿè@ÿÿóúAUATUSH‰ûHƒìL‹
ÐÖL‹fdH‹%(H‰D$1ÀL‰$H…Ò…?M…ä„.Iƒü„ÄM…äH«HH
›HHIÈL‰àHMHHÁø?L
sIM…äLIÊL@HƒìH‹$ÖATHIH5D,H‹81ÀèúÿÿHH¾Ç	¶Ç	H‰ó	XZH
ãGº¶H=¾/E1äè&§ÿÿH‹D$dH3%(…ÍHƒÄL‰à[]A\A]Ã@H‹VH‹«èHƒìHsHE1ÀH=ÄHƒEH‰éAQjAQAQjAQAQjAQÿó	I‰ÄHƒÄPH…ÀtgHƒmuŠH‰ïèHÿþÿé}ÿÿÿL‰ÊëŸH‰ÕM…䄤Iƒü…¾þÿÿH‹FH‰×H‰$èþþÿL‹
CÕH…ÀÁH‹$é]ÿÿÿf„Hƒm¾7H
èFºÒH‰
ã	Çå	ÒÇ×	7tH=¦.è¦ÿÿéæþÿÿ@H‰ïè þþÿH‹
©	‹¯	‹5¥	ëÎH‰×èpýþÿL‹
±ÔH…ÀI‰ÅŽkÿÿÿH‹5ö	H‰ïH‹VèšÿÿL‹
‹ÔH…Àt
H‰$IEÿé6ÿÿÿH‰âL:GL‰áH‰ïH5º°èE‘ÿÿ…ÀxH‹$L‹
NÔéuþÿÿHF¾Ç	¶H‰	Ç	éþÿÿèpþþÿóúAVAUATUSH‰ûHƒì L‹
N	H‹-÷ÓdH‹%(H‰D$1ÀL‹fL‰$H‰l$H…Ò…iIƒü„WIƒü„=M…䄼M…äHÃEM‰àH
°EHmFHIÈHƒìH‹RÓIÁø?ATI÷ÐH5r)H‹8L
qFAƒà1ÀèÿÿH/E¾œÇ3	‚Ç%	œH‰	XZH
Eº‚H=-E1íèI¤ÿÿH‹D$dH3%(…7HƒÄ L‰è[]A\A]A^ÃDI‰êH‹n	L‹£èHƒìHsHH‹0	H=YËA¸Iƒ$L‰áUjRPjRL‰ÒPjÿ5‡
	ÿ	I‰ÅHƒÄPH…ÀtuIƒ,$…qÿÿÿL‰çèRüþÿédÿÿÿDL‹V L‹NëfDI‰êëïI‰ÕIƒü„óIƒüt}M…ä…˜þÿÿH‰×èüúþÿI‰ÆH…À@L‹$L‹T$é5ÿÿÿfIƒ,$¾ÂH
èCº°H‰
ã	Çå	°Ç×	„ÙH=Ú+è
£ÿÿé¿þÿÿ„H‹F H‰×H‰D$H‹FH‰$èwúþÿH…À~‚H‰âL„DL‰áL‰ïH5ۭ膎ÿÿ…À‰^ÿÿÿH`C¾‹Çd	‚H‰Q	ÇO	‹é.þÿÿfH‹FH‰×H‰$èúþÿI‰ÆM…öŽÿÿÿH‹5	L‰ïH‹VèAþþÿH…À„vÿÿÿH‰D$IFÿécÿÿÿf.„L‰çèØúþÿH‹
á	‹ç	‹5Ý	éÿÿÿH‹5Ñ	L‰ïH‹VèíýþÿH…Àt”H‰$Iƒîëè)ûþÿf„óúAWAVAUATUH‰õSH‰ûHƒì(L‹5©ÐL‹ndH‹%(H‰D$1ÀHÇ$HÇD$L‰t$H…Ò…žIƒý„tIƒý…ÒH‹V(H‹E L‹MH‹«èHƒìHsHH=¸ÆA¸HƒEH‰éAVjÿ5¨	ÿ5z	jÿ5Ò	Pjÿ5q	ÿc	I‰ÄHƒÄPH…À„#Hƒm„H‹D$dH3%(…<HƒÄ(L‰à[]A\A]A^A_ÃfH‰×èxøþÿH‹5!	L‰çI‰ÇH‹VIƒïè®üþÿH‰$H…À…öL‹mDIƒýH
•AH—AAÀHMÈE¶ÀIƒÀHƒìH‹+ÏH<BH5M%AUL
MBH‹81ÀèúýþÿHA¾Ç	WÇ	H‰ó	XZH
ã@ºWH=&)E1äè& ÿÿé	ÿÿÿL‰òé’þÿÿ„H‰ïè¨øþÿéëþÿÿI‰ÔIƒý„£qM…í„øþÿÿIƒý…H‹FH‰×H‰$è^÷þÿI‰ÇH‹5\	L‰çH‹Vè˜ûþÿH‰D$H…À„{IƒïM…ÿL‹$H‹D$H‹T$éþÿÿf.„Iƒý…ÞH‹F(H‰×H‰D$H‹F H‰D$H‹FH‰$èäöþÿI‰ÇM…ÿ~¯H‰âLú@L‰éL‰çH5%ªèðŠÿÿ…ÀyHÎ?¾ÇÒ	WH‰¿	ǽ	é¿þÿÿHƒm¾@H
˜?º}H‰
“	Ç•	}LJ	@tH=¾'è^ÿÿé¤ýÿÿ@H‰ïèP÷þÿH‹
Y	‹_	‹5U	ëÎH
‚?A¸éðýÿÿfDH‹5©	L‰çH‹VèMúþÿH…À„ÿÿÿH‰D$IƒïéÿÿÿfDH‹F H‰×H‰D$H‹FH‰$èÇõþÿI‰Çé‰þÿÿHƒìH‹ÄÌH
?H5æ"jL
æ?A¸H¸?H‹81Àè†ûþÿH˜>Y^H‰–	¾þÇ“	WÇ…	þé‡ýÿÿèóöþÿH
¤>A¸éýÿÿóúAVAUATUH‰ýSHƒìL‹fdH‹%(H‰D$1ÀH‹ZÌH‰$H…Ò…uM…ä„ÌIƒü…úL‹nH‹EH‹5³	H‰ïH‹€H…À„ÈÿÐH‰ÅH…í„‚è­ùþÿI‰ÄH…À„¹H‹5J	L‰êH‰Çèúþÿ…Àˆ§H‹EL‹5Ä	L‹¨€M…í„,è7øþÿ‹X SH‹‚ˉP ;_L‰âL‰öH‰ïAÿÕI‰Åèøþÿ‹H Qÿ‰P ‹HÎ=ÈŽ9ÊŒM…í„AHƒm„Iƒ,$…±L‰çèõþÿé¤fDM…äHO=H
?=HIÈL‰àHñ<HÁø?L
>M…äLIÊL@HƒìH‹ÈÊATHÜ=H5è H‹81ÀèžùþÿH°<¾“Ç´	NǦ	“H‰—	XZH
‡<ºNH=ò$E1íèʛÿÿH‹D$dH3%(…ËHƒÄL‰è[]A\A]A^ÃfDI‰Åé:þÿÿ„Áø@9ʍèþÿÿèÍöþÿÆ@$éÚþÿÿ@H‰ïèôþÿéÝþÿÿH<Ç	UH‰ø	Çö	´HƒmuH‰ïèÏóþÿIƒ,$thH‹
Ñ	‹×	‹5Í	H=.$E1íè›ÿÿé7ÿÿÿI‰ÕM…ä„ÌIƒü…‚þÿÿH‹FH‰×H‰$èjòþÿH…ÀÀL‹,$éjýÿÿ„L‰çèXóþÿëŽfDH
R;¾°ºUÇQ	UH‰
>	Ç<	°éjÿÿÿ€ècøþÿH‰Åé0ýÿÿHƒm¾²H
;ºUH‰
û	Çý	UÇï	²…ÿÿÿH‰ïèÉòþÿH‹
Ò	‹Ø	‹5Î	éüþÿÿH‰âLÄ;L‰áL‰ïH5ڤ赅ÿÿ…À‰ÿÿÿH:¾…Ç“	NH‰€	Ç~	…éÜýÿÿL‰âL‰öH‰ïè÷þÿI‰ÅH…À…ýÿÿfDHB:ÇK	UH‰8	Ç6	µé;þÿÿf„H=Ùètôþÿ…À„üÿÿëºf.„èëôþÿH…Àu¦H‹ÇH5ÈH‹8èòþÿëŽfDH‰×è°ðþÿH‰ÃH…ÀŽCþÿÿH‹5=	L‰ïH‹VèáôþÿH…À„çþÿÿH‰$HCÿéþÿÿèòþÿfDóúAVAUATUSH‰ûHƒìL‹%žÇL‹ndH‹%(H‰D$1ÀL‰$$H…Ò…M…í„Iƒý„ÂM…íHy9H
i9HIÈL‰èH9HÁø?L
A:M…íLIÊL@HƒìH‹òÆAUH
:H5H‹81ÀèÈõþÿHÚ8¾&ÇÞ
	!ÇÐ
	&H‰Á
	XZH
±8º!H=D!E1äèô—ÿÿH‹D$dH3%(…HƒÄL‰à[]A\A]A^ÃH‹VH‹«èM‰àH={ÉHs HƒEH‰éÿá	I‰ÄH…ÀtQHƒmu¦H‰ïè2ðþÿëœL‰âë¿H‰ÕM…í„äIƒý…àþÿÿH‹FH‰×H‰$èòîþÿH…ÀrH‹$ë‹€Hƒm¾DH
è7ºLH‰
ã	Çå	LÇ×	DtH=^ è—ÿÿéÿÿÿ@H‰ïè ïþÿH‹
©	‹¯	‹5¥	ëÎH‰âL¥8L‰éH‰ïH5¤¡菂ÿÿ…À‰jÿÿÿHi7¾Çm	!H‰Z	ÇX	éŒþÿÿH‰×è îþÿI‰ÆH…ÀŽ'ÿÿÿH‹5­ÿH‰ïH‹VèQòþÿH…ÀtH‰$IFÿéýþÿÿèŠïþÿf.„óúAWH‹5£	AVAUATUH‹GH‹€H…À„ÿÐI‰ÄM…ä„è•òþÿH‰ÅH…À„IH‹ºÄH‹5ë	H‰Çèóþÿ…ÀˆóI‹D$L‹=§	L‹°€M…ö„_èñþÿL‹-kÄ‹H Q‰P A;UH‰êL‰þL‰çAÿÖI‰Æèìðþÿ‹H Qÿ‰P A‹EHÎ=ÈŽA9ÊŒM…ö„pIƒ,$„ÕHƒm„º¿è°ìþÿI‰ÄH…À„4H‹…ÿI‹T$L‰æHƒH‰H‹=‡	ºè½wÿÿH‰ÅH…À„±Iƒ,$„¦H‹5GÿH‰ï跈ÿÿI‰ÅH…À„Hƒ8„¡Hƒm„†H‹5/	H‹ÀÃL‰÷I9F…[è|ÿÿI‰ÄM…ä„¿èàïþÿH‰ÅH…À„DL‰`¿èÆïþÿI‰ÄH…À„ZIƒEL‰hH‰h I‹M‰t$(I‰H…À„‘Iƒmt*]L‰àA\A]A^A_ÃDÁø@9ʍ¹þÿÿéµDL‰ïèÀìþÿ]L‰àA\A]A^A_ÃH
²4º†¾KDZ		†H=fH‰
—		Ç•		KèؓÿÿIƒ.…|ÿÿÿE1íL‰÷è`ìþÿM…í…^ÿÿÿ]L‰àA\A]A^A_Ãf.„H‰ïè8ìþÿé9þÿÿL‰çè(ìþÿHƒm…#þÿÿëÛèÃîþÿÆ@$éñýÿÿf.„H4E1íÇ		†H‰õ	Çó	PIƒ,$„ H‹
Ù	‹ß	‹5Õ	H=Žè“ÿÿIƒ.A¼…Aÿÿÿé4ÿÿÿ@Hš3Ç£	…H‰	ÇŽ	<Iƒ,$„›E1íE1äHƒmtNH‹
g	‹m	H="‹5\	蟒ÿÿM…ä„ÖþÿÿM‰æ뀐L‰çè(ëþÿH‹
1	‹7	‹5-	éSÿÿÿH‰ïèëþÿë¨fDL‰çèøêþÿéMýÿÿH‰ïèèêþÿémýÿÿH‰ÇèØêþÿéRýÿÿL‰çèÈêþÿéXÿÿÿèðþÿI‰ÄM…ä…õûÿÿ€H
ª2¾8º…Ç©	…H‰
–	Ç”	8E1äH=Jè͑ÿÿ]L‰àA\A]A^A_ÃIƒ,$¾:H
X2º…H‰
S	ÇU	…ÇG	:u±L‰çè%êþÿH‹
.	‹4	‹5*	ë”H‰êL‰þL‰çèÂîþÿI‰ÆH…À…æûÿÿfDHò1Çû	…H‰è	Çæ	=éSþÿÿf„H=‰è$ìþÿ…À„\ûÿÿëºf.„è›ìþÿH…Àu¦H‹?¿H5xH‹8è@êþÿëŽfDHz1M‰ôÇ€	†H‰m	Çk	SééýÿÿfDH
J1º‡¾bÇI	‡H=þH‰
/	Ç-	bèpÿÿIƒ.…
üÿÿé™üÿÿèÛéþÿI‰Äé ûÿÿHò0L‰åM‰ôÇõ	‡H‰â	Çà	dé^ýÿÿHÂ0I‰ìÇÈ	‡H‰µ	dz	ié»üÿÿfDóúAVH‹5CÿAUATUSH‹GH‹€H…À„ÉÿÐH‰ÅH…í„‹è6ìþÿI‰ÄH…À„ºH‹[¾H‹5ŒýH‰Çè¤ìþÿ…ÀˆÜH‹EL‹5I	L‹¨€M…í„áè¼êþÿ‹X SH‹¾‰P ;L‰âL‰öH‰ïAÿÕI‰Åèêþÿ‹H Qÿ‰P ‹HÎ=È~+9Ê|gM…í„þHƒmt?Iƒ,$t [L‰è]A\A]A^Ã@Áø@9Ê}Ïë4@L‰çèˆçþÿ[L‰è]A\A]A^Ã@H‰ïèpçþÿIƒ,$u¹ë×€èêþÿÆ@$ëŽDHR/Ç[	H‰H	ÇF	¦HƒmuH‰ïèçþÿIƒ,$t8H‹
!	‹'	‹5	E1íH=èVŽÿÿ[L‰è]A\A]A^Ãf.„L‰çèØæþÿë¾fDH
Ò.¾¢ºÇÑ	H‰
¾	Ǽ	¢ëfèëëþÿH‰Åé/þÿÿHƒm¾¤H
ˆ.ºH‰
ƒ	Ç…	Çw	¤…TÿÿÿH‰ïèQæþÿH‹
Z	‹`	‹5V	é4ÿÿÿf„L‰âL‰öH‰ïèâêþÿI‰ÅH…À…XþÿÿfDH.Ç	H‰	Ç	§é»þÿÿf„H=©èDèþÿ…À„Øýÿÿëºf.„è»èþÿH…Àu¦H‹_»H5˜H‹8è`æþÿëŽff.„óúAUH‹5«ýATUH‹GH‰ýH‹€H…À„AÿÐI‰ÄM…ä„DI‹D$H‹5gùL‰çH‹€H…À„lÿÐI‰ÅI‹$HƒèM…í„fI‰$H…À„H‹}H‹56ýH‹GH‹€H…À„ŠÿÐH‰ÅH…턌H‹EH‹5ùøH‰ïH‹€H…À„ÿÐI‰ÄH‹EHƒèM…䄨H‰EH…À„›H‹=TþL‰æè<äþÿH‰ÅH…À„ðIƒ,$„­H‹5&þH‰ïèäþÿI‰ÄH…À„úHƒm„—L‰æL‰ïèäãþÿH‰ÅH…À„Iƒ,$„Iƒm„êH‹EI‰ìHPH‰UH‰EH…Àt*L‰à]A\A]ÐH‰ïèäþÿéXÿÿÿL‰çèøãþÿéÚþÿÿH‰ïèèãþÿL‰à]A\A]ÀL‰çèÐãþÿéFÿÿÿH‰ïèÀãþÿé\ÿÿÿHº+ÇÃ	zH‰°	I‹$Ǫ	VHƒèI‰$H…ÀuL‰çè}ãþÿH‹
†	‹Œ	L‰íE1ä‹5|	H=•踊ÿÿI‹EHƒèé(ÿÿÿL‰ïè@ãþÿé	ÿÿÿL‰çè0ãþÿéîþÿÿèsèþÿI‰ÄM…ä…¼ýÿÿH
+ºy¾<Ç	yH=-H‰
þÿÇüÿ<è?ŠÿÿL‰à]A\A]ÃfDèèþÿI‰ÅéŒýÿÿH
Â*I‰$H‰
¾ÿÇÀÿyDzÿ>H…À„Qºy¾>H=¸E1äè؉ÿÿéYþÿÿè»çþÿH‰ÅénýÿÿH
b*ºz¾KÇaÿzH‰
NÿÇLÿK@H=aL‰íE1äè~‰ÿÿI‹EHƒèéîýÿÿH
*ÇÿzH‰
ÿÇÿMH‰EH…ÀtH‹
îþ‹5ðþ‹îþë H‰ïèÈáþÿH‹
Ñþ‹5Óþ‹Ñþé€ÿÿÿèûæþÿI‰ÄéÚüÿÿH¢)Ç«þzH‰˜þI‹$Ç’þPHƒèéãýÿÿHr)Ç{þzH‰hþH‹EÇbþSHƒèéSÿÿÿL‰çE1äè5áþÿH‹
>þ‹DþH=Y‹53þèvˆÿÿé÷üÿÿAUI‰õATUH‰ýSH‰ÓHƒì(dH‹%(H‰D$1ÀH‹GH;*·„lH;…·„׿èeãþÿI‰ÄH…À„iIƒEL‰hHƒH‰X H‹EHƒEL‹¨€M…í„Oè:ãþÿH‹‹¶‹H Q‰P ;J1ÒL‰æH‰ïAÿÕI‰Åèãþÿ‹H Qÿ‰P ‹HÎ=ÈŽ–9ÊŒœM…í„5Iƒ,$„ªHƒm„H‹D$dH3%(…EHƒÄ(L‰è[]A\A]ÃDH‹W‹B‰Cፁù€…ÿÿÿH‰4$L‹B1ÿH‰\$¨ uH‹}H‰æ¨…æºAÿÐI‰Å뒐Áø@9ʍdÿÿÿèMâþÿÆ@$éVÿÿÿ@H‰ïèˆßþÿédÿÿÿL‰çèxßþÿéIÿÿÿH‰4$H‰æH‰T$ºè:wÿÿI‰Åé3ÿÿÿfE1íé)ÿÿÿ„1ÒL‰æH‰ïèóãþÿI‰ÅéöþÿÿH=ñèŒáþÿ…À„¢þÿÿ@E1íéÓþÿÿ„èûáþÿI‰ÅH…ÀuãH‹œ´H5ÕH‹8èßþÿé£þÿÿ1ɺAÿÐI‰Åé§þÿÿèQßþÿAUATI‰ôUH‰ýHƒìH‹WH‹BpH…ÀtH‹@H…ÀtHƒÄ]A\A]ÿàH‹BhH…À„H‹HH…É„H‹״I9D$…$I‹D$HpHƒþ‡YH…À„€A‹t$Hƒøÿ„‰H;ú´„4H;õ³t3L‹bhM…ä„ÖI‹L$H…É„ÈH…öˆHƒÄH‰ï]A\A]ÿáH‹UH‰ñH‰ðH9ʆH‹DÅHƒHƒÄ]A\A]ÃA‹t$A‹D$HÁæH	Æf„H÷ÞHƒþÿ„ãH‹UH;`´„ºH;[³…bÿÿÿH‹UH…öyHH‰ÁëH‹i³H‹RH5NH‹81ÀèDâþÿ1ÀéyÿÿÿHƒÎÿf„H‰÷èøÞþÿI‰ÄH…À„ÊH‰ÆH‰ïèÞþÿIƒ,$…BÿÿÿL‰çH‰D$è	ÝþÿH‹D$é+ÿÿÿ€H‹UH‰ðH9Âv¬H‹UH‹ÂHƒéÿÿÿH‹UH…öyÛH2ëØf„è»ßþÿH…À…H‹EH;o³„VH;j²„YL‹`hM…ä„:ÿÿÿI‹L$HÇÆÿÿÿÿH…É„2ÿÿÿI‹$H…À„fþÿÿH‰t$H‰ïÿÐH‹t$H…Àˆ-I‹L$HÆéAþÿÿL‰çèxáþÿI‰ÅH…À„lÿÿÿH‰ÇèTÞþÿIƒmH‰Æ…iþÿÿL‰ïH‰D$è	ÜþÿH‹t$éRþÿÿ€Hƒøþ„$þÿÿHƒø…‰A‹t$A‹D$HÁæH	Æé•ýÿÿfDH;‰²„1öH;‚±…­ýÿÿH‹UH‰Æ1Éé¸ýÿÿH‹¿±H‰ÇH‹2è<Üþÿ…Àt&èÓÝþÿI‹D$H5H‹PH‹¼±H‹81ÀèRàþÿ1Àé‡ýÿÿL‰çèƒÝþÿH‰ÆéžýÿÿH‹UHÇÆÿÿÿÿélþÿÿH‹UHÇÆÿÿÿÿé¯ýÿÿH‹U1öé/þÿÿH‹A±H‰t$H‹8è<ÜþÿH‹t$…Àt¡H‰t$èIÝþÿI‹L$H‹t$éëüÿÿf.„óúAWAVAUATI‰ôUHƒìH‹5­ëdH‹%(H‰D$1ÀH‹GH‹€H…À„1ÿÐH‰ÅH…í„;H‹EH;@°…²L‹uM…ö„¥L‹mIƒIƒEHƒmtqL‰âL‰öL‰ïèCùÿÿIƒ.I‰ÄtjI‹EHƒèM…ä„tI‰EH…À„Iƒ,$„ñH‹R°HƒH‹L$dH3%(…HƒÄ]A\A]A^A_Ã@H‰ïèèÙþÿë…fDL‰÷èØÙþÿëŒfDH;°L‰$$„·H;h°…’H‹U‹B¨„ÓL‹jE1ÿ¨ „„è?ÜþÿL‹5¯‹H Q‰P A;ŽL‰æL‰ÿAÿÕI‰ÄèÜþÿ‹H Qÿ‰P A‹=ÈRÁø@9Â|OM…䄟I‰íéíþÿÿ€L‰çè(ÙþÿéÿÿÿL‰ïèÙþÿéçþÿÿL‹}ésÿÿÿ€ƒè29Â}±è¤ÛþÿÆ@$ë¦fDH=±ÿèLÛþÿ…À„^ÿÿÿ@H‹EI‰íHƒèH
Ç I‰E¾öº‚H‰
¹õÇ»õ‚Ç­õöH…À„œóúH=ÉèÜÿÿ1Àé_þÿÿDè»ÝþÿH‰ÅH…í…Ìýÿÿ€H
Z ¾èº‚ÇYõ‚H‰
FõÇDõèëžf.„L‰æH‰ïè•vÿÿI‰ÄéÎþÿÿDH‰æºH‰ïèØoÿÿI‰Äé±þÿÿL‰ïèè×þÿH‹
ñô‹÷ô‹5íôéDÿÿÿ¨€t¬L‹B1ÿ¨ uH‹}H‰æ¨u@ºAÿÐI‰Äéhþÿÿ€è›ÚþÿH…À…ÂþÿÿH‹;­H5tþH‹8è<Øþÿé§þÿÿ1ɺAÿÐI‰Äé&þÿÿèð×þÿAUATUSHƒìH‹GH;“­H‰t$„àH;é­…³H‹W‹B¨„œL‹l$L‹b1í¨ teèÀÙþÿH‹­‹H Q‰P ;°L‰îH‰ïAÿÔI‰Äè—Ùþÿ‹p Vÿ‰P ‹HÎ=È~29Ê|8M…ä„¥HƒÄL‰à[]A\A]ÀH‹oë•f.„Áø@9Ê}ÈèAÙþÿÆ@$뽨€…H‹t$èötÿÿHƒÄI‰Ä[]L‰àA\A]ÃDHt$ºè1nÿÿI‰Äë‡@H=ýè¬Øþÿ…À„<ÿÿÿ@E1äécÿÿÿ„èÙþÿI‰ÄH…ÀuãH‹¼«H5õüH‹8è½Öþÿé3ÿÿÿ„L‹JE1( uL‹GHt$¨uºL‰ÇAÿÑI‰Äéÿÿÿ1ɺL‰ÇAÿÑI‰ÄéëþÿÿóúAWAVAUATUSH‰ûHƒì(L‹-ԫL‹fdH‹%(H‰D$1ÀL‰l$H…Ò…"M…ä„yIƒü…§L‹fH‹{Iƒ$H‹5KåH‹GH‹€H…À„·	ÿÐH‰ÅH…í„Q	H‹5âíH‹s«H‰ïH9E…Î	èÉcÿÿI‰ÆM…ö„	H‹5†ðI9ö„}H‹~«I9F”ÂH9F”Ò„ð„À„èA€~ ‰½€~ ‰C
I‹VH;V„}Iƒ.„L‹=¬ªM9ì”ÀM9ü”ÂÂu
L;%µª…¶À„&H‹¥ñH‹
þØH9H…L‹5åØM…ö„œIƒI‹FH‹5ãL‰÷H‹€H…À„’ÿÐI‰ÁI‹HPÿM…É„I‰H…Ò„ñI‹AL‹5.âH‹ˆ€H…É„ÎH‰L$L‰$èˆÖþÿL‹$‹H QH‹L$‰P H‹ǩ;§1ÒL‰$L‰öL‰ÏÿÑI‰ÆèQÖþÿL‹$‹H Qÿ‰P H‹•©‹=ȍHÎŽ=9ÊŒÅM…ö„ÌIƒ)„ŠIƒ.„pIƒIƒ,$„M‰üHc{PèMÕþÿI‰ÆH…À„1	H‹5²éH‰ÂH‰ïèÏÑþÿ…Àˆ_	Iƒ.„ýòCXèÓÔþÿI‰ÆH…À„
H‹5ØéH‰ÂH‰ïè•Ñþÿ…Àˆ
Iƒ.„ÛM9ì”ÀL;%ި”ÂÂ…›L;%쨄ŽL‰çè6Öþÿ…Àˆ®
…À„¦H‹5OëH‹à¨H‰ïH9E…è6aÿÿI‰ÆM…ö„Ê
H‹5[âH‹´¨H‰ïH9E…7è
aÿÿI‰ÇM…ÿ„î
H‹5ßçH‹ˆ¨L‰ÿI9G…ƒèÞ`ÿÿI‰ÁM…É„
Iƒ/„8H‹Y¨H9EL‰$H‰ïH‹5çá…iè¤`ÿÿL‹$I‰ÇM…ÿ„lH‹%¨I9GL‰$L‰ÿH‹5Sä…{èp`ÿÿL‹$H‰ÃH…Û„wIƒ/„ÖH‹ç§H9EL‰$H‰ïH‹5è…¼è2`ÿÿL‹$I‰ÇM…ÿ„vH‹³§H9EL‰$H‰ïH‹51è…Çèþ_ÿÿL‹$I‰ÀM…À„„¿L‰D$L‰$è»ÓþÿL‹$L‹D$H…ÀI‰Å„›L‰pL‰H H‰X(L‰x0L‰@8H‹EHƒèf.„H‰EH…À„CIƒ,$…®L‰çèÀÐþÿé¡M…äHÿH
ïHIÈL‰àH¡HÁø?L
ÇM…äLIÊL@HƒìH‹x¦ATHH5˜üH‹81ÀèNÕþÿH`¾ŸÇdí¦ÇVíŸH‰GíXZH
7º¦H=šE1íèzwÿÿH‹D$dH3%(…É
HƒÄ(L‰è[]A\A]A^A_Ã@M‰ìéúÿÿ„L‹=¦M9þu„À…'ûÿÿL9þu„Ò…ûÿÿL‰÷ºèÐþÿH‰ÇH…À„ÆL9è”ÀH;=±¥”ÂÂ…^L9ÿ„UH‰<$èÓþÿH‹<$A‰ÇHƒ/„IE…ÿˆ‚fIƒ.„ÆE…ÿ„üÿÿé­úÿÿ„Áø@9ʍ½ûÿÿé}DI‹FH‹NH9È@•ÇHƒøÿ•À@„Çt
Hƒùÿ…^úÿÿE¶N ¶~ D‰ȉùÀèÀéƒàƒá8È…<úÿÿAöÁ „'IN0MVHAƒá@LEÑ@öÇ „ýHN0HƒÆHƒç@HEñ¶ȃù„Bƒù„¡A‹
‹>9Ï…çùÿÿHƒú„¶ÀL‰×E1ÿH¯ÐèÐþÿ…ÀA•ÇéÿÿÿDL‰çèèÑþÿ…À‰ÜùÿÿHRÇ[ëÌH‰HëÇFë×éÂf„¶Àézûÿÿ„L‰÷L‰$èÎþÿL‹$éúùÿÿL‰÷èðÍþÿéûÿÿL‰÷èàÍþÿéƒúÿÿL‰ÏèÐÍþÿéiúÿÿL‰çM‰üè½Íþÿérúÿÿ„L‰$èWÐþÿL‹$Æ@$é%úÿÿf.„H‰ïèˆÍþÿé°üÿÿL‰÷èxÍþÿ騸ÿÿIƒ.… úÿÿL‰÷è^Íþÿéúÿÿf„H‰ÕM…ä„ÄIƒü…‚üÿÿH‹FH‰×H‰D$èÌþÿH…ÀÍL‹d$é»÷ÿÿfDL‰÷èÍþÿéöùÿÿL‰÷H‰4$èÄËþÿH‹4$…À‰+øÿÿ„HâE1ÿE1ÉÇåéÌH‰ÒéI‹ÇÍéÐHPÿI‰H…Ò…mL‰÷L‰$L‰ûè–ÌþÿL‹$E1À€M…ÉtIƒ)tuH…ÛtHƒ+tBM…ÀtIƒ(tOH‹
pé‹véH=Ë‹5eéè¨sÿÿH‹EE1íHƒèéXûÿÿ„H‰ßL‰$è$ÌþÿL‹$ë¬fDL‰ÇèÌþÿë§fDL‰ÏL‰$èüËþÿL‹$évÿÿÿH‹EI‰íHPH‰Uéüúÿÿ@HÚE1íÇàèËH‰ÍèÇËèÂH‹
¼è‹ÂèH=‹5±èèôrÿÿM…털úÿÿL‰íé;ÿÿÿèËÐþÿH‰ÅéAöÿÿHrI‰íÇxèÌH‰eèÇcèÎë–f„èÌþÿI‰Æé-öÿÿHƒ/D¶ø…ÂûÿÿèËþÿé­ûÿÿ„H=ÙñH‰L$L‰$èkÍþÿL‹$H‹L$…À„3÷ÿÿf.„Iƒ)HÞH‰ÞçÇàçÍÇÒçð…MþÿÿL‰Ïè¬Êþÿé@þÿÿ€L‰$è—ÍþÿL‹$H…Àu®H‹7 H5pñH‹8è8ËþÿL‹$ë’fH‰÷H‰4$è4ÉþÿH‹4$…À‰¥õÿÿésýÿÿHT$L‰áH‰ïLêH5Z|èU]ÿÿ…À‰
ýÿÿH/¾‘Ç3ç¦H‰ çÇç‘éÌùÿÿHI‰íÇçÑH‰õæÇóæé#þÿÿfDL‰ÿL‰$èÄÉþÿL‹$é³÷ÿÿHºE1ÿE1ÉǽæÑH‰ªæI‹Ç¥æHPÿéÓüÿÿ@H‰×èhÈþÿI‰ÆH…ÀŽLüÿÿH‹5µÞH‰ïH‹Vè™ÌþÿH…À„ýþÿÿH‰D$IFÿéüÿÿfH‹=ØHÊÍH5ËÍèÆcÿÿI‰ÆM…ö…ÚôÿÿHI‰íÇ"æÍH‰æÇ
æãé=ýÿÿHòI‰íÇøåÒH‰ååÇãåéýÿÿfDL‰ÿL‰$è´ÈþÿL‹$é÷ÿÿH‹=y×è¼bÿÿI‰Æéqÿÿÿ@èÛÍþÿI‰ÁéfôÿÿH‚E1ÿLjåÍH‰uåÇsååé¥ûÿÿfDHRE1ÿE1ÉÇUåÒH‰BåI‹Ç=åHPÿékûÿÿ@1ÒL‰öL‰ÏL‰$èÇÌþÿL‹$H…ÀI‰Æ…‹ôÿÿéýÿÿfHòÇûäÓH‰èäÇæä'ébûÿÿf„H‹vHé	ùÿÿ€M‹VHéàøÿÿ€H¢I‰íǨäÔH‰•äÇ“ä2éÃûÿÿfDèKÈþÿI‰ÆéðôÿÿA¶
¶>éÀøÿÿ@HRE1ÉÇXäÔH‰EäI‹Ç@ä4HPÿénúÿÿ€èóÇþÿI‰ÇéÄôÿÿH
E1À1ÛÇäÔH‰ûãI‹Çöã6HƒèI‰H…À„¡Iƒ/…<úÿÿL‰ÿL‰D$L‰$è³ÆþÿL‹$L‹D$éúÿÿDè{ÇþÿI‰ÁéxôÿÿL‰÷èˆÆþÿé-÷ÿÿè[ÇþÿL‹$I‰Çé’ôÿÿ€HjÇsãÔH‰`ãI‹Ç[ã9HPÿé‰ùÿÿèÇþÿL‹$H‰Ãé€ôÿÿH+E1ÀÇ1ãÔH‰ãI‹Çã;HƒèéÿÿÿA·
·>éX÷ÿÿHî
I‰ßÇôâÕH‰áâI‹ÇÜâFHPÿé
ùÿÿè–ÆþÿL‹$I‰Çé?ôÿÿH¬
ǵâÕH‰¢âI‹ÇâHHƒèé¢þÿÿèWÆþÿL‹$I‰Àé4ôÿÿHm
ÇvâÔH‰câI‹Ç^âRHƒèécþÿÿèÈÅþÿL‰ûE1À饸ÿÿL‰÷L‰D$L‰$èÅþÿL‹$L‹D$é@þÿÿff.„óúAWAVAUATI‰üUH‰õSHƒìdH‹%(H‰D$1ÀH…Ò…H‹EHƒEHƒøÿ„¤I‹T$H‹5àÔL‰çH‹’H…À„H…Ò„üÿÒI‰ÆM…ö„þèaÈþÿI‰ÄH…À„%H‹5þÔH‰êH‰ÇèÓÈþÿ…Àˆ‹I‹FL‹=xáL‹¨€M…í„°èëÆþÿ‹X SH‹6š‰P ;ãL‰âL‰þL‰÷AÿÕI‰Åè¿Æþÿ‹H Qÿ‰P ‹HÎ=ÈŽV9ÊŒ~M…í„ÅIƒ.„[Iƒ,$„@Hƒm„eH‹D$dH3%(…ÌHƒÄL‰è[]A\A]A^A_ÀH…Ò„¯ÿÒI‰ÄM…䄱I‹D$H;-™…M‹|$M…ÿ„M‹t$IƒIƒIƒ,$„éI‹FH;†™L‰<$„H;ݙ…I‹V‹B¨„PL‹bE1í¨ uM‹nè´Åþÿ‹X SH‹ÿ˜‰P ;|L‰ïL‰þAÿÔI‰Åè‹Åþÿ‹H Qÿ‰P ‹=ÈŽ]ƒè29ÂŒÂM…í„yIƒ/…ïL‰ÿèŸÂþÿM…í…ÞM‰ôH’
Ç›ß7H‰ˆßdžß/&éÁf„H‰ïèXÂþÿéŽþÿÿH;‘˜„H;옅FI‹L$‹Qö„5E1öƒâ L‹iuM‹t$è¿Äþÿ‹X SH‹
˜‰P ;g1öL‰÷AÿÕI‰Åè—Äþÿ‹H Qÿ‰P ‹HÎ=ÈÁø@9ÊŒlM‰æM…í„ÀIƒ.…ÞýÿÿL‰÷è¦ÁþÿéÑýÿÿÁø@9ʍ¤ýÿÿë L‰çèˆÁþÿé³ýÿÿL‰÷èxÁþÿé˜ýÿÿèÄþÿÆ@$étýÿÿfL‰çèXÁþÿé
þÿÿH‰×I‰Õè5ÀþÿH…ÀŽmüÿÿ1ÒH5æL‰ïè;Lÿÿ…À…TüÿÿE1íéVýÿÿH
	¾&º6ÇÞ6H‰
ÞÇÞ&H=ùE1íè=hÿÿéýÿÿ„HÒÇÛÝ9H‰ÈÝÇÆÝL&Iƒ.t0Iƒ,$tH‹
ªÝ‹°Ý‹5¦Ýë @L‰çè€ÀþÿëÝfDL‰÷èpÀþÿëÆfDÁø@é›ýÿÿDèÃþÿÆ@$é†þÿÿf.„1Ò1öL‰çM‰æèXÿÿI‰ÅéŠýÿÿf„H‰æºL‰÷èðWÿÿI‰ÅIƒ/…dýÿÿéWýÿÿfDè£ÂþÿÆ@$é0ýÿÿf.„è+ÅþÿI‰ÄéIüÿÿH
Ò¾!&º7ÇÑÜ7H‰
¾ÜǼÜ!&é³þÿÿ€èãÄþÿI‰ÆéüúÿÿH
оH&º9ljÜ9H‰
vÜÇtÜH&ékþÿÿ€Iƒ.¾J&H
Iº9H‰
DÜÇFÜ9Ç8ÜJ&….þÿÿL‰÷è¿þÿH‹
Ü‹!Ü‹5Üéþÿÿf.„L‹¨€L‹5
ÜM…í„Ãè„Áþÿ‹X SH‹ϔ‰P ;¾1ÒL‰öL‰çAÿÕé½üÿÿ@L‰þL‰÷è]ÿÿI‰ÅéˆþÿÿDL‰âL‰þL‰÷èBÃþÿI‰ÅH…À…‘úÿÿfDHrÇ{Û9H‰hÛÇfÛM&é›ýÿÿf„H=	åè¤Àþÿ…À„	úÿÿëºf.„èÁþÿH…Àu¦H‹¿“H5øäH‹8è>þÿëŽfDèóÀþÿH…À…ZûÿÿH‹““H5ÌäH‹8蔾þÿé?ûÿÿ€¨€„ÿÿÿL‹B1ÿ¨ uI‹~H‰æ¨…ǺAÿÐI‰ÅéŠýÿÿ€H=Yäèô¿þÿ…À„…ûÿÿéçúÿÿ€H=9äèԿþÿ…À„púÿÿ@Iƒ/M‰ô…»úÿÿL‰ÿèC½þÿé®úÿÿfDè3ÀþÿH…ÀuÖH‹גH5äH‹8èؽþÿë¾L‰ö1ÒL‰çM‰æèÆÁþÿI‰Åé_úÿÿH=Çãèb¿þÿ…À„.þÿÿéUúÿÿèp½þÿ1ɺAÿÐI‰ÅéÁüÿÿff.„óúAWAVAUATI‰üUH‰õSHƒìdH‹%(H‰D$1ÀH…Ò…H‹EHƒEHƒøÿ„¤I‹T$H‹50ÎL‰çH‹’H…À„H…Ò„üÿÒI‰ÆM…ö„þè!ÀþÿI‰ÄH…À„%H‹5¾ÌH‰êH‰Çè“Àþÿ…Àˆ‹I‹FL‹=8ÙL‹¨€M…í„°諾þÿ‹X SH‹ö‘‰P ;ãL‰âL‰þL‰÷AÿÕI‰Åè¾þÿ‹H Qÿ‰P ‹HÎ=ÈŽV9ÊŒ~M…í„ÅIƒ.„[Iƒ,$„@Hƒm„eH‹D$dH3%(…ÌHƒÄL‰è[]A\A]A^A_ÀH…Ò„¯ÿÒI‰ÄM…䄱I‹D$H;퐅M‹|$M…ÿ„M‹t$IƒIƒIƒ,$„éI‹FH;F‘L‰<$„H;‘…I‹V‹B¨„PL‹bE1í¨ uM‹nèt½þÿ‹X SH‹¿‰P ;|L‰ïL‰þAÿÔI‰ÅèK½þÿ‹H Qÿ‰P ‹=ÈŽ]ƒè29ÂŒÂM…í„yIƒ/…ïL‰ÿè_ºþÿM…í…ÞM‰ôHRÇ[×üH‰H×ÇF×­%éÁf„H‰ïèºþÿéŽþÿÿH;Q„H;¬…FI‹L$‹Qö„5E1öƒâ L‹iuM‹t$è¼þÿ‹X SH‹ʏ‰P ;g1öL‰÷AÿÕI‰ÅèW¼þÿ‹H Qÿ‰P ‹HÎ=ÈÁø@9ÊŒlM‰æM…í„ÀIƒ.…ÞýÿÿL‰÷èf¹þÿéÑýÿÿÁø@9ʍ¤ýÿÿë L‰çèH¹þÿé³ýÿÿL‰÷è8¹þÿé˜ýÿÿèۻþÿÆ@$étýÿÿfL‰çè¹þÿé
þÿÿH‰×I‰Õèõ·þÿH…ÀŽmüÿÿ1ÒH5—L‰ïèûCÿÿ…À…TüÿÿE1íéVýÿÿH
Ú¾“%ºûÇÙÕûH‰
ÆÕÇÄÕ“%H=uñE1íèý_ÿÿéýÿÿ„H’Ç›ÕþH‰ˆÕdžÕÊ%Iƒ.t0Iƒ,$tH‹
jÕ‹pÕ‹5fÕë @L‰çè@¸þÿëÝfDL‰÷è0¸þÿëÆfDÁø@é›ýÿÿDèúþÿÆ@$é†þÿÿf.„1Ò1öL‰çM‰æèÑOÿÿI‰ÅéŠýÿÿf„H‰æºL‰÷è°OÿÿI‰ÅIƒ/…dýÿÿéWýÿÿfDècºþÿÆ@$é0ýÿÿf.„èë¼þÿI‰ÄéIüÿÿH
’ÿ¾Ÿ%ºüÇ‘ÔüH‰
~ÔÇ|ÔŸ%é³þÿÿ€裼þÿI‰ÆéüúÿÿH
Jÿ¾Æ%ºþÇIÔþH‰
6ÔÇ4ÔÆ%ékþÿÿ€Iƒ.¾È%H
	ÿºþH‰
ÔÇÔþÇøÓÈ%….þÿÿL‰÷èҶþÿH‹
ÛÓ‹áÓ‹5×Óéþÿÿf.„L‹¨€L‹5ÊÓM…í„ÃèD¹þÿ‹X SH‹Œ‰P ;¾1ÒL‰öL‰çAÿÕé½üÿÿ@L‰þL‰÷èÝTÿÿI‰ÅéˆþÿÿDL‰âL‰þL‰÷è»þÿI‰ÅH…À…‘úÿÿfDH2þÇ;ÓþH‰(ÓÇ&ÓË%é›ýÿÿf„H=ÉÜèd¸þÿ…À„	úÿÿëºf.„è۸þÿH…Àu¦H‹‹H5¸ÜH‹8耶þÿëŽfD賸þÿH…À…ZûÿÿH‹S‹H5ŒÜH‹8èT¶þÿé?ûÿÿ€¨€„ÿÿÿL‹B1ÿ¨ uI‹~H‰æ¨…ǺAÿÐI‰ÅéŠýÿÿ€H=Ü贷þÿ…À„…ûÿÿéçúÿÿ€H=ùÛ蔷þÿ…À„púÿÿ@Iƒ/M‰ô…»úÿÿL‰ÿèµþÿé®úÿÿfDèó·þÿH…ÀuÖH‹—ŠH5ÐÛH‹8蘵þÿë¾L‰ö1ÒL‰çM‰æ膹þÿI‰Åé_úÿÿH=‡Ûè"·þÿ…À„.þÿÿéUúÿÿè0µþÿ1ɺAÿÐI‰ÅéÁüÿÿff.„AWAVAUI‰ýATUHƒìH‹
I¼dH‹%(H‰D$1ÀH‹’ÑH9H…(L‹%¼M…ä„xIƒ$I‹D$H‹5ÿÉL‰çH‹€H…À„lÿÐH‰ÅI‹$HƒèH…í„îI‰$H…À„1H‹EH;ž‰„HH;!ŠL‰,$„‡H;xŠ…ŠH‹U‹B¨„sL‹bE1ÿ¨ „üèO¶þÿL‹5 ‰‹H Q‰P A;æL‰îL‰ÿAÿÔI‰Äè%¶þÿ‹H Qÿ‰P A‹=ȏÆÁø@9ÂŒÃM…ä„çI‰îM…ä„SIƒ.„L;%j‰”ÀL;%8‰”ÂÂ…íL;%F‰„àL‰ç萶þÿ‰ŅÀˆVIƒ,$„ÑI‹E…í„Ùö€«„òI‹mHEHƒø‡©HMHc‚HÐ>ÿà€L‹}éûþÿÿ€ƒè29=ÿÿÿè8µþÿÆ@$é/ÿÿÿIƒ,$uL‰ç1íèn²þÿfDH‰ïèp´þÿI‰ÄH…À„œH‹D$dH3%(…¢HƒÄL‰à]A\A]A^A_ÀIƒ,$¶è…/ÿÿÿL‰çè²þÿI‹E…í…'ÿÿÿH‹€H‹5ËL‰ïH…À„$ÿÐI‰ÅM…í„Þ蹵þÿH‰ÅH…À„MH‹æÀH‹5/ÊH‰Çè'¶þÿ…ÀˆI‹EL‹=ô¿L‹ €M…ä„è?´þÿL‹5‡‹p V‰P A;>H‰êL‰þL‰ïAÿÔI‰Äè´þÿ‹p Vÿ‰P A‹HÎ=ÈÁø@9ÊŒŽM…ä„Iƒm„úHƒm…ËþÿÿH‰ïè±þÿé¾þÿÿfH
ùI‰$¾ðºH‰
ÎÇÎÇøÍðH…Àt{óúH=ÈéE1äè(XÿÿéoþÿÿL‰ç踰þÿéÂüÿÿL‰÷訰þÿérýÿÿIƒ,$¾H
˜øºH‰
“ÍÇ•ÍLJÍu’L‰çèe°þÿépL‰çèX°þÿH‹
aÍ‹gÍ‹5]Íéeÿÿÿ¨€…øL‰îH‰ïè­NÿÿI‰ÄéÞüÿÿDH‹=iÃHê·H5ë·è¦JÿÿI‰ÄM…ä…ÇûÿÿH
ü÷¾îºÇûÌH‰
èÌÇæÌîéîþÿÿf„H‹=	ÃèÔIÿÿI‰Ä묀èó´þÿH‰ÅéŒûÿÿL‹}M…ÿ„«ûÿÿL‹uIƒIƒHƒm„ÜL‰êL‰þL‰÷èVÎÿÿIƒ/I‰Ä…üÿÿL‰ÿèQ¯þÿéüÿÿ@H‰æºH‰ïèGÿÿI‰ÄééûÿÿL‰ïè(¯þÿéùýÿÿH"÷Ç+Ì"H‰ÌÇÌ3Iƒmt7Hƒmt H‹
ùË‹ÿË‹5õËéýýÿÿ„H‰ïèȮþÿëÖfDL‰ï踮þÿë¿fDè[±þÿÆ@$édýÿÿfH=iÕè±þÿ…À„ûÿÿ@HŠöÇ“ËH‰€ËÇ~Ëÿéjÿÿÿè[±þÿH…ÀuÎH‹ÿƒH58ÕH‹8è¯þÿë¶fDA‹méÇûÿÿ€A‹mA‹EHÁåH	Åé¬ûÿÿ@A‹mA‹EHÁåH	ÅH÷ÝHƒýÿ…Œûÿÿèï°þÿHÇÅÿÿÿÿH…À„wûÿÿH
áõ¾
º ÇàÊ H‰
ÍÊÇËÊ
éÓüÿÿfDA‹m÷ÝHcíëŸDH‰ï萭þÿéþÿÿH‰êL‰þL‰ïè:²þÿI‰ÄH…À…9üÿÿfDHjõÇsÊ"H‰`ÊÇ^Ê4éCþÿÿL‹B1ÿ¨ uH‹}H‰æ¨…NºAÿÐI‰ÄéÐùÿÿL‰ïè°þÿH‰Åé	ÿÿÿ€H
õ¾/º"ÇÊ"H‰
îÉÇìÉ/éôûÿÿ€è²þÿI‰ÅéÔúÿÿH
ºô¾º!ǹÉ!H‰
¦ÉǤÉé¬ûÿÿ€Iƒm¾1H
xôº"H‰
sÉÇuÉ"ÇgÉ1…nûÿÿL‰ïèA¬þÿéLýÿÿ@H=Ó蜮þÿ…À„®úÿÿé·þÿÿ€è¯þÿH…À…¢þÿÿH‹³H5ìÒH‹8贬þÿé‡þÿÿ€L‰õéXýÿÿH‹@`H…À„H‹€€H…À„üL‰ïÿÐI‰ÄH…À„ëH‹@H‹-‚H9è…”fDö€«„òI‹l$HEHƒø‡’HùHc‚HÐ>ÿàA‹l$Iƒ,$…ïøÿÿL‰çèO«þÿéLýÿÿA‹l$÷ÝHcíIƒ,$…7ýÿÿëÜA‹l$A‹D$HÁåH	ÅH÷ÝëÝA‹l$A‹D$HÁåH	Åë¨L‰çH5õè;/ÿÿI‰ÄH…À„ûüÿÿH‹@éNÿÿÿL‰çèî­þÿH‰Åë™1ɺAÿÐI‰Äé€÷ÿÿè­þÿH…À…ÅüÿÿH‹²€H5âñH‹8èc«þÿéªüÿÿè)«þÿH‹@`H…À„÷H‹€€H…À„çL‰çÿÐI‰ÅH…À„ÖH9h…‰I‹Eö€«t#I‹mHEHƒø‡H÷÷Hc‚HÐ>ÿàL‰ïè9GÿÿH‰ÅIƒm…ÛþÿÿL‰ïèªþÿéÎþÿÿA‹m÷ÝHcíëÝA‹mA‹EHÁåH	ÅH÷ÝëÉA‹mA‹EHÁåH	Åë¸A‹më²H5ìóH‰Çè	.ÿÿI‰ÅH…À…\ÿÿÿIƒ,$…¾ûÿÿL‰ç誩þÿé±ûÿÿL‰ï譬þÿH‰Åéoÿÿÿ萬þÿH…ÀuÎH‹„H5´ðH‹8è5ªþÿë¶óúAVAUI‰ÕATUH‰õSH‰ûHƒì0H‹ˆL‹fdH‹%(H‰D$(1ÀHÇD$H‰T$M…í……Iƒü„ÏIƒü„ÁM…äHXñH
HñHOÈŸÀH+ò¶ÀL
ððLOÊL@HƒìH‹Õ~ATH…ôH5õÔH‹81À諭þÿH½ð¾W>ÇÁÅË
dzÅW>H‰¤ÅXZH
”ðºË
H=ŸáèÚOÿÿ1ÀH‹\$(dH3%(…¯HƒÄ0[]A\A]A^ÀH‹V H‹}L‹£èHƒìHs E1ÉH‹
çÁH‹¸¶A¸Iƒ$jQPjQL‰áPjÿ5
»WH=¢|ÿ„ÄH‰ÅHƒÄPH…À„´Iƒ,$t5H‰ïè]óÿÿH…À„äHƒm…QÿÿÿH‰ïH‰D$輧þÿH‹D$é:ÿÿÿfL‰ç訧þÿëÁfDIƒü„ŽIƒü„M…ä…rþÿÿL‰ïèk¦þÿH‹5|ºL‰ïI‰ÆH‹VIƒî衪þÿH‰D$H…À„•M…öbH‹|$H‹T$éóþÿÿIƒ,$¾}>H
0ïºH‰
+ÄÇ-ÄÇÄ}>teH=àèYNÿÿ1ÀézþÿÿfºH
í>H‰D$H=óßH‰
ÜÃÇÞÃÇÐË>èNÿÿH‹D$éÕþÿÿf„L‰ç蘦þÿH‹
¡Ã‹§Ã‹5Ãé{ÿÿÿH‹F L‰ïH‰D$H‹FH‰D$èV¥þÿH…ÀŽÿÿÿHT$L‰áL‰ïLòH5d]è_9ÿÿ…À‰íþÿÿH9î¾G>Ç=ÃË
H‰*ÃÇ(ÃG>éyýÿÿH‹FL‰ïH‰D$èç¤þÿI‰Æéœþÿÿ€H‹5q¶L‰ïH‹Vè©þÿH…À„oÿÿÿH‰D$IFÿéXÿÿÿL‹eé¤üÿÿè@¦þÿóúAVAUI‰ÕATUH‰õSH‰ûHƒì0H‹È{L‹fdH‹%(H‰D$(1ÀHÇD$H‰T$M…í……Iƒü„ÏIƒü„ÁM…äH˜íH
ˆíHOÈŸÀHkî¶ÀL
0íLOÊL@HƒìH‹{ATH•ñH55ÑH‹81Àèë©þÿHýì¾6;ÇÂ
ÇóÁ6;H‰äÁXZH

H=ÞèLÿÿ1ÀH‹\$(dH3%(…¯HƒÄ0[]A\A]A^ÀH‹V H‹}L‹£èHƒìHs E1ÉH‹
'¾H‹ø²A¸Iƒ$jQPjQL‰áPjÿ5J·WH=yÿÄÀH‰ÅHƒÄPH…À„´Iƒ,$t5H‰ïèïÿÿH…À„äHƒm…QÿÿÿH‰ïH‰D$èü£þÿH‹D$é:ÿÿÿfL‰çèè£þÿëÁfDIƒü„ŽIƒü„M…ä…rþÿÿL‰ï諢þÿH‹5¼¶L‰ïI‰ÆH‹VIƒîèá¦þÿH‰D$H…À„•M…öbH‹|$H‹T$éóþÿÿIƒ,$¾\;H
pëºD
H‰
kÀÇmÀD
Ç_À\;teH=ŽÜè™Jÿÿ1ÀézþÿÿfºI
H
-ë¾j;H‰D$H=cÜH‰
ÀÇÀI
ÇÀj;èSJÿÿH‹D$éÕþÿÿf„L‰çèآþÿH‹
á¿‹ç¿‹5ݿé{ÿÿÿH‹F L‰ïH‰D$H‹FH‰D$薡þÿH…ÀŽÿÿÿHT$L‰áL‰ïLïH5TYèŸ5ÿÿ…À‰íþÿÿHyê¾&;Ç}¿
H‰j¿Çh¿&;éyýÿÿH‹FL‰ïH‰D$è'¡þÿI‰Æéœþÿÿ€H‹5±²L‰ïH‹VèU¥þÿH…À„oÿÿÿH‰D$IFÿéXÿÿÿL‹eé¤üÿÿ耢þÿóúAVAUI‰ÕATUH‰õSH‰ûHƒì0H‹xL‹fdH‹%(H‰D$(1ÀHÇD$H‰T$M…í……Iƒü„ÏIƒü„ÁM…äHØéH
ÈéHOÈŸÀH«ê¶ÀL
péLOÊL@HƒìH‹UwATHíH5uÍH‹81Àè+¦þÿH=龪:ÇA¾ÅÇ3¾ª:H‰$¾XZH
éºÅH=ÚèZHÿÿ1ÀH‹\$(dH3%(…¯HƒÄ0[]A\A]A^ÀH‹V H‹}L‹£èHƒìHs E1ÉH‹
gºH‹8¯A¸Iƒ$jQPjQL‰áPjÿ5"ºWH=Buÿ½H‰ÅHƒÄPH…À„´Iƒ,$t5H‰ïèÝëÿÿH…À„äHƒm…QÿÿÿH‰ïH‰D$è< þÿH‹D$é:ÿÿÿfL‰çè( þÿëÁfDIƒü„ŽIƒü„M…ä…rþÿÿL‰ïèëžþÿH‹5”¹L‰ïI‰ÆH‹VIƒîè!£þÿH‰D$H…À„•M…öbH‹|$H‹T$éóþÿÿIƒ,$¾Ð:H
°çº
H‰
«¼Ç­¼
ÇŸ¼Ð:teH=þØèÙFÿÿ1Àézþÿÿfº
H
mç¾Þ:H‰D$H=ÓØH‰
\¼Ç^¼
ÇP¼Þ:è“FÿÿH‹D$éÕþÿÿf„L‰çèŸþÿH‹
!¼‹'¼‹5¼é{ÿÿÿH‹F L‰ïH‰D$H‹FH‰D$è֝þÿH…ÀŽÿÿÿHT$L‰áL‰ïLŽêH5tUèß1ÿÿ…À‰íþÿÿH¹æ¾š:ǽ»ÅH‰ª»Ç¨»š:éyýÿÿH‹FL‰ïH‰D$ègþÿI‰Æéœþÿÿ€H‹5ñ®L‰ïH‹V蕡þÿH…À„oÿÿÿH‰D$IFÿéXÿÿÿL‹eé¤üÿÿèþÿóúAUATUH‰ÕSH‰ûHƒì8H‹MtL‹fdH‹%(H‰D$(1ÀH‹‚¬H‰T$H‰D$H…í…×Iƒü„ÁIƒü„³M…ä„M…äHæM‰àH
þåHwéHIÈHƒìH‹ sIÁø?ATI÷ÐH5ÀÉH‹8L
¿æAƒà1Àèk¢þÿH}å¾:ǁº|Çsº:H‰dºXZH
Tåº|H=çÖèšDÿÿ1ÀH‹\$(dH3%(…·HƒÄ8[]A\A]Ãf„Iƒü„.Iƒü„¬M…ä…)ÿÿÿH‰ïèۛþÿI‰ÅH…ÀO€H‹D$H‹T$fDL‹£èHƒìHs E1ÉL‹g¶H‹
8«Iƒ$H=LqjAPQjAPA¸QL‰áj
ÿ5	²Pÿ¹H‰ÅHƒÄPH…Àt^Iƒ,$t7H‰ïèßçÿÿH…À„–Hƒm…ÿÿÿH‰ïH‰D$è>œþÿH‹D$éüþÿÿ@L‰çè(œþÿë¿fDH‹V H‹FéKÿÿÿIƒ,$º¾H
ä¾D:H‰
¹Ç¹¾Ç÷¸D:tmH=~Õè1Cÿÿ1Àé’þÿÿf.„ºÃH
½ã¾R:H‰D$H=KÕH‰
¬¸Ç®¸ÃÇ ¸R:èãBÿÿH‹D$é#ÿÿÿf„L‰çèh›þÿ‹5z¸H‹
k¸‹q¸ésÿÿÿH‹F H‰ïH‰D$H‹FH‰D$è&šþÿH…ÀŽUþÿÿHT$L‰áH‰ïLãæH5¤Qè/.ÿÿ…À‰/þÿÿH	ã¾
:Ç
¸|H‰ú·Çø·
:é‰ýÿÿH‹FH‰ïH‰D$跙þÿI‰ÅM…íŽãýÿÿH‹5D«H‰ïH‹VèèþÿH…À„rÿÿÿH‰D$IEÿé[ÿÿÿH‹5°H‰ïH‹V轝þÿH…Àt½H‰D$Iƒíë©èøšþÿ„óúAVAUATI‰ÔUH‰õSH‰ûHƒì0H‹xpL‹ndH‹%(H‰D$(1ÀHÇD$HÇD$H‰T$ M…ä…„Iƒý„ÆIƒý„¸IƒýH
5âH7âAÀHMÈE¶ÀIƒÀHƒìH‹ËoH”åH5íÅAUL
íâH‹81À蚞þÿH¬á¾Ž9ǰ¶.Ç¢¶Ž9H‰“¶XZH
ƒáº.H=>ÓèÉ@ÿÿ1ÀH‹\$(dH3%(…œHƒÄ0[]A\A]A^ÃfDH‹V(H‹M H‹EL‹£èHƒìHsHE1ÉH=[eA¸Iƒ$jÿ52ÿ5’§jÿ5ú«QL‰ájÿ5­PÿoµH‰ÅHƒÄPH…À„OIƒ,$t8H‰ïèHäÿÿH…À„Hƒm…MÿÿÿH‰ïH‰D$觘þÿH‹D$é6ÿÿÿDL‰ç萘þÿë¾fDIƒý„>lM…í„óIƒý…·H‹FL‰çH‰D$èH—þÿI‰ÆH‹5V«L‰çH‹V肛þÿH‰D$H…À„IƒîM…öwH‹D$H‹L$H‹T$ éßþÿÿIƒý…H‹F(L‰çH‰D$ H‹F H‰D$H‹FH‰D$èӖþÿI‰ÆM…ö~´HT$L‰éL‰çL™ãH52NèÝ*ÿÿ…Ày’H»ß¾|9Ç¿´.H‰¬´Çª´|9éþÿÿDIƒ,$¾´9H
€ßºuH‰
{´Ç}´uÇo´´9t}H=Ñè©>ÿÿ1ÀéÛýÿÿfºzH
=ß¾Â9H‰D$H=óÐH‰
,´Ç.´zÇ ´Â9èc>ÿÿH‹D$é:þÿÿf„H
:ßA¸éýÿÿfDL‰çèЖþÿ‹æ³‹5ܳH‹
ͳécÿÿÿ„H‹59§L‰çH‹VèݙþÿH…À„¹þÿÿH‰D$ Iƒîé¦þÿÿfDL‰çèh•þÿH‹5™ªL‰çI‰ÆH‹VIƒî螙þÿH‰D$H…À…ûýÿÿL‹méOüÿÿ€H‹F L‰çH‰D$H‹FH‰D$è•þÿI‰ÆéîýÿÿHƒìH‹lH
TÞH55ÂjL
5ßA¸H¿áH‹81Àè՚þÿHçÝY^H‰å²¾r9Çâ².ÇԲr9é6üÿÿèB–þÿH
óÝA¸éÊûÿÿóúAWAVAUATUH‰ýSHƒì(dH‹%(H‰D$1ÀH‹Fö€«„BL‹vIFHƒø‡uH!ãHc‚HÐ>ÿà€A¼f.„H‹EH‹5=§H‰ïH‹€H…À„ÒÿÐI‰ÇM…ÿ„”èߘþÿH‰ÅH…À„cL‰ç論þÿI‰ÄH…À„·H‹5h¥H‰ÂH‰ïè=™þÿ…ÀˆµIƒ,$„H‹ó±H‹
ܙH9H…B	L‹%ÙM…ä„â	Iƒ$I‹D$H‹5é£L‰çH‹€H…À„®	ÿÐI‰ÅM…í„p	Iƒ,$„}H‹5ΫL‰êH‰ï賘þÿ…Àˆ{Iƒm„`I‹GL‹-¢L‹ €M…ä„¥	èþÿH‹j‹H Q‰P ;8
H‰êL‰îL‰ÿAÿÔI‰Å蔖þÿ‹H Qÿ‰P ‹HÎ=ÈÁø@9ÊŒ!M…í„
Iƒ/„þHƒm„ãI‹EH‹5¨¬L‰ïH‹€H…À„µ	ÿÐI‰ÇM…ÿ„w	Iƒm„ÜI‹GH;i…ËI‹_H…Û„¾I‹oHƒHƒEIƒ/„H‹¨¢H‰ÞH‰ïè²ÿÿHƒ+I‰Ä„àM…䄺	Hƒm„„I‹D$H‹5 ¢L‰çH‹€H…À„Õ	ÿÐH‰ÅI‹$HƒèH…í„gI‰$H…À„¢H‹EH;oh…éL‹mM…í„ÜL‹eIƒEIƒ$Hƒm„“I‹D$H;ÇhL‰l$„D
H;i…×I‹T$‹B¨„w
H‹jE1ÿ¨ uM‹|$èò”þÿ‹X SH‹=h‰P ;¢
L‰ÿL‰îÿÕI‰Çèʔþÿ‹H Qÿ‰P ‹=ÈŽlƒè29ÂŒÑM…ÿ„ 
Iƒm„jIƒ,$„‚I‹GH‹XpH…Û„ÉHƒ{„¾L‰÷èv“þÿH‰ÅH…À„ÆH‹=ÛgH‰ÆH‰ú訖þÿHƒmI‰Ä„jM…䄝L‰æL‰ÿÿSIƒ,$„]I‹HJÿH…À„|I‰H…É„iH‹\$dH3%(…ÓHƒÄ([]A\A]A^A_ÃDD‹vL‰ðMfHƒèLIàIÁüIƒÄéØûÿÿ„D‹v‹FIÁæI	ÆëÌD‹v‹FIÁæI	ÆI÷ÞIƒþÿuµèԓþÿA¼IÇÆÿÿÿÿH…À„ŽûÿÿH
Àغ‹¾8Ç¿­‹H=¤ÊH‰
¥­Ç£­8èæ7ÿÿ1Àé/ÿÿÿ€D‹vA÷ÞMcöë@H
jØI‰$H‰
f­Çh­¥ÇZ­±H…À„Qf„H‹
9­‹?­H=$Ê‹5.­èq7ÿÿ1Àéºþÿÿf.„H‹PH‹õeH5æºH‹81ÀèԔþÿI‹Hã×HƒêÇ謥H‰լÇӬÃI‰u†L‰ÿ讏þÿéyÿÿÿf„L‰ç蘏þÿéÙúÿÿL‹%ŸH;ÊeL‰d$„×H; f…jI‹W‹B¨„ÛH‹jE1í¨ uM‹oè÷‘þÿ‹X SH‹Be‰P ;¿L‰æL‰ïÿÕI‰Äèϑþÿ‹H Qÿ‰P ‹=ÈŽ9ƒè29ÂŒvM…ä„åL‰ýéÕûÿÿDL‰çèàŽþÿé«þÿÿL‰çèЎþÿévúÿÿH;	e„sH;de…ÆH‹M‹Qö„¶E1íƒâ L‹auL‹mè9‘þÿ‹X SH‹„d‰P ;É1öL‰ïAÿÔI‰Çè‘þÿ‹H Qÿ‰P ‹HÎ=ÈÁø@9ÊŒ.I‰ìM…ÿ…Müÿÿè-‘þÿH…À„‹H&ÖÇ/«¥H‰«Ç«ÀHƒm…ÇýÿÿE1äE1íH‰ïèèþÿé
H‰÷èëþÿI‰ÆéôüÿÿL‰ïèȍþÿé“ùÿÿH‰ï踍þÿéúÿÿL‰ÿ訍þÿéõùÿÿèKþÿÆ@$éÑùÿÿfL‰ï舍þÿéúÿÿH‰ïèxþÿéoúÿÿHrÕÇ{ª¤H‰hªÇfªléýÿÿf„苒þÿI‰Çé&øÿÿL‰ÿè(þÿéìùÿÿL‰çèþÿéQúÿÿHÕE1íǪ¤H‰ªÇªzIƒ/„™Hƒm„æþÿÿM…ätIƒ,$t*M…í„‘üÿÿIƒm…†üÿÿL‰ï讌þÿéyüÿÿf„L‰ç蘌þÿëÌfDIƒ/HŽÔH‰Ž©Ç©¤Ç‚©v„®üÿÿé/üÿÿ€L‰çèPŒþÿéqúÿÿL‰ÿè@ŒþÿéZÿÿÿH‰ßè0ŒþÿéùÿÿH*ÔE1íÇ0©¤H‰©Ç©xéÿÿÿfDH‰ïèð‹þÿé`ùÿÿL‰ÿH‰D$èۋþÿH‹D$éúÿÿÁø@é¿üÿÿDHÂÓE1äÇȨ¤H‰µ¨Ç³¨‰é«þÿÿfDL‰îL‰çè*ÿÿI‰ÇIƒmuL‰ïès‹þÿM…ÿ……ùÿÿL‰åé>ýÿÿfH‹=©žHzH5{èæ%ÿÿI‰ÄM…ä…­öÿÿH<ÓE1íÇB¨¥H‰/¨Ç-¨„é%þÿÿL‰çH‰D$è‹þÿH‹D$éŒùÿÿf„HòÒÇû§¥H‰è§Ç槆éÞýÿÿf„èþÿI‰ÅéJöÿÿH‹=ùèÄ$ÿÿI‰ÄéYÿÿÿ@Áø@錸ÿÿDè3þÿÆ@$é|ûÿÿf.„L‰îH‰êL‰ÿè"þÿI‰ÅH…À…žöÿÿfDHRÒE1íE1äÇU§¤H‰B§Ç@§“é8ýÿÿH‰ïèŠþÿ鉸ÿÿ軌þÿÆ@$éÄûÿÿfHÒǧ¥H‰ø¦Çö¦Ÿéýÿÿf„èþÿI‰ÇéCöÿÿH=‰°è$Œþÿ…À„´õÿÿéWÿÿÿ€蛌þÿH…À…BÿÿÿH‹;_H5t°H‹8è<Šþÿé'ÿÿÿ€H=9°èԋþÿ…À„-úÿÿ@L‰ýHWÑÇ`¦¥H‰M¦ÇK¦®é,ûÿÿfDèӋþÿÆ@$é!÷ÿÿf.„è[ŽþÿH‰Åé#öÿÿL‰æL‰ÿèu'ÿÿI‰ÄéøùÿÿDL‹ €L‹-¦M…ä„Þè|‹þÿ‹X SH‹Ç^‰P ;Ù1ÒL‰îH‰ïAÿÔé;úÿÿ@Ht$ºL‰ÿèn ÿÿI‰Äé‘ùÿÿfD¨€„xÿÿÿL‹B1ÿ¨ uI‹Ht$¨…ùºAÿÐI‰ÄéXùÿÿD1Ò1öH‰ïI‰ìè ÿÿI‰Çé¾üÿÿHt$ºL‰çèþÿÿI‰Çé”üÿÿfDè‹þÿH…À…ªþÿÿH‹«]H5ä®H‹8謈þÿéþÿÿ€¨€„HüÿÿL‹B1ÿ¨ uI‹|$Ht$¨…jºAÿÐI‰Çé*üÿÿ@H=q®èŠþÿ…À„#ùÿÿékùÿÿ€H=Q®èì‰þÿ…À„Jõÿÿ@IƒmL‰å…>ùÿÿL‰ïèZ‡þÿé1ùÿÿDèKŠþÿH…ÀuÖH‹ï\H5(®H‹8èð‡þÿë¾fDH‹@`H…À„YH‹€€H…À„IH‰÷ÿÐI‰ÅH…À„8H‹@H;W]…Åf„ö€«„UM‹uIFHƒø‡ÁHžÔHc‚HÐ>ÿàE‹uIƒm…}õÿÿL‰ï虆þÿéµõÿÿ@IƒmA¼…OñÿÿL‰ïE1öèt†þÿéKõÿÿ€E‹uA÷ÞMcöIƒm…tõÿÿ밐E‹uA‹EIÁæI	ÆI÷ÞëÞ@E‹uA‹EIÁæI	ÆéxÿÿÿL‰ïH55ÐèU
ÿÿI‰ÅH…À„0õÿÿH‹@é ÿÿÿL‰ïè‰þÿI‰Æë•1ÒL‰îH‰ïI‰ì裊þÿI‰ÇéhúÿÿH=¤¬è?ˆþÿ…À„ýÿÿéž÷ÿÿ轈þÿH…À…ÛôÿÿH‹­[H5ÝÌH‹8è^†þÿéÀôÿÿH‹B[H5{¬H‹8èC†þÿéZ÷ÿÿH‹@`H…À„1H‹€€H…À„!L‰ïÿÐH‰ÇH…À„H‹±[H9G…‹H‹Gö€«t#L‹wIFHƒø‡ HÓHc‚HÐ>ÿàH‰|$è¥ ÿÿH‹|$I‰ÆHƒ/…•þÿÿèî„þÿé‹þÿÿD‹wA÷ÞMcöëàD‹w‹GIÁæI	ÆI÷ÞëÍD‹w‹GIÁæI	Æë½D‹wë·H5ÈÎèèÿÿH‰ÇH…À…]ÿÿÿIƒm…¸óÿÿL‰ï艄þÿé«óÿÿ@H‰|$膇þÿH‹|$I‰Æélÿÿÿèô„þÿ1ɺAÿÐI‰Äé]õÿÿ1ɺAÿÐI‰Çé¾øÿÿè;‡þÿH…ÀušH‹/ZH5_ËH‹8èà„þÿéÿÿÿff.„óúAWAVAUI‰ýATUSHƒì8H‹,ZL‹fdH‹%(H‰D$(1ÀH‰\$ H…Ò…RM…ä„Iƒü…GL‹vI‹mH‹ð HƒEH‹
4ˆH9H…jL‹%ˆM…ä„2Iƒ$L‰æH‰ïèJ„þÿA‰ǃøÿ„¾Hƒm„ƒIƒ,$„hE…ÿ„I‹}H‹5Œ˜H‹GH‹€H…À„xÿÐI‰ÄM…ä„òI‹D$H;ÎX…pM‹|$M…ÿ„bI‹l$IƒHƒEIƒ,$„9L‰òL‰þH‰ïèˡÿÿIƒ/I‰Æ„>H‹EHPÿM…ö„8H‰UH…Ò„ðIƒ.„ÖI‹EL‰ïÿH‰ÇH…À„9Hƒ(„çHƒH‰Øé M…äH¿ÊH
¯ÊHIÈL‰àHaÊHÁø?L
‡ËM…äLIÊL@HƒìH‹8XATHÎH5X®H‹81Àè‡þÿH ʾñÇ$ŸÇŸñH‰ŸXZH
÷ɺH=¼è=)ÿÿ1ÀH‹\$(dH3%(…HƒÄ8[]A\A]A^A_ÄI‰Þéíýÿÿ„H;áWL‰t$„®H;7X…I‹T$‹B¨„±H‹J1íH‰L$¨ uI‹l$è„þÿL‹=YW‹H Q‰P A;—L‰öH‰ïH‹D$ÿÐI‰Æèڃþÿ‹H Qÿ‰P A‹=ÈŽÓƒè29ÂŒÈM…ö„wL‰åé)þÿÿ€L‰çèè€þÿé‹ýÿÿH‰ïè؀þÿépýÿÿL‰÷èȀþÿéþÿÿH‰ï踀þÿéþÿÿL‰ç言þÿéºýÿÿ蛀þÿéþÿÿfDL‰ÿ舀þÿéµýÿÿH‰ÕM…ä„TIƒü…òýÿÿH‹FH‰×H‰D$ èIþÿH…ÀAL‹t$ é‹üÿÿfDÁø@é%ÿÿÿDH‹=ɛHª„H5«„è¶ÿÿI‰ÄM…ä……üÿÿHÈǝ¡H‰H‹EÇüœHPÿH‰UH…ÒucH‰ïèÏþÿH‹
؜‹ޜ‹5ԜéÎýÿÿ€HƒmH­ÇH‰­œÇ¯œ¡Ç¡œ„ÝIƒ,$uL‰çètþÿH‹
}œ‹ƒœ‹5yœésýÿÿ@H‹=ñšèlÿÿI‰Äé1ÿÿÿ@èëþÿÆ@$é*þÿÿfH‹-9›L‹%bH‹EH‹˜€H…Û„¹蹁þÿL‹=
U‹H Q‰P A;ñ1ÒH‰ïL‰æÿÓH‰Å莁þÿ‹X Sÿ‰P A‹HÎ=ÈÁø@9ÊŒrH…í„ËH‰ïè™ÿÿHƒm„FH
 Æ¾$º¢ÇŸ›¢H‰
Œ›ÇŠ›$é„üÿÿDL‰öL‰çèÝÿÿI‰ÆéVýÿÿH‰ï1ÒL‰æèƒþÿH‰ÅH…ÀuH
Bƾ º¢ÇA›¢H‰
.›Ç,› é&üÿÿHT$ L‰áH‰ïLßÉH50èÿÿ…À‰™ýÿÿHëžãÇH‰ܚÇښãéÈûÿÿDèƒþÿI‰Äé€úÿÿH=q¤è€þÿ…À„Uüÿÿ@I‹$L‰åHPÿH‡Åǐš£H‰}šÇ{šDé~ýÿÿfDH
ZžPº¤ÇYš¤H‰
FšÇDšPé>ûÿÿ€H‰×è|þÿI‰ÆH…À޼üÿÿH‹5ŽH‰ïH‹Vè9€þÿH…À„áþÿÿH‰D$ IFÿé‰üÿÿfHt$ºL‰çè®ÿÿI‰ÆéÇûÿÿfD¨€„PþÿÿL‹B1ÿ¨ uI‹|$Ht$¨…ߺAÿÐI‰Æéûÿÿ@èƒþÿH…À…êþÿÿH‹#RH5\£H‹8è$}þÿéÏþÿÿ€H‰ïèP|þÿé­ýÿÿèó~þÿÆ@$é€ýÿÿf.„H
2ľ6º£Ç1™£H‰
™Ç™6éúÿÿH=Ȣèc~þÿ…À„ûüÿÿé¦ýÿÿèá~þÿH…À…˜ýÿÿH‹QH5º¢H‹8è‚|þÿé}ýÿÿ1ɺAÿÐI‰Æé¬úÿÿè6|þÿH‰ïèž{þÿéüÿÿf„óúAWAVAUATI‰üUSHƒì(H‹5T‹dH‹%(H‰D$1ÀH‹GH‹€H…À„ ÿÐH‰ÅH…í„*H‹EH;ïP…AL‹uM…ö„4L‹}IƒIƒHƒm„
H‹NQI‹GL‰t$H‰\$H9Ø„H;˜Q…ÒI‹W‹B¨„[H‹jE1í¨ „èo}þÿH‹ÀP‹p V‰P ;§L‰ïL‰öÿÕI‰ÅèG}þÿ‹H Qÿ‰P ‹=ȏÑÁø@9ÂŒÎM…í„¢Iƒ.…L‰÷èXzþÿM…í…ý€HJÂL‰ýÇP—vH‰=—Ç;—â
Hƒm…yH‰ïè
zþÿél„H‰ïèøyþÿéæþÿÿH‹
1PH‰L$H9È„ÛH;„P…FH‹M‹Qö„6E1ÿƒâ L‹i„ÞèY|þÿ‹X SH‹¤O‰P ;Q1öL‰ÿAÿÕI‰Åè1|þÿ‹H Qÿ‰P ‹HÎ=ÈÁø@9ÊŒ^I‰ïM…í„’Iƒ/„HH‹=I’H‹5BH‹GH‹€H…À„ŽÿÐH‰ÅH…í„8H‹=)•L‰d$H‹GH;D$„ÍH;¦O…H‹W‹B¨„ñL‹zE1ö¨ uL‹wè}{þÿH‹ÎN‹H Q‰P ;ýL‰æL‰÷Aÿ×I‰ÇèT{þÿ‹H Qÿ‰P ‹=ÈŽžƒè29ÂŒ¡M…ÿ„âH‹EH;'N…¹L‹EM…À„¬L‹uIƒIƒHƒm„õL‰ÆL‰úL‰÷L‰D$è"—ÿÿL‹D$I‰ÄIƒ(„Iƒ/„M…ä„Iƒ.„£L‰æL‰ïè˜wþÿI‰ÆH…À„|Iƒm„ÁIƒ,$„¦H‹D$dH3%(…/HƒÄ(L‰ð[]A\A]A^A_ÃL‰|$H;D$„€H;IN…+H‹U‹B¨„äL‹rE1ä¨ „åè zþÿ‹X SH‹kM‰P ;ðL‰þL‰çAÿÖI‰Äè÷yþÿ‹p Vÿ‰P ‹HÎ=ÈŽ®9ÊŒ´M…ä„ÝIƒ/I‰î…úþÿÿL‰ÿèwþÿéíþÿÿL‰ÿèøvþÿé«ýÿÿÁø@9_þÿÿèyþÿÆ@$éQþÿÿ@L‹}éýÿÿ€M‹oéóûÿÿ€ƒè292üÿÿèPyþÿÆ@$é$üÿÿ€L‹eéÿÿÿ€Áø@9ʍLÿÿÿèyþÿÆ@$é>ÿÿÿ@L‰÷èXvþÿéPþÿÿH‰ïL‰D$èCvþÿL‹D$éôýÿÿf„L‰çè(vþÿéMþÿÿL‰ïèvþÿé2þÿÿL‰Çèvþÿéãýÿÿè«xþÿÆ@$é”üÿÿf¨€…¸L‰æè`ÿÿI‰ÇM…ÿ…ZýÿÿIƒmHѽH‰ђÇӒvÇŒç
„WHƒm„‡ûÿÿH‹
¥’‹«’‹5¡’H=گE1öèÚÿÿéŸýÿÿDIƒmHm½H‰m’Ço’vÇa’ù
„»Iƒ,$u L‰çè4uþÿë–fè{zþÿH‰ÅH…í…Ýùÿÿ€H
½¾Ô
ºvÇ’vH‰
’Ç’Ô
é^ÿÿÿ€Iƒm¾å
H
ؼºvH‰
ӑÇՑvÇǑå
… ÿÿÿL‰ïè¡tþÿéÿÿÿ@èãyþÿH‰ÅéjûÿÿL‹¨€L‹=¢‘M…í„Yèwþÿ‹X SH‹gJ‰P ;T1ÒL‰þH‰ïAÿÕI‰Åèñvþÿ‹p Vÿé»úÿÿfDHt$ºèÿÿI‰Çé<þÿÿf„L‰öL‰ÿè…ÿÿI‰ÅIƒ.… ùÿÿé“ùÿÿIƒmHí»H‰íÇïvÇáö
„ƒL‰õéþÿÿH=šèvþÿ…À„ïúÿÿéËýÿÿ€è“vþÿH…À…¶ýÿÿH‹3IH5lšH‹8è4tþÿé›ýÿÿ€L‰þH‰ïèÝÿÿI‰Äé8üÿÿDL‰ïèHsþÿéœýÿÿL‰ïè8sþÿépÿÿÿL‹JE1( uL‹GHt$¨…HºL‰ÇAÿÑI‰Çé$ýÿÿ1Ò1öH‰ïI‰ïèÑ
ÿÿI‰Å鑸ÿÿf„Ht$ºL‰ÿè®
ÿÿI‰ÅéÄþÿÿfDè»uþÿH…À„ËH´ºÇ½vH‰ªÇ¨â
ékøÿÿL‰ïè€rþÿé8ýÿÿ¨€„`þÿÿL‹J1ÿ¨ uI‹Ht$¨…žºAÿÑI‰ÅéCþÿÿDH=	™è¤tþÿ…À„›øÿÿéuÿÿÿ€Ht$ºH‰ïèî	ÿÿI‰ÄééúÿÿfDH=ɘèdtþÿ…À„E÷ÿÿ@Iƒ.L‰ý…)ÿÿÿL‰÷èÓqþÿé†÷ÿÿfDèÃtþÿH…ÀuÖH‹gGH5 ˜H‹8èhrþÿë¾fD¨€„0þÿÿL‹B1ÿ¨ uH‹}Ht$¨…غAÿÐI‰ÄéPúÿÿDH=1˜èÌsþÿ…À„üùÿÿ@E1äé+úÿÿ„è;tþÿI‰ÄH…ÀuãH‹ÜFH5˜H‹8èÝqþÿéûùÿÿL‰þ1ÒH‰ïI‰ïèÈuþÿI‰Åé¨öÿÿH=ɗèdsþÿ…À„˜üÿÿé5þÿÿH‹FH5ɗH‹8è‘qþÿéþÿÿ1ɺL‰ÇAÿÑI‰ÇéÚúÿÿ1ɺAÿÑI‰Åé£üÿÿ1ɺAÿÐI‰Äévùÿÿèqþÿff.„óúAWAVAUATUH‰õSHƒìXL‹5œFL‹fH‰|$dH‹%(H‰D$H1ÀL‰t$8HÇD$0L‰t$@H…Ò…·Iƒü„mIƒü„KIƒü„ÉM…äHX¸H
H¸HOÈAŸÀL
ù·H#¹E¶ÀLOÈODHƒìH‹ÒEH²»ATH5ò›H‹81Àè¨tþÿHº·¾µ&ǾŒ;ǰŒµ&H‰¡ŒXZH
‘·º;H=ªE1ÿèÔÿÿH‹D$HdH3%(…ÄHƒÄXL‰ø[]A\A]A^A_ÃfDL‰t$M‰ôL‹mIƒEH‹pŒIƒ$M9ô„‚H‹
ëuH9H…ñ
H‹-ÒuH…í„
HƒEH‹EH‹5Ù}H‰ïH‹€H…À„
ÿÐH‰ÃH‹EHƒèH…Û„¨H‰EH…À„H‹=ŒˆH‹5µ…H‹GH‹€H…À„ÑÿÐH‰ÅH…í„ÓèfrþÿI‰ÇH…À„
H‹53ƒL‰êH‰ÇèØrþÿ…ÀˆÈH‹5لL‰âL‰ÿè¾rþÿ…Àˆ¶	H‹EH‹5c‹L‹°€M…ö„CH‰t$èÑpþÿH‹t$‹H QH‹
D‰P ;ÔH‰L$ L‰úH‰ïAÿÖH‰D$èœpþÿL‹T$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒ_	M…Ò„¶Hƒm„ûIƒ/„ÑH‹CE1öE1ÿ¿H;CC„H;ÆC„
H;!D„ûL‰T$èpþÿL‹T$H…ÀH‰Å„@M…ÿtL‰xIcÆAƒÆHƒÀMcöL‰TÅH‹-‰HƒJ‰DõH‹CL‹°€M…ö„8è»oþÿ‹H QH‹
C‰P ;ÃH‰L$1ÒH‰îH‰ßAÿÖI‰Æè‹oþÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒ“M…ö„¢Hƒm„oHƒ+„ÕIƒ.„»H‹|$H‹5—~H‹GH‹€H…À„+
ÿÐI‰ÆM…ö„5
L‹=¾BM9|$„»L‰çèãlþÿH‰ÅH…À„_
H‹@H‹5œzL9ø…“H‹EHPHƒú‡H…À„¸‹U¿H)×HJHƒøÿHEùèümþÿI‰ÇM…ÿ„ Hƒm„¥¿èknþÿH‰ÃH…À„×IƒEL‰hL‰x èoþÿH‰ÅH…À„aH‹T$H‹5%|H‰Çèýoþÿ…Àˆ¥H‹H‹5÷‚H‰ïèßoþÿ…ÀˆïI‹FL‹¸€M…ÿ„Bèþmþÿ‹H QH‹
IA‰P ;•H‰L$H‰êH‰ÞL‰÷Aÿ×I‰ÇèÍmþÿ‹H QÿH‹L$‰P ‹HÎ=ÈŽ÷9ÊŒ§M…ÿ„mIƒ.„LHƒ+„2Hƒm„G€Iƒm„
Iƒ,$…>ûÿÿL‰çèªjþÿé1ûÿÿDH‹yqH9X…H‹`qH…Û„HƒH‹CH‹5XyH‰ßH‹€H…À„ÍÿÐH‰ÅH‹HƒèH…í„ÈH‰H…À„üH‹=„H‹56H‹GH‹€H…À„J
ÿÐH‰ÃH…Û„L
èçmþÿI‰ÂH…À„KH‹5´~L‰êH‰ÇH‰D$èTnþÿL‹T$…Àˆ÷H‹CL‹=ô†L‹ˆ€M…É„4L‰T$ L‰L$è]lþÿL‹L$L‹T$ ‹H QH‹
ž?‰P ;³L‰ÒH‰L$ L‰þH‰ßL‰T$AÿÑI‰ÇèlþÿL‹T$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒM…ÿ„×Hƒ+„-Iƒ*„H‹E1ÒE1ÒH;Ë>¿„hH;I?„sH;¤?„>L‰T$ ‰T$è€kþÿ‹T$L‹T$ H…ÀH‰Ã„ûM…ÒtL‰PHcƒÂHƒÀHcÒL‰|ÃH‹©„HƒH‰DÓH‹EL‹¸€M…ÿ„0è7kþÿ‹H QH‹
‚>‰P ;Y1ÒH‰L$ H‰ÞH‰ïAÿ×H‰D$èkþÿL‹\$‹H QÿH‹L$ ‰P ‹=ȍHÎŽ:9ÊŒªM…Û„+Hƒ+„wHƒm„Iƒ+„JIƒEIƒ.„+H‹-\vHƒEIƒm„üM‰ìI‰íéFûÿÿH‹F(H‰D$L‹e é~øÿÿfDL‰t$ëêL‰ïè¨gþÿéæüÿÿH‰ïè˜gþÿ騸ÿÿIƒ$H‹5ôuL‰åéYûÿÿ@I‰ÕIƒü„	IM…ä„`	Iƒü…E÷ÿÿH‹FH‰×H‰D$0è5fþÿH‰ÃH…ۏ¹H‹D$@L‹l$0L‹d$8H‰D$éä÷ÿÿIƒü…†H‹F(H‰×H‰D$@H‹F H‰D$8H‹FH‰D$0èãeþÿH‰ÃH…Û~²HT$0L‰áL‰ïL2H5"èíùþÿ…ÀyHˮ¾¢&Çσ;H‰¼ƒÇºƒ¢&é÷ÿÿDHš®E1ÒÇ ƒ•H‰ƒÇ‹ƒi'Hƒ+„ØH‹EHƒèH‰EH…Àt@M…ÒtIƒ*t]M…ÿtIƒ/tBH‹
Kƒ‹QƒE1ÿH=³ ‹5=ƒè€
ÿÿéSûÿÿH‰ïL‰T$èfþÿL‹T$ë¬@L‰ÿèøeþÿë´fDL‰×èèeþÿë™fDHâ­Ç나H‰؂ÇւÃ'Iƒ.A¿AºuL‰÷L‰T$èŸeþÿL‹T$M‰×Hƒ+uH‰ßL‰T$è„eþÿL‹T$H…í…
ÿÿÿéÿÿÿH‹S‹B‰Cፁù€…í÷ÿÿH‹
QH‹jL‰|$0E1ÛL‰T$8H‰L$@¹L)ñHtÌ0¨ uL‹[L‰T$¨… H‰úL‰ßÿÕL‹T$I‰ÆM…ö„Þ
M…ÿt
Iƒ/„ÉIƒ*…HøÿÿL‰×èßdþÿé;øÿÿf.„L‰ÿL‰T$èÃdþÿL‹T$é÷ÿÿf„H‰ïL‰T$è£dþÿL‹T$éîöÿÿf„H’¬E1Òǘ•H‰…Çƒj'éóýÿÿfDL‰T$ègþÿL‹T$Æ@$é‰öÿÿ„H‰ßè8dþÿé÷ùÿÿH‰ïè(dþÿéNøÿÿH‹=ñrHÚjH5Ûjè¦þþÿH‰ÅH…í…þôÿÿHü«Ç“H‰ò€Çð€X'é‘ýÿÿL‰÷èÈcþÿé8÷ÿÿH‰ßè¸cþÿé÷ÿÿH‹E‹H‰΃捁þ€…ªúÿÿH‹5‘H‹@L‰T$0E1ÀL‰|$8H‰t$@HcòºH)òHtÔ0öÁ uL‹EƒáL‰T$…¡H‰úL‰ÇÿÐL‹T$I‰ÃM…Û„YM…Òt
Iƒ*„±Iƒ/…ûÿÿL‰ÿL‰\$ècþÿL‹\$éôúÿÿÁø@éþ÷ÿÿDÁø@é»úÿÿDL‰úH‰ïègþÿI‰ÂH…À…õÿÿHҪE1ÒÇØ•H‰ÅÇÃk'é3üÿÿfDH‰ßL‰\$è“bþÿL‹\$érúÿÿf„L‰\$è&eþÿL‹\$Æ@$é>úÿÿ„H‹=1qètüþÿH‰ÃH…Û…Í÷ÿÿHJªÇSŒH‰@Ç>ã&éßûÿÿH"ªE1ÿE1ÒÇ%“H‰ÇZ'é’ûÿÿH‹=ÁpèüþÿH‰ÅéÙýÿÿ@è#gþÿH‰ÃéòòÿÿègþÿH‰Åé'óÿÿHº©ÇÃ~•H‰°~H‹Ç«~e'HƒèH‰E1ÿE1ÒH…À…;ûÿÿH‰ßL‰T$èpaþÿL‹T$éûÿÿfDHb©E1ÒÇh~•H‰U~ÇS~g'éÃúÿÿfDH‰ïè(aþÿé„ôÿÿèËcþÿÆ@$é_ôÿÿfL‰×èaþÿéà÷ÿÿH‰ßL‰T$èó`þÿL‹T$é¼÷ÿÿf„Hâ¨E1ÿÇè}H‰Õ}ÇÓ}ô&éCúÿÿfDL‰T$èVcþÿL‹T$Æ@$éX÷ÿÿ„H
ڨA¸L
µ©éšðÿÿ€H‹i|H‰úH‰ßL‰T$8L‰T$H‰D$@¸L)ðL‰|$0HtÄ0èøþÿL‹T$H…ÀI‰Æ…,ûÿÿH.¨1íÇ5}“H‰"}Ç }†'élúÿÿH‰ïL‰\$èó_þÿL‹\$éÝ÷ÿÿf„L‰ïM‰ìI‰íèÒ_þÿéBóÿÿDL‰÷èÀ_þÿéÈ÷ÿÿL‰ßè°_þÿé©÷ÿÿH‰ßè _þÿéÁôÿÿL‰÷è_þÿé§ôÿÿH‰ïè€_þÿé³ôÿÿHz§Çƒ|˜H‰p|Çn|Ä'é“ùÿÿèûaþÿÆ@$éKôÿÿfH‹|$è†dþÿI‰ÆéÈòÿÿfDH*§Ç3|˜H‰ |Ç|²'é¿øÿÿH‹=ÑmHÊeH5Ëeè†ùþÿH‰ÃéüÿÿfDIƒ.H֦H‰Ö{ÇØ{˜ÇÊ{´'…jøÿÿL‰÷è¤^þÿH…í„YøÿÿE1ÿE1Òé'øÿÿèÛcþÿH‰Åé+ôÿÿH
‚¦Ç‹{ŒH‰
x{Çv{å&éÊüÿÿf„H‹F H‰×H‰D$8H‹FH‰D$0è&]þÿH‰ÃH…ÛŽñöÿÿH‹5³nL‰ïH‹VèWaþÿH…À„#÷ÿÿH‰D$@Hƒëé÷ÿÿH‰×èè\þÿH‹5±rL‰ïH‰ÃH‹VHƒëèaþÿH‰D$0H…À…ŽöÿÿL‹eé¶íÿÿ€H¥H‰ë1íÇÆz˜H‰³zDZz¶'éÖ÷ÿÿ@H;Q3„GH‰ïè]þÿI‰ÇéŠñÿÿL‹{M…ÿ„ÞïÿÿH‹kIƒHƒEHƒ+„¨H‹EH‰ë¿A¾é°ïÿÿDH=ùƒH‰L$ H‰t$èŠ_þÿH‹t$H‹L$ …À„ïÿÿé3úÿÿèû_þÿH…À…"úÿÿH‹›2H5ԃH‹8èœ]þÿéúÿÿ€èbþÿH‰Ãé®òÿÿH¤E1ÿE1ÒÇÅyH‰²yH‹EǬyð&Hƒèé*öÿÿH‹xL‰T$0L‰T$H‰D$@¸H)ÐH‰úH‰ïL‰|$8HtÄ0è5ôþÿL‹T$H…ÀI‰Ã…	ùÿÿHF¤ÇOyŒH‰<yH‹EÇ6y'Hƒèé´õÿÿDHƒøþ„HHƒø„(I‹G`H‰ïÿI‰ÇéðÿÿIƒ.L‰ýHã£H‰ãxÇåx˜Ç×x¹'…ýÿÿéýÿÿ@H²£E1ÿǸxH‰¥xÇ£xò&éõÿÿfDH‹5ùqL‰ïH‹Vè­^þÿH…À„:ýÿÿH‰D$8Hƒëé#ýÿÿfD¿éUïÿÿfDHB£ÇKx˜H‰8xÇ6xÁ'é[õÿÿf„Hƒ+H£H‰xÇx“Çx–'…‘ôÿÿébùÿÿ€1ÒH‰îH‰ßè‹_þÿI‰ÆH…À…îÿÿ€Hº¢E1ÿE1Òǽw“H‰ªwǨw¡'éôôÿÿL‰ÒL‰þH‰ßL‰T$è5_þÿL‹T$H…ÀI‰Ç…-ñÿÿ@Hb¢E1ÿÇhwH‰UwÇSwõ&éÃóÿÿfDH=ù€H‰L$è\þÿH‹L$…À„íÿÿéUÿÿÿDè]þÿH…À…BÿÿÿH‹£/H5܀H‹8è¤Zþÿé'ÿÿÿ€H=¡€H‰L$(L‰T$ L‰L$è-\þÿL‹L$L‹T$ …ÀH‹L$(„ðÿÿéAÿÿÿL‹UM…Ò„‹ðÿÿH‹]IƒHƒHƒm„H‹CH‰ݿºé^ðÿÿfDL‰T$èV\þÿL‹T$H…À…èþÿÿH‹ñ.H5*€H‹8èòYþÿL‹T$éÈþÿÿL‰ÿL‰T$èYþÿL‹T$é ôÿÿH‰êH‰ÞL‰÷èÃ]þÿI‰ÇH…À…	îÿÿHù Çv˜H‰ïuÇíuÅ'éóÿÿHҠÇÛuŒH‰ÈuH‹EÇÂu 'Hƒèé@òÿÿH=jH‰L$è[þÿH‹L$…À„MíÿÿëŠè|[þÿH…Àu€H‹ .H5YH‹8è!Yþÿéeÿÿÿ1ÒH‰ÞH‰ïè]þÿI‰ÃH…À…"ðÿÿHE E1ÿE1ÒÇHuŒH‰5uÇ3u+'éòÿÿH=ß~H‰L$èuZþÿH‹L$…À„‰ïÿÿë³èñZþÿH…Àu©H‹•-H5Î~H‹8è–Xþÿ둋}‹EHÁçH	ÇHƒÇéÍëÿÿ‹E‹U¿HÁàH	ÐH)Çé³ëÿÿH‰ßL‰T$H‰ëA¾èŽWþÿH‹EL‹T$¿éöéÿÿL‰×L‰\$ènWþÿL‹\$é8ôÿÿH‰ïL‰T$H‰ÝèTWþÿH‹CL‹T$¿ºé4îÿÿòôòXEèúXþÿI‰Çé9ëÿÿH$Ÿ1íÇ+t“H‰tÇt'ébñÿÿH‰ú1ÉL‰ßÿÕL‹T$I‰ÆéÙñÿÿHäžÇísŒH‰ÚsH‹EÇÔs'HƒèéRðÿÿH‰ú1ÉL‰ÇÿÐL‹T$I‰ÃéXóÿÿè'Wþÿ€óúAWAVAUATI‰ôUSH‰ûHƒìH‹FH‹¨÷ …‘÷Âu÷„åL‹=-L9ø„õH;,„ÀH‹@hH…À„«
H‹@H…À„ž
1öL‰çÿÐH‰ÅH…í„£
L‹-ŒqI9í„“H‹„,H9E”ÂI9E”Ò„æ„À„Þ€} ‰$	A€} ‰!H‹UI;U„{HƒmuH‰ïèœUþÿH‹-µqL‹%®cH‹EH‹˜€H…Û„è%XþÿL‹=v+‹H Q‰P A;b1ÒH‰ïL‰æÿÓH‰ÅèúWþÿ‹X Sÿ‰P A‹HÎ=ÈÁø@9ÊŒ¾H…í„<H‰ïèìþÿHƒm„ZHº¾IÇrH‰øqÇöqIé-f„H‹5‰mL‰çèÑUþÿ…ÀˆA…ƒH‹-ÌpL‹%ÕbH‹EH‹˜€H…Û„éè<WþÿL‹=*‹H Q‰P A;[1ÒH‰ïL‰æÿÓH‰ÅèWþÿ‹X Sÿ‰P A‹HÎ=ÈÁø@9ÊŒmH…í„´H‰ïèëþÿHƒm„DH#œº¾æÇ"qH‰qÇ
qæéDL‹5!*L9õu„À…1þÿÿM9õu„Ò…$þÿÿL‰îºH‰ïèTþÿI‰ÅH…À„#H;ì)”ÀL;-º)”ÂÂ…ß	M9õ„Ö	L‰ïèWþÿIƒmA‰Æ„Ï	E…öˆß€Hƒm„îE…ö„ÿé³ýÿÿ€I‹D$H‹(HƒEé3ýÿÿfDH‹5!cL‰çè1Tþÿ…Àˆy„`þÿÿIƒ$E1íI‹D$H‹5ÇiL‰çH‹€H…À„,ÿÐH‰ÅH…í„æH‹EH‹5ã`L‹°€M…ö„ƒH‰4$èjUþÿL‹=»(H‹4$‹H QA;‰P Í
1ÒH‰ïAÿÖI‰Æè=Uþÿ‹H Qÿ‰P A‹HÎ=ÈÁø@9ÊŒ™M…ö„¸
Hƒm„uH‹(I9F„ÄL‰÷è¼Uþÿf.{‹>Iƒ.„dI‹D$H‹5àhòCXL‰çH‹€H…À„À
ÿÐI‰ÆM…ö„z
I‹FH‹5ï_H‹¨€H…í„×
H‰4$è~TþÿL‹=Ï'H‹4$‹H QA;‰P ¡1ÒL‰÷ÿÕH‰ÅèRTþÿ‹H Qÿ‰P A‹HÎ=ÈÁø@9ÊŒÎH…턍Iƒ.„«H‹Eö€«„H‹EHƒÀHƒø‡Ð
HMŸHc‚HÐ>ÿà€H‹EI‹MH9È@•ÆHƒøÿ•À@„Æt
Hƒùÿ…`ûÿÿ¶} A¶u ‰ø‰ñÀèÀéƒàƒá8È…?ûÿÿ@öÇ „èƒç@HM0LEHIDÈH‰Ï@öÆ „¼IM0IƒÅHƒæ@IDÍH‰Î¶ȃù„Vƒù„´‹D‹A9È…äúÿÿHƒú„%¶ÀE1öH¯Ðè–Rþÿ…ÀA•ÆéýÿÿH‹-qlL‹%‚^H‹EH‹˜€H…Û„“èñRþÿL‹=B&‹H Q‰P A;¿1ÒH‰ïL‰æÿÓH‰ÅèÆRþÿ‹X Sÿ‰P A‹HÎ=ÈŽ49ÊŒ„H…턘H‰ïèÓæþÿHƒm„XHڗº¾&ÇÙlH‰ÆlÇÄl&H
®—H=VŠE1öèööþÿHƒÄL‰ð[]A\A]A^A_Ã@òAFé9ýÿÿDI‹l$HƒEé^ùÿÿHƒm„óè0SþÿH‰ÅH…À„äI‹D$L9ø„.H;ÿ$„QH‹@hH…À„lH‹@H…À„_1öL‰çÿÐI‰ÅM…í„ÔH‹5µgL‰êH‰ïèZSþÿ…ÀˆJIƒm„çè²RþÿI‰ÅH…À„Æ	I‹D$L9ø„ÈH;$„ƒH‹@hH…À„H‹@H…À„	¾L‰çÿÐI‰ÆM…ö„K
H‹5dL‰òL‰ïèÙRþÿ…Àˆ!	Iƒ.„·I‹D$L9ø„¹H;$„ÜH‹@hH…À„çH‹@H…À„Ú¾L‰çÿÐI‰ÆM…ö„dH‹5`L‰òL‰ïèjRþÿ…Àˆ²
Iƒ.„ØH‹5Ù]L‰êH‰ïèFRþÿ…ÀˆVIƒm„SL‰çè+QþÿHƒøÿ„ÉHƒøWI‰ìE1íé‘úÿÿ@HƒmA¾H•H‰jÇ‘jǃj_„UIƒmtFM…ötIƒ.t+H‹
\j‹bjE1öH=ô‡‹5Njè‘ôþÿé–ýÿÿ@L‰÷è MþÿëËfDL‰ïèMþÿë°fDI‹D$L‹(IƒEéúýÿÿfDL‰ïèèLþÿéþÿÿH‰ïèØLþÿé~úÿÿè{OþÿÆ@$éYúÿÿfL‰÷ò$è³Lþÿò$é…úÿÿf„H‰ïèhKþÿ…À‰ÌöÿÿH’”E1íE1äÇ•iH‰‚iÇ€i:HƒmuH‰ïèYLþÿH‹
bi‹hiH=ý†‹5WièšóþÿM…ä„ÜE1öIƒ,$t'M…턈üÿÿIƒm…}üÿÿL‰ïèLþÿépüÿÿfDL‰çèøKþÿëÏfDI‹D$L‹pIƒécýÿÿfDM‹l$IƒEéÍüÿÿf„L‰÷è¸KþÿéHúÿÿè[NþÿÆ@$é$úÿÿfL‰÷è˜Kþÿé<ýÿÿI‹D$L‹pIƒérýÿÿfD1ÿè1MþÿI‰ÅH…Àuif„Hb“º¾8ÇahH‰NhÇLh8éƒûÿÿ€M‹t$ IƒéŸüÿÿf.„L‰÷èKþÿéýÿÿH‰ÆL‰çèÕKþÿIƒmH‰Å…ÛôÿÿL‰ïèßJþÿéÎôÿÿf.„E1öDHƒm„íH‹{D‰sPL‰âH‹5«ZH‹GH‹€˜H…À„ßÿЅÀˆÍL‹5¾ IƒéOþÿÿDD‹uA÷ސAƒþÿu¢èeMþÿA¾ÿÿÿÿH…Àt’H\’ÇegH‰RgÇPgÌéËýÿÿ‹E‹UHÁàH	ÐHcÐA‰ÆH9Ðt¨H‹9 H5rH‹8èÂJþÿë–D‹uëŠf.„‹E‹UHÁàH	ÐH÷ØHcÐA‰ÆH9Єaÿÿÿë·€Áø@éÁùÿÿDIƒmD¶ð…AöÿÿL‰ïè¡Iþÿé$öÿÿ@L‰ïè`Hþÿ…À‰ÏóÿÿéóüÿÿH‰ïèxIþÿé›ùÿÿèLþÿÆ@$énùÿÿH‰ï1ÒL‰æèNþÿH‰ÅH…À…,ôÿÿHK‘º¾EÇJfH‰7fÇ5fEélùÿÿH=áoè|Kþÿ…À„‘ôÿÿH‘º¾âÇfH‰òeÇðeâé'ùÿÿH‰ïèÈHþÿéþÿÿHº¾×ÇÁeH‰®eǬe×H
–H=>ƒE1öèÞïþÿéKüÿÿf„L‰ïèhHþÿé úÿÿM‹t$(IƒéFúÿÿfI‹D$L9ø„H;„=H‹@hH…À„pH‹@H…À„c¾L‰çÿÐI‰ÅM…í„ÔH‹5†^L‰êH‰ïè£Fþÿ…ÀˆnIƒm„¸I‹D$L9ø„ºH;›„H‹@hH…À„¢H‹@H…À„•¾L‰çÿÐI‰ÅM…í„HH‹5v^L‰êH‰ïè3Fþÿ…ÀˆœIƒm„kHƒEI‰íI‰ìéUôÿÿHbº¾[ÇadH‰NdÇLd[éƒ÷ÿÿ€H*E1íE1äÇ-dH‰dÇd]é“úÿÿHúŽº¾·ÇùcH‰æcÇäc·é3þÿÿ€èLþÿH‰ÅéÌóÿÿ1ÿèiHþÿI‰ÆH…À„uÿÿÿH‰ÆL‰çèrGþÿIƒ.I‰Å…€÷ÿÿL‰÷è}Fþÿés÷ÿÿH‰ïè€IþÿHcÐA‰ÆH9ЄñûÿÿHƒøÿ…?üÿÿèRIþÿH…À„1üÿÿéÚûÿÿ@1ÒH‰ïèöJþÿI‰ÆH…À…Êóÿÿf.„H"ŽÇ+cH‰cÇc¹é‘ùÿÿf„…¼óÿÿò$èàHþÿò$H…À„¤óÿÿIƒ.HЍH‰ÐbÇÒbÇÄb¼uL‰÷è¢EþÿH‹
«b‹±bE1öH=C€‹5bèàìþÿéMùÿÿHzº
¾ÎÇyb
H‰fbÇdbÎé›õÿÿ€HBÇKbH‰8bÇ6bmHƒm…®÷ÿÿH‰ïèEþÿéž÷ÿÿHE1äÇbH‰õaÇóaiénøÿÿfDH=™kH‰4$è0GþÿH‹4$…À„òÿÿéþÿÿ€è£GþÿH…À…zþÿÿH‹CH5|kH‹8èDEþÿé_þÿÿ€HzŒº¾ÇÇyaH‰faÇdaÇé³ûÿÿ€è‹IþÿI‰Æé8òÿÿH2ŒE1öÇ8aH‰%aÇ#akéèþÿÿfD1ÒL‰÷è¶HþÿH‰ÅH…À…uòÿÿf.„Iƒ.HދH‰Þ`Çà`ÇÒ`ÉuL‰÷è°CþÿH‹
¹`‹¿`H=T~‹5®`èñêþÿé[÷ÿÿ@¿è>EþÿH…À„EÿÿÿH‰ÆL‰çH‰$èFDþÿL‹$I‰ÆIƒ(…ÑôÿÿL‰ÇèMCþÿéÄôÿÿ„HB‹ÇK`H‰8`Ç6`qéûýÿÿf„H=ÙiH‰4$èpEþÿH‹4$…À„Cñÿÿéÿÿÿ€èãEþÿH…À…úþÿÿH‹ƒH5¼iH‹8è„Cþÿéßþÿÿ€è£EþÿéøÿÿfDHªŠE1öǰ_H‰_Ç›_oé`ýÿÿfDHzŠE1öÇ€_H‰m_Çk_sé0ýÿÿfD¿èþCþÿH…Àt‘H‰ÆL‰çH‰$è
CþÿL‹$I‰ÆIƒ(…ôÿÿL‰ÇèBþÿé÷óÿÿ@I‹uHéMñÿÿ€H‹}Hé!ñÿÿ€I‰ìº¾E1íHډÇã^H‰Ð^ÇÎ^éùÿÿH‰ïè¨Aþÿé™ìÿÿH¢‰º
¾ÕÇ¡^
H‰Ž^ÇŒ^ÕéÃñÿÿ€èDþÿÆ@$é4ìÿÿf.„¶D¶é¬ðÿÿ@I‹D$L‹hIƒEé(ùÿÿDL‰ïè Aþÿé;ùÿÿI‹D$L‹h IƒEépùÿÿL‰ïèý@þÿéˆùÿÿM‹l$0IƒEéäøÿÿ·D·éEðÿÿH‰ïèÕ@þÿé¯ìÿÿè{CþÿÆ@$é…ìÿÿM‹l$8IƒEéùÿÿH‰ï1ÒL‰æèfEþÿH‰ÅH…À…¯ðÿÿHœˆº¾"Ç›]H‰ˆ]dž]"é½ðÿÿH=2gèÍBþÿ…À„-ðÿÿë¹èNCþÿH…Àu¯H‹òH5+gH‹8èó@þÿë—I‰ìº¾ŠE1íH#ˆÇ,]H‰]Ç]Šéf÷ÿÿH=Ãfè^Bþÿ…À„Šêÿÿé˜öÿÿèÜBþÿH…À…ŠöÿÿH‹|H5µfH‹8è}@þÿéoöÿÿ¿ènAþÿI‰ÆH…À„qÿÿÿH‰ÆL‰çèw@þÿIƒ.I‰Å…|÷ÿÿL‰÷è‚?þÿéo÷ÿÿH‡I‰ìL‰íÇ‚\H‰o\E1íÇj\ŒéåòÿÿI‰ìº¾–E1íH?‡ÇH\H‰5\Ç3\–é‚öÿÿ¿èÌ@þÿI‰ÆH…Àt·H‰ÆL‰çèÙ?þÿIƒ.I‰Å…N÷ÿÿL‰÷èä>þÿéA÷ÿÿHá†I‰ìL‰íÇä[H‰Ñ[E1íÇÌ[˜éGòÿÿ€H‰ï1ÒL‰æè[CþÿH‰ÅH…À…[êÿÿé†õÿÿf.„è{AþÿH…À…nõÿÿH‹H5TeH‹8è?þÿéSõÿÿH‹@`H…À„rH‹€€H…À„bH‰ïÿÐI‰ÇH…À„QH‹@L‹5†L9ð…åDö€«„TI‹GHƒÀHƒø‡åH
ŒHc‚HÐ>ÿàE‹w@Iƒ/…^óÿÿL‰ÿèÆ=þÿéQóÿÿIƒ/A¾…éòÿÿL‰ÿè©=þÿéÜòÿÿE‹wA÷ÞëÃA‹GA‹WHÁàH	ÐH÷ØHcÐA‰ÆH9Ðt¦H‹ŸH5heH‹8è(>þÿIƒ/…ôòÿÿL‰ÿèV=þÿéçòÿÿA‹GA‹WHÁàH	ÐHcÐA‰ÆH9Є[ÿÿÿ볐L‰ÿH5A‡èaÁþÿI‰ÇH…À„«òÿÿH‹@éüþÿÿL‰ÿè@þÿHcÐA‰ÆH9ЄÿÿÿHƒÀ…mÿÿÿèæ?þÿH…À„_ÿÿÿépÿÿÿèÓ?þÿH…À…`òÿÿH‹ÃH5óƒH‹8èt=þÿéEòÿÿH‹@`H…À„
H‹€€H…À„úL‰ÿÿÐI‰ÀH…À„éL9p…¿I‹@ö€«„I‹@HƒÀHƒø‡¼HŠHc‚HÐ>ÿàE‹pIƒ(…]þÿÿL‰Çè-<þÿéPþÿÿE1öëäE‹pA÷ÞëÛA‹@A‹PHÁàH	ÐH÷ØHcÐA‰ÆH9Ðt¾H‹H5çcL‰$AƒÎÿH‹8èŸ<þÿL‹$ëšA‹@A‹PHÁàH	ÐHcÐA‰ÆH9Ðt€ëÀDH5̅H‰Çèé¿þÿI‰ÀH…À…&ÿÿÿé0þÿÿL‰ÇL‰$èœ>þÿL‹$HcÐA‰ÆH9Є:ÿÿÿHƒÀ…rÿÿÿèj>þÿL‹$H…À„`ÿÿÿAƒÎÿéÿÿÿH‹@`H…ÀtzH‹€€H…ÀtnL‰ÇL‰$ÿÐL‹$H…ÀH‰ÇtYL9pu6L‰D$H‰<$èæ¿þÿH‹<$L‹D$A‰ÆHƒ/…ÁþÿÿL‰$è÷:þÿL‹$é¯þÿÿH5…è"¿þÿL‹$H…ÀH‰Çu²étÿÿÿL‰$èÈ=þÿL‹$H…À…^ÿÿÿH‹´H5äAƒÎÿH‹8èa;þÿL‹$éYþÿÿè“=þÿH…À…"ýÿÿH‹ƒH5³H‹8è4;þÿéýÿÿH‰ïèg:þÿéçÿÿH‰ïèZ:þÿéëÿÿE1öé&îÿÿff.„fóúAWAVAUATUSH‰ûHƒì8L‹-\L‹fdH‹%(H‰D$(1ÀL‰l$ H…Ò…²M…ä„iIƒü…H‹nL9í„RH‹5SRH‹Fö€«„’	H‹EH‰ïH‹€H…À„³
ÿÐI‰ÆM…ö„%Iƒ.„ûH‹EHPH‰UH‹{HƒÂH‰UHƒ/„éH‹EH‰kH‰ïH‹5çQH‹€H…À„oÿÐI‰ÄM…ä„	H5B…L‰çèº;þÿ…À„"H5+…L‰çè#>þÿI‰ÅH…À„óAoEH‰ßC óAoMK0I‹E H‰C@HC H‰CHH‹CÿH‰ÇH…À„Hƒ(„dH‹EH‹5éMH‰ïH‹€H…À„6ÿÐI‰ÅM…í„8H‹»èHƒ/„7L‰«èA½Hƒm„÷Iƒ,$…µL‰çèl8þÿ騀M…äH§€H
—€HIÈL‰àHI€HÁø?L
oM…äLIÊL@HƒìH‹ ATH„H5@dH‹81Àèö<þÿH€¾„ÇUaÇþT„H‰ïTXZH
ߺaH=ârè%ßþÿA½ÿÿÿÿH‹D$(dH3%(…ßHƒÄ8D‰è[]A\A]A^A_Ãf„H‹ÉTH‹
"AH9H…L‹%	AM…ä„xIƒ$I‹D$H;
„yH;’
„Ä	H;í
…oI‹L$‹Qö„^E1íƒâ H‹iuM‹l$èÀ9þÿL‹=
‹H Q‰P A;'
1öL‰ïÿÕH‰Åè˜9þÿ‹H Qÿ‰P A‹HÎ=ÈÁø@9ÊŒÄH…í„«	Iƒ,$„ H‹Uéýÿÿ€L‰÷è˜6þÿéøüÿÿè‹6þÿé
ýÿÿfDèË8þÿH‹´SH‹
ý?H9H…³	L‹%ä?M…ä„#
Iƒ$I‹D$H;ú„$
H;}„H;Ø…ÂI‹L$‹Qö„±H‹AE1íƒâ H‰D$„$è§8þÿL‹=ø‹H Q‰P A;OH‹D$1öL‰ïÿÐI‰Åèz8þÿ‹H Qÿ‰P A‹HÎ=ÈÁø@9ÊŒM…í„å
Iƒ,$„rI‹EH‹5ÏJL‰ïH‹€H…À„¬
ÿÐI‰ÁM…É„f
I‹AH;…eM‹yM…ÿ„XM‹aIƒIƒ$Iƒ)„ÁH‰êL‰þL‰çèTÿÿIƒ/H‰Å„†H…ít"Iƒ,$„FHƒm„+I‹UL‰íé`ûÿÿHñ|ÇúQfH‰çQÇåQ

Iƒ,$„J	H‹
ËQ‹ÑQL‰íH=Ão‹5½QèÜþÿIƒmA½ÿÿÿÿ…ÐüÿÿE1ä@H‰ïè€4þÿM…ä…øûÿÿé³üÿÿfèk4þÿé’ûÿÿfDè[4þÿé¿ûÿÿfDH‰ÕM…ä„”Iƒü…ÚûÿÿH‹FH‰×H‰D$ è3þÿH…À¹H‹l$ é+úÿÿfDL‰çè4þÿéSýÿÿè«6þÿÆ@$é.ýÿÿfH;1
H‰l$„u	H;‡
…MI‹Q‹B¨„ˆ	L‹b¨ uM‹qL‰L$è\6þÿL‹=­	L‹L$‹H QA;‰P ô	L‰L$H‰îL‰÷AÿÔH‰Åè(6þÿL‹L$‹H Qÿ‰P A‹=ÈŽ|ƒè29ÂŒH…í„ñ	M‰Ìé*þÿÿHB{¾:
ºkÇAPkH‰.PÇ,P:
H
{H=nA½ÿÿÿÿè[ÚþÿHƒm…1ûÿÿé\þÿÿè38þÿI‰Äé‰ùÿÿM‹l$éÒüÿÿfDH‹¨€L‹-âOH…í„ÿè\5þÿL‹=­‹H Q‰P A;	1ÒL‰îL‰çÿÕé”ûÿÿH‰îL‰ÏL‰L$èôÐþÿL‹L$H‰ÅéÿÿÿHT$ L‰áH‰ïLL~H5êèiÅþÿ…À‰!þÿÿHCz¾vÇGOaH‰4OÇ2Ové8úÿÿDL‹-)NL‹5J@I‹EH‹˜€H…Û„òè™4þÿL‹=ê‹H Q‰P A;Á1ÒL‰ïL‰öÿÓI‰Åèn4þÿ‹X Sÿ‰P A‹HÎ=ÈÁø@9ÊŒjM…턹L‰ïèyÈþÿIƒm„>H€y¾]
ºnÇNnH‰lNÇjN]
H
TyH=\lA½ÿÿÿÿè™ØþÿHƒm…¯øÿÿé¡üÿÿf„L‰çè1þÿéûÿÿè4þÿH…À„ë÷ÿÿHy¾o
ºpÇNpH‰ðMÇîMo
ë‚@HÒx¾‚
ºrÇÑMrH‰¾MǼM‚
éMÿÿÿ€èC3þÿÆ@$éäúÿÿf.„èË5þÿI‰ÅéÂ÷ÿÿHrx¾
ºsÇqMsH‰^MÇ\M
éíþÿÿ€H‹1H5kH‹8èâ0þÿºd¾ÖHxH‰MÇMdÇMÖH
øwH=kA½ÿÿÿÿè=×þÿéøÿÿ„H‰ïèÈ/þÿéÈúÿÿL‰çè¸/þÿé­úÿÿH‰×è˜.þÿI‰ÆH…ÀŽ|ûÿÿH‹5•@H‰ïH‹VèÉ2þÿH…À„ýÿÿH‰D$ IFÿéIûÿÿfL‰Ïèh/þÿé2úÿÿH‹=ùJHê8H5ë8èæÉþÿI‰ÄM…ä…×÷ÿÿH<wºc¾±Ç;LcH‰(LÇ&L±éÿÿÿf„èK4þÿI‰ÆéEõÿÿH‹=‰JèÉþÿI‰Ä뜀M‹t$M…ö„y÷ÿÿM‹l$IƒIƒEIƒ,$„;I‹EH;îL‰t$„OH;D…íI‹U‹B¨„JH‹jE1ä¨ uM‹eè1þÿL‹=l‹H Q‰P A;pL‰öL‰çÿÕH‰Åèò0þÿ‹H Qÿ‰P A‹=ÈŽæƒè29ÂŒqH…í„Iƒ.M‰ì…O÷ÿÿf.„L‰÷èø-þÿM‰ìH…í…1÷ÿÿ@HêuÇóJcH‰àJÇÞJ¿Iƒ,$„;H‹
ÄJ‹ÊJH=¿h‹5¹JèüÔþÿéÒõÿÿ€L‰ÿèˆ-þÿémøÿÿ1Ò1öL‰çM‰åèQÅþÿH‰Åéqÿÿÿf„L‹¨€H‹5zJM…í„ÅH‰t$èï/þÿL‹=@H‹t$‹H QA;‰P ²1ÒL‰çAÿÕéB÷ÿÿ@è0þÿH…À…ÿÿÿH‹«H5äSH‹8è¬-þÿéÿþÿÿ€Áø@é|ùÿÿDH=™Sè4/þÿ…À„ÅõÿÿéÏþÿÿ€H‹=IHH*6H5+6è6ÇþÿI‰ÄM…ä…<öÿÿHŒtºe¾áÇ‹IeH‰xIÇvIáécüÿÿf„L‰L$èö.þÿL‹L$Æ@$éçøÿÿ„H‹=ÉGèDÆþÿI‰Ä대M‹D$M…À„ÎõÿÿM‹|$IƒIƒIƒ,$„ÌL‰ÆL‰ÿL‰D$è‚TÿÿL‹D$I‰ÅIƒ(tDM‰üM…í…+öÿÿ„HÂsÇËHeH‰¸HǶHïéÓýÿÿf„L‰Çèˆ+þÿë²fDE1íDL‰çèp+þÿH‹
yH‹HH=tf‹5nHè±ÒþÿM…턃óÿÿL‰íé öÿÿL‰ïè8+þÿéµùÿÿèÛ-þÿÆ@$éˆùÿÿf1Ò1öL‰çM‰çèñÂþÿI‰Åé5ÿÿÿf„HsL‰í¾üºfH‰õGÇ÷GfÇéGüé¸÷ÿÿ@è0þÿI‰ÁéLõÿÿè³-þÿH…À…êþÿÿH‹SH5ŒQH‹8èT+þÿéÏþÿÿH=XQèó,þÿ…À„ôÿÿé¶þÿÿL‰çèn*þÿé¸ûÿÿL‰ÏHt$ºL‰L$è2ÂþÿL‹L$H‰ÅéýöÿÿÁø@éüÿÿ¨€„®÷ÿÿL‹R¨ uM‹qL‰L$Ht$¨…MºL‰÷AÿÒL‹L$H‰Åé´öÿÿL‰ï1ÒL‰öè¯.þÿI‰ÅH…À…RøÿÿHåq¾Y
ºnÇäFnH‰ÑFÇÏFY
é`øÿÿL‰î1ÒL‰çM‰åèb.þÿH‰Åé¢ûÿÿH=cPèþ+þÿL‹L$…À„óõÿÿHƒqM‰ÌljFfH‰vFÇtF

éŠôÿÿL‰L$èM,þÿL‹L$H…ÀuÂH‹ìþH5%PH‹8èí)þÿL‹L$ë¥L‰çL‰D$è)þÿL‹D$éýÿÿH=ØOès+þÿ…À„+÷ÿÿéÿÿÿH=¿OèZ+þÿ…À„OöÿÿéõúÿÿDèÓ+þÿH…À…çþÿÿH‹sþH5¬OH‹8èt)þÿéÌþÿÿèZ+þÿÆ@$éúÿÿL‰öL‰ïèÇþÿH‰ÅIƒ.…‘úÿÿé„úÿÿ1ÒL‰çM‰çè7-þÿI‰Åé›üÿÿH=8OH‰t$èÎ*þÿH‹t$…À„0ûÿÿéŒüÿÿHt$ºL‰ïèÀþÿH‰Å뢨€tL‹B1ÿ¨ uI‹}Ht$¨…ºAÿÐH‰Åésÿÿÿè+þÿH…ÀtOIƒ.M‰ì…úÿÿL‰÷èç'þÿéúùÿÿH=«NèF*þÿ…À„|ùÿÿëÐèW(þÿ1ɺL‰÷AÿÒL‹L$H‰ÅéeôÿÿH‹VýH5NH‹8èW(þÿë™1ɺAÿÐH‰ÅéðþÿÿóúAWI‰ÿAVAUATUH‰õSHƒìxH‹¹5L‹fdH‹%(H‰D$h1ÀH‹~ýHÇD$@H‰\$XH‰D$HH‰D$PH…Ò…
Iƒü„q
]
Iƒü„£
Iƒü… H‹2ýH‰D$L‹m L‹uIƒIƒEL;-ý„‡
H‹=°CH‰\$8H‹GH;ý„¢H;cý…H‹W‹B¨„îH‹jE1ä¨ „÷	è:)þÿ‹H QH‹
…ü‰P ;šH‰L$H‰ÞL‰çÿÕH‰Åè
)þÿ‹H QÿH‹L$‰P ‹=ȏº	Áø@9ÂŒ·	H…í„ÃH‹EH‹50:H‰ïH‹€H…À„mÿÐI‰ÄM…ä„ÿH‹8CH‹
+H9H…WL‹ø*M…Û„WIƒL‰ßL‰æL‰\$èÓ&þÿL‹\$…ÀˆîIƒ+„Ì
…À„lH‹EH‹5y;H‰ïH‹€H…À„®ÿÐI‰ÂM…Ò„°L;±û”ÀL;û”ÂÂu
L;‘û…3
¶ÀIƒ*„~
…À…>H‹wBH‹
@*H9H…L‹'*M…Ò„ÖIƒI‹BL‰T$L‰×H‹5ç3H‹€H…À„oÿÐL‹T$I‰ÃI‹HƒèM…Û„mI‰H…À„1
I‹CH‹5¶2L‹€€M…À„~L‰D$ H‰t$L‰\$èJ'þÿL‹\$H‹t$‹H L‹D$ QH‹
†ú‰P ;£1ÒH‰L$ L‰ßL‰\$AÿÐH‰D$è'þÿL‹D$L‹\$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒ%M…À„”Iƒ+„âIƒ(uL‰Çè$þÿ@H‹5):L9æ„(H‹
úI9L$”ÀH9N”„À„R	„Ò„J	A€|$ ‰®€~ ‰ÔI‹T$H;V…2
I‹D$H‹~H9øA•ÀHƒøÿ•ÀA„Àt
Hƒÿÿ…
E¶L$ D¶F D‰ÈD‰ÇÀè@Àïƒàƒç@8ø…å	AöÁ „ÎI|$0MT$HAƒá@IDúAöÀ „¢LN0HƒÆHAƒà@IEñD¶ÀAƒø„ÁAƒø„žD‹D‹E9Á…ˆ	Hƒút-¶ÀH¯Ðè	%þÿH‹
zù…À”À¶Àf.„…À„U	M‹—èE1ÀL‰÷L‰îHƒìMO ¹IƒARH‹T$L‰T$ ÿÕ>_AXH…ÀL‹T$I‰Ç„Iƒ*„gH‹D$H;£ø…eH‹ž?HƒH‹
S'H9H…L‹:'M…Ò„ÂIƒI‹BL‰T$L‰×H‹5Ú:H‹€H…À„‰ÿÐL‹T$I‰ÀM…À„OIƒ*„uL‰ƺH‰ßL‰D$è@"þÿL‹D$H…ÀI‰Â„ãIƒ(„•L;þ÷”ÂL;Ì÷”ÀÐu
L;Þ÷… ¶ÒIƒ*„£…Ò…sH‹Ä>H‹5m&H9p…ôL‹T&M…Ò„¬IƒI‹BL‰T$L‰×H‹5Œ7H‹€H…À„ÀÿÐL‹T$I‰ÀM…À„†Iƒ*„oL‰ƺH‰ßL‰D$èj!þÿL‹D$H…ÀI‰Â„Iƒ(„L;(÷”ÂL;öö”ÀÐ…CL;÷„6L‰×L‰T$èI$þÿL‹T$…	ˆòIƒ*„Ð…Ò…€H‹Ñ=H‹=j%H9x…ÚL‹Q%M…Ò„~ IƒI‹BL‰T$L‰×H‹5!5H‹€H…À„E ÿÐL‹T$I‰ÀM…À„ Iƒ*„©L‰ƺH‰ßL‰D$èw þÿL‹D$H…ÀI‰Â„( Iƒ(„5L;5ö”ÂL;ö”ÀÐ…(L;ö„L‰×L‰T$èV#þÿL‹T$…	ˆ Iƒ*„©Hƒ+„•…Ò„vH‹Ô<H‹
]$H9H…=L‹D$M…Ò„ÓIƒI‹BL‰T$L‰×H‹5|8H‹€H…À„çÿÐL‹T$I‰ÀI‹HƒèM…À„¦I‰H…À„vM…ÿ„&I‹@H;Êô„hH;MõL‰|$8„æH;£õ…ŠI‹P‹B¨„ÚH‹rE1ÉH‰t$¨ uM‹HL‰L$L‰D$èk!þÿL‹D$L‹L$‹H QH‹
¬ô‰P ;éH‰L$L‰þL‰ÏH‹D$L‰D$ÿÐH‰D$è(!þÿH‹L$L‹\$‹p L‹D$Vÿ‰P ‹=ÈŽ+ƒè29ÂŒ¨M…Û„PM‰ÂM…Û„¶Iƒ*„I‹CL‰\$L‰ßH‹5æ.H‹€H…À„@ÿÐL‹\$I‰ÀI‹HƒèM…À„üI‰H…À„H‹5;L‰ǺL‰D$è'þÿL‹D$H…ÀI‰Ã„ˆIƒ(„ìL;åó”ÀL;³ó”ÂÂ…L;Áó„óL‰ßL‰\$è!þÿL‹\$…	ˆ·Iƒ+„å…Ò„UHƒH‹óH9C„'L‰þH‰ßèÕEÿÿI‰ØH‰ÂH…Ò„æIƒ(„ëM‰úI‰×éIƒü‡%I‰ÕHDkJc¢HÐ>ÿàH‹FL‰ïH‰D$@èÑþÿH‰ÃIƒüÜM…ä„ú
Iƒü„éA@Iƒü…vH‹^0H‹E(H‰D$é§õÿÿ@L‹géöÿÿ€ƒè29Iöÿÿè(þÿÆ@$é;öÿÿ€H‹™òH‰D$I‰Åécõÿÿ@H‹òIƒH‹
vòH‹H‰D$HƒèH‰„iH‹-š*HƒEIƒ.„cM‰õI‰îé1õÿÿH‹F0H‰D$XH‹E(H‰D$PH‹E L‰ïH‰D$HH‹EH‰D$@èÌþÿH‰ÃIƒü…ñþÿÿH…ÛŽ#
H‹5O,L‰ïH‹VèóþÿH…ÀtH‰D$PHƒëH…ÛŽù	H‹53L‰ïH‹VèÉþÿH…ÀtH‰D$XHƒëH…ÛŽÏ	HT$@L‰áL‰ïLmgH5	Îèt®þÿ…À‰©	HNc¾VÇR8H‰?8Ç=8VéÁL‰×L‰T$è£þÿL‹T$…À‰¶õÿÿHcE1ÿÇ8dH‰û7I‹Çö7ûHƒèI‰H…À…%L‰×èÆþÿéH‰Ïè¸þÿéŠþÿÿL‰÷M‰õI‰îè¢þÿéÆóÿÿDL‰×L‰\$è‹þÿL‹\$é¸õÿÿL;%±ð…ë„Ò„ãH‹5„0H;5•ð„ÿH9N…Ý
H‹5~0ºL‰ç虦þÿ…Àˆ„ìM‹—èE1ÀL‰îL‰÷HƒìMO ¹IƒARH‹T$L‰T$ ÿ06I‰ÇXZM…ÿL‹T$…d÷ÿÿHçaÇð6xH‰Ý6I‹ÇØ6Hƒè@I‰E1ÿH…À„ÛþÿÿH‹
²6‹¸6M‰ú‹5«6éCfDH;5¹ï…£„À„›H‹5Œ/L9æ„I9L$”ÀH9N”„À„³	„Ò„«	A€|$ ‰a€~ ‰òI‹T$H;V…ÒþÿÿI‹D$H‹NH9È@•ÇHƒøÿ•À@„Çt
Hƒùÿ…¬þÿÿE¶D$ ¶~ D‰	ùÀèÀéƒàƒá8È…‰þÿÿAöÀ „DIL$0ML$HAƒà@LEÉ@öÇ „HN0HƒÆHƒç@HEñ¶ȃù„«ƒù„ÜA‹	‹>9Ï…2þÿÿHƒút!¶ÀL‰ÏH¯ÐèŠþÿ…À”À¶Àf…À„þÿÿM‹ŸèE1ÀL‰îL‰÷HƒìMO ¹IƒASH‹T$L‰\$ ÿm4Y^H…ÀL‹\$I‰Ç„^Iƒ+…‘õÿÿL‰ßèþÿé„õÿÿIƒü„Iüÿÿénüÿÿf„L‰߉D$èÔþÿ‹D$éòÿÿL‰׉D$è¼þÿ‹D$émòÿÿ¨€…ÐH‰Þè ¶þÿH‰ÅH…í…iñÿÿH
–_º`¾ºE1ÿH=ÁRH‰
‚4Ç„4`Çv4º蹾þÿIƒ.tCIƒmt,H‹D$hdH3%(…ÃHƒÄxL‰ø[]A\A]A^A_ÃfDL‰ïèþÿëÊfDL‰÷èþÿë³fDIƒM‰úHƒm„ÆIƒ,$„êIƒ*uL‰×èÒþÿétÿÿÿDHÊ^E1ÒÇÐ3bH‰½3I‹Ç¸3ÔHƒèI‰H…À…æE1ÀL‰ßL‰D$L‰T$è{þÿL‹D$L‹T$M…À„¾Iƒ(„®H‹
g3‹m3‹5c3L‰T$H=‡QA¿蔽þÿHƒmL‹T$u(H‰ïL‰T$èþÿL‹T$M…äuM…Ò…(ÿÿÿéªþÿÿIƒ,$uèL‰çL‰T$èìþÿL‹T$ëÔL‹eM…äH(^H
^HOÈAŸÀL
É]Hó^E¶ÀLOÈOD@HƒìH‹¢ëH¨aATH5ÂAH‹81ÀèxþÿHŠ]¾lÇŽ2Ç€2lH‰q2XZH
a]ºH=”PE1ÿ褼þÿéóýÿÿ€H
‚]A¸L
]^érÿÿÿ€Ht$8ºèé¬þÿH‰ÅédýÿÿH]¾ÆºaÇ2aH‰î1Çì1ÆH
Ö\H=PE1ÿè¼þÿH‹EE1ÒHƒèH‰E…“þÿÿé|þÿÿ@èëþÿI‰Äé‹îÿÿH‹=‰*HšH5›è¯þÿI‰ÃM…Û…—îÿÿHl\¾ÒºbÇk1bH‰X1ÇV1Òéeÿÿÿf„L‰ßL‰D$è#þÿL‹D$éðÿÿf„L‰×èþÿéŒñÿÿL‰D$L‰\$è¡þÿL‹D$L‹\$Æ@$é¹ïÿÿfDH=¡:H‰L$è7þÿH‹L$…À„Híÿÿé!üÿÿDL‰ÇL‰T$è£þÿ‹¹0‹5¯0H‹
 0L‹T$é;ýÿÿfDH‹=y)蔭þÿI‰Ãéùþÿÿ@ècþÿH…À…ÆûÿÿH‹éH5<:H‹8èþÿé«ûÿÿ€H‹=ù,H;=bé„{I‹D$ö€«t
H;§é…`L‰æè‘þÿI‰ÃM…Û„–
H‹=þ.L‰\$8H‹GH;&鄳H;é……H‹W‹B¨„¤H‹ZE1ÿ¨ uL‹L‰\$èSþÿL‹\$‹H QH‹
™è‰P ;H‰L$L‰ÞL‰ÿL‰\$ÿÓI‰ÇèþÿH‹L$L‹\$‹X Sÿ‰P ‹=ÈŽƒè29ÂŒñM…ÿ„âIƒ+„ÞL‰ÿè©þÿIƒ/„¼HZºc¾çE1ÒH‰/Ç/cÇ/çL‰T$H
êYé–ûÿÿL‰ïèÄþÿH‰ÃH‹5Š&L‰ïHƒëH‹VèúþÿH‰D$@H…À„ÇûÿÿH…ۏcH‹D$PL‹t$@L‹l$HH‹\$XH‰D$é˜êÿÿDL‰×L‰T$èþÿL‹T$…	‰ÇïÿÿHfYÇo.†H‰\.ÇZ.†Hƒ+uH‰ßL‰T$è/þÿL‹T$Iƒ*…w÷ÿÿéMöÿÿHƒ+…sñÿÿH‰߉T$èþÿ‹T$éVñÿÿf„L‰׉T$èäþÿ‹T$éHïÿÿL‰çºè+þÿH‰ÇH…ÀtXH;üæH‹
Mç”ÀH;=Ãæ”ÂÂ…@H;=Ñæ„3H‰|$èþÿH‹|$H‹
çHƒ/„ …À‰›íÿÿHmXºs¾;E1ÒH‰`-Çb-sÇT-;éJþÿÿ€1ÒL‰ßL‰\$èáþÿL‹\$H…ÀI‰À…ôëÿÿHXE1ÒÇ-fH‰-I‹Ç-HƒèéCùÿÿ€L‹JE1( uL‹GHt$8¨…GºL‰ÇAÿÑH‰ÅéøÿÿL‰æèqþÿI‰Ãé›üÿÿL;%Êåu„Ò…;õÿÿH;5¹åu„À…*õÿÿ€L‰çºèÃþÿH‰ÇH…ÀtJH;”å”ÀH;=bå”ÂÂ…áH;=på„ÔH‰|$è¸þÿH‹|$Hƒ/„È…À‰±öÿÿHWºu¾^E1ÒH‰,Ç,uÇú+^éðüÿÿDè#þÿI‰ÂéJéÿÿHÊVºd¾ùÇÉ+dH‰¶+Ç´+ùéªüÿÿ€¶Ðé!ñÿÿ„L‰×L‰D$èsþÿL‹D$étìÿÿf„Hƒ/¶À…ƒëÿÿ‰D$èJþÿH‹
Ûä‹D$éÇýÿÿf.„L‰ÇH‰D$è#þÿL‹T$éTìÿÿf„H‹=áH
H5薨þÿI‰ÂM…Ò…ØèÿÿHìUºf¾Çë*fH‰Ø*ÇÖ*éÌûÿÿf„L‰×L‰D$è£
þÿL‹D$ésîÿÿf„¶ÒéÞìÿÿ„èËþÿL‹T$I‰Ãé‰èÿÿfDHjUÇs*fH‰`*Ç^*	é‰óÿÿH‹=èT§þÿI‰Âé9ÿÿÿ@Áø@éÍîÿÿDL‰×L‰\$è
þÿL‹\$éØîÿÿHUÇ*tH‰ø)I‹Çó)GHƒèéóÿÿfH=™3H‰L$(L‰D$ H‰t$L‰\$è þÿL‹\$H‹t$…ÀL‹D$ H‹L$(„!èÿÿéüÿÿ€L‰\$è~þÿL‹\$H…À…`üÿÿH‹âH5R3H‹8è
þÿL‹\$é@üÿÿL‰ßL‰D$èCþÿL‹D$éYîÿÿf„Áø@éÜùÿÿM…ÿ…õÿÿH‹ÕâH#XH5wGH‹81ÀèíþÿHÿSº‰E1ÒH‰÷(¾Çô(‰Çæ(éÜùÿÿf„L‰ÇH‰D$è³þÿL‹\$éýíÿÿf„L‰D$L‰\$èAþÿL‹D$L‹\$Æ@$é6íÿÿfDL‰߉T$èlþÿ‹T$éîÿÿL‰ÿèXþÿé7ùÿÿL‰ßèHþÿéùÿÿH‹5¹!L‰ïH‹VèmþÿH…À„^ïÿÿH‰D$HHƒëéGïÿÿfDL‰çH‰t$èÓ	þÿH‹t$H‹
á…À‰1çÿÿéúÿÿf.„H‰÷H‰t$è£	þÿH‹t$H‹
_á…À‰çÿÿéOúÿÿf.„L‰×L‰D$è£
þÿL‹D$ézéÿÿf„H‹vHéeçÿÿ€I‹|$Hé:çÿÿfDL‰ÇH‰D$èc
þÿL‹T$éjéÿÿf„L‰\$èöþÿL‹\$Æ@$é÷÷ÿÿ„H‹=yHH5趤þÿI‰ÂM…Ò…ÕçÿÿHRI‰ÛM‰úÇ'†H‰ü&H‹Ç÷&Hƒèé:óÿÿfDL‰׉T$èÄ	þÿ‹T$ééÿÿ¶ÒéùéÿÿH²QÇ»&†H‰¨&Ǧ&éGøÿÿèÔþÿL‹T$I‰ÀéoçÿÿH‹=À苣þÿI‰ÂéPÿÿÿL‰ÇL‰þL‰D$èӧþÿL‹D$I‰ÃéëÿÿH‹=HH5ẹ̀þÿI‰ÂM…Ò…±éÿÿH"QM‰úº‡¾³H‰&Ç&‡Ç	&³éÿöÿÿHîPÇ÷%†H‰ä%H‹Çß%„HƒèH‰H…ÀuUM‰úI‰Ûé#òÿÿH=y/H‰L$ èþÿL‹D$L‹L$…ÀH‹L$ „ïéÿÿHŠPÇ“%‡H‰€%Ç~%ÅM‰úéöñÿÿHƒ/¶À…ñïÿÿ‰D$èHþÿ‹D$é&ùÿÿH‹5HºL‰ç苔þÿ…ÀˆÃ„?M‹ŸèE1ÀL‰îL‰÷HƒìMO ¹IƒASH‹T$L‰\$ ÿ$AZA[H…ÀL‹\$I‰Ç…ÃïÿÿH×OE1ÒÇÝ$zH‰Ê$I‹ÇÅ$°Hƒèéñÿÿ@H‹=é贡þÿI‰ÂécþÿÿHŽOÇ—$‡H‰„$Ç‚$µé‹ìÿÿè°þÿL‹T$I‰ÀéèÿÿD¶D¶éBäÿÿL‰ÞL‰\$蹥þÿL‹\$I‰ÇM…ÿ…ðôÿÿH*OE1ÒÇ0$cH‰$I‹Ç$âHƒèé[ðÿÿH‹°ÝHþRL‰D$H5MBH‹81ÀèÃþÿHÕNL‹D$E1ÒH‰Í#ÇÏ#‡ÇÁ#¸é<ðÿÿM‹HM…É„‹çÿÿM‹PIƒIƒIƒ(„5L‰ÎL‰×L‰úL‰L$L‰T$èY%ÿÿL‹L$L‹T$I‰ÃIƒ)…èÿÿL‰ÏL‰T$L‰\$è@þÿL‹T$L‹\$éõçÿÿL‰ÇH‰T$è$þÿH‹T$M‰úI‰×éïÿÿL‰ÇHt$8ºL‰D$èݝþÿL‹D$I‰Ãé±çÿÿHòMM‰úÇø"‡H‰å"Çã"Èé*ïÿÿèþÿL‹\$I‰Àé¸çÿÿH¶ME1ÒǼ"vH‰©"I‹Ç¤"jHƒèéçîÿÿL‰×L‰D$èvþÿL‹D$é@åÿÿD·D·é[âÿÿHaM¾àºcÇ`"cH‰M"ÇK"àéZðÿÿH0MM‰úÇ6"‡H‰#"Ç!"Ëéœîÿÿ¨€„™ûÿÿL‹J1ÿ¨ uI‹xL‰D$Ht$8¨…4ºAÿÑL‹D$I‰Ã鈿ÿÿL‰ÇH‰D$èºþÿL‹T$é´äÿÿH²LM‰úǸ!‡H‰¥!I‹Ç !ÍHƒèéãíÿÿH‹=ÈHY	H5Z	èŸþÿI‰ÂM…Ò…úâÿÿH[LI‰ÛM‰úÇ^!†H‰K!H‹ÇF!Hƒèé‰íÿÿHt$8ºL‰\$èñ›þÿL‹\$I‰ÇéÓüÿÿL‰׉T$èøþÿ‹T$éBäÿÿL‰D$èåþÿL‹D$H…À…OûÿÿH‹€ÙH5¹*H‹8èþÿL‹D$é/ûÿÿH‹=è˝þÿI‰ÂéAÿÿÿH¥KÇ® †H‰› Ç™ é:òÿÿèÇþÿL‹T$I‰Àé8âÿÿHlKÇu †H‰b H‹Ç] ’HƒèéyúÿÿH‰÷H‰t$èÿþÿH‹t$…À‰ôéÿÿéôÿÿD¨€„ÊûÿÿL‹JE1( uL‹GL‰\$Ht$8¨…’ºL‰ÇAÿÑL‹\$I‰Çé¦ûÿÿL‰çH‰t$èšþÿH‹t$…À‰…éÿÿé§óÿÿHºJÇÆH‰°Ç®”éOñÿÿH‹vHéçéÿÿM‹L$HéÄéÿÿH=G)H‰L$èÝþÿL‹\$H‹L$…À„Õïÿÿé.ûÿÿL‰\$èLþÿL‹\$H…À…ûÿÿH‹ç×H5 )H‹8èèþÿL‹\$éöúÿÿH Jºw¾E1ÒH‰ÇwǁéýïÿÿA¶	¶>éWéÿÿH‹5/ºL‰çè*Žþÿ…ÀˆR„M‹—èE1ÀL‰îL‰÷HƒìMO ¹IƒARH‹T$L‰T$ ÿùAXAYH…ÀL‹T$I‰Ç…óÞÿÿHvIÇ|H‰lI‹ÇgÓHƒèéŽçÿÿfDHBIÇKˆH‰8Ç6çé³øÿÿL‹KM…É„ÌãÿÿL‹CIƒIƒHƒ+„`L‰úL‰ÎL‰ÇL‰L$L‰D$èÎÿÿL‹L$L‹D$H‰ÂIƒ)…˜ãÿÿL‰ÏL‰D$H‰T$èµþÿL‹D$H‹T$éwãÿÿH‹=ïHpH5qè,›þÿI‰ÂM…Ò…àÿÿH‚HI‰ÛM‰úÇ…†H‰rH‹Çm›Hƒèé°éÿÿL‰ÇL‰T$L‰L$è:þÿL‹L$L‹T$éªùÿÿH-HÇ6†H‰#Ç!éÂîÿÿèOþÿL‹T$I‰Àé³ßÿÿH‹=;èšþÿI‰ÂéUÿÿÿHàGÇé†H‰ÖH‹ÇÑ HƒèéíöÿÿA·	·>éçÿÿH¦Gǯ†H‰œÇš¢é;îÿÿM‰Ðéíöÿÿ1ɺL‰ÇAÿÑH‰ÅéÃçÿÿHbGºy¾¤E1ÒH‰UÇWyÇI¤é?íÿÿH‹5…ºL‰çèx‹þÿ…Àˆ„ÎM‹ŸèE1ÀL‰îL‰÷MO IƒQ¹ASH‹T$L‰\$ ÿB^_H…ÀL‹\$I‰Ç…µæÿÿHÉFE1ÒÇÏ~H‰¼I‹Ç·öHƒèéúçÿÿH‰ßL‰D$L‰L$è„þýÿL‹L$L‹D$éýÿÿèÿýÿHrFº{¾ÇE1ÒH‰eÇg{ÇYÇéOìÿÿH‹5¥
ºL‰ç舊þÿ…Àˆ~„×M‹—èE1ÀL‰îL‰÷MO ¹IƒASARH‹T$L‰T$ ÿII‰ÇXZM…ÿL‹T$…UÛÿÿHØEÇá€H‰ÎI‹ÇÉHƒèéðãÿÿ1ɺAÿÑL‹D$I‰ÃéRßÿÿH“Eº}¾êE1ÒH‰†Çˆ}Çzêépëÿÿ1ɺL‰ÇAÿÑL‹\$I‰ÇéöÿÿH‹5ŒºL‰ç菉þÿ…ÀˆL„³MO ¹L‰îL‰÷M‹ŸèIƒAPE1ÀASH‹T$L‰\$ ÿHAYAZH…ÀL‹\$I‰Ç…ÉäÿÿHÝDE1ÒÇã‚H‰ÐI‹ÇË<HƒèéæÿÿM‰×éùâÿÿH¤Dº¾
E1ÒH‰—ǙNj
éêÿÿH‹5ºL‰ç躈þÿ…ÀˆÅ„¥M‹—èE1ÀL‰îL‰÷MO IƒQ¹ARH‹T$L‰T$ ÿl^_H…ÀL‹T$I‰Ç…ˆÙÿÿHDÇ„H‰I‹Çü_Hƒèé#âÿÿHÝCº¾0E1ÒH‰ÐÇҁÇÄ0éºéÿÿH‹D$H;ÓÑ…yïÿÿE1ÿé(ÙÿÿHCºƒ¾SE1ÒH‰‚Ç„ƒÇvSéléÿÿf„óúAWAVAUATUH‰õSHì˜L‹5iÑL‹nH‰|$dH‹%(H‰„$ˆ1ÀL‰´$€HÇD$pHÇD$xH…Ò…š
Iƒý„ÔIƒý„¾IƒýH
CHCAÀHMÈE¶ÀIƒÀHƒìH‹±ÐHÃFH5Ó&AUL
ÓCH‹81Àè€ÿýÿH’B¾ CÇ–ÄLj CH‰yXZH
iBºÄH=ü5E1ä謡þÿH‹„$ˆdH3%(…2#HĘL‰à[]A\A]A^A_ÃH‹F(H‰„$€H‹E H‹}H‰D$xH‰|$pH‹Gö€«„H‹GH‰D$HƒÀHƒø‡oH/HHc‚HÐ>ÿàf„HƒmuH‰ïè±ùýÿHÇD$„H‹l$xHÇD$PHÇD$XL‹¬$€HÇD$`H‰ïèàüýÿH‰ÃHƒøÿ„#
H‹¬¿L‹ (ÿhE1É1É1ÒH‰ÆA¸H‰ïAÿÔH‰D$PI‰ÄH…À„#
Hƒ8H‰D$X„dI‹D$ºL‰çHÇD$PHÇD$XH‹5>H‰D$ÿ‹ƒøÿ„êH‹|$Hsÿÿkf/›!‡M9õ„ô	èÏ÷ýÿH‰ÅH‹€ëH‰ÐL‹8M…ÿt	M9÷…Ü
H‹PH…ÒuãH‹HH‹@H‰L$ H‰D$(M…ÿtIƒH‹D$ H…ÀtHƒH‹D$(H…ÀtHƒH‹…H‹
ÎH9H…ÄH‹=µH…ÿ„„HƒH‰|$XH‹GH‹5XH‹€H…À„PÿÐH‰ÇH‰|$`H…ÿ„
L‹L$XIƒ)„vHÇD$XH‹GH;‚Í„¤H;ÎL‰l$h„uH;[Î…•H‹W‹B¨„6H‹JE1öH‰L$0¨ uL‹wè-úýÿ‹H QH‹
x͉P ;sH‰L$8L‰îL‰÷H‹D$0ÿÐI‰Æèûùýÿ‹H qÿH‹L$8‰p ‹HÎ=ÈŽ9ÎŒ%M…ö„P@H‹|$XL‰t$PH…ÿt
Hƒ/„7HÇD$XH‹|$`M…ö„˜Hƒ/„Ž
HÇD$`H‰ßèÝøýÿH‰D$`H…À„/¿èUùýÿH‰D$XI‰ÆH…À„ôHÇD$XH‹D$PHÇD$PI‰FH‹D$`HÇD$`I‰F M…ÿt
Iƒ/„ØH‹L$ H…ÉtH‹H‰D$0HƒèH‰„©H‹L$(H…ÉtH‹H‰D$ HƒèH‰„zH‹cH‹
œþH9H…¢H‹=ƒþH…ÿ„RHƒH‰|$PH‹GH‹5žH‹€H…À„ÿÐH‰ÅH‰l$`H‹|$PH…í„Î
Hƒ/„D	HÇD$P¿èIøýÿH‰D$PH…À„[IƒL‰pènùýÿH‰D$XH‰ÇH…À„õH‹ÞËH‹5ïèÚùýÿ…Àˆ²	H‹l$`L‹|$XH‹t$PH‹EL‹¨€M…í„?H‰t$ èå÷ýÿH‹t$ ‹H QH‹
+ˉP ;¸H‰L$ L‰úH‰ïAÿÕH‰Åè²÷ýÿ‹H QÿH‹L$ ‰P ‹HÎ=ÈÁø@9ÊŒš	H…í„ÙH‹|$`Hƒ/„r	HÇD$`H‹|$PHƒ/„J	HÇD$PH‹|$XHƒ/„"	H‹E‹uHÇD$XH‹} HƒEH‰D$8H‹½ÿðfï>H‹=wòH*D$H‰D$0ÿõƒøÿ„H‹D$L‹-€L‹¸èL‰îI‹WH‰×H‰T$ èµ÷ýÿH‰D$(H…À„ßH‹@H‹T$ H‹€H…À„n
H‹|$(L‰þÿÐH‰D$(H…À„ÀH‹D$L‹-2L‹¸èL‰îI‹WH‰×H‰T$ èO÷ýÿI‰ÀH…À„ãH‹@H‹T$ H‹ˆH…É„JL‰ÇL‰þÿÑH‰D$XI‰ÀH…À„ÌH‹@HÇD$PH;É…?
M‹hL‰l$PM…í„-
I‹xIƒEHƒH‰|$XIƒ(„‘H‹GH;fÉL‰l$h„EH;¼É…æH‹W‹B¨„ÑH‹JE1ÿH‰L$ ¨ „³èŽõýÿ‹H QH‹
ÙȉP ;'H‰L$@L‰îL‰ÿH‹D$ ÿÐI‰Åè\õýÿ‹H QÿH‹L$@‰P ‹=ȏqÁø@9ÂŒsM…í„QH‹|$PH…ÿt
Hƒ/„HÇD$PM…í„ðH‹|$XHƒ/„%
HÇD$XIƒm„
è|öýÿH‰D$@H‹D$0H™H÷ûH‰D$ H…À~{H‹D$L‹|$8E1íL‰d$HHÝL‹d$L‰t$0H‰L$LH`HƒÀ H‰l$8I‰ÆL‰ýM‰ïM‰͐H‹t$H‰êM‰éI‰ØL‰áL‰÷IƒÇè“ÆHl$L9|$ u×L‹t$0H‹l$8L‹d$HH‹|$@èÎðýÿH‹D$(L‹-‚ÿH‹@H‹˜€H…Û„èôýÿ‹H QH‹
dljP ;ˆH‰L$1ÒL‰îH‹|$(ÿÓI‰ÅèèóýÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒ@M…í„…H‹\$(H‹H‰D$HƒèH‰„Í
Iƒm„‚
HƒEH‰ëIƒ,$„AHƒmI‰ì…µH‰ïè¸ðýÿé¢H‰Çè¨ðýÿL‹d$XéŠ÷ÿÿfD‹G‹WHÁàH	ÐH‰D$éáöÿÿ‹G‹WHÁàH	ÐH÷ØH‰D$Hƒ|$ÿ…¿öÿÿèZóýÿHÇD$ÿÿÿÿH…À„¨öÿÿHJ8¾CÇN
ÄH‰;
Ç9
Céµõÿÿ@‹G÷ØH˜H‰D$ëŸf.„‹GH‰D$éSöÿÿHò7ÇûH‰èÇæwCH‹|$PE1ÉE1ÒE1íE1ö1íH…ÿt
Hƒ/„QH‹|$XH…ÿt
Hƒ/„eH‹|$`H…ÿt
Hƒ/„qM…ítIƒm„M…Òt
Iƒ*„šM…Ét
Iƒ)„ëH‹
\‹bH=ç*‹5Q蔖þÿM…ätIƒ,$„”E1äH…ít<Hƒm„QþÿÿM…öt
Iƒ.„ŠHƒm…«ôÿÿH‰ïèïîýÿéžôÿÿf.„M…ö„‹ôÿÿIƒ.…ôÿÿL‰÷èÅîýÿétôÿÿH‰ßèÈðýÿH‰D$XI‰ÆH…À„W¿è=ñýÿH‰D$PI‰ÆH…À„THÇD$PH‹D$XHÇD$XI‰FéBøÿÿ@L‰Ïè`îýÿéÿÿÿL‰T$L‰L$èIîýÿL‹T$L‹L$é‘þÿÿf.„L‰T$L‰L$è!îýÿL‹T$L‹L$é}þÿÿfL‰T$L‰L$èîýÿL‹T$L‹L$éqþÿÿfL‰ïL‰T$L‰L$èÞíýÿL‹T$L‹L$é^þÿÿ€L‰×L‰L$è»íýÿL‹L$éOþÿÿH‹HH‹@H‰L$ H‰D$(é-õÿÿf„1ÛL‰çI‰Üèƒíýÿé]þÿÿfDL‰÷èpíýÿéiþÿÿèvðýÿH‰D$éñüÿÿ@I‰ÔIƒý„•M…í„Ä
Iƒý…‡H‹FH‰×H‰D$pèìýÿI‰ÇH‹5oÿL‰çH‹VèKðýÿH‰D$xH…À„IƒïH‹|$pM…ÿŽéòÿÿH‹5týL‰çH‹VèðýÿH…À„@H‰„$€IƒïM…ÿ+H‹|$pé®òÿÿIƒý…–H‹F(H‰×H‰„$€H‹F H‰D$xH‹FH‰D$pèpëýÿI‰Çë¸èsìýÿé²öÿÿfDL‰Ïè`ìýÿH‹|$`éxôÿÿfDèKìýÿéhõÿÿfDHB4E1ÉE1ÒE1íH‰9	E1ö1íE1äÇ3	H‹|$PÇ 	UCéKüÿÿH4E1öÇ	H‰õÇó_C1íE1ÉE1ÒE1íé"üÿÿèÃëýÿL‹t$Péºôÿÿf„H²3Ç»&H‰¨Ç¦]DH‹|$PE1ÉE1ÒE1í1íéÁûÿÿf„èkëýÿéÔöÿÿfDè[ëýÿé¬öÿÿfDèKëýÿé„öÿÿfDèëíýÿÆ@$éXöÿÿfL‹éDøÿÿ€ƒè2éøÿÿ„Áø@éØóÿÿDè«íýÿÆ@$éÍóÿÿH=»H‰L$8èQíýÿH‹L$8…À„oóÿÿE1öé´óÿÿèÇíýÿI‰ÆH…ÀuëH‹hÀH5¡H‹8èiëýÿéŒóÿÿ@H‹-¹L‹-²÷H‹EH‹˜€H…Û„Žè)íýÿ‹H QH‹
tÀ‰P ;¶H‰L$1ÒH‰ïL‰îÿÓH‰ÅèúìýÿH‹L$‹X Sÿ‰P ‹=ÈŽoƒè29ÂŒT
H…í„™H‰l$XH‰ïèþ€þÿH‹|$XHƒ/„
H2E1öHÇD$XH‰õÇ÷ÇéŽCH‹|$P1íE1ÉE1ÒE1íH…ÿ…úÿÿéúÿÿH‰Ïè¨éýÿéyóÿÿH‰Ïè˜éýÿéJóÿÿL‰ÿèˆéýÿéóÿÿH‹D$(HƒéœõÿÿfH‹=¹üHÚñH5ÛñèöƒþÿH‰ÇH‰|$PH…ÿ…LóÿÿHG1ÇP&H‰=Ç;QDéCýÿÿfDL‹l$XI‹EH;P¿„	H;«¿…4I‹M‹Qö„$H‹AE1ÿƒâ H‰D$ uM‹}è{ëýÿ‹H QH‹
ƾ‰P ;÷H‰L$@1öL‰ÿH‹D$ ÿÐI‰ÅèJëýÿ‹H QÿH‹L$@‰P ‹HÎ=ÈÁø@9ÊŒ:M…í„„H‹|$PH…ÿ„öÿÿHƒ/„ñHÇD$PéïõÿÿIƒL‰D$XéÅôÿÿfL‰ïè(èýÿéòõÿÿèèýÿéÑõÿÿfDH
Z0A¸éBíÿÿfDHú/E1ÉE1ÒE1íH‰ñÇó&ÇåSDéøÿÿ„èíýÿH‰ÅéÚñÿÿH‹=ùúèāþÿH‰ÇéIþÿÿ@L‰ÇèçýÿL‹l$PM…í„jþÿÿH‹|$XéOôÿÿ„H‹=yúHêïH5ëïèöþÿH‰ÇH‰|$XH…ÿ…*ïÿÿHG/H‹|$`ÇK"H‰D$8H‰3Ç1×CH…ÿt
Hƒ/„
HÇD$`H‹|$PH…ÿt
Hƒ/„ýHÇD$PH‹|$XH…ÿt
Hƒ/„ÀH‹
Ù‹ßH=d"HÇD$X‹5ÅèŽþÿHL$PHT$`H‰ïHt$Xè¡mþÿ…ÀˆÁH‹R¼I9E…xIƒEH‰ßè{èýÿI‰ÂH…À„5	¿H‰D$0èðèýÿL‹T$0H…ÀI‰Á„=	L‰PH‰ÆL‰ïH‰D$0èËåýÿL‹L$0H…ÀI‰Æ„c	Iƒm„_Iƒ)„EH‹|$XH…ÿt
Hƒ/„qHÇD$XH‹|$`H…ÿt
Hƒ/„DHÇD$`H‹|$PH…ÿt
Hƒ/„H‹…H‹L$ HÇD$PH‹8L‹hH‰HH‹L$(H‹hL‰8H‰HH…ÿt
Hƒ/„ØM…ítIƒm„øH…í„5ïÿÿHƒm…*ïÿÿH‰ïèLåýÿéïÿÿ€HB-ÇK&H‰8Ç6VDé>ùÿÿf„èåýÿé6þÿÿfDèûäýÿéìýÿÿfDèëäýÿéùýÿÿfDHâ,Çë"H‰D$8H‰ÓÇÑÙCéªýÿÿ@èûéýÿH‰Çé¨ìÿÿH‹=©÷è´~þÿH‰Çé9ýÿÿ@HŠ,Ç“&H‰€Ç~[Déúÿÿè[äýÿéðñÿÿfDHR,Ç["H‰D$8H‰CÇAèCéýÿÿ@H‹wH‰t$XH…ö„JìÿÿL‹OHƒIƒL‰L$`Hƒ/t€L‰êL‰ÏèÕÿÿI‰ÆéÅìÿÿèØãýÿH‹t$XH…ö„1
L‹L$`ëÓL‰Ïè¸ãýÿé®ýÿÿL‰ïL‰L$0è£ãýÿL‹L$0éŠýÿÿf„H’+Ç›"H‰D$8H‰ƒÇëCéZüÿÿ@L‰ïèXãýÿéqòÿÿH‹\$(1ÒL‰îH‰ßèþçýÿI‰ÅH‹H‰D$HƒèH‰uf.„H‹|$(èãýÿM…í… òÿÿH+E1ÉE1ÒE1íH‰H‹|$PÇ-ÇõÿEé óÿÿ„è{åýÿÆ@$é²ñÿÿfÁø@鉸ÿÿDH²*H‹|$`Ƕÿ"H‰D$8H‰žÿÇœÿíCéfûÿÿ€H‰×è`áýÿH‹5‘öL‰çI‰ÇH‹VIƒïè–åýÿH‰D$pH…À…*õÿÿL‹méaçÿÿ€H‹F H‰×H‰D$xH‹FH‰D$pèáýÿI‰ÇéõÿÿfDè»äýÿÆ@$éïÿÿfH‰ïL‰úèµæýÿH‰ÅH…À…íÿÿf„Hâ)Çëþ&H‰ØþÇÖþ^Dé+öÿÿf„è«áýÿéïûÿÿfDè›áýÿéüÿÿfDè‹áýÿé²ûÿÿfDè{áýÿé…ûÿÿfDL‰ïèháýÿéûûÿÿH=)H‰L$(H‰t$ èºãýÿH‹t$ H‹L$(…À„ ìÿÿéSÿÿÿH2)E1ÉE1ÒE1íH‰)þH‹|$PÇ&þ+Çþ”DéCñÿÿèóãýÿH…À…
ÿÿÿH‹“¶H5ÌH‹8è”áýÿéïþÿÿ€H‹D$8E1ÉE1ÒE1íÇÌý#H‰¹ýÇ·ýDH‹…H‹\$ H‹8L‹pH‰XH‹\$(H‹hL‰8H‰XH…ÿt
Hƒ/„‰M…öt
Iƒ.„šH…ítHƒm„:H‹|$PE1ö1íéƒðÿÿH‹|$PE1öésðÿÿH‹©¶L‰îH‹8èFàýÿH(E1ÉE1ÒE1íH‰ýH‹|$PÇý-Çþü§Dé)ðÿÿèÛßýÿé×õÿÿfDè{âýÿÆ@$éžõÿÿfH‹A¶L‰îH‹8èÞßýÿHÇD$XH§'ǰü-H‰üÇ›ü©DH‹\$(H‹H‰D$HƒèH‰„ŒH‹|$PE1ÉE1ÒE1íéžïÿÿfDHR'Ç[üH‰HüÇFü«CéXõÿÿf„L‰îè˜}þÿI‰Åé–ìÿÿH‰ïL‰T$E1ö1íL‰L$èùÞýÿH‹|$PL‹L$L‹T$é-ïÿÿDL‰T$L‰L$èÑÞýÿL‹T$L‹L$éYþÿÿfL‰÷L‰T$L‰L$è®ÞýÿL‹T$L‹L$éEþÿÿH=hH‰L$@èþàýÿH‹L$@…À„»ëÿÿH‹|$PH…ÿtHƒ/„ÔHÇD$PHf&Çoû-H‰\ûÇZû·DéºþÿÿDH:&ÇCûH‰0ûÇ.û­Cé6òÿÿL‰îèˆ|þÿI‰ÆéèæÿÿL‰ïèxâýÿI‰ÅH…À…y÷ÿÿH‹D$8E1ÉE1ÒÇóú$ÇåúDH‰Öúé"ýÿÿL‹ˆ€L‹=ÛúM…É„’L‰L$ èPàýÿH‹
¡³L‹L$ H‰‹@ ƒÀ;‰B ;H‰L$ 1ÒL‰ïL‰þAÿÑI‰ÅèàýÿH‹L$ H‰‹@ ƒè‰B ‹J΁úÈÁúR9ȍÊôÿÿ@èãßýÿÆ@$é¸ôÿÿH‹D$8E1ÉÇ4ú$Ç&ú DH‰úécüÿÿÇú$H‹D$8Çú"DH‰òùé>üÿÿH‹|$(èÓÜýÿéeýÿÿHt$hºèŸtþÿI‰Åé=êÿÿH‹D$8E1ÒÇÁù$dzù'DH‰¤ùéðûÿÿHT$pL‰éL‰çL–(H5”è‘oþÿ…À‰¯ïÿÿHk$¾CÇoùÄH‰\ùÇZùCéÖáÿÿHt$hºètþÿI‰Æéåÿÿ¨€„þüÿÿL‹JE1( uL‹GHt$h¨…ºL‰ÇAÿÑI‰ÅéuéÿÿH‹@`H…À„SH‹€€H…À„CÿÐH‰ÅH…À„5H‹@L‹%!²L9à…´ö€«„=H‹EH‰D$HƒÀHƒø‡´Hõ)Hc‚HÐ>ÿà‹EH‰D$Hƒm…ÅáÿÿH‰ïè]Ûýÿéíêÿÿ„‹E÷ØH˜H‰D$Hƒm…ÎêÿÿëÒ€‹E‹UHÁàH	ÐH÷ØH‰D$ëÕf„‹E‹UHÁàH	ÐH‰D$ëŒH‰ïH5
%è-_þÿH‰ÅH…À„‚êÿÿH‹@é(ÿÿÿH‰ïèàÝýÿH‰D$ë…H=’H‰L$è(ÝýÿH‹L$…À„ZéÿÿH‹\$(H‹H‰D$HƒèH‰…„÷ÿÿH‹|$(è‡Úýÿéu÷ÿÿè}ÝýÿH…ÀuÍH‹!°H5ZH‹8è"Ûýÿ뵨€„HüÿÿL‹RE1ɨ uL‹OHt$h¨…>ºL‰ÏAÿÒI‰Æéãÿÿè$ÝýÿH…À…šûÿÿH‹įH5ýH‹8èÅÚýÿH‹|$PH…ÿ…€ûÿÿéŽûÿÿfH‰ï1ÒL‰îè£ÞýÿH‰D$XH‰ÅH…À…¼ïÿÿHÔ!ÇÝöH‰ÊöÇÈöŠCéÝéÿÿH=tH‰L$è
ÜýÿH‹L$…À„,ïÿÿHÇD$Xë°è}ÜýÿH…ÀuëH‹!¯H5ZH‹8è"ÚýÿëÓHƒìH‹U¯H
–!H5wjL
w"A¸HJ%H‹81ÀèÞýÿH)!Y^H‰'ö¾CÇ$öÄÇöCé’ÞÿÿL‰ï1Ò1öèÍpþÿI‰ÅékæÿÿèàÛýÿH…À…VúÿÿH‹€®H5¹ÿH‹8èÙýÿé;úÿÿH=…ÿH‰L$@èÛýÿH‹L$@…À„ëïÿÿéúÿÿè”Øýÿé"úÿÿèŠÛýÿH…À…"èÿÿH‹z®H5ªH‹8è+ÙýÿéèÿÿH‹@`H…À„…H‹€€H…À„uH‰ïÿÐH‰ÇH…À„dL9`… H‹Gö€«t(H‹GH‰D$HƒÀHƒø‡¬H‡&Hc‚HÐ>ÿàH‰|$èsþÿH‹|$H‰D$Hƒ/…—üÿÿèÖ×ýÿéüÿÿ‹G÷ØH˜H‰D$ëދG‹WHÁàH	ÐH÷ØH‰D$ëNjG‹WHÁàH	ÐH‰D$볋GH‰D$ë©H5¢!èÂ[þÿH‰ÇH…À…HÿÿÿHƒm…çÿÿH‰ïèc×ýÿéÿæÿÿH‰|$èdÚýÿH‹|$H‰D$é`ÿÿÿH=þH‰L$@L‰L$ èŸÙýÿL‹L$ H‹L$@…À„ùÿÿé—øÿÿL‰ï1ÒL‰þèËÛýÿI‰Åé‰äÿÿèŽ×ýÿ1ɺL‰ÏAÿÒI‰ÆéÑßÿÿ1ɺL‰ÇAÿÑI‰ÅéZäÿÿèÏÙýÿH…À…PÿÿÿH‹¿¬H5ïH‹8èp×ýÿé5ÿÿÿH
ìA¸éÝÛÿÿH‹|$`H‹GéÇÞÿÿff.„óúAWAVAUATUSH‰ûHƒìhL‹-œ¬L‹fdH‹%(H‰D$X1ÀL‰l$PH…Ò…2M…ä„‘Iƒü…OH‹nHÇD$0HÇD$8HÇD$@L9í„zH‹@óH‹
¹ÚH9H…
L‹- ÚM…í„?IƒEL‰l$@I‹EH‹5BíL‰ïH‹€H…À„/ÿÐI‰ÆL‰t$8M…ö„¬H‹|$@Hƒ/„­HÇD$@¿è"ØýÿH‰D$@I‰ÅH…À„aHƒEH‰hèCÙýÿH‰D$0I‰ÄH…À„rH‹‹òH‹
ôÙH9H…ªL‹-ÛÙM…턊IƒEI‹EH‹5BëL‰ïH‹€H…À„'ÿÐI‰ÆM…ö„)Iƒm„ÖH‹5gìH‹|$0L‰òèJÙýÿ…Àˆ’
Iƒ.„ÀH‹l$8L‹l$0L‹t$@H‹EL‹ €M…ä„íèP×ýÿ‹H QH‹
›ª‰P ;ÈL‰êH‰$L‰öH‰ïAÿÔI‰Åè ×ýÿ‹H QÿH‹$‰P ‹HÎ=ÈÁø@9ÊŒM…턨H‹|$8Hƒ/„YHÇD$8H‹|$@Hƒ/„1HÇD$@H‹|$0Hƒ/„	Iƒ}L‰l$0„á
I‹EA‹uHÇD$0I‹} H‰D$H‹ ñÿðH‰D$H…ÀŽ¿HD$HE1äH‰D$ L‹»èL‹5ñêI‹WL‰öH‰×H‰$è.×ýÿH‰ÅH…À„Ò
H‹@H‹$H‹€H…À„rH‰ïL‰þÿÐH‰ÅH…À„¸
L‹»èL‹5°êI‹WL‰öH‰×H‰$èÕÖýÿI‰ÂH…À„H‹@H‹$H‹ˆH…É„1L‰×L‰þÿÑI‰ÂH…À„ÿ
H‹@HÇD$@H;¡¨…(I‹rH‰t$@H…ö„M‹rHƒIƒIƒ*„ãI‹FH;ø¨H‰t$H„H;N©…èI‹V‹B¨„9H‹JE1ÿH‰L$¨ uM‹~H‰4$èÕýÿH‹4$‹H QH‹
c¨‰P ;H‰$L‰ÿH‹D$ÿÐI‰ÇèêÔýÿ‹H QÿH‹$‰P ‹HÎ=ÈÁø@9ÊŒóM…ÿ„
H‹|$@L‰|$0H…ÿt
Hƒ/„ÌHÇD$@M…ÿ„¦Iƒ.„Iƒ/„ûHÇD$0è
ÖýÿH{ I‰Ç職H‹L$L‰ÿJ‰áèàÐýÿH‹EL‹5•ßL‹¸€M…ÿ„µè0Ôýÿ‹H QH‹
{§‰P ;PH‰$1ÒL‰öH‰ïAÿ×I‰ÇèÔýÿ‹H QÿH‹$‰P ‹HÎ=ÈÁø@9ÊŒÒM…ÿ„AHƒm„fIƒ/„¤IƒÄL9d$…NýÿÿI‹EM‰ìHPI‰Ué_f„M…äH'H
HIÈL‰àHÉHÁø?L
ïM…äLIÊL@HƒìH‹ ¦ATH¼H5ÀüH‹81ÀèvÕýÿHˆ¾†ÇŒíØÇ~í†H‰oíXZH
_ºØH="E1äè¢wþÿH‹D$XdH3%(…ÛHƒÄhL‰à[]A\A]A^A_Ã@L‰ïèÐýÿéûÿÿL‰÷èÐýÿé3ûÿÿHƒEé˜üÿÿfDèãÏýÿéIúÿÿfDL‰×èÐÏýÿH‹t$@H…ö…ýÿÿI‹FM‰òH;ü¥„þH;W¦…	
I‹J‹Qö„ùE1öƒâ L‹yuM‹rL‰$è(ÒýÿH‹
y¥L‹$‹p V;‰P lH‰L$1öL‰÷L‰$Aÿ×I‰ÇèóÑýÿH‹L$L‹$‹p Vÿ‰P ‹=ȍHÎÁø@9ÊŒg	M…ÿ„–H‹|$@L‰|$0H…ÿtHƒ/„ÍHÇD$@M‰Öéýÿÿ@IƒéÞûÿÿ€L‰ÿèÈÎýÿéøüÿÿL‰÷è¸ÎýÿL‹|$0éÙüÿÿfDHÇD$0HÇD$8HÇD$@L‹£èL‹=ÏåM‹t$L‰þL‰÷èÒýÿH‰ÅH…À„Ó
H‹@H‹€H…À„ç	H‰ïL‰òL‰æÿÐH‰ÅH…À„º
L‹£èL‹=’åM‹t$L‰þL‰÷èºÑýÿH‰ÇH…À„Æ
H‹@H‹ˆH…É„z
L‰òL‰æÿÑH‰D$8H‰ÇH…À„´
H‹@HÇD$@H;…£…o	L‹gL‰d$@M…ä„]	L‹GIƒ$IƒL‰D$8Hƒ/„á
I‹@H;֣L‰d$H„·H;,¤…I‹P‹B¨„ÿL‹rE1ÿ¨ uM‹xèÐýÿ‹H QH‹
N£‰P ;ŸH‰$L‰æL‰ÿAÿÖI‰ÄèÖÏýÿ‹H QÿH‹$‰P ‹HÎ=ÈÁø@9ÊŒÇM…ä„1
H‹|$@L‰d$0H…ÿt
Hƒ/„
HÇD$@M…ä„:
H‹|$8Hƒ/„\	HÇD$8Iƒ,$„8	HÇD$0èºËýÿI‰ÇH‹€ë	fDH‰ÐL‹0M9ît	M…ö…<H‹PH…ÒuãL‹HL‹PM…ötIƒM…ÉtIƒM…ÒtIƒH{ L‰T$L‰$è²H‰Çè>ÎýÿL‹$L‹T$H…ÀI‰Ä„¯HÇD$0I‹‡H‹8L‹xL‰0L‹hL‰HL‰PH…ÿt
Hƒ/„|
M…ÿt
Iƒ/„}
M…ítIƒm„}
H‹EL‹-ºÙH‹˜€H…Û„€
èUÎýÿH‹
¦¡‹p V‰P ;H‰$1ÒL‰îH‰ïÿÓI‰Åè'ÎýÿH‹$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒˆ
M…í„Hƒm„,
Iƒm…ïúÿÿé¯@M‰Öè ËýÿL‹|$0é%ùÿÿfDH‰ÕM…ä„ÜIƒü…úÿÿH‹FH‰×H‰D$PèÙÉýÿH…À“H‹l$Pé«ôÿÿfD1ÒL‰öH‰ïèƒÏýÿHƒmI‰Çuf„H‰ïè¨ÊýÿM…ÿ…‰ùÿÿ€HšE1öE1äǝçH‰ŠçLjçáë^fDL‰ÿè`ÊýÿéOùÿÿèÍýÿÆ@$é ùÿÿf.„HBE1äE1íÇEç	H‰2çÇ0çj„H‹|$0H…ÿt
Hƒ/„¬H‹|$8H…ÿt
Hƒ/„¨H‹|$@H…ÿt
Hƒ/„¤M…ätIƒ,$tXM…ötIƒ.t]H‹
Ææ‹ÌæE1äH=~‹5¸æèûpþÿM…í„PùÿÿI‹EHƒèI‰EH…À…;ùÿÿL‰ïèuÉýÿé.ùÿÿL‰çèhÉýÿëžfDL‰÷èXÉýÿë™fDèKÉýÿéJÿÿÿfDè;ÉýÿéNÿÿÿfDè+ÉýÿéRÿÿÿfDèËËýÿÆ@$éÿöÿÿfL‰ïèÉýÿL‹l$0é
õÿÿfDèóÈýÿéíôÿÿfDèãÈýÿéÅôÿÿfDèÓÈýÿéôÿÿfDèsËýÿÆ@$éqôÿÿf.„H‹1ŸL‰öH‹8èÎÈýÿH E1öE1äÇ£åH‰åÇŽåéaþÿÿH‹=¹ÛHÍH5ÍèöbþÿI‰ÅL‰l$@M…í…pòÿÿHGE1öE1äÇJå	H‰7åÇ5åYéþÿÿ„H‹‘žL‰öH‹8è.ÈýÿHE1öÇåH‰óäÇñäŸHƒmA¼…¸ýÿÿH‰ïèÀÇýÿé«ýÿÿL‰êL‰öH‰ïèjÌýÿI‰ÅH…À…^óÿÿfDHšE1öE1äE1íH‰‘äÇ“ä	Ç…äléXýÿÿ¨€…b
L‰æL‰ÇèÕeþÿI‰ÄéWúÿÿHT$PL‰áH‰ïL`H5ÔyèOZþÿ…À‰GüÿÿH)¾xÇ-äØH‰äÇäxéžöÿÿH‹|$0E1íE1äHïH‰ïãÇñã	Çãã[H…ÿ…¼üÿÿM‰õM‰ôéÏüÿÿ€L‰÷è(eþÿI‰Çé–ôÿÿH‹=éÙè´`þÿI‰Åé9þÿÿ@èÓËýÿI‰ÆéÉðÿÿL‰$èoÉýÿL‹$H…À„*HÇD$0H‹|$@H…ÿtHƒ/„ûÿÿHÇD$@M‰ÖH;ÇDãH‰1ãÇ/ã­é9þÿÿfHE1öE1äÇã	H‰ãÇã^éÓûÿÿHâ
E1íE1öÇåâ	H‰ÒâÇÐâcé·ûÿÿL‰$èWÈýÿÆ@$L‹$éƒöÿÿf.„H‹=ÙØH*ÊH5+Êè`þÿI‰ÅM…í…EðÿÿHl
E1öE1äÇoâ	H‰\âÇZâeé-ûÿÿDL‹HL‹PéÍøÿÿH‰×èÄýÿI‰ÆH…ÀŽ4úÿÿH‹5ÕH‰ïH‹VèAÈýÿH…À„«ýÿÿH‰D$PIFÿéúÿÿf.„è+ÊýÿI‰ÆéÑïÿÿHÒM‰ìE1íÇÕá	H‰ÂáÇÀágé“úÿÿH‹=é×è´^þÿI‰Åéÿÿÿ@H‹t$ ºL‰÷èV\þÿI‰ÇédòÿÿfDHƒEé&öÿÿfDL‹t$8I‹FH;š„ÀH;ëš…âI‹N‹Qö„ÒE1ÿƒâ L‹auM‹~èÀÆýÿ‹H QH‹
š‰P ;	H‰$1öL‰ÿAÿÔI‰Äè”ÆýÿH‹$‹p Vÿ‰P ‹HÎ=ÈÁø@9ÊŒãM…ä„ïH‹|$@L‰d$0H…ÿ„ÖöÿÿHƒ/„ÇHÇD$@é¾öÿÿf„HƒH‰|$8é•õÿÿfL‰çèhÃýÿé»öÿÿè[ÃýÿL‹d$0é•öÿÿ¨€„˜üÿÿL‹R1ÿ¨ uI‹~¨…8
H‹t$ ºAÿÒI‰ÇéñÿÿDH=áéH‰$èxÅýÿH‹$…À„”ñÿÿ@Hƒm…UøÿÿH‰ïèåÂýÿéHøÿÿèÛÅýÿH…ÀuÞH‹˜H5¸éH‹8è€ÃýÿëÆfDè³ÂýÿL‹d$@M…ä„MþÿÿL‹D$8éõÿÿL‹¸€L‹5²ßM…ÿ„?L‰$è(ÅýÿL‹$‹H QH‹
o˜‰P ;:H‰L$1ÒL‰öL‰×L‰$Aÿ×éøòÿÿH=	éH‰L$(H‰4$è›ÄýÿH‹4$H‹L$(…À„Êïÿÿf.„E1ÿéþïÿÿ„èûÄýÿI‰ÇH…ÀuãH‹œ—H5ÕèH‹8èÂýÿéÎïÿÿ„èËÁýÿL‹d$0éäôÿÿH=‰èH‰$è ÄýÿH‹$…À„íÿÿéúÿÿ€è“ÄýÿH…À…òùÿÿH‹3—H5lèH‹8è4Âýÿé×ùÿÿ€ècÁýÿézõÿÿfDL‰ÿèPÁýÿévõÿÿL‰ïè@ÁýÿévõÿÿèãÃýÿÆ@$é+ôÿÿ1ÒL‰îH‰ïèÝÅýÿHƒmI‰ÅuH‰ïèÁýÿM…í…ÃõÿÿH	E1öE1äE1íH‰øÝÇúÝÇìÝ8é¿öÿÿ€èsÃýÿÆ@$éjõÿÿf.„L‰×1Ò1öL‰$è€XþÿL‹$I‰ÇM‰Öé‡îÿÿH‹—L‰þH‹8è®ÀýÿH€E1öE1äE1íH‰wÝÇyÝÇkݾé>öÿÿfDH‹ɖL‰þH‹8èfÀýÿHÇD$8H/Ç8ÝH‰%ÝÇ#ÝÀHƒm„NE1öE1äE1íéâõÿÿfH=¹æH‰L$L‰$èKÂýÿL‹$H‹L$…À„nðÿÿécùÿÿèÀÂýÿH…À„¢HÇD$0H‹|$@H…ÿtHƒ/„ÊýÿÿHÇD$@H“ÇœÜH‰‰ÜLJÜÎé_ÿÿÿH‹|$8HgÇpÜH‰]ÜÇ[ÜäHÇD$0H…ÿt
Hƒ/„qHÇD$8H‹|$@H…ÿt
Hƒ/„8‹$ÜH‹
ÜL‰$H=Îú‹5ÜL‰T$HÇD$@è=fþÿHL$@HT$8L‰ÿHt$0èÖEþÿL‹$L‹T$…ÀˆH‹L$@H‹T$81ÀL‰$H‹t$0¿L‰T$èqÄýÿL‹$L‹T$H…À„±1ÒH‰ÆH‰ïL‰T$L‰L$H‰$è4@þÿHƒmL‹$L‹L$L‹T$I‰Ã„áIƒ(„®M…Û„çL;n””ÀL;<””ÂÂ…«M9ë„¢L‰ßL‰T$L‰L$L‰$èŠÁýÿL‹$L‹L$L‹T$‰ÅIƒ+„…í‰ÚHÚÇãÚH‰ÐÚÇÎÚI‹‡H‹8L‹hL‰0H‹hL‰HL‰PH…ÿt
Hƒ/„ãM…ítIƒm„ÝH…í„qýÿÿHƒm…fýÿÿH‰ïE1öE1íèX½ýÿéCóÿÿL‹ €L‹=mÚM…ä„Yèç¿ýÿH‹
8“H‰‹@ ƒÀ‰B ;õH‰$1ÒL‰þL‰÷AÿÔI‰Ä赿ýÿH‹$H‰‹@ ƒè‰B ‹J΁úÈÁúR9ȍùÿÿ腿ýÿÆ@$éùÿÿHt$HºL‰ÇèšTþÿI‰Äé¼ïÿÿH‰ïE1öE1äE1í衼ýÿéŒòÿÿH=eãH‰$èü¾ýÿH‹$…À„EïÿÿéÄüÿÿH=DãH‰$è۾ýÿH‹$…À„ÒðÿÿHƒm…UûÿÿH‰ïèL¼ýÿéHûÿÿèB¿ýÿH…ÀuÞH‹æ‘H5ãH‹8èç¼ýÿëÆH'Ç0ÙH‰ÙÇÙøéHþÿÿH‹|$0…í„H…ÿt
Hƒ/„WHÇD$0H‹|$8H…ÿt
Hƒ/„VHÇD$8H‹|$@H…ÿt
Hƒ/„I‹¿L‰ÑL‰ÊL‰öHÇD$@L‰íèçJþÿé{åÿÿ1Ò1öL‰÷èVSþÿI‰ÄéxîÿÿIƒ+¶è…cÿÿÿL‰ßL‰T$L‰$èP»ýÿL‹T$L‹$ébýÿÿL‰öL‰×1ÒL‰$èñ¿ýÿL‹$I‰ÇM‰ÖééÿÿH=ëáH‰L$L‰$è}½ýÿL‹$H‹L$…À„ øÿÿé•ôÿÿH=ÀáH‰$èW½ýÿH‹$…À„ãöÿÿéûÿÿL‰T$L‰$èȺýÿL‹T$L‹$é¬ûÿÿ赺ýÿL‹T$L‹$é|ûÿÿ袺ýÿéýÿÿL‰ï蕺ýÿéýÿÿL‰ÇL‰T$L‰L$L‰$èzºýÿL‹T$L‹L$L‹$é)üÿÿH‰ïL‰T$L‰L$H‰D$èPºýÿL‹T$L‹L$L‹\$L‹$éðûÿÿH‹áH5áL‰$H‹8è޺ýÿH‹|$@L‹$HÇD$0H…ÿ…´óÿÿéÂóÿÿL‹J1ÿ¨ uI‹xHt$H¨…:ºAÿÑI‰ÄéÝìÿÿH‹T$8H‹\$@L‰T$L‰L$H‰|$H‰$èa¼ýÿH‹|$H‹$L‹XXL‹h`H‹hhL‹L$H‰xXM…ÛH‰P`L‹T$H‰Xht
Iƒ+„qM…ítIƒm„€H…ítHƒm„HÇD$0HPHÇD$8HÇD$@H‰>ÖÇ@ÖÇ2Ö
é_ûÿÿH‹¾ŽH5÷ßH‹8迹ýÿéCùÿÿH‹t$ 1ɺAÿÒI‰ÇéÙæÿÿ1ÒL‰þL‰÷薽ýÿI‰ÄéØëÿÿHÐÇÙÕH‰ÆÕÇÄÕüéñúÿÿL‰T$L‰$虸ýÿL‹T$L‹$éãüÿÿL‰T$L‰$è}¸ýÿL‹T$L‹$éüÿÿL‰T$L‰$èa¸ýÿL‹T$L‹$éŽüÿÿè޸ýÿHPÇYÕH‰FÕÇDÕéqúÿÿH=ðÞH‰$臺ýÿH‹$…À„ïúÿÿéOøÿÿL‰ßL‰T$L‰$èõ·ýÿL‹T$L‹$épþÿÿL‰ïL‰T$L‰$èַýÿL‹T$L‹$éaþÿÿH‰ïL‰T$L‰$跷ýÿL‹T$L‹$éRþÿÿ1ɺAÿÑI‰Äé¡êÿÿ€óúAWAVAUATUSH‰óHì˜L‹fH‰|$dH‹%(H‰„$ˆ1ÀH‹HÇD$pHÇD$xH‰„$€H…Ò…ZIƒü„˜Iƒü…ÆH‹F(H‰D$L‹c H‹kH‹VÔ¿HÇD$PHÇD$XHÇD$`H‹˜(ÿhE1É1É1ÒH‰ÆA¸L‰çÿÓI‰ÆH…À„ˆ
Hƒ8„nH‹÷Ó¿A‹^L‹¸(ÿhE1É1É1ÒH‰ÆA¸H‰ïAÿ×I‰ÅH…À„Hƒ8„5…ÛuA‹E‰D$(…À„ÙH‹5JɺL‰÷ÿäÒƒøÿ„ãH‹5LʺL‰ïÿÆÒƒøÿ„ÝH‹D$H;AŒ„H‹<ÓH‹
e½H9H…H‹L½H…Û„HƒH‹CH‹5DÍH‰ßH‹€H…À„YÿÐH‰ÇH‹H‰|$PHPÿH…ÿ„H‰H…Ò„#
H‹GL‹%@‹E1ÿ1íA¸L9à„\H‹
µ‹H‰L$(H9È„GH;Œ„’L‰Çèê·ýÿH‰D$XH‰ÃH…À„ùH…ítH‰hH‹L$IcÇH‹l$PAƒÇHƒÀMcÿHƒH‰LÃH‹p‹HƒJ‰DûH‹EL‹¸€M…ÿ„K薷ýÿ‹H QH‹
኉P ; H‰L$1ÒH‰ÞH‰ïAÿ×I‰Çèf·ýÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒM…ÿ„Í H‹|$XHƒ/„æHÇD$XH‹|$PHƒ/„VIƒ?L‰|$P„/HÇD$P1íH‹ÑA‹wI‹ ÿðL‰éL‰òL‰þL‹oÑH‰D$¿1ÀAÿH‰ÃH…À„óúH;-ŠH‰D$X…ŠH…ítHƒm„:H‹D$H‹5ËHÇD$XH‹¨èH‰t$ H‹UH‰×H‰T$0èH·ýÿH‹t$ H…ÀH‰D$„ÝH‹@H‹T$0H‹€H…À„tH‹|$H‰îÿÐH‰D$H…À„»H‹D$H‹5ÀÊH‹¨èH‰t$ H‹UH‰×H‰T$0è۶ýÿH‹t$ H…ÀH‰Ç„RH‹@H‹T$0H‹ˆH…É„9H‰îÿÑH‰D$PH‰ÇH…À„;H‹@HÇD$`L9à…õL‹gL‰d$`M…ä„ãL‹OIƒ$IƒL‰L$PHƒ/„GL‰d$hI‹AH;D$(„H;L‰…&I‹Q‹B¨„* H‹jE1Ҩ „hL‰T$ èµýÿL‹T$ ‹H QH‹
dˆ‰P ;8H‰L$ L‰æL‰×ÿÕI‰Äèì´ýÿ‹H QÿH‹L$ ‰P ‹HÎ=ÈŽ9ÊŒÖM…ä„Ù H‹|$`L‰d$XH…ÿt
Hƒ/„ôHÇD$`M…ä„H‹|$PHƒ/„#HÇD$PIƒ,$„ÿHÇD$XE1äèþµýÿH‰D$ H‹D$HH`HƒÀ Hƒ|$H‰ÎH‰ÁHƒ8ŽûL‰t$I‰ÎL‰l$(M‰åI‰ôL‰|$0I‰ßH‰ÃDI‹‡0L‰âL‰÷H‹¨0I‹‡@H‹°0I‹‡8H‹€0H‹6òè€H‰EA‹GIƒG …À~jƒèI¿0LÃëH‹(Hƒ@(H0HƒÇL9×t;H‹‹PHƒ@…ÒtՀ¸8„°H‹(HƒÇH‹R8HcR H0L9×uÅIƒÅL9l$…:ÿÿÿL‰ûL‹t$L‹l$(L‹|$0H‹|$ 辯ýÿH‹D$L‹%r¾H‹@H‹¨€H…í„.è	³ýÿ‹H QH‹
T†‰P ;H‰L$1ÒL‰æH‹|$ÿÕI‰Äèزýÿ‹H QÿH‹L$‰P ‹HÎ=ÈŽb
9ÊŒrM…ä„H‹L$H‹H‰D$HƒèH‰„ßIƒ,$„4Iƒ?L‰ý„©Hƒ+„µIƒ.„¾Iƒm…ßL‰ï蝯ýÿéÒ„H‰×èx®ýÿH‹5©ÃH‰ïI‰ÅH‹VIƒí讲ýÿH‰D$pH…À…¾L‹c@IƒüH
•÷H—÷AÀHMÈE¶ÀIƒÀHƒìH‹+…HýúH5MÛATL
MøH‹81Àèú³ýÿH÷¾Š5ÇÌœÇÌŠ5H‰óËXZH
ãöºœH=öêE1ÿè&VþÿH‹„$ˆdH3%(…*HĘL‰ø[]A\A]A^A_Ãf.„H‹DH‰D$éj÷ÿÿ€L‰çèð±ýÿf.8×òD$‹ŒH‹Eö€«„•#H‹EH‰D$ HƒÀHƒø‡SHÅüHc‚HÐ>ÿà‹EH‰D$ „H‹=	ÁòD$¾ÿ¨Êƒøÿ„?fïÀH‹=¾òH*D$ ÿ‚ʃøÿ„¹H‹D$H;õƒ„7H‹ðÊH‹ù´H9X…H‹=à´H…ÿ„HƒH‰|$PH‹GH‹5óÄH‹€H…À„ãÿÐH‰ÃH‰\$XH‹|$PH…Û„óHƒ/„YH‹CL‹%ö‚¿HÇD$PL9à„+H;hƒ„¢H;Äu訯ýÿH‰ÃH…À„™H‹D$PH…Àt
H‰CHÇD$PHcD$(H‹L$H‹l$XH‰ÆHƒVH‰LÃH‹(ƒHcÒHƒH‰DÓH‹EL‹¸€M…ÿ„·èK¯ýÿ‹H QH‹
–‚‰P ;…H‰L$1ÒH‰ïH‰ÞAÿ×H‰Åè¯ýÿ‹H QÿH‹L$‰P ‹=ȏÁø@9ÂŒzH…í„ßH‰l$`Hƒ+…-H‰ßè"¬ýÿé Dƒúu3H‹H0H‹0H;ˆ0“HƒÁH0H‰H0H‰0éóúÿÿ…ÒˆëúÿÿHcÊH‹°0HÈë.„H+±(ƒêHÇA(HƒéH‰°0ƒúÿ„­úÿÿL‹A(L;(}ÍHcÒIƒÀHÐH²(L‰B(H‰°0é~úÿÿH(H+0HÇ@0Hƒ@(H‰0éTúÿÿH‰Çè8«ýÿé…ôÿÿH‰Çè(«ýÿé¾ôÿÿ1íL‰ÿI‰ïè«ýÿH…ÛtHƒ+uH‰ßè«ýÿM…ötIƒ.uL‰÷èíªýÿM…í…4ûÿÿéüÿÿ€H‰ÕIƒü„‹yM…ä„0ûÿÿIƒü…×)H‹FH‰×H‰D$p蕩ýÿI‰ÅH‹5£½H‰ïH‹VèϭýÿH‰D$xH…À„ÍIƒíM…폴H‹„$€H‹l$pL‹d$xH‰D$éKóÿÿ„Iƒü…öH‹F(H‰×H‰„$€H‹F H‰D$xH‹FH‰D$pè©ýÿI‰ÅM…í~¤HT$pL‰áH‰ïLßõH5O`è=þÿ…Ày‚Høñ¾x5ÇüÆœH‰éÆÇçÆx5ééúÿÿf.„H‹O‹Q‰Ѓà=€…WôÿÿH‹D$H‰l$pE1ÉH‰D$xH‹øH‰„$€¸L)øHtÄpH‹Aö uL‹Oƒâ…ë"L‰ÂL‰ÏÿÐI‰ÇM…ÿ„®"H…í„ÛôÿÿHƒm…ÐôÿÿH‰ïè5©ýÿéÃôÿÿH2ñE1ÿ1ÛE1íH‰*ÆH‹|$PÇ'ÆûÇÆÚ5H…ÿtHƒ/t]H‹|$XH…ÿtHƒ/tUH‹|$`H…ÿtHƒ/tUH‹
ÞÅ‹äÅH=éä‹5ÓÅèPþÿM…ÿ„šýÿÿIƒ/„ƒýÿÿE1ÿéˆýÿÿ蓨ýÿ뜐苨ýÿë¤f„è{¨ýÿë¤f„H‰ßèh¨ýÿH‹|$PéËòÿÿfDHZðH‹|$PE1ÿ1ÛH‰PÅÇRÅýÇDÅû5é'ÿÿÿ€L‰ÿè¨ýÿL‹|$Pé¿óÿÿfDè¨ýÿé óÿÿfDH‹
AÅL‰êL‰ö1?ÿ‘H‰ÃH…À„YóúH‰D$PH;D$…ÆH‹÷ÄH‹
¯HÇD$PH9H…BL‹=î®M…ÿ„‘IƒI‹GH‹5ö¾L‰ÿH‹€H…À„­ÿÐI‹H‰D$XHQÿH…À„iI‰H…Ò„€H‹CH‹5
¸H‰ßH‹€H…À„ÿÐI‰ÇM…ÿ„
H‹|$XL‹%È|1É1íA¹H‹GL9à„fH‹5:}H‰t$(H9ð„H;}„L‰ωL$èk©ýÿ‹L$H…ÀH‰D$`H‰Æ„ÉH…ítH‰hHcÁH‹}H‹l$XHƒÀL‰|ƍAH˜HƒH‰TÆH‹EL‹¸€M…ÿ„­H‰t$è©ýÿH‹t$‹H QH‹
_|‰P ;CH‰L$1ÒH‰ïAÿ×H‰Åèç¨ýÿ‹H QÿH‹L$‰P ‹=ÈŽìƒè29ÂŒH…í„0H‰l$PH‹|$`Hƒ/„éHÇD$`H‹|$XHƒ/„8L‹|$PIƒ?L‰|$X„HÇD$PH‰ÝHÇD$XéjñÿÿfDÁø@é“õÿÿDH‹S‹B‰Cፁù€…søÿÿH‹L$PH‹t$E1ÉL‹RH‰L$pH‹
Ë{H‰t$xHct$(H‰Œ$€¹H)ñHtÌp¨ uL‹K¨…ºH‰úL‰ÏAÿÒH‰ÃH‰\$`H‹|$PH…Û„qH…ÿt
Hƒ/„òHÇD$PH‹|$XHƒ/„>L‹|$`Iƒ?L‰|$X„H‹#ÂA‹wHÇD$`HÇD$XI‹ ÿðH‹5ü»H‰D$I‹GH‰t$(H‰D$8H‹D$H‹˜èH‹SH‰×H‰T$0è¨ýÿH‹t$(H…ÀH‰Å„ÑH‹@H‹T$0H‹€H…À„
H‰ïH‰ÞÿÐH‰ÅH…À„³H‹D$H‹5š»H‹˜èH‰t$(H‹SH‰×H‰T$0赧ýÿH‹t$(H…ÀH‰Ç„PH‹@H‹T$0H‹ˆH…É„c
H‰ÞÿÑH‰D$`H‰ÇH…À„9H‹@L9à…XL‹gM…ä„KL‹GIƒ$IƒL‰D$`Hƒ/„'L‰ÇL‰æè4ÌþÿH‰D$XH‰ÇIƒ,$„)
H…ÿ„øL‹D$`Iƒ(„‰
HÇD$`Hƒ/„f
HÇD$X蘧ýÿHƒ|$H‰D$(~kH‹D$H‹\$8L‰t$H‹L$L‰l$L``HƒÀ L‹l$ H‰l$ HËH‰ÝI‰ÆH‰ËòD$L‰âL‰îL‰÷HƒÅèÈqH‰EøH9ëußL‹t$L‹l$H‹l$ H‹|$(è¢ýÿH‹EL‹%»°H‹˜€H…Û„(èV¥ýÿ‹H QH‹
¡x‰P ;ÛH‰L$1ÒL‰æH‰ïÿÓI‰Äè'¥ýÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒ/M…ä„mHƒm„Ó
Iƒ,$„ 
Iƒ?…iòÿÿL‰ÿè¢ýÿé\òÿÿf„M‹Qéïÿÿ€Áø@é×ïÿÿD‹E÷ØH˜H‰D$ Hƒ|$ ÿ…ÈóÿÿèӤýÿHÇD$ ÿÿÿÿH…À„±óÿÿHÃéH‹|$PE1ÿ1ÛH‰¹¾Ç»¾Ç­¾ 7鐸ÿÿ‹E‹UHÁàH	ÐH÷ØH‰D$ ë•f„‹E‹UHÁàH	ÐH‰D$ éIóÿÿf„ƒè2éþôÿÿ„èë£ýÿÆ@$éïÿÿfH‹l$1ÒL‰æH‰ïèޥýÿI‰ÄH‹EH‰D$HƒèH‰Eu„H‹|$èö ýÿM…ä…ñÿÿHïèH‹|$PÇó½
H‰à½Ç޽k7éÁ÷ÿÿH‹=	´èÔ:þÿH‰ÃH…Û…ÑêÿÿHªèH‹|$PE1ÿÇ«½H‰˜½Ç–½C6éy÷ÿÿH
Ýéº9¾-RÇz½9H=…ìH‰
`½Ç^½-Rè¡GþÿHCèHÇD$PH‰:½Ç<½Ç.½6E1ÿ1Ûé÷ÿÿ@H‹D$Hƒé–ìÿÿf.„H‹|$PèFEþÿI‰ÄéÑíÿÿfDHƒH‰|$PéÓìÿÿf.„L‰ç踟ýÿéôíÿÿ諟ýÿL‹d$XéÎíÿÿH‰ï蘟ýÿé¹ëÿÿ苟ýÿéëÿÿfDè+¢ýÿÆ@$éäêÿÿfèkŸýÿL‹d$`M…ä„mÿÿÿL‹L$PéœìÿÿHRçH‹|$PE1ÿ1ÛH‰H¼ÇJ¼Ç<¼&6éöÿÿ€H‹D$L‰ÂH‰l$pH‰D$xH‹guH‰„$€¸L)øHtÄpèÅ6þÿI‰ÇH…À…ˆõÿÿHÛæ1ÛÇâ»H‰ϻÇͻW6DH…í„ÚH‹EHPÿH‰UH…ÒtH‹|$PE1ÿé‰õÿÿf„H‰ïèxžýÿëàfDH‹|$`èÆCþÿH‰D$XH‰ÇéØúÿÿf„H
šæA¸éïÿÿfDH:æH‹|$PE1ÿ1ÛH‰0»Ç2»Ç$»/6éõÿÿ€èûýÿL‹d$XéýëÿÿèëýÿH‹\$Xé˜ðÿÿH‰ïèé ýÿH‰D$ éëûÿÿ€L‰ÿèýÿL‹|$XéÜøÿÿfD諝ýÿ鏸ÿÿfDL‰ç蘝ýÿé¿íÿÿè; ýÿÆ@$é€íÿÿfH‹D$H‹ĴL‹ èH‰ÞM‹|$L‰ÿèý ýÿH‰ÅH…À„!H‹@H‹€H…À„<H‰ïL‰úL‰æÿÐH‰ÅH…À„H‹D$H‹‚´L‹ èH‰ÞM‹|$L‰ÿ裠ýÿH‰ÇH…À„sH‹@H‹ˆH…É„œL‰úL‰æÿÑH‰D$PH‰ÇH…À„aH‹@HÇD$`H;nr…WH‹wH‰t$`H…ö„EL‹GHƒIƒL‰D$PHƒ/„R
L‰ÇèÅþÿH‰ÇL‹D$`H‰|$XM…Àt
Iƒ(„U
HÇD$`H…ÿ„ L‹D$PIƒ(„HÇD$PHƒ/„òHÇD$Xè=›ýÿI‰ÄH‹€ëH‰ÐL‹M…Àt
L;6r…7
H‹PH…ÒußL‹HH‹XM…ÀtIƒM…ÉtIƒH…ÛtHƒH‹D$H‹t$ L‰L$8òD$L‰D$0HP`Hx è…jH‰Ç譝ýÿL‹D$0L‹L$8H…ÀH‰D$XI‰Ç„ZI‹„$HÇD$XH‹8L‹PL‰L‹`L‰HH‰XH…ÿt
Hƒ/„ÿ
M…Òt
Iƒ*„M…ätIƒ,$„H‹5&©1ÒH‰ïèìþÿHƒmH‰Ã„(H…Û„åHƒ+…>ëÿÿH‰ßèóšýÿé1ëÿÿfDH‹=1®HB¢H5C¢èn5þÿH‰ÃéúÿÿfDH‹5I«H‰ïH‹VèíýÿH…À„ŒðÿÿH‰„$€IƒíévðÿÿH’âH‰Ý1ÛÇ–·H‰ƒ·Ç·E6éÅûÿÿ@諟ýÿH‰ÇéŸäÿÿHƒEéöÿÿfDH‹F H‰×H‰D$xH‹FH‰D$pè™ýÿI‰Åé¡ïÿÿfDH‹oH…í„—äÿÿH‹WHƒEHƒH‰T$PHƒ/„Ò	H‹BH‰×A¸A¿écäÿÿ€…nëÿÿèŜýÿH…À„`ëÿÿH¾áH‹|$PE1ÿ1ÛH‰´¶Ç¶¶Ǩ¶–7é‹ðÿÿHƒH‰|$`é©õÿÿf.„H
ÔâH=Àåº<H‰ë¾\RH‰
^¶Ç`¶<ÇR¶\Rè•@þÿH7áH‹|$PHÇD$XH‰)¶Ç+¶Ƕñ6H…ÿ…ðÿÿéðÿÿ€èë˜ýÿéõÿÿfDL‰ÇèؘýÿH‹|$XéeõÿÿfDès›ýÿÆ@$éxìÿÿf.„H²àH‹|$PE1ÿ1ÛH‰¨µÇªµÇœµª7éïÿÿ€ès˜ýÿL‹D$`éÊôÿÿf„H‹1µH…Ò„’H‹xH9ú„YäÿÿH‹XH…É„ØH‹qH…ö~1À„H;TÁ„+äÿÿHƒÀH9ÆuìH‹nH‹JH5ÔH‹WH‹81ÀèܜýÿHîßH‹|$PH‰ëÇï´H‰ܴÇڴó6é½îÿÿDH‹9nH‹8èٗýÿH«ßH‹|$Pǯ´
H‰œ´Çš´ÿ6é}îÿÿDH‹D$PHcT$(H‰D$pH‹D$H‰D$xH‹ÀmH‰„$€¸H)ÐH‰úH‰ßHtÄpè/þÿH‰D$`H‰ÃH…À„:H‹|$PH…ÿ…	òÿÿéòÿÿ@HßH‹|$PE1ÿ1ÛH‰´Ç
´Çü³³7éßíÿÿ€H‹YmH‹8èù–ýÿHÇD$PHÂÞÇ˳
H‰¸³Ç¶³7H‹L$H‹H‰D$HƒèH‰„_H‹|$Pézíÿÿf.„L‰æL‰Ïèå4þÿI‰ÄéPäÿÿDL‰çèP–ýÿH‹|$XéÅòÿÿfDHBÞÇK³H‰8³Ç6³e6éi÷ÿÿH=â¼H‰L$(L‰T$ ès˜ýÿL‹T$ H‹L$(…À„ ãÿÿHÇD$XH‹|$`H…ÿtHƒ/„Ô÷ÿÿHÇD$`HÍÝÇֲ
H‰òÇr7éÿÿÿ@1ÒH‰ÞH‰ïèSšýÿI‰ÇH…À…áÿÿ€H‚ÝH‹|$PE1ÿ1ÛH‰x²Çz²Çl²p6éOìÿÿ€H‹G‹@ƒà=€…\îÿÿH‹”kHcÑH‰l$pL‰|$xH‰„$€¸H)ÐL‰ÊHtÄpè¢þÿH‰D$PH…À„·H…ítHƒm„ê
Iƒ/…ïîÿÿL‰ÿèҔýÿéâîÿÿDL‰ÿèýÿésíÿÿH=»H‰L$è—ýÿH‹L$…À„ÌßÿÿéÿÿÿDL‰ç舔ýÿéSòÿÿ1ÒL‰æH‰ïè6™ýÿHƒmI‰Äu@H‰ïè`”ýÿM…ä…òÿÿHYÜH‹|$P1ÛÇ[±'H‰H±ÇF±9é)ëÿÿf„è˖ýÿÆ@$éÃñÿÿfH‹=Y§HJ›H5K›è–.þÿH‰ÇH‰|$PH…ÿ…_æÿÿHçÛÇð°#H‰ݰÇ۰m8é¨óÿÿfD賖ýÿH…À…*þÿÿH‹SiH5ŒºH‹8èT”ýÿéþÿÿ€èӘýÿH‰ÃéæÿÿH‹=fèŒ-þÿH‰Çéqÿÿÿ@HbÛE1ÿÇh°#H‰U°ÇS°o8é1úÿÿfDÁø@éíÿÿH‹|$è“ýÿé’üÿÿHt$hºL‰Ïèä*þÿI‰ÄéïàÿÿH‹SH‰T$PH…Ò„ÃåÿÿH‹KHƒHƒH‰L$XHƒ+„|ÇD$(H‹AH‰˿éåÿÿL‰ÿ讒ýÿL‹|$XéÜìÿÿ蟒ýÿé¾ìÿÿH‹iH‹8軒ýÿHÚH‹|$P1ÛǏ¯'H‰|¯Çz¯¿8é]éÿÿ¨€„åûÿÿL‹R1ÿ¨ uI‹yHt$h¨…wºAÿÒI‰ÄéàÿÿH=ó¸H‰L$艔ýÿH‹L$…À„ËáÿÿH‹L$H‹H‰D$HƒèH‰…ñÿÿH‹|$èè‘ýÿéöðÿÿèޔýÿH…ÀuÍH‹‚gH5»¸H‹8胒ýÿëµL‹HH‹XéÒõÿÿH‹5hH‹8èՑýÿHÇD$`HžÙǧ®'H‰”®Ç’®Á8Hƒm„fH‹|$P1ÛécèÿÿHeÙH‹|$PE1ÿÇf®#H‰S®ÇQ®8é4èÿÿè/”ýÿH…À…5ûÿÿH‹ÏfH5¸H‹8èБýÿéûÿÿè‘ýÿé
ëÿÿHƒEéÑóÿÿ袓ýÿÆ@$éØêÿÿ1ÒH‰ÞH‰ï蜕ýÿH‰D$`H…À…šäÿÿHÐØ1íÇ׭#H‰ĭH‹Ç¿­š8HPÿH‰H…ÒuH‰ß蓐ýÿH‹|$PH‰ëE1ÿéƒçÿÿH‚ØÇ‹­'H‰x­Çv­Ï8éßþÿÿH‹|$Pè¯5þÿH‰ÇéÏóÿÿHƒH‰|$Pésóÿÿè4ýÿéôÿÿL‰Çè'ýÿH‹|$XéßóÿÿèýÿH‹|$PA¸A¿H‹GéŠÚÿÿH=ǶH‰L$è]’ýÿH‹L$…À„]ãÿÿHÇD$`éÿÿÿH‹3fHcÑH‰l$pL‰|$xH‰„$€¸H)ÐL‰ÊHtÄpè'þÿH‰D$PH…À…ŸúÿÿH•×Çž¬H‰‹¬Ç‰¬°6Iƒ/…·ðÿÿL‰ÿè_ýÿéªðÿÿèU’ýÿH…À…lÿÿÿH‹õdH5.¶H‹8èöýÿéQÿÿÿè,ýÿH‹t$`H…ö„ÅþÿÿL‹D$Pé‘òÿÿèýÿéêÿÿL‰ÇèýÿH‹|$Xé™òÿÿH‹ɫH…Ò„	H‹xH9ú„çÿÿH‹XH…É„Þ
H‹qH…ö~1ÀH;TÁ„÷æÿÿHƒÀH9ÆuìH‹¥dH‹JH5¢ÊH‹WH‹81Àè|“ýÿHŽÖH‹|$PE1ÿ1ÛH‰„«Ç†«Çx«6é[åÿÿH‹=¤¡H¥•H5¦•èá(þÿI‰ÇM…ÿ…¬æÿÿH7ÖH‹|$PÇ;«H‰(«Ç&«š6é	åÿÿH‰ïèŽýÿéüÿÿH‹=E¡è(þÿI‰Çë­HíÕH‰ÝL‰ûÇðªH‰ݪÇ۪œ6éýÿÿè	“ýÿéKæÿÿHƒìH‹©cH
êÕH5˹jL
ËÖA¸H^ÙH‹81Àèk’ýÿH}ÕY^H‰{ª¾n5ÇxªœÇjªn5élÞÿÿL‰T$èCýÿL‹T$éíñÿÿL‰×è1ýÿéïñÿÿL‰çè$ýÿéòñÿÿèj’ýÿI‰ÇéíåÿÿHÕH‹|$PǪH‰ªÇªŸ6éæãÿÿH‰ïèތýÿéËñÿÿèԏýÿH…À„Hƒm…iøÿÿH‰ï踌ýÿé\øÿÿH=|³H‰L$èýÿH‹L$…À„êÿÿëÈH‹oH…턍åÿÿH‹WHƒEHƒH‰T$XHƒ/„yH‹BH‰×A¹¹éZåÿÿH‰ßèKŒýÿH‹\$X¿ÇD$(H‹Cé	ßÿÿH‹±bH‰ÞH‹8èNŒýÿH ÔH‹|$PE1ÿ1ÛH‰©Ç©Ç
©È7éíâÿÿHïÓÇø¨H‰å¨Çã¨À6éUüÿÿ1ÒH‰ïè|ýÿH‰D$PH…À…«åÿÿH°ÓE1ÿǶ¨H‰£¨Ç¡¨Ë6éâÿÿH‹bH‰ÞH‹8袋ýÿHÇD$PHkÓÇt¨H‰a¨Ç_¨Ê7Hƒm„ÔH‹|$PE1ÿ1Ûé-âÿÿH/ÓÇ8¨H‰%¨Ç#¨Ø7ëÂH=ұH‰L$èhýÿH‹t$H‹L$…À„šäÿÿHÇD$Pé*ÿÿÿèӍýÿH…ÀuèH‹w`H5°±H‹8èx‹ýÿëÐH‹@`H…À„“H‹€€H…À„ƒH‰ïÿÐI‰ÄH…À„rH‹@H‹-å`H9è…@ö€«„ÓI‹D$H‰D$ HƒÀHƒø‡HðØHc‚HÐ>ÿàH‹@`H…À„	H‹€€H…À„óL‰ÿÿÐH‰ÇH…À„âH9h…²H‰|$0è+þÿH‹|$0H‰D$ Hƒ/uèã‰ýÿIƒ/u
L‰ÿèՉýÿDIƒ,$…áçÿÿL‰ç轉ýÿéÔçÿÿA‹D$÷ØH˜H‰D$ ëØA‹D$A‹T$HÁàH	ÐH÷ØH‰D$ ë½A‹D$A‹T$HÁàH	ÐH‰D$ Iƒ,$…\Ûÿÿë¥A‹D$H‰D$ ëçL‰çH5oÓè
þÿI‰ÄH…À„kçÿÿH‹@éÊþÿÿL‰çèBŒýÿH‰D$ éXÿÿÿH‹|$PH%ÑÇ.¦ H‰¦Ç¦ö7H…ÿt
Hƒ/„eHÇD$PH‹|$XH…ÿt
Hƒ/„\HÇD$XH‹|$`H…ÿt
Hƒ/„]H‹
e‹ǥH=ÌÄL‰L$8‹5±¥L‰D$0HÇD$`èæ/þÿHL$`HT$PL‰çHt$XèþÿL‹D$0L‹L$8…ÀˆlH‹L$`H‹T$P1?H‹t$XL‰L$8L‰D$0èŽýÿL‹D$0L‹L$8H…À„®1ÒH‰ÆH‰ïL‰L$@L‰D$8H‰D$0èÙ	þÿHƒmL‹T$0L‹D$8L‹L$@I‰Ã„ËIƒ*„–M…Û„;L;^@”ÅL;ß]”À@è…èL;ì]„ÛL‰ßL‰L$@L‰D$8L‰\$0è'‹ýÿL‹\$0L‹D$8L‹L$@‰ÅIƒ+„·…툯H‹t$X…í„âH…öt
Hƒ.„§HÇD$XH‹|$PH…ÿt
Hƒ/„:HÇD$PH‹|$`H…ÿt
Hƒ/„;I‹¼$H‰ÙL‰ÊL‰ÆHÇD$`è_þÿéCÙÿÿH‰ïèò†ýÿé	òÿÿHïÎH‹|$PE1ÿÇð£#H‰ݣÇۣ8é¾ÝÿÿH‹g\H5úÒH‹8èh‡ýÿé·îÿÿH¥Î1ÛǬ£H‰™£Ç—£_6éÊçÿÿ1ÉL‰ÂL‰ÏÿÐI‰ÇéÝÿÿH‰ïè`†ýÿéûÿÿH‰ø„H‹€H9„VÒÿÿH…ÀuëH;”\„DÒÿÿéîÿÿf„H"ÎH‹|$PE1ÿÇ#£H‰£Ç£L8éñÜÿÿèì…ýÿH‹|$XA¹¹H‹GéÚÞÿÿIƒ+@¶í…QþÿÿL‰ßL‰L$8L‰D$0賅ýÿL‹L$8L‹D$0é(þÿÿH¦ÍE1ÿǬ¢#H‰™¢Ç—¢‰8ézÜÿÿH‰ú1ÉL‰ÏAÿÒH‰Ãé?àÿÿH‹[H5£ÑH‹8è†ýÿéÀöÿÿL‰×L‰L$@L‰D$8L‰\$0è5…ýÿL‹L$@L‹D$8L‹\$0é?ýÿÿH‰ïL‰L$HL‰D$@H‰D$8è
…ýÿL‹L$HL‹D$@L‹\$8L‹T$0éýÿÿHóÌÇü¡H‰é¡Çç¡8I‹¼$H‰ÙL‰ÊL‰Æ1ÛèþÿH‹|$Pé­ÛÿÿH‹VZH5«H‹8èW…ýÿéÇ÷ÿÿè…ýÿ舄ýÿL‹L$8L‹D$0é‡ûÿÿL‰L$8L‰D$0èj„ýÿL‹L$8L‹D$0é†ûÿÿL‰L$8L‰D$0èL„ýÿL‹L$8L‹D$0é…ûÿÿH?ÌÇH¡H‰5¡Ç3¡¹6é¥ôÿÿè‡ýÿH…À…0âÿÿH‹ZH51ËH‹8貄ýÿéâÿÿH‰øH‹€H9„ÜÿÿH…ÀuëH;.Z„
Üÿÿéõÿÿ1ɺAÿÒI‰Äé¤ÑÿÿH‰÷L‰L$8L‰D$0蟃ýÿL‹L$8L‹D$0é8üÿÿH‹@`H…À„{H‹€€H…À„kL‰çÿÐI‰ÇH…À„ZH9h…ŽI‹Gö€«„
ùÿÿI‹GH‰D$ HƒÀHƒø‡™HéÑHc‚HÐ>ÿàA‹G÷ØH˜H‰D$ é*ùÿÿA‹GA‹WHÁàH	ÐH÷ØH‰D$ éùÿÿA‹GA‹WHÁàH	ÐH‰D$ éõøÿÿA‹GH‰D$ éçøÿÿH5ÞÌH‰ÇèûþÿI‰ÇH…À…WÿÿÿIƒ,$…ÌàÿÿL‰ç蜂ýÿé¿àÿÿL‰ÿ蟅ýÿH‰D$ 颸ÿÿH‹L$`H‹l$PL‰L$ L‰D$H‰t$H‰L$è…ýÿH‹L$H‹t$H‰êH‰Çè=þÿL‹D$L‹L$ HEÊHÇD$XHÇD$PHÇD$`H‰*ŸÇ,ŸÇŸ!8é2ýÿÿL‰L$8L‰D$0èòýÿL‹L$8L‹D$0é¨úÿÿL‰L$8L‰D$0èԁýÿL‹L$8L‹D$0é§úÿÿHÇÉÇОH‰½žÇ»ž8éÏüÿÿH ÉÇ©žH‰–žÇ”ž8é¨üÿÿHyÉÇ‚žH‰ožÇmž8éüÿÿH5dËè„þÿH‰ÇH…À…6÷ÿÿHÇD$ ÿÿÿÿéG÷ÿÿè%„ýÿH…ÀuèH‹WH5IÈH‹8èʁýÿëÐè„ýÿH…À…KþÿÿH‹óVH5#ÈH‹8褁ýÿé0þÿÿH
 ÉA¸é—ÑÿÿH‰Ýé2ðÿÿDóúAWI‰÷AVAUATUH‰ýH‰÷SHìˆdH‹%(H‰D$x1ÀHÇD$XHÇD$`HÇD$hèâƒýÿHƒøÿ„°I‹WH‹
-H‰ÃH9Ê„ÁH‹²XH…ö„©H‹~H…ÿŽÆ1Àë
HƒÀH9Ç„µH9LÆuìH‹‚H‹5ö“L‰ÿH…À„"-ÿÐH‰ÇH‰|$`H…ÿ„Ï,H‹(VH‹
ùUH9ÇH‰D$”ÀH9ÏH‰L$0”ÂÂ…›H;=ôU„ŽèAƒýÿA‰ąÀˆþH‹|$`éx@H‰ÐDH‹€H9È„dÿÿÿH…ÀuëH;
ÔU„RÿÿÿL‹¥èL‹-°–M‹t$L‰îL‰÷èð‚ýÿH‰D$H…À„ª4H‹@H‹€H…À„H‹|$L‰òL‰æÿÐH‰D$H…À„4L‹¥èL‹-m–M‹t$L‰îL‰÷蕂ýÿH‰ÇH…À„A5H‹@H‹ˆH…É„uL‰òL‰æÿÑH‰D$XH‰ÇH…À„/5H‹@HÇD$`H;`T…RH‹wH‰t$`H…ö„@L‹GHƒIƒL‰D$XHƒ/„} L‰Çè
§þÿH‰ÇL‹D$`H‰|$hM…Àt
Iƒ(„‘HÇD$`H…ÿ„ô5L‹D$XIƒ(„øHÇD$XHƒ/„ýHÇD$hè/}ýÿH‰D$ H‹€ëH‰ÐL‹ M…ät
L;%&T…@H‹PH…ÒußH‹HH‹@H‰L$H‰D$M…ätIƒ$H‹D$H…ÀtHƒH‹D$H…ÀtHƒHƒëH…ÛŽcL‹-[THƒÅ H‰ÞH‰ï蔆I‰ÆI‹GL9è„4H;=S„ÇH‹@hH…À„2(H‹@H…À„%(L‰öL‰ÿÿÐH‰D$hH…À„!I‹GL9è„*H;óR„­H‹@hH…À„`*H‹@H…À„S*H‰ÞL‰ÿÿÐH‰D$XH…À„
)I‹GH‹T$hL9è„+H‹@hH…À„öH‹@(H…À„éH‰ÞL‰ÿÿЅÀˆ))H‹|$hHƒ/„RI‹GH‹T$XHÇD$hL9è„wH‹@hH…À„Š&H‹@(H…À„}&L‰öL‰ÿÿÐA‰ÆE…öˆy+H‹|$XHƒ/„šHÇD$XHƒë…¨þÿÿM…ätIƒ,$„Ž@H‹\$H…ÛtH‹H‰D$ HƒèH‰„|@H‹\$H…ÛtH‹H‰D$HƒèH‰„C@H‹\$H‹5݉1ÒH‰ßè£ýýÿI‰ÅH‹H‰D$HƒèH‰„<@M…í„BIƒm„7@€H‹ÑQHƒé„H‹‚H‹5jL‰ÿH…À„¦ÿÐI‰ÅL‰l$XM…í„£H‹5̉L9îtgI‹EH;´Q…6)Iƒ}uAƒ}tH„L‹5AQH‹bQIƒI9ÆA”ÄH‰D$”ÁE¶äë4òcfA.EzÉuÇ€L‹5)QA¼¹IƒL‰t$Iƒm„bHÇD$XIƒ.„ÿI‹WE…䄊H‹‚H‹5,‹L‰ÿH…À„«2ÿÐI‰ÅM…í„q2L;l$A”ÄL;-ŠP”ÀDàu
L;-›P…ME¶äIƒm„I‹WE…ä„!H‹‚H‹5#’L‰ÿH…À„ÿÐI‰ÅM…í„ÙI‹EH‹5î‘L‰ïH‹€H…À„›ÿÐH‰ÇI‹EH‰|$XHPÿH…ÿ„PI‰UH…Ò„óH‹GL‹ ¨Aä„º8H‹GHƒø„ýHƒø„ÓH…À„bˆÅ3è}ýÿI‰ÄIƒüÿ„RL‰d$H‹|$X„Hƒ/„žI‹GH‹53‰L‰ÿHÇD$XH‹€H…À„7ÿÐI‰ÅL‰l$XM…í„4I‹EH;éO„H;äN„fH‹@hH…À„ñH‹@H…À„ä1öL‰ïÿÐI‰ÆL‹l$XM…ö„$Iƒm„áHÇD$XI‹Fö€«„Í9M‹fID$Hƒø‡¡HqÇHc‚HÐ>ÿàIƒ(u
L‰ÇE1äè‚xýÿfIƒ.„–I‹GH‹5ëL‰ÿH‹€H…À„øÿÐI‰ÅM…턺I‹EH‹5ÿL‰ïH‹€H…À„¼ÿÐH‰ÇI‹EH‰|$XHPÿH…ÿ„±I‰UH…Ò„$H‹Gö€«„‚:L‹wIVHƒú‡HÂÆHcHÂ>ÿâD‹wA÷ÞMcöIƒþÿ„|#H‹|$XHƒ/„åH‹æ”H‹
¯€HÇD$XH9H…äL‹-€M…í„\&IƒEL‰l$XI‹EH‹5ߎL‰ïH‹€H…À„$&ÿÐI‰ÅH‹|$XM…í„9&Hƒ/„ŸHÇD$XL‰÷è6yýÿH‰D$XH…À„((¿è®yýÿH‰D$`I‰ÇH…À„])H‹D$XHÇD$XI‰GèÆzýÿH‰D$XH…À„*H‹”H‹
ÊH9H…`+L‹=±M…ÿ„ ,IƒI‹GH‹5¹ŒL‰ÿH‹€H…À„n,ÿÐH‰ÂH‰T$hH…Ò„+,Iƒ/„H‹5êH‹|$XèÐzýÿ…Àˆp*H‹|$hHƒ/„ÙI‹EL‹L$XHÇD$hH‹t$`L‹¸€M…ÿ„´.H‰t$L‰L$èÃxýÿL‹L$H‹t$‹H QH‹
L‰P ;ž/H‰L$L‰ÊL‰ïAÿ×I‰Çè‹xýÿ‹H QÿH‹L$‰P ‹=ȏ@Áø@9ÂŒ’M…ÿ„¸/L‰|$hIƒm„iH‹|$`Hƒ/„JHÇD$`H‹|$XHƒ/„"L‹l$hH‹5VHÇD$XHÇD$hI‹EL‰ïH‹€H…À„Ð.ÿÐH‰ÇH‰|$hH…ÿ„‘.H‹GH‹5ÿŒH‹€H…À„´0ÿÐH‰D$XH…À„N0H‹|$hHƒ/„à HÇD$hH‹PL‹º¨Aç„ö9H‹PHƒú„‘'Hƒú„o'H…Ò„n#ˆç8H‰Çè xýÿI‰ÇIƒÿÿ„ç0H‹D$XfDHƒ(„æ L‹èH‹5HÇD$XI‹QH‰t$L‰L$(H‰×H‰T$èìwýÿH‹t$H…ÀH‰D$ „ù0H‹@H‹T$L‹L$(H‹€H…À„[%H‹|$ L‰ÎÿÐH‰D$ H…À„Ò0L‹•èH‹5]‹M‹ZH‰t$L‰T$(L‰ßL‰\$èzwýÿH‹t$H…À„ç0H‹PL‹\$L‹T$(H‹ŠH…É„ö%L‰ÚL‰ÖH‰ÇÿÑH‰D$hH…À„È0H‹PHÇD$`H;9I…«%H‹pH‰t$`H…ö„™%H‹xHƒHƒH‰|$hHƒ(„¾&èé›þÿH‰ÇL‹L$`H‰|$XM…Ét
Iƒ)„}(HÇD$`H…ÿ„Ø0L‹L$hIƒ)„¬%HÇD$hHƒ/„‰%HÇD$XèrýÿH‹
IH‹€H‰L$ë	fDH‰ÐL‹I9Êt	M…Ò…ìH‹PH…ÒuãH‹HH‹@H‰L$0H‰D$(M…ÒtIƒH‹D$0H…ÀtHƒH‹D$(H…ÀtHƒHKÿIƒþ„î#H…ÉŽ~L‰d$H] L‰åL‰T$@H¯éHl$L‰l$8I‰ÍL‰îH‰ßèE{H‹t$L‰òL‰ÿH¯D$L$L‰æèØtýÿH‰îL‰òL‰çèÊtýÿH‰ïL‰òL‰þè¼týÿH+l$Iƒíu±L‹l$8L‹T$@H‹D$Hƒ8H‰D$X„c%HÇD$XM…Òt
Iƒ*„Ê(H‹\$0H…ÛtH‹H‰D$HƒèH‰„ž(H‹\$(H…ÛtH‹H‰D$HƒèH‰„r(H‹\$ H‹5q1ÒH‰ßè7óýÿH‰ÅH‹H‰D$HƒèH‰„/)H…í„Ä1Hƒm„»H‹D$HƒéDD¶àHƒ/„’
HÇD$`E…䄚ñÿÿI‹GH‹5L‰ÿH‹€H…À„Š*ÿÐH‰ÇH‰|$`H…ÿ„º*H;|$A”ÄH;|$0”ÀDà…íH;=îF„àè;týÿA‰ąÀˆ,H‹|$`Hƒ/„qHÇD$`E…ä„ñÿÿH‹¸H‹
ayH9H…—L‹-HyM…í„—IƒEL‰l$hI‹EH‹5²‡L‰ïH‹€H…À„_ÿÐI‰ÅL‰l$XM…í„tH‹|$hHƒ/„ýI‹WL‹%}HÇD$hH‹BpH…À„œH‹@H…À„L‰æL‰ÿÿÐH‰D$hH…À„YL‹L$XI‹AH;qE„C L‹d$hH;ïEL‰d$p„ü H;EF…I‹Q‹B¨„`#L‹jE1ö¨ uM‹qèrýÿ‹H QH‹
gE‰P ;D$H‰L$L‰æL‰÷AÿÕI‰Åèîqýÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒ&
M…í„-$L‰l$`H‹|$hHƒ/„9L‹l$`H‹|$XHÇD$hM…í„ÅHƒ/„³L‹èL‹%†HÇD$XHÇD$`I‹QL‰æL‰L$H‰×H‰T$è:rýÿI‰ÆH…À„~ H‹@H‹T$L‹L$H‹€H…À„ L‰÷L‰ÎÿÐI‰ÆH…À„^ L‹èL‹%¶…M‹QL‰æL‰L$L‰×L‰T$èÕqýÿH‰ÇH…À„	!H‹PL‹T$L‹L$H‹‚H…À„CL‰ÒL‰ÎÿÐH‰D$XH‰ÇH…À„í H‹PHÇD$hH;–C…øH‹wH‰t$hH…ö„æL‹OHƒIƒL‰L$XHƒ/„
I‹AH;èCH‰t$p„j&H;>D…8!I‹Q‹B¨„•(H‹JE1äH‰L$¨ uM‹aH‰t$èpýÿH‹t$‹H QH‹
QC‰P ;Ñ)H‰L$L‰çH‹D$ÿÐI‰Äè×oýÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒÿM…ä„8!H‹|$hL‰d$`H…ÿt
Hƒ/„U
HÇD$hM…ä„A!H‹|$XHƒ/„HÇD$XIƒ,$„ø
HÇD$`èºkýÿH‹
ËBH‰D$(H‹€H‰L$ëH‰ÐL‹ I9Ìt	M…ä…Ü	H‹PH…ÒuãH‹HH‹@H‰L$H‰D$ M…ätIƒ$H‹D$H…ÀtHƒH‹D$ H…ÀtHƒHƒëH…ÛŽ—L‰t$@HE L‰d$8I‰ÄH‰ÞL‰çèuI‰ÆH9Ø„[I‹GH‹-³BH9è„‚H;«A„¥H‹@hH…À„¨H‹@H…À„›L‰öL‰ÿÿÐH‰ÂH‰T$`H…Ò„BH‹5ËAL‰ïèCjýÿ…ÀˆH‹|$`Hƒ/„\HÇD$`I‹GH9脆H;/A„ùH‹@hH…À„ìH‹@H…À„ßH‰ÞL‰ÿÿÐH‰ÂH‰T$`H…Ò„~I‹GH9è„™H‹@hH…À„Œ
H‹@(H…À„
L‰öL‰ÿÿЅÀˆ—H‹|$`Hƒ/„ HÇD$`I‹GH9è„êH‹@hH…À„H‹@(H…À„L‰êH‰ÞL‰ÿÿЉŅ툻Hƒë…„þÿÿL‹d$8L‹t$@M…ätIƒ,$„(.H‹\$H…ÛtH‹H‰D$HƒèH‰„.H‹\$ H…ÛtH‹H‰D$HƒèH‰„.H‹52x1ÒL‰÷èøëýÿIƒ.H‰Å„ó-H…í…ÌøÿÿH²Ç‡ÿH‰
‡Ç‡JH‹|$Xëaf„L‰ïèØiýÿH‹|$XéûïÿÿfDèÃiýÿéXðÿÿfDHº±H‹|$XE1íÇ»†äH‰¨†Ç¦†\HfDH…ÿ„'Hƒ/uètiýÿH‹|$`H…ÿtHƒ/uE1ÿè\iýÿM…ÿt
Iƒ/„…H‹|$hH…ÿt
Hƒ/„H‹
B†‹H†H=}¥‹57†èzþÿ1ÀM…ítIƒmt,H‹\$xdH3%(…·/HĈ[]A\A]A^A_ÃfDL‰ïH‰D$èÓhýÿH‹D$ëÀ@L‰ÿèÀhýÿénÿÿÿè³hýÿéuÿÿÿfDH‹=ñ{H¢qH5£qè.þÿI‰ÅL‰l$XM…í…ñÿÿH°Çˆ…óH‰u…Çs…¸HH‹|$`H…ÿ„ýþÿÿHƒ/…óþÿÿé×þÿÿHÇD$éºîÿÿf.„H‹
é„H9Ñ„ôçÿÿéºçÿÿI‹EL‹0Iƒéïÿÿ„L‰ïèègýÿéïÿÿL‰÷èØgýÿé]ïÿÿD‹g‹GIÁäI	ÄL‰d$éHîÿÿ„‹GH‰D$é3îÿÿH‹T$XH‹
×=M‰îH‹H‰L$HƒèI9ÍA”ÄH‰”ÁE¶äH…ÀuI‰Õ€L‰ïˆL$è\gýÿ¶L$HÇD$XL;5_=”ÂL;5u=”ÀÂ…qìÿÿ„É…iìÿÿL‰÷è²jýÿA‰ąÀ‰VìÿÿH¯M‰õE1ÿÇ„èH‰	„Ç„rHéòf.„L‰ïèØfýÿH‹|$XéÊîÿÿfDèÃfýÿéïÿÿfDL‰÷è°fýÿéôëÿÿM‹uIƒé¿íÿÿè“fýÿéWïÿÿfDèƒfýÿédõÿÿfDE‹féïíÿÿ€E‹nA‹FIÁåM‰ìI	ÄéÑíÿÿE‹nA÷ÝMcåIƒüÿ…¼íÿÿè7iýÿIÇÄÿÿÿÿH…À„§íÿÿH)®M‰õE1ÿÇ,ƒíH‰ƒÇƒH€H‹|$XH…ÿtHƒ/„í/M…ítI‹EHPÿI‰UH…Ò„ZL‹l$`M…í„`üÿÿIƒm„õ/E1íéMüÿÿf„E‹nA‹FIÁåI	ÅM‰ìI÷Üé@ÿÿÿfDƒè2é¾ïÿÿ„D‹w‹GIÁæI	ÆI÷Þé”íÿÿf.„D‹w‹GIÁæI	Æé†íÿÿDD‹wéxíÿÿ€H‹D$Hƒéæÿÿf.„L‰ïè˜hýÿA‰ąÀ‰¤êÿÿHÿ¬E1ÿÇ‚èH‰òÇð{HéÛþÿÿE¶äé,ôÿÿ€L‰Çè¸dýÿH‹|$hé]æÿÿfDHª¬H‹|$XE1íÇ«ýH‰˜Ç–¤Iéñúÿÿf„L‰ïèhdýÿé™þÿÿI‹GJ‹ðHƒH‰T$`鍸ÿÿf.„I‹WJ‹òHƒH‰T$hé÷æÿÿf.„èdýÿ隸ÿÿfDèdýÿéùóÿÿfDI‹WH‹ÚHƒH‰T$Xéçÿÿf.„I‹WH‹ÚHƒH‰T$`鍸ÿÿf.„è»cýÿé½ôÿÿfDI‹GHØH‹8HƒH‰Hƒ/…ãæÿÿècýÿéÙæÿÿf.„I‹GJðH‹8HƒH‰Hƒ/…uøÿÿè_cýÿékøÿÿf.„èKcýÿ餿ÿÿfDè;cýÿéVøÿÿfDK‹T÷HƒéÎþÿÿfècýÿL‹l$`é>ôÿÿI‹GJðH‹8HƒH‰Hƒ/…›æÿÿèïbýÿ鑿ÿÿf.„I‹GHØH‹8IƒEL‰(Hƒ/…(øÿÿè¾býÿéøÿÿf„è«býÿé\æÿÿfDK‹T÷Hƒé^þÿÿfH‹HH‹@H‰L$H‰D$ é-öÿÿf„I‹TßHƒénþÿÿfI‹TßHƒé~þÿÿfIƒéëóÿÿ€HBªH‹|$XÇFìH‰3Ç1ˆH錸ÿÿ@è[gýÿI‰ÅéáçÿÿL‰÷èeýÿI‰Äé­ûÿÿè›dýÿÆ@$éÌòÿÿfH‹|$Xè6þÿI‰ÄéØôÿÿfDHƒH‰|$XéÌóÿÿf.„L‰çè¨aýÿéûôÿÿè›aýÿL‹d$`éÕôÿÿH’©Ç›~ìH‰ˆ~dž~ŠHE1ÿéûÿÿfDè«fýÿH‰Çé]çÿÿH‹BhH…À„òH‹HH…É„åH‹—7I9D$…Î!I‹D$HpHƒþ‡ý!H…À„%E‹l$Hƒøÿ„2H;º7„tH;µ6„¿!L‹bhM…ä„I‹L$H…É„M…íˆ!L‰îL‰ÿÿÑé×ðÿÿfDH‹HH‹@H‰L$H‰D$éÉâÿÿè‹`ýÿH‹t$hH…ö„þÿÿL‹L$XéÈòÿÿL‰ÿèh`ýÿH‹T$héíéÿÿH‹6H5(ŒH‹8èaýÿIƒmuL‰ïè9`ýÿf„è+cýÿH…À…òHÇD$ÿÿÿÿH‹|$X響ÿÿ€èSeýÿI‰ÅéÁæÿÿHú§Ç}íH‰ð|Çî|˜Héy÷ÿÿèÜbýÿI‰ÆéþçÿÿL‹l$X€Hº§L‰ïE1íǽ|íH‰ª|Ǩ|šHéöÿÿèƒ_ýÿL‹d$`éœòÿÿf„èk_ýÿééÿÿfDHƒH‰|$XéšàÿÿfH‹|$Xè¦þÿH‰ÇéÔàÿÿfDL‰Çè0_ýÿH‹|$héöàÿÿfDè_ýÿéùàÿÿfD1ÿèÉ`ýÿI‰ÄH…À„9ÿÿÿH‰ÆL‰ïèÒ_ýÿIƒ,$I‰Æ…úåÿÿL‰çèÜ^ýÿéíåÿÿ€èdýÿI‰ÅéRãÿÿH¦ÇË{èH‰¸{Ƕ{mHéAöÿÿf„H’¦H‹|$XÇ–{îH‰ƒ{ǁ{¨HéÜôÿÿ@è«cýÿI‰ÅéæÿÿèK^ýÿéÔèÿÿfDè;^ýÿé¬èÿÿfDL‰ïè(^ýÿéŠèÿÿèË`ýÿÆ@$é`èÿÿfL‰æL‰Ïè…üýÿI‰ÅéðîÿÿDèó]ýÿH‹t$`H…ö„•þÿÿL‹D$XéfßÿÿH‰ßH‰T$(è‹_ýÿH‹T$(H…À„5
H‰ÆL‰ÿH‰D$(è]\ýÿL‹D$(Iƒ(…åàÿÿL‰ljD$(è’]ýÿ‹D$(éÐàÿÿf„L‰÷H‰T$Hè3_ýÿH‹T$HH…ÀI‰Æ„

H‰ÆL‰ÿè\ýÿIƒ.…VòÿÿL‰÷‰D$HèA]ýÿ‹D$HéAòÿÿ„L‰ïè(]ýÿéÕâÿÿL‰÷èØ^ýÿH…À„´H‰ÆL‰ÿH‰D$Hèß]ýÿL‹L$HH‰ÂIƒ)…=ñÿÿL‰ÏH‰D$Hèà\ýÿH‹T$Hé&ñÿÿfDH‹=pHªeH5«eèV÷ýÿI‰ÅL‰l$hM…í…XìÿÿH§¤H‹|$XÇ«yþH‰˜yÇ–yºIéñòÿÿf„è»aýÿH‰Çé<äÿÿHb¤ÇkyîH‰XyÇVyªHéËúÿÿf„H2¤Ç;yH‰(yÇ&yéJHÇD$hH‹|$XH…ÿt
Hƒ/„AHÇD$XH‹|$`H…ÿt
Hƒ/„4H‹
Ýx‹ãxH=˜HÇD$`‹5ÉxèþÿH‹|$ HL$`HT$hHt$Xè£âýÿ…ÀˆH‹L$`H‹T$h¿1ÀH‹t$XèPaýÿI‰ÆH…À„_H‹D$H‹@H‹¨€H…í„ñèö]ýÿ‹H QH‹
A1‰P ;$H‰L$(1ÒH‹|$L‰öÿÕH‰ÅèÅ]ýÿ‹H QÿH‹L$(‰P ‹HÎ=ÈÁø@9ÊŒ=H…í„ÿH‹L$H‹H‰D$(HƒèH‰„J
Iƒ.„0
H…í„=H;-ð0”ÀH;-¾0”ÂÂ…H;-Ì0„þH‰ïè^ýÿHƒmA‰Å„÷E…íˆâL‹t$XE…í„âM…öt
Iƒ.„AHÇD$XH‹|$hH…ÿt
Hƒ/„hHÇD$hH‹|$`H…ÿt
Hƒ/„UH‹D$ H‹\$HÇD$`H‹€H‹8L‹hH‰XH‹\$H‹hL‰ H‰XH…ÿt
Hƒ/„ðM…ítIƒm„êH…í„ÞÿÿHƒm…ÞÿÿH‰ïè¨YýÿH‹Ù/HƒéŒðÿÿ„HƒmD¶è…ÿÿÿH‰ïèyYýÿéüþÿÿ@Hr¡L‹d$8L‹t$@ÇqvH‰^vÇ\v2JH‹|$hH…ÿt
Hƒ/„€HÇD$hH‹|$XH…ÿt
Hƒ/„CHÇD$XH‹|$`H…ÿt
Hƒ/„6H‹
ÿu‹vH=:•HÇD$`‹5ëuè.þÿH‹|$(HL$hHT$XHt$`èÅßýÿ…Àˆ
H‹L$hH‹T$X¿1ÀH‹t$`èr^ýÿI‰ÇH…À„ÍI‹FH‹¨€H…í„Þè[ýÿ‹H QH‹
h.‰P ;.H‰L$81ÒL‰þL‰÷ÿÕH‰ÅèîZýÿ‹H QÿH‹L$8‰P ‹HÎ=ÈÁø@9ÊŒ6H…í„Iƒ.„Iƒ/„éH…í„<H;l$”ÀH;l$0”ÂÂ…èH;l$„ÝH‰ïèU[ýÿHƒmA‰Æ„ÖE…öˆªH‹l$`E…ö„¼H…ítHƒm„Ø
HÇD$`H‹|$XH…ÿt
Hƒ/„{
HÇD$XH‹|$hH…ÿt
Hƒ/„n
H‹D$(H‹\$HÇD$hH‹€H‹8L‹pH‰XH‹\$ H‹hL‰ H‰XH…ÿt
Hƒ/„:
M…öt
Iƒ.„;
H…í…´åÿÿéºåÿÿDHƒmD¶ð…3ÿÿÿH‰ïèÙVýÿéÿÿÿ@èËVýÿé³ýÿÿfDè»VýÿéÀýÿÿfDè«VýÿévýÿÿfDH‰©sÇ«sÿǝs`JH‹D$(H‹\$H‹€H‹8L‹pH‰XH‹\$ H‹hL‰ H‰XH…ÿt
Hƒ/„

M…öt
Iƒ.„
H…í„BìÿÿHƒm…7ìÿÿH‰ïèVýÿH‹|$XéìÿÿDL‰ÿèVýÿé
þÿÿL‰÷èøUýÿéðýÿÿL‰÷H‰T$(è£WýÿH‹T$(H…À„õH‰ÆL‰ÿH‰D$(èuTýÿL‹D$(A‰ÆIƒ(…QÙÿÿL‰Çè«UýÿéDÙÿÿfDH‰ßèXWýÿI‰ÆH…À„¬L‰êH‰ÆL‰ÿè.TýÿIƒ.‰Å…ÏêÿÿL‰÷èjUýÿéÂêÿÿDL‹d$8L‹t$@HXÇarH‰NrÇLr0Jéëûÿÿ€L‰÷èàVýÿH…À„çøÿÿH‰ÆL‰ÿH‰D$(èçUýÿL‹D$(Iƒ(…³×ÿÿL‰ÇH‰D$(èëTýÿH‹D$(éœ×ÿÿè‹WýÿÆ@$é¼üÿÿfèZýÿI‰Åé™äÿÿH‹=	hèÔîýÿI‰Åéù÷ÿÿ@HªœÇ³qþH‰ qÇžq¼Ié)ìÿÿH‰ïèxTýÿé8ãÿÿL‰ÿH5„žè¤ØýÿI‰ÇH…À…¿IƒmuL‰ïèITýÿf„è;WýÿH…À…’H‹|$XIÇÆÿÿÿÿéjÜÿÿèTýÿé…ãÿÿfDèTýÿH‹D$Xéßÿÿè«VýÿÆ@$éóæÿÿHÇD$Xf„Hâ›H‹|$hÇæpH‰ÓpÇÑpëJH…ÿ„¢÷ÿÿHƒ/…˜÷ÿÿè¡SýÿéŽ÷ÿÿ@H‰ÇèSýÿé
ßÿÿHŠ›H‹|$hÇŽpH‰{pÇypíJ릀HZ›L‹d$8L‹t$@ÇYpH‰FpÇDp>Jéãùÿÿ€H"›H‹|$XÇ&pýH‰pÇp¢IE1íH…ÿ…néÿÿé›éÿÿ„è+XýÿH‰ÇéÖÒÿÿH‹HH‹@H‰L$0H‰D$(éàÿÿf„H‰ßèhTýÿH…À„­þÿÿH‰ÆL‰ÿH‰D$(èoSýÿL‹D$(Iƒ(……ÕÿÿL‰ÇH‰D$(èsRýÿH‹D$(énÕÿÿf„H‰ßèTýÿH…À„?H‰ÆL‰ÿH‰D$HèSýÿL‹L$HH‰ÂIƒ)…ùæÿÿL‰ÏH‰D$Hè RýÿH‹T$HéâæÿÿfDH;Ñ'„úÖÿÿL‰ïºèVRýÿI‰ÅH…À…GêÿÿHì™H‹|$XÇðnèH‰ÝnÇÛnoHé6èÿÿH‹ß'H‰ÇH‹2è\Rýÿ…Àt&èóSýÿI‹D$H5¯‰H‹PH‹Ü'H‹81ÀèrVýÿHÇD$hf„Hr™H‹|$XE1íÇsnþH‰`nÇ^n¿Ié¹çÿÿE1ÿé°Üÿÿ„è{VýÿI‰ÅéÔÙÿÿH‹=idè4ëýÿI‰Åéèÿÿ@H
™ÇnóH‰nÇþmºHéYçÿÿHâ˜H‹|$hÇæmH‰ÓmÇÑmïJéûüÿÿ@è«PýÿéµôÿÿfDè›PýÿéÂôÿÿfDL‰÷èˆPýÿéÃõÿÿH‰ÏèxPýÿé©õÿÿH‰ymÇ{m	ÇmmKH‹D$ H‹\$H‹€H‹8H‹hH‰XH‹\$L‹hL‰ H‰XH…ÿt
Hƒ/„ÚH…ítHƒm„ÚM…í„æÿÿIƒm„ÖH‹|$XE1íéaæÿÿf„Hâ—L‹d$8L‹t$@ÇálH‰ÎlÇÌlHJéköÿÿ€L‹d$8L‹t$@H —Ç©lH‰–lÇ”l<Jé3öÿÿ€M‹iM…í„°ßÿÿI‹yIƒEHƒH‰|$XIƒ)„+
H‹T$hL‰îè*nþÿH‰D$`Iƒm…"àÿÿL‰ïè"OýÿéàÿÿDH—Ç#lþH‰lÇlÎIéøûÿÿHò–ÇûkóH‰èkI‹EÇâk½HHPÿéSíÿÿH‹D$ Hƒé¯Úÿÿfè[QýÿÆ@$éµóÿÿfHt$pºL‰ÏènæýÿI‰ÅéyßÿÿfDH…ÉސÜÿÿL‰ãL‹t$L‰T$HƒÅ H¯ÙL‰l$LóI‰ÝL‰ûI‰ϐL‰þH‰ïèUWI¯ÄLðH‹0H‰3I‹uH‰0H‹I‰EM)åIƒïuÑL‹l$L‹T$é+ÜÿÿfH‹‘$L‰æH‹8è.NýÿH–H‹|$XÇkÿH‰ñjÇïjÜIéJäÿÿfH‹|$hè&óýÿH‰ÇéxÚÿÿfDHƒH‰D$héÚÿÿf.„H¢•Ç«jóH‰˜jÇ–j¿Héçÿÿf„èkMýÿémÚÿÿfDL‰ÏèXMýÿH‹|$XéBÚÿÿfDD‹x‹PIÁçI	×é­ØÿÿDD‹x韨ÿÿ€H‹¡#L‰æH‹8è>MýÿHÇD$XH•ÇjÿH‰ýiÇûiÞIIƒ.…éâÿÿL‰÷èÑLýÿH‹|$Xé?ãÿÿ€H”ÇËióH‰¸iI‹EDziÄHHPÿé#ëÿÿH‰ÇèˆLýÿH‹t$`H…ö„ªþÿÿH‹|$hé"ÙÿÿH‹|$L‰T$èaLýÿL‹T$é„Úÿÿ€L‰ÏèÈêýÿI‰ÄéJßÿÿè;LýÿéìõÿÿfDL‰÷è(Lýÿéèõÿÿ¨€„îÿÿL‹B1ÿ¨ uI‹yHt$p¨…ºAÿÐI‰ÅéàÜÿÿDHê“E1ÿÇðhóH‰ÝhÇÛhËHéÆåÿÿè¹NýÿH…À„ÊHÇD$`H‹|$hH…ÿtHƒ/„ìÿÿHÇD$hHŒ“Ç•hÿH‰‚hÇ€hìIé€þÿÿH‹=©^HJTH5KTèæåýÿI‰ÇM…ÿ…ŽÔÿÿH<“ÇEhóH‰2hÇ0hÆHéåÿÿH=ÙqH‰L$èoMýÿH‹L$…À„žÛÿÿfE1íéÛÛÿÿ„èÛMýÿI‰ÅH…ÀuãH‹| H5µqH‹8è}Kýÿé«Ûÿÿ„L‰Ïè¨JýÿH‹|$Xéq×ÿÿfDH‹!L‰îH‹8è¶JýÿHˆ’H‹|$XE1íljg	H‰vgÇtg±JéÏàÿÿ€HR’Ç[góH‰HgÇFgÈHé1äÿÿf„èkOýÿH‰ÂéŠÓÿÿH‹=Y]è$äýÿI‰Çé¹þÿÿ@èóIýÿé{òÿÿfDèãIýÿéˆòÿÿfDèÓIýÿé¼òÿÿfDL‰÷èÀIýÿé¸òÿÿH‰ïè°IýÿéòÿÿH‹) L‰îH‹8èÆIýÿHÇD$XH‘ǘf	H‰…fǃf³JH‹\$H‹H‰D$HƒèH‰…[ùÿÿH‹|$èGIýÿéLùÿÿfè;IýÿéùÿÿfDH‰ïè(IýÿéùÿÿL‰ïE1íèIýÿH‹|$XéƒßÿÿH‰ßèIýÿé×ÿÿH‰ßèöHýÿéU×ÿÿL‰×èéHýÿé)×ÿÿH‹T$XL‹|$hH‰T$è€KýÿH‹T$H‹xXL‹p`H‰hXL‹@hH‰P`L‰xhH…ÿt
Hƒ/„Ì
M…öt
Iƒ.„Ñ
M…Àt
Iƒ(„Ù
HÇD$`HÇD$XHÇD$hH‰teÇveÿÇheuJéÆñÿÿHMÇVe	H‰CeÇAeÁJé¹þÿÿ@H‹|$ èHýÿéÂÖÿÿHH‹|$XÇeèH‰eÇeyHé]Þÿÿè0MýÿI‰ÅéMÍÿÿE‹l$A‹D$IÁåI	ÅI÷ÝIƒýÿ„ÂI‹WH;w„fH;r…½æÿÿI‹WM…í‰ËIDH9ЃÈI‹DÇHƒH‰D$hé¥×ÿÿL‰ÊL‰ïè#LýÿH‰D$hH…À…±ÑÿÿHWE1ÿÇ]dóH‰JdÇHdÍHé3áÿÿHt$pºL‰ÏèùÞýÿI‰ÄéÚÿÿL‰÷è	Gýÿé²ìÿÿH‰
dÇdÿÇdmJé_ðÿÿèßFýÿéíÿÿL‰ïèÒFýÿé	íÿÿèÈFýÿéŽìÿÿè¾Fýÿé¡ìÿÿH‰ÂcÇÄcÿǶcdJéðÿÿH›ŽH‹|$XÇŸcôH‰ŒcÇŠcÜHéåÜÿÿè¸KýÿH‰Çé(Ñÿÿè«KýÿH‰ÇénÕÿÿH=mH‰L$ è²HýÿL‹L$H‹t$…ÀH‹L$ „:ÐÿÿHÇD$héÈþÿÿHŽH‹|$XÇ#cýH‰cÇc«IéøòÿÿèìHýÿH…Àu¼H‹H5ÉlH‹8è‘Fýÿë¤H‹ðH5™qH‹8èyFýÿé„åÿÿH‰½bÇ¿bÿDZbiJéïÿÿ1ÒL‰þL‰÷èGJýÿH‰ÅéríÿÿH‹T$hL‹|$`H‰T$èHýÿH‹T$H‹xXH‹h`L‰pXL‹hhH‰P`L‰xhH…ÿt
Hƒ/„$	H…ítHƒm„	M…ítIƒm„(	HÇD$XHÇD$hHÇD$`H‰
bÇb	ÇbKéôÿÿ¨€„ŒøÿÿL‹R1ÿ¨ uI‹yHt$p¨…€ºAÿÒI‰Äé»×ÿÿH³ŒÇ¼aôH‰©aǧaÞHé2ÜÿÿHŒŒH‹|$XE1íǍaýH‰zaÇxa­IéÓÚÿÿè¦IýÿéDÏÿÿH‹JH‹RH5/|H‹81Àè%IýÿHÇD$hé·òÿÿH=ðjH‰L$8è†FýÿH‹L$8…À„´ëÿÿ1íéõëÿÿèýFýÿH‰ÅH…ÀuìH‹žH5×jH‹8èŸDýÿéÍëÿÿH‹ûH5¤oL‰L$H‹8èDýÿL‹L$Iƒ)uL‰Ïè¬Cýÿè§FýÿH…À…cH‹D$XIÇÇÿÿÿÿéÏÿÿH‰–`ǘ`	ÇŠ`KéóÿÿH=6jH‰L$ H‰t$èÇEýÿH‹t$H‹L$ …À„Öÿÿé÷ÿÿH‹ÁH‹8èaCýÿH3‹H‹|$XÇ7`õH‰$`Ç"`íHé}ÙÿÿH‰`Ç`	Ç`KéòÿÿH‹fH‹8èCýÿHÇD$hHϊÇØ_õH‰Å_ÇÃ_ïHH‹\$ H‹|$XH‹H‰D$HƒèH‰…ÙÿÿH‰ßè„BýÿH‹|$XéòØÿÿH‰ƒ_Ç…_	Çw_KéòÿÿH‹|$1ÒL‰öèGýÿH‰Åé_çÿÿHEŠÇN_õH‰;_Ç9_ýHéqÿÿÿL‰ÏèBýÿH‹|$XéÃòÿÿH=ÓhH‰L$(èiDýÿH‹L$(…À„¾æÿÿ1íéçÿÿèàDýÿH‰ÅH…ÀuìH‹H5ºhH‹8è‚BýÿéÙæÿÿIƒÍÿL‰ïèqCýÿI‰ÄH…À„#ðÿÿH‰ÆL‰ÿèzBýÿIƒ,$…¸ÑÿÿL‰çH‰D$è‚AýÿH‹D$é¡ÑÿÿI‹WL‰èH9Ðs³I‹WH‹ÂHƒéãùÿÿHÇD$`L‹d$8L‹t$@éíëÿÿI‹WM…퉮J*ë¿H2‰H‹|$XE1íÇ3^ìH‰ ^Ç^Héy×ÿÿH‹@`H…À„åH‹€€H…À„ÕÿÐI‰ÅH…À„ÇH‹
7H‹@H‰L$H9ÈuPö€«„¬	I‹EHƒø„HƒøtmH…ÀtJˆ6àÿÿL‰ïèŒDýÿI‰ÄIƒm…òÆÿÿL‰ïèv@ýÿéåÆÿÿL‰ïH5‚Šè¢ÄýÿI‰ÅH…À„&àÿÿH‹@ëIƒm„AHÇD$H‹|$XéÂÆÿÿE‹eA‹EIÁäI	ÄIƒm…–Æÿÿë˜E‹eëíHÇD$`L‹d$8L‹t$@éZðÿÿèóBýÿH…À…,îÿÿI‹GH;§„‘H;¢„æL‹`hM…ä„þÿÿI‹L$IÇÅÿÿÿÿH…É„ñýÿÿI‹$H…À„âÞÿÿL‰ÿÿÐH…Àˆ(	I‹L$IÅéÇÞÿÿH„‡H‹|$XLj\õH‰u\Çs\{IéÎÕÿÿL‰çèŽDýÿI‰ÆH…À„JÿÿÿH‰ÇèjAýÿIƒ.I‰Å…i÷ÿÿL‰÷è%?ýÿé\÷ÿÿI‹WL‰èéŠ÷ÿÿHƒøþ„2÷ÿÿHƒø…¨E‹l$A‹D$IÁåI	ÅéñÝÿÿH‹@`H…À„H‹€€H…À„L‰÷ÿÐI‰ÀH…À„ñH‹
H‹@H‰L$H9È…ö€«„WM‹`ID$Hƒø‡‘HuHc‚HÐ>ÿàE‹`Iƒ(…áÅÿÿL‰ÇèY>ýÿéØÿÿE‹hA÷ÝMcåIƒ(…ú×ÿÿëÝE‹hA‹@IÁåI	ÅM‰ìI÷ÜëÝE‹hA‹@IÁåM‰ìI	Äë¨L‰ÇH5$ˆèDÂýÿI‰ÀH…À„¼×ÿÿH‹@éOÿÿÿL‰ÇL‰D$èò@ýÿL‹D$I‰ÄëŽL‰D$èÎ=ýÿL‹D$é õÿÿL‰÷L‰D$è·=ýÿL‹D$éõÿÿL‰Çè¥=ýÿéõÿÿH¢…H‹|$XE1íÇ£ZîH‰ZÇŽZ­HééÓÿÿH‹@`H…À„úH‹€€H…À„êÿÐI‰ÅH…À„ÜH‹
§H‹@H‰L$H9È…­Dö€«„EM‹uIFHƒø‡­HŒHc‚HÐ>ÿàE‹uIƒm…-ÅÿÿL‰ïèá<ýÿéÅÿÿIƒmH‹|$X…ÅÿÿL‰ïE1öèÁ<ýÿéÅÿÿE‹uA÷ÞMcöIƒm…áÄÿÿë¼E‹uA‹EIÁæI	ÆI÷ÞëßE‹uA‹EIÁæI	ÆëŒL‰ïH5‘†è±ÀýÿI‰ÅH…À„%èÿÿH‹@é4ÿÿÿL‰ïèd?ýÿI‰ÆëL‰çèG<ýÿéËÑÿÿH‰ßè:<ýÿéÝÑÿÿH‰ßè-<ýÿéïÑÿÿL‰÷è <ýÿéÒÿÿè<ýÿéÒöÿÿH‰ïè	<ýÿéÕöÿÿL‰ïèü;ýÿéuÂÿÿL‰ïèï;ýÿéËöÿÿH;«„;E1íH;£…ÛÿÿI‹WI‰Åé7ôÿÿH‹âH5‹gH‹8èk<ýÿéú÷ÿÿH‰ßèž;ýÿ鰿ÿÿL‰çè‘;ýÿée¿ÿÿH‰ßè„;ýÿéw¿ÿÿH‹|$èu;ýÿ鵿ÿÿL‰ïèh;ýÿH‹™HƒéLÒÿÿL‰çè€=ýÿI‰Åé„óÿÿI‹WIƒÍÿéúÿÿH=ƒH‹|$XÇAXôH‰.XÇ,XáHé‡Ñÿÿè
>ýÿH…À…ÑÚÿÿH‹úH5*‚H‹8è«;ýÿé¶ÚÿÿI‹WIƒÍÿéJóÿÿH‹R`H…Ò„<H‹’€H…Ò„,H‰ÇÿÒI‰ÁH…À„H‹H‰D$I9Au\I‹Aö€«„I‹AHƒø„ŽHƒøtjH…ÀtNˆöÿÿL‰ÏL‰L$è\>ýÿL‹L$I‰ÇIƒ)…­ÅÿÿL‰ÏèB:ýÿé ÅÿÿL‰ÏH5N„èn¾ýÿI‰ÁH…ÀuéuöÿÿIƒ)„4H‹D$XE1ÿé‚ÅÿÿA‹IHÁáI‰ÏA‹II	ÏIƒ)…[Åÿÿë¢E‹yëîH‹H5È`H‹8è:ýÿéîÿÿèÆ<ýÿH…À…ÓÿÿH‹¶H5æ€H‹8èg:ýÿéfÓÿÿI‹WE1íé%øÿÿH˜H‹|$XÇœV	H‰‰VLJV6KéâÏÿÿèe<ýÿH…À…åÿÿH‹UH5…€H‹8è:ýÿéåÿÿèÌ9ýÿH‹@`H…À„H‹€€H…À„ðL‰ÇL‰D$ÿÐL‹D$H…ÀH‰Ç„ÕH‹D$H9G…¦H‹Gö€«t$L‹gID$Hƒø‡¿Hò‡Hc‚HÐ>ÿàL‰D$H‰|$èUÔýÿL‹D$H‹|$I‰ÄHƒ/…TúÿÿL‰D$è”8ýÿL‹D$é@úÿÿD‹oA÷ÝMcåëÖD‹o‹GIÁåI	ÅM‰ìI÷ÜëÀD‹o‹GIÁåM‰ìI	Äë­D‹gë§H5c‚L‰D$è~¼ýÿL‹D$H…ÀH‰Ç…8ÿÿÿIƒ(…çÑÿÿL‰Çè8ýÿéÚÑÿÿL‰D$H‰|$è;ýÿH‹|$L‹D$I‰ÄéMÿÿÿ1ɺAÿÐI‰ÅéÖÈÿÿL‰ÏèÛ7ýÿéCÃÿÿH‹@`H…À„ÜH‹€€H…À„ÌL‰ïÿÐI‰ÇH…À„»H‹D$I9G…&ãÿÿI‹Gö€«tM‹wIFHƒøwjH¯†Hc‚HÐ>ÿàL‰ÿèÓýÿI‰ÆIƒ/…¦úÿÿL‰ÿèP7ýÿé™úÿÿE‹wA÷ÞMcöëÝE‹wA‹GIÁæI	ÆI÷ÞëÉE‹wA‹GIÁæI	Æë¸E‹wë²L‰ÿè:ýÿI‰Æë¥H‹@`H…À„IH‹€€H…À„9L‰ïÿÐI‰ÆH…À„(H‹D$I9Fu"L‰÷è¦ÖýÿIƒ.I‰Ä…0öÿÿL‰÷è±6ýÿé#öÿÿL‰÷H5½€èݺýÿI‰ÆH…ÀuÇéHÖÿÿè‹9ýÿH…À…ÖòÿÿH‹{H5«}H‹8è,7ýÿé»òÿÿH‹ˆH‹8èˆ7ýÿ…À„Îäÿÿè›8ýÿI‹L$é†Õÿÿ1ɺAÿÒI‰Äé9ÉÿÿL‰D$è%9ýÿL‹D$H…À…êýÿÿH‹H5@}H‹8èÁ6ýÿL‹D$éÊýÿÿèò5ýÿé	Ðÿÿèè8ýÿH…À…‡áÿÿH‹ØH5}H‹8è‰6ýÿéláÿÿL‰èé2îÿÿL‰ïE1íéPÌÿÿè¬8ýÿH…À…[ÕÿÿH‹œH5Ì|H‹8èM6ýÿé@ÕÿÿL‰èéôÿÿH‹@`H…À„‹H‹€€H…ÀtL‰ÏL‰L$ÿÐL‹L$H…ÀH‰ÇthH‹D$H9Gu:L‰L$H‰|$èÕýÿH‹|$L‹L$I‰ÇHƒ/…ËúÿÿL‰L$è5ýÿL‹L$é·úÿÿH5L‰L$è:¹ýÿL‹L$H…ÀH‰Çu¨é.ñÿÿL‰L$èÞ7ýÿL‹L$H…À…ñÿÿH‹É
H5ù{H‹8èz5ýÿL‹L$éöðÿÿóúAWAVAUATI‰ôUSHƒìXH‹
>H‰|$dH‹%(H‰D$H1ÀH‹¸QH9H…î	H‹-ß=H…í„®
HƒEH‹EH‹5VJH‰ïH‹€H…À„£
ÿÐI‰ÅH‹EHPÿM…턝
H‰UH…Ò„I‹D$ö€«„&Iƒm„3	H‹4QH‹PH9Y=…sH‹-D=H…í„KHƒEH‹EH‹5óLH‰ïH‹€H…À„ÿÐI‰ÇH‹EHPÿM…ÿ„ÊH‰UH…Ò„ýH‹
>	I‹GH‰L$H9È„dH;µ	L‰d$(„²H;
…MI‹W‹B¨„.H‹jE1í¨ „Gèâ5ýÿL‹53	‹H Q‰P A;qL‰ïL‰æÿÕI‰Åè¹5ýÿ‹H Qÿ‰P A‹=ȏÁø@9ÂŒÌ
M…í„ËL‰ýM…í„™Hƒm„ôH‹|$H‹5xCH‹GH‹€H…À„¤ÿÐH‰ÃH…Û„fH‹CH;D$…L‹cM…ä„
L‹{Iƒ$IƒHƒ+„ƒ
L‰êL‰æL‰ÿèEQþÿIƒ,$H‰Å„‡
H…턱Iƒ/„ü	Hƒm„á	I‹EHPI‰UI‰EH…À„¸	H‹D$HdH3%(…L!HƒÄXL‰è[]A\A]A^A_Ãf.„L‰îL‰çè¥2ýÿIƒm‰Ã„H‹OH‹P…Û…ÅýÿÿH9;…àL‹-ù:M…í„øIƒEI‹EH‹5 JL‰ïH‹€H…À„eÿÐH‰ÅI‹EHƒèH…í„_I‰EH…À„²H‹
H‹EH‰L$H9È„ÙH;zL‰d$(„—H;Ð…*H‹U‹B¨„»L‹zE1í¨ „üè§3ýÿL‹5ø‹H Q‰P A;~L‰ïL‰æAÿ×I‰Åè}3ýÿ‹H Qÿ‰P A‹=ȏæÁø@9ÂŒ¨M…í„¿I‰îI‹HPÿM…í„^I‰H…Ò„ÀI‹EH‹5]DL‰ïH‹€H…À„"ÿÐH‰ÃH…Û„äH‹5½>1ÒH‰ßè£0ýÿH‰ÅH…À„OHƒ+„H;-fA”ÆH;-3”ÀDð…H;-@„‚H‰ïèŠ3ýÿLcðE…öˆHƒm„óE…ö…ªI‹EH‹5·CL‰ïH‹€H…À„”ÿÐH‰ÅH…í„VH‹5>H9î„öH‹EH;û…­Hƒ}uƒ}„Ô@H‹‰H‹‚HƒH‹ŸH9pA”Ç”ÁE¶ÿHƒm„²
Hƒ+„`H‹qLH‹RE…ÿ„TH9m8…*H‹-X8H…í„áHƒEH‹EH‹5§CH‰ïH‹€H…À„hÿÐI‰ÇH‹EHPÿM…ÿ„+H‰UH…Ò„á
I‹G¿1íH;D$„½H;ì„î
H;G„Ùè,1ýÿI‰ÃH…À„H…ítH‰hIcÆIƒEAƒÆM‰lÃI‹GMcöIƒ$H‹¨€O‰dóH…턺L‰\$èë0ýÿL‹5<L‹\$‹H QA;‰P À1ÒL‰\$L‰ÞL‰ÿÿÕH‰Ãè¶0ýÿL‹\$‹H Qÿ‰P A‹=ȍHÎÁø@9ÊŒH…Û„šIƒ+„zIƒ/„ÀH;ù”ÀH;Ç”ÂÂ…äH;Õ„×H‰ßè1ýÿ‰ŅÀˆ-
Hƒ+„û…í„ëH‹¬JH‹¥6H9X…ëL‹=Œ6M…ÿ„oIƒI‹GH‹5\FL‰ÿH‹€H…À„ŠÿÐI‰ÄI‹HƒèM…ä„LI‰H…À„H‹D$I9D$„áL‰îL‰çM‰æèŠUþÿH‰ÅH…í„Iƒ.„„Iƒm„†H‹|$H‹5}=H‹GH‹€H…À„ÿÐI‰ÄM…ä„H‹D$I9D$…pM‹|$M…ÿ„bM‹t$IƒIƒIƒ,$„H‰êL‰þL‰÷èGKþÿIƒ/I‰Å„PM…í„¡Iƒ.„ÔIƒm„¼H‹EI‰íHPH‰Uéûùÿÿ„H‰ïè,ýÿéë÷ÿÿL‹méûúÿÿ€M‹oé°øÿÿ€ƒè2éìøÿÿ„ƒè2éûÿÿò€Tf.EŠ=üÿÿ…7üÿÿ€H‹á¹A¿HƒH‰Ãé=üÿÿf.„E¶öé‰ûÿÿ€H;±L‰l$(„îH;…áH‹S‹B¨„"L‹b1í¨ uH‹kèß-ýÿL‹50‹H Q‰P A;nH‰ïL‰îAÿÔH‰Åèµ-ýÿ‹H Qÿ‰P A‹=ȏþÁø@9ÂŒp	H…í„$I‰ß鈸ÿÿ€L‰ïèÀ*ýÿH‹ùGH‹PéÀöÿÿL‰ïè¨*ýÿéÛøÿÿL‰ïè˜*ýÿéAùÿÿH‰ïèˆ*ýÿéööÿÿH‹=É=Hê3H5ë3èÅýÿH‰ÅH…í…öÿÿH\rÇeG=H‰RGÇPGÜKI‰í1ÛH‹
9G‹?GH=œf‹5.GèqÑýÿM…ít
Iƒmt%E1íH…Û„é÷ÿÿHƒ+…ß÷ÿÿH‰ßèç)ýÿéÒ÷ÿÿfE1äL‰ïM‰åèÒ)ýÿëÎH‰ïèÈ)ýÿéÿöÿÿL‰÷è¸)ýÿé3ùÿÿH‹=ù<èÄÃýÿH‰Åé9ÿÿÿ@èã.ýÿI‰ÅéUõÿÿHŠqÇ“F=H‰€FÇ~FÞKH‰UH…Ò…¦
E1ÿH‰ïèN)ýÿM…ÿ„’
E1ö1íI‹HƒèI‰H…À„ÅH…ítHƒmtqM…ö„e
Iƒ.»…ÙþÿÿL‰÷è)ýÿéÌþÿÿHþpL‰óÇFOH‰ñEI‹ÇìE1MHƒèH‰H…À„µHƒm»…„þÿÿE1öH‰ïè¨(ýÿë…H¨pE1öÇ®EOH‰›EI‹Ç–E4MHƒèI‰H…À…FÿÿÿfDL‰ÿè`(ýÿé.ÿÿÿL‰ïèP(ýÿé;öÿÿH‰ïè@(ýÿéöÿÿL‰ÿè0(ýÿé÷õÿÿH‰ßè (ýÿéî÷ÿÿèÃ*ýÿÆ@$é&õÿÿf.„è«*ýÿÆ@$éJ÷ÿÿfH‰ïèè'ýÿéøÿÿH‰ßèØ'ýÿépõÿÿH9ù0…&H‹ä0H…Û„®HƒH‹CH‹5Ô@H‰ßH‹€H…À„ÿÐH‰ÅH‹HƒèH…턲H‰H…À„ I‹EH‹558L‰ïH‹€H…À„JÿÐI‰ÆM…ö„ãI‹FH;þ„sH;üü„VH‹@hH…À„sH‹@H…À„f1öL‰÷ÿÐI‰ÇM…ÿ„ýýÿÿIƒ.„ÿ
¿è…)ýÿI‰ÄH…À„3þÿÿM‰|$è¯*ýÿI‰ÇH…À„}H‹üCH‹
Õ/H9H…ÐH‹¼/H…Û„¦HƒH‹CH‹5„<H‰ßH‹€H…À„wÿÐI‰ÆH‹HƒèM…ö„ƒH‰H…À„˜H‹5Ñ=L‰òL‰ÿè¶*ýÿ…Àˆ*Iƒ.„ÞH‹EH‹˜€H…Û„èË(ýÿL‹5ü‹H Q‰P A;pL‰úL‰æH‰ïÿÓH‰ÃèŸ(ýÿ‹H Qÿ‰P A‹HÎ=ÈÁø@9ÊŒ¶H…Û„‚Hƒm„ˆIƒ,$„pIƒ/„€H‹|$H‹5V6H‹GH‹€H…À„0ÿÐH‰ÅH…í„ûH‹D$H9E…x
L‹uM…ö„k
L‹}IƒIƒHƒm„F
H‰ÚL‰öL‰ÿè#DþÿIƒ.I‰Ä„s
M…ä„ÁIƒ/„/Iƒ,$„I‹UH‹BpH…À„ÀH‹@H…À„³H‰ÞL‰ïÿÐI‰ÄM…ä„ïIƒm„îúÿÿM‰åéÊúÿÿL‰çè¸$ýÿélòÿÿH‹EH;èúA”Ç”ÁHPÿE¶ÿH‰UH…ÒuH‰ïˆL$è„$ýÿ¶L$H;ú@”ÆH;¥ú”Â@Ö…õÿÿ„É…õÿÿH‰ßèá'ýÿA‰DžÀ‰õÿÿHHlÇQAGH‰>AH‹Ç9AŒLHƒèH‰H…À…Ý1íH‰ßè$ýÿH…í„KE1öéÎúÿÿfDƒè2éùÿÿ„H‰ïèØ#ýÿéõÿÿH‰ßèÈ#ýÿéSüÿÿI‹FL‹8Iƒé·üÿÿ¸H‰úL‰ÿH‰l$0L)ðL‰l$8HtÄ0L‰d$@èi»ýÿH‰ÃH…À„óH…턪õÿÿHƒm…ŸõÿÿH‰ïèa#ýÿé’õÿÿ@Hƒ+HVkH‰V@ÇX@IÇJ@ÉL…yE1ÿE1ö1íH‰ßè#ýÿM…ÿ…ÓùÿÿéáùÿÿfDL‰æL‰ÿè}ÁýÿI‰ÅéðÿÿDL‰æH‰ïèeÁýÿI‰Åé>òÿÿDH‰ßèÐ"ýÿé“óÿÿH‹=6H,H5,èN½ýÿI‰ÅM…í…ñÿÿH¤j1ÛÇ«?BH‰˜?Ç–?DLéIøÿÿf„H‹=¹5HÊ+H5Ë+èö¼ýÿH‰ÅH…í…|îÿÿHLjÇU?>H‰B?Ç@?÷Kéë÷ÿÿèk'ýÿI‰Çéhîÿÿè['ýÿH‰Åé“ðÿÿHjM‰ïE1íÇ?BH‰ò>Çð>FLE1öé—øÿÿHÒiE1íÇØ>>H‰Å>ÇÃ>ùKé@øÿÿfDH‹=é4贻ýÿI‰Åéáþÿÿ@H‹=Ñ4蜻ýÿH‰Åé!ÿÿÿ@è$ýÿÆ@$é‚öÿÿfL‹}M…ÿ„ðÿÿL‹uIƒIƒHƒm„²L‰âL‰þL‰÷è@þÿIƒ/I‰Å……ðÿÿL‰ÿè!ýÿéxðÿÿ@M‹wM…ö„íÿÿI‹oIƒHƒEIƒ/„oL‰âL‰öH‰ïèÎ?þÿIƒ.I‰Å…ùíÿÿL‰÷èÉ ýÿéìíÿÿ@¶èé3óÿÿ„Ht$(ºL‰ÿè~¸ýÿI‰Åé»íÿÿfDHt$(ºH‰ïè^¸ýÿI‰Åé×ïÿÿfDHrhÇ{=CH‰h=Çf=bLéöÿÿf„è‹%ýÿH‰ÃéÖïÿÿH2hÇ;=?H‰(=Ç&=LéÙõÿÿf„H‹|$èF%ýÿH‰ÃéOíÿÿfDHêgE1ÿÇð<CH‰Ý<ÇÛ<dLHƒ+A¾…—üÿÿéŠüÿÿfDH=qFè"ýÿ…À„~ôÿÿ@I‰ßHg1ÛÇ–<?H‰ƒ<ǁ<#LIƒ/…/õÿÿL‰ÿèWýÿé"õÿÿf¨€„XüÿÿL‹B1ÿ¨ uH‹}Ht$(¨…YºAÿÐI‰Åé~îÿÿD¨€„üÿÿL‹B1ÿ¨ uI‹Ht$(¨…3ºAÿÐI‰Åé
ìÿÿDHƒmHÝfH‰Ý;Çß;CÇÑ;fL„Zõÿÿ1Ûé|ôÿÿ@H=qEè!ýÿ…À„{ëÿÿ@H’f1ÛE1íÇ–;>H‰ƒ;ǁ;Léûþÿÿ@H=)EèÄ ýÿ…À„níÿÿ@H‹EHPÿHBfE1íÇH;BH‰5;Ç3;ULé°ôÿÿfDè!ýÿH…À…rÿÿÿH‹«óH5äDH‹8è¬ýÿéWÿÿÿ€èÛ ýÿH…ÀuŽH‹óH5¸DH‹8è€ýÿésÿÿÿI‹G‹@ƒà=€…ïÿÿ¸H‰úL‰ÿH‰l$0L)ðL‰l$8HtÄ0L‰d$@èŸýÿH‰ÃH…À…óùÿÿHreÇ{:IH‰h:Çf:³LH…í„fHƒm„äóÿÿéðóÿÿDH‹-9L‹%**H‹EH‹˜€H…Û„o
è¹ýÿL‹5
ó‹H Q‰P A;»
1ÒH‰ïL‰æÿÓH‰ÅèŽýÿ‹X Sÿ‰P A‹HÎ=ÈÁø@9ÊŒKH…í„ñ
H‰ï虳ýÿHƒm„ÇH d1Ûǧ9DH‰”9Ç’9uLéEòÿÿDL‰îH‰ßèåºýÿH‰Åé†ñÿÿDHZdL‰íÇ`9GH‰M9ÇK9‡LéöñÿÿfDès!ýÿH‰ÅédìÿÿH‰îL‰çM‰æè­DþÿI‰Åé»ïÿÿDL‰ÿèøýÿé3îÿÿL‰÷èèýÿéôôÿÿH;¡ñ„ðÿÿºH‰ïè&ýÿH‰ÃH…À…÷ÿÿH¼cÇÅ8GH‰²8H‹EǬ8‰LHPÿé%òÿÿL‰íé·îÿÿH‰ßèxýÿéøíÿÿHt$(ºH‰ßè>³ýÿH‰ÅéðÿÿfDL‰ßèHýÿéyíÿÿL‰\$èæýÿL‹\$Æ@$éKíÿÿ„¨€„¨þÿÿL‹R1ÿ¨ uH‹{Ht$(¨…˜ºAÿÒH‰ÅéðÿÿH‰ÞH‰ïI‰ïèCþÿI‰Äé±õÿÿ€M‹~IƒéÊóÿÿH‰ßè¸ýÿé[ôÿÿè®ýÿH…À…ûÿÿH‹NðH5‡AH‹8èOýÿéúúÿÿH‰ïè‚ýÿéAùÿÿL‰ÿèuýÿé„ùÿÿL‰ïèhýÿé7îÿÿL‰÷è[ýÿéîÿÿL‰÷èNýÿéôÿÿL‰çèAýÿé×íÿÿL‰çè4ýÿéƒôÿÿH‰ïè'ýÿékôÿÿL‰ÿèýÿésôÿÿèÀýÿÆ@$é<ôÿÿL‰ÿèÿýÿéòìÿÿL‰ÿèòýÿé£íÿÿH‹=6-H'#H5(#ès´ýÿH‰ÅH…í…ÅêÿÿHÉaL‰íÇÏ6IH‰¼6Ǻ6—LéeïÿÿH‹=æ,H·"H5¸"è#´ýÿH‰ÃH…Û…ÈñÿÿHyaÇ‚6OH‰o6Çm6*Mé ïÿÿL‰÷èHýÿéoìÿÿL‰ïè;ýÿémìÿÿI‰ïéžúÿÿL‰õéæúÿÿH‹=o,è:³ýÿH‰ÅéBÿÿÿè]ýÿH‰ÅéyñÿÿH‹=N,è³ýÿH‰ÃéqÿÿÿL‰çèéýÿéÜóÿÿL‰ÿèÜýÿéÄóÿÿH‰ïèÏýÿé,üÿÿH
Ì`ÇÕ5OH‰
Â5ÇÀ5,Mé†ôÿÿH¥`Ç®5IH‰›5Ç™5™LéïÿÿèÇýÿI‰ÇééÿÿèýÿÆ@$é§ûÿÿHƒmH^`H‰^5Ç`5OÇR5/M„„ïÿÿH‹
=5‹C5H= T1ۋ505ès¿ýÿéîÿÿfDèSýÿI‰Æé®ðÿÿH‰ïèóýÿé­òÿÿI‹oH…í„6éÿÿM‹wHƒEIƒIƒ/„3I‹FM‰÷¿A¾ééÿÿL‰÷è«ýÿé€òÿÿ1ÿè_ýÿI‰ÄH…À„—îÿÿH‰ÆL‰÷èhýÿIƒ,$I‰Ç…xðÿÿL‰çèrýÿékðÿÿHo_Çx4IH‰e4Çc4¹LéøùÿÿHH_L‰ãÇN4OH‰;4I‹$Ç549MHƒèéDîÿÿH_Ç4OH‰4Ç
4@MIƒ,$„?I‹HƒèéaîÿÿH‹=$*HåH5æèa±ýÿH‰ÃH…Û…ðÿÿH·^L‰ãǽ3OH‰ª3Ǩ3;MéÈöÿÿ1ÒL‰ÞL‰ÿL‰\$è9ýÿL‹\$H…ÀH‰Ã…”èÿÿHj^L‰ÝÇp3IH‰]3I‹ÇX3ÄLHƒèé_ôÿÿH‹BhH…À„(H‹HH…É„H‹~ìH9C…hH‹CHpHƒþ‡ºH…À„ž‹kHƒøÿ„ŽH;¥ì„’H; ë„]L‹bhM…ä„>I‹L$H…É„0H…íˆÚH‰îL‰ïÿÑI‰Äé·ðÿÿH‹|$èÜýÿI‰ÄéàèÿÿH†]Ǐ2KH‰|2Çz2ûLé%ëÿÿH=&<L‰\$è¼ýÿL‹\$…À„"çÿÿéÒþÿÿL‰\$è0ýÿL‹\$H…À…ºþÿÿH‹ËêH5<H‹8èÌýÿL‹\$éšþÿÿèMýÿI‰ÆéîÿÿH‹=>(è	¯ýÿH‰Ãé#þÿÿH
ã\H‰H‰
à1Çâ1OÇÔ1=MH…À„àIƒ,$…hëÿÿL‰ãé|ñÿÿH¢\Ç«1KH‰˜1Ç–1	MI‰íL‰õE1öéHëÿÿH‹=¹'HšH5›èö®ýÿI‰ÇM…ÿ…çÿÿHL\L‰íÇR1JH‰?1Ç=1ÔLéèéÿÿL‰úL‰æH‰ïèÒýÿH‰ÃH…À…DîÿÿH\E1öÇ1OH‰û0Çù0BMéêüÿÿH‹=%'èð­ýÿI‰ÇéuÿÿÿHÊ[1íÇÑ0JH‰¾0Ǽ0ÖLéÇñÿÿèêýÿI‰ÄénæÿÿH=[:èöýÿ…À„|íÿÿésÿÿÿH{[Ç„0PH‰q0Ço0QMé"éÿÿH‹|$è˜ýÿH‰ÅéÃíÿÿè;ýÿH…À…,ÿÿÿH‹ÛèH5:H‹8èÜýÿéÿÿÿM‹|$M…ÿ„æÿÿM‹t$IƒIƒIƒ,$„L‰êL‰þL‰÷èÓ1þÿIƒ/H‰Å…ïåÿÿL‰ÿèÎýÿéâåÿÿHËZL‰íÇÑ/JH‰¾/Ǽ/åLé!þÿÿH‰ï1ÒL‰æèRýÿH‰ÅH…À…ÕõÿÿHˆZL‰íÇŽ/DH‰{/Çy/qLé$èÿÿH^ZÇg/PH‰T/ÇR/_MéÌòÿÿH=þ8è™ýÿ…À„1õÿÿë™H‹@èH‹0èÀýÿ…Àt%èWýÿH‹CH5JH‹PH‹AèH‹81Àè×ýÿHéYÇò.QH‰ß.ÇÝ.lMéçÿÿè»ýÿH…À…,ÿÿÿH‹[çH5”8H‹8è\ýÿéÿÿÿL‰ÿèýÿéÀùÿÿHŒYÇ•.IH‰‚.Ç€.«Léôÿÿ‹k‹CHÁåH	ÅH÷ÝHƒýÿ„/I‹UH;脍H;ç…aûÿÿH…퉵I‹EHèI;Eƒ’M‹dÅIƒ$é,ìÿÿH‹ûæH‹RH5àHH‹81ÀèÖýÿéúþÿÿL‰çèÙýÿéãýÿÿ1ɺAÿÐI‰Åé#àÿÿ1ɺAÿÐI‰ÅéÕÝÿÿè;ýÿH…íyaH‰èImI;mƒ_I‹EL‹$èIƒ$é­ëÿÿHƒÍÿH‰ïè7ýÿH‰ÅH…À„„þÿÿH‰ÆL‰ïè@ýÿHƒmI‰Ä…sëÿÿH‰ïèJýÿéfëÿÿH‰èë¡Hƒøþ„ÓþÿÿHƒø…þ‹k‹CHÁåH	Åé6úÿÿèýÿH‰ÇH…À…êýÿÿI‹EH;Ææ„ãH;Áå„ÍL‹`hM…ä„[ÿÿÿI‹L$HƒÍÿH…É„MÿÿÿI‹$H…À„úÿÿL‰ïÿÐH…Àˆ¬I‹L$HÅéþùÿÿH‰ßèÜýÿI‰ÄH…À„vÿÿÿH‰Çè¸ýÿIƒ,$H‰Å…'þÿÿL‰çèrýÿéþÿÿH‰èéJþÿÿ1ɺAÿÒH‰Åé|äÿÿH;æt>1íH;å…•ùÿÿéþÿÿH‰Åé¯þÿÿH‰ßèVýÿH‰ÅéËýÿÿHƒÍÿéóýÿÿHƒÍÿéfþÿÿ1íéfþÿÿH‹&åH‹8è&ýÿ…À„ýÿÿè9ýÿI‹L$é9ùÿÿI‹HƒèéûìÿÿH‰ßèËýÿéúÿÿfDóúAWAVAUATUSH‰óHì¨L‹fH‰|$dH‹%(H‰„$˜1ÀH‹½äHDŽ$€H‰„$ˆH…Ò…ðIƒü„®Iƒü…ÔL‹n H‹kHÇD$`H‰ïHÇD$hHÇD$pè™ýÿH‰ÃHƒøÿ„|	H‹e+¿L‹ (ÿhE1É1É1ÒH‰ÆA¸H‰ïAÿÔH‰D$`I‰ÄH…À„DHƒ8H‰D$h„
H‹+H‹
ŸHÇD$`HÇD$hH9H…KL‹
tM…É„;IƒL‰L$`I‹AH‹5·&L‰ÏH‹€H…À„,ÿÐI‰ÆL‰t$pH‹|$`M…ö„$Hƒ/„²H‹ƒ*H‹
HÇD$`H9H…ñL‹5êM…ö„¹IƒI‹FH‹5B"L‰÷H‹€H…À„¯ÿÐH‰ÅH…í„QIƒ.„WH‹EE1ÿE1ɿH;â„³H;ㄦH;_ã„	L‰L$è?ýÿL‹L$H…ÀI‰Æ„ÞM…ÉtL‰HIcÇIƒ$AƒÇHƒÀMcÿM‰dÆH‹ÞHƒK‰DþH‹EL‹¸€M…ÿ„yèôýÿ‹H QH‹
?â‰P ;<H‰L$1ÒL‰öH‰ïAÿ×I‰ÇèÄýÿH‹L$‹p Vÿ‰P ‹=ȏ	Áø@9ÂŒ;M…ÿ„ÒL‰|$`Iƒ.„Hƒm„ÈH‹|$pH‹GH;pá„òL‹|$`H;îáL‰|$x„“H;Dâ…¶H‹W‹B¨„/H‹jE1ö¨ uL‹wèýÿH‹
lá‹p V‰P ;³H‰L$L‰þL‰÷ÿÕH‰Åèî
ýÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒn	H…턝H‰l$hH‹|$`Hƒ/„	HÇD$`L‹|$hM…ÿ„‚H‹|$pHƒ/„óHÇD$pL;=á”ÀL;=Ñà”ÂÂ…L;=ßà„ùL‰ÿè)ýÿA‰ƅÀˆžL‹|$hIƒ/„¯HÇD$hE…ö…­I‹D$L;-™àH‰D$(„Æèq	ýÿH‰D$ H‹€ëH‰ÐL‹M…Ût
L;fà…HH‹PH…ÒußH‹HH‹@H‰L$H‰D$M…Û…6H‹D$H…ÀtHƒH‹D$H…ÀtHƒH‹!'H‹
šH9H…H‹=H…ÿ„¨HƒH‰|$hH‹GH‹5ôL‰\$0H‹€H…À„×ÿÐL‹\$0H‰ÇH‰|$`L‹D$hH…ÿ„ŠIƒ(„¸HÇD$hH‹GH;ß„>H;—ßL‰l$x„ÄH;íß…#H‹W‹B¨„ó$H‹jE1ÿ¨ uL‹L‰\$0è¿ýÿH‹
ßL‹\$0‹p V;‰P v%H‰L$8L‰îL‰ÿL‰\$0ÿÕH‰ÅèˆýÿL‹\$0‹H QÿH‹L$8‰P ‹=ȍHÎÁø@9ÊŒ1H…í„¢%fH‹|$hH‰l$pH…ÿt
Hƒ/„_HÇD$hH‹|$`H…í„(Hƒ/„>H‰ßL‰\$0HÇD$`è`
ýÿL‹\$0H…ÀH‰D$`„Å¿L‰\$0èÎ
ýÿL‹\$0H…ÀH‰D$hH‰Å„HÇD$hH‹D$pHÇD$pH‰EH‹D$`HÇD$`H‰E M…Ût
Iƒ+„H‹t$H…ötH‹H‰D$ HƒèH‰„
H‹L$H…É„nH‹H‰D$HƒèH‰…YH‰Ïè’ýÿéLL‹cf„M…äHÇOH
·OHOÈŸÀHšP¶ÀL
_OLOÊL@HƒìH‹DÝATHµSH5d3H‹81ÀèýÿH,O¾uEÇ0$4Ç"$uEH‰$XZH
Oº4H=žCE1äèF®ýÿH‹„$˜dH3%(…Š%HĨL‰à[]A\A]A^A_Ãf.„L‹-áÜéTøÿÿ@H‹U‹B‰Cፁù€…ßùÿÿH‹
ùL‰Œ$€E1ÀL‰¤$ˆL‹RH‰Œ$¹L)ùH´̀¨ uL‹EL‰L$¨…¬"H‰úL‰ÇAÿÒL‹L$H‰D$`H…À…c
H#NI‰íÇ)#žH‹|$hH‰#1íÇ
#åEé‡
ƒè2éõùÿÿ„H‹pH‹@H‰t$H‰D$IƒéÁûÿÿDH‰Çè¸ýÿL‹d$héá÷ÿÿfDD¶ðéûÿÿ€è“ýÿéDøÿÿfDL‰÷è€ýÿ霸ÿÿH‰ÕIƒü„‹Iƒü„M…ä…ØýÿÿH‰×è@ýÿH‹5‘H‰ïI‰ÅH‹VIƒíèvýÿH‰„$€H…À„˜ýÿÿM…í<H‹¬$€L‹¬$ˆé»öÿÿ€H‰ïèøýÿé+ùÿÿèëýÿéíùÿÿfDèÛýÿL‹|$héþùÿÿL‰ÿèÈýÿéDúÿÿL‰÷è¸ýÿéàøÿÿè[ýÿÆ@$é·øÿÿfH¢LE1ÿE1íE1ÉH‰™!1íE1öE1äÇ“!›H‹|$`Ç€!«E„H…ÿ„H#Hƒ/„H‹|$hH…ÿt
Hƒ/„éH‹|$pH…ÿt
Hƒ/„
M…Ét
Iƒ)„M…ítIƒm„M…ÿt
Iƒ/„H‹
!‹!H=“@‹5õ è8«ýÿM…ätIƒ,$„øE1äM…öt8Iƒ.„VH…ítHƒm„îIƒ.…¶üÿÿL‰÷è”ýÿé©üÿÿ€H…í„™üÿÿHƒm…ŽüÿÿH‰ïèlýÿéüÿÿ€I@I‰ÎH9L$0¢L‹t$HH‹l$PL‹d$XH‹|$@èqýÿH‹D$8L‹-%H‹@H‹˜€H…Û„¨è¼ýÿ‹H QH‹
Ù‰P ;~H‰L$1ÒL‰îH‹|$8ÿÓI‰Åè‹ýÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒÓM…í„{H‹\$8H‹H‰D$HƒèH‰„PIƒm„•IƒL‰óIƒ,$„¥Iƒ.M‰ô…µþÿÿfDL‰÷èXýÿéþÿÿL‰L$èFýÿL‹L$éþÿÿ@L‰L$è.ýÿH‹|$hL‹L$é×ýÿÿ€L‰L$èýÿL‹L$éßýÿÿ@L‰ÏèøýÿéÝýÿÿL‰ïèèýÿéÝýÿÿL‰ÿèØýÿéÜýÿÿ1ÛL‰çI‰ÜèÃýÿéùýÿÿfDH‰ïè°ýÿéþÿÿèSýÿÆ@$é„öÿÿf.„H‰ßè˜ýÿH‰D$hH‰ÅH…À„W¿è
ýÿH‰D$pH‰ÅH…À„ïHÇD$pH‹D$hHÇD$hH‰EH‹zH‹5ã	H9p…¹L‹
Ê	M…É„	IƒL‰L$`I‹AH‹5µL‰ÏH‹€H…À„"ÿÐH‰D$hH‹|$`H…À„åHƒ/„ÛH‹H‹5e	HÇD$`H9p…âL‹
C	M…É„BIƒL‰L$`I‹AH‹5¦L‰ÏH‹€H…À„ÿÐI‰ÇH‹|$`M…ÿ„ÀHƒ/„&	H‹|$hA¸HÇD$`H‹GH;÷Õ„9H;zÖ„ì
H;ÕÖ„7L‰Çè·ýÿI‰ÁH…À„÷H‹D$`H…Àt
I‰AHÇD$`IcÆHƒEL‹l$hI‰lÁAFH˜M‰|ÁI‹EL‹°€M…ö„ÒL‰L$èiýÿL‹L$‹H QH‹
¯Õ‰P ;1ÒL‰ÎH‰L$L‰ïL‰L$AÿÖI‰Åè/ýÿH‹L$L‹L$‹p Vÿ‰P ‹=ȏgÁø@9ÂŒáM…í„÷L‰l$pIƒ)„¹H‹|$hHƒ/„ZHÇD$hL‹t$pI‹FIƒA‹vI‹~ HÇD$pH‰D$H‹GÿðH‹5:H‰D$0H‹D$H‰t$L‹ˆèM‹yL‰L$ L‰ÿècýÿH‹t$H…ÀH‰D$8„ÚH‹@L‹L$ H‹€H…À„	H‹|$8L‰úL‰ÎÿÐH‰D$8H…À„µH‹D$H‹5ØL‹¸èH‰t$I‹WH‰×H‰T$ èóýÿH‹t$H…ÀH‰Ç„ïH‹@H‹T$ H‹ˆH…É„y
L‰þÿÑH‰D$hH‰ÇH…À„ØH‹@H;ÀÓ…BL‹OM…É„5L‹WIƒIƒL‰T$hHƒ/„ú
I‹BH;ÔL‰L$x„óH;mÔ…I‹R‹B¨„6L‹jE1ÿ¨ uM‹zL‰L$è?ýÿH‹
ÓL‹L$‹p V;‰P ¡H‰L$ L‰ÎL‰ÿL‰L$AÿÕI‰ÇèýÿL‹L$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒ˜M…ÿ„ÔL‰|$pIƒ)„†H‹|$hHƒ/„s	HÇD$hIƒ/„P	HÇD$pE1ÿè/ýÿHƒ|$0H‰D$@H‹D$(HØH‰D$ Ž…ùÿÿH‰l$PL‰d$XL‰t$HM‰þfDH…ÛŽ?ùÿÿH‹D$L‹|$(fïÉHhHH‹D$N,ðM‰ìòAH‰ïIƒÇIƒÄòL$è5ÁòL$òAD$øòXÈL9|$ uÍò%H‹D$Iò^ÑHÈf(ÊòAEIƒÅòYÁòAEøI9ÕuçéºøÿÿfH‹
H‰úH‰ïL‰Œ$€L‰L$H‰„$¸L)øL‰¤$ˆH´Ā豓ýÿL‹L$H…ÀH‰D$`„ÊM…É„âïÿÿIƒ)…ØïÿÿL‰Ïè£ûüÿéËïÿÿfDHšCE1íE1É1íH‰’H‹|$hǏœÇµEE1öE1ÿé÷ÿÿfDH‹=¡H"H5#èޕýÿI‰ÁL‰L$`M…É…£íÿÿH/CH‹|$hE1í1íH‰%Ç'žÇÄEë–€ƒè2é—ûÿÿH=¹!H‰L$èOýüÿH‹L$…À„¦îÿÿfHÇD$`ÇÙžH¿B1ÒE1ÉÇ¿öEH‰°1ÀM‰÷I‰íH‹|$hI‰ÖH‰Åé@öÿÿ„Ht$xºL‰\$0èL’ýÿL‹\$0H‰Åé¿ñÿÿ€H‹=¡
èl”ýÿI‰Áé	ÿÿÿ@è‹ÿüÿI‰ÆéÌìÿÿH2BE1ÿE1íE1ÉH‰)1íÇ)žÇÆEéžõÿÿfDèóùüÿéùÿÿfDH‹W‹B‰Cፁù€…±ùÿÿH‹L$`IcöL‹JE1ÛH‰¬$ˆH‰Œ$€¹H)ñL‰¼$H´̀¨ uL‹_¨…¯L‰ÂL‰ßAÿÑI‰ÆL‰t$pH‹|$`M…ö„cH…ÿt
Hƒ/„˜HÇD$`Iƒ/…úÿÿL‰ÿè@ùüÿéúÿÿH‹=HòH5ó输ýÿI‰ÆM…ö…ýëÿÿHAE1ÿE1íE1ÉH‰H‹|$`1íÇžÇøÉEé{ôÿÿL‰þèP—ýÿH‰Åé»íÿÿ„L‹T$hI‹BH;øÎ„ÅH;SÏ…öI‹J‹Qö„æE1ÿƒâ L‹iuM‹zè(ûüÿH‹
y΋p V‰P ;lH‰L$L‰ÿ1öAÿÕI‰Çèûúüÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒ
M…ÿ„mL‰|$pM…ÿ…úúÿÿH@ǰH‰ÇdGH‹\$8H‹H‰D$HƒèH‰„µH‹|$`E1ÿE1íE1Éé]óÿÿDL‰ÇL‰\$0è«÷üÿH‹|$`L‹\$0é,îÿÿ@Hš?M‰ñE1ÿE1íH‰‘H‹|$`E1öÇ‹žÇ}ËEéóÿÿH‹=©
èt‘ýÿI‰Æé1þÿÿ@è“üüÿH‰ÅéIêÿÿè3÷üÿéÐöÿÿfDL‰\$0è÷üÿL‹\$0é®îÿÿ@L‹MM…É„@êÿÿL‹}IƒIƒHƒm„¼I‹GL‰ý¿A¿éêÿÿDèËöüÿéœ÷ÿÿfDH‹oH…í„ëÿÿL‹GHƒEIƒL‰D$pHƒ/„5
H‹T$`H‰îL‰ÇèwþÿH‰D$hHƒm…oëÿÿH‰ïèoöüÿébëÿÿf.„Hb>1íE1öE1íH‰ZE1ÉÇYžÇKFéõñÿÿfDL‰\$0èöüÿH‹l$pL‹\$0éˆíÿÿ€Ht$xºèٍýÿH‰ÅéäêÿÿHò=ÇûžH‰èÇæFH‹|$`E1ÿE1íE1É1íE1öéVñÿÿfDH²=I‰íE1ÿǵžH‰¢H‹|$`1íÇ™ëEéñÿÿ@H‹D$8Hƒéîöÿÿf.„H‹F H‰×H‰„$ˆH‹FH‰„$€è0ôüÿH…ÀŽðÿÿH”$€L‰áH‰ïLœAH5ˬè6ˆýÿ…À‰òïÿÿH=¾eEÇ4H‰ÇÿeEéáíÿÿfH‹FH‰×H‰„$€è¼óüÿI‰ÅéŸïÿÿ@H‹-ÙL‹-ÊH‹EH‹˜€H…Û„ÕèI÷üÿH‹
šÊ‹p V‰P ;ýH‰L$1ÒH‰ïL‰îÿÓH‰Åè÷üÿH‹L$‹X Sÿ‰P ‹=ÈŽ
ƒè29ÂŒåH…í„àH‰l$hH‰ïè‹ýÿH‹|$hHƒ/„ˆH!<H‹|$`1íHÇD$hH‰ÇŸÇFE1öE1ÿE1íE1ÉH…ÿ…ïÿÿéšïÿÿ1ÒL‰öH‰ïèƒøüÿH‰D$`H…À…ØçÿÿééøÿÿHƒH‰|$hé“õÿÿfL‰ÿè˜óüÿé£öÿÿè‹óüÿL‹|$pé~öÿÿL‰Ïèxóüÿé:ôÿÿL‰L$èöüÿL‹L$Æ@$éôÿÿ„¨€„púÿÿL‹JE1( uL‹GHt$x¨…®ºL‰ÇAÿÑH‰Åéèÿÿf„èöüÿH…À…2øÿÿH‹«ÈH5äH‹8è¬óüÿéøÿÿ€L‰L$èÖòüÿL‹T$hL‹L$éíôÿÿ€L‰ßè¸òüÿé×êÿÿH‰÷è¨òüÿéæêÿÿH=iH‰L$èÿôüÿH‹L$…À„/çÿÿf1íélçÿÿf„èkõüÿH‰ÅH…ÀuãH‹ÈH5EH‹8è
óüÿé;çÿÿ„H‹D$`IcÖH‰¬$ˆL‰¼$H‰„$€¸H)ÐL‰ÂH´Āèè‰ýÿH‰D$pI‰ÆH…À„¾H‹|$`H…ÿ…„øÿÿ鉸ÿÿ@H‹5iH‰ïH‹Vè
õüÿH…À„üÿÿH‰„$ˆIEÿésüÿÿL‰ÎL‰×L‰L$è#ýÿL‹L$I‰ÇL‰|$pIƒ)…wùÿÿL‰Ïè„ñüÿL‹|$péeùÿÿf.„H‹=¹H
úH5úèö‹ýÿI‰ÁL‰L$`M…É…5ðÿÿHG9H‹|$hE1íÇHªH‰5Ç3éFé­õÿÿfDH‹=Yè$‹ýÿI‰Á묀Hú8ǪH‰ð
Çî
ëFéäüÿÿèöüÿéÖïÿÿfDH‹=ÉHjùL‰\$0H5fùèA‹ýÿL‹\$0H‰ÇH‰|$hH…ÿ…ÔæÿÿH8H‹|$`Ç‘
¦H‰D$8H‰y
Çw
lFH…ÿt
Hƒ/„L‹D$hHÇD$`M…Àt
Iƒ(„ÃHÇD$hH‹|$pH…ÿt
Hƒ/„ÆH‹

‹%
H=²,L‰\$0HÇD$p‹5
èI—ýÿH‹|$ HL$pHT$`Ht$hèàvýÿL‹\$0…Àˆ4H‹ŒÅI9E…¦	IƒEH‰ßL‰\$0è°ñüÿL‹\$0H…ÀI‰Ç„Ì	¿L‰\$0è òüÿL‹\$0H…ÀI‰Á„Ô	L‰xH‰ÆL‰ïL‰\$@H‰D$0èöîüÿL‹L$0L‹\$@H…ÀH‰Å„3
Iƒm„•Iƒ)„sH‹|$hH…ÿt
Hƒ/„LHÇD$hH‹|$`H…ÿt
Hƒ/„CHÇD$`H‹|$pH…ÿt
Hƒ/„:H‹D$ H‹t$HÇD$pH‹L$H‹€H‹8L‹xL‰L‹hH‰pH‰HH…ÿt
Hƒ/„·M…ÿt
Iƒ/„²M…í„@íÿÿIƒm…5íÿÿL‰ïènîüÿé(íÿÿH‹\$81ÒL‰îH‰ßèóüÿI‰ÅH‹H‰D$HƒèH‰u
H‹|$8è6îüÿM…텝ëÿÿH/6E1ÿE1íE1ÉH‰&H‹|$`Ç#°ÇëGé˜éÿÿ„L‰ïèèíüÿé^ëÿÿè‹ðüÿÆ@$éëÿÿfH‹=HZöH5[öèVˆýÿI‰ÁL‰L$`M…É…íÿÿH§5H‹|$hE1íǨ
ªH‰•
Ç“
îFé
òÿÿfDL‰ÇL‰\$0ècíüÿL‹\$0é&ýÿÿf„L‰\$0èFíüÿL‹\$0é&ýÿÿ@L‰\$0è.íüÿL‹D$hL‹\$0éÔüÿÿ€H‹=!L‰\$0è'‡ýÿL‹\$0H‰Çéaüÿÿf.„Hò4Çû	¦H‰D$8H‰ã	Çá	nFéyüÿÿ@èòüÿL‹\$0H‰Çé!ãÿÿfDHª4E1íE1ÉE1öH‰¡	Ç£	ªÇ•	ðFéèÿÿ„è»ñüÿI‰ÇéíëÿÿH‹=©ÿèt†ýÿI‰Áé™þÿÿ@HJ4ÇS	¦H‰D$8H‰;	Ç9	}Fé½ûÿÿ@H‹wH‰t$hH…ö„°âÿÿL‹GHƒIƒL‰D$`Hƒ/t$€L‰êL‰ÇL‰\$0èÈ
þÿL‹\$0H‰Åé+ãÿÿL‰\$0èÁëüÿH‹t$hL‹\$0H…ö„¸
L‹D$`ë¿L‹¸€H‹5ÁM…ÿ„É	H‰t$ L‰T$è1îüÿL‹T$H‹t$ H‰ÂH‹
uÁ‹@ ƒÀ;‰B §	H‰L$1ÒL‰×Aÿ×I‰Çè÷íüÿH‹L$H‰‹@ ƒè‰B ‹J΁úÈÁúR9ȍøòÿÿèÃíüÿÆ@$éçòÿÿf.„H‹OH‰L$`H…É„µêÿÿH‹WHƒHƒH‰T$hHƒ/„BH‹BH‰×A¸A¾é‚êÿÿL‰ÏL‰\$0è«êüÿL‹\$0évûÿÿL‰ïL‰\$8L‰L$0èŽêüÿL‹\$8L‹L$0éJûÿÿ€Hz2L‹D$hÇ~¦H‰D$8H‰fÇd€Féüùÿÿ€Áø@ééõÿÿDH‰ïL‰L$L‰ýè êüÿI‹GL‹L$¿A¿éDÝÿÿH	2H‹|$`Ç
¦H‰D$8H‰õÇó‚FéwùÿÿH‹WÀH‹8è÷éüÿHÉ1E1ÿE1íE1ÉH‰ÀH‹|$`ǽ°Ç¯TGé2åÿÿL‰L$è8ìüÿL‹L$Æ@$éPìÿÿL‰\$0è ìüÿL‹\$0Æ@$é·àÿÿè]éüÿL‹D$pé¼òÿÿH‹ԿH‹8ètéüÿHÇD$hH=1ÇF°H‰3Ç1VGé*ñÿÿH1H‹|$`E1íE1öH‰Ç
ªÇÿGé‚äÿÿèÝèüÿé?úÿÿL‰ÿèÐèüÿéAúÿÿL‰\$0èÁèüÿL‹\$0é ùÿÿL‰\$0è­èüÿL‹\$0é©ùÿÿL‰\$0è™èüÿL‹\$0é²ùÿÿH‹D$8E1ÿE1íE1ÉÇ“§H‰€Ç~ªFH‹D$ H‹\$H‹€H‹8H‹hH‰XH‹\$L‹pL‰H‰XH…ÿt
Hƒ/„ªH…ítHƒm„bM…ötIƒ.„jH‹|$`1íE1öéãÿÿH‹|$`1íé‘ãÿÿ1ÒL‰ÎL‰ïL‰L$èŸìüÿL‹L$H…ÀH‰D$p…‰èÿÿHÎ/E1ÿE1íE1öH‰ÅH‹|$`ǪǴGé7ãÿÿè’çüÿénóÿÿH=VH‰L$èìéüÿL‹L$H‹L$…À„ÎçÿÿHÇD$pë“è
êüÿÆ@$é
óÿÿL‰L$èGêüÿL‹L$H…ÀuÓH‹æ¼H5H‹8èççüÿL‹L$ë¶H"/H‹|$`Ç&£H‰Ç@FéóÿÿHö.I‰íÇüžH‹|$hH‰ä1íÇàÝEéZëÿÿè¾æüÿé^íÿÿH‰ïL‰L$è¬æüÿL‹L$é‡þÿÿL‰÷L‰L$1íE1öèæüÿH‹|$`L‹L$é!âÿÿL‰L$èwæüÿL‹L$éBþÿÿHo.E1ÿE1íE1ÉH‰fH‹|$`E1öÇ`£ÇRBFéÕáÿÿL‰îL‰\$0訄ýÿL‹\$0H‰Åé{ÝÿÿH‹|$8èæüÿé<îÿÿL‰ïL‰\$0èêüÿL‹\$0H…ÀI‰Á…ðH‹D$8E1ÿE1íÇõ¨Çç¶FH‰Øé]ýÿÿH‹D$8E1ÉÇͨǿ¸FH‰°é5ýÿÿÇ­¨H‹D$8ÇšºFH‰‹éýÿÿH=?H‰L$èÕçüÿH‹L$…À„dâÿÿH‹\$8H‹H‰D$HƒèH‰…÷ÿÿH‹|$8è4åüÿé÷ÿÿè*èüÿH…ÀuÍH‹κH5H‹8èÏåüÿëµH‹D$8E1ÿǨÇ	¿FH‰úéüÿÿ1Ò1öL‰×è¹|ýÿI‰Çé·ìÿÿHt$xºL‰×L‰L$èš|ýÿL‹L$I‰Çéóÿÿè¨çüÿH…À„6HÇD$pé…ìÿÿèŒäüÿH‹|$hA¸A¾H‹Gé9äÿÿ¨€„·òÿÿL‹Z1ÿ¨ uI‹zL‰L$Ht$x¨…$ºAÿÓL‹L$I‰Çéšòÿÿ¨€„øýÿÿL‹JE1( uL‹GL‰\$0Ht$x¨…̺L‰ÇAÿÑL‹\$0H‰ÅéTÛÿÿH=½
H‰L$èSæüÿH‹L$…À„vëÿÿé2ÿÿÿH=š
H‰L$ L‰L$è+æüÿL‹L$H‹L$ …À„7æÿÿHÇD$pIƒ)…ŠëÿÿéòÿÿH‰ú1ÉL‰ÇAÿÒL‹L$éMÝÿÿH=E
H‰L$8L‰\$0èÖåüÿL‹\$0H‹L$8…À„bÚÿÿ1íé­ÚÿÿL‰L$èCæüÿL‹L$H…ÀuH‹â¸H5
H‹8èããüÿL‹L$HÇD$pIƒ)…ÿêÿÿézñÿÿfDL‰\$0èöåüÿL‹\$0H…ÀH‰Åu•H‹’¸H5Ë	H‹8è“ãüÿL‹\$0é)ÚÿÿH‰ï1ÒL‰îè|çüÿH‰D$hH‰ÅH…À…uîÿÿH­*ǶÿŸH‰£ÿÇ¡ÿFé¶ìÿÿH=M	H‰L$èãäüÿH‹L$…À„åíÿÿHÇD$hë°èVåüÿH…ÀuëH‹ú·H53	H‹8èûâüÿëÓH;*H‹|$`E1íE1ÉH‰0ÿÇ2ÿªÇ$ÿGé§ÝÿÿH	*E1íE1ÉÇÿªH‰ùþÇ÷þGézÝÿÿ1ÉL‰ÂL‰ßAÿÑI‰ÆéJèÿÿ1ÒL‰×è}æüÿI‰Çé›éÿÿH=~H‰L$@H‰t$ L‰T$è
äüÿL‹T$H‹t$ …ÀH‹L$@„'öÿÿéßüÿÿ1ɺL‰ÇAÿÑH‰Åé\ÖÿÿH‹·H5KH‹8èâüÿHÇD$pé9éÿÿèÐáüÿ1ɺL‰ÇAÿÑL‹\$0H‰Å醨ÿÿ1ɺAÿÓL‹L$I‰ÇétïÿÿH‰èL‰òL‰íM‰þé`æÿÿI‰ÅéIñÿÿH‹|$`H‹Gé’×ÿÿ„óúAWAVAUATUH‰õSHƒìxL‹fH‰|$dH‹%(H‰D$h1ÀH‹ã¶HÇD$@HÇD$HHÇD$PH‰D$XH…Ò…"
Iƒü„(Iƒü…b
H‹F0H‰D$H‹](L‹} H‹mH‹¢ý¿L‹ (ÿhE1É1É1ÒH‰ÆA¸H‰ïAÿÔI‰ÄH…À„6Hƒ8„lH‹]ý¿L‹¨(ÿhE1É1É1ÒH‰ÆA¸L‰ÿAÿÕI‰ÅH…À„1Hƒ8„7H‹ý¿L‹°(ÿhE1É1É1ÒH‰ÆA¸H‰ßAÿÖH‰$H…À„ãH‹$Hƒ8„}
A‹EA;D$„î
H‹¯üH‹
8çH9H…^L‹çM…Ò„ŽIƒI‹BL‰T$L‰×H‹5oøH‹€H…À„ÿÐL‹T$H‰ÅH…í„„Iƒ*„

H‹CüH‹¼æH9X…òL‹£æM…Ò„RIƒI‹BL‰T$L‰×H‹5ôH‹€H…À„CÿÐL‹T$I‰ÆI‹HƒèM…ö„AI‰H…À„¥	H‹ÎûH‹
7æH9H…uH‹æH…Û„¥HƒH‹CH‹5Æ÷H‰ßH‹€H…À„sÿÐI‰ÁM…É„Hƒ+„ËI‹A1ÛE1ÿH;۳¿„àH;Y´„ÛH;´´„¾
L‰L$è”àüÿL‹L$H…ÀI‰À„›H…ÛtH‰XIcÇIƒ$AƒÇHƒÀMcÿM‰dÀI‹AIƒEH‹˜€O‰løH…Û„dL‰D$ L‰L$èEàüÿL‹L$L‹D$ ‹H QH‹
†³‰P ;C1ÒH‰L$(L‰ÆL‰ÏL‰D$ L‰L$ÿÓI‰ÇèàüÿH‹L$(L‹L$‹X L‹D$ Sÿ‰P ‹=ȍHÎÁø@9ÊŒPM…ÿ„'Iƒ(„Iƒ)„ËI‹FE1É1ÛH;«²¿„ÐH;)³„3H;„³„~
L‰L$èdßüÿL‹L$H…ÀI‰À„SM…ÉtL‰HHcÃÃHƒÀHcÛM‰|ÀH‹$HƒI‰DØI‹FH‹˜€H…Û„nL‰D$èßüÿL‹D$‹H QH‹
c²‰P ;`1ÒH‰L$(L‰ÆL‰÷L‰D$ ÿÓH‰D$èâÞüÿH‹L$(L‹T$‹X L‹D$ Sÿ‰P ‹=ȍHÎŽ9ÊŒÂM…Ò„vIƒ(„Iƒ.„½H‹EH;’±„H;²L‰T$8„H;k²…]H‹U‹B¨„AH‹ZE1ÿ¨ „¯
L‰T$è=ÞüÿL‹T$‹H QH‹
ƒ±‰P ;%H‰L$ L‰ÖL‰ÿL‰T$ÿÓI‰ÆèÞüÿH‹L$ L‹T$‹X Sÿ‰P ‹=ȍHÎŽ[
9ÊŒM…ö„H‰ëIƒ*„M…ö„œHƒ+„L;5;±”ÀL;5	±”ÂÂu
L;5±…
¶ØIƒ.„(…Û…YI‹D$H‹5ÌóL‰çH‹€H…À„éÿÐH‰ÅH…í„èH‹Ô÷H‹-âH9X…ÛL‹5âM…ö„cIƒI‹FH‹5ŒðL‰÷H‹€H…À„4ÿÐI‰ÇM…ÿ„GIƒ.„¡H‹EH;毅€L‹EM…À„sH‹]IƒHƒHƒm„|L‰ÆL‰úH‰ßL‰D$èáøýÿL‹D$I‰ÆIƒ(„·Iƒ/„íM…ö„Hƒ+„JL;5ó¯…LIƒ,$„BI‹EH‹5¯òL‰ïH‹€H…À„òÿÐH‰ÅH…턱H‹·öH‹áH9X…æL‹çàM…Ò„ZIƒI‹BL‰T$L‰×H‹5gïH‹€H…À„wÿÐL‹T$H‰ÃI‹HƒèH…Û„*I‰H…À„±H‹º®H9E…÷L‹eM…ä„êL‹EIƒ$IƒHƒm„SL‰ÇH‰ÚL‰æL‰D$è°÷ýÿIƒ,$L‹D$I‰Â„úHƒ+„#M…Ò„ƒIƒ(„€L;n…ŸIƒm„ˆH‹<$H‹5}ñL‰T$H‹GH‹€H…À„ ÿÐL‹T$H‰ÅH…í„" H‹zõH‹³ßH9X…W L‹=šßM…ÿ„t!IƒI‹GL‰T$L‰ÿH‹5*îH‹€H…À„;!ÿÐL‹T$I‰ÄM…ä„ò Iƒ/„ÎH‹†­H9E…"L‹mM…í„L‹EIƒEIƒHƒm„aL‰ÇL‰âL‰îL‰T$ L‰D$èwöýÿIƒmL‹D$L‹T$ H‰Ã„åIƒ,$„<H…Û„!Iƒ(„mH;‚­…Ä!H‹$H‹H‰D$HƒèH‰„lH‹D$HƒìM‰ðL‹
ÐêH=¦H‹¨èHp HƒEH‰éjÿ56êSjÿ5íêARL‰T$8jH‹T$PÿQóL‹T$@I‰ÇHƒÄ@H…À„Ü Hƒm„êL‰ÿL‰T$M‰ôè)"þÿL‹T$H‰$H‰ÅM‰ÕH…À…H“E1öE1ÒÇ–óÉ
H‰ƒóǁóö=é´@IƒüwNI‰ÕHœ%Jc¢HÐ>ÿàH‹FL‰ïH‰D$@è%ÕüÿH‰ÃIƒüHM…䄬Iƒü„Çé©
L‹eIƒüHRH
BHMȝÀHƒì¶ÀATHg"L@H‹ثH5L
H‹81Àè°ÚüÿHÂ¾Ø;ÇÆòK
ǸòØ;H‰©òXZH
™ºK
H=dE1äèÜ|ýÿH‹D$hdH3%(…%HƒÄxL‰à[]A\A]A^A_ÃfDH‹«H‰D$éÚôÿÿH‹F0H‰D$XH‹E(H‰D$PH‹E L‰ïH‰D$HH‹EH‰D$@èÔüÿH‰ÃIƒü…Ôþÿÿ騐L‰×èøÔüÿééõÿÿL‰×èèÔüÿéNöÿÿIƒü…o	H…ۏE	H‹D$XH‹l$@L‹|$HH‹\$PH‰D$éVôÿÿ€H‰Çè Ôüÿé‡ôÿÿH‰ÇèÔüÿé¼ôÿÿH‹$;A…õÿÿ…À…ýôÿÿH‹Eö€«„Ò L‹EI@Hƒø‡–H©#Hc‚HÐ>ÿàIƒ.uL‰÷è1ÔüÿE1ÀfDI‹Gö€«„MI‹oHEHƒø‡[Hr#Hc‚HÐ>ÿàIƒ/uL‰ÿL‰D$1íèßÓüÿL‹D$f.„H‹Cö€«„@!L‹{IGHƒø‡’H.#Hc‚HÐ>ÿàIƒ.uL‰÷L‰D$E1ÿè†ÓüÿL‹D$JDL9øŒzH‹D$L‰ÇL‹°èIƒèjÕüÿH‰ÃH…À„vH‰ïèVÕüÿH‰ÅH…À„"
L‰ÿèBÕüÿI‰ÂH…À„FH‹t$HƒìE1ÀL‰ñjH=~¢A¹ÿ5BæHƒÆ PH‰D$(jÿ5ðæUjÿ5ŸæSH‹T$`ÿcïL‹T$XHƒÄPH…ÀI‰Ç„&Iƒ.„l
Hƒ+„B
Hƒm„
Iƒ*„
L‰ÿèþÿH‰ÅH…À„÷Iƒ,$tLIƒmI‰ìtY„H‹$H‹H‰D$HƒèH‰tcM…ÿ„ÖüÿÿIƒ/…ÌüÿÿL‰ÿè@Òüÿé¿üÿÿ1íL‰çI‰ìè+ÒüÿM…ítIƒmuL‰ïèÒüÿHƒ<$u ë³fDH‰ÇèÒüÿévòÿÿH‰ÏèðÑüÿë“fDHêE1ÿE1íE1öH‰áîE1Ò1íÇÞî«
ÇÐî<HÇ$E1ÀE1É1ÛH…ítHƒm„M…Òt
Iƒ*„!M…ötIƒ.tnH…Ût
Hƒ+„¯M…ÉtIƒ)t|M…Àt
Iƒ(„…H‹
^î‹dîH=!‹5Sîè–xýÿM…ä„ÿÿÿIƒ,$„êþÿÿE1äéïþÿÿf.„L‰÷L‰D$L‰L$èþÐüÿL‹D$L‹L$éqÿÿÿ€L‰ÏL‰D$èÛÐüÿL‹D$émÿÿÿL‰ÇèÈÐüÿénÿÿÿH‰ßL‰D$L‰L$è®ÐüÿL‹D$L‹L$é0ÿÿÿ€H‰ïL‰T$L‰D$L‰L$èÐüÿL‹T$L‹D$L‹L$éÕþÿÿDL‰×L‰D$L‰L$èVÐüÿL‹D$L‹L$é¾þÿÿ€I‹A‹P‰уፁù€…*òÿÿ¹H‰\$@H‹@E1ÀL)ùL‰d$HL‰l$PHtÌ@ö uM‹AƒâL‰L$…2H‰úL‰ÇÿÐL‹L$I‰ÇM…ÿ„èH…Û„¿òÿÿHƒ+…µòÿÿH‰ßL‰L$èµÏüÿL‹L$éžòÿÿHªE1ÿE1öE1ÒH‰¡ì1íÇ¡ì¬
Ç“ì<HÇ$é¾ýÿÿfDH‰ßL‰L$è[ÏüÿL‹L$éñÿÿI‹F‹P‰уፁù€…jòÿÿH‹$H‹@L‰L$@E1ÀL‰|$HH‰L$P¹H)ÙHtÌ@ö uM‹FƒâL‰L$…¯H‰úL‰ÇÿÐL‹L$I‰ÂM…Ò„eM…Ét
Iƒ)„}Iƒ/…ÙòÿÿL‰ÿL‰T$è»ÎüÿL‹T$éÂòÿÿH²E1ÿE1öE1ÒH‰©ë1íÇ©ë­
Ç›ë-<éÎüÿÿL‰ïèfÍüÿH‰ÃH‹5,âL‰ïHƒëH‹VèœÑüÿH‰D$@H…À„>øÿÿH‹5OâL‰ïH‹Vè{ÑüÿH‰D$HH…À„ØHƒëH‹5jáL‰ïH‹VèVÑüÿH‰D$PH…À„bHƒëé)ùÿÿ€Áø@éãñÿÿDL‹}éHòÿÿ€Áø@éšòÿÿDL‰÷èPÑüÿ‰ÅÀ‰ÜòÿÿH¸E1ÿE1Ò1íH‰°êDzê¾
ǤêW=é×ûÿÿ€D‹EéOùÿÿ€D‹EA÷ØMcÀIƒøÿ…4ùÿÿèWÐüÿIÇÀÿÿÿÿH…À„ùÿÿHIE1ÿE1öE1ÒH‰@ê1íÇ@ê±
Ç2êO<éeûÿÿDD‹E‹EIÁàI	ÀI÷Øë—DD‹E‹EIÁàI	Àé½øÿÿDE‹OA‹GIÁáI	ÁI÷ÙL‰ÍHƒýÿ…ñøÿÿL‰D$HÇÅÿÿÿÿè°ÏüÿL‹D$H…À„ÒøÿÿH¤E1ÿE1öE1ÒH‰›é1íÇ›é²
ǍéY<éÀúÿÿE‹OA‹GIÁáI	ÁL‰Í鉸ÿÿf„A‹oéwøÿÿ€E‹OA÷ÙIcééfÿÿÿD‹{é§øÿÿ€D‹{A÷ßMcÿIƒÿÿ…ŒøÿÿL‰D$IÇÇÿÿÿÿèûÎüÿL‹D$H…À„møÿÿHïE1ÿE1öE1ÒH‰æè1íÇæè³
ÇØèc<éúÿÿD‹{‹CIÁçI	ÇI÷ßëDD‹{‹CIÁçI	Çé
øÿÿDH‹5ÜL‰ïH‹VèµÎüÿH…ÀtH‰D$XHƒëH…ÛŽ‘öÿÿHT$@L‰áL‰ïLÐH55‚è`^ýÿ…À‰köÿÿH:¾Ä;Ç>èK
H‰+èÇ)èÄ;éuõÿÿ@H‹=QÞH¢ÒH5£ÒèŽeýÿH‰ÃH…Û…yìÿÿHäE1ÀE1ÉÇçç¾
H‰ÔçI‹ÇÏçæ<HƒèE1ÒI‰H…Àt8E1ÿE1öéõøÿÿDL‰÷èÊüÿéRðÿÿH‰ïL‰D$è{ÊüÿL‹D$émðÿÿL‰÷L‰T$E1ÿE1öL‰D$L‰L$èSÊüÿL‹L$L‹D$L‹T$é—øÿÿ€L‰Ïè0Êüÿé(íÿÿL‰÷L‰T$èÊüÿL‹T$é,îÿÿL‰×èÊüÿéîîÿÿH‰ßèøÉüÿéñîÿÿL‰ÇL‰L$èãÉüÿL‹L$éÌìÿÿf„L‰D$ L‰L$èqÌüÿL‹D$ L‹L$Æ@$éŽìÿÿfDH;éŸL‰|$8„'H;? …_H‹U‹B¨„H‹ZE1ö¨ uL‹uèÌüÿ‹H QH‹
aŸ‰P ;@H‰L$L‰÷L‰þÿÓI‰ÆèéËüÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒDM…ö„YH‰ëé!ïÿÿH‹=IÜHºÐH5»Ðè†cýÿI‰ÂM…Ò…éÿÿHÜE1ÿE1ö1íH‰ÔåÇÖå¾
ÇÈåÜ<éûöÿÿL‰÷è ÈüÿéËíÿÿL‰×èÈüÿéîõÿÿH‰ïL‰T$è{ÈüÿL‹T$éÊõÿÿH‰ßL‰T$ècÈüÿL‹T$é§õÿÿf„L‰÷L‰T$èCÈüÿL‹T$é}õÿÿf„¸H‰úL‰ÏL‰L$L)øH‰\$@HtÄ@L‰d$HL‰l$Pèä_ýÿL‹L$H…ÀI‰Ç…øÿÿHõE1ÀÇûä¾
H‰èäI‹Çãäú<HƒèéýÿÿfH‹=	ÛèÔaýÿI‰ÂéÉþÿÿ@èóÌüÿL‹T$H‰ÅéyèÿÿfDH’E1ÿE1öÇ•ä¾
H‰‚äÇ€äÞ<é³õÿÿL‰ÇL‰T$èSÇüÿL‹T$éZëÿÿf„L‰T$ L‰D$èáÉüÿL‹T$ L‹D$Æ@$éëÿÿfDL‰T$è¾ÉüÿL‹T$Æ@$éÕëÿÿH‹=IÚHªÎH5«Îè†aýÿI‰ÂM…Ò…üçÿÿHÜE1ÿE1öÇßã¾
H‰ÌãÇÊãá<éýôÿÿDH‹$H‰úL‰÷L‰L$@L‰L$H‰D$P¸H)ØL‰|$HHtÄ@èX^ýÿL‹L$H…ÀI‰Â…†÷ÿÿHiÇrã¾
H‰_ãI‹ÇZã'=HƒèfDI‰E1ÒH…ÀtUI‹E1À1ÛHƒèélûÿÿ@HE1ÉE1ÒÇã¹
H‰
ãH‹Çã¡<HƒèH‰H…Àu´I‰ßfDL‰ÿL‰T$L‰L$èÆÅüÿL‹T$L‹L$ëH‰ïèÂÈüÿI‰ÀéDøÿÿL‰ÿL‰D$è­ÈüÿL‹D$H‰ÅéÅøÿÿH‹=ÙØè¤_ýÿI‰Âé™þÿÿ@èÃÊüÿL‹T$I‰ÆéµæÿÿfDHb
I‰H‰_âÇaâ¾
ÇSâã<H…ÀuL‰×è.ÅüÿE1ÿE1ÒE1ÀE1É1ÛéxóÿÿH‰ßL‰D$èÈüÿL‹D$I‰ÇéëøÿÿH‰ÞH‰ïè–íýÿI‰èI‰Âé>ìÿÿL‰ÿèàÄüÿéëÿÿè#ÊüÿI‰Áé…æÿÿH‹=ØèÜ^ýÿH‰ÃéÉùÿÿ@H²E1ÀǸá¾
H‰¥áI‹Ç áè<HƒèéÌùÿÿ€H‰ßèpÄüÿé©êÿÿL‰çè`Äüÿé±êÿÿL‰ÖH‰ïL‰T$èÈbýÿL‹T$I‰ÆééÿÿI‹YH…Û„æÿÿM‹yHƒIƒIƒ)„ˆ	I‹GM‰ù¿A¿éæåÿÿfDH‹-àL‹=JÑH‹EH‹˜€H…Û„~èÆüÿ‹H QH‹
̙‰P ;¬H‰L$1ÒH‰ïL‰þÿÓH‰ÅèRÆüÿH‹L$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒp	H…í„ÌH‰ïèYZýÿHƒm„G	H`E1ÿE1öE1ÒH‰Wà1íÇWà¶
ÇIà{<é|ñÿÿ@L‰Çè Ãüÿé<éÿÿM‹NM…É„#æÿÿI‹^IƒHƒIƒ.„¶	H‹CI‰޿»é÷åÿÿ€HÚ
E1ÀE1É1íH‰ÒßI‹ÇÑ߸
ÇÃß—<Hƒèéï÷ÿÿL‰æH‰ïL‰T$è2ëýÿL‹T$I‰èH‰ÃéëÿÿfH‰ßL‰T$ L‰D$ènÂüÿL‹T$ L‹D$é¼éÿÿ€L‰×èPÂüÿéBéÿÿHJ
ÇSß¾
H‰@ßI‹Ç;ß=Hƒèég÷ÿÿf.„L‰ÇL‰T$èÂüÿL‹T$éiéÿÿf„L‰ïL‰T$èãÁüÿL‹T$éaéÿÿf„L‹}M…ÿ„ïåÿÿH‹]IƒHƒHƒm„Ã	L‰ÒL‰þH‰ßL‰T$è‰àýÿIƒ/L‹T$I‰Æ…hæÿÿL‰ÿL‰T$èzÁüÿL‹T$éQæÿÿHr	E1ÿE1ÒH‰ÝH‰iÞÇkÞ¾
Ç]ÞT=éïÿÿ1ÒL‰ÆL‰ÏL‰D$ L‰L$èéÅüÿL‹L$L‹D$ H…ÀI‰Ç…üãÿÿH	1ÛÇÞ¾
H‰ÞI‹ÇÞ=Hƒèé-öÿÿHâE1ÉÇèݺ
H‰ÕÝH‹ÇÐÝ«<HƒèéÆúÿÿ€Ht$8ºH‰ïL‰T$èqXýÿL‹T$I‰Æébåÿÿ@H‰ïL‰D$èsÀüÿL‹D$é–çÿÿf„HbÇkݾ
H‰XÝI‹ÇSÝ7=HƒèéúùÿÿfH=ùæH‰L$(L‰D$ L‰L$è…ÂüÿL‹L$L‹D$ …ÀH‹L$(„‹âÿÿééþÿÿf„L‰D$L‰L$èáÂüÿL‹L$L‹D$H…À…¾þÿÿH‹w•H5°æH‹8èxÀüÿL‹D$L‹L$é™þÿÿf„H¢E1ÉǨܷ
H‰•ÜH‹ÇÜµ<Hƒèé†ùÿÿH‹5ÈÌH‹=Û1Òè*AýÿH‰ÅH…À„H‰Çè6VýÿHƒm„´H=E1ÿE1öE1ÒH‰4Ü1íÇ4Ü¿
Ç&Üf=éYíÿÿ1ÒL‰ÆL‰÷L‰D$è·ÃüÿL‹D$H…ÀI‰Â…íâÿÿHèE1É1ÛÇìÛ¾
H‰ÙÛI‹ÇÔÛB=HƒèéôÿÿL‰çL‰T$ L‰D$衾üÿL‹T$ L‹D$éååÿÿH”E1öE1ÒÇ—Û¼
H‰„ÛÇ‚ÛÆ<éµìÿÿ¨€„úÿÿL‹B1ÿ¨ uH‹}L‰T$Ht$8¨…ºAÿÐL‹T$I‰ÆéãÿÿL‰çL‰T$ L‰D$è¾üÿL‹T$ L‹D$飿ÿÿL‰ÿL‰T$èú½üÿL‹T$éæÿÿH=¹äH‰L$ L‰D$èJÀüÿL‹D$H‹L$ …À„xáÿÿéÝþÿÿèÃüÿH‰ÅéãÿÿHµE1ÿE1öE1ÒH‰¬ÚÇ®ÚÁ
Ç Úx=éÓëÿÿL‰D$èyÀüÿL‹D$H…À……þÿÿH‹“H5MäH‹8è¾üÿL‹D$éeþÿÿH=äH‰L$ L‰T$西üÿL‹T$H‹L$ …À„³áÿÿE1öéùáÿÿL‰T$èÀüÿL‹T$H…ÀI‰ÆuáH‹­’H5æãH‹8讽üÿL‹T$éÂáÿÿL‰ÇL‰T$è׼üÿL‹T$é|åÿÿèx¿üÿÆ@$é®óÿÿH‰ÏL‰T$貼üÿL‹T$é}åÿÿH‹=ñÏH2ÄH53Äè.WýÿI‰ÆM…ö…âÿÿH„E1ÿE1ÒLJÙÁ
H‰tÙÇrÙz=é¥êÿÿL‰ÏL‰T$èH¼üÿL‹T$élíÿÿH‰ïL‰T$ L‰D$è,¼üÿL‹D$L‹T$ é~äÿÿèhÁüÿI‰ÇéÄáÿÿH‹=YÏè$VýÿI‰ÆéqÿÿÿHþM‰òE1öÇÙÁ
H‰îØÇìØ|=éêÿÿH‰ïL‰$èûüÿL‹$éåÿÿH¼E1ÿE1ÒH‰ÝH‰³ØÇµØÁ
ǧ،=éÚéÿÿL‰ïL‰T$ L‰D$èx»üÿL‹T$ L‹D$éúãÿÿH‹2ØH…Ò„UI‹~H9ú„—áÿÿH‹XH…É„}H‹qH…ö~1H;TÁ„páÿÿHƒÀH9ÆuìH‹‘H‹JH5÷H‹WH‹81Àèì¿üÿHþE1ÿE1Ò1íH‰ö×Çø×Á
Çê׏=ééÿÿHÏM‰ôE1ÿE1öH‰Æ×E1ÒÇÅ×Â
Ƿך=éêèÿÿèå¿üÿH‰ÅéáÿÿL‰Ï腺üÿéköÿÿH‹=ÉÍHúÁH5ûÁèUýÿI‰ÂM…Ò…áÿÿH\M‰ôE1ÿÇ_×Â
H‰L×E1öÇGל=ézèÿÿL‰þH‰ïèŸXýÿI‰ÆéñÿÿH‰ïèºüÿé¬öÿÿ赼üÿÆ@$é‚öÿÿH‹=EÍèTýÿI‰ÂëˆH
íM‰ôE1ÀE1ÉH‰
äÖM‰ÖÇãÖÂ
ÇÕÖž=éïÿÿè¿üÿL‹T$H‰ÃéàÿÿHƒìH‹›H
ÜH5½åjL
½A¸HûH‹81Àè]¾üÿHoY^H‰mÖ¾º;ÇjÖK
Ç\Öº;é¨ãÿÿL‰÷L‰L$I‰Þè/¹üÿH‹CL‹L$¿»é/ÜÿÿHM‰ôE1ÿE1öH‰ÖL‰ÅÇÖÂ
ÇÖ®=é4çÿÿH‹­ÕH…Ò„ðI‹zH9ú„DàÿÿH‹XH…É„Z	H‹qH…ö~1À@H;TÁ„àÿÿHƒÀH9ÆuìH‹ŽH‹JL‰T$H5…ôH‹WH‹81Àè_½üÿL‹T$HlM‰ôE1ÿM‰ÖH‰cÕE1Ò1íÇ`ÕÂ
ÇRÕ±=é…æÿÿH‹<$è|½üÿL‹T$H‰ÅéÕßÿÿH!M‰ÕM‰ôE1ÿH‰ÕE1öE1ÒÇÕÃ
ÇÕ¼=é9æÿÿH‰ïL‰T$èܷüÿL‹T$é&öÿÿH‹=ËH<¿L‰T$H58¿èSRýÿL‹T$I‰ÇM…ÿ…ßÿÿH¤ÿM‰ÕM‰ôǧÔÃ
H‰”ÔE1öE1ÒnjԾ=é¿åÿÿHt$8ºH‰ïè=OýÿI‰ÆéMîÿÿHƒìH‹JA¸H5mãjL
mH
uÿH‹8H§1Àè¼üÿHÿ_¾´;H‰ÔAXÇÔK
Ç
Ô´;éVáÿÿHïþM‰ÕM‰ôM‰úH‰æÓE1öE1ÿÇâÓÃ
ÇÔÓÀ=éåÿÿè¼üÿL‹T$I‰Äé½ÞÿÿH‹=îÉL‰T$è´PýÿL‹T$I‰ÇéÜþÿÿH‰ïè¶üÿé?÷ÿÿ¨€„HüÿÿL‹B1ÿ¨ uH‹}Ht$8¨…~ºAÿÐI‰Æé?íÿÿHIþM‰ÕM‰ôE1ÿH‰@ÓE1öE1ÒL‰ÅÇ9ÓÃ
Ç+ÓÐ=é^äÿÿH=×ÜH‰L$èm¸üÿH‹L$…À„¢ìÿÿE1öéàìÿÿHêýM‰ÕM‰ôÇíÒÄ
I‰îH‰×ÒE1Ò1íÇÐÒè=H‰$éÿãÿÿ誸üÿI‰ÆH…Àu²H‹K‹H5„ÜH‹8èL¶üÿéìÿÿ€H‹IÒH…Ò„žH‹{H9ú„ÞÿÿH‹XH…É„½H‹qH…ö~1À„H;TÁ„ñÝÿÿHƒÀH9ÆuìH‹%‹H‹JL‰T$H5ñH‹WH‹81Àè÷¹üÿL‹T$HýM‰ÕM‰ôE1ÿH‰ûÑI‰ÞE1Ò1íÇõÑÃ
ÇçÑÓ=éãÿÿH‹@`H…À„³H‹€€H…À„£L‰D$L‰ÿÿÐL‹D$H…ÀI‰Ç„ˆH‹
óŠH‹@H‰L$ H9È…Ÿf„ö€«„I‹oHEHƒø‡ HæHc‚HÐ>ÿàA‹oIƒ/…bàÿÿL‰ÿL‰D$è%´üÿL‹D$éPçÿÿE‹OA÷ÙIcéIƒ/…<çÿÿëÓE‹OA‹GIÁáI	ÁI÷ÙL‰ÍëÝE‹OA‹GIÁáI	ÁL‰ÍëžL‰ÿH5ëýè8ýÿL‹D$H…ÀI‰Ç„ùæÿÿH‹@éAÿÿÿL‰ÿL‰D$贶üÿL‹D$H‰Åë‰f.„H‹@`H…À„PH‹€€H…À„@H‰ïÿÐI‰ÆH…À„/H‹
ÉH‹@H‰L$ H9È…™f„ö€«„ÇM‹FI@Hƒø‡•HÊHc‚HÐ>ÿàE‹FIƒ.…ÚÞÿÿL‰÷L‰D$èõ²üÿL‹D$é…åÿÿE‹FA÷ØMcÀIƒ.…qåÿÿëÓE‹FA‹FIÁàI	ÀI÷ØëàE‹FA‹FIÁàI	Àë¤L‰÷H5Áüèá6ýÿI‰ÆH…À„9åÿÿH‹@éLÿÿÿL‰÷蔵üÿI‰ÀëžH‹@`H…À„ÝH‹€€H…À„ÍL‰D$H‰ßÿÐL‹D$H…ÀI‰Æ„²H‹¨ˆH‹@H‰\$ H9Ø…–fDö€«„°M‹~IGHƒø‡šHÆHc‚HÐ>ÿàE‹~Iƒ.…jÞÿÿL‰÷L‰D$èݱüÿL‹D$é½åÿÿE‹~A÷ßMcÿIƒ.…©åÿÿëÓE‹~A‹FIÁçI	ÇI÷ßëàE‹~A‹FIÁçI	Çë¤L‰÷H5©ûèÉ5ýÿL‹D$H…ÀI‰Æ„låÿÿH‹@éGÿÿÿL‰÷L‰D$èr´üÿL‹D$I‰ÇëH‰ï1ÒL‰þè¶üÿH‰ÅH…À…ÎíÿÿHAùE1ÿE1öE1ÒH‰8Î1íÇ8ζ
Ç*Îw<é]ßÿÿH=Ö×H‰L$èl³üÿH‹L$…À„6íÿÿë®HïøE1ÀÇõ;
H‰âÍI‹ÇÝÍ=Hƒèé	æÿÿH‰ú1ÉL‰ÇÿÐL‹L$I‰ÇéÇàÿÿ蠳üÿH…À…XÿÿÿH‹@†H5y×H‹8èA±üÿé=ÿÿÿH~øL‰ûDŽ;
H‰qÍI‹ÇlÍ0=HƒèébêÿÿH‰ú1ÉL‰ÇÿÐL‹L$I‰ÂéJáÿÿH6øE1ÿE1öE1ÒH‰-ÍÇ/Í¿
Ç!Íb=éTÞÿÿH‹­…H5@üH‹8记üÿéíôÿÿèt°üÿH‹…H5 üL‰T$H‹8艰üÿL‹T$éU÷ÿÿH‰øH‹€H9„÷ÕÿÿH…ÀuëH;†„åÕÿÿéyôÿÿL‰D$苲üÿL‹D$H…À…qãÿÿH‹v…H5¦öH‹8è'°üÿL‹D$éQãÿÿH‰øH‹€H9„ÇÖÿÿH…ÀuëH;ž…„µÖÿÿéŸöÿÿè.²üÿH…À…ÉáÿÿH‹…H5NöH‹8èϯüÿé®áÿÿL‰D$è²üÿL‹D$H…À…1âÿÿH‹ë„H5öH‹8蜯üÿL‹D$éâÿÿH‹{„H5ûL‰T$H‹8èw¯üÿL‹T$é«ùÿÿ1ɺAÿÐL‹T$I‰ÆétÓÿÿH‰øH‹€H9„?×ÿÿH…ÀuëH;ׄ„-×ÿÿé@ùÿÿH‹@`H…À„˜H‹€€H…À„ˆL‰÷ÿÐH‰ÅH…À„wH‹D$ H9E…’H‹Eö€«t#L‹EI@Hƒø‡'HáýHc‚HÐ>ÿàH‰ïèKýÿI‰ÀHƒm…ûÿÿH‰ïL‰D$èܭüÿL‹D$éñúÿÿD‹EA÷ØMcÀëÒD‹E‹EIÁàI	ÀI÷Øë¿D‹E‹EIÁàI	Àë¯D‹Eë©H‰ïH5®÷èÎ1ýÿH‰ÅH…À…SÿÿÿIƒ.…àÿÿL‰÷èp­üÿéàÿÿH‹@`H…À„ÀH‹€€H…À„°L‰D$L‰÷ÿÐL‹D$H…ÀH‰Ã„•H‹D$ H9C…›H‹Cö€«t#L‹{IGHƒø‡èHêüHc‚HÐ>ÿàH‰ßL‰D$è÷IýÿL‹D$I‰ÇHƒ+…ûÿÿH‰ßL‰D$èȬüÿL‹D$éõúÿÿD‹{A÷ßMcÿëÓD‹{‹CIÁçI	ÇI÷ßëÀD‹{‹CIÁçI	Çë°D‹{ëªH‰ßH5šöèº0ýÿL‹D$H…ÀH‰Ã…EÿÿÿIƒ.…SàÿÿL‰÷L‰D$èR¬üÿL‹D$é<àÿÿH‹@`H…À„ÕH‹€€H…À„ÅL‰D$L‰ÿÿÐL‹D$H…ÀI‰Æ„ªH‹D$ I9F…£I‹Fö€«t#I‹nHEHƒø‡ßHÛûHc‚HÐ>ÿàL‰÷L‰D$èÔHýÿL‹D$H‰ÅIƒ.…¡÷ÿÿL‰÷L‰D$襫üÿL‹D$éŠ÷ÿÿE‹NA÷ÙIcéëÓE‹NA‹FIÁáI	ÁI÷ÙL‰Íë¼E‹NA‹FIÁáI	ÁL‰Íë¨A‹në¢L‰÷H5oõè/ýÿL‹D$H…ÀI‰Æ…=ÿÿÿIƒ/…sÞÿÿL‰ÿL‰D$è'«üÿL‹D$é\ÞÿÿH‰ßL‰D$è ®üÿL‹D$I‰Çé$þÿÿL‰÷L‰D$è®üÿL‹D$H‰Åé-ÿÿÿH‰ïèñ­üÿI‰Àéåüÿÿ1ɺAÿÐI‰Æé¿áÿÿè­üÿH…À…7ýÿÿH‹²€H5âñH‹8èc«üÿéýÿÿL‰D$蔭üÿL‹D$H…À…þÿÿH‹€H5¯ñH‹8è0«üÿL‹D$éýýÿÿL‰D$è\­üÿL‹D$H…À…ÿÿÿH‹G€H5wñH‹8èøªüÿL‹D$éðþÿÿff.„óúAWAVAUATUSHƒìhL‹-—¸L‹=ˆ¸H‰|$L‹fdH‹%(H‰D$X1ÀH‹€L‰l$@L‰|$HH‰D$PH…Ò…
Iƒü„øM…ä„w
Iƒü…·H‹ÖH‰$L‹nH‹߯¿H‹¨(ÿhE1É1É1ÒH‰ÆA¸L‰ïÿÕI‰ÄH…À„„
Hƒ8„²H‹›Æ¿H‹¨(ÿhE1É1É1ÒH‰ÆA¸L‰ÿÿÕH‰ÅH…À„x
Hƒ8„6‹EA;D$„pH‹9ÆH‹¢¯H9X…èL‹5‰¯M…ö„HIƒI‹FH‹5™¸L‰÷H‹€H…À„>ÿÐI‰ÇI‹HƒèM…ÿ„9I‰H…À„I‹GE1íE1ɿH;7~„H;º~„üH;„?	L‰L$èõªüÿL‹L$H…ÀI‰Ã„<M…ÉtL‰HIcÅHƒEAƒÅHƒÀMcíI‰lÃI‹GIƒ$O‰dëL‹¨€M…í„ÍL‰\$諪üÿL‹\$‹H QH‹
ñ}‰P ;F1ÒH‰L$L‰ÞL‰ÿL‰\$AÿÕI‰ÅèqªüÿH‹L$L‹\$‹X Sÿ‰P ‹=ȍHÎŽ>	9ÊŒ–	M…턽Iƒ+„s	Iƒ/„)	H‹ÂÄIƒEL‰ïÿ0I‰ÆH…À„èHƒ8„	H‹‡ÄH‹à­H9X…fL‹=ǭM…ÿ„ÆIƒI‹GH‹5wÀL‰ÿH‹€H…À„¼ÿÐI‰ÃM…Û„>Iƒ/„¼H‹%ÄH‹n­H9X…¤
L‹=U­M…ÿ„ÌIƒI‹GL‰\$L‰ÿH‹5¼H‹€H…À„ÿÐL‹\$H‰ÃH…Û„2Iƒ/„€H‹CH;-|„÷H;°|L‰t$8„H;}…ÐH‹S‹B¨„1H‹JE1ÿH‰L$¨ uL‹{L‰\$èӨüÿL‹\$‹H QH‹
|‰P ;ÎH‰L$(L‰öL‰ÿH‹D$L‰\$ ÿÐH‰D$蕨üÿL‹L$L‹\$ ‹H QÿH‹L$(‰P ‹=Èް
ƒè29ÂŒ•M…É„I‰ßM…É„rIƒ/„Æ
I‹CH;C{„ÝH;Æ{L‰L$8„H;|…VI‹S‹B¨„L‹z1ۨ uI‹[L‰L$L‰\$èê§üÿL‹\$L‹L$‹H QH‹
+{‰P ;XH‰L$ L‰ÎH‰ßL‰\$L‰L$Aÿ×I‰Ç訧üÿH‹L$ L‹L$‹X L‹\$Sÿ‰P ‹=ȍHÎÁø@9ÊŒM…ÿ„=M‰ØIƒ)„
I‹HƒèM…ÿ„pI‰H…À„tL;=Íz”ÀL;=›z”ÂÂu
L;=­z…ÿ	¶ØIƒ/„²…Û„ŠH‹\$HƒìM‰áH‹ÿ½H=PŒA¸L‹»èHs IƒL‰ùÿ5ZzjPÿ5©²jPAVjPH‹T$Pÿ–ÀH‰ÃHƒÄPH…À„ÖIƒ/„l
Iƒ,$„HƒmI‰Ü…H‰ïèˣüÿérfDIƒü…FH‹F(L‹~ H‰$éúÿÿDH‰Ç蘣üÿéAúÿÿ…À…ˆúÿÿL‰ïè§üÿf.HÌòD$‹<	L‰ÿèä¦üÿf.,Ì‹n	ò\D$H‹‰ÀH‹
ªòD$H9H…š
L‹5ã©M…ö„’IƒI‹FH‹5¹L‰÷H‹€H…À„`ÿÐI‰ÇI‹HƒèM…ÿ„I‰H…À„ÿòD$褤üÿI‰ÆH…À„ÈI‹GH;ux„çH;øxL‰t$8„uH;Ny…¸
I‹W‹B¨„1L‹j1ۨ uI‹_è&¥üÿ‹H QH‹
qx‰P ;.H‰L$ H‰ßL‰öAÿÕH‰Ãèø¤üÿ‹H QÿH‹L$ ‰P ‹HÎ=ÈÁø@9ÊŒH…Û„GM‰ùIƒ.„zH…Û„Iƒ)„ç	H;0x”ÀH;þw”ÂÂu
H;x…ÊD¶èHƒ+„$
E…í„»H‹D$òD$L‹˜èIƒL‰\$ èk£üÿL‹\$ H…ÀI‰Ç„šòD$L‰\$èJ£üÿL‹\$H…ÀI‰Æ„ÉH‹t$HƒìL‰ÙM‰ùH‹»ÿ5…wA¸HƒÆ H=L‰jPÿ5ïjPAVjPH‹T$PL‰\$Xÿ«½HƒÄPL‹\$H…ÀH‰Ã„™Iƒ+„Ì
Iƒ/„²
Iƒ.„È
E1íE1öéñüÿÿDH‰ÇèРüÿ‹EA;D$…Â÷ÿÿé-ýÿÿDIƒ/H¶èH‰¶½Ç¸½ÌǪ½ñ$„üH‹
•½‹›½H=ˆÝ‹5нèÍGýÿM…ä…H…ítHƒm„üÿÿM…öt
Iƒ.„}M…ítIƒm„}H‹D$XdH3%(…:HƒÄhL‰à[]A\A]A^A_ÀH‰ß萣üÿA‰ŅÀ‰'þÿÿH÷çI‰ÛE1ÿE1íH‰î¼H‹E1ö1ÛÇè¼¾ÇڼA$HƒèfDI‰H…Àu"E1ÉL‰ßL‰$衟üÿL‹$M…Ét
Iƒ)„M…ÿt
Iƒ/„?H…Ût
Hƒ+„@H‹
y¼‹¼H=lÜ‹5n¼è±FýÿIƒ,$„fE1äéÚþÿÿfDH‹iuH‰$é’õÿÿ„I‹W‹B‰Cፁù€…©öÿÿ¹L‰L$@L‹BE1ÒL)éH‰l$HL‰d$PHtÌ@¨ uM‹WL‰L$¨…ªH‰úL‰×AÿÐL‹L$I‰ÅM…í…ƒH¸æÇ{ÇH‰®»Ç¬»·$M…É„ùIƒ)A¾»…íþÿÿM‰îL‰ëL‰ÏèhžüÿéÕþÿÿÁø@9ʍ¼öÿÿëPL‰ÿèHžüÿéÊöÿÿH‰Çè8žüÿéåöÿÿL‰ÿL‰\$è#žüÿL‹\$é-÷ÿÿf„L‰ßèžüÿé€öÿÿL‰\$覠üÿL‹\$Æ@$éRöÿÿ„1ÛL‰çI‰ÜèӝüÿéjýÿÿfDL‰÷èüÿévýÿÿL‰ï谝üÿévýÿÿH‹ÙsL‹~ H‰$éúóÿÿ@L‰ÿ舝üÿé÷üÿÿL‰÷èxüÿéÞôÿÿH
ºåA¸HƒìH‹XsHäéH5zÉATL
zæH‹81Àè'¢üÿH9å¾­#Ç=ºeÇ/º­#H‰ ºXZH
åºeH=ÚE1äèSDýÿé¹üÿÿM…äH
,åH.åM‰àHIÈIÁø?I÷ÐAƒàécÿÿÿfDH‰ÕIƒü„3M…ä„ÜIƒüu°H‹FH‰×H‰D$@è}›üÿI‰ÅM…í~TH‹5þ²H‰ïH‹V貟üÿH…ÀtH‰D$HIƒíM…í~.H‹5è¬H‰ïH‹V茟üÿH…À„
H‰D$PIƒíM…íûH‹D$PL‹l$@L‹|$HH‰$éƒòÿÿf„Iƒü…–þÿÿH‹F(H‰×H‰D$PH‹F H‰D$HH‹FH‰D$@èӚüÿI‰Åë¤fDHÚãE1íE1ö1íH‰ҸÇԸ·ÇƸà#éûÿÿf„H¢ãE1íE1öÇ¥¸¸H‰’¸Ç¸ï#éçúÿÿ¸H‰úL‰ÿL‰L$@L)èL‰L$HtÄ@H‰l$HL‰d$Pè$3ýÿL‹L$H…ÀI‰Å„OM…É„§óÿÿIƒ)…óÿÿL‰Ïè›üÿéóÿÿÁø@éHõÿÿDL‰ÿL‰\$èóšüÿL‹\$éiôÿÿf„L‰÷èؚüÿéô÷ÿÿL‰ÿL‰L$L‰\$辚üÿL‹L$L‹\$éõÿÿ€L‰ÏL‰D$蛚üÿL‹D$éáõÿÿL‰÷L‰L$ 胚üÿL‹L$ éoøÿÿf„L‰ÿèøüÿ‰ÅÀ‰òõÿÿH`âÇi·ÌH‰V·ÇT·%1Ûé¬úÿÿD…¾öÿÿè%üÿH…À„°öÿÿHâE1íE1öÇ!·»H‰·Ç·
$écùÿÿ€…ŒöÿÿòD$èלüÿòD$H…À„röÿÿHÊáE1íE1öÇͶ¼H‰º¶Ç¸¶$éùÿÿH=aÀH‰L$L‰\$èò›üÿL‹\$H‹L$…À„’ñÿÿHráÇ{¶ÇH‰h¶Çf¶È$I‹1ÛE1íE1öHƒèé‚ùÿÿf.„H‹=y¬HªŸL‰\$H5¦Ÿè±3ýÿL‹\$I‰ÇM…ÿ…@òÿÿHá1ÛÇ	¶ÌH‰öµI‹Çñµô$HƒèéùÿÿL‰$èǛüÿL‹$H…À…JÿÿÿH‹cnH5œ¿H‹8èd™üÿL‹$é+ÿÿÿH‹=á«HBŸH5CŸè3ýÿI‰ÆM…ö…TõÿÿHtàE1íÇzµ¾H‰gµÇeµ*$é¼÷ÿÿ„L‰ÿè8˜üÿé´øÿÿH‰ßè(˜üÿé³øÿÿL‰Çè˜üÿéóÿÿL‰Ïè˜üÿéöÿÿH‹=I«HšžH5›žè†2ýÿI‰ÆM…ö…ïÿÿHÜßE1íÇâ´ÇH‰ϴÇʹ›$é$÷ÿÿL‰ÿ託üÿéAóÿÿH‰ß蘗üÿéÏõÿÿH‹=٪è¤1ýÿI‰Æëœ€èÜüÿI‰ÇéºîÿÿHjßÇs´ÇH‰`´Ç^´$I‰H…À…
L‰÷E1íE1öè,—üÿé·÷ÿÿ€L‰L$L‰\$èYüÿL‹L$L‹\$Æ@$éIñÿÿfDM‹OM…É„rîÿÿM‹oIƒIƒEIƒ/„Ô	I‹EM‰ï¿A½éDîÿÿDL‰L$L‰\$èY™üÿL‹L$L‹\$Æ@$éÐñÿÿfDè;™üÿÆ@$ébôÿÿfL‰ÿèx–üÿé‡òÿÿHrÞÇ{³ËH‰h³Çf³à$é½õÿÿf„L‰ÿè8–üÿéAõÿÿL‰ßè(–üÿé'õÿÿL‰÷E1íE1öè–üÿé!òÿÿDH
ÞdzÇH‰³Çþ²½$E1íE1öM…É„›ûÿÿ1Ûé8öÿÿH‹=©HZœH5[œèV0ýÿI‰ÇM…ÿ…ˆîÿÿH¬Ýǵ²ÌH‰¢²Ç ²ï$é÷ôÿÿL‰öH‰ßL‰\$èð3ýÿL‹\$I‰Áé·ïÿÿH‹=©¨èt/ýÿI‰Ç뜀蓚üÿI‰Ãé<îÿÿ1ÒL‰ÞL‰ÿL‰\$èæ™üÿL‹\$H…ÀI‰Å…ˆíÿÿé ûÿÿL‰ÎL‰ßL‰L$L‰\$è{3ýÿL‹L$L‹\$I‰Çé,ðÿÿf„L‰öL‰ÿèU3ýÿH‰Ãé¶òÿÿDH‰×谓üÿI‰ÅH…ÀŽƒøÿÿH‹5m©H‰ïH‹Vèá—üÿH…À„øÿÿH‰D$@Iƒíéøÿÿf.„H‹F H‰×H‰D$HH‹FH‰D$@èV“üÿI‰Åéú÷ÿÿfDHZÜM‰ùE1ÿÇ]±ÌH‰J±I‹ÇE±ö$HƒèI‰1ÛH…À…ƒôÿÿéiôÿÿfDè[™üÿL‹\$H‰ÃékíÿÿfDH‹=A§L‰\$è.ýÿL‹\$I‰ÇéÑúÿÿf.„HÒÛÇ۰¾H‰ȰÇư,$écüÿÿf„èë˜üÿI‰Çé˜ðÿÿH‹=٦è¤-ýÿI‰Æéûÿÿ@L‹CM…À„üìÿÿL‹{IƒIƒHƒ+„˜L‰ÆL‰òL‰ÿL‰\$L‰D$è-²ýÿL‹D$L‹\$I‰ÁIƒ(…}íÿÿL‰ÇL‰L$L‰\$è“üÿL‹L$L‹\$é\íÿÿDHÛE1í1Ûǰ¾H‰ó¯Çñ¯/$éKóÿÿ@Ht$8ºH‰ßL‰\$è™*ýÿL‹\$I‰Áéíÿÿ@I‹[H…Û„íÿÿM‹CHƒIƒIƒ+„éL‰ÊL‰ÇH‰ÞL‰L$L‰D$è]±ýÿHƒ+L‹D$L‹L$I‰Ç…œíÿÿH‰ßL‰L$L‰D$èD’üÿL‹L$L‹D$é{íÿÿDH2ÚM‰ÃÇ8¯ÌH‰%¯1ÛÇ!¯%éLòÿÿ@HÚE1íE1öM‰ÏH‰ù®Çû®¾Çí®>$éGòÿÿM‹oM…í„ïÿÿM‹OIƒEIƒIƒ/„1L‰ÏL‰òL‰îL‰L$ 艰ýÿIƒmL‹L$ H‰Ã…rïÿÿL‰ïL‰L$ èy‘üÿL‹L$ é[ïÿÿ€L‰ßHt$8ºL‰L$L‰\$è,)ýÿL‹\$L‹L$I‰Çé}ìÿÿf.„Ht$8ºL‰ÿèþ(ýÿH‰ÃéÿîÿÿfD¨€„ˆûÿÿL‹J1ÿ¨ uH‹{L‰\$Ht$8¨…ºAÿÑL‹\$I‰Áé'ëÿÿL‹lL‹=BžI‹@H‹˜€H…Û„ L‰$èU“üÿL‹$‹H QH‹
œf‰P ;H‰$1ÒL‰þL‰ÇÿÓI‰Çè#“üÿH‹$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒõM…ÿ„3L‰ÿè+'ýÿIƒ/„ÍH3ØÇ<­ÍH‰)­Ç'­(%é~ïÿÿf.„L‹-ñ«L‹5rI‹EH‹˜€H…Û„艒üÿ‹H QH‹
Ôe‰P ;‰H‰$1ÒL‰ïL‰öÿÓI‰Åè[’üÿH‹$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒHM…í„L‰ïèc&ýÿIƒm„Hj×E1íE1öÇm¬¿H‰Z¬ÇX¬Q$é¯îÿÿH=¶H‰L$ 藑üÿL‹\$H‹L$ …À„éÿÿDH×E1ÿǬÌH‰¬I‹Ç¬%Hƒèé'ïÿÿ€¨€„ÀùÿÿL‹B1ÿ¨ uI‹{L‰L$Ht$8L‰\$¨…òºAÿÐL‹\$L‹L$I‰ÇéÔéÿÿL‰$臑üÿL‹$H…À…jÿÿÿH‹#dH5\µH‹8è$üÿL‹$éKÿÿÿ¨€„pùÿÿL‹B1ÿ¨ uI‹Ht$8¨…jºAÿÐH‰ÃéìÿÿDH"Ö1ÛÇ)«ÎH‰«Ç«E%énîÿÿ€HòÕÇûªÂH‰èªÇæªn$é{ôÿÿf„H=‰´H‰L$ L‰L$L‰\$èüÿL‹\$L‹L$…ÀH‹L$ „vèÿÿfDE1ÿéÃèÿÿL‰L$L‰\$èqüÿL‹\$L‹L$H…ÀI‰Çu×H‹cH5A´H‹8è	ŽüÿL‹\$L‹L$é}èÿÿf.„H=ù³H‰L$ 菏üÿH‹L$ …À„´êÿÿf1Ûéòêÿÿf„L‰ÿL‰L$M‰ïèðŒüÿI‹EL‹L$¿A½é^äÿÿ€èˏüÿH‰ÃH…Àu³H‹lbH5¥³H‹8èmüÿé‘êÿÿ„H¢Ô1ÛE1íǦ©ÃH‰“©I‹ÇŽ©x$HƒèéµìÿÿHoÔM‰ñE1íÇr©ÁH‰_©I‹E1öÇW©‚$Hƒèé
øÿÿHT$@L‰áH‰ïL·ØH5M?è8ýÿ…À‰ßïÿÿHÔ¾™#Ç©eH‰©Ç©™#éÖîÿÿHæÓÇï¨ÇH‰ܨÇڨ¯$é×õÿÿH‰ßL‰D$L‰\$請üÿL‹\$L‹D$éGøÿÿL‰ßL‰L$L‰D$芋üÿL‹D$L‹L$éöøÿÿL‰ÿL‰L$ èn‹üÿL‹L$ é¸ùÿÿL‰ÿè\‹üÿé&ûÿÿèŽüÿÆ@$éýúÿÿL‰ïèA‹üÿéÔûÿÿèçüÿÆ@$éªûÿÿL‰ûéüÿÿH‰ú1ÉL‰×AÿÐL‹L$I‰ÅéOìÿÿL‰þ1ÒL‰ÇèOüÿI‰ÇH…À…²úÿÿH÷ÒǨÍH‰í§Çë§$%éBêÿÿL‰ï1ÒL‰ö聏üÿI‰ÅH…À…:ûÿÿH·ÒE1íE1öǺ§¿H‰§§Ç¥§M$éüéÿÿH=Q±H‰L$L‰$èãŒüÿL‹$H‹L$…À„ÙùÿÿéhÿÿÿèXüÿH…ÀužH‹ü_H55±H‹8èýŠüÿë†H=±H‰$蘌üÿH‹$…À„[úÿÿébÿÿÿ€èüÿH…À…
ÿÿÿH‹«_H5ä°H‹8謊üÿéòþÿÿèrŠüÿ1ɺAÿÑL‹\$I‰Áéäÿÿ1ɺAÿÐH‰Ãé¢çÿÿ1ɺAÿÐL‹\$L‹L$I‰ÇéàäÿÿE1öE1íé"êÿÿ1ÛE1öéÿéÿÿ„óúAWAVAUATUH‰õSHƒìxL‹fH‰<$dH‹%(H‰D$h1ÀH‹„_HÇD$@HÇD$HHÇD$PH‰D$XH…Ò…+Iƒü„1Iƒü…kH‹F0H‰D$H‹](L‹e H‹mH‹C¦¿L‹¨(ÿhE1É1É1ÒH‰ÆA¸H‰ïAÿÕI‰ÆH…À„Hƒ8„¥H‹þ¥¿L‹¨(ÿhE1É1É1ÒH‰ÆA¸L‰çAÿÕI‰ÅH…À„ŠHƒ8„pH‹¹¥¿L‹¸(ÿhE1É1É1ÒH‰ÆA¸H‰ßAÿ×I‰ÇH…À„uHƒ8„»A‹EA;F„-H‹V¥H‹
OH9H……L‹%6M…ä„ÅIƒ$I‹D$H‹5¡L‰çH‹€H…À„¹ÿÐI‰ÂM…Ò„»Iƒ,$„(H‹ñ¤H‹
ڎH9H…ØH‹-NH…턐HƒEH‹EL‰T$H‰ïH‹5 žH‹€H…À„ÿÐL‹T$I‰ÃH‹EHƒèM…Û„H‰EH…À„Ð
I‹C1ÛE1ÉH;è\¿„ÝH;f]„H;Á]„»
L‰T$ L‰L$L‰\$藉üÿL‹\$L‹L$H…ÀL‹T$ H‰Å„üM…ÉtL‰HHcÃIƒƒÃHƒÀHcÛL‰T$L‰tÅI‹CIƒEL‰lÝH‹˜€H…Û„zL‰\$è@‰üÿL‹\$L‹T$‹H QH‹
\‰P ;Æ1ÒH‰L$ L‰ßH‰îL‰T$L‰\$ÿÓI‰ÄèýˆüÿL‹\$L‹T$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒKM…ä„¢Hƒm„Iƒ+„
I‹BH;ª[„„H;-\L‰d$8„ºH;ƒ\…I‹R‹B¨„îH‹Z1í¨ uI‹jL‰T$èVˆüÿL‹T$‹H QH‹
œ[‰P ;aH‰L$H‰ïL‰æL‰T$ÿÓH‰ÅèˆüÿH‹L$L‹T$‹X Sÿ‰P ‹=ȍHÎÁø@9ÊŒšH…í„IL‰ÓIƒ,$„[
H…í„‚Hƒ+„ˆ
H;-Q[”ÃH;-[”ÀØ…œH;--[„H‰ïèwˆüÿHc؅ÛˆüHƒm„Á…Û…IH‹¢H‹
ۋH9H…!L‹‹M…Ò„	IƒI‹BL‰T$L‰×H‹5H‹€H…À„ÊÿÐL‹T$I‰ÄI‹HƒèM…ä„àI‰H…À„ÄH‹¡H‹
V‹H9H…TL‹=‹M…Û„ÛIƒI‹CL‰\$L‰ßH‹5½šH‹€H…À„òÿÐL‹\$H‰ÅI‹HƒèH…í„®I‰H…À„H‹EE1ÛH;‰Y¿„H;Z„ÉH;bZ„4
L‰\$èB†üÿL‹\$H…ÀI‰Á„ÈM…ÛtL‰XHcÃIƒEƒÃM‰lÁH‹EHcÛIƒM‰|ÙH‹˜€H…Û„‰L‰L$èþ…üÿL‹L$‹H QH‹
DY‰P ;“1ÒH‰L$L‰ÎH‰ïL‰L$ÿÓH‰ÃèŅüÿL‹L$‹H QÿH‹L$‰P ‹=ȍHÎŽ

9ÊŒò
H…Û„áIƒ)„Ï
Hƒm„t
I‹D$H;xX„H;ûXH‰\$8„TH;QY…ê
I‹T$‹B¨„Ò
H‹J1íH‰L$¨ uI‹l$è"…üÿ‹H QH‹
mX‰P ;H‰L$H‰ïH‰ÞH‹D$ÿÐH‰Åèð„üÿ‹H QÿH‹L$‰P ‹HÎ=ÈÁø@9ÊŒ H…í„øM‰àHƒ+„"H…í„8Iƒ(„/H;-(X”ÃH;-öW”ÀØ…ûH;-X„îH‰ïèN…üÿHc؅Ûˆ‘Hƒm„ø…Û…vH‹ٞH‹
’ˆH9H…ÿL‹%yˆM…ä„¿Iƒ$I‹D$H‹5ŸšL‰çH‹€H…À„ŽÿÐI‰ÂM…Ò„WIƒ,$„KH‹tžH‹
ˆH9H…
H‹-ˆH…í„ìHƒEH‹EL‰T$H‰ïH‹5S˜H‹€H…À„²ÿÐL‹T$I‰ÁM…É„JHƒm„½I‹A1íH;xV¿„¹H;öV„H;QW„[L‰T$L‰L$è,ƒüÿL‹L$L‹T$H…ÀI‰Ä„èH…ítH‰hHcÃIƒƒÃM‰tÄI‹AHcÛIƒM‰|ÜH‹˜€L‰T$H…Û„[ L‰L$è߂üÿL‹L$L‹T$‹H QH‹
 V‰P ;4!1ÒH‰L$ L‰ÏL‰æL‰T$L‰L$ÿÓH‰Ã蜂üÿL‹L$L‹T$‹H QÿH‹L$ ‰P ‹=ȍHÎÁø@9ÊŒDH…Û„l Iƒ,$„Iƒ)„¨I‹BH;IU„1H;ÌUH‰\$8„ŸH;"V…ÁI‹R‹B¨„ÛL‹b1í¨ uI‹jL‰T$èõüÿL‹T$‹H QH‹
;U‰P ;è H‰L$H‰ïH‰ÞL‰T$AÿÔH‰Å轁üÿL‹T$‹H QÿH‹L$‰P ‹=ȍHÎÁø@9ÊŒ¦H…í„X M‰ÔHƒ+„ÉH…턽Iƒ,$„AH;-ïT”ÀH;-½T”ÂÂ…rH;-ËT„eH‰ïè‚üÿ‰ÅÀˆHƒm„6…Û…/H‹$HƒìM‰ðL‹
˜H=?†H‹¨èHp HƒEH‰éjAQAWjAQAUjH‹T$Hÿ£šH‰ÃHƒÄ@H…À„Hƒm…àH‰ïè~üÿéÓIƒüwNI‰ÕHüÍJc¢HÐ>ÿàH‹FL‰ïH‰D$@è½|üÿH‰ÃIƒüxM…ä„?Iƒü„ZéñL‹eIƒüHêÅH
ÚÅHMȝÀHƒì¶ÀATHÊL@H‹pSH5™©L
›ÆH‹81ÀèH‚üÿHZž¨2Ç^š8ÇPš¨2H‰AšXZH
1ź8H=Tº1Ûèu$ýÿH‹D$hdH3%(…ý HƒÄxH‰Ø[]A\A]A^A_ÀH‹SH‰D$éÑóÿÿH‹F0H‰D$XH‹E(H‰D$PH‹E L‰ïH‰D$HH‹EH‰D$@è›{üÿH‰ÃIƒü…Ôþÿÿékf„L‰çL‰T$èƒ|üÿL‹T$éÁôÿÿf„H‰ïL‰T$L‰\$è^|üÿL‹T$L‹\$éõÿÿ€Iƒü…‡H…ۏ]H‹D$XH‹l$@L‹d$HH‹\$PH‰D$éóÿÿ€H‰Çè|üÿéNóÿÿH‰Çèø{üÿéƒóÿÿA;G…Éóÿÿ…À…ÁóÿÿH‰ïèVüÿf.ž¤f(È‹´H‰ßòL$è6üÿf.~¤òL$òD$‹ÜL‰çòL$èüÿf.V¤òL$f(Ћþf/ʇ¼f/T$‡¨f.L$‹üH‹$f(ÁòT$ L‹˜èIƒL‰\$è}üÿL‹\$òT$ H…À„Íf(ÂL‰\$H‰D$ èÚ|üÿL‹\$L‹L$ H…ÀI‰Â„dòD$L‰L$ L‰\$H‰D$(èª|üÿL‹\$L‹L$ H…ÀL‹T$(I‰Ä„âH‹p”H‹4$HƒìL‰Ùÿ5ßPH=‚A¸jHƒÆ PATjPARL‰T$XjPH‹T$XL‰L$`L‰\$Pÿÿ–HƒÄPL‹$L‹L$H…ÀH‰ÃL‹T$„éIƒ+„·Iƒ)„•Iƒ*„ÓIƒ,$„¸Iƒ.„€Iƒm„‰Iƒ/…ñüÿÿL‰ÿèþyüÿéäüÿÿf„HòÁE1ÿÇø–|H‰å–Çã–ë2H‹
і‹זH=ì¶»‹5Vè!ýÿIƒ.uL‰÷è–yüÿM…ítIƒmuL‰ïè‚yüÿM…ÿ…iÿÿÿé_üÿÿ@H‰Çèhyüÿé8ñÿÿ¶Ûé|ôÿÿ„I‹C‹P‰уፁù€…-òÿÿ¹L‰L$@H‹@E1ÀH)ÙL‰t$HL‰l$PHtÌ@ö uM‹CƒâL‰T$ L‰L$L‰\$…ãH‰úL‰ÇÿÐL‹T$ L‹L$L‹\$I‰ÄM…ä…"HÓÀÇܕH‰ɕÇǕþ3€M…É„LIƒ)½A¼„YI‹HƒèI‰H…À„?M…Òt
Iƒ*„M…ätIƒ,$„8H…턇þÿÿHƒm…|þÿÿH‰ïè<xüÿéoþÿÿ€H
2Àº{¾Ü21ÛH=NµH‰
•Ç!•{Ç•Ü2èVýÿéÜúÿÿL‰ßL‰T$èãwüÿL‹T$éÜñÿÿf„L‰çèÈwüÿé˜òÿÿH¿Ç˔}H‰¸”Ƕ”ú2éÑýÿÿf„H‰ßèˆwüÿékòÿÿL‰ïèkvüÿH‰ÃH‹5ٌL‰ïHƒëH‹Vè¡züÿH‰D$@H…À„«ùÿÿH‹5ԋL‰ïH‹Vè€züÿH‰D$HH…À„pHƒëH‹5gˆL‰ïH‹Vè[züÿH‰D$PH…À„ƒHƒëéÆúÿÿ@¸H‰úL‰ßL‰T$ H)ØL‰L$@HtÄ@L‰L$L‰\$L‰t$HL‰l$PèªýÿL‹\$L‹L$H…ÀL‹T$ I‰Ä„OM…É„ŸðÿÿIƒ)…•ðÿÿL‰ÏL‰T$L‰\$èŠvüÿL‹\$L‹T$étðÿÿH‹U‹B‰Cፁù€…´òÿÿ¹L‰\$@L‹BE1ÉH)ÙL‰l$HL‰|$PHtÌ@¨ uL‹ML‰\$¨…åH‰úL‰ÏAÿÐL‹\$H‰ÃH…Û„¤M…Û„.óÿÿIƒ+…$óÿÿL‰ßèóuüÿéóÿÿfDÁø@éëòÿÿDH‹5a†L‰ïH‹VèyüÿH…ÀtH‰D$XHƒëH…ÛŽyùÿÿHT$@L‰áL‰ïL7ÂH5¥+è°ýÿ…À‰SùÿÿHн¾”2ÇŽ’8H‰{’Çy’”2é-øÿÿ@H‰ïèPuüÿéòÿÿM‹KM…É„îÿÿI‹[IƒHƒIƒ+„*H‹CI‰ۿ»éêíÿÿ€L‰Ïèuüÿé$òÿÿL‰L$èžwüÿL‹L$Æ@$éöñÿÿHâ¼Ç둏H‰ؑÇ֑$4éjüÿÿ¨€…ÏH‰ÞL‰çè&ýÿH‰ÅéòÿÿH=g›H‰L$L‰L$èøvüÿL‹L$H‹L$…À„EñÿÿHx¼E1ÒÇ~‘‘H‰k‘I‹Çf‘w4Hƒèf.„I‰H…À…½ûÿÿE1ÛL‰ÏL‰T$L‰$è tüÿL‹$L‹T$M…Û…„ûÿÿé’ûÿÿf„L‰$è÷vüÿL‹$H…À…tÿÿÿH‹“IH5̚H‹8è”tüÿL‹$éUÿÿÿH‹=‡HâzL‰T$H5ÞzèIýÿL‹T$H‰ÅH…í…
ìÿÿHš»Ç£H‰I‹Ç‹â3HƒèI‰H…À…ûÿÿE1äL‰×èXsüÿéëúÿÿI‹1íE1äHƒèI‰…ÌúÿÿfDL‰ßL‰$è,süÿL‹$é¬úÿÿL‰çèsüÿé»úÿÿH‰ïèsüÿé2îÿÿH‰ïL‰T$L‰\$èîrüÿL‹T$L‹\$éØìÿÿ€¶ÛéñÿÿL‰T$L‰\$èquüÿL‹T$L‹\$Æ@$é“ìÿÿfDL‰T$èNuüÿL‹T$Æ@$éNíÿÿL‰×èˆrüÿé/îÿÿH‹=ɅHªyH5«yè
ýÿI‰ÄM…ä…jêÿÿH\ºÇeH‰RÇPÝ3ékøÿÿH‹=y…èDýÿI‰Äë¼€ècwüÿI‰Âé?êÿÿH
º1íǏH‰þŽÇüŽß3é|ùÿÿ€L‰ßèÐqüÿéìíÿÿL‰×L‰æL‰T$è8ýÿL‹T$H‰ÅérìÿÿL‰ÏL‰$èœqüÿL‹$éV÷ÿÿL‰ßL‰T$L‰$èqüÿL‹T$L‹$é*÷ÿÿL‰çèhqüÿé;÷ÿÿL‰×èXqüÿé ÷ÿÿè›vüÿL‹T$I‰ÃéàéÿÿfDH:¹I‰éE1äÇ=ŽH‰*Ž1íÇ&Žä3éÉüÿÿf„H‹=I„L‰T$èýÿL‹T$H‰ÅéAýÿÿfH‰ßL‰D$èÓpüÿL‹D$éÇîÿÿf„L‰Çè¸püÿéÄîÿÿH‰ïè¨püÿéûîÿÿH¢¸I‰ÚǨH‰•Ç“!4I‹1íHƒèéþüÿÿDM‹BM…À„oêÿÿI‹ZIƒHƒIƒ*„¥L‰ÆL‰âH‰ßL‰D$è"ýÿL‹D$H‰ÅIƒ(…êêÿÿL‰ÇèpüÿéÝêÿÿ…FôÿÿòD$èÿrüÿòL$H…À„,ôÿÿHò·ÇûŒ€H‰èŒÇæŒ3éöÿÿf„…ôÿÿèµrüÿòL$H…À„
ôÿÿH¨·Ç±ŒH‰žŒÇœŒ&3é·õÿÿ€…üóÿÿòD$ ègrüÿòL$òT$ H…À„ÜóÿÿHT·Ç]Œ‚H‰JŒÇHŒ03écõÿÿ¶Øé¥ðÿÿL‰×Ht$8ºL‰T$èéýÿL‹T$H‰ÅéÃéÿÿ@è£qüÿÆ@$éÒìÿÿf.„Hâ¶Ç닏H‰؋Ç֋4éöÿÿf„H‹-ɊL‹%|H‹EH‹˜€H…Û„«è9qüÿ‹H QH‹
„D‰P ;õH‰$1ÒH‰ïL‰æÿÓH‰ÅèqüÿH‹$‹X Sÿ‰P ‹HÎ=ÈÁø@9ÊŒœ
H…í„ÍH‰ïèýÿHƒm„s
H¶Ç#‹…H‰‹Ç‹H3é)ôÿÿ¸H‰úH‰ïL‰\$@H)ØL‰\$HtÄ@L‰l$HL‰|$Pè¤ýÿL‹\$H…ÀH‰Ã…¥÷ÿÿHµµÇ¾Š‘H‰«ŠÇ©Š^4M…Û„%õÿÿE1ÒéöôÿÿH‹5ñzH‹=’‰1Òè;ïüÿH‰ÅH…À„¼H‰ÇèGýÿHƒm„)
HNµÇWАH‰DŠÇBŠ34é]óÿÿD1ÒL‰ßH‰îL‰\$èÎqüÿL‹\$L‹T$H…ÀI‰Ä…ææÿÿ„Hò´E1äÇø‰H‰å‰I‹Çà‰4Hƒèé<ôÿÿ€H‹5!zH‹=ʈ1ÒèsîüÿH‰ÅH…À„gH‰ÇèýÿHƒm„Ì	H†´Ç‰‡H‰|‰Çz‰h3é•òÿÿD…þðÿÿH‹5³yH‹=dˆ1Òè
îüÿH‰ÅH…À„(H‰ÇèýÿHƒm„
H ´Ç)‰‰H‰‰Ç‰ˆ3é/òÿÿ€L‰çL‰T$èãküÿL‹T$éžêÿÿf„¨€„úÿÿL‹B1ÿ¨ uI‹zL‰T$Ht$8¨…ÚºAÿÐL‹T$H‰ÅéZæÿÿH‹=Ù~HšrH5›rèýÿI‰ÂM…Ò…ÍæÿÿHl³Çuˆ‘H‰bˆÇ`ˆE4é{ñÿÿI‹A‹@ƒà=€…êÿÿ¸H‰úL‰ÏL‰T$H)ØL‰L$HtÄ@H‰l$@L‰t$HL‰|$PèšìüÿL‹L$L‹T$H…ÀH‰Ã„åH…í„5ëÿÿHƒm…*ëÿÿH‰ïL‰T$L‰L$è¾jüÿL‹L$L‹T$é	ëÿÿ€H=q‘H‰L$ L‰T$L‰\$èýlüÿL‹\$L‹T$…ÀH‹L$ „äÿÿéýÿÿL‰T$L‰$èbmüÿL‹$L‹T$H…À…`ýÿÿH‹ù?H52‘H‹8èújüÿL‹T$L‹$é<ýÿÿ@H=ñH‰L$L‰T$è‚lüÿL‹T$H‹L$…À„wäÿÿ1íéÀäÿÿf„L‰T$èælüÿL‹T$H…ÀH‰ÅuÙH‹‚?H5»H‹8èƒjüÿL‹T$é€äÿÿf„èûnüÿL‹T$I‰Äé.åÿÿfDH‹=á|è¬ýÿI‰Âéþÿÿ@H‚±1ílj†‘H‰v†Çt†G4éèõÿÿ€HR±1íE1äE1ÒH‰J†I‹ÇI†‹Ç;†¥3Hƒèé—ðÿÿf.„H‰ïL‰T$L‰L$èþhüÿL‹T$L‹L$é"èÿÿ€H‹=1|HâoH5ãoènýÿI‰ÃM…Û…šäÿÿHİ1íÇ˅‘H‰¸…Ƕ…J4é6ðÿÿf„H’°E1äǘ…ŒH‰……I‹Ç€…¯3HƒèI‰1íH…À…Ìïÿÿé ôÿÿH‹=š{èeýÿI‰ÃérÿÿÿH?°E1ÒÇE…‘H‰2…Ç0…L4éïÿÿè^müÿL‹\$H‰ÅéäÿÿH‰ßèùgüÿé*éÿÿL‰ÏL‰T$èçgüÿL‹T$éAèÿÿH߯Ç脍H‰ՄI‹ÇЄ¹3HƒèéKÿÿÿL‹]M…Û„ÜãÿÿH‹]IƒHƒHƒm„ÕH‹CH‰ݿ»é¯ãÿÿL‰çèmgüÿé²èÿÿHj¯Çs„ŠH‰`„I‹Ç[„Ã3HƒèéÖþÿÿH‰ïè2güÿé½èÿÿM‹L$M…É„eäÿÿM‹D$IƒIƒIƒ,$„gL‰ÎL‰ÇH‰ÚL‰L$L‰D$è߅ýÿL‹L$L‹D$H‰ÅIƒ)…ÌäÿÿL‰ÏL‰D$èËfüÿL‹D$éµäÿÿHîM‰ÄÇɃ‘H‰¶ƒÇ´ƒ‰4é4îÿÿL‰çL‰T$L‰L$è…füÿL‹T$L‹L$éÐæÿÿL‰T$L‰L$èiüÿL‹T$L‹L$Æ@$隿ÿÿHt$8ºL‰çè"þüÿH‰Åé+äÿÿL‰T$èàhüÿL‹T$Æ@$éBçÿÿH$®Ç-ƒ‘H‰ƒÇƒŒ4é¬íÿÿL‰ßL‰T$L‰L$èéeüÿH‹CI‰ÛL‹T$L‹L$¿»é¤ÞÿÿH˭ÇԂ‘H‰BÇ¿‚l4éøÿÿ¸H‰úL‰ÏL‰T$H)ØL‰L$HtÄ@H‰l$@L‰t$HL‰|$PèQýüÿL‹L$L‹T$H…ÀH‰Ã…wúÿÿH]­E1äÇc‚“H‰P‚I‹ÇK‚Æ4HƒèéêðÿÿH‹5“rH‹=<1ÒèåæüÿH‰ÅH…À„ÞH‰ÇèñûüÿHƒm„Hø¬Ç‚’H‰îÇ쁛4éëÿÿ1ÒL‰ÎH‰ïL‰L$è}iüÿL‹L$H…ÀH‰Ã…Ëáÿÿé1ðÿÿ€L‰×L‰D$è“düÿL‹D$éDôÿÿH‹=ÒwHskH5tkèÿüÿI‰ÄM…ä…ðâÿÿHe¬Çn“H‰[ÇY­4étêÿÿH=‹H‰L$è›füÿH‹L$…À„Äáÿÿ1íéâÿÿègüÿH‰ÅH…ÀuìH‹³9H5ìŠH‹8è´düÿéàáÿÿHñ«1íÇø€“H‰å€Ç〯4écëÿÿèiüÿI‰ÂéjâÿÿH‹=wèÍýüÿI‰Äé9ÿÿÿH‰ïècüÿé€õÿÿèCfüÿÆ@$éVõÿÿHƒìH‹9H
+H5¡jL
¡¬A¸Hö¯H‹81ÀèAhüÿHS«Y^H‰Q€¾Š2ÇN€8Ç@€Š2éôåÿÿH‰ïècüÿéÊõÿÿH‹=_vHðiL‰T$H5ìiè—ýüÿL‹T$H‰ÅH…í…ØáÿÿHèªÇñ“H‰ÞI‹ÇÙ²4HƒèéIïÿÿH‰ïè°büÿé'öÿÿL‰×H‰ÞL‰T$èýÿL‹T$H‰Åé·ãÿÿHªÇ™“H‰†I‹Ç´4HƒèéñîÿÿHbªÇkH‰XÇVö3é‘éÿÿè„güÿL‹T$I‰ÁéFáÿÿH‹=puL‰T$è6üüÿL‹T$H‰ÅéÿÿÿH‰ïèbüÿéÞõÿÿI‹iH…í„:áÿÿI‹YHƒEHƒIƒ)„"H‹CI‰ٿ»é
áÿÿHƒìH‹·7A¸H5ڍjL
ڪH
â©H‹8H+®1ÀèyfüÿH‹©_¾„2H‰…~AXÇ…~8Çw~„2é+äÿÿM‹BM…À„ÂáÿÿM‹bIƒIƒ$Iƒ*„¨L‰ÆH‰ÚL‰çL‰D$è€ýÿL‹D$H‰ÅIƒ(…=âÿÿL‰Çè	aüÿé0âÿÿH©M‰âÇ~“H‰ù}Ç÷}ñ4é_ðÿÿL‰×Ht$8ºL‰T$è£øüÿL‹T$H‰ÅéßáÿÿH‰ïL‰\$H‰Ýè¦`üÿH‹CL‹\$¿»éÈÜÿÿH¨Ç™}“H‰†}I‹Ç}Ô4Hƒèé ìÿÿHb¨Çk}“H‰X}ÇV}ô4éêçÿÿH‹5šmH‹=K|1ÒèôáüÿH‰ÅH…À„aH‰Çè÷üÿHƒm„ŽH¨Ç}”H‰ý|Çû|5éæÿÿ1ÒL‰ÏL‰æL‰L$èŒdüÿL‹L$L‹T$H…ÀH‰Ã…àÿÿH¸§M‰ãE1äÇ»|“H‰¨|I‹Ç£|ß4Hƒèé÷ÿÿ¨€„ÏüÿÿL‹J1ÿ¨ uI‹zL‰T$Ht$8¨…ܺAÿÑL‹T$H‰ÅénàÿÿL‰T$L‰$è7büÿL‹$L‹T$H…À…oÿÿÿH‹Î4H5†H‹8èÏ_üÿL‹T$L‹$éKÿÿÿH§Ç|–H‰ø{Çö{ 5銿ÿÿH=¢…H‰L$ L‰T$L‰L$è.aüÿL‹L$L‹T$…ÀH‹L$ „šÞÿÿéìþÿÿfL‰çL‰D$L‰L$èŽ^üÿL‹L$L‹D$éx÷ÿÿL‰T$èuaüÿL‹T$H…ÀH‰Åt1íéŠßÿÿH‹
4H5C…H‹8è_üÿL‹T$éjßÿÿH=	…H‰L$L‰T$èš`üÿL‹T$H‹L$…À„ðÞÿÿ1íé:ßÿÿH‰ú1ÉL‰ÇÿÐL‹\$L‹L$L‹T$ I‰ÄéåÿÿH‰ïèè]üÿéíøÿÿH‰ï1ÒL‰æè–büÿH‰ÅH…À…ŸïÿÿH̥ÇÕz…H‰ÂzÇÀzD3éÛãÿÿH¥¥Ç®zH‰›zÇ™z/4é´ãÿÿH=E„H‰$èÜ_üÿH‹$…À„ïîÿÿë”èY`üÿH…ÀuŠH‹ý2H56„H‹8èþ]üÿéoÿÿÿf„H2¥Ç;z‡H‰(zÇ&zd3éAãÿÿH¥Çz‰H‰zÇÿy„3éãÿÿL‹J1ÿ¨ uI‹|$Ht$8¨…6ºAÿÑH‰Åé§ÚÿÿL‰ÏL‰T$è©\üÿH‹CI‰ÙL‹T$¿»éÙÛÿÿL‰×L‰D$è\üÿL‹D$éAûÿÿH‰ïèo\üÿéeüÿÿHl¤Çuy‘H‰byÇ`yf4é²îÿÿH‰ú1ÉL‰ÏAÿÐL‹\$H‰ÃéæÿÿH-¤Ç6y’H‰#yÇ!y—4é<âÿÿè\üÿH¤E1äÇy“H‰ôxI‹ÇïxÎ4HƒèéŽçÿÿ1ɺAÿÐL‹T$H‰Åé~ÖÿÿH¹£ÇÂx”H‰¯xÇ­xÿ4éÈáÿÿ1ɺAÿÑH‰ÅéoÙÿÿ1ɺAÿÑL‹T$H‰ÅéÜÿÿ€óúAWAVAUATUSH‰óHì¸L‹fH‰|$dH‹%(H‰„$¨1ÀH‹]1HDŽ$€HDŽ$ˆH‰„$H‹ÞiH‰D$0H‰„$˜H‹jiH‰D$8H‰„$ H…Ò…4Iƒü„åÌIƒü„
Iƒü…	H‹C(H‰$L‹s L‹{Iƒ¿IƒèNYüÿH‰ÅH…À„
H‹;jH‹UH‰îHƒH‰H‹=†m1Òè_äüÿI‰ÀH…À„cHƒm„xH‹5jL‰ÇL‰D$èTõüÿL‹D$H…ÀH‰D$„©H‹D$Hƒ8„ÚIƒ(„ìH‹AwH‹jbH9X…àL‹%QbM…ä„Iƒ$I‹D$H‹5ïrL‰çH‹€H…À„¼
ÿÐI‰ÅM…í„>
Iƒ,$„£I‹EH;P/„2H;Ó/L‰|$x„ H;)0…ÃI‹U‹B¨„<H‹ZE1ä¨ „Mè\üÿH‹-Q/‹p V‰P ;U?L‰þL‰çÿÓH‰Ãè×[üÿ‹p Vÿ‰P ‹E=ÈŽƒè29ÂŒH…Û„äM‰éH…Û„Iƒ)„Iƒ/„ìH‹vH‹5.aH9p…„L‹%aM…ä„tIƒ$I‹D$H‹5ÃqL‰çH‹€H…À„@ÿÐI‰ÅM…í„ÊIƒ,$„·I‹EH;$.„vH;§.L‰t$x„lH;ý.…WI‹U‹B¨„¸L‹zE1ä¨ uM‹eèÔZüÿH‹-%.‹P ƒÂ‰P ;UkL‰öL‰çAÿ×I‰ÇèªZüÿ‹p Vÿ‰P ‹E=ÈŽƒè29ÂŒÐM…ÿ„‡L‰íM…ÿ„>Hƒm„Iƒ.„þH‹$H;Û-„µ
H‹ÖtH‹5ß_H9p…=L‹%Æ_M…ä„mIƒ$I‹D$H‹5lmL‰çH‹€H…À„9ÿÐI‰ÅM…í„SIƒ,$„ 	H‹$H‹@ö€«„“IƒmuL‰ïèWüÿ¿èÊUüÿI‰ÄH…À„ˆ$H‹$H‹@L‰$$HƒH‰H‹CH‹5°gH‰ßH‹€H…À„=ÿÐH‰ÅH…í„ÿH‰ïè'ZüÿH‰D$ Hƒøÿ„(Hƒm„	Hƒ|$ …±I‹GH‹5VgL‰ÿH‹€H…À„CÿÐH‰ÅH…í„H‰ïèÍYüÿH‰D$@Hƒøÿ„>Hƒm„ÓHƒ|$@„ÿH‹5€cH‹=Ir1Òèò×üÿI‰ÄH…À„H‰ÇèþìüÿIƒ,$„r'HžÇs“H‰ûrÇùr8@HÇD$ M‰þ1ÉE1ÛHÇD$(E1ÒE1íE1äHÇD$HÇD$éG€Iƒü‡ïH‰ÕH´¥Jc¢HÐ>ÿàH‹FH‰ïH‰„$€è^TüÿI‰ÅH‹5lmH‰ïH‹Vè˜XüÿH‰„$ˆH…À„K
IƒíM…íb	H‹„$L‹¼$€L‹´$ˆH‰$H‹„$˜H‰D$0H‹„$ H‰D$8é_úÿÿ€Iƒü…ŽH‹F8H‰D$8H‹C0H‰D$0é'úÿÿ€H‰ïH‰D$èÃTüÿL‹D$éqúÿÿf„H‹á*H‰$éøùÿÿH‹F8H‰„$ H‹C0H‰„$˜H‹C(H‰„$H‹C H‰ïH‰„$ˆH‹CH‰„$€èLSüÿI‰ÅIƒü‡õHˆ¤Jc¢HÐ>ÿàfDH‰ÇL‰D$è+TüÿL‹D$Iƒ(…úÿÿL‰ÇèTüÿéúÿÿ€M‹eéªúÿÿ€Áø@9åúÿÿè•VüÿÆ@$é×úÿÿ@H‹=!gèìíüÿI‰ÄM…ä…åùÿÿH›1ÉE1ÛE1ÒH‰ºpE1íL‰ûǶp‡Ç¨pN?HÇD$ HÇD$(HÇD$HÇD$HÇ$@M…Òt
Iƒ*„M…Ût
Iƒ+„H…Ét
Hƒ)„#H‹
<p‹BpE1ÿH=¬‹5.pèqúüÿHƒ|$tH‹L$H‹H‰D$0HƒèH‰„ÿH‹$H…ÉtH‹H‰D$HƒèH‰„ñM…ätIƒ,$„ñM…ítIƒm„ñH‹L$H…ÉtH‹H‰$HƒèH‰„ãH‹t$H…ötH‹H‰$HƒèH‰„ÕH‹T$(H…ÒtH‹H‰$HƒèH‰„ÇH‹|$ H…ÿtH‹H‰$HƒèH‰„¹Hƒ+„¾Iƒ.„ÆH‹„$¨dH3%(…Œ5HĸL‰ø[]A\A]A^A_Ãf„H‰ÏèèQüÿéôþÿÿH‰ÏèØQüÿéÿÿÿL‰çèÈQüÿéÿÿÿL‰ïè¸QüÿéÿÿÿH‰Ïè¨QüÿéÿÿÿH‰÷è˜QüÿéÿÿÿH‰×èˆQüÿé,ÿÿÿè{QüÿHƒ+…BÿÿÿH‰ßèiQüÿIƒ.…:ÿÿÿL‰÷èWQüÿé-ÿÿÿfL‰×H‰L$8L‰\$0è>QüÿH‹L$8L‹\$0éÞýÿÿ€L‰ßH‰L$0èQüÿH‹L$0éÏýÿÿH‰ÏèQüÿéÐýÿÿL‰çèøPüÿéP÷ÿÿL‰ÿèèPüÿéøÿÿL‰ÏèØPüÿéí÷ÿÿÁø@éåøÿÿDL‰çè¸Püÿé<øÿÿL‰÷è¨PüÿéõøÿÿH‰ïè˜PüÿéÛøÿÿH‹<$L‰îèTQüÿIƒm‰Å„¯…í…[ùÿÿH‹$HƒéwùÿÿfH
ª˜A¸HƒìH‹H&HçœH5j|ATL
j™H‹81ÀèUüÿH)˜¾?Ç-mÇm?H‰mXZH
˜ºH={E1ÿèC÷üÿé¹ýÿÿH‰ïèÆNüÿI‰ÅH‹5tdH‰ïIƒíH‹VèüRüÿH‰„$€H…À…@úÿÿL‹cIƒüH
ä—Hæ—AÀHMÈE¶ÀOD@é,ÿÿÿ€Hz—1ÉE1ÛE1ÒH‰rlE1íE1äL‰ûÇkl„Ç]l8?HÇD$ HÇD$(HÇD$HÇD$HÇ$HÇD$é«ûÿÿè³QüÿÆ@$é"÷ÿÿf.„Hò–1ÉE1ÛE1ÒH‰êkE1ÉE1íE1äÇãk„L‰ûÇÒk=?HÇD$ HÇD$(HÇD$HÇD$HÇ$HÇD$H…ítHƒm„…M…ÀtIƒ(tBM…É„ûÿÿIƒ)…÷úÿÿL‰ÏL‰T$@H‰L$8L‰\$0è@NüÿL‹T$@H‹L$8L‹\$0éÌúÿÿ@L‰ÇL‰T$HL‰L$@H‰L$8L‰\$0èNüÿL‹T$HL‹L$@H‹L$8L‹\$0ëŒfDH‰ïL‰T$PL‰L$HL‰D$@H‰L$8L‰\$0èÏMüÿL‹T$PL‹L$HL‹D$@H‹L$8L‹\$0é<ÿÿÿL‰þL‰ïè%ìüÿH‰Ãé¡ôÿÿDL‰çèMüÿéSöÿÿH‰ïè€MüÿéÞöÿÿHz•1ÉE1ÛE1ÒH‰rjE1ÉE1íE1äÇkj„L‰ûÇZj@?HÇD$ HÇD$(HÇD$HÇD$HÇ$éœþÿÿH‹=Y`HjUH5kUè–çüÿI‰Äé%ùÿÿfD1ÿè¡KüÿH‰$H…À…éõÿÿH֔ÇßiŠH‰ÌiÇÊi•?fHÇD$ 1ÉE1ÛE1ÒHÇD$(E1íE1äM‰þHÇD$HÇD$éùÿÿfDHr”L‰å1ÉE1ÛH‰jiE1ÒE1ÉE1ÀÇci‡E1äL‰ûÇOiP?HÇD$ HÇD$(HÇD$HÇD$HÇ$éýÿÿfDèKQüÿI‰Åé<òÿÿL‰öL‰ïèeêüÿI‰ÇéôÿÿDH‹5a\H‰ïH‹VèOüÿH…ÀtH‰„$IƒíM…íŽqöÿÿH‹5dH‰ïH‹VèØNüÿH…ÀtH‰„$˜IƒíM…íŽDöÿÿH‹5[H‰ïH‹Vè«NüÿH…ÀtH‰„$ IƒíM…íŽöÿÿH”$€L‰áH‰ïLâ—H5…èPÞüÿ…À‰îõÿÿH*“¾ð>Ç.hH‰hÇhð>éþúÿÿHƒìH‹ñ H5wL
”jA¸H
“Hs—H‹81Àè³OüÿHŒ^_H‰Ãg¾Ú>ÇÀgDzgÚ>é—úÿÿH—’Ç g“H‰gÇ‹g4@HÇD$ 1ÉE1ÛE1ÒHÇD$(E1íM‰þHÇD$HÇD$éÜöÿÿ@I‹GH‹5ýZL‰ÿH‹€H…À„~ÿÐH‰ÅH…í„}H‹EH;É „[H;Ä„H‹@hH…À„@H‹@H…À„31öH‰ïÿÐI‰ÀM…À„ÅHƒm„&I‹GL‰D$L‰ÿH‹5sZH‹€H…À„¿ÿÐL‹D$H‰ÅH…í„zH‹EH;= „_H;8„îH‹@hH…À„rH‹@H…À„eL‰D$¾H‰ïÿÐL‹D$I‰ÁM…É„öHƒm„%L‰ÎL‰ǺL‰L$(L‰D$ècIüÿL‹D$L‹L$(H…ÀH‰Å„kIƒ(„¯Iƒ)„˜H;-A”ÄH;-ß”ÀDà…KH;-ì„>H‰ïè6LüÿA‰ąÀˆvHƒm„DE…ä…PòÿÿH‹CH‹5LYH‰ßH‹€H…À„IÿÐH‰ÅH…í„H‹EH;„’
H;„MH‹@hH…À„H‹@H…À„1öH‰ïÿÐI‰ÁM…É„¨Hƒm„e
I‹GL‰L$L‰ÿH‹5ÂXH‹€H…À„mÿÐL‹L$H‰ÅH…í„þH‹EH;Œ„>H;‡„‘H‹@hH…À„¥H‹@H…À„˜L‰L$1öH‰ïÿÐL‹L$I‰ÀM…À„;Hƒm„ÿ
L‰ÆL‰ϺL‰D$(L‰L$èµGüÿL‹L$L‹D$(H…ÀH‰Å„ØIƒ)„-Iƒ(„H;-d”ÀH;-2”ÂÂ…Ÿ	H;-@„’	H‰ïèŠJüÿ‰D$H…Àˆ3Hƒm„c‹L$H…É…H‹<$H‹WH‹BpH…À„H‹@H…À„õH‹5ÆTÿÐH‰ÅH…À„üH‰Çè8KüÿI‰ÄH…À„$Hƒm„±H‹CH‹5FWH‰ßH‹€H…À„µÿÐI‰ÀM…À„€I‹@H;„ÔH;
„*H‹@hH…À„¦H‹@H…À„™L‰D$L‰Ç1öÿÐL‹D$H‰ÅH…턞Iƒ(„žI‹T$ I‹D$H‰ÑHÑùH9ÈŽŽH9Ѝ…I‹T$HƒEH‰,ÂHƒÀI‰D$Hƒm„âH‹|$H‹5ÖUH‹GH‹€H…À„7ÿÐI‰ÅM…턬H‹5I9E…ŠI‹mH…í„}M‹MHƒEIƒIƒm„¬L‰ÏL‰âH‰îL‰L$è+dýÿHƒmL‹L$I‰À„LM…À„!Iƒ)„²I‹@L‰D$L‰ÇH‹5ZVH‹€H…À„¦ÿÐL‹D$I‰ÁM…É„:Iƒ(„JH‹CL‰L$H‰ßH‹5’UH‹€H…À„IÿÐL‹L$I‰ÀM…À„I‹@H;\„úH;W„xH‹@hH…À„vH‹@H…À„iL‰L$L‰Ç1öL‰D$ÿÐL‹D$L‹L$I‰ÂM…Ò„éIƒ(„²I‹AH;ã…˜M‹AM…À„«I‹iIƒHƒEIƒ)„5H‹E¿A½H;3„]H;Ž„ÍL‰T$L‰D$èiFüÿL‹D$L‹T$H…ÀI‰Ã„M…ÀtL‰@H‹RIcÅL‰ÞH‰ïHƒÀL‰\$HƒI‰TÃAE1ÒH˜M‰TÃèFÅüÿL‹\$H…ÀI‰Å„Iƒ+„½Hƒm„wI‹GH‹5U\L‰ÿH‹€H…À„ÕÿÐI‰ÁM…É„ÔH‹]`H‹VKH9P…ãH‹=KH‰D$H…À„HƒH‹|$L‰L$(H‹5jZH‹GH‹€H…À„ÀÿÐL‹L$(H‰D$Hƒ|$„áH‹t$H‹H‰D$(HƒèH‰„ÚH‹MI9A…M‹AM…À„ƒI‹iIƒHƒEIƒ)„H‹T$L‰ÆH‰ïL‰D$èBaýÿL‹D$I‰ÆIƒ(„H‹t$H‹H‰D$HƒèH‰„{M…ö„—Hƒm„"Iƒ/„H‹D$H‹5´HƒH9p„µL‹|$L‰öL‰ÿè~jýÿM‰ùH‰ÅH…í„1Iƒ)„“H‹EH;Š…© H‹UHƒú… H‹EH‰D$H‹E H‰D$H‹E(H‰D$(H‹D$HƒH‹D$HƒH‹D$(HƒHƒm„8H‹5¶WH‹|$0ºè¯Íüÿ…Àˆ!!HÇD$ …H‹q^H‹*IH9P…½!H‹-IH…í„t"HƒEH‹EH‹5XH‰ïH‹€H…À„D"ÿÐI‰ÁM…É„"Hƒm„YH‹
^H‹5¶HH9p…œ"H‹-HH…í„;"HƒEH‹5 QH‰ïL‰L$0èSÃüÿL‹L$0H…ÀI‰Â„Ô#Hƒm„H‹(I9B„>%H‹t$L‰×L‰L$8L‰T$0èïhýÿL‹T$0L‹L$8H‰ÅM‰ÐH…í„ß$Iƒ(„wH‹5MMH‰ïL‰L$0èXaýÿL‹L$0H…ÀI‰À„$Hƒm„µH‹t$(L‰ÇL‰L$8L‰D$0è5@üÿL‹D$0L‹L$8H…ÀH‰Å„I$Iƒ(„×I‹AE1ÀH;o„ó%H;ò„'#H;M„LH‹|$@L‰L$8L‰D$0è#BüÿL‹D$0L‹L$8H…ÀI‰Ã„ï%M…ÀtL‰@HcD$HIƒE1ÒL‰ÞL‰ÏL‰\$8M‰lÍ@H˜L‰L$0I‰lÃèÁüÿL‹L$0L‹\$8H…ÀI‰Â„%Iƒ+„ Iƒ)„\Iƒm„:L‰×H‰ÞL‰T$0è>üÿL‹T$0H…ÀI‰Å„î$Iƒ*„=L‰çèÜ=üÿH‰ÁH…À„&I‹EH‰L$0H‰ÊL‰ïH‹5zOH‹€˜H…À„ß%ÿÐH‹L$0…Àˆó Hƒ)„Ü IƒEM‰ïékëÿÿ@H‰ïèh>üÿé èÿÿI‹mH…í„ÁäÿÿM‹MHƒEIƒIƒm„{L‰ÏL‰úH‰îL‰L$è]ýÿHƒmL‹L$H‰Ã…åÿÿH‰ïL‰L$è>üÿL‹L$éåÿÿfDH=Ádè\@üÿ…À„­äÿÿ@M‰éH߅L‰û1ÉE1ÛH‰×ZE1ÒE1íE1äÇÐZ‡ÇÂZ_?HÇD$ HÇD$(HÇD$HÇD$HÇ$éïÿÿf„¶	D$Hévöÿÿ@Ht$xºL‰ïè.ÕüÿH‰ÃéJäÿÿfDH‹=‰PHŠEH5‹EèÆ×üÿI‰ÄM…ä…käÿÿH…1ÉE1ÛE1ÒH‰ZE1íÇZˆÇZl?HÇD$ HÇD$(HÇD$HÇD$HÇ$é\éÿÿ@Hº„M‰á1ÉE1ÛH‰²YE1ÒE1äÇ®YˆÇ Yn?HÇD$ HÇD$(HÇD$HÇD$HÇ$éííÿÿ€è›AüÿI‰Åé¸ãÿÿH‹=‰OèTÖüÿI‰Äé	ÿÿÿ@¨€„pîÿÿL‹B1ÿ¨ uI‹}Ht$x¨….ºAÿÐH‰ÃéùâÿÿDM‹eM…ä„}ãÿÿI‹mIƒ$HƒEIƒm„RL‰òL‰æH‰ïè¬ZýÿIƒ,$I‰Ç…âãÿÿL‰çè¦;üÿéÕãÿÿH=ibè>üÿ…À„ãÿÿ@L‰íH‡ƒ1ÉE1ÛE1ÒH‰XE1ÉE1ÀE1íÇxXˆE1äÇgX}?HÇD$ HÇD$(HÇD$HÇD$HÇ$é™ìÿÿfDè>üÿH…À…*ýÿÿH‹³H5ìaH‹8è´;üÿéýÿÿ€Ht$xºL‰ïè¶ÒüÿI‰ÇéÿâÿÿfDL‰ïèÀ:üÿéDêÿÿH‹EL‹Iƒé˜òÿÿ„H‰ïL‰L$è“:üÿL‹L$é„òÿÿf„¨€„ˆîÿÿL‹B1ÿ¨ uI‹}Ht$x¨…pºAÿÐI‰Çé~âÿÿDH‹=‘MH‚BH5ƒBèÎÔüÿI‰ÄM…ä…²âÿÿH$‚Ç-W‹H‰WÇW«?HÇD$ 1ÉE1ÛE1ÒHÇD$(E1íM‰þHÇD$HÇD$HÇ$éaæÿÿHÇËVH‰¸VǶVì?ééìÿÿf„èÛ>üÿH‰Åé»âÿÿH‹EL‹IƒéöñÿÿH‰ïL‰L$(L‰D$è^9üÿL‹L$(L‹D$éàñÿÿ€èC<üÿH…À…²ýÿÿH‹ãH5`H‹8èä9üÿé—ýÿÿ€èc>üÿI‰Åé¿áÿÿH‹=QLèÓüÿI‰ÄéÉþÿÿ@Hò€M‰à1ÉE1ÛH‰êUE1ÒE1ÉE1äÇãU‹M‰þÇÒU­?HÇD$ HÇD$(HÇD$HÇD$HÇ$éêÿÿf„H‚€Ç‹UH‰xUÇvUî?M‰þ1ÉE1ÛE1ÒE1ÉE1ÀHÇD$ E1íE1äHÇD$(HÇD$HÇD$é™éÿÿfDL‰Çè8üÿéàðÿÿL‰ÏL‰D$èû7üÿL‹D$é¼ðÿÿL‹MIƒéÓïÿÿH‹51EH‹=òS1Ò蛹üÿI‰ÄH…À„šH‰Çè§ÎüÿIƒ,$„IH®Ç·T‘H‰¤TÇ¢Tþ?é¤áÿÿDH‰ïèx7üÿéðÿÿE¶äéÌîÿÿ€HbÇkT’H‰XTÇVT@é‰êÿÿf„è{<üÿH‰ÅéµàÿÿL‹EIƒé™ïÿÿHÇT’H‰TÇT@é‹þÿÿL‰æL‰ïè~_ýÿM‰éI‰Àé«ñÿÿH‰ïèÈ6üÿéBðÿÿL‰ïL‰L$è³6üÿL‹L$énøÿÿf„H‹EL‹IƒéÏìÿÿH‰ïL‰D$èƒ6üÿL‹D$éÃìÿÿf„I‹@H‹(HƒEé_ðÿÿ€L‰ÇèP6üÿéUðÿÿHJ~ÇSS”H‰@SÇ>SJ@éqéÿÿèk;üÿH‰Åé¯íÿÿH‹EL‹HIƒé×ìÿÿ€H‰ïL‰L$(L‰D$èæ5üÿL‹L$(L‹D$éºìÿÿ€H‰ïèÈ5üÿéðÿÿH‹¹H‹RH5¦`H‹81Àè”:üÿH¦}ǯR›H‰œRÇšRx@éœßÿÿDL‰ïèp5üÿé¡ùÿÿHj}ÇsR”H‰`RÇ^RL@éãüÿÿL‰Ïè95üÿé[ìÿÿL‰ÇL‰L$è'5üÿL‹L$é:ìÿÿ1ÿèÖ6üÿI‰ÄH…Àt¦H‰ÆH‰ïèã5üÿIƒ,$I‰Á…ÜìÿÿL‰çH‰D$èè4üÿL‹L$éÅìÿÿL‹EIƒéëÿÿHÓ|1ÉE1ÛE1ÒH‰ËQE1íE1äM‰þÇÄQ”ǶQO@HÇD$ HÇD$(HÇD$HÇD$éæÿÿèÀ9üÿL‹L$H‰Åé‹ìÿÿL‰ÏL‰D$èV4üÿL‹D$é7ïÿÿH‰ïèD4üÿé¯ëÿÿHA|M‰þ1ÉE1ÛH‰9QE1ÒÇ8Q”Ç*QQ@é½ûÿÿI‹hHƒEéÿíÿÿ1ÿL‰L$è³5üÿL‹L$H…ÀI‰Ät§H‰ÆH‰ïL‰L$è¶4üÿIƒ,$L‹L$I‰À…@ìÿÿL‰çL‰L$(H‰D$è±3üÿL‹L$(L‹D$éìÿÿL‰ïL‰L$è•3üÿL‹L$é=îÿÿL‰ÇL‰L$è~3üÿL‹L$éŸîÿÿL‹M Iƒé?êÿÿHi{ÇrP”H‰_PÇ]PT@1ÉE1ÛE1ÒHÇD$ E1íE1äM‰þHÇD$(HÇD$HÇD$é–äÿÿH‹E‹@ƒà=€…ïÿÿH‹OAH‰úH‰ïL‰„$€L‰D$H‰„$ˆ¸L)èL‰”$H´ĀL‰T$èR´üÿL‹T$L‹D$H…ÀI‰Å„M…Àt
Iƒ(„ÁIƒ*…(ïÿÿL‰×è{2üÿéïÿÿHxzǁOŒH‰nOÇlOÆ?éOøÿÿH‰îL‰çè¤4üÿƒøÿ…~ìÿÿH=zM‰þ1ÉE1ÛH‰5OE1ÒE1ÉE1ÀÇ.OœE1íÇOŒ@HÇD$ HÇD$(HÇD$HÇD$éWãÿÿH‰ïL‰L$L‰D$èÊ1üÿL‹L$L‹D$é“ìÿÿH½yÇÆN”H‰³NDZNW@é6ùÿÿI‹@L‹IƒéDíÿÿL‰ÇL‰T$L‰L$èr1üÿL‹T$L‹L$é-íÿÿL‰çè[1üÿéªùÿÿH‹5—>H‹=hM1Òè³üÿI‰ÄH…À„«H‰ÇèÈüÿIƒ,$„¨H$yÇ-N•H‰NÇNf@éÛÿÿH‹t$L‰ÏL‰L$è‰YýÿL‹L$I‰ÆL‰Íé™îÿÿH‰ïèÑ0üÿé|íÿÿL‰ÏL‰T$A½L‰D$è´0üÿH‹EL‹D$¿L‹T$éªìÿÿèç5üÿH‰ÅézæÿÿH‘xÇšM’H‰‡MÇ…M@é¸ãÿÿHjx1ÉE1ÛE1ÒH‰bME1ÉE1ÀE1íÇ[M›M‰þÇJMz@HÇD$ HÇD$(HÇD$HÇD$é„áÿÿM‹PIƒé¼ëÿÿHþwÇM’H‰ôLÇòL@éw÷ÿÿH×wÇàLœH‰ÍLÇËL‡@é;åÿÿèù4üÿI‰ÀéCéÿÿ1ÿèZ1üÿI‰ÄH…Àt–H‰ÆH‰ïèg0üÿIƒ,$I‰À…¯åÿÿL‰çH‰D$èl/üÿL‹D$é˜åÿÿHdwM‰þ1ÉE1ÛH‰\LE1ÒE1ÉÇXLœÇJL‰@HÇD$ E1íHÇD$(HÇD$HÇD$é‘àÿÿHw1ÉE1ÛE1ÒH‰LE1ÉÇÿK’ÇñK@é—ûÿÿè4üÿL‹D$H‰Åé9åÿÿH‰÷L‰L$(èµ.üÿL‹L$(éìÿÿH‰÷è£.üÿéxìÿÿL‰ßè–.üÿé6ëÿÿL‰çè‰.üÿ遨ÿÿ1ÿL‰D$è80üÿL‹D$H…ÀI‰Å„ÿÿÿL‰ÇH‰ÆL‰D$è7/üÿIƒmL‹D$H‰Å…;èÿÿL‰ïè<.üÿL‹D$é)èÿÿH4vM‰þ1ÉE1ÛH‰,KE1ÒE1ÉÇ(K’ÇK!@é°õÿÿL‰ÿèõ-üÿéèëÿÿH‰ïèè-üÿéÑëÿÿ¿L‰D$è”/üÿL‹D$H…ÀI‰Ät•H‰ÆH‰ïL‰D$è—.üÿIƒ,$L‹D$I‰Á…säÿÿL‰çH‰D$(è—-üÿL‹L$(L‹D$éWäÿÿH‹á;H‰úH‰ïL‰„$€L‰D$H‰„$ˆ¸L)èL‰”$H´ĀL‰T$è$ÅüÿL‹T$L‹D$H…ÀI‰Å…’úÿÿH0uÇ9JH‰&JÇ$J¾@HÇD$ 1ÉE1ÛI‰éHÇD$(M‰þHÇD$HÇD$écÞÿÿHÚtÇãIH‰ÐIÇÎI–@HÇD$ 1ÉE1ÛE1ÒHÇD$(M‰þHÇD$HÇD$é"ÙÿÿH„tǍI’H‰zIÇxI$@éùÿÿH‹|$è¡1üÿI‰Å鼿ÿÿL‰ÏL‰D$è<,üÿL‹D$éËéÿÿL‰Ïè*,üÿé`êÿÿH'tÇ0I’H‰IÇI'@é óÿÿHtÇ	IH‰öHÇôH¤@HÇD$ 1ÉE1ÛE1ÒHÇD$(E1íM‰þHÇD$HÇD$é;ÝÿÿH§s1ÉE1ÛE1ÒH‰ŸHÇ¡HÇ“H§@HÇD$ E1íM‰þHÇD$(HÇD$HÇD$é×Üÿÿè—0üÿL‹D$I‰ÁéRæÿÿL‰Çè2+üÿéíèÿÿH‰ïè%+üÿé»éÿÿH‹5ù9H‹|$0ºèj·üÿ…Àˆ­t(H‹59=H‹|$0ºèJ·üÿ…Àˆróú…YH‹HH‹ú2H9P…JH‹á2H‰D$ H…À„éHƒH‹5ðCH‹|$ èV­üÿI‰ÃH…À„ˆH‹t$ H‹H‰D$PHƒèH‰„èH‹©GH‹‚2H9P…AH‹i2H‰D$ H…À„^HƒH‹5ÈAH‹|$ L‰\$Pèé¬üÿL‹\$PH…ÀI‰Á„üH‹t$ H‹H‰D$PHƒèH‰„H‹5ßCH‹|$(L‰L$PL‰\$ 裬üÿL‹\$ L‹L$PH…ÀI‰Â„H‹t$H‰ÇL‰L$XL‰\$PH‰D$ è*üÿL‹T$ L‹\$PH…ÀL‹L$XI‰À„UIƒ*„Ä
H‹=ÿ1íE1ÒI9A„ÕI‹AUH;°ÿHcÒ„
H;„çH‰×L‰T$`L‰L$XL‰D$PL‰\$ èÖ+üÿL‹\$ L‹D$PH…ÀL‹L$XL‹T$`H‰Á„’M…ÒtL‰PHcÅH‹T$(H‰ÎL‰ÏHƒÀL‰\$`L‰DÁEHƒH˜H‰TÁ1ÒH‰L$XL‰L$P袪üÿL‹L$PH‹L$XH…ÀH‰D$ L‹\$`„Hƒ)„1Iƒ)„
¿L‰\$Pè2+üÿL‹\$PH…ÀI‰Á„rH‹D$ L‰\$PL‰L$ I‰AIƒM‰q èA,üÿL‹L$ L‹\$PH…ÀH‰Å„ÇH‹T$8H‹5o9H‰ÇL‰L$PL‰\$ è,üÿL‹\$ L‹L$P…ÀˆÂ
H‹T$8H‹5AH‰ïL‰L$PL‰\$ èm,üÿL‹\$ L‹L$P…ÀˆœL‰ÎL‰ßH‰êL‰L$PL‰\$8裩üÿL‹\$8L‹L$PH…ÀH‰D$ „Iƒ+„ìIƒ)„ÕHƒm„vH‹t$ H;5Ðý”ÀH;5žý”ÂÂ…Z
H;5¬ý„M
H‰÷èö*üÿ…Àˆ5…À…æÿÿH‹5/6H‹|$0º蠳üÿ…Àˆà„wH‹kDH‹54/H9p…
L‹/M…À„»IƒH‹5ç5L‰ÇL‰D$0販üÿL‹D$0H…ÀH‰Å„bIƒ(„KH‹541ÒH‰ï薨üÿI‰ÀH…À„üHƒm„kIƒ(…måÿÿL‰Çè&üÿé`åÿÿ„H’nÇ›CH‰ˆCdžCª@éúÿÿè´+üÿL‹L$I‰Àé¯áÿÿHYnM‰þ1ÉE1ÛH‰QCE1ÒÇPCÇBC¬@éóöÿÿH'nÇ0C‘H‰CÇCú?é‹Ûÿÿ1ÿL‰L$L‰D$è­'üÿL‹D$L‹L$H…ÀH‰Åt„L‰ÇH‰ÆL‰L$L‰D$è¦&üÿHƒmL‹D$L‹L$I‰Â…eáÿÿH‰ïH‰D$(è¡%üÿL‹T$(L‹L$L‹D$éDáÿÿ¿E1íL‰ÍE1ÀéˆáÿÿL‰çèr%üÿéKôÿÿ¿E1íL‰Íékáÿÿè¨*üÿI‰Áé#âÿÿHRmÇ[B®H‰HBÇFBè@ésøÿÿH‹=r8HS-L‰L$H5O-調üÿL‹L$H‰D$Hƒ|$…âÿÿHöl1ÉE1ÛE1ÒH‰îAM‰þÇíA®ÇßAê@HÇD$ HÇD$(HÇD$é=ÖÿÿH©l1ÉI‰éÇ­AH‰šAǘAÎ@éùÿÿH‰ïL‰L$0èn$üÿL‹L$0éãÿÿHfl1ÉÇmAH‰ZAÇXAÙ@HÇD$ E1ÒI‰éM‰þHÇD$(HÇD$HÇD$é¤ÕÿÿH‹|$èT)üÿL‹L$(H‰D$é3áÿÿH‹=>7L‰L$è¾üÿL‹L$H‰D$éÕþÿÿH×k1ÉE1ÒM‰þL‹\$H‰Ê@ÇÌ@®Ç¾@ì@HÇD$ HÇD$(HÇD$éÕÿÿHˆk1ÉE1ÛÇŒ@®H‰y@Çw@ü@éÿÿÿH‰ïL‰L$0H‰D$8èH#üÿL‹T$8L‹L$0éÂâÿÿL‹xH‰ÂM…ÿ„;áÿÿL‹HIƒIƒH‹H‰D$HƒèH‰„wL‰ÏL‰òL‰þL‰L$èåAýÿIƒ/L‹L$H‰Å…áÿÿL‰ÿL‰L$èÖ"üÿL‹L$éôàÿÿL‰ÇL‰T$è¿"üÿL‹T$é(ðÿÿL‰ÇL‰L$0è¨"üÿL‹L$0érâÿÿH j1ÉE1ÛE1ÒH‰˜?Çš?¯ÇŒ?AHÇD$ HÇD$(HÇD$HÇD$éáÓÿÿI‹A‹@ƒà=€…ŸâÿÿHcT$H¸L‰ÏL‰„$€L‰D$8H)ÐH‹T$@L‰L$0H´ĀL‰¬$ˆH‰¬$蒣üÿL‹L$0L‹D$8H…ÀI‰Â„lM…Àt
Iƒ(„Hƒm…®âÿÿH‰ïL‰T$8L‰L$0è°!üÿL‹L$0L‹T$8éâÿÿHƒúäH…Òx.HƒúHÀjH
ˆiHEÈH‹e÷H5Ö^H‹81ÀèT&üÿHfi1ÉE1ÛE1ÒH‰^>E1ÉE1ÀÇZ>¯ÇL>AHÇD$ HÇD$(HÇD$HÇD$é†ÒÿÿH;Ì÷„(H‰ïè6%üÿI‰ÀH…À„wHƒm„‹
I‹@L‰D$L‰ÇH‹¨àÿÕL‹D$H…ÀH‰D$„0L‰D$(L‰ÇÿÕL‹D$(H…ÀH‰D$„.
L‰D$ L‰ÇÿÕL‹D$ H…ÀH‰D$(„
L‰ÇÿվH‰Çè›ÂüÿL‹D$ …Àˆf	Iƒ(…ïÞÿÿL‰ÇèL üÿéâÞÿÿH‰ïL‰L$8H‰D$0è5 üÿL‹L$8L‹D$0é*àÿÿH(h1ÉE1ÛE1ÒH‰ =Ç"=±Ç=\AHÇD$ éŽÌÿÿL‰ÇL‰L$0èáüÿL‹L$0éàÿÿ1ɺAÿÐH‰ÃéÉÆÿÿL‰ïL‰T$0è¸üÿL‹T$0é¯àÿÿL‰ÏL‰T$0è¡üÿL‹T$0éàÿÿL‰×èüÿé¶àÿÿHŒgÇ•<•H‰‚<Ç€<b@éðÔÿÿH‹=¬2HM'H5N'èé¹üÿH‰ÅH…í…2ÞÿÿH?g1ÉE1ÛE1ÒH‰7<Ç9<¿Ç+<ABé®ËÿÿL‰ßL‰L$0H‰D$8èüüÿL‹T$8L‹L$0éÙßÿÿ1ɺAÿÐI‰ÇéÇÿÿHÝf1ÉE1ÛE1ÒH‰Õ;E1ÀÇÔ;¿ÇÆ;CBé$Ðÿÿèô#üÿI‰Áé´ÝÿÿH‹=å1谸üÿH‰ÅéBÿÿÿH‰÷L‰\$Pè{üÿL‹\$PéôÿÿH‹=º1L‰L$0耸üÿL‹L$0H‰ÅH…í…¨ÝÿÿHQf1ÉE1ÛE1ÒH‰I;ÇK;¿Ç=;FBé¶ÏÿÿH‹=i1Hú%L‰L$0H5ö%衸üÿL‹L$0H‰ÅëŸH‰÷L‰L$XL‰\$PèåüÿL‹L$XL‹\$PéØóÿÿH‹UHƒú…'üÿÿH‹EH‹H‰T$H‹PH‹@H‰T$H‰D$(éÜÿÿH‰ÏèüÿéßÿÿHšeE1ÛE1Òǝ:ÁH‰Š:Lj:§BéÊÿÿI‹A‹@ƒà=€…ôÿÿH‹D$(HcÍL‰ÏL‰\$hL‰”$€H‰„$¸H)ÈL‰T$`H´ĀL‰„$ˆL‰D$XL‰L$P語üÿL‹L$PL‹D$XH…ÀH‰D$ L‹T$`L‹\$h„ê
M…Òt
Iƒ*„
Iƒ(…$ôÿÿL‰ÇL‰L$XL‰\$Pè½üÿL‹\$PL‹L$XéôÿÿH°d1ÉI‰ëÇ´9¿H‰¡9ÇŸ9HBéÎÿÿè
üÿHcT$H¸L‰ÏL‰„$€L‰D$8H)ÐH‹T$@L‰L$0H´ĀL‰¬$ˆH‰¬$è´üÿL‹L$0L‹D$8H…ÀI‰Â…GúÿÿH%d1ÉE1ÛÇ)9¿H‰9Ç9oBérÍÿÿHùc1ÉE1ÛE1ÒH‰ñ8Çó8¿Çå8ZBéCÍÿÿL‰×L‰L$XL‰\$ H‰D$Pè±üÿL‹L$XL‹D$PL‹\$ éòÿÿL‰ÏL‰\$PèüÿL‹\$PéåòÿÿHˆc1ÉE1ÛE1ÒH‰€8Ç‚8¿Çt8]BéâÌÿÿHYc1ÉE1ÛE1ÒH‰Q8ÇS8¿ÇE8WBé³ÌÿÿM‹zM…ÿ„µÚÿÿM‹BIƒIƒIƒ*„ìH‹T$L‰ÇL‰þL‰L$8L‰D$0èÛ9ýÿIƒ/L‹D$0L‹L$8H‰Å…•ÚÿÿL‰ÿL‰L$8L‰D$0èÂüÿL‹L$8L‹D$0étÚÿÿH‹œðºH5 FH‹81Àè†üÿé-ùÿÿH‰×L‰L$è„üÿL‹L$ér÷ÿÿH‰ÏL‰L$XL‰\$PèhüÿL‹L$XL‹\$Pé®ñÿÿH[b1ÉE1ÒE1ÀH‰S7ÇU7¶ÇG7ÖAHÇD$ éœËÿÿ¶Àé»òÿÿHb1ÉÇ"7¿H‰7Ç
7ŠBé†ËÿÿHòaM‰Õ1ÉE1ÛH‰ê6E1ÒÇé6ÀÇÛ6™Bé^ÆÿÿM‹AM…À„ÚÿÿM‹yIƒIƒIƒ)„ÖHÇD$@I‹GM‰ùÇD$HéÍÙÿÿH€a1ÉE1ÒÇ„6¿H‰q6Ço6BéÍÊÿÿH‹D$(HcÍL‰ÏL‰\$hL‰”$€H‰„$¸H)ÈL‰T$`H´ĀL‰„$ˆL‰D$XL‰L$Pèæ°üÿL‹L$PL‹D$XH…ÀH‰D$ L‹T$`L‹\$h…üûÿÿHæ`1ÉÇí5¶H‰Ú5ÇØ5¬AéFÊÿÿè¦üÿH‹L$0éÚÿÿH®`E1ÛE1ÒDZ5ÁH‰ž5Çœ5¥BéÅÿÿH‹5¸%H‹=‘41Òè:šüÿH‰D$ H…À„/L‹|$ L‰ÿè?¯üÿI‹H‰D$0HƒèI‰„¤H<`1ÉE1ÛE1ÒH‰45Ç65³Ç(5|AHÇD$ é¢ÄÿÿH`1ÉE1ÒE1ÉH‹l$ E1ÀH‰ô4Çö4¶Çè4AHÇD$ é=ÉÿÿH‹=+èֱüÿH‰D$ Hƒ|$ …þìÿÿH§_1ÉE1ÛE1ÒH‰Ÿ4Ç¡4¶Ç“4ŽAéÄÿÿH‹=¿*HH5‘èü±üÿH‰D$ ë¤HW_1ÉE1ÛE1ÒH‰O4ÇQ4²ÇC4fAéÆÃÿÿH‰ïèüÿé}ïÿÿL‰×L‰L$8L‰D$0èüÿL‹D$0L‹L$8éóûÿÿHú^L‹\$(L‹T$1ÉL‹L$H‰é3Çë3¯ÇÝ3CAHÇD$ HÇD$(HÇD$HÇD$é'ÈÿÿHž^ǧ3H‰”3Ç’3Ç@éiéÿÿHÇD$ Iƒ(„EèMºüÿ…Àu3H‹T$ H†_H
N^H5§SHƒúHEÈH‹ ìH‹81ÀèüÿL‹T$L‹L$1ÉE1ÛHÇD$ H^H‰3Ç3¯Ç3KAHÇD$(HÇD$HÇD$ébÇÿÿL‰×L‰L$`L‰D$XL‰\$PèµüÿL‹L$`L‹D$XL‹\$PéÈøÿÿM‹QM…Ò„ìÿÿI‹iIƒHƒEIƒ)„¨I‰é½éúëÿÿHr]1ÉE1ÛE1ÒH‰j2Çl2²Ç^2lAéáÁÿÿHC]1ÉÇJ2¶H‰72Ç52šAHÇD$ 饯ÿÿH]1ÉE1ÒE1ÀH‹l$ H‰2Ç2¶Çø1ÌAHÇD$ éMÆÿÿL‰ÏèÊüÿéíÿÿL‰ßL‰L$8è¸üÿL‹L$8éýìÿÿH°\E1ÒǶ1¶H‰£1Ç¡1ÇAéÆÿÿH†\1ÉE1ÒÇŠ1¶H‰w1Çu1ÔAHÇD$ éåÅÿÿHQ\1ÉE1ÒE1ÀH‰I1ÇK1¶Ç=1×AHÇD$ é’ÅÿÿH‹=`'H!L‰\$PH5蘮üÿL‹\$PH‰D$ Hƒ|$ …£éÿÿHä[1ÉE1ÒÇè0¶H‰Õ0ÇÓ0“AéVÀÿÿH¸[1ÉÇ¿0¶H‰¬0Ǫ0˜AHÇD$ éÅÿÿHÇD$ H}[H‰}0Ç0¶Çq0¼AéßÄÿÿH‰ïH‰D$èGüÿL‹D$é^òÿÿL‰ÇL‰T$8L‰L$0è+üÿL‹T$8L‹L$0éOñÿÿH[L‹T$ 1ÉÇ 0¶H‰
0Ç0•AHÇD$ 酿ÿÿH‹=.&L‰\$Pèô¬üÿL‹\$PH‰D$ é×þÿÿL‰ÏL‰D$0è¸üÿÇD$HI‹GM‰ùHÇD$@L‹D$0éåÒÿÿH‹|$ èŒüÿéMúÿÿHÇD$HÇD$ éüÿÿHrZ1ÉE1ÛÇv/¿H‰c/Ça/xBé¿ÃÿÿH‰ïH‰D$0è7üÿL‹D$0é~ëÿÿH/Z1ÉE1ÛE1ÒH‰'/Ç)/³Ç/xA鞾ÿÿHZ1ÉÇ/¶H‰ô.Çò.µAé`ÃÿÿL‰ÏL‰T$XL‰D$PL‰\$ è¾üÿI‰éL‹\$ L‹D$PL‹T$X½é,èÿÿH¤Y1ÉE1ÒE1ÀH‰œ.Çž.¶Ç.ØAéîÂÿÿHuY1ÉE1ÛE1ÒH‰m.E1ÉÇl.¯Ç^.9AHÇD$ HÇD$(HÇD$HÇD$é˜ÂÿÿL‰Çèüÿé®úÿÿH‹=áH
H5薫üÿI‰ÀM…À…äéÿÿHìX1ÉE1ÛE1ÒH‰ä-Çæ-¹ÇØ-üAé[½ÿÿH‹5äH‹=Í,1Òèv’üÿH‰ÅH…À„­H‰Ç肧üÿHƒm„H‰X1ÉE1ÛE1ÒH‰-ǃ-¼Çu-$Béø¼ÿÿHZX1ÉE1ÛE1ÒH‰R-ÇT-¸ÇF-òAéɼÿÿH+X1ÉE1ÛE1ÒH‰#-Ç%-·Ç-çA隼ÿÿH‰ïèòüÿéfÿÿÿHïW1ÉE1ÛE1ÒH‰ç,Çé,¼ÇÛ, Bé^¼ÿÿHÀW1ÉE1ÛE1ÒH‰¸,E1ÉÇ·,¹Ç©,	BéÁÿÿL‰Çè„üÿé¨èÿÿHWL‰ÁE1ÛE1ÒH‰x,Çz,¹Çl,þAéï»ÿÿH‹= èc©üÿI‰ÀéHþÿÿff.„óúAWAVAUATUH‰õSHìèL‹fH‰|$ dH‹%(H‰„$Ø1ÀH‹-åHDŽ$°H‰„$¸H‹åH‰„$ÀH‹åH‰„$ÈH…Ò…²Iƒü„ úIƒü„ 	Iƒü…',L‹-ÇäL‹=ÈäH‹E H‹mH‰„$ˆHDŽ$HDŽ$˜HDŽ$ HDŽ$¨HƒEHƒH‹x+IƒEH‹5¬H9p…š,H‹“H…Û„â-HƒH‰œ$˜H‹CH‹5'H‰ßH‹€H…À„Ð-ÿÐI‰ÄH‹¼$˜M…ä„
-Hƒ/„8¿HDŽ$˜èRüÿH‰„$˜H‰ÃH…À„–-HƒEH‰hèpüÿH‰„$ H‰ÃH…À„.H‹ãH‹5†%H‰ÇèÖüÿ…Àˆ	I‹D$L‹„$ L‹´$˜H‹˜€H…Û„Ù/L‰D$èßüÿL‹D$‹p V‰P H‹"ã;r0L‰ÂL‰öL‰çÿÓH‰Ãè¯üÿ‹p Vÿ‰P H‹÷â‹=ȏzÁø@9ÂŒwH…Û„1H‰œ$¨Iƒ,$„8*H‹¼$˜Hƒ/„*H‹¼$ HDŽ$˜Hƒ/„è)H‹„$¨HDŽ$ HƒmH‰D$X„´)H‹|$XH‹5@ HDŽ$¨H‹GH‹€H…À„p0ÿÐH‰ÃH‰œ$¨H…Û„º/H‹5“H9Þ„H‹CH;oâ…±3Hƒ{„þ
H‹âHƒH‰„$ Hƒ+„1*H‹¼$ H;=
âHDŽ$¨”ÀH;=Ìá”ÂÂ…‰
H;=Úá„|
è'üÿ‰ŅÀˆu2H‹¼$ Hƒ/„ã)HDŽ$ …í„gè‚
üÿH‰D$H‹€ë@H‰ÐL‹0M…öt
L;5vá…ð	H‹PH…ÒußH‹hL‹`M…ö…Þ	H…ítHƒEM…ätIƒ$H‹C(H‹5lH9p…
5H‹=SH…ÿ„Â9HƒH‰¼$¨H‹GH‹5!H‹€H…À„Û9ÿÐH‰„$˜H…À„ 9H‹¼$¨Hƒ/„/H‹|$XH‹5R HDŽ$¨H‹GH‹€H…À„â9ÿÐH‰ÇH…ÿ„ì9H‹
àH‰D$(H9G…f+H‹_H…Û„Y+L‹OHƒIƒHƒ/„£2L‰ÏH‰ÞL‰L$è³2ýÿL‹L$H‰„$¨Hƒ+„Ì+H…À„5<Iƒ)„‰1H‹¼$˜H‹D$(H9G„¶<H‹´$¨èe2ýÿH‰„$ H‹¼$¨Hƒ/„;1H‹œ$ H‹¼$˜HDŽ$¨H…Û„C<Hƒ/„2HDŽ$˜HDŽ$ M…öt
Iƒ.„e+H…ítHƒm„E+M…ätIƒ,$„%+H‹5¦ºH‰ßè	üÿH‰„$¨I‰ÆH…À„åLH;Fß”ÀL;5ß”ÂÂ…±*L;5"ß„¤*L‰÷èlüÿ‰ŅÀˆ ML‹´$¨Iƒ.„1HDŽ$¨…í„[H‹å%H‹þH9P…–QL‹5åM…ö„-SIƒL‰´$˜I‹FH‹5ÍL‰÷H‹€H…À„©SÿÐI‰ÆL‰´$ H‹¼$˜M…ö„ùRHƒ/„’7HDŽ$˜H‹D$(I9F„…TH‹´$ˆL‰÷è§0ýÿI‰ÆH‹¼$˜L‰´$¨H…ÿt
Hƒ/„ì;HDŽ$˜M…ö„TH‹¼$ Hƒ/„8H‹5/HDŽ$ L9ö„²0I‹FH;ÿÝ…ü[Iƒ~„–0H‹¿ÝHƒH‰„$ Iƒ.„:H‹¼$ H;=šÝHDŽ$¨”ÀH;=\Ý”ÂÂ…0H;=jÝ„0è·
üÿ‰ŅÀˆ³WH‹¼$ Hƒ/„;HDŽ$ …턦	H‹5ÐH‹=	#1Ò貈üÿH‰„$ I‰ÆH…À„?H‰Ç趝üÿH‹¼$ Hƒ/„eH¶NE1ÀE1ÉE1äH‰­#E1ÿE1öH‹¼$˜Ç¡#ÿH‹l$XHDŽ$ Ç‚#RHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é[Iƒü‡#I‰ÕHHVJc¢HÐ>ÿàH‹FL‰ïH‰„$°èÆüÿI‰ÆIƒü™M…ä„
'Iƒü„('鿐Iƒü…Þ#L‹n0L‹}(é÷ÿÿf„è‹üÿé¾÷ÿÿfDL‹-±ÛL‹=²ÛL‰èéæöÿÿH‹F0H‰„$ÈH‹E(H‰„$ÀH‹E L‰ïH‰„$¸H‹EH‰„$°è"üÿI‰ÆIƒü…RÿÿÿM…öŽ—&H‹5uL‰ïH‹VèIüÿH…ÀtH‰„$ÀIƒîM…öŽj&H‹5ðL‰ïH‹VèüÿH…ÀtH‰„$ÈIƒîM…öŽ=&H”$°L‰áL‰ïL{QH5–·èWüÿ…À‰&H›L¾#ÇŸ!¨H‰Œ!ÇŠ!#é€"Dƒè29‰÷ÿÿèüÿÆ@$é{÷ÿÿ€HJLE1ÀE1ÉE1ÿH‰A!E1ö1ÛH‹¼$˜Ç6!÷Ç(!HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$fDH…ÿt
Hƒ/„!M…ätIƒ,$„1H‹¼$ H…ÿt
Hƒ/„BH‹¼$¨H…ÿt
Hƒ/„£M…Ét
Iƒ)„´M…Àt
Iƒ(„uH‹
N ‹T E1äH=ö@‹5@ 胪üÿH…Ût
Hƒ+„4M…öt
Iƒ.„5H‹L$H…ÉtH‹H‰D$XHƒèH‰„&H‹L$H…ÉtH‹H‰D$HƒèH‰„H‹t$H…ötH‹H‰D$HƒèH‰„M…ÿt
Iƒ/„	H‹¼$H…ÿt
Hƒ/„H‹T$8H…ÒtH‹H‰D$HƒèH‰„óH‹L$PH…ÉtH‹H‰D$HƒèH‰„äH‹\$(H…ÛtH‹H‰D$HƒèH‰„ÕH‹t$0H…ötH‹H‰D$HƒèH‰„ÆH‹T$@H…ÒtH‹H‰D$HƒèH‰„·H‹L$HH…ÉtH‹H‰D$HƒèH‰„¨H‹\$ H…ÛtH‹H‰D$HƒèH‰„™Hƒm„¡H‹¼$ˆH…ÿt
Hƒ/„—M…ítIƒm„—H‹„$ØdH3%(…~HÄèL‰à[]A\A]A^A_ÃH‹hL‹`Iƒéöÿÿ€Iƒü„.üÿÿéVüÿÿ¶èé“õÿÿ„fïÀf.CŠõÿÿ…õÿÿH‹1×Hƒéýôÿÿ„H‰ßèØüÿé¿ýÿÿL‰÷èÈüÿé¾ýÿÿH‰Ïè¸üÿéÍýÿÿH‰Ïè¨üÿéÜýÿÿH‰÷è˜üÿéëýÿÿL‰ÿèˆüÿéêýÿÿè{üÿéôýÿÿfDH‰×èhüÿéþÿÿH‰ÏèXüÿéþÿÿH‰ßèHüÿéþÿÿH‰÷è8üÿé-þÿÿH‰×è(üÿé<þÿÿH‰ÏèüÿéKþÿÿH‰ßèüÿHƒm…_þÿÿH‰ïèõÿûÿéRþÿÿèëÿûÿé_þÿÿfDL‰ïèØÿûÿé\þÿÿL‰ÇèÈÿûÿé~üÿÿL‰D$`L‰L$Xè±ÿûÿL‹D$`L‹L$Xé?üÿÿfL‰ÏL‰D$Xè“ÿûÿL‹D$Xé5üÿÿf„L‰D$`L‰L$XèqÿûÿL‹D$`L‹L$XéÁûÿÿfL‰çL‰D$`L‰L$XèNÿûÿL‹D$`L‹L$Xé®ûÿÿ€L‰D$`L‰L$Xè)ÿûÿL‹D$`L‹L$Xé ûÿÿf.„L‹-AÕL‹}(éxðÿÿH‹|$XH‹5ÜH‹GH‹€H…À„à(ÿÐH‰ÃH‰œ$ H…Û„ú'H‹53
H9Þ„:!H‹CH;Õ…/Hƒ{uƒ{„!„H‹ÉÔHƒH‰„$¨Hƒ+„#H‹¼$¨H;=¤ÔHDŽ$ ”ÀH;=fÔ”ÂÂu
H;=xÔ…Ú¶èHƒ/„%HDŽ$¨…í…V/H‹|$XH‹5ÝH‹GH‹€H…À„¤0ÿÐH‰ÃH‰œ$¨H…Û„$1H‹CH; Ô„‚&H;›Ó„åH‹@hH…À„MBH‹@H…À„@B1öH‰ßÿÐH‰ÅH‰¬$ H‹œ$¨H…í„Ñ1Hƒ+„>&H‹œ$ H;çHDŽ$¨HDŽ$ „ñ!L;-‚Ó„ÔL‰ïè¬üÿH‰D$Hƒøÿ„3CH‹fH‹5_H9p…$EL‹5FM…ö„ÑFIƒL‰´$ I‹FH‹5n
L‰÷H‹€H…À„šFÿÐI‰ÆL‰´$¨M…ö„¥FH‹¼$ Hƒ/„ã+H‹ìH‹ÕHDŽ$ H9P…ëGL‹5°M…ö„-JIƒI‹FH‹5L‰÷H‹€H…À„þIÿÐI‰ÁM…É„VIIƒ.„p.H‹~H‹WH9P…jKL‹5>M…ö„©NIƒI‹FL‰L$L‰÷H‹5H‹€H…À„nNÿÐL‹L$H‰D$Hƒ|$„ÅMIƒ.„ú/H‹…ÑH‰D$(I9A„#RH‹t$L‰ÏL‰L$èL$ýÿL‹L$H‰„$ L‰ÍH‹T$H‹H‰D$HƒèH‰„›/L‹´$ M…ö„2QHƒm„Ñ@I‹FH‹5»L‰÷H‹€H…À„aSÿÐI‰ÆM…ö„¹RH‹¼$ Hƒ/„Â@H‹¼$¨H‹D$(HDŽ$ H9G„yVL‰öè#ýÿH‹¼$ H‰„$˜H…ÿt
Hƒ/„µCHDŽ$ Iƒ.„U@L‹´$˜M…ö„VH‹¼$¨Hƒ/„e@H‹nI‹EHDŽ$¨HDŽ$˜H9Ât9H‹ˆXH…É„¥H‹qH…öލ1Àë@HƒÀH9Æ„“H;TÁuìH‹}H‹
FH9H…?]H‹-H‰D$H…À„°bHƒH‰„$¨H‹5ÔH‹|$èº|üÿI‰ÁH…À„$_H‹¼$¨Hƒ/„GQH‹5UL‰ïL‰L$HDŽ$¨è||üÿL‹L$H…ÀH‰D$H‰„$¨„EgH‹ÚH‹
“ÿH9H…<iH‹zÿH‰D$H…À„µjHƒH‰„$ H‹5qH‹|$L‰L$è|üÿL‹L$H…ÀI‰À„îiH‹¼$ Hƒ/„gVI‹A¿1íHDŽ$ H;D$(„¹oH;NÏ„]H;©Ï„NRL‰D$L‰L$è„ûûÿL‹L$L‹D$H…ÀI‰Ä„‚uH‹„$ H…ÀtI‰D$HDŽ$ HcÅL‰ÏL‰æL‰L$H‹”$¨HƒÀI‰TčE1ÒH˜M‰DÄHDŽ$¨èDzüÿL‹L$H…ÀH‰D$H‰„$˜„ŸwIƒ,$„J[Iƒ)„VH‹¼$˜H;=uΔÀH;=CΔÂÂ…LHH;=Q΄?Hèžûûÿ‰ŅÀˆõsH‹¼$˜Hƒ/„TVHDŽ$˜…í„&H‹H‹
ÀýH9H…æ…H‹§ýH‰D$H…À„#…HƒH‹5&H‹|$è\züÿI‰ÄH…À„¶H‹T$H‹H‰D$HƒèH‰„pH‹¯H‹HýH9P…€H‹/ýH‰D$H…À„™HƒH‹5^H‹|$èôyüÿH‰D$H‰„$¨H…À„5›H‹L$H‹H‰D$HƒèH‰„sH‹5}L‰ïèµyüÿH‰D$H…À„¨™H‹¬$¨H‹D$(HDŽ$ H9E„™H‹t$H‰ïèWýÿI‰ÁH‹¼$ H…ÿt
Hƒ/„fvH‹T$HDŽ$ H‹H‰D$HƒèH‰„sM…É„›H‹¼$¨Hƒ/„”wH‹5µ
L‰ÏL‰L$HDŽ$¨èüxüÿL‹L$H…ÀH‰D$H‰„$¨„­™Iƒ)„mwH‹D$(I9D$„6H‹´$¨L‰çL‰åè”ýÿH‰„$˜H‹¼$¨Hƒ/„&wH‹„$˜HDŽ$¨H‰D$H‰ÇH…À„´Hƒm„JxIƒºL‰öèùõûÿI‰ÁH…À„Q–H;ÆË@”ÅH;“Ë”À@è…êlL;
 Ë„ÝlL‰ÏL‰L$èåøûÿL‹L$…	ň—Iƒ)„Ø~…í„éwH‹„$˜HƒH‰„$¨Iƒ.„É~H‹¼$˜Hƒ/„­~H‹¼$¨Hƒ?H‰¼$˜„‡HDŽ$¨H‹¬$˜Iƒ.„è†HDŽ$˜I‰îDH‹¿H‹¨(ÿhE1É1É1ÒH‰ÆA¸L‰ïÿÕH‰D$H‰„$˜H…À„êRH‹D$Hƒ8H‰„$¨„JAHDŽ$˜Iƒm„&AH‹D$H;rÊHDŽ$¨…þTH‹|$H‹5H‹oèÓvüÿH‰D$H‰„$¨H…À„ãUH‹5fH9t$„=DH‹T$H‹BH;CÊ…
`HƒzuH‹D$ƒx„DH‹øÉHƒH‰„$˜H‹t$H‹H‰D$0HƒèH‰„QFH‹¼$˜H;=ÃÉHDŽ$¨”ÀH;=…É”ÂÂ…49H;=“É„'9èàöûÿA‰ąÀˆgYH‹¼$˜Hƒ/„ŽIHDŽ$˜E…ä…Ã]H‹5§H‹|$èÍuüÿH‰D$H‰„$˜H…À„]H‹|$ºH‰ÞèEóûÿH‰D$H‰„$¨H…À„ƒeH‹¼$˜Hƒ/„¸NH‹t$H;5ñÈHDŽ$˜”ÀH;5³È”ÂÂ…¬>H;5ÁÈ„Ÿ>H‰÷èöûÿA‰ąÀˆgH‹„$¨H‰D$H‹L$H‹H‰D$0HƒèH‰„©OHDŽ$¨E…ä…LkH‹t$H‰ïÿÆH‹_H‹5è÷òD$0H9p…<mH‹É÷H‰D$H…À„ÙlHƒH‰„$˜H‹5ÈH‹|$è–tüÿI‰ÄH…À„mH‹¼$˜Hƒ/„$PòD$0HDŽ$˜èqóûÿH‰D$H‰„$˜H…À„ãoH‹D$(I9D$„8vH‹t$L‰çL‰åèýÿH‰„$¨H‹¼$˜Hƒ/„QH‹„$¨HDŽ$˜H‰D$H…À„evHƒm„
UH‹t$H;5XÇ@”ÅH;5%Ç”À@è…ELH;52Ç„8LH‰÷è|ôûÿ‰ŅÀˆ{qH‹„$¨H‰D$H‹T$H‹H‰D$HƒèH‰„GYHDŽ$¨…í…ÃvH‹à
H‹5YöH9p…ð€H‹@öH‰D$H…À„,‚HƒH‹5‡H‹|$è%süÿH‰D$H‰„$˜H…À„qH‹t$H‹H‰D$8HƒèH‰„ aH‹5–H‹|$èärüÿI‰ÄH…À„ÝH‹¼$˜Hƒ/„gaH‹5wþ1ÒH‹|$HDŽ$˜èGðûÿH‰D$H‰„$˜H…À„z~H‹D$(I9D$…²UI‹l$H…턤UM‹l$HƒEIƒEIƒ,$„£nH‹”$˜H‰îL‰ïèvýÿH‰„$¨Hƒm„ãtH‹¼$˜Hƒ/„YfH‹„$¨HDŽ$˜H‰D$H‰ÅH…À„õIƒm„HnH;-jÅA”ÄH;-7Å”ÀDà…@TH;-DÅ„3TH‰ïèŽòûÿA‰ąÀˆ²†H‹¬$¨Hƒm„nHDŽ$¨E…ä…ŽòD$0ò\}fT•è€ðûÿH‰D$H‰„$¨H…À„:H‹|$ºL‰öèèîûÿI‰ÄH…À„€ŒH‹¼$¨Hƒ/„ÐsL;%£ÄHDŽ$¨@”ÅL;%dÄ”À@è…6`L;%qÄ„)`L‰çè»ñûÿ‰ŅÀˆIŽIƒ,$„OmL‹l$…í…^Šf„H‹„$ˆHƒH;%ÄH‰D$„‚H‹H‹5„óH9p…T<H‹kóH‰D$H…À„è>HƒH‹|$H‹5H‹GH‹€H…À„d?ÿÐH‰D$H‹D$H‰„$¨H…À„½>H‹t$H‹H‰D$HƒèH‰„J!¿èðïûÿI‰ÄH…À„wBH‹D$HƒI‰D$èñûÿH‰D$H‰„$˜H…À„üCH‹T
H‹5­òH9p…BGH‹”òH‰D$H…À„IHƒH‹|$H‹5ÖH‹GH‹€H…À„ÜHÿÐI‰ÀM…À„*IH‹T$H‹H‰D$HƒèH‰„}2H‹5H‹¼$˜L‰ÂL‰D$èöðûÿL‹D$…ÀˆŸDIƒ(„3H‹”$˜H‹¼$¨L‰æè'nüÿH‰D$H…À„JH‹¼$¨Hƒ/„/5HDŽ$¨Iƒ,$„5H‹¼$˜Hƒ/„ï4H‹¼$ˆH‹D$HDŽ$˜H‰„$ˆHƒ/„¼L;=”ÀL;=êÁ”ÂÂ…·L;=øÁ„ªL‰ÿèBïûÿ…Àˆr?…À„Š L;-ÓÁ„M2I‹EH‹5rL‰ïH‹€H…À„sJÿÐH‰D$H‹D$H‰„$˜H…À„eJH‹ÁH‹t$H‰D$(H9F…11H‹nH…í„$1H‹~HƒEHƒH‹H‰¼$˜H‰D$HƒèH‰„²=H‰îè ýÿHƒmH‰D$„NBHƒ|$H‹¼$˜„XMHƒ/„Ö:H‹|$1ɺHÇÆÿÿÿÿHDŽ$˜è^|üÿI‰ÀH…À„6OH‹|$H‰ÆH‰D$0è@ìûÿL‹D$0H…ÀH‰D$H‰„$˜„sRIƒ(„2AH‹L$H‹H‰D$0HƒèH‰„AH‹5
üH‹|$ HDŽ$˜èôlüÿI‰ÇH…À„GWH‹D$(I9G…>6I‹oH…í„16M‹GHƒEIƒIƒ/„GH‹T$L‰ÇH‰îL‰D$ èÐýÿL‹D$ H‰„$˜HƒmH‰D$„=GHƒ|$„CUIƒ(„…EH‹5®úH‹|$HDŽ$˜èPlüÿH‰„$˜I‰ÇH…À„[¿èìûÿI‰ÀH…À„“]H‹D$L‰D$ HƒI‰@è/íûÿL‹D$ H…ÀI‰Ä„@`H‹oúH‹5ØùH‰ÇL‰D$ è“íûÿL‹D$ …ÀˆsIH‹¼$˜L‰ÆL‰âL‰D$ èÎjüÿL‹D$ H…ÀH‰„$¨I‰Ç„kH‹¼$˜Hƒ/„IHDŽ$˜Iƒ(„ïHIƒ,$„×HH‹ëL‹¼$¨HDŽ$¨H‹5 îH9p…ƒjH‹îH‰D$8H…À„ÔiHƒH‰„$¨H‹5~H‹|$8èküÿI‰ÄH…À„hhH‹¼$¨Hƒ/„¸P¿HDŽ$¨èÀêûÿH‰D$8H‰„$¨H…À„VwH‹D$8IƒL‰xèØëûÿI‰ÀH…À„ÂvH‹ý½H‹5öÿH‰ÇH‰D$ èAìûÿL‹D$ …Àˆ4bH‹´$¨L‰ÂL‰çL‰D$ è|iüÿL‹D$ H…ÀH‰D$8H‰„$˜„ÕuIƒ,$„ßaH‹¼$¨Hƒ/„¹aHDŽ$¨Iƒ(„–aH‹5gH‹¼$˜è
jüÿI‰ÀH…À„ɄH‹¼$˜Hƒ/„Pa¿L‰D$ HDŽ$˜è±éûÿL‹D$ H…ÀH‰D$8H‰„$˜„ˆH‹W½H‹L$8L‰D$ HƒH‰Aè¸êûÿL‹D$ H…ÀH‰D$8H‰„$¨„||H‹ÖõH‹|$8L‰D$ H‹5ÿèëûÿL‹D$ …Àˆ‹pH‹”$¨H‹´$˜L‰ÇL‰D$ èFhüÿL‹D$ H…ÀH‰D$8„èIƒ(„DpH‹¼$˜Hƒ/„(pH‹¼$¨HDŽ$˜Hƒ/„pHDŽ$¨Iƒ/„ÝoHÇD$HL‹|$8HÇD$@HÇD$0HÇD$(HÇD$PHÇD$8H‹D$H;¼„uNH‹5§ùH‹|$XèuhüÿI‰ÀH…À„†eH‹5ôH9ð„ªBH‹@H;ö»…xIƒx„ŽBH‹Ž»HƒH‰„$¨Iƒ(„9IH‹¼$¨H;=‘»@”ÅH;=^»”À@è…,AH;=k»„Aè¸èûÿ‰ŅÀˆ,lH‹¼$¨Hƒ/„óJHDŽ$¨…í…ÅJH‹D$H;$»„j\H‹5ÇøL‰ÿè—güÿH‰D$ H‰„$¨H…À„ˆH‹52óH9t$ „IUH‹L$ H‹AH;»…Hƒy„(UH‹ŸºHƒI‰ÀH‹t$ H‹H‰D$`HƒèH‰„ógHDŽ$¨1íL;‘º@”ÅIƒ(„¥g…í„¿[H‹tH‹5méH9p…H€H‹TéH‰D$ H…À„ÙHƒH‹5{ûH‹|$ è¹füÿH‰„$¨I‰ÄH…À„m‰H‹T$ H‹H‰D$`HƒèH‰„Zmè¦çûÿI‰ÀH…À„ljH‹53ûH‹|$XH‰D$ èdfüÿL‹D$ H…ÀI‰Ä„`‰H‹5ûL‰ÇH‰ÂL‰D$ èìçûÿL‹D$ …Àˆ·ˆIƒ,$„ÜlH‹5åðH‹¼$¨L‰ÂL‰D$`èeüÿL‹D$`H…ÀH‰D$ „H‹¼$¨Hƒ/„‰‰HDŽ$¨Iƒ(„x{H‹|$XL‰þè@ýÿI‰ÄH…À„TŸH‹5H‹|$ H‰Âèáûÿ…ÀˆþžIƒ,$„+{H‹D$ H‹l$XHƒI‰Äé”ßÿÿ€H‰ïè¨âûÿé?Öÿÿè›âûÿéÖÿÿfDè‹âûÿéàÕÿÿfDL‰çèxâûÿé»ÕÿÿL‹eM…äH¶*H
¦*HOÈAŸÀL
W*H+E¶ÀLOÈOD@HƒìH‹0¸H÷.ATH5PH‹81ÀèçûÿH*¾9Çÿ¨Çÿ9H‰ÿþXZH
ï)º¨H=¢E1äè2‰üÿéVàÿÿDH
*A¸L
í*étÿÿÿ€H‰ßè áûÿéÂÕÿÿè“áûÿéÖÿÿfDH‹=ÑôHòçH5óçè|üÿH‰ÃH‰œ$˜H…Û…TÓÿÿH\)Çeþ÷H‰RþÇPþuHÇD$ E1ÀE1ÉE1ÿHÇD$HE1öHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é<ÝÿÿDHÊ(E1ÀE1ÉE1ÿH‰ÁýE1ö1ÛǾý÷ǰýwHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é‰Üÿÿf„H‹=yóèDzüÿH‰Ãé±þÿÿ@ècåûÿI‰Äé(ÒÿÿH
(E1ÀE1ÉE1ÿH‰ýE1öÇý÷ÇòüzHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éÚÛÿÿHz'E1ÀE1ÉE1ÿH‰qüE1öH‹¼$˜Çhü÷ÇZüHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é3ÛÿÿH‰|$è6„üÿH‹|$H‰„$¨I‰ùéÅÔÿÿL‰ïè©ÝûÿI‰ÆH‹5OøL‰ïIƒîH‹VèßáûÿH‰„$°H…À„üÿÿM…ömH‹¬$°H‹„$¸L‹¼$ÀL‹¬$ÈéàÏÿÿèëáûÿ‰ŅÀˆH‹¼$¨é
àÿÿ@¶èénÕÿÿ„H‰ßL‰L$è#ÞûÿH‹„$¨L‹L$éÔÿÿL‰çèÞûÿéÎÔÿÿH‰ïèøÝûÿé®ÔÿÿL‰÷èèÝûÿéŽÔÿÿH‹CHƒH‰„$ éCàÿÿH‹€H9„tãÿÿH…ÀuëH;´…îèÿÿé]ãÿÿòXf.CŠýÞÿÿ…÷Þÿÿ€H‹‘³HƒéëÞÿÿE1öéhïÿÿ„L‰ÂL‰öL‰çèâûÿH‰„$¨H…À…~ÐÿÿHB%E1ÀE1ÉE1ÿH‰9úE1ö1ÛH‹¼$˜Ç.ú÷Ç ú‚HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éùØÿÿf„H=ièßûÿL‹D$…À„uÏÿÿ€HDŽ$¨é/ÿÿÿ€Hj$E1ÀE1ÉE1äH‰aùE1ÿE1öH‹¼$˜ÇUùøH‹l$XÇBù‘HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éØÿÿH‹|$XèáûÿH‰ÃéƒÏÿÿfDè«ÞûÿH…À…"ÿÿÿH‹K±H5„H‹8èLÜûÿéÿÿÿ€è{ÛûÿéàÐÿÿfDH‰ßèhÛûÿéðÜÿÿH‹™øH‹5¢áH9p…
)L‹5‰áM…ö„F+IƒL‰´$¨I‹FH‹5íL‰÷H‹€H…À„—+ÿÐI‰ÆL‰´$˜M…ö„Z+H‹¼$¨Hƒ/„ÄHDŽ$¨H‹‹°I9F„'.H‹´$ˆL‰÷èYýÿI‰ÆH‹¼$¨L‰´$ H…ÿt
Hƒ/„E HDŽ$¨H‹¼$˜M…ö„F-Hƒ/„âH‹5áèHDŽ$˜L9ö„<I‹FH;±°…25Iƒ~„ H‹q°HƒH‰„$˜Iƒ.„›H‹¼$˜H;=L°HDŽ$ ”ÀH;=°”ÂÂ…H;=°„þèiÝûÿ‰ŅÀˆ2H‹¼$˜Hƒ/„aHDŽ$˜…í„XÜÿÿH‹5rçH‹=»õ1Òèd[üÿH‰„$˜I‰ÆH…À„KH‰ÇèhpüÿH‹¼$˜Hƒ/„¼6Hh!H‹l$XHDŽ$˜H‰WöÇYöÇKöÓéö÷ÿÿfDè#ÙûÿéñÚÿÿfDH!E1ÀE1ÉE1äH‰öE1ÿE1ö1ÛÇöøH‹l$XÇøõ–H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éÉÔÿÿf„èkØûÿé»ÎÿÿfDL‰ÏèXØûÿéjÎÿÿH;®„3×ÿÿH‰ߺè–ØûÿH‰„$ H‰ÃH…À…’ŽH$ E1ÀE1ÉE1äH‰õE1ÿE1öH‹¼$˜ÇõøH‹l$XÇüô“HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éÕÓÿÿDL‰L$èv×ûÿL‹L$éIÍÿÿ@èc×ûÿH‹œ$ éÚÍÿÿfDH‹CH‹HƒéhùÿÿH‰ßè8×ûÿéµÙÿÿL‰÷è(×ûÿécÎÿÿ¶èéÐÿÿ„¶Àé^ëÿÿfïÀfA.FŠrÏÿÿ…lÏÿÿfH‹­HƒéeÏÿÿ¶èéýÿÿ„HÒE1ÀE1ÉE1äH‰ÉóE1ÿE1öH‹¼$˜Ç½óH‹l$XǪónHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éƒÒÿÿfïÀfA.FŠëûÿÿ…åûÿÿDH‹)¬HƒéÛûÿÿ„H‹|$XèFÛûÿH‰Ãé×ÿÿfDH‹=ñèHBÜH5CÜènpüÿH‰ÇH‰¼$¨H…ÿ…äÊÿÿH¼H‹¼$˜Ç½òûH‰ªòǨò±H…ÿtHƒ/uè€ÕûÿHDŽ$˜H‹¼$ H…ÿt
Hƒ/„
H‹¼$¨HDŽ$ H…ÿt
Hƒ/„úH‹D$L‹=>ñHDŽ$¨H‹xXI9ÿ„‘H…ÿ„I‹GH‹€¨©…pH‹Wö‚«€„mö‡«@„`©€„UAö‡«@„GH‹—XH…Ò„—H‹JH…É޵1ÀëfDHƒÀH9Á„žL;|ÂuìH‹
ñ‹“ñH=8‹5‚ñèÅ{üÿH‹|$HŒ$¨H”$˜H´$ èS[üÿ…Àˆ{H‹5âH‹=Mð1ÒèöUüÿI‰ÇH…À„¸1H‰ÇèküÿIƒ/„
H‰ñÇñýÇñH‹D$H‹€H‹8L‹xL‰0H‹XH‰hL‰`H…ÿt
Hƒ/„ŒM…ÿt
Iƒ/„ÅH…Û„ÄHƒ+„ÂHÇD$ H‹l$XE1ÀE1ÉHÇD$HE1äE1ÿ1ÛHÇD$@E1öH‹¼$˜HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$émÏÿÿDH‹¿I9ÿ„„þÿÿH…ÿuë1ÀL;=Z©”À„ÿÿÿéfþÿÿf.„HÇD$ E1ÀE1ÉH‹¼$˜HÇD$HE1äE1ÿH‹l$XHÇD$@E1öHÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éµÎÿÿDH‹ÉàH‹
ЍHƒH‰„$ˆH‹w¨H‹H‰D$HƒèH‰…GæÿÿH‰Ïè"Òûÿé:æÿÿDH‹5¡âL‰ïH‹VèEÕûÿH…À„àÌÿÿH‰„$¸IƒîéÆÌÿÿL‰ÿèàÑûÿé.þÿÿH‰ßE1äE1ÿE1öèÇÑûÿ1ÛH‹l$XE1ÀHÇD$ E1ÉH‹¼$˜HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é£ÍÿÿèKÑûÿééûÿÿfDè;ÑûÿéüûÿÿfDè+ÑûÿéjýÿÿfDH‹=)äè4küÿH‰ÇéAûÿÿ@H
ÇîûH‰îÇþí³émûÿÿè+ÖûÿéÆÿÿfDèËÐûÿéÔÿÿfDH‰ÉíÇËíüǽí÷é³üÿÿè›ÐûÿL‹´$ é\ÈÿÿfDH‹|$XèÎÕûÿH‰ÇéÆÿÿfDHrH‹¼$˜ÇsíûH‰`íÇ^í¶é±úÿÿHBE1ÀE1ÉE1äH‰9íE1ÿE1ö1ÛÇ3íH‹l$XÇ ísH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éñËÿÿè›ÏûÿL‹´$¨éÐÇÿÿH;O¥„áñÿÿH‰ߺèÔÏûÿH‰„$¨H‰ÃH…À…݅HbE1ÀE1ÉE1äH‰YìE1ÿE1öH‹¼$˜ÇMìH‹l$XÇ:ìpHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éËÿÿH‹5”ÜH‹=Õê1Òè~PüÿH‰„$¨H‰ÃH…À„".H‰Çè‚eüÿH‹¼$¨Hƒ/„¢H‚E1ÀE1ÉE1äH‰yëE1ÿE1ö1ÛÇsëH‹l$XHDŽ$¨H‹¼$˜ÇLë‚HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é%ÊÿÿL‰÷L‰L$èÈÍûÿL‹L$éyÑÿÿH‹¼$˜H¸ÇÁêûH‰®êǬêÄH…ÿtHƒ/„›xHDŽ$˜Iƒ)…û÷ÿÿL‰ÏègÍûÿéî÷ÿÿL‰÷èZÍûÿéìÅÿÿH‹|$Xè›ÒûÿH‰ÃéOÏÿÿHEÇNêûH‰;êÇ9êÔéŒ÷ÿÿH‹_H…Û„=ÃÿÿL‹WHƒIƒL‰”$˜Hƒ/„J!H‹”$¨H‰ÞL‰×èÎëüÿH‰„$ Hƒ+…ÃÿÿH‰ßèÄÌûÿéÃÿÿHÁE1ÀE1ÉE1äH‰¸éE1ÿE1öH‹¼$˜Ç¬éH‹l$XÇ™é•HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$érÈÿÿèÌûÿL‹´$˜é*ñÿÿH‰÷èÌûÿé©ÞÿÿèþËûÿéîÄÿÿèôËûÿL‹´$¨éÄÿÿH‰×èßËûÿéXÐÿÿL‰÷L‰L$èÍËûÿL‹L$éïÏÿÿHDŽ$ H¹E1ÀE1ÉE1äH‰°èE1ÿE1ö1ÛǪèH‹l$XÇ—è—H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éhÇÿÿH‹¼$ˆºH‰ÞècËûÿI‰ÀH…À„¸1H;0¡”ÀL;þ ”ÂÂ…~L;¡„qL‰ÇL‰D$èQÎûÿL‹D$…	ňC7Iƒ(„Y#…í…÷=H‹5ÙH‹¼$ˆ1ÒèêÊûÿI‰ÀH…À„¤<H;· ”ÀL;… ”ÂÂ…:L;“ „-L‰ÇL‰D$èØÍûÿL‹D$…	ňBIƒ(„œ'…í…ý?L;-X „L8H‹SçH‹ŒÏH9P…CMH‹sÏH‰D$H…À„ÝLHƒH‰„$˜H‹5êáH‹|$èLüÿH‰D$H‰„$¨H…À„ïMH‹¼$˜Hƒ/„Ë.H‹5ØL‰ïºHDŽ$˜èèÉûÿH‰D$H‰„$˜H…À„8LH‹#ŸH‹¼$¨H‰D$(H9G„ÕUH‹t$èêñüÿI‰ÀH‹¼$˜Hƒ/„C/HDŽ$˜M…À„wUH‹¼$¨Hƒ/„25H‹´$ˆ1ÒL‰ÇL‰D$HDŽ$¨èKÉûÿL‹D$H…ÀH‰D$H‰„$¨„TIƒ(„Ð4H‹L$H;
úž”ÀH;
Ȟ”ÂÂ…õ&H;
֞„è&H‰Ïè Ìûÿ‰ŅÀˆLTH‹„$¨H‰D$H‹L$H‹H‰D$HƒèH‰„©;HDŽ$¨…í…2\H‹¼ÖH‹5UàL‰ïHƒH‰„$èéJüÿH‰D$H…À„UH‹L$H‹D$(HDŽ$˜H9A…OOH‹qH‰´$˜H…ö„:OL‹AHƒIƒH‹H‰D$HƒèH‰„^EL‰ÇL‰D$èXðüÿL‹D$H‹¼$˜H‰„$¨H…ÿt
Hƒ/„MH‹„$¨HDŽ$˜H‰D$H‰ÅH…À„ý\Iƒ(„éDIƒmH‰l$h„ÌDH‹ŽäH‹·ÌHDŽ$¨H9P…’pH‹’ÌH‰D$H…À„ËoHƒH‰„$¨H‹5¹ÕH‹|$è¿IüÿI‰ÀH…À„oH‹¼$¨Hƒ/„DD¿L‰D$HDŽ$¨èfÉûÿL‹D$H…ÀH‰D$H‰„$¨„AnH‹D$H‹t$L‰D$HƒH‰FèoÊûÿL‹D$H…ÀH‰D$H‰„$˜„mH‹՜H‹|$L‰D$H‹5ÜÝèÇÊûÿL‹D$…ÀˆßMH‹”$˜H‹´$¨L‰ÇL‰D$èýGüÿL‹D$H…ÀH‰D$8„«lIƒ(„ÅPH‹¼$¨Hƒ/„©PH‹¼$˜HDŽ$¨Hƒ/„PH‹5a×H‹|$8HDŽ$˜èƒHüÿH‰D$H‰„$˜H…À„c\H‹T$H‹D$(HDŽ$¨H9B…PH‹rH‰´$¨H…ö„PH‹BHƒHƒH‰„$˜H‹H‰D$HƒèH‰„ÀOH‹¼$˜èâíüÿH‰D$PH‹¼$¨H…ÿt
Hƒ/„ÛZHƒ|$PH‹¼$˜HDŽ$¨„5[Hƒ/„¼NH„$H‰\$`1íH‹¼$HDŽ$˜HÇD$HHÇD$@HÇD$0HÇD$H‰D$xL‰t$H‹´$ˆ1ÒèüÄûÿI‰ÄH…À„ëeH;ɚA”ÅH;–š”ÀDè…“FL;%£š„†FL‰çèíÇûÿA‰ŅÀˆÛxIƒ,$„‚iE…í„*yH‹5oÖH‹|$ èíFüÿH‰„$˜H…À„•yH‹¼$ˆH‹´$è×ÉûÿH‰„$¨H‰ÇH…À„
yL‹„$˜H‹D$(I9@…™mM‹`M…䄌mI‹@Iƒ$HƒH‰„$˜Iƒ(„`mH‹”$¨H‹¼$˜L‰æèˆâüÿIƒ,$H‰Ã„-mH‹¼$¨Hƒ/„mHDŽ$¨H‹¼$˜H…Û„’uHƒ/„àlHDŽ$˜H…ítHƒm„ÞYH‹5¦ÑH‹¼$ºè|ÃûÿI‰ÄH…À„1mH;I™@”ÅH;™”À@è…®RL;%#™„¡RL‰çèmÆûÿ‰ŅÀˆùvIƒ,$„†^…í…"^H‹ùßH‹
ÈH9H…vH‹=ùÇH…ÿ„uHƒH‰¼$˜H‹5mÚè@EüÿH‰„$¨H…À„uH‹¼$˜Hƒ/„-lL‹´$¨H‹D$(HDŽ$˜I9F„,yH‹t$hL‰÷èÍêüÿI‰ÅH‹¼$˜H…ÿt
Hƒ/„—lHDŽ$˜M…í„•xH‹¼$¨Hƒ/„qkH‹L$HDŽ$¨H…ÉtH‹H‰D$pHƒèH‰„y1ɺHƒÎÿL‰ïè^SüÿI‰ÄH…À„}yH‰ÆL‰ïèGÃûÿH‰„$¨H…À„ýxIƒ,$„åxH‹„$¨IƒmH‰D$„¨{H‹5dÒH‹|$HDŽ$¨èDüÿH‰„$¨H…À„{¿èËÃûÿI‰ÄH…À„ŸzHƒH‰XèòÄûÿH‰„$˜H‰ÇH…À„'zH‹/ÒH‹5˜Ñè[Åûÿ…Àˆ©yH‹”$˜H‹¼$¨L‰æè›BüÿH‰ÅH…À„&yH‹¼$¨Hƒ/„
yHDŽ$¨Iƒ,$„æxH‹¼$˜Hƒ/„°ƒH‹t$0HDŽ$˜H…ötH‹H‰D$pHƒèH‰„œxH‹’ÝH‹›ÅH9P…KƒL‹-‚ÅM…털‚IƒEH‹5UÏL‰ïèÝBüÿH‰„$˜H…À„U‚Iƒm„=‚¿è—ÂûÿI‰ÇH…À„¿HƒEH‰hè½ÃûÿI‰ÄH…À„=H‹
–H‹5ÑH‰Çè+Äûÿ…Àˆ·€H‹¼$˜L‰âL‰þèpAüÿH‰„$¨H…À„/€H‹¼$˜Hƒ/„€HDŽ$˜Iƒ/„ðIƒ,$„ï}H‹¼$¨H‹GH;•…}H‹WHƒú…?|L‹gL‹o Iƒ$IƒEHƒ/„|HDŽ$¨H‹T$@H…ÒtH‹H‰D$0HƒèH‰„$‚H‹L$HH…ÉtH‹H‰D$0HƒèH‰„dkH‹5PÏL‰ïè€AüÿH‰ÇH…À„zpH‹D$(H9G…LpL‹wM…ö„?pL‹IƒIƒHƒ/„pL‰öL‰ÿèçüÿH‰„$¨Iƒ.„õoH‹¼$¨I‰þH…ÿ„poIƒ/„QoIƒ.„:oH‹5îÍH‰ïHDŽ$¨èâ@üÿH‰ÇH…À„¢nH‹D$(H9G…qnL‹wM…ö„dnL‹IƒIƒHƒ/„DnL‰êL‰öL‰ÿèÆÜüÿH‰„$¨Iƒ.„nH‹¼$¨I‰þH…ÿ„’mIƒ/„smHƒmL‰t$0„VmH‹5ÎL‰÷HDŽ$¨è;@üÿH‰„$¨H…À„¾lH‹¼$H‰Æèú¼ûÿI‰ÇH…À„5lH‹¼$¨Hƒ/„XyH‹D$PHDŽ$¨H‹@H‹HpH…É„äxHƒyH‰L$@„ÔxH‹;“H‹¼$L‰þèÂûÿH‰ÅH…À„AxH‹L$@L‰òH‹|$PH‰ÆÿQHƒm‰Â„x…ÒˆxIƒ/„íwH‹5>ÍL‰÷èf?üÿI‰ÇH…À„ewH‹¼$H‰Æè¼ûÿH‰„$¨H…À„ØvIƒ/„ÁvL‹„$H‹¼$¨H‰¼$Iƒ(„ïhHDŽ$¨H‰ÝL‰l$HL‰d$@é„÷ÿÿ€H*E1ÀE1ÉE1äH‰!ÙH‹l$XE1ÿÇÙþH‹¼$˜ÇÙ"HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é޷ÿÿ艻ûÿL‹´$ éáÿÿ@L‰þè ¼ûÿétèÿÿ1ÿè$½ûÿI‰ÄH…À„•ïÿÿH‰ÆH‰ßè-¼ûÿIƒ,$H‰Å…ž½ÿÿL‰çè7»ûÿ鑽ÿÿH4E1ÀE1ÉE1äH‰+ØE1ÿE1öH‹¼$˜ÇØþH‹l$XÇØ#HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éå¶ÿÿH‰ï荺ûÿL‹´$ é¿ÿÿL‰÷èxºûÿéXàÿÿL‰÷èkºûÿ鞿ÿÿèaºûÿé4¿ÿÿèWºûÿé•àÿÿèMºûÿL‹´$ é©ßÿÿè;ºûÿL‹´$˜鉿ÿÿD¶àéèÆÿÿH‰×L‰D$èºûÿL‹D$élÍÿÿH‹|$èd_üÿH‰D$é
ÏÿÿHüE1ÀE1ÉE1äH‰óÖE1ÿE1öH‹¼$˜ÇçÖH‹l$XÇÔÖòHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$魵ÿÿ¶èé£îÿÿL‰ÇèM¹ûÿéÙÌÿÿH‹5YËH‹|$ è÷;üÿI‰ÄH…À„s.¿è{ûÿH‰D$H‰„$¨H…À„Þ6H‹|ÇH‹L$HƒH‰AHƒH‰Y èʼûÿH‰D$H‰„$˜H…À„·7H‹T$H‹5XÉH‹|$è.½ûÿ…Àˆ& H‹”$˜H‹´$¨L‰çèn:üÿI‰ÇH…À„#>Iƒ,$„êH‹¼$¨Hƒ/„ÎH‹¼$˜HDŽ$¨Hƒ/„¦HDŽ$˜HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é&ÒÿÿL‰ÿèö·ûÿééãÿÿH‹=:ËH¾H5¾èwRüÿI‰ÆL‰´$ M…ö…ʺÿÿHÅÿE1ÀE1ÉE1äH‰¼ÔH‹l$XE1ÿǶÔ
H‹¼$˜Ç ÔüHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éy³ÿÿè$·ûÿéA¼ÿÿè·ûÿéËÿÿL‰çè
·ûÿéèÊÿÿè·ûÿéÇÊÿÿH‹=GÊHH½H5I½è„QüÿI‰ÆL‰´$˜M…ö…X®ÿÿHÒþÇÛÓþH‰ÈÓÇÆÓ*HÇD$ E1ÀE1ÉH‹l$XHÇD$HE1ÿHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$鰲ÿÿ茻ûÿI‰Æé^¹ÿÿH‹=}ÉèHPüÿI‰ÆéLþÿÿH"þE1ÀE1ÉE1äH‰ÓH‹l$XE1ÿÇÓ
H‹¼$˜ÇýÒþHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éֱÿÿI‹WH…ÒŽŒáÿÿ1ÀëDHƒÀH9„I;|ÇuìéÓàÿÿH‹= ÈèkOüÿI‰ÆébþÿÿHEýE1ÀE1ÉE1äH‰<ÒH‹l$XE1ÿÇ6ÒþÇ(Ò,HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é±ÿÿèü¹ûÿI‰ÆéO¬ÿÿH‹=íÇH¾ºH5¿ºè*OüÿI‰ÆM…ö…¸ÿÿH€üE1ÀE1ÉE1äH‰wÑH‹l$XE1ÿÇqÑ
H‹¼$˜Ç[ÑHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é4°ÿÿD¶àéxÁÿÿH‹t$L‰ÿènÜüÿM‰øH‰D$H‰„$˜éöÉÿÿH»ûÇÄÐþH‰±ÐǯÐ;éäüÿÿI‹vH‰´$˜H…ö„f«ÿÿI‹~HƒHƒH‰¼$ Iƒ.tH‹”$ˆèCÒüÿI‰ÆéG«ÿÿL‰÷èC³ûÿH‹´$˜H…ö„¼iH‹¼$ ëȶèéçèÿÿL‰ïè³ûÿé;ÿÿH‰Çè³ûÿH‹„$¨H‰D$霾ÿÿHûúM‰ôE1ÀE1ÿH‰òÏH‹l$XE1öÇìÏ
H‹¼$˜ÇÖÏHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$鯮ÿÿ誷ûÿI‰ÁéúµÿÿH‹=›ÅèfLüÿI‰Æé·ýÿÿH‹=‡ÅHx¸H5y¸èÄLüÿI‰ÆL‰´$¨M…ö…äÖÿÿHúE1ÀE1ÉE1äH‰	ÏH‹l$XE1ÿÇÏH‹¼$˜ÇíΫHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éƭÿÿH‹=¿ÄH·H5·èüKüÿH‰D$Hƒ|$…šÃÿÿHMùE1ÀE1ÉE1äH‰DÎH‹l$XE1ÿÇ>Î!H‹¼$˜Ç(Î	HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é­ÿÿH‹=ÄHͶL‰L$H5ɶèDKüÿL‹L$I‰ÆM…ö…z´ÿÿH•øE1ÀE1äE1ÿH‰ŒÍH‹l$XljÍ
H‹¼$˜ÇsÍHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éL¬ÿÿè÷¯ûÿé ÅÿÿH‹=;ÃèJüÿI‰Æé½ýÿÿèٯûÿéTáÿÿ¶èéзÿÿH‹D$òØf.@Šõ»ÿÿ…ï»ÿÿH‹¿…Hƒéê»ÿÿH ÷Ç©ÌH‰–Ìṷ̌éÉøÿÿè´ûÿI‰ÆéaÔÿÿHl÷E1ÀE1ÉE1äH‰cÌE1ÿE1öH‹¼$˜ÇWÌþH‹l$XÇDÌAHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é«ÿÿH‹=ÂèáHüÿH‰D$é`ýÿÿH¹öE1ÀE1ÉE1ÿL‹d$H‹l$XH‰¦ËǨË!H‹¼$˜Ç’ËHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é}ªÿÿH‹|$ès³ûÿH‰D$éÀÿÿHöM‰ôE1ÀE1ÿH‰ËH‹l$XE1öÇË
H‹¼$˜ÇöÊHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éةÿÿèӲûÿL‹L$H‰D$銱ÿÿH‹=½ÀL‰L$èƒGüÿL‹L$I‰ÆéºüÿÿH‰÷èN­ûÿH‹¼$˜é9ÂÿÿH‰÷è9­ûÿ颹ÿÿH6õE1ÀE1ÉE1äH‰-ÊH‹l$XE1ÿÇ'ÊÇʼHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éò¨ÿÿI‹vH‰´$¨H…ö„ÄÑÿÿI‹~HƒHƒH‰¼$˜Iƒ.tH‹”$ˆèSËüÿI‰Æé¥ÑÿÿL‰÷èS¬ûÿH‹´$¨H…ö„iH‹¼$˜ëÈH:ôE1ÀE1ÉE1äH‰1ÉH‹l$XE1ÿÇ+É&H‹¼$˜ÇÉBHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é÷§ÿÿ被ûÿL‹”$˜é¤ÞÿÿH;V„€ÔÿÿL‰÷ºè۫ûÿH‰„$ I‰ÆH…À…AUHióE1ÀE1ÉE1äH‰`ÈH‹l$XE1ÿÇZÈþH‹¼$˜ÇDÈ>HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é§ÿÿHÏòE1ÀE1ÉE1ÿH‰ÆÇH‹l$XÇÃÇ!H‹¼$˜Ç­ÇHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$鏦ÿÿHAòI‰éE1ÀE1äH‰8ÇH‹l$XE1ÿÇ2Ç
H‹¼$˜ÇÇHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éõ¥ÿÿ蠩ûÿéh¶ÿÿM‹aM…ä„ЭÿÿI‹iIƒ$HƒEIƒ)„sH‹T$L‰æH‰ïèVÈüÿH‰„$ Iƒ,$…·­ÿÿL‰çèK©ûÿ骭ÿÿH‰Ïè>©ûÿéè¾ÿÿL‰Çè1©ûÿH‹„$˜H‰D$鴾ÿÿH!ñÇ*Æ!H‰ÆÇÆHÇD$ E1ÀE1ÉH‹l$XHÇD$HE1ÿHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é¥ÿÿH‰ï蚨ûÿ饽ÿÿH‰D$苨ûÿL‹L$饮ÿÿHƒðE1ÀE1ÉE1äH‰zÅH‹l$XE1ÿÇtÅ
H‹¼$˜Ç^ÅHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é7¤ÿÿè2­ûÿI‰Æ闬ÿÿHÜïE1ÉE1ÿÇßÄ!H‰ÌÄH‹l$XÇÅÄH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$韣ÿÿL‰ÇèG§ûÿéšÜÿÿHDïE1ÀE1ÉE1äH‰;ÄE1ÿE1öH‹¼$˜Ç/ÄH‹l$XÇÄÂHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éõ¢ÿÿI‹A‹@ƒà=€…­ÿÿH‹„$ H‰úL‰ÏL‰„$ÀL‰D$0H‰„$°H‹„$¨L‰L$H‰„$¸¸H)èH´İèã'üÿL‹L$L‹D$0H…ÀH‰D$H‰„$˜„¶SH‹¼$ H…ÿt
Hƒ/„$+H‹¼$¨HDŽ$ Hƒ/„3#HDŽ$¨Iƒ(…Š­ÿÿL‰ÇL‰L$è˥ûÿL‹L$és­ÿÿH‹=
¹HK«H5L«èG@üÿH‰D$Hƒ|$…¬¸ÿÿH˜íE1ÀE1ÉE1ÿH‰ÂH‹l$XÇŒÂ!H‹¼$˜ÇvÂHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éa¡ÿÿH;Òz„ÑÎÿÿL‰÷ºèW¥ûÿH‰„$˜I‰ÆH…À…²aHåìÇîÁH‰ÛÁÇÙÁ¿éîÿÿ@¶íé޳ÿÿHµìǾÁ
H‰«ÁÇ©Á+éÞíÿÿH‹wH‰´$ H…ö„r©ÿÿL‹GHƒIƒL‰„$¨Hƒ/tDL‰òL‰Çè=ÃüÿéK©ÿÿèC¤ûÿH‹´$ H…ö„¸QL‹„$¨ëÐL‰Çè ¤ûÿH‹„$˜H‰D$éaºÿÿ@¶íéï¾ÿÿè¤ûÿH‹„$¨H‰D$é1±ÿÿH‹|$è4©ûÿI‰Àé·ÿÿH‹=%·èð=üÿH‰D$é$þÿÿH‰T$ 1ÉH‰l$H‰ýH‰\$H‰ËI‹tßH9õ…Ô5H‹l$H‹\$éÏÿÿH”ëL‹L$E1ÿÇ•À!H‰‚ÀH‹l$XÇ{ÀH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éUŸÿÿfïÀfA.@Šx½ÿÿ…r½ÿÿH‹(yHƒém½ÿÿL‰ÿL‰D$èҢûÿL‹D$éӸÿÿL‰L$H‰D$蹢ûÿL‹D$L‹L$é{©ÿÿ襢ûÿé:ÉÿÿH‰Ï蘢ûÿéJ°ÿÿL‰Ç苢ûÿéWØÿÿH‰ïL‰D$ èy¢ûÿH‹„$˜L‹D$ H‰D$韸ÿÿH‰k¿Çm¿ýÇ_¿éUÎÿÿL‰Ïè:¢ûÿéñ©ÿÿH7êE1ÀE1ÉE1ÿH‰.¿H‹l$XÇ+¿!H‹¼$˜Ç¿HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éžÿÿ¶èé/Ùÿÿ裡ûÿéêšÿÿ虡ûÿ颩ÿÿ菡ûÿéүÿÿHŒéE1ÀE1ÉǏ¾H‰|¾Çz¾çHÇD$ H‹l$XE1ÿHÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$ésÿÿèO¦ûÿH‰D$酵ÿÿH÷èE1ÀÇý½(H‰ê½Çè½WHÇD$ E1ÉE1ÿH‹l$XHÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éçœÿÿHzèE1ÀE1ÉE1äH‰q½E1ÿE1öH‹¼$˜Çe½H‹l$XÇR½~HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é+œÿÿL‰çèӟûÿé·ÿÿL‰ÇèƟûÿé·ÿÿ輟ûÿéf®ÿÿL‰D$ 譟ûÿL‹D$ éжÿÿH¥çE1ÉE1ÿǨ¼+H‰•¼H‹l$XÇ޼¥H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éz›ÿÿH‹ó»H…Ò„}<H‹D$H‹xH9ú„àªÿÿH‹XH…É„1<H‹qH…ö~1ÀH;TÁ„ºªÿÿHƒÀH9ÆuìH‹ÒtH‹JH5ÏÚH‹WH‹81À詣ûÿH»æE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰¥»Ç§»H‹¼$˜Ç‘»öHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éjšÿÿHæE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰»Ç»H‹¼$˜ÇòºHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éԙÿÿH†åE1ÀE1ÉE1äH‰}ºH‹l$XE1ÿÇwº(ÇiºeHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éT™ÿÿL‰çL‰L$è÷œûÿL‹L$韤ÿÿH‹=6°Hç¢H5è¢ès7üÿH‰D$H‹D$H‰„$¨H…À…­¢ÿÿHºäE1ÀE1ÉE1äH‰±¹H‹l$XE1ÿÇ«¹H‹¼$˜Ç•¹CHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éw˜ÿÿL‰Çèœûÿ麶ÿÿH‰ïèœûÿH‹„$¨H‰D$éܪÿÿH‹„$ H‰úL‰ÏL‰„$ÀL‰D$0H‰„$°H‹„$¨L‰L$H‰„$¸¸H)èH´İè“3üÿL‹L$L‹D$0H…ÀH‰D$H‰„$˜…põÿÿH•ãÇž¸H‰‹¸Ç‰¸^é
úÿÿHnãE1ÉE1äE1ÿH‰e¸H‹D$Çb¸)H‹l$XÇO¸rH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8H‰D$HÇD$é-—ÿÿèؚûÿé+ÑÿÿE¶äé߫ÿÿHÌâE1ÀE1äE1ÿH‰÷H‹l$XÇ7H‹¼$˜Çª·EHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$郖ÿÿIƒH‹l$XM‰üHÇD$ éö–ÿÿèšûÿéµÿÿH‹t$L‰çM‰åèŸÂüÿH‰„$¨éªÿÿL‰D$èè™ûÿL‹D$é©ÐÿÿHàáE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰ʶÇ̶H‹¼$˜Ç¶¶HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$鏕ÿÿHAáE1ÉE1äE1ÿH‰8¶H‹l$XÇ5¶2H‹¼$˜Ç¶ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é•ÿÿ謘ûÿéPàÿÿ袘ûÿé(àÿÿL‰ç蕘ûÿé	àÿÿH’àE1ÀE1ÉE1ÿH‰‰µH‹l$Xdžµ0H‹¼$˜ÇpµøHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éR”ÿÿHàE1ÉE1ÿǵ)H‰ô´H‹D$Çí´tH‹l$XHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8H‰D$HÇD$éí“ÿÿèy—ûÿé>¯ÿÿH‰×èl—ûÿ鬦ÿÿH‹=°ªè{1üÿH‰D$éƒúÿÿL‰|$ H‹D$ H‹´H‹@H9Ât5H‹ˆXH…É„þH‹qH…öŽ1Àë
HƒÀH9Æ„H;TÁuìH‹5ìH‹|$ è±üÿH‰„$¨I‰ÄH…À„¥(H‹ŽlI9D$…ÎI‹l$H…í„ÀI‹D$HƒEHƒH‰„$¨Iƒ,$„³H‹
¥H‹¼$¨H‰îèuµüÿHƒmI‰Ç„M…ÿ„0!H‹¼$¨Hƒ/„J
H‹t$ HDŽ$¨H‹H‰D$`HƒèH‰…p°ÿÿH‰÷è.–ûÿéc°ÿÿH‹€H9„ÿÿÿH…ÀuëH;ml„ÿÿÿL‹|$ é7°ÿÿH‹5n¤L‰ç莾üÿI‰ÇéoÿÿÿHèÝÇñ²H‰޲Çܲ&L‹l$H‹l$XE1ÀE1ÉHÇD$ E1ÿHÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éʑÿÿH‹5£H‹=m±1ÒèüÿH‰D$H‰„$˜H…À„û)H‹|$è,üÿH‹¼$˜Hƒ/„â(HÝE1ÀE1ÉE1ÿL‹l$H‹l$XHDŽ$˜H‰÷±Çù±Çë±HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éãÿÿHvÜE1ÉE1ÿÇy±*H‰f±H‹l$XÇ_±HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8érÿÿL‰Ïèû“ûÿé€êÿÿL‰Çèî“ûÿH‹„$¨H‰D$éËÿÿL‰D$èғûÿL‹D$éºÊÿÿH;‰i„ïãÿÿH‹|$ºè”ûÿH‰D$H‰„$˜H…À…PAH˜ÛÇ¡°H‰ްÇŒ°é«ýÿÿHqÛE1ÉE1äE1ÿH‰h°H‹l$XÇe°2H‹¼$˜ÇO° HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é1ÿÿHãÚE1ÀE1ÉE1äH‰گH‹l$XÇׯ*H‹¼$˜ÇoHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$鬎ÿÿH^ÚE1ÀE1äE1ÿH‰U¯H‹l$XÇR¯H‹¼$˜Ç<¯HHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éŽÿÿH‹5Ÿ¤H‹|$ è}üÿH‰D$H…À„Ü(H‹t$H‹[gH9F…÷H‹nH…í„êL‹FHƒEIƒH‹H‰D$HƒèH‰„èL‰ÇH‰ÚH‰îL‰D$èG°üÿL‹D$H‰„$¨Hƒm„¹7H‹„$¨H‰D$H‰ÅH…À„&*Iƒ(„$H”$ˆE1ÉE1À1É1öH‰ïèâ üÿH‰D$ H…À„l)H‹¼$¨Hƒ/„Ë#H‹T$H;gHDŽ$¨„@$H‹|$ H‹5ˆ¡H‹GH‹€˜H…À„_MÿЅÀˆf>HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éFúÿÿH‹=–£H7–L‰L$H53–èÎ*üÿL‹L$H‰D$H‹D$H‰„$ H…À…¦–ÿÿHØE1ÀE1äE1ÿH‰­H‹l$XÇ­H‹¼$˜Çî¬JHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éЋÿÿH‹D$ fïÀf.@Šުÿÿ…تÿÿH‹ŸeHƒI‰ÀéӪÿÿHU×E1äE1ÿÇX¬H‰E¬H‹l$XÇ>¬LH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é‹ÿÿH‹=¢L‰L$èÎ(üÿL‹L$H‰D$é{þÿÿ蚎ûÿ鏞ÿÿH‰÷荎ûÿH‹„$˜H‰D$éFžÿÿH}ÖE1ÀE1ÉÇ€«+H‰m«H‹l$XÇf«œHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éyŠÿÿ@¶íéàŸÿÿHÖÇ«H‰ùªÇ÷ªÏé,×ÿÿHÜÕE1ÉE1äE1ÿH‰ӪH‹l$XÇЪ5H‹¼$˜Çºª7 HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$霉ÿÿHNÕE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰8ªÇ:ªH‹¼$˜Ç$ª(HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é‰ÿÿH‰Ï讌ûÿéJÄÿÿH‹5BšH‹=»¨1ÒèdüÿH‰D$H…À„‚!L‹|$L‰ÿèi#üÿI‹H‰D$HƒèI‰„< HfÔE1ÀE1ÉE1äH‰]©H‹l$XE1ÿÇW©3H‹¼$˜ÇA©% HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é#ˆÿÿHÕÓE1ÉE1äE1ÿH‰̨H‹l$XÇɨ+H‹¼$˜Ç³¨žHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8駇ÿÿHYÓE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰C¨ÇE¨H‹¼$˜Ç/¨*HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é‡ÿÿHºÒE1ÀE1ÉE1ÿH‰±§H‹l$XÇ®§0H‹¼$˜Ç˜§ìHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éz†ÿÿH‹5»—H‹=<¦1ÒèåüÿH‰D$H…À„•4L‹|$L‰ÿèê üÿI‹H‰D$HƒèI‰„+&HçÑE1ÀE1ÉE1äH‰ަH‹l$XE1ÿÇئ6H‹¼$˜Ç¦G HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$餅ÿÿI‹QH‰”$ H…Ò„2ÿÿI‹iHƒHƒEIƒ)„AH‹EI‰é¿½éÿÿè
‰ûÿé¬òÿÿè‰ûÿ静ÿÿHÑE1ÉE1ÿǦ+H‰ð¥H‹l$XÇ饣H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éՄÿÿ@¶íé6“ÿÿH‹l$XL‰þH‰ï謩üÿHÇD$ I‰ÄH…À…4…ÿÿHYÐL‰d$ E1ÀE1ÉH‰N¥H‹¼$˜ÇH¥cÇ:¥0#ém„ÿÿHÐE1ÉE1äE1ÿH‰¥H‹l$XÇ¥5H‹¼$˜Çý¤8 HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é߃ÿÿH‘ÏE1ÀE1ÉE1äH‰ˆ¤H‹l$XE1ÿÇ‚¤ÿH‹¼$˜Çl¤NHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éEƒÿÿH‰×èí†ûÿérÿÿH‹5¡”H‹=ú¢1Òè£üÿH‰D$H‰„$¨H…À„M:H‹|$è£üÿH‹¼$¨Hƒ/„– H£ÎE1ÀE1ÉE1äL‹l$H‹l$XE1ÿHDŽ$¨H‰£H‹¼$˜Ç{£Çm£9HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éF‚ÿÿH‰ïèî…ûÿérïÿÿL‰çèá…ûÿé@ïÿÿH‰D$ è҅ûÿL‹D$ 霞ÿÿL‰Çèûÿé]žÿÿL‰D$ 豅ûÿL‹D$ é3žÿÿL‰çL‰D$ 蚅ûÿL‹D$ é
žÿÿH’ÍH‹l$XE1ÉÇ“¢.H‰€¢H‹¼$˜Çv¢ÁHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éjÿÿH‹=c˜è.üÿH‰D$H‹D$H‰„$˜H…À…“ÿÿHõÌÇþ¡H‰ë¡Çé¡TéïÿÿH‹=˜H†ŠH5‡ŠèRüÿH‰D$ë¢H­ÌE1ÀE1ÉE1ÿL‹l$H‹l$XH‰š¡Çœ¡H‹¼$˜Ç†¡VHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é_€ÿÿHÌE1ÀE1ÉE1äH‰¡H‹l$XE1ÿÇ¡H‹¼$˜Çì €HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éÅÿÿH‰ÏèmƒûÿédŒÿÿH‰×L‰L$è[ƒûÿL‹L$éڌÿÿè܃ûÿHNËH‹l$XE1ÿÇO H‰< H‹¼$˜Ç2 pHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éÿÿL‰D$L‰L$謂ûÿL‹D$L‹L$é¯ÜÿÿH‰D$蓂ûÿL‹D$騻ÿÿL‰ï聂ûÿé'»ÿÿL‰Çèt‚ûÿH‹¬$¨é»ÿÿH‰ÏL‰D$èZ‚ûÿH‹´$˜L‹D$H…ö…ºÿÿL‰ÇL‰D$è—'üÿL‹D$ézºÿÿH/ÊE1ÀE1ÉE1ÿH‰&ŸH‹l$XÇ#Ÿ0H‹¼$˜Ç
ŸîHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éø}ÿÿHªÉE1ÀE1ÉÇ­žH‰šžÇ˜žYL‹l$H‹l$XE1ÿHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é|}ÿÿHÉÇ(ž0H‰žÇžöéù×ÿÿL‰çèî€ûÿéP‘ÿÿL‰ïèá€ûÿH‹¬$¨飑ÿÿH‰ïè̀ûÿéç‘ÿÿL‰ç迀ûÿ餒ÿÿH¼ÈE1ÀǝH‰¯Ç­{HÇD$ H‹l$XE1ÿHÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é–|ÿÿL‰L$è-€ûÿL‹L$醉ÿÿH%ÈE1ÉE1äÇ(VH‰H‹¼$˜Ç·"H‹l$XHÇD$ é0|ÿÿHâÇE1ÀE1ÉÇåœ.H‰ҜH‹l$Xǘ·H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8é·{ÿÿHiÇE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰SœÇUœH‹¼$˜Ç?œkHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é{ÿÿL‰L$è¾~ûÿL‹L$éXˆÿÿè¯~ûÿéЈÿÿL‰Ïè¢~ûÿ醈ÿÿH‹=æ‘è±üÿH‰D$8H‹D$8H‰„$¨H…À…–ÿÿHxÆE1ÀE1ÉE1äH‰o›H‹l$XÇl›.H‹¼$˜ÇV›µHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PéSzÿÿH‹=L‘H}ƒH5~ƒè‰üÿH‰D$8éSÿÿÿE¶í鄹ÿÿHØÅH‹l$XE1ÉÇٚ+H‰ƚH‹¼$˜Ç¼š¦HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8é°yÿÿH‰ïèX}ûÿH‹¼$˜顇ÿÿIƒL‰´$¨éˆÿÿH<ÅE1ÀÇBš9H‰/šÇ-ši é@ÜÿÿH‹=Yè$üÿH‰D$H‹D$H‰„$˜H…À…³ÿÿHëÄE1ÀÇñ™9H‰ޙÇܙd éïÛÿÿH‹=H)‚H5*‚èEüÿH‰D$ëŸL‰Çè–|ûÿéN˜ÿÿH‹´$¨H‹H‰t$ H‰D$`HƒèH‰uH‹|$ L‰D$`èd|ûÿL‹D$`L;˜RHDŽ$¨”ÀL;ZR”ÂÂ…„)L;hR„w)L‰ÇL‰D$ è­ûÿL‹D$ …	ʼnWÿÿHÄE1ÉE1äÇ™YH‰™H‹¼$˜Çö˜è"H‹l$XHÇD$ éxÿÿHÍÃE1ÀE1ÉE1äH‰ĘH‹l$XE1ÿǾ˜9H‹¼$˜Ç¨˜f HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é“wÿÿM‹l$M…턺‰ÿÿI‹l$IƒEHƒEIƒ,$„™H‹”$˜L‰îH‰ïèø™üÿH‰„$¨Iƒm…’‰ÿÿL‰ïèízûÿ酉ÿÿL‰D$L‰L$èÙzûÿL‹D$L‹L$é¾ÔÿÿHÌÂE1ÀE1ÉI‰ìH‰×ÇŗÇ·—héùÿÿè•zûÿé&ŒÿÿH‰ïèˆzûÿé‹ÿÿL‰D$èyzûÿL‹D$é۲ÿÿHqÂE1ÀE1ÉÇt—0H‰a—H‹l$XÇZ—ùH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é4vÿÿH‹5•‡H‹=ö•1ÒèŸûûÿH‰D$H‰„$¨H…À„p&H‹|$èŸüÿH‹¼$¨Hƒ/„RHŸÁE1ÀE1ÉE1äL‹l$H‹l$XE1ÿHDŽ$¨H‰}–H‹¼$˜Çw–Çi–zHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éBuÿÿHôÀE1ÀE1ÉE1äH‰ë•H‹l$XÇè•VH‹¼$˜Çҕ¼"HÇD$ éütÿÿL‹D$é^öÿÿL‹|$H‰ÞL‰ÿè2¡üÿM‰øH‰„$¨éCçÿÿH‰÷L‰D$èuxûÿL‹D$éçÿÿHmÀI‰íE1ÉE1äH‰d•H‹l$XE1ÿÇ^•=H‹¼$˜ÇH•Î HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é*tÿÿL‹L$H‹l$XE1ÀE1ÿH̿ÇՔ
H‹¼$˜H‰º”Ǹ”HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é‘sÿÿH‹=ŠŠH}H5}èÇüÿH‰D$Hƒ|$…ÑÿÿH¿E1ÀE1ÉE1ÿH‰”H‹l$XÇ”
H‹¼$˜Çö“HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éØrÿÿL‰çL‰D$ è{vûÿL‹D$ é
“ÿÿH‰×èivûÿ陒ÿÿL‰Ïè\vûÿéÿÿèRvûÿéIÿÿL‰÷èEvûÿé*ÿÿè;vûÿé:±ÿÿL‰ÿè.vûÿéÿÿè$vûÿéöÿÿèvûÿéΏÿÿL‰Çè
vûÿ鯏ÿÿH
¾E1ÉE1äÇ
“.H‰ú’H‹l$XÇó’ÑH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éßqÿÿH‰×è‡uûÿH‹´$¨H…ö…'°ÿÿH‹¼$˜èÉüÿH‰D$Pé"°ÿÿèZuûÿéu¯ÿÿèPuûÿéM¯ÿÿL‰ÇèCuûÿé.¯ÿÿH@½E1ÀE1ÉE1äH‰7’L‹|$ H‹SKH‹¼$˜Ç%’SÇ’¡"H‹l$XHÇD$ H‰D$é7qÿÿL‰ÏL‰D$èÚtûÿH‹EI‰éL‹D$¿½é²{ÿÿH|E1ÉE1äE1ÿH‰¸‘H‹l$Xǵ‘9H‹¼$˜ÇŸ‘z HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éŠpÿÿH<¼E1ÀE1ÉE1äH‰3‘H‹l$XE1ÿÇ-‘9H‹¼$˜Ç‘| HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éùoÿÿH«»E1ÉDZ9H‰žÇœw éÒÿÿH‹oH…턪ÿÿH‹GHƒEHƒH‰„$¨Hƒ/„×H‹”$˜H‹¼$¨H‰îè+’üÿHƒmI‰À…æ©ÿÿH‰ïL‰D$è sûÿL‹D$éϩÿÿH»E1ÀE1ÉE1äH‰H‹l$XE1ÿÇ	<H‹¼$˜Çó§ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éÞnÿÿH‹=ׅè¢üÿH‰D$Hƒ|$…ÄzÿÿHsºE1ÀE1ÉE1äH‰jH‹l$XE1ÿÇd
H‹¼$˜ÇN‹HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é0nÿÿH‹=)…HºwH5»wèfüÿH‰D$é?ÿÿÿH¾¹H‹l$XE1ÉÇ¿Ž.H‰¬ŽÇªŽÂHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$Pé¶mÿÿHY¹E1ÀE1ÉÇ\ŽH‰IŽÇGŽ”éªïÿÿH,¹H‹l$XE1ÉÇ-Ž.H‰ŽH‹¼$˜ÇŽ¿HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8émÿÿH¶¸E1ÀE1Éǹ.H‰¦H‹l$XÇŸºH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$Pé”lÿÿ@¶íéh­ÿÿH=¸E1ÀE1ÉE1ÿL‹l$H‹l$XH‰*Ç,H‹¼$˜Ç‘HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éïkÿÿH‹=è‚HIuH5Juè%
üÿH‰D$Hƒ|$…þ~ÿÿHv·E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰`ŒÇbŒH‹¼$˜ÇLŒŒHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é.kÿÿHà¶E1ÀE1ÉE1ÿL‹d$L‹l$H‰͋ÇϋH‹l$XǼ‹ŽHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é­jÿÿH‹=—èbüÿH‰D$é¸þÿÿL‹|$ H‹l$XE1ÀE1ÉH*¶Ç3‹SH‹¼$˜H‰‹H‹9DÇ‹“"HÇD$ H‰D$é4jÿÿL‰÷èÜmûÿéyÿÿèÒmûÿéãxÿÿH‹Eö€«€„j*ö…«@„]*H‹FH‹€¨©€„3*ö†«@„&*L‹…XM…À„ÑM‹H1ÀëI;tÀ„ÈÉÿÿHƒÀI9ÁìHƒÃH9\$ …¢ÉÿÿH‹l$éZ™ÿÿHIµE1ÀE1ÉM‰ìH‰@ŠÇBŠÇ4Š¢é—ëÿÿèmûÿé+ÜÿÿL‰ÇèmûÿH‹¬$¨éÜÛÿÿH;¹B„æÉÿÿL‰ǺL‰D$`è9mûÿL‹D$`H…ÀH‰D$ H‰„$¨…T‡ÿÿH4H‹l$XE1ÉÇIVH‰®‰H‹¼$˜E1äÇ¡‰¹"éÔhÿÿHÇD$HL‹l$HÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éæÔÿÿè-lûÿé×ÿÿH‹|$èlûÿéµßÿÿH‹5¢yH‹=+ˆ1ÒèÔíûÿH‰D$H‰„$¨H…À„MH‹|$èÔüÿH‹¼$¨Hƒ/„ÄHԳE1ÀE1ÉE1äH‰ˈH‹l$XE1ÿHDŽ$¨H‹¼$˜Ç±ˆ:Ç£ˆ‹ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é…gÿÿH7³Ç@ˆH‰-ˆÇ+ˆéJÕÿÿè	kûÿé2ÿÿÿH³E1ÀE1ÉE1äH‰ý‡H‹l$XE1ÿÇ÷‡3H‹¼$˜Çá‡! HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éÌfÿÿèwjûÿé÷ÿÿHt²Ç}‡<H‰j‡Çh‡µ é{ÉÿÿèFjûÿé¥ÿÿHC²E1ÉE1äÇF‡.H‰3‡H‹l$XÇ,‡ÏH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$Pé!fÿÿHӱI‰íE1ÀE1ÉH‰ʆE1äE1ÿH‹l$XÇF>dz†ì HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$HÇD$é§eÿÿH‰ïèOiûÿé¦ÿÿHL±I‰íE1ÀE1ÉH‰C†H‹l$XE1ÿÇ=†>Ç/†Þ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$éBeÿÿHհE1ÀE1ÉE1äH‰̅H‹l$XE1ÿÇƅMH‹¼$˜Ç°…@"HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é›dÿÿèFhûÿé¤îÿÿHC°E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰-…Ç/…H‹¼$˜Ç…¥HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éòcÿÿL‰çèšgûÿéȄÿÿL‰Çègûÿé{„ÿÿHНE1ÀE1ÉE1äH‰„H‹l$XE1ÿÇ{„MH‹¼$˜Çe„Q"HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éPcÿÿH¯E1ÉE1äE1ÿH‰ùƒH‹l$XÇöƒMH‹¼$˜ÇàƒN"HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éËbÿÿH}®E1ÉE1äÇ€ƒ.H‰mƒH‹l$XÇfƒÒH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$Pé[bÿÿèfûÿé`ßÿÿH®E1ÀE1ÉI‰ìH‰ú‚Çü‚
Çî‚·é<åÿÿM‹D$M…À„¼oÿÿI‹l$IƒHƒEIƒ,$„“"H‹”$¨L‰ÆH‰ïL‰D$肄üÿL‹D$H‰„$˜Iƒ(…oÿÿL‰Çèseûÿé‚oÿÿHp­H‹l$XE1ÉÇq‚.H‰^‚Ç\‚ÊHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PéxaÿÿH;Ê:„|ÕÿÿH‹|$ ºèMeûÿI‰ÀH…À…PèÿÿHã¬E1ÉE1äÇæYH‰ӁH‹¼$˜ÇɁå"H‹l$XHÇD$ éî`ÿÿH‹T$xH‹|$PE1É1ÉA¸1öèbôûÿI‰ÄH…À„¨H‹çrH‹|$hH‰Æècûÿ…Àˆ)Iƒ,$…¡ÿÿL‰çèGdûÿ邡ÿÿL‰çè:dûÿém¡ÿÿH‹=~wèIþûÿH‰D$ Hƒ|$ …€ÿÿH¬E1ÀE1ÉE1äH‰H‹¼$˜Ç_H‹l$XÇø€õ"é+`ÿÿH‹=$wHiH5ièaþûÿH‰D$ ë–H‹|$è°cûÿéÆÙÿÿH‹5LqH‹=½1ÒèfåûÿH‰D$H…À„ÁL‹|$L‰ÿèkúûÿI‹H‰D$HƒèI‰„Hh«E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰R€ÇT€H‹¼$˜Ç>€ÙHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é_ÿÿH‰øH‹€H9„ŒnÿÿH…ÀuëH;9„znÿÿéÄÃÿÿH‹F8H5ٮH‹8èGcûÿéÉÃÿÿL‰çèzbûÿéZçÿÿHwªE1ÉE1äÇz.H‰gH‹l$XÇ`ÇH‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8éL^ÿÿHþ©E1ÀE1ÉE1ÿL‹l$H‹l$XH‰ë~Çí~H‹¼$˜Ç×~ÈHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é°]ÿÿHb©E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰L~ÇN~H‹¼$˜Ç8~ÆHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é]ÿÿH‹5snH‹=Ü|1Òè…âûÿH‰D$H‰„$¨H…À„yH‹|$è…÷ûÿH‹¼$¨Hƒ/„SH…¨E1ÀE1ÉE1äL‹l$H‹l$XE1ÿHDŽ$¨H‰c}H‹¼$˜Ç]}ÇO}´HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$é(\ÿÿHڧE1ÀE1ÉE1ÿL‹l$H‹l$XH‰Ç|ÇÉ|H‹¼$˜Ç³|ÊHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éŒ[ÿÿH>§E1ÀM‰ôE1ÿH‰5|H‹l$XÇ2|
H‹¼$˜Ç|¼HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éõZÿÿH‰l$(L‹t$E1ÀE1ÉH—¦H‹\$`E1ÿǘ{?H‰…{L‹l$hÇ~{ú H‹¼$˜HÇD$ H‹l$XHÇD$é’ZÿÿHD¦M‰ôE1ÀE1ÿH‰;{H‹l$XÇ8{
H‹¼$˜Ç"{½HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éûYÿÿH‹uH‰´$ H…ö„ÒfÿÿH‹EHƒHƒH‰„$¨HƒmtH‹T$H‹¼$¨èY|üÿI‰Áé­fÿÿH‰ïèY]ûÿH‹´$ H‹¬$¨H…öuÉé{fÿÿHA¥E1ÀE1ÉE1ÿH‰8zH‹l$XÇ5z
H‹¼$˜Çz•HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éYÿÿH³¤E1ÀE1ÉE1äH‰ªyH‹¼$˜Ç¤yYH‹l$XÇ‘yã"éÄXÿÿHv¤E1ÀE1ÿÇyy
H‰fyH‹l$XÇ_y§H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é9XÿÿL‹D$H‹l$XE1ÉE1ÿHۣÇäx
H‹¼$˜H‰ÉxÇÇx’HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é©WÿÿH[£E1ÀE1ÿÇ^x
H‰KxH‹l$XÇDx¤H‹¼$˜HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$HÇD$éWÿÿL‰çè½Zûÿéq–ÿÿHº¢H‹l$XE1ÉÇ»w_H‰¨wH‹¼$˜Çžwþ"HÇD$ éÈVÿÿHz¢L‹D$ E1ÉÇ{w_H‰hwH‹¼$˜Ç^w÷"H‹l$XHÇD$ éƒVÿÿH5¢H‹l$XE1ÉÇ6w_H‰#wH‹¼$˜Çwü"HÇD$ éCVÿÿHõ¡E1ÉE1äÇøv_H‰åvH‹¼$˜ÇÛvú"H‹l$XHÇD$ éVÿÿH‹=ùlèÄóûÿH‰D$éxâÿÿL‰D$`èYûÿL‹D$`écvÿÿH‰ïL‰D$èyYûÿL‹D$é0ÈÿÿHq¡I‰íE1ÉE1äH‰hvH‹l$XE1ÿÇbv=H‹¼$˜ÇLvÏ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$HÇD$é7UÿÿHé I‰íE1ÉE1ÿH‰àuH‹l$XÇÝu=ÇÏuÌ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éÙTÿÿHl I‰íE1ÉE1äH‰cuH‹l$XE1ÿÇ]u=H‹¼$˜ÇGuÇ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é2TÿÿHäŸI‰íE1ÉE1äH‰ÛtH‹l$XE1ÿÇÕt=H‹¼$˜Ç¿tÄ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é¡SÿÿH‹=šjèeñûÿH‰D$H‹D$H‰„$¨H…À…ÿÿH,ŸI‰íE1ÀE1ÉH‰#tE1äE1ÿH‹¼$˜Çt=H‹l$XÇt HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éïRÿÿH‹=èiHù[H5ú[è%ñûÿH‰D$é;ÿÿÿèvVûÿ酔ÿÿèlVûÿé“ÿÿèbVûÿéå’ÿÿL‰çèUVûÿéƒÿÿL‰ÇèHVûÿ铒ÿÿH‰þL‰ÇèØ~üÿH‰Ã馒ÿÿè+VûÿéɓÿÿL‹´$¨é¦NÿÿHžH‹l$XE1ÉÇs_H‰	sH‹¼$˜E1äÇür#é/RÿÿH‰\$(L‹t$E1ÀE1ÉHѝH‹\$`E1ÿÇÒrAH‰¿rL‹l$hǸr$!H‹¼$˜HÇD$ H‹l$XHÇD$éÌQÿÿèwUûÿé_“ÿÿHtE1ÀE1ÉE1äH‰krH‹l$XE1ÿÇer6H‹¼$˜ÇOrC HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$é:QÿÿL‰L$èàTûÿL‹L$éQ‡ÿÿH‹|$èÌTûÿéañÿÿHɜE1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰³qǵqH‹¼$˜ÇŸqÕHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éPÿÿH‰\$(L‹t$E1ÀE1ÉH#œH‹\$`E1ÿÇ$qBH‰qL‹l$hÇ
q2!H‹¼$˜HÇD$ H‹l$XHÇD$éPÿÿH‰\$(L‹t$E1ÀE1ÉHH‹\$`E1ÿÇÁpBH‰®pL‹l$hǧp0!H‹¼$˜HÇD$ H‹l$XHÇD$é»OÿÿH‰ÏècSûÿ鏔ÿÿL‰ÇèVSûÿH‹¼$éü–ÿÿHK›E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰5pÇ7pH‹¼$˜Ç!pvHÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éOÿÿ¶èé^nÿÿH‰èH‹€H9Æ„÷®ÿÿH…Àuë1ÀH;5ê(”À„åÿÿéٮÿÿH‹¼$¨éhWÿÿHošÇxoH‰eoÇcohéä°ÿÿH‹„$¨H‰D$éˆ^ÿÿH6šE1ÀE1ÉE1äL‹|$ H‹l$XH‰#oÇ%oOH‹¼$˜Çoi"HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éñMÿÿH£™E1ÀE1ÉE1äH‰šnH‹l$XE1ÿÇ”n:H‹¼$˜Ç~n‡ HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$éiMÿÿI‰ÀH‰\$(L‹t$E1ÉH™L‰l$HH‹\$`L‰d$@L‹l$hE1äH‰ômH‹l$XÇñmIH‹¼$˜ÇÛm"HÇD$ HÇD$éüLÿÿL‹t$H‰D$E1ÀE1ÉHž˜H‰\$(E1ÿH‹\$`L‰l$HH‹l$XL‰d$@L‹l$hE1äH‰zmH‹¼$˜ÇtmIÇfm"HÇD$ éLÿÿH‰ïè8Pûÿ青ÿÿL‰ÿè+PûÿL‹´$¨éx’ÿÿH‰\$(L‹t$M‰øE1ÉH˜H‰|$H‹\$`E1ÿL‰l$HH‹¼$˜L‰d$@L‹l$hE1äH‰l$0H‹l$XH‰ßlÇálHÇÓlÿ!HÇD$ éýKÿÿL‰÷è¥Oûÿéܑÿÿè›Oûÿ鲑ÿÿL‰îH‰|$0è)xüÿH‹|$0H‰„$¨I‰ÿ鰑ÿÿL‹t$H‰D$E1ÀE1ÉHf—H‰\$(E1ÿH‹\$`L‰l$HH‹¼$˜L‰d$@L‹l$hE1äH‰l$0H‹l$XH‰5lÇ7lHÇ)lñ!HÇD$ éSKÿÿL‰÷èûNûÿ鹐ÿÿL‰ÿèîNûÿL‹´$¨隐ÿÿH‰\$(L‹t$M‰øE1ÉHӖH‰|$H‹\$`E1ÿL‰l$HH‹¼$˜L‰d$@L‹l$hE1äH‰l$0H‹l$XH‰¢kǤkGÇ–kå!HÇD$ éÀJÿÿL‰÷èhNûÿéþÿÿè^Nûÿé׏ÿÿH‰|$0è¯óûÿH‹|$0H‰„$¨I‰ÿéՏÿÿL‹t$H‰D$E1ÀE1ÉH,–H‰\$(E1ÿH‹\$`L‰l$HH‹¼$˜L‰d$@L‹l$hE1äH‰l$0H‹l$XH‰ûjÇýjGÇïj×!HÇD$ éJÿÿH‰l$(L‹t$E1ÀE1ÉH»•E1äE1ÿǾj@H‰«jH‹\$`Ǥj!L‹l$hHÇD$ H‹l$XHÇD$é»IÿÿL‹t$H‰D$E1ÀE1ÉH‰\$(L‹l$hE1äE1ÿHM•H‹\$`ÇQjCH‰>jH‹¼$˜Ç4jG!H‹l$XHÇD$ éYIÿÿH‹=R`èçûÿH‰ÇH‰¼$˜H…ÿ…]ŠÿÿH‰\$(L‹t$E1ÀE1ÉH۔H‰|$H‹\$`E1ÿH‰ÎiL‹l$hÇËiCH‹l$XǸiE!HÇD$ éIÿÿH‹=Û_HÜQH5ÝQèçûÿH‰ÇévÿÿÿHr”E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰\iÇ^iH‹¼$˜ÇHi5HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$é*HÿÿH‰\$(L‹t$E1ÀE1ÉH̓H‹\$`E1ÿÇÍhAH‰ºhL‹l$hdzh%!H‹¼$˜HÇD$ H‹l$XHÇD$éÇGÿÿH‰l$(L‹t$E1ÀE1ÉHi“H‹\$`E1ÿÇjh?H‰WhL‹l$hÇPhû H‹¼$˜HÇD$ H‹l$XHÇD$édGÿÿL‹|$8L‹t$H‰l$(HÇD$H‹\$`IƒL‹l$héeÿÿL‹t$H‰D$E1ÀE1ÉH‰l$(H‹\$`E1äE1ÿH˒L‹l$hÇÏg@H‰¼gH‹¼$˜Ç²g!H‹l$XHÇD$ é×FÿÿL‹t$H‰D$E1ÀE1ÉHy’H‰l$(E1ÿH‹\$`H‰lgL‹l$hÇig@H‹l$XÇVg!HÇD$ éŸFÿÿè+Jûÿé£éÿÿH(’E1ÀE1ÉE1äL‹l$H‹l$XE1ÿH‰gÇgH‹¼$˜Çþf°HÇD$ HÇD$HHÇD$@HÇD$0HÇD$(HÇD$PHÇD$8HÇD$HÇD$éàEÿÿH‹œ$¨é =ÿÿH‹œ$ éùJÿÿL‹´$ éRAÿÿHk‘M‰ïE1ÀE1ÉL‹t$H‰\$(H‰XfH‹\$`ÇUfCL‹l$hÇBfV!H‹l$XHÇD$ HÇD$é}EÿÿI‹vH‰´$˜H…ö„¿†ÿÿI‹FHƒHƒH‰„$¨Iƒ.tH‹T$hH‹¼$¨è½güÿI‰Å集ÿÿL‰÷è½HûÿH‹´$˜L‹´$¨H…öuÉéi†ÿÿH‰Ïè›HûÿéՆÿÿL‰çèŽHûÿé‡ÿÿL‹t$H‰D$E1ÀE1ÉH{H‰\$(E1ÿH‹\$`L‰l$H‹l$XH‰deL‹l$hÇaeDH‹¼$˜ÇKee!HÇD$ éuDÿÿH‰\$(L‹t$E1ÀE1ÉHL‰l$E1ÿH‹\$`H‰
eL‹l$hÇeDH‹l$XÇôdc!H‹¼$˜HÇD$ HÇD$é
DÿÿH‰÷èµGûÿéW‡ÿÿL‰çè¨Gûÿé
‡ÿÿèžGûÿéì†ÿÿH‰D$ L‹t$E1ÀE1ÉH‹H‰\$(E1ÿH‹\$`H‰~dL‹l$hÇ{dEH‹¼$˜Çed|!H‹l$XHÇD$éŠCÿÿH‰\$(L‹t$E1ÀE1ÉH,H‹\$`E1ÿÇ-dEH‰dL‹l$hÇd{!H‹¼$˜HÇD$ H‹l$XHÇD$é'CÿÿL‹t$H‰D$E1ÀE1ÉHɎH‰\$(E1ÿH‹\$`H‰¼cL‹l$hǹcEH‹l$XǦcy!HÇD$ éßBÿÿH‰\$(L‹t$E1ÀE1ÉHrŽH‹\$`E1ÿÇscEH‰`cL‹l$hÇYct!H‹¼$˜HÇD$ H‹l$XHÇD$émBÿÿL‹t$H‰D$E1ÀE1ÉH‰\$(L‹l$hE1äE1ÿHÿH‹\$`ÇcEH‰ðbH‹¼$˜Çæbr!H‹l$XHÇD$ éBÿÿL‰ïè³EûÿéK„ÿÿL‰ÿè¦Eûÿé2‰ÿÿL‹t$H‰D$M‰øE1ÉH“H‰\$(E1ÿH‹\$`L‰l$HH‹l$XL‰d$@L‹l$hE1äH‰obH‹¼$˜ÇibJÇ[b"HÇD$ é…AÿÿI‰ÀH‰\$(L‹t$E1ÉH'L‰l$HH‹\$`L‰d$@L‹l$hE1äH‰bH‹l$XÇ
bJH‹¼$˜Ç÷a"HÇD$ HÇD$éAÿÿL‰ÿèÀDûÿéˆÿÿH‰ï‰D$@è¯Dûÿ‹T$@é߇ÿÿH‰\$(L‹t$M‰øH‹\$`L‰l$HH‹l$XE1ÉE1ÿH†ŒL‰d$@H‹¼$˜E1äH‰vaL‹l$hÇsaIÇea"HÇD$ HÇD$é†@ÿÿL‰õHñH
ߐH‰\$(H…íL‰|$ H‹\$`H5üHDÊH‹PH‹ýL‹t$H‹81ÀèÞHûÿL‹D$ éPÿÿÿèßCûÿ鞆ÿÿH܋H‹l$XE1ÀÇÝ``H‰Ê`H‹¼$˜E1Éǽ`#éð?ÿÿH¢‹H‹l$XE1ÀÇ£``H‰`H‹¼$˜E1Éǃ`#é¶?ÿÿ©t
H‰ïè§ÜûÿéËðÿÿH‰ïèúCûÿé¾ðÿÿH‹T$H‹|$ è&Fûÿ鏲ÿÿL‹´$ éÿhÿÿL‹´$˜éNhÿÿL‰çL‰D$è
CûÿL‹D$éVÝÿÿèûBûÿé݃ÿÿH‰\$(L‹t$H‰l$ H‹\$`Hƒú”H…Òx.HƒúHŒH
ɊHEÈH‹¦H5€H‹81Àè•GûÿH§ŠE1ÀE1ÉE1äH‰ž_H‹D$ E1ÿǘ_FL‹l$hÇ…_£!H‹l$XH‰D$0H‹¼$˜HÇD$ HÇD$é”>ÿÿH‹-ºH51nH‹81ÀèGûÿë€H;愃èSFûÿH‰„$˜H…À„H‹¼$¨Hƒ/„õH‹¼$˜HDŽ$¨H‹GL‹¨àAÿÕI‰ÄH…À„«H‹¼$˜AÿÕI‰ÇH…À„ºH‹¼$˜AÿվH‰ÇèÃãûÿ…Àx6H‹¼$˜Hƒ/t!HDŽ$˜M‰ýé`‚ÿÿL‰çèeAûÿé‚ÿÿè[AûÿëØH‰\$(L‹t$M‰øE1ÉHK‰H‰l$0E1ÿH‹\$`H‰>^L‹l$hÇ;^FH‹l$XÇ(^À!H‹¼$˜HÇD$ HÇD$éA=ÿÿH‰l$ L‹t$A½H‰\$(H‹\$`H‹¼$˜Hƒ/„¤HDŽ$˜è¤äûÿ…Àu1IƒýHމL‰êH
£ˆH5ü}HEÈH‹yH‹81ÀèoEûÿHˆE1ÀE1ÉE1ÿH‰x]H‹D$ Çu]FH‹¼$˜Ç_]È!L‹l$hH‰D$0H‹l$XHÇD$ HÇD$éq<ÿÿè@ûÿéRÿÿÿH‰\$(L‹t$E1íH‰l$ H‹\$`é$ÿÿÿèö?ûÿéþÿÿL‹t$H‰D$Hé‡E1ÀH‰æ\Çè\FÇÚ\¸!H‰\$(H‹\$`H‰l$0L‹l$hE1ÉE1ÿHÇD$ H‹l$Xé<ÿÿH‹WHƒú…‘üÿÿH‹GL‹ L‹héJ€ÿÿL‰ÿèo?ûÿé€ÿÿèe?ûÿéãÿÿL‹t$H‰D$M‰øE1ÉHR‡H‰\$(E1ÿH‹\$`H‰l$0L‹l$hH‰;\H‹l$XÇ8\FH‹¼$˜Ç"\˜!HÇD$ éL;ÿÿH‰\$(L‹t$M‰øE1ÉHî†H‰l$0E1ÿH‹\$`H‰á[L‹l$hÇÞ[FH‹l$XÇË[—!H‹¼$˜HÇD$ HÇD$éä:ÿÿH‰\$(L‹t$M‰øE1ÉH††H‰l$0E1ÿH‹\$`H‰y[L‹l$hÇv[FH‹l$XÇc[•!H‹¼$˜HÇD$ HÇD$é|:ÿÿI‰ÀH‰\$(L‹t$E1ÉH†H‰l$0E1äH‹\$`H‰[L‹l$hÇ[FH‹l$XÇûZ!H‹¼$˜HÇD$ HÇD$é:ÿÿL‰ïè¼=ûÿé¶}ÿÿL‹t$H‰D$M‰èH¬…H‰\$(H‹\$`H‰¢ZǤZFÇ–Z!éÁýÿÿH‹=ÂPè×ûÿI‰ÅM…í…5}ÿÿHc…M‰ïE1ÀE1ÉH‰\$(L‹t$E1äH‰l$0H‹\$`H‰CZL‹l$hÇ@ZFH‹l$XÇ-Z‹!H‹¼$˜HÇD$ HÇD$éF9ÿÿH‹=?PH0BH51Bè|×ûÿI‰ÅéjÿÿÿèÏ<ûÿéF|ÿÿH‰×èÂ<ûÿéÏ}ÿÿf.„óúSH‰ûHƒì ‹G…Àt)òGÇGHÇGHƒÄ [Ãfïäf.ÜzfudH‹H‹8ÿPH‹òXÀH‹8f(Ðò\eòT$ÿPòT$òXÀf(ÚòYÚf(Èò\
îdf(ÁòYÁòXØf/Úds¤ë–fDf(ÃòL$òT$ò\$èU=ûÿò\$fïíòT$òYÕdòL$ò^Ãf.èf(ØòQÛwòYÓÇCòYËòSHƒÄ f(Á[Ãò\$òL$òT$èð@ûÿò\$òL$òT$ë·ff.„óúHƒìH‹H‹8ÿPò
dò\Èf(Áèª<ûÿfW¢dHƒÄÃff.„fóúUH‰ýHƒì0f.ÜcòD$‹`òt$fïÿf.÷‹<ò5´cf/t$†ð„H‹EH‹8ÿPH‰ïòD$èXÿÿÿò
€còl$òT$ò\Íf/Êr2ò
bcòD$f(Âò^Íè¯:ûÿò\$f/Ør£HƒÄ0]ÃDòD$ò*còL$ ò\Âò^D$èµ;ûÿòt$òL$ f(Ðf(ÆòT$òYÂò\Èf(Áò
çbò^Îè>:ûÿòT$ò\$ò\Úf/Ø‚$ÿÿÿHƒÄ0]ÃfDòt$ò\5êbòêbòYÆòt$(fïöf.ðf(ÈòQɇ"ò=zbò^ùò|$H‰ïèøüÿÿfïäf(ÈòD$òYÁòXNbf/àsØf(ÐH‹EòL$òYÐH‹8òYÂòD$ÿPòL$òhbò=bf(ÙòYÙòYÓòYÓò\úf/øwbòL$ è‹:ûÿòD$òD$èz:ûÿò=Òaò\|$f(ÐòL$ f(ÇòXÂò
bòYD$(òYÑòYÊòXÈf/L$†$ÿÿÿòD$(òYD$HƒÄ0]Ãf…¾ýÿÿHƒÄ0fïÀ]Ã…šýÿÿHƒÄ0]é0ýÿÿòL$èõ=ûÿòL$éÈþÿÿf.„óúHƒìòL$è=ýÿÿòYD$HƒÄÃfóúHƒìòD$èÝüÿÿò^D$èB>ûÿò\ú`HƒÄÃDóúf(ÐfïÀf.ÐzuÃHƒìòT$è™üÿÿò
Á`òT$HƒÄò^Êé8ûÿff.„óúHƒìòD$è]üÿÿfW%aèÀ=ûÿò
x`f(Ñò^L$HƒÄò\Ðf(Âé½7ûÿff.„fóúHƒìòY˜`èKüÿÿHƒÄòXÀÃfóúUfïäH‰ýf(ÐHƒì f.Ì‹Òò
`f/Ðwdf(ÁH‹}òL$òYF`òT$èÃ%fïÀòT$H‰ïHÀòH*ÀòXÂèuÿÿÿòL$fH~Àf.ÉHJ`HƒÄ ]fHnÀÃò\ÐH‰ïòL$f(Âè:ÿÿÿH‰ïòD$èúÿÿòL$fïíf(Ðf.éf(ÙòQÛw0òXÓf(ÂòYÂòXD$HƒÄ ]Ä…(ÿÿÿHƒÄ ]éàþÿÿòD$f(Áò\$è»;ûÿò\$òT$ë­ff.„fóúUH‰ýHƒìò$f(ÊòD$è°þÿÿò$$H‰ïf(ÐòYÔf(Äò$èrþÿÿò\$ò$HƒÄ]òYØò^Óf(ÂÃDóúf(Øf(ÁSH‰ûòXÁf(ëHƒì ò^èòL$ò\$ò,$èúøÿÿò\$òL$òY
¾^f(ÓòYÐòYÐòYÊf(ÂòYÂòXÁfïÉf.Èf(àòQäwXò\ÔòY$H‹ò\$H‹8òXÓò$ÿPò\$ò$f(Ëf(óòXÊò^ñf/ðsòYÛò^Úf(ÓHƒÄ f(Â[Ãò\$òT$òd$èY:ûÿò\$òT$òd$ézÿÿÿfóúHƒìò$òL$èøÿÿòYD$òX$HƒÄÄóúHƒìèÃÿÿÿHƒÄéš:ûÿf.„óúUH‰ýHƒì òD$èÉ÷ÿÿòL$H‰ïòY
€]òD$f(ÁòL$è#ùÿÿòL$fïäf(Øf.áf(ÑòQÒw&òL$f.ãòYÊf(ÓòQÒw5ò^ÊHƒÄ ]f(ÁÃòD$f(ÁòT$è\9ûÿò\$òT$fïäë³f(ÃòT$òL$è59ûÿòT$òL$먀óúòt\SH‰ûò\Ñò^Ñf(ÊèûÿÿH‹;[é6"fDóúUH‰ýHƒìèÏöÿÿH‰ïòD$èÁöÿÿòL$HƒÄ]ò^Èf(ÁÃff.„fóúUH‰ýHƒì0òü[òD$ f/ÐòL$(‚žf/Ñ‚”@H‹EH‹8ÿPH‹EòD$H‹8ÿPò
¶[ò^L$ òD$òD$èÿ2ûÿò
—[ò^L$(òD$òD$èà2ûÿòXD$ò=r[f/ør”f/”[vZò\$HƒÄ0]ò^Øf(ÃÃfDòD$ H‰ïèJ÷ÿÿH‰ïòD$òD$(è6÷ÿÿòL$HƒÄ0]òXÁò^Èf(ÁÃfDòD$è3ûÿf(ÈòD$ò^L$ òL$è‚3ûÿòL$f(Ðò^T$(òT$ f(Ùò_Úò\Ëò\$f(ÁòL$èë7ûÿò\$òT$ òD$ò\Óf(ÂèÌ7ûÿòXD$è!3ûÿòL$HƒÄ0]ò\Èf(Áé©7ûÿf„óúUH‰ýHƒìò$òD$èôùÿÿò$H‰ïf(ÐòYÑf(Áò$èÖùÿÿò\$ò$HƒÄ]òYØò^Óf(ÂÃf„óúHƒìòD$è½õÿÿòYD$HƒÄÃfóúò,ZfïÉUH‰õòH*Îf/Ðr!òYÈò%Zf/ÑrO]éy-f„ò˜Yò\ÐòYÊf(ÂòôYf/ÑrèI-H)ÅH‰è]Ðè["H)ÅH‰è]Ã]éJ"f.„óúAWAVAUI‰ÕATI‰ôUH‰ÍSH‰ûHƒìhHƒù
ØE1ÿH…ÉHƒÄhL‰ø[]A\A]A^A_ÃfDI‰×I)ÏI÷H9֏6fïíòH*îòl$fïÿòL$Nt=ò<$ëVH‹;òL$ÿSòL$f(ÐfïÀòI*Æf(éIƒîò^èf(ÅòXÂèˆ4ûÿòL$òH,ÀfïÀòH*Àò\ÈM9þtf/$w¤òD$ò\ÁòL,øL)ýM9ìLOýé6ÿÿÿfDH9ÖfïäN<.L‰èHNÖfïÀM‰þHMÆfïÛI)Îò=$XòH*âfïÒfïöI9ÎòI*ÇLOñH‰D$L‰øòH*Ñò4$òI*ÞL)ðf(Ìò^Èf(Áò\ùòYÃòX-XòD$ fïÀòH*ÀIGÿòYÂòYÁfïÉòH*ÈòYÇò^ÁòXùWf.ðf(ÐòQÒ‡6f(ÂHrIFIƒÇòYïWfïÉH‰T$8òXæWò\$PòH*ÎòT$@H‰t$òD$(fïÀòH*Àòd$XH‰D$0òYÁfïÉòI*Ïò^Áè3ûÿòL,øfïÀIOòH*Áè9H‹L$òD$fïÀL)ùòH*Áèò|$H‹D$0òXøL)øfïÀòH*Àò|$è÷H‹D$òXD$HƒÀL)ðòD$fïÀIÇH‰D$HòI*ÇèÉò\$H‹T$8òT$@òXØL9òò\$0ò\$PŽòYïVò%VòXT$ ò-áVòXIVf(Êf(ÂfTÌf.釋ò]Øò\$8f„H‹;ÿSH‹;òD$ÿSò\^VòYD$(òL$ò<$òL$ò^ÁòXD$ f/øw¿f/D$8s·èÂ1ûÿòL,øfïÀIWòH*ÂèëH‹T$òD$fïÀL)úòH*ÂèÏòt$L‰ðL)øòXðHPfïÀH‰D$@òH*Âòt$è¢òXD$H‹D$HIòD$fïÀòH*ÂèòXD$òT$0òL$ò\Ðò™Uò\ÁòYÁò\¹Uf/Ðs=f(ÁòT$ò\ÂòYÁf/UƒÛþÿÿf(Áè’-ûÿòT$òXÀf/Ђ¾þÿÿM9ìLO|$@M)üL9õMOüé¦ûÿÿfDfïäòH*âòd$éÅûÿÿ@òH,ÂfïÉò5—TfUâòH*Èf(ùòÂúf(ÇfTÆò\Èf(ÁfVÄé9þÿÿ@òd$Xf(ÜéêýÿÿH‰T$òT$0ò\$(òd$èÝ0ûÿòT$0ò\$(òd$H‹T$é’üÿÿóúéç/€óúéç€óúéÇ1€óúé—1€óúé7C€óúHƒÿ}HoTòøÃf„fïÉHƒìòH*Ïf(ÁòL$è4,ûÿòL$ò%&Xò~Sf(èòXòYáf(Óò^ÙòYáò^Ôò\ÂòªSòXÑòYÃòXòWHƒÄòYÕò\ÑòXÂÐUH‰ýSHƒì(H‹?H‹U@„ö„×@¶ÆH
<d@¶öƒèòñfH~ÃH˜òÁòT$ò\ÂòD$ÿÒfHnãfW%uSòD$f(Äè0ûÿòL$òYL$òT$f(ØfHnÃòXÊf/ÙvHƒÄ([]Ãf.„H‹}ÿUH
²kfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
ŒsH;ÁrµHƒÄ(H‰ï[]éÿÿÿ„ÿÒò
6Rò\Èf(ÁèÉ*ûÿò
QŸHƒÄ([]ò\Èf(ÁÃfUH‰ýSHƒìH‹?H‹UóD$@„ö„É@¶ÆH
W@¶öƒèó±H˜óóT$ó\ÂóD$ÿÒód$W%$ ‰Ã(ÄÁë	èG(ûÿfïÉóT$ó*ËóY
 (ØóD$óYL$óXÊ/Ùv	HƒÄ[]ÃfH‹}ÿUH
’Zfï	ÂÑèÁê	¶ð¶Àó*ÂóYH
q^;rÃHƒÄH‰ï[]éÿÿÿfDÿÒfïÉóžŸÁè	ó*ÈóY
‹Ÿó\Áè"*ûÿó
‚ŸHƒÄ[]ó\È(ÁÃff.„óúH‰øHƒìH‹?ÿPfïÀÁè	ó*ÀóY<ŸHƒÄÀóúH‹GH‹?ÿàóúH‰øHƒìH‹?ÿPò
‡Pò\Èf(Áè)ûÿfWQHƒÄÃff.„fóúH…ö~WATL$òUH‰ýSH‰Óf„H‹}HƒÃÿUò
-Pò\Èf(ÁèÀ(ûÿfW¸PòCøL9ãuÎ[]A\Ãf„Ãff.„@óúH‰øHƒìH‹?ÿPfïÉóWžÁè	ó*ÈóY
Džó\ÁèÛ(ûÿW$žHƒÄÃff.„@óúH…ö~7ATL$òUH‰ýSH‰Óf„H‹}HƒÃÿUòCøL9ãuë[]A\ÃfDÃff.„@óúUH‰ýH‹?ÿUH
khfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
EpH;Ás]ÃDH‰ï]éÏûÿÿff.„@óúH…ö~wAVI‰ÖAUL,òATL%hUH-ûoSH‰û€H‹;ÿSfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòAYÄH;TÅrH‰ßè[ûÿÿòAIƒÆM9îu½[]A\A]A^Ã@Ãff.„@óúUH‰ýH‹?ÿUH
{Wfï	ÂÑèÁê	¶ð¶Àó*ÂóYH
Z[;s]ÃH‰ï]éüÿÿ€óúAWL=3‹AVL5*“AUI½ÿÿÿÿÿÿATUH-ƒSH‰ûHƒì(鉀H‹;H‹C…Ò„ЃêòTÍòL$HcÒòDÕòT$ò\Âò$ÿÐòL$ò5ҚòD$òYñf(ÆòYÁè³*ûÿòT$òL$f(Øò$òYD$òXÂf/Øw?H‹;ÿSfïÉI‰Ä¶È¶ÐIÁì	L‰æL!îòH*ÎòAYÏöÄtfW
¹MI;4΃?ÿÿÿHƒÄ(f(Á[]A\A]A^A_Ã@H‹;H‹CÿÐò%çLò\àf(Äèz%ûÿò
šH‹;òYÈò$ÿSò-»Lò\èf(ÅèN%ûÿò$fWAMf(ÑòXÀòYÑf/Âv—òX
ǙA÷Ä„kÿÿÿfW
Mé^ÿÿÿff.„fóúH…öŽÛAWHòL=v‰AVI‰þAUATL%fUSH‰ÓHƒì8H‰D$(„I½ÿÿÿÿÿÿ酐I‹>I‹F…Ò„èƒêòAôòL$HcÒòAÔòT$ ò\ÂòD$ÿÐòL$ò5™òD$òYñf(ÆòYÁèò(ûÿòT$ òL$f(ØòD$òYD$òXÂf/ØwGI‹>AÿVfïÉH‰Å¶ð¶ÐHÁí	H‰ïL!ïòH*ÏòAY÷öÄtfW
öKHH;<ðƒ5ÿÿÿòHƒÃH;\$(…ÿÿÿHƒÄ8[]A\A]A^A_ÃI‹>I‹FÿÐò%Kò\àf(Äè¢#ûÿò
2˜I‹>òYÈòL$AÿVò-áJò\èf(Åèt#ûÿòL$fWfKf(ÑòXÀòYÑf/Âv”òX
ì—÷Å„[ÿÿÿfW
8KHƒÃòKøH;\$(…dþÿÿéMÿÿÿ€Ã€óúAVI‰þAUL-ŽwATL%…{UH-}sSHƒìéŒI‹>I‹F…Ò„؃êóLHcÒóD•óL$ó\ÁóD$ÿÐò%M—fïÒóZT$‰ÃòYâÁë	f(ÄòYÂè%'ûÿóL$f(ÐfïÀó*ÃóYK˜óYD$óXÁóZÀf/ÐwCI‹>AÿVfï	öȶÐÁë	ó*ÃóAYDóD$öÄt
Wô—óD$A9Œ†4ÿÿÿóD$HƒÄ[]A\A]A^ÐI‹>I‹FÿÐfïÀó-ϗÁè	ó*ÀóY¼—ó\è(ÅèP"ûÿó
´—I‹>óYÈóL$AÿVfïÀó5—Áè	ó*ÀóY|—ó\ð(Æè"ûÿóL$WS—(ÑóXÀóYÑ/†oÿÿÿóX
W—óL$€ç„DÿÿÿW
!—óL$é2ÿÿÿfDóúUH‰ýHƒì0f.ŒHòD$‹Pò|$fïÛf.û‹,ò=dHf/|$†à„H‹}ÿUH‰ïòD$èëøÿÿò
3Hòt$òT$òD$ò\Îf/Êr'ò
Hf(Âò^Îèbûÿò|$f/ør¦HƒÄ0]ÃòèGòL$ ò\Âò^D$ès ûÿòd$òL$ f(Ðf(ÄòT$òYÂò\Èf(Áò
¥Gò^ÌèüûÿòL$òT$ò\Êf/È‚2ÿÿÿHƒÄ0]Ã@òl$ò\-ªGòªGòYÅòl$ fïíf.èf(ÈòQɇ"ò5:Gò^ñòt$(H‰ïèùÿÿfïÛf(ÈòD$(òYÁòXGf/ØsØf(ÐòL$H‹}òYÐòYÂòD$ÿUòL$ò+Gò=ÓFf(ÙòYÙòYÓòYÓò\úf/øwbòL$èNûÿòD$òD$è=ûÿò-•Fò\l$f(ÐòL$f(ÅòXÂòÍFòYD$ òYÑòYÊòXÁf/D$†'ÿÿÿòD$ òYD$HƒÄ0]ÃD…ÎýÿÿHƒÄ0fïÀ]Ã…ªýÿÿHƒÄ0]éÐöÿÿòL$èµ"ûÿòL$éÈþÿÿf.„óúUH‰ýHƒì .q”óD$‹ól$fïä.ì‹^ó-J”/l$ó=9”ó|$†íDH‹}ÿUfïÒH‰ïÁè	ó*ÐóYT$óT$è"÷ÿÿó
þ“ót$óT$óD$ó\Î/Êr/ó
ۓ(Âó^Îè{ ûÿó|$/ør˜HƒÄ ]Ãf.„ó¬“óL$ó\Âó^D$è3ûÿód$óL$(Ð(ÄóT$óYÂó\È(Áó
l“ó^Ìè ûÿóL$óT$ó\Ê/È‚ÿÿÿHƒÄ ]Ãót$ó\5F“óB“óYÆót$fïö.ð(ÈóQɇ<ó=“ó%ü’ó^ùód$ó|$@H‰ïèðùÿÿfïä(ÈóD$óYÁóX˒/àsÚ(ÐóL$H‹}óYÐóYÂóD$ÿUóL$fïÀó®’Áè	ó=‹’(Ùó*ÀóYÙóYD$óYÓóYÓó\ú/øw_óL$èúûÿóD$óD$èéûÿó-E’ó\l$(ÐóL$(ÅóXÂóC’óYD$óYÑóYÊóXÁ/D$†ÿÿÿóD$óYD$HƒÄ ]Ã@…œýÿÿHƒÄ fïÀ]Ã…yýÿÿHƒÄ ]éðôÿÿóL$èµûÿóL$é®þÿÿf.„óúH‰øHƒìH‹?ÿPHƒÄHÑèÀóúH‰øHƒìH‹?ÿPHƒÄÑèÄóúëºf.„óúH‹GH‹?ÿàóúf.ÄBº›ÀE„À…af.	f(Ø›ÂD„À…GUSHƒì(ò-ñf/èƒf(Ð1íf(Âò%mBHnGò
¶òYÂHPÀò^àòšë„òHƒèòYÌòXÈH9Âuëf(Âò\$òL$òT$è°ûÿòT$òL$f(àò5`ò\$ò^Êf(Âò\:Bf/óòYÄòX
BòXÈò\ÊrFH…í~A»fDò\°AòL$HƒÃf(ÂòT$è7ûÿòL$H9ëòT$ò\È~ÊHƒÄ(f(Á[]Àf(ÅfïÒò\ÃòH,èòH*ÕòXÓéØþÿÿfïÉf(ÁÀóúHƒìò$òL$èóÿÿòYD$òX$HƒÄÄóúUH‰ýHƒìH‹?òD$ÿUH
!ZfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
ûaH;ÁrH‰ïèíÿÿòYD$HƒÄ]ÐóúHƒìH‰øH‹?ò$òL$ÿPòYD$òX$HƒÄÃ@óúHƒìòL$èÍ÷ÿÿòYD$HƒÄÃfóúHƒìóL$èMúÿÿóYD$HƒÄÃfóúUH‰ýHƒì ò-,@òD$f/èòL$rf/ésFòD$H‰ïèf÷ÿÿH‰ïò$òD$èS÷ÿÿò$HƒÄ ]òXÁò^Èf(ÁÃ@fïäf/ÄwnH‹}ÿUH‹}ò$ÿUò$ò
®?ò^L$òD$f(ÃèùûÿòT$ò
‹?ò^L$ò$f(Âè×ûÿòX$ò=j?f/ør–ëŠfò<$HƒÄ ]ò^øf(ÇÃff.„fóúHƒìòYˆ?è‹öÿÿHƒÄòXÀÃfóúUH‰ýHƒìò$òD$èÄÿÿÿò$H‰ïf(ÐòYÑf(Áò$è¦ÿÿÿò\$ò$HƒÄ]òYØò^Óf(ÂÃf„óúUH‰ýHƒìèŸðÿÿH‰ïòD$è‘ðÿÿòL$HƒÄ]ò^Èf(ÁÃff.„fóúUH‰ýHƒìH‹?òD$ÿUH
‘WfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
k_H;ÁrH‰ïèýêÿÿò^D$èbûÿò\>HƒÄ]Ã@óúUfïÉH‰ýHƒìf.ÁzuHƒÄf(Á]ÃfDò
à=H‹}ò^ÈòL$ÿUH
øVfïÀòL$H‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
Ì^H;ÁrH‰ïè^êÿÿòL$HƒÄ]éÞûÿff.„óúUH‰ýHƒìò\=H‹?ò^ÐòT$ÿUH
uVfïÀH‰ÂHÁèHÁê¶ð¶ÀòH*ÂòYÁH
O^H;ÁrH‰ïèáéÿÿfW©=èDûÿòü<òL$HƒÄ]ò\Øf(ÃéDûÿ@óúSH‰ûHƒìò$òL$ë€fïÒf/ÂwFH‹;ÿSf/=ræò
þ‰ò\Èò\Èf(Áè-ûÿòYD$ò$HƒÄ[ò\Øf(ÃÃ@òXÀèûÿòYD$òX$HƒÄ[ÃfDóúSH‰ûHƒìò$òL$f„H‹;ÿSò"<ò<ò\Ðf/Úf(ÂvÜè§ûÿfWŸ<èšûÿòYD$ò$$HƒÄ[ò\àf(ÄÐóúSH‰ûHƒìò$òL$f„H‹;ÿSfïÒf/Âvðò
¨;ò\Èò^Áè;ûÿòYD$òX$HƒÄ[Ãf.„óúHƒìè3úÿÿHƒÄéªûÿf.„óúHƒìH‰øH‹?ò$ÿPò
B;ò\Èf(ÁèÕûÿòYe;fïÒf.Ðf(ÈòQÉwò$HƒÄòYÁÃòL$è¢ûÿòL$ëßf.„óúUH‰ýHƒì òD$èÉìÿÿòL$H‰ïòY
 ;òD$f(ÁòL$èòÿÿòL$fïäf(Øf.áf(ÑòQÒw&òL$f.ãòYÊf(ÓòQÒw5ò^ÊHƒÄ ]f(ÁÃòD$f(ÁòT$èüûÿò\$òT$fïäë³f(ÃòT$òL$èÕûÿòT$òL$먀óúATSH‰ûHƒìXf/‚‡ò$s{ò$$f.%&:zuE1äHƒÄXL‰à[A\Ã@ò$fWs:E1äèûÿò
Ã9òD$ëIƒÄò$H‹;ÿSò$òYÈf/L$wàHƒÄXL‰à[A\ÃDf(àf(ÐfïÀòQÒf.ÄòT$‡ò$èþûÿòD$(òD$òYʆòXʆf(øòD$òYf(Ïò\
Ćò\=|†f(èò¸†ò\- †ò^Áò
¼†f(õòl$0òXõòt$HòX†òD$8òІò^Çò\ÈòL$@@H‹;ÿSH‹;f(Øò\9ò\$ÿSò\$ò
ì8òD$f(ÃfT¢8ò\ÈòD$Hò^ÁòL$òXD$òYÃòX$òX†èBûÿòL$f/
†òL,àòT$ròl$@f/êƒ8þÿÿM…äˆ^ÿÿÿò5î…f/ñv
f/чFÿÿÿf(ÂòL$ è—ûÿòD$òD$8è†ûÿòL$ òl$0òD$òD$òYÉò^éòXÅè]ûÿòt$ID$òXt$f(Èf(Æò\ÁfïÉòI*ÌòYL$(ò\$òD$fïÀòH*ÀòL$è¢ôÿÿòL$ò\Èf/L$‚œþÿÿHƒÄXL‰à[A\Ãf(ÄèèûÿéÛýÿÿóúò47UH‰ýò\Ñò^Ñf(ÊèŸöÿÿH‰ï]éöüÿÿfDóúAWfïÉAVòH*ÎAUI‰ÕATI‰ôUSH‰ûHìè‹ò„$€…Àt
H9r„±	òÈ6M‰eò¼$€AÇEf(êò\ïòA}ò|$Pf/ïòl$H†W	ò\$Pòl$HòT$òYËòA]òAm òXÙòL$òA](f(Ãò\$è>ûÿòL$òYL$HòH,èfïÀò\$f(ÑòL$hòQÉf.ÂI‰m0òT$‡²	òY
éƒò-!6ò5‰6f(ÁòL$HòY
σò\Áf(àf(ÈfTåf.ô‡]fïÀò=6òH*Åf(÷òXÏò|$(òXðf(áòL$òXˆƒòAM8f(îòAu@ò´$ˆò\éòXÎf(ñòL$xòAMPò
Wƒòl$8ò^ÈòMƒòAmHòXÁòL$PòYÍfD(øòD$@òAEXf(Ãò\Åf(ëò\éf(Ïò^ÅòYÈòXÊòYÈf(ÆòYt$Hò\Ãf(éòL$`ò^ÆòAM`òYøf(ÏòXÊòYÈfA(ÇòAXÇòXÐfA(Çò^ÅòL$pòAMhòYÔòT$òAUpòD^ùòXÂf(ÐòD$XòAExfA(ÇòXÂòD$ òA…€M‰åI)íIEH‰„$@H‹;ÿSòL$ H‹;òYÈòL$ÿSòL$f/L$f(І†f/L$‡*òt$òl$@fïäòH*åòý3ò\ÎòYÕò\$0f(Áò^Åf(ÊòXËòXD$8ò\àòXd$(fT%ç3ò^æò\Ìf/ËòL$‡WÿÿÿèšûÿòL$ò\$0òL,ðM‰÷I)ïL‰úHÁú?H‰ÐL1øH)ÐHƒø~#òD$hòYD$(fïäòH*àò\Ãf/ćêID$fïäòt$Pò^t$HòH*àòYæI9îCŒ}f/ˇËþÿÿò¼$€M)ôf/|$(MGôHÄè[]L‰ðA\A]A^A_Äfï8f.ÐA›ÇDEøf/L$Xwkf(ÂòL$0òT$è^ûÿò^D$`òXD$8èûÿòL,ðM…öˆGþÿÿE„ÿ…>þÿÿòL$0ò\L$òT$ò|2òYÊòYL$`éÔþÿÿDf(ÂòL$0òT$èó
ûÿò\$xò^D$pò\Øf(Ãè*ûÿòL,ðM9ôŒÔýÿÿE„ÿòT$òL$0…¿ýÿÿò\L$Xò	2òYÊòYL$péaþÿÿf.„HEI9ÆŒ¶þÿÿfïÀf(üòH*ÀHƒÀò^øf(Çò\ÆòYØI9Æ}ÚéˆþÿÿDIFH9èvþÿÿfïÀf(üòH*ÀHƒÀò^øf(Çò\Æò^ØH9è~ÚéHþÿÿDf(Äò^ü1L‰øfïÒòX]ò\$hI¯ÇòYÄòXOò^ãH÷ØòH*Ðò^ÃòXD$(òYàf(ÃòXÃò^Ðf(Áòd$0òT$è¤	ûÿòT$òd$0f(Èf(Âò\Äf/Á‡¿ýÿÿòXâòL$0f/̇vüÿÿIFfEïÉfïÿòL*ÈHEfEïÛòH*øID$fïÛòL*œ$L)ðòH*ØòDŒ$¨fE(áòEYáf(Çf(×ò¼$¸òA^ÁfE(ëòDœ$ òEYëfD(Ãò\$òDYÃòY×òD¤$ØòD¬$ÈòD„$Àò”$ÐèµûÿòDœ$ ò„$˜òDœ$°fA(óò^t$f(Æè„ûÿòT$HòDŒ$¨ò„$ ò|$òY|$PòAYÑf(Çò^ÂèMûÿò-Å}òD´}ò”$ÐfD(øò%®}fA(òò©}f(ÍòD¬$ÈòD¤$Øò^òòD„$Àò¼$¸òDœ$°òDŒ$¨f(Æf(õò\ðf(Æf(ôò^Âò\ðf(Æf(óò^Âò\ðf(Æfïöò^Âò.}òI*õòXt$(òY´$ fD(òòD\ðò„$˜òY„$ˆòD^÷ò=ù|òXðfïÀòI*ÇòAYÇòXÆfA(òòA^õòD^÷ò\Îf(ñf(ÌòA^õòAXÆò\Îf(ñf(ËòA^õò\Îf(ñf(ÍòA^õfD(êòD\îfA(òòA^ôòE^Ðò\Îf(ñf(ÌòA^ôòA\êòA^èò\Îf(ñf(ËòA^ôò\åòA^àò\Îf(ñf(ÊòA^ôò\ÜòE^ëò\Îf(ñòL$0òA^ñfE(ÝòA^ØòD^ßò\Óò^T$ò^÷òAXÃò^×òXÆòXÂf/ȇQùÿÿéúÿÿ@ò„$ˆòYT$ò\ÂòXÁèt	ûÿòL,ðéWúÿÿf.„òH,ÀfïäfUèòH*àf(üòÂøf(ÏfTÊò\áf(ÌfVÍéo÷ÿÿ@f(úòl$Pò\ýò|$Héöÿÿf.BŠDöÿÿ…>öÿÿòR8òzòj òZxòT$òR@òYÏH‹j0ò|$Pò=1-ò”$ˆòRHòl$HòT$8òRPòYÍò\$XòT$xòRXò|$(òT$@òR`òT$`òRhòL$hòT$pòRpòT$ò’€òT$ éñ÷ÿÿòD$hò\$òL$èèûÿòT$ò\$òL$é öÿÿóúAUI‰ÕATI‰ôUH‰ýSHƒìH‹òD$…Àt
H9r„SòT$ò=õ+fïÉM‰eòI*ÌAÇEò\úòAUòA} f(ÇòL$ò|$è[ûÿòL$òYÁòL$ èæûÿòT$òL$ ò\$òD$òYÑòAEfïÀòYÚòAUXòXn+f.Ãf(ãòQä‡ÜòY%ÌxòXÔf/ц.òH,ÙI‰]0H‹}ÿUòd$E1Àf/Äf(ÌwëYH‹}ÿUòL$E1Àf/ÁvBI@H9Ã|áL‰âfïÒò\ÁL)ÂI‰ÀòH*ÒòYT$òYÊfïÒòH*ÐòYT$ò^Êf/Áw¾HƒÄHL‰À[]A\A]Ãf.„f.BŠ¢þÿÿ…œþÿÿòr H‹Z0òt$òròt$éCÿÿÿf(ÃòT$8òd$0òL$(ò\$ èÿûÿòd$0òY%ÉwòT$8òL$(ò\$ òXÔf/чëþÿÿf(ÃòT$ èÂûÿòT$ @òH,ÚéÍþÿÿff.„óúH…ö„ƒfïÉ”Áf.Á›ÀEDÀunò.*fïÉUH‰õòH*Îf/ÐròYÈò'*f/ÑrI]é{ýÿÿò )ò\ÐòYÊf(Âòü)f/Ñr&èQýÿÿH)ÅH‰è]Ãf„1ÀÃD]éRòÿÿfèKòÿÿH)ÅH‰è]Ãóúf.ÉŠÒUfïäH‰ýf(ÐHƒì f.Ì‹¨ò )f/ÐvZò\ÐH‰ïòL$f(ÂèÄéÿÿH‰ïòD$èæÚÿÿòL$fïíf(Ðf.éf(ÙòQÛwsòXÓf(ÂòYÂòXD$HƒÄ ]ÃfòY
)H‰ïòT$f(Áè†îÿÿfïÀòT$HƒÄ HÀH‰ï]òH*ÀòXÂéCéÿÿ…RÿÿÿHƒÄ ]é0éÿÿòÈ(ÃòD$f(Áò\$èòûÿò\$òT$égÿÿÿóúUH‰ýHƒìò$f(ÊòD$èÐþÿÿò$$H‰ïf(ÐòYÔf(Äò$èÂèÿÿò\$ò$HƒÄ]òYØò^Óf(ÂÃDóúf(Øf(ÁSH‰ûòXÁf(ëHƒì ò^èòL$ò\$ò,$èšÙÿÿò\$òL$òY
þ'f(ÓòYÐòYÐòYÊf(ÂòYÂòXÁfïÉf.Èf(àòQäwUò\ÔòY$ò\$H‹;òXÓò$ÿSò\$ò$f(Ëf(óòXÊò^ñf/ðsòYÛò^Úf(ÓHƒÄ f(Â[Ãò\$òT$òd$èœûÿò\$òT$òd$뀄óúSHƒì@f.ÉòD$8òL$ ŠQòÁ&H‰ûf/Á‡tòôtòt$ f/Ɔ„òŒ&òD$ò^ÆòXÆfïöòt$òD$0ë-@f(ùò^øf(Çè÷þúÿòXD$òL$ò\Áf/D$syH‹;ÿSòYytèÿúÿò\$0H‹;f(ËòYÈòXÃòXL$f(áòL$ ò^àò\Üòd$(òYËòL$ÿSòL$ò>sò\ÑòYÑò\Ðf/T$‚^ÿÿÿH‹;ÿSòD$òD$(èïþúÿf(Ðòû%f/D$vfW3&òXT$8ò
Ýsf(ÂfT™%òT$òX³sèþúÿò|$òT$ò\šsf/úv.fWä%HƒÄ@[ÃfDH‹?ÿSòXÀò\&%òYfsHƒÄ@[Äòt$ òj%fïÿò|$òYÆòYÆò5è$òt$òXÆf.øf(ÈòQÉwmòXL$ò|$f(ÁòXÁf.øf(ÐòQÒw^ò\Êò|$ f(Áf(ÏòXÏò^Áf(ÈòYÈòXÀòXL$ò^ÈòL$0é4þÿÿòÈ$éEÿÿÿòL$èøûÿòL$ë€òL$(òT$èßûÿòL$(òT$냐óúSH‰ûHƒì0ò5$òD$ ò\ðf(Æè©üúÿòD$(H‹;ÿSf/D$ òD$ƒ¶H‹;ÿSòYD$(èûÿòÒ#òT$ò\Øf(ÃòYÃf/Ârzf(ÂòT$ò\$èEüúÿò\$òD$f(Ãè0üúÿòL$ò^Èò~#òXÁèeÿúÿòH,ÀH…ÀžÁŽaÿÿÿòT$fïöf.Ö›ÂEфÒ…EÿÿÿHƒÄ0[Ãff/Ӹrí¸ëæff.„óúHƒìò#H‰øH‹?òD$ò\Øò$ÿPòL$ò$¸f/Ávf(ÑfDòYËHƒÀòXÑf/ÂwîHƒÄÐóúHƒìH‰øH‹?ò$ÿPò¢"ò\Ðf(Âè5ûúÿò"ò\$òD$f(ÃèûúÿòL$ò^Èf(Áè&ÿúÿHƒÄòH,ÀÃff.„óúf/„"r
éÿÿÿDésÿÿÿóúSH‰ûHƒì ò\"f(ÈòD$òjoèeùúÿòD$€H‰ßè@ÑÿÿH‰ßò$è3Ñÿÿò%Û!ò\$$òD$ò
Ø!ò^L$f(Äèùúÿò=A"f(Ðf(Øò	pfTÂf.øv;òH,ÂfïÀò=†!òH*Àf(ÈòÂÊf(ÐòÔofUÃfTÏò\ÑfVÐf/´o‡Vÿÿÿò5F!f/ò‡Dÿÿÿf(ÆòL$ò$ò^ÂòXÆè€øúÿòL$ò$f(Øò\	!òl$òYÊò^ÅòYËf(Ýò\ë ò^Ëf/Á‚åþÿÿHƒÄ òH,Â[Ãfóúf(éf(ÚHƒì8H‰øò\èò\ØòT$H‹?òL$òD$(f(õò\$ò^óòl$ ò4$ÿPò4$ò\$òL$òT$f/ðr7òl$ fïÉòd$(òYÝòYÃf.Èf(ÐòQÒwmòXÔHƒÄ8f(ÂÃ@f(úò\ùò
  ò\ÈòYßf(ÁòYÃfïÛf.Øf(ÈòQÉw
ò\ÑHƒÄ8f(ÂÃòT$ò$èüúÿòT$ò$ëÖòd$ò$èdüúÿòd$ò$ésÿÿÿ@óú1ÀH…ö„‘ATI‰ôIÑìUH‰õI	ôSH‰ûL‰àHÁèI	ÄL‰àHÁèL	àI‰ÄIÁìL	àI‰ÄIÁìI	ÄL‰àHÁè I	ĸÿÿÿÿH9ÆwfH‹;ÿSD!àH9Årò[]A\ÃDH‹;ÿSL!àH9ÅsèH‹;ÿSL!àH9ÅräëØf.„Ãff.„@óúAWAVAUATI‰ôUSHƒìH…ÒtD¸ÿÿÿÿH‰ýH‰óH‹?I‰ÖI‰ÍH9Âw=H‹EA‰ÔE„Àué¬@H‹}H‹EÿÐD!èA9ÄrîL$HƒÄL‰à[]A\A]A^A_ÃH‹EHƒúÿ„ÂE„ÀuULbÿÐI÷äH‰ÆH‰×I9Äv+L‰ð1ÒH÷ÐI÷ôI‰ÕH9ÖsfDH‹}ÿUI÷äH‰×I9ÅwîH‰øë“f„H‹}H‹EÿÐL!èI9ÆrîL$ésÿÿÿDDjÿÐA‰ÄM¯åE9åv)D‰ð1Ò÷ÐA÷õA‰ÖA9Ôs@H‹}ÿUA‰ÄM¯åE9æwíIÁì IÜé'ÿÿÿf„ÿÐIÄéÿÿÿfDóúAWAVAUATA‰ôUSHƒì…ÒtiI‰þ‰ÕH‹?I‹Fƒúÿ„‚‰óA‰ÍE„ÀugJ‰L$ÿÐD‹l$A‰ÄM¯åE9åv)‰è1Ò÷ÐA÷õA‰×A9ÔsDI‹>AÿVA‰ÄM¯åE9çwíIÁì AÜHƒÄD‰à[]A\A]A^A_Ã@I‹>I‹FÿÐD!è9ÅrðD$ëÔfÿÐAÄëËf„óúAW‰ðAVAUATUSHƒì‰t$L‹t$Pf…Ò„æA‹I‰üA‰ÕL‰Ëfƒúÿ„‰ÕA‰ÏE„À…¦R…À…‰T$H‹?AÿT$‹T$A‰ÇA·D·úA¯Ïf9ʆA÷ÕA·řA÷ÿA‰Õf9Ñr*é…DI‹<$AÿT$A‰ÇA·A¯ÏfA9Ív`‹…ÀtÚAÁ.ƒ+ëãI‹<$AÿT$A‰ÇA·D!øf9Ås‹…ÀtÜAÁ.ƒ+A·D!øf9ÅrçfD$HƒÄ[]A\A]A^A_ÃD·D$ÁéHƒÄ[]ÈA\A]A^A_À…Àu<H‹?AÿT$A‰Ç·D$fAHƒÄ[]A\A]A^A_ÃAÁ.Aƒ)éñþÿÿAÁ.Aƒ)ëËfDóúAW‰ðAVAUATUSHƒì‰t$L‹d$P„Ò„éA‹I‰ýA‰ÖL‰ˀúÿ„‰ÕA‰ÏE„À…©Dz…À…H‹?AÿUA‰$ÇD‰øAö$$‰ÁA8dž©A÷ÖA¶ÿA¶ƙ÷ÿA‰Ö8Ñr,鏀I‹}AÿUA‰$ÇD‰øAö$$‰ÁA8Ævh‹…ÀtÚAÁ,$ƒ+ëâ„I‹}AÿUA‰$ÇA¶$D!ø@8Ås‹…ÀtÛAÁ,$ƒ+A¶$D!ø@8ÅråD$HƒÄ[]A\A]A^A_öD$fÁéHƒÄ[]ÈA\A]A^A_ÃfD…Àu<H‹?AÿUA‰$ǶD$A$HƒÄ[]A\A]A^A_ÃAÁ,$Aƒ)éçþÿÿfAÁ,$Aƒ)ëÊDóúU‰ðSHƒìH‹l$ „ÒtA‹H‰ùL‰˅ÀtÑmAƒ)‹EƒàHƒÄ[]Ãf.„H‹?ÿQ‰EÇëØff.„@óúAWAVAUATUH‰õSL‰ËHƒìH…Òu3IÉH…É~f.„H‰+HƒÃH9ØuôHƒÄ[]A\A]A^A_ÃD¸ÿÿÿÿI‰ÿI‰ÕH9‡ŒE„À…H…É~ÊIÉDbH‰$‰ÐM‰æ÷ЉD$€I‹?AÿW‰ÁI¯ÌD9ñs(‹D$1ÒA÷öA‰Õ9ÑsfDI‹?AÿW‰ÁI¯ÌA9ÍwîHÁé HƒÃHéH‰KøH9$u±HƒÄ[]A\A]A^A_ÃfHƒúÿ„ôE„À…H…ÉŽ0ÿÿÿIÉLbI÷ÕH‰$DI‹?AÿWI÷äH‰ÆH‰×L9às%L‰è1ÒI÷ôI‰ÖH9ÖsI‹?AÿWI÷äH‰×I9ÆwîH‰øHƒÃHèH‰CøH;$u²éÉþÿÿDI‰ÔIÑìI	ÔL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄH…ÉŽŠþÿÿM4Éf.„I‹?AÿWD!àD9èwñHèHƒÃH‰CøI9ÞuáHƒÄ[]A\A]A^A_ÃH…ÉŽEþÿÿM$ÉDI‹?HƒÃAÿWHèH‰CøL9ãuéé þÿÿI‰ÔIÑìI	ÔL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁè I	ÄH…ÉŽÜýÿÿM4É@I‹?AÿWL!àI9ÅrñHèHƒÃH‰CøI9Þuáé°ýÿÿ@óúAWAVAUATU‰õSL‰ËHƒì…Òu-I‰H…É~@‰+HƒÃH9ØuõHƒÄ[]A\A]A^A_ÃfDI‰ÿA‰Ճúÿ„‰E„À…¸H…É~ÎI‰A÷ÕDbH‰$M‰æD‰l$@I‹?AÿW‰ÁI¯ÌD9ñs(‹D$1ÒA÷öA‰Õ9ÑsfDI‹?AÿW‰ÁI¯ÌA9ÍwîHÁé HƒÃé‰KüH;$u³HƒÄ[]A\A]A^A_Ã@H…ÉŽJÿÿÿM$‰I‹?HƒÃAÿWè‰CüL9ãuëHƒÄ[]A\A]A^A_Ã@‰ÐI‰ÄIÑìI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèI	ÄL‰àHÁèA	ÄH…ÉŽßþÿÿM4‰„I‹?AÿWD!àA9ÅrñèHƒÃ‰CüI9ÞuãHƒÄ[]A\A]A^A_Ã@óúAWAVAUA‰õATUSL‰ËHƒìf…Òu3IIH…É~f.„fD‰+HƒÃH9ØuóHƒÄ[]A\A]A^A_Ã@I‰ÿfƒúÿ„³E„À…òH…É~ÒDrII÷Ò1ÿH‰$·ÂA·î1ö‰D$…ÿuz@I‹?AÿW¿‰Æ·È¯ÍfD9ñs@‹D$™÷ýA‰Ôf9Ñs1…ÿtÁî‰é1ÿ¯ÎfA9ÌvI‹?AÿW·ȉƯÍfA9ÌwۿÁéHƒÃDéf‰KþH;$„;ÿÿÿ…ÿtŠÁî1ÿ‰ñ뒐H…ÉŽ$ÿÿÿI,I1Ò1Àë'DI‹?AÿWºALHƒÃf‰KþH9Ý„óþÿÿ…ÒtÚÁè1Òëß·ÂA‰ÔH‰ÅHÑíH	ÅH‰èHÁèH	ÅH‰èHÁèH	ÅH‰èHÁè	ÅH…ÉްþÿÿM4I1À1É…Ét@Áè‰ê1É!ÂfA9ÔsI‹?AÿW‰ê!ÂfA9Ôrà¹DêHƒÃf‰SþI9ÞuÃHƒÄ[]A\A]A^A_Ãff.„óúAWAVAUA‰õATUSL‰ËHƒì„Òu,I	H…É~Dˆ+HƒÃH9ØuôHƒÄ[]A\A]A^A_ÃDI‰ÿ€úÿ„ÜE„À…H…É~Ò¶ÂI,	1ÿ1ɉD$Dr…ÿ…¤I‹?AÿW¿‰ÁD‰ðöá‰ÆA8Ævf¸ÿ+D$E¶ޙA÷ûA‰Ô@8Ör2ëKI‹?AÿW‰ÁD‰ðöá‰ÆA8Ć_ÁéD‰ð¿öá‰ÆA8Äv…ÿtÏÁéD‰ðƒïöá‰ÆA8ÄwêD‰ðHƒÃfÁèDèˆCÿH9Ý„ÿÿÿ…ÿ„_ÿÿÿÁéƒïébÿÿÿ@H…ÉŽûþÿÿI,	1Ò1Àë&DI‹?AÿWºALHƒÃˆKÿH9Ý„Ëþÿÿ…ÒtÛÁèƒêëß¶ÂA‰ÔH‰ÅHÑíH	ÅH‰èHÁèH	ÅH‰èHÁè	ÅH…ÉŽ‘þÿÿM4	1À1Éë$I‹?AÿW‰ê!ÂA8ÔsPÁè‰ê¹!ÂA8Ôs…ÉtÛÁè‰êƒé!ÂA8Ôrí@DêHƒÃˆSÿI9ÞuÚHƒÄ[]A\A]A^A_Ãf.„DêHƒÃ¹ˆSÿI9Þu­ëÑf.„¿éÆþÿÿfDóúH…É~oAV1ÀA‰ÖAUA‰õATI‰ü1ÿUI,	SL‰Ëë'f„I‹<$AÿT$¿‰CáˆHƒÃH9ÝtD‰éE„ötí…ÿtÖÑèƒïëÝ€[]A\A]A^ÀÀóúAWI@ÿI‰÷AVAUATUH‰ÕSHƒì(L‰D$H‰D$H…À~fò
mI‰üI‰Î1ÛM‰ÍëòL$òA\ÞHƒÃH9\$t?òAÞL‰þL‰êL‰çòL$ò^Áè+æÿÿI)ÇH‰DÝM…ÿ¾HƒÄ([]A\A]A^A_ÃH…ö~ìH‹D$L‰|ÅøHƒÄ([]A\A]A^A_ÃóúHƒìHƒÄà while calling a Python objectNULL result without error in PyObject_Call__int__ returned non-int (type %.200s).  The ability to return an instance of a strict subclass of int is deprecated, and may be removed in a future version of Python.__%.4s__ returned non-%.4s (type %.200s)value too large to convert to int%.200s.%.200s is not a type object%.200s.%.200s size changed, may indicate binary incompatibility. Expected %zd from C header, got %zd from PyObject%s.%s size changed, may indicate binary incompatibility. Expected %zd from C header, got %zd from PyObject%.200s does not export expected C variable %.200sC variable %.200s.%.200s has wrong signature (expected %.500s, got %.500s)%.200s does not export expected C function %.200sC function %.200s.%.200s has wrong signature (expected %.500s, got %.500s)Interpreter change detected - this module can only be loaded into one interpreter per process.%.200s() keywords must be strings%s() got an unexpected keyword argument '%U''%.200s' object is unsliceable%s() got multiple values for keyword argument '%U'calling %R should have returned an instance of BaseException, not %Rraise: exception class must be a subclass of BaseExceptioncan't convert negative value to size_ttoo many values to unpack (expected %zd)%.200s() takes %.8s %zd positional argument%.1s (%zd given)numpy.random.mtrand.RandomState.waldnumpy.random.mtrand.RandomState.rayleighnumpy.random.mtrand.RandomState.lognormalnumpy.random.mtrand.RandomState.logisticnumpy.random.mtrand.RandomState.gumbelnumpy.random.mtrand.RandomState.laplacenumpy.random.mtrand.RandomState.powernumpy.random.mtrand.RandomState.weibullnumpy.random.mtrand.RandomState.paretonumpy.random.mtrand.RandomState.vonmisesnumpy.random.mtrand.RandomState.standard_tnumpy.random.mtrand.RandomState.standard_cauchynumpy.random.mtrand.RandomState.noncentral_chisquarenumpy.random.mtrand.RandomState.chisquarenumpy.random.mtrand.RandomState.noncentral_fnumpy.random.mtrand.RandomState.fnumpy.random.mtrand.RandomState.gammanumpy.random.mtrand.RandomState.standard_gammanumpy.random.mtrand.RandomState.normalnumpy.random.mtrand.RandomState.standard_normalnumpy.random.mtrand.RandomState.standard_exponentialnumpy.random.mtrand.RandomState.exponentialnumpy.random.mtrand.RandomState.betanumpy.random.mtrand.RandomState.randomnumpy.random.mtrand.RandomState.random_samplenumpy.random.mtrand.RandomState.__reduce__numpy.random.mtrand.RandomState.__getstate__numpy.random.mtrand.RandomState.__str__Module 'mtrand' has already been imported. Re-initialisation is not supported.compiletime version %s of module '%.100s' does not match runtime version %sint (double, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type)int (PyArrayObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type)PyObject *(void *, bitgen_t *, PyObject *, PyObject *, PyObject *)PyObject *(void *, void *, PyObject *, PyObject *, int, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyObject *)PyObject *(void *, void *, PyObject *, PyObject *, int, int, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type)PyObject *(void *, void *, PyObject *, PyObject *, PyArrayObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyArrayObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type, PyArrayObject *, PyObject *, __pyx_t_5numpy_6random_6common_constraint_type)PyObject *(PyObject *, PyObject *, PyObject *, int, int, bitgen_t *, PyObject *)_ARRAY_API is not PyCapsule objectmodule compiled against ABI version 0x%x but this version of numpy is 0x%xmodule compiled against API version 0x%x but this version of numpy is 0x%xFATAL: module compiled as unknown endianFATAL: module compiled as little endian, but detected different endianness at runtime'%.200s' object is not subscriptablecannot fit '%.200s' into an index-sized integernumpy.random.mtrand.RandomState.__setstate__numpy.random.mtrand.RandomState.get_statenumpy.random.mtrand.RandomState.randnnumpy.random.mtrand.RandomState.randnumpy.random.mtrand.int64_to_longnumpy.random.mtrand.RandomState.logseriesnumpy.random.mtrand.RandomState.geometricnumpy.random.mtrand.RandomState.zipfnumpy.random.mtrand.RandomState.poissonnumpy.random.mtrand.RandomState.negative_binomialnumpy.random.mtrand.RandomState.bytesnumpy.random.mtrand.RandomState.seednumpy.random.mtrand.RandomState.__repr__numpy.random.mtrand.RandomState.random_integersnumpy.random.mtrand.RandomState.set_statehasattr(): attribute name must be stringnumpy.random.mtrand.RandomState.__init__numpy.random.mtrand.RandomState.randintlocal variable '%s' referenced before assignmentnumpy.random.mtrand.RandomState.multinomialnumpy.random.mtrand.RandomState.tomaxintCannot convert %.200s to %.200snumpy.random.mtrand.RandomState.binomialnumpy.random.mtrand.RandomState.shufflenumpy.random.mtrand.RandomState.permutationnumpy.random.mtrand.RandomState.dirichletnumpy.random.mtrand.RandomState.hypergeometricnumpy.random.mtrand.RandomState.uniformnumpy.random.mtrand.RandomState.triangularneed more than %zd value%.1s to unpacknumpy.random.mtrand.RandomState.multivariate_normalnumpy.random.mtrand.RandomState.choice'%.200s' object does not support slice %.10snumpy.random.mtrand.RandomState
    RandomState(seed=None)

    Container for the slow Mersenne Twister pseudo-random number generator.
    Consider using a different BitGenerator with the Generator container
    instead.

    `RandomState` and `Generator` expose a number of methods for generating
    random numbers drawn from a variety of probability distributions. In
    addition to the distribution-specific arguments, each method takes a
    keyword argument `size` that defaults to ``None``. If `size` is ``None``,
    then a single value is generated and returned. If `size` is an integer,
    then a 1-D array filled with generated values is returned. If `size` is a
    tuple, then an array with that shape is filled and returned.

    **Compatibility Guarantee**

    A fixed bit generator using a fixed seed and a fixed series of calls to
    'RandomState' methods using the same parameters will always produce the
    same results up to roundoff error except when the values were incorrect.
    `RandomState` is effectively frozen and will only receive updates that
    are required by changes in the the internals of Numpy. More substantial
    changes, including algorithmic improvements, are reserved for
    `Generator`.

    Parameters
    ----------
    seed : {None, int, array_like, BitGenerator}, optional
        Random seed used to initialize the pseudo-random number generator or
        an instantized BitGenerator.  If an integer or array, used as a seed for
        the MT19937 BitGenerator. Values can be any integer between 0 and
        2**32 - 1 inclusive, an array (or other sequence) of such integers,
        or ``None`` (the default).  If `seed` is ``None``, then the `MT19937`
        BitGenerator is initialized by reading data from ``/dev/urandom``
        (or the Windows analogue) if available or seed from the clock
        otherwise.

    Notes
    -----
    The Python stdlib module "random" also contains a Mersenne Twister
    pseudo-random number generator with a number of methods that are similar
    to the ones available in `RandomState`. `RandomState`, besides being
    NumPy-aware, has the advantage that it provides a much larger number
    of probability distributions to choose from.

    See Also
    --------
    Generator
    MT19937
    :ref:`bit_generator`

    an integer is required__pyx_capi__name__loader__loader__file__origin__package__parent__path__submodule_search_locationsname '%U' is not definedcannot import name %Snumpy/random/mtrand.c%s (%s:%d)mtrand.pyxnumpy.random.mtrand.ranfnumpy.random.mtrand.sampleat leastat mostwaldrayleighlognormallogisticgumbellaplacepowerweibullparetovonmisesstandard_tstandard_cauchynoncentral_chisquarenoncentral_fstandard_gammastandard_normalstandard_exponentialbetarandomrandom_sample%d.%d%sbuiltinscython_runtime__builtins__4294967296__init__.pxdtype.pxdbool.pxdcomplex.pxdcomplexnumpydtypeflatiterbroadcastndarrayufuncnumpy.random.commondoubleLEGACY_POISSON_LAM_MAXuint64_tMAXSIZEcheck_constraintcheck_array_constraintdouble (double *, npy_intp)kahan_sumdouble_fillcontdisccont_broadcast_3discrete_broadcast_iiinumpy.random.bounded_integers_rand_uint64_rand_uint32_rand_uint16_rand_uint8_rand_bool_rand_int64_rand_int32_rand_int16_rand_int8numpy.core._multiarray_umath_ARRAY_API_ARRAY_API not found_ARRAY_API is NULL pointernumpy.import_arrayinit numpy.random.mtrandget_staterandnlogserieszipfpoissonnegative_binomialseedrandom_integers__init__BitGeneratorrandintretmultinomialtomaxintnumpy.PyArray_MultiIterNew2Missing type objectnumpy.PyArray_MultiIterNew3dirichlethypergeometricuniformtriangularmultivariate_normalassignmentdeletionchoice_bit_generator__getstate____setstate____reduce__set_statebytesshufflepermutation88ûÿ`8ûÿà7ûÿð7ûÿ8ûÿOûÿ$OûÿÄNûÿìNûÿüNûÿhPûÿ€Pûÿ PûÿHPûÿXPûÿôSûÿTûÿÔSûÿÜSûÿäSûÿ`ûÿæ›ûÿºœûÿ±œûÿ¨œûÿ\üÿÄüÿüÿ4üÿDüÿ%üÿüÿÙÿûÿñüÿ;üÿAüÿ6üÿüÿfüÿUüÿ@!üÿ¸!üÿðüÿ!üÿ0!üÿÌ+üÿ´+üÿŒ+üÿl+üÿä+üÿ+-üÿ-üÿ-üÿN-üÿ>-üÿhüÿ|güÿ$güÿôgüÿÄgüÿEtüÿ<tüÿtüÿtüÿtüÿ²uüÿ©uüÿ¤uüÿ‰uüÿóuüÿܟüÿƔüÿ•üÿ¹•üÿ°•üÿ$ÁüÿŒÁüÿ¸üÿ¤ÁüÿÁüÿ`Öüÿ@ÖüÿзüÿÖüÿ€Öüÿ¹Ùüÿ«Ùüÿ—ÙüÿäÙüÿÐÙüÿØýÿxýÿXýÿHýÿøýÿ¬'ýÿœ'ýÿ„'ýÿê'ýÿÇ'ýÿ3.ýÿ!.ýÿ]'ýÿh.ýÿO.ýÿŒKýÿÜJýÿ¬8ýÿ´JýÿÄJýÿ¨KýÿH9ýÿa9ýÿàKýÿÈKýÿÆrýÿ°rýÿq8ýÿ•rýÿÝrýÿKtýÿ4týÿtýÿøsýÿ_týÿ^xýÿRxýÿ4xýÿ‡xýÿtxýÿ‰yýÿ}yýÿfyýÿ®yýÿyýÿ6âýÿnÚýÿ‡Ûýÿ~ÛýÿuÛýÿãýÿ0ãýÿxÜýÿ ãýÿ¨ãýÿ¬ãýÿLäýÿ¼Üýÿ<äýÿäýÿÀäýÿXäýÿøÜýÿHäýÿØäýÿ_üýÿIüýÿpÜýÿ$üýÿvüýÿ{ýýÿeýýÿÜýÿ@ýýÿýýÿþýÿiþýÿ ÜýÿDþýÿ“þýÿbþÿVþÿ4þÿ…þÿuþÿbþÿVþÿ5þÿ…þÿuþÿqþÿeþÿDþÿœþÿˆþÿi8þÿ2þÿ'3þÿ3þÿ3þÿú_þÿVZþÿ\[þÿP[þÿD[þÿ8[þÿí_þÿUZþÿ}Zþÿdþÿ9dþÿëÐþÿ©þÿZªþÿNªþÿBªþÿThis function is deprecated. Please call randint({low}, {high} + 1) insteadFormat string allocated too short.x must be an integer or at least 1-dimensionalprobabilities are not non-negativenumpy.core.umath failed to importnegative dimensions are not allowedndarray is not Fortran contiguousmean and cov must have same lengthget_state and legacy can only be used with the MT19937 BitGenerator. To silence this warning, set `legacy` to False.covariance is not positive-semidefinite.cov must be 2 dimensional and squarecheck_valid must equal 'warn', 'raise', or 'ignore'can only re-seed a MT19937 BitGeneratora must be 1-dimensional or an integerThis function is deprecated. Please call randint(1, {low} + 1) insteadRandomState.triangular (line 2872)RandomState.standard_t (line 1871)RandomState.standard_normal (line 1179)RandomState.standard_exponential (line 438)RandomState.standard_cauchy (line 1806)RandomState.random_sample (line 289)RandomState.random_integers (line 1083)RandomState.permutation (line 4119)RandomState.noncentral_f (line 1582)RandomState.noncentral_chisquare (line 1727)RandomState.negative_binomial (line 3118)RandomState.multinomial (line 3780)Providing a dtype with a non-native byteorder is not supported. If you require platform-independent byteorder, call byteswap when required.
In future version, providing byteorder will raise a ValueErrorNon-native byte order not supportedInvalid bit generator. The bit generator must be instantized.Format string allocated too short, see comment in numpy.pxdFewer non-zero entries in p than sizeCannot take a larger sample than population when 'replace=False'
        zipf(a, size=None)

        Draw samples from a Zipf distribution.

        Samples are drawn from a Zipf distribution with specified parameter
        `a` > 1.

        The Zipf distribution (also known as the zeta distribution) is a
        continuous probability distribution that satisfies Zipf's law: the
        frequency of an item is inversely proportional to its rank in a
        frequency table.

        Parameters
        ----------
        a : float or array_like of floats
            Distribution parameter. Must be greater than 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar. Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Zipf distribution.

        See Also
        --------
        scipy.stats.zipf : probability density function, distribution, or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Zipf distribution is

        .. math:: p(x) = \frac{x^{-a}}{\zeta(a)},

        where :math:`\zeta` is the Riemann Zeta function.

        It is named for the American linguist George Kingsley Zipf, who noted
        that the frequency of any word in a sample of a language is inversely
        proportional to its rank in the frequency table.

        References
        ----------
        .. [1] Zipf, G. K., "Selected Studies of the Principle of Relative
               Frequency in Language," Cambridge, MA: Harvard Univ. Press,
               1932.

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 2. # parameter
        >>> s = np.random.zipf(a, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> from scipy import special  # doctest: +SKIP

        Truncate s values at 50 so plot is interesting:

        >>> count, bins, ignored = plt.hist(s[s<50], 50, density=True)
        >>> x = np.arange(1., 50.)
        >>> y = x**(-a) / special.zetac(a)  # doctest: +SKIP
        >>> plt.plot(x, y/max(y), linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        weibull(a, size=None)

        Draw samples from a Weibull distribution.

        Draw samples from a 1-parameter Weibull distribution with the given
        shape parameter `a`.

        .. math:: X = (-ln(U))^{1/a}

        Here, U is drawn from the uniform distribution over (0,1].

        The more common 2-parameter Weibull, including a scale parameter
        :math:`\lambda` is just :math:`X = \lambda(-ln(U))^{1/a}`.

        Parameters
        ----------
        a : float or array_like of floats
            Shape parameter of the distribution.  Must be nonnegative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Weibull distribution.

        See Also
        --------
        scipy.stats.weibull_max
        scipy.stats.weibull_min
        scipy.stats.genextreme
        gumbel

        Notes
        -----
        The Weibull (or Type III asymptotic extreme value distribution
        for smallest values, SEV Type III, or Rosin-Rammler
        distribution) is one of a class of Generalized Extreme Value
        (GEV) distributions used in modeling extreme value problems.
        This class includes the Gumbel and Frechet distributions.

        The probability density for the Weibull distribution is

        .. math:: p(x) = \frac{a}
                         {\lambda}(\frac{x}{\lambda})^{a-1}e^{-(x/\lambda)^a},

        where :math:`a` is the shape and :math:`\lambda` the scale.

        The function has its peak (the mode) at
        :math:`\lambda(\frac{a-1}{a})^{1/a}`.

        When ``a = 1``, the Weibull distribution reduces to the exponential
        distribution.

        References
        ----------
        .. [1] Waloddi Weibull, Royal Technical University, Stockholm,
               1939 "A Statistical Theory Of The Strength Of Materials",
               Ingeniorsvetenskapsakademiens Handlingar Nr 151, 1939,
               Generalstabens Litografiska Anstalts Forlag, Stockholm.
        .. [2] Waloddi Weibull, "A Statistical Distribution Function of
               Wide Applicability", Journal Of Applied Mechanics ASME Paper
               1951.
        .. [3] Wikipedia, "Weibull distribution",
               https://en.wikipedia.org/wiki/Weibull_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 5. # shape
        >>> s = np.random.weibull(a, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> x = np.arange(1,100.)/50.
        >>> def weib(x,n,a):
        ...     return (a / n) * (x / n)**(a - 1) * np.exp(-(x / n)**a)

        >>> count, bins, ignored = plt.hist(np.random.weibull(5.,1000))
        >>> x = np.arange(1,100.)/50.
        >>> scale = count.max()/weib(x, 1., 5.).max()
        >>> plt.plot(x, weib(x, 1., 5.)*scale)
        >>> plt.show()

        
        vonmises(mu, kappa, size=None)

        Draw samples from a von Mises distribution.

        Samples are drawn from a von Mises distribution with specified mode
        (mu) and dispersion (kappa), on the interval [-pi, pi].

        The von Mises distribution (also known as the circular normal
        distribution) is a continuous probability distribution on the unit
        circle.  It may be thought of as the circular analogue of the normal
        distribution.

        Parameters
        ----------
        mu : float or array_like of floats
            Mode ("center") of the distribution.
        kappa : float or array_like of floats
            Dispersion of the distribution, has to be >=0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mu`` and ``kappa`` are both scalars.
            Otherwise, ``np.broadcast(mu, kappa).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized von Mises distribution.

        See Also
        --------
        scipy.stats.vonmises : probability density function, distribution, or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the von Mises distribution is

        .. math:: p(x) = \frac{e^{\kappa cos(x-\mu)}}{2\pi I_0(\kappa)},

        where :math:`\mu` is the mode and :math:`\kappa` the dispersion,
        and :math:`I_0(\kappa)` is the modified Bessel function of order 0.

        The von Mises is named for Richard Edler von Mises, who was born in
        Austria-Hungary, in what is now the Ukraine.  He fled to the United
        States in 1939 and became a professor at Harvard.  He worked in
        probability theory, aerodynamics, fluid mechanics, and philosophy of
        science.

        References
        ----------
        .. [1] Abramowitz, M. and Stegun, I. A. (Eds.). "Handbook of
               Mathematical Functions with Formulas, Graphs, and Mathematical
               Tables, 9th printing," New York: Dover, 1972.
        .. [2] von Mises, R., "Mathematical Theory of Probability
               and Statistics", New York: Academic Press, 1964.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, kappa = 0.0, 4.0 # mean and dispersion
        >>> s = np.random.vonmises(mu, kappa, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> from scipy.special import i0  # doctest: +SKIP
        >>> plt.hist(s, 50, density=True)
        >>> x = np.linspace(-np.pi, np.pi, num=51)
        >>> y = np.exp(kappa*np.cos(x-mu))/(2*np.pi*i0(kappa))  # doctest: +SKIP
        >>> plt.plot(x, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        unknown dtype code in numpy.pxd (%d)
        uniform(low=0.0, high=1.0, size=None)

        Draw samples from a uniform distribution.

        Samples are uniformly distributed over the half-open interval
        ``[low, high)`` (includes low, but excludes high).  In other words,
        any value within the given interval is equally likely to be drawn
        by `uniform`.

        Parameters
        ----------
        low : float or array_like of floats, optional
            Lower boundary of the output interval.  All values generated will be
            greater than or equal to low.  The default value is 0.
        high : float or array_like of floats
            Upper boundary of the output interval.  All values generated will be
            less than high.  The default value is 1.0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``low`` and ``high`` are both scalars.
            Otherwise, ``np.broadcast(low, high).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized uniform distribution.

        See Also
        --------
        randint : Discrete uniform distribution, yielding integers.
        random_integers : Discrete uniform distribution over the closed
                          interval ``[low, high]``.
        random_sample : Floats uniformly distributed over ``[0, 1)``.
        random : Alias for `random_sample`.
        rand : Convenience function that accepts dimensions as input, e.g.,
               ``rand(2,2)`` would generate a 2-by-2 array of floats,
               uniformly distributed over ``[0, 1)``.

        Notes
        -----
        The probability density function of the uniform distribution is

        .. math:: p(x) = \frac{1}{b - a}

        anywhere within the interval ``[a, b)``, and zero elsewhere.

        When ``high`` == ``low``, values of ``low`` will be returned.
        If ``high`` < ``low``, the results are officially undefined
        and may eventually raise an error, i.e. do not rely on this
        function to behave when passed arguments satisfying that
        inequality condition.

        Examples
        --------
        Draw samples from the distribution:

        >>> s = np.random.uniform(-1,0,1000)

        All values are within the given interval:

        >>> np.all(s >= -1)
        True
        >>> np.all(s < 0)
        True

        Display the histogram of the samples, along with the
        probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 15, density=True)
        >>> plt.plot(bins, np.ones_like(bins), linewidth=2, color='r')
        >>> plt.show()

        
        triangular(left, mode, right, size=None)

        Draw samples from the triangular distribution over the
        interval ``[left, right]``.

        The triangular distribution is a continuous probability
        distribution with lower limit left, peak at mode, and upper
        limit right. Unlike the other distributions, these parameters
        directly define the shape of the pdf.

        Parameters
        ----------
        left : float or array_like of floats
            Lower limit.
        mode : float or array_like of floats
            The value where the peak of the distribution occurs.
            The value must fulfill the condition ``left <= mode <= right``.
        right : float or array_like of floats
            Upper limit, must be larger than `left`.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``left``, ``mode``, and ``right``
            are all scalars.  Otherwise, ``np.broadcast(left, mode, right).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized triangular distribution.

        Notes
        -----
        The probability density function for the triangular distribution is

        .. math:: P(x;l, m, r) = \begin{cases}
                  \frac{2(x-l)}{(r-l)(m-l)}& \text{for $l \leq x \leq m$},\\
                  \frac{2(r-x)}{(r-l)(r-m)}& \text{for $m \leq x \leq r$},\\
                  0& \text{otherwise}.
                  \end{cases}

        The triangular distribution is often used in ill-defined
        problems where the underlying distribution is not known, but
        some knowledge of the limits and mode exists. Often it is used
        in simulations.

        References
        ----------
        .. [1] Wikipedia, "Triangular distribution"
               https://en.wikipedia.org/wiki/Triangular_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram:

        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(np.random.triangular(-3, 0, 8, 100000), bins=200,
        ...              density=True)
        >>> plt.show()

        
        tomaxint(size=None)

        Return a sample of uniformly distributed random integers in the interval
        [0, ``np.iinfo(np.int).max``]. The np.int type translates to the C long
        integer type and its precision is platform dependent.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : ndarray
            Drawn samples, with shape `size`.

        See Also
        --------
        randint : Uniform sampling over a given half-open interval of integers.
        random_integers : Uniform sampling over a given closed interval of
            integers.

        Examples
        --------
        >>> rs = np.random.RandomState() # need a RandomState object
        >>> rs.tomaxint((2,2,2))
        array([[[1170048599, 1600360186], # random
                [ 739731006, 1947757578]],
               [[1871712945,  752307660],
                [1601631370, 1479324245]]])
        >>> rs.tomaxint((2,2,2)) < np.iinfo(np.int).max
        array([[[ True,  True],
                [ True,  True]],
               [[ True,  True],
                [ True,  True]]])

        state must be a dict or a tuple.
        standard_t(df, size=None)

        Draw samples from a standard Student's t distribution with `df` degrees
        of freedom.

        A special case of the hyperbolic distribution.  As `df` gets
        large, the result resembles that of the standard normal
        distribution (`standard_normal`).

        Parameters
        ----------
        df : float or array_like of floats
            Degrees of freedom, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` is a scalar.  Otherwise,
            ``np.array(df).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized standard Student's t distribution.

        Notes
        -----
        The probability density function for the t distribution is

        .. math:: P(x, df) = \frac{\Gamma(\frac{df+1}{2})}{\sqrt{\pi df}
                  \Gamma(\frac{df}{2})}\Bigl( 1+\frac{x^2}{df} \Bigr)^{-(df+1)/2}

        The t test is based on an assumption that the data come from a
        Normal distribution. The t test provides a way to test whether
        the sample mean (that is the mean calculated from the data) is
        a good estimate of the true mean.

        The derivation of the t-distribution was first published in
        1908 by William Gosset while working for the Guinness Brewery
        in Dublin. Due to proprietary issues, he had to publish under
        a pseudonym, and so he used the name Student.

        References
        ----------
        .. [1] Dalgaard, Peter, "Introductory Statistics With R",
               Springer, 2002.
        .. [2] Wikipedia, "Student's t-distribution"
               https://en.wikipedia.org/wiki/Student's_t-distribution

        Examples
        --------
        From Dalgaard page 83 [1]_, suppose the daily energy intake for 11
        women in kilojoules (kJ) is:

        >>> intake = np.array([5260., 5470, 5640, 6180, 6390, 6515, 6805, 7515, \
        ...                    7515, 8230, 8770])

        Does their energy intake deviate systematically from the recommended
        value of 7725 kJ?

        We have 10 degrees of freedom, so is the sample mean within 95% of the
        recommended value?

        >>> s = np.random.standard_t(10, size=100000)
        >>> np.mean(intake)
        6753.636363636364
        >>> intake.std(ddof=1)
        1142.1232221373727

        Calculate the t statistic, setting the ddof parameter to the unbiased
        value so the divisor in the standard deviation will be degrees of
        freedom, N-1.

        >>> t = (np.mean(intake)-7725)/(intake.std(ddof=1)/np.sqrt(len(intake)))
        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(s, bins=100, density=True)

        For a one-sided t-test, how far out in the distribution does the t
        statistic appear?

        >>> np.sum(s<t) / float(len(s))
        0.0090699999999999999  #random

        So the p-value is about 0.009, which says the null hypothesis has a
        probability of about 99% of being true.

        set_state can only be used with legacy MT19937state instances.
        seed(self, seed=None)

        Reseed a legacy MT19937 BitGenerator

        Notes
        -----
        This is a convenience, legacy function.

        The best practice is to **not** reseed a BitGenerator, rather to
        recreate a new one. This method is here for legacy reasons.
        This example demonstrates best practice.

        >>> from numpy.random import MT19937
        >>> from numpy.random import RandomState, SeedSequence
        >>> rs = RandomState(MT19937(SeedSequence(123456789)))
        # Later, you want to restart the stream
        >>> rs = RandomState(MT19937(SeedSequence(987654321)))
        
        rayleigh(scale=1.0, size=None)

        Draw samples from a Rayleigh distribution.

        The :math:`\chi` and Weibull distributions are generalizations of the
        Rayleigh.

        Parameters
        ----------
        scale : float or array_like of floats, optional
            Scale, also equals the mode. Must be non-negative. Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``scale`` is a scalar.  Otherwise,
            ``np.array(scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Rayleigh distribution.

        Notes
        -----
        The probability density function for the Rayleigh distribution is

        .. math:: P(x;scale) = \frac{x}{scale^2}e^{\frac{-x^2}{2 \cdotp scale^2}}

        The Rayleigh distribution would arise, for example, if the East
        and North components of the wind velocity had identical zero-mean
        Gaussian distributions.  Then the wind speed would have a Rayleigh
        distribution.

        References
        ----------
        .. [1] Brighton Webs Ltd., "Rayleigh Distribution,"
               https://web.archive.org/web/20090514091424/http://brighton-webs.co.uk:80/distributions/rayleigh.asp
        .. [2] Wikipedia, "Rayleigh distribution"
               https://en.wikipedia.org/wiki/Rayleigh_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram

        >>> from matplotlib.pyplot import hist
        >>> values = hist(np.random.rayleigh(3, 100000), bins=200, density=True)

        Wave heights tend to follow a Rayleigh distribution. If the mean wave
        height is 1 meter, what fraction of waves are likely to be larger than 3
        meters?

        >>> meanvalue = 1
        >>> modevalue = np.sqrt(2 / np.pi) * meanvalue
        >>> s = np.random.rayleigh(modevalue, 1000000)

        The percentage of waves larger than 3 meters is:

        >>> 100.*sum(s>3)/1000000.
        0.087300000000000003 # random

        
        random_integers(low, high=None, size=None)

        Random integers of type np.int between `low` and `high`, inclusive.

        Return random integers of type np.int from the "discrete uniform"
        distribution in the closed interval [`low`, `high`].  If `high` is
        None (the default), then results are from [1, `low`]. The np.int
        type translates to the C long integer type and its precision
        is platform dependent.

        This function has been deprecated. Use randint instead.

        .. deprecated:: 1.11.0

        Parameters
        ----------
        low : int
            Lowest (signed) integer to be drawn from the distribution (unless
            ``high=None``, in which case this parameter is the *highest* such
            integer).
        high : int, optional
            If provided, the largest (signed) integer to be drawn from the
            distribution (see above for behavior if ``high=None``).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : int or ndarray of ints
            `size`-shaped array of random integers from the appropriate
            distribution, or a single such random int if `size` not provided.

        See Also
        --------
        randint : Similar to `random_integers`, only for the half-open
            interval [`low`, `high`), and 0 is the lowest value if `high` is
            omitted.

        Notes
        -----
        To sample from N evenly spaced floating-point numbers between a and b,
        use::

          a + (b - a) * (np.random.random_integers(N) - 1) / (N - 1.)

        Examples
        --------
        >>> np.random.random_integers(5)
        4 # random
        >>> type(np.random.random_integers(5))
        <class 'numpy.int64'>
        >>> np.random.random_integers(5, size=(3,2))
        array([[5, 4], # random
               [3, 3],
               [4, 5]])

        Choose five random numbers from the set of five evenly-spaced
        numbers between 0 and 2.5, inclusive (*i.e.*, from the set
        :math:`{0, 5/8, 10/8, 15/8, 20/8}`):

        >>> 2.5 * (np.random.random_integers(5, size=(5,)) - 1) / 4.
        array([ 0.625,  1.25 ,  0.625,  0.625,  2.5  ]) # random

        Roll two six sided dice 1000 times and sum the results:

        >>> d1 = np.random.random_integers(1, 6, 1000)
        >>> d2 = np.random.random_integers(1, 6, 1000)
        >>> dsums = d1 + d2

        Display results as a histogram:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(dsums, 11, density=True)
        >>> plt.show()

        
        randint(low, high=None, size=None, dtype='l')

        Return random integers from `low` (inclusive) to `high` (exclusive).

        Return random integers from the "discrete uniform" distribution of
        the specified dtype in the "half-open" interval [`low`, `high`). If
        `high` is None (the default), then results are from [0, `low`).

        Parameters
        ----------
        low : int or array-like of ints
            Lowest (signed) integers to be drawn from the distribution (unless
            ``high=None``, in which case this parameter is one above the
            *highest* such integer).
        high : int or array-like of ints, optional
            If provided, one above the largest (signed) integer to be drawn
            from the distribution (see above for behavior if ``high=None``).
            If array-like, must contain integer values
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.
        dtype : dtype, optional
            Desired dtype of the result. All dtypes are determined by their
            name, i.e., 'int64', 'int', etc, so byteorder is not available
            and a specific precision may have different C types depending
            on the platform. The default value is 'np.int'.

            .. versionadded:: 1.11.0

        Returns
        -------
        out : int or ndarray of ints
            `size`-shaped array of random integers from the appropriate
            distribution, or a single such random int if `size` not provided.

        See Also
        --------
        random.random_integers : similar to `randint`, only for the closed
            interval [`low`, `high`], and 1 is the lowest value if `high` is
            omitted.

        Examples
        --------
        >>> np.random.randint(2, size=10)
        array([1, 0, 0, 0, 1, 1, 0, 0, 1, 0]) # random
        >>> np.random.randint(1, size=10)
        array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0])

        Generate a 2 x 4 array of ints between 0 and 4, inclusive:

        >>> np.random.randint(5, size=(2, 4))
        array([[4, 0, 2, 1], # random
               [3, 2, 2, 0]])

        Generate a 1 x 3 array with 3 different upper bounds

        >>> np.random.randint(1, [3, 5, 10])
        array([2, 2, 9]) # random

        Generate a 1 by 3 array with 3 different lower bounds

        >>> np.random.randint([1, 5, 7], 10)
        array([9, 8, 7]) # random

        Generate a 2 by 4 array using broadcasting with dtype of uint8

        >>> np.random.randint([1, 3, 5, 7], [[10], [20]], dtype=np.uint8)
        array([[ 8,  6,  9,  7], # random
               [ 1, 16,  9, 12]], dtype=uint8)
        
        power(a, size=None)

        Draws samples in [0, 1] from a power distribution with positive
        exponent a - 1.

        Also known as the power function distribution.

        Parameters
        ----------
        a : float or array_like of floats
            Parameter of the distribution. Must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized power distribution.

        Raises
        ------
        ValueError
            If a < 1.

        Notes
        -----
        The probability density function is

        .. math:: P(x; a) = ax^{a-1}, 0 \le x \le 1, a>0.

        The power function distribution is just the inverse of the Pareto
        distribution. It may also be seen as a special case of the Beta
        distribution.

        It is used, for example, in modeling the over-reporting of insurance
        claims.

        References
        ----------
        .. [1] Christian Kleiber, Samuel Kotz, "Statistical size distributions
               in economics and actuarial sciences", Wiley, 2003.
        .. [2] Heckert, N. A. and Filliben, James J. "NIST Handbook 148:
               Dataplot Reference Manual, Volume 2: Let Subcommands and Library
               Functions", National Institute of Standards and Technology
               Handbook Series, June 2003.
               https://www.itl.nist.gov/div898/software/dataplot/refman2/auxillar/powpdf.pdf

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 5. # shape
        >>> samples = 1000
        >>> s = np.random.power(a, samples)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, bins=30)
        >>> x = np.linspace(0, 1, 100)
        >>> y = a*x**(a-1.)
        >>> normed_y = samples*np.diff(bins)[0]*y
        >>> plt.plot(x, normed_y)
        >>> plt.show()

        Compare the power function distribution to the inverse of the Pareto.

        >>> from scipy import stats # doctest: +SKIP
        >>> rvs = np.random.power(5, 1000000)
        >>> rvsp = np.random.pareto(5, 1000000)
        >>> xx = np.linspace(0,1,100)
        >>> powpdf = stats.powerlaw.pdf(xx,5)  # doctest: +SKIP

        >>> plt.figure()
        >>> plt.hist(rvs, bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('np.random.power(5)')

        >>> plt.figure()
        >>> plt.hist(1./(1.+rvsp), bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('inverse of 1 + np.random.pareto(5)')

        >>> plt.figure()
        >>> plt.hist(1./(1.+rvsp), bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('inverse of stats.pareto(5)')

        
        pareto(a, size=None)

        Draw samples from a Pareto II or Lomax distribution with
        specified shape.

        The Lomax or Pareto II distribution is a shifted Pareto
        distribution. The classical Pareto distribution can be
        obtained from the Lomax distribution by adding 1 and
        multiplying by the scale parameter ``m`` (see Notes).  The
        smallest value of the Lomax distribution is zero while for the
        classical Pareto distribution it is ``mu``, where the standard
        Pareto distribution has location ``mu = 1``.  Lomax can also
        be considered as a simplified version of the Generalized
        Pareto distribution (available in SciPy), with the scale set
        to one and the location set to zero.

        The Pareto distribution must be greater than zero, and is
        unbounded above.  It is also known as the "80-20 rule".  In
        this distribution, 80 percent of the weights are in the lowest
        20 percent of the range, while the other 20 percent fill the
        remaining 80 percent of the range.

        Parameters
        ----------
        a : float or array_like of floats
            Shape of the distribution. Must be positive.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Pareto distribution.

        See Also
        --------
        scipy.stats.lomax : probability density function, distribution or
            cumulative density function, etc.
        scipy.stats.genpareto : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Pareto distribution is

        .. math:: p(x) = \frac{am^a}{x^{a+1}}

        where :math:`a` is the shape and :math:`m` the scale.

        The Pareto distribution, named after the Italian economist
        Vilfredo Pareto, is a power law probability distribution
        useful in many real world problems.  Outside the field of
        economics it is generally referred to as the Bradford
        distribution. Pareto developed the distribution to describe
        the distribution of wealth in an economy.  It has also found
        use in insurance, web page access statistics, oil field sizes,
        and many other problems, including the download frequency for
        projects in Sourceforge [1]_.  It is one of the so-called
        "fat-tailed" distributions.

        References
        ----------
        .. [1] Francis Hunt and Paul Johnson, On the Pareto Distribution of
               Sourceforge projects.
        .. [2] Pareto, V. (1896). Course of Political Economy. Lausanne.
        .. [3] Reiss, R.D., Thomas, M.(2001), Statistical Analysis of Extreme
               Values, Birkhauser Verlag, Basel, pp 23-30.
        .. [4] Wikipedia, "Pareto distribution",
               https://en.wikipedia.org/wiki/Pareto_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a, m = 3., 2.  # shape and mode
        >>> s = (np.random.pareto(a, 1000) + 1) * m

        Display the histogram of the samples, along with the probability
        density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, _ = plt.hist(s, 100, density=True)
        >>> fit = a*m**a / bins**(a+1)
        >>> plt.plot(bins, max(count)*fit/max(fit), linewidth=2, color='r')
        >>> plt.show()

        numpy.core.multiarray failed to import
        normal(loc=0.0, scale=1.0, size=None)

        Draw random samples from a normal (Gaussian) distribution.

        The probability density function of the normal distribution, first
        derived by De Moivre and 200 years later by both Gauss and Laplace
        independently [2]_, is often called the bell curve because of
        its characteristic shape (see the example below).

        The normal distributions occurs often in nature.  For example, it
        describes the commonly occurring distribution of samples influenced
        by a large number of tiny, random disturbances, each with its own
        unique distribution [2]_.

        Parameters
        ----------
        loc : float or array_like of floats
            Mean ("centre") of the distribution.
        scale : float or array_like of floats
            Standard deviation (spread or "width") of the distribution. Must be
            non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized normal distribution.

        See Also
        --------
        scipy.stats.norm : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gaussian distribution is

        .. math:: p(x) = \frac{1}{\sqrt{ 2 \pi \sigma^2 }}
                         e^{ - \frac{ (x - \mu)^2 } {2 \sigma^2} },

        where :math:`\mu` is the mean and :math:`\sigma` the standard
        deviation. The square of the standard deviation, :math:`\sigma^2`,
        is called the variance.

        The function has its peak at the mean, and its "spread" increases with
        the standard deviation (the function reaches 0.607 times its maximum at
        :math:`x + \sigma` and :math:`x - \sigma` [2]_).  This implies that
        `numpy.random.normal` is more likely to return samples lying close to
        the mean, rather than those far away.

        References
        ----------
        .. [1] Wikipedia, "Normal distribution",
               https://en.wikipedia.org/wiki/Normal_distribution
        .. [2] P. R. Peebles Jr., "Central Limit Theorem" in "Probability,
               Random Variables and Random Signal Principles", 4th ed., 2001,
               pp. 51, 51, 125.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, sigma = 0, 0.1 # mean and standard deviation
        >>> s = np.random.normal(mu, sigma, 1000)

        Verify the mean and the variance:

        >>> abs(mu - np.mean(s))
        0.0  # may vary

        >>> abs(sigma - np.std(s, ddof=1))
        0.1  # may vary

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> plt.plot(bins, 1/(sigma * np.sqrt(2 * np.pi)) *
        ...                np.exp( - (bins - mu)**2 / (2 * sigma**2) ),
        ...          linewidth=2, color='r')
        >>> plt.show()

        Two-by-four array of samples from N(3, 6.25):

        >>> np.random.normal(3, 2.5, size=(2, 4))
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        noncentral_f(dfnum, dfden, nonc, size=None)

        Draw samples from the noncentral F distribution.

        Samples are drawn from an F distribution with specified parameters,
        `dfnum` (degrees of freedom in numerator) and `dfden` (degrees of
        freedom in denominator), where both parameters > 1.
        `nonc` is the non-centrality parameter.

        Parameters
        ----------
        dfnum : float or array_like of floats
            Numerator degrees of freedom, must be > 0.

            .. versionchanged:: 1.14.0
               Earlier NumPy versions required dfnum > 1.
        dfden : float or array_like of floats
            Denominator degrees of freedom, must be > 0.
        nonc : float or array_like of floats
            Non-centrality parameter, the sum of the squares of the numerator
            means, must be >= 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``dfnum``, ``dfden``, and ``nonc``
            are all scalars.  Otherwise, ``np.broadcast(dfnum, dfden, nonc).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized noncentral Fisher distribution.

        Notes
        -----
        When calculating the power of an experiment (power = probability of
        rejecting the null hypothesis when a specific alternative is true) the
        non-central F statistic becomes important.  When the null hypothesis is
        true, the F statistic follows a central F distribution. When the null
        hypothesis is not true, then it follows a non-central F statistic.

        References
        ----------
        .. [1] Weisstein, Eric W. "Noncentral F-Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/NoncentralF-Distribution.html
        .. [2] Wikipedia, "Noncentral F-distribution",
               https://en.wikipedia.org/wiki/Noncentral_F-distribution

        Examples
        --------
        In a study, testing for a specific alternative to the null hypothesis
        requires use of the Noncentral F distribution. We need to calculate the
        area in the tail of the distribution that exceeds the value of the F
        distribution for the null hypothesis.  We'll plot the two probability
        distributions for comparison.

        >>> dfnum = 3 # between group deg of freedom
        >>> dfden = 20 # within groups degrees of freedom
        >>> nonc = 3.0
        >>> nc_vals = np.random.noncentral_f(dfnum, dfden, nonc, 1000000)
        >>> NF = np.histogram(nc_vals, bins=50, density=True)
        >>> c_vals = np.random.f(dfnum, dfden, 1000000)
        >>> F = np.histogram(c_vals, bins=50, density=True)
        >>> import matplotlib.pyplot as plt
        >>> plt.plot(F[1][1:], F[0])
        >>> plt.plot(NF[1][1:], NF[0])
        >>> plt.show()

        
        noncentral_chisquare(df, nonc, size=None)

        Draw samples from a noncentral chi-square distribution.

        The noncentral :math:`\chi^2` distribution is a generalization of
        the :math:`\chi^2` distribution.

        Parameters
        ----------
        df : float or array_like of floats
            Degrees of freedom, must be > 0.

            .. versionchanged:: 1.10.0
               Earlier NumPy versions required dfnum > 1.
        nonc : float or array_like of floats
            Non-centrality, must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` and ``nonc`` are both scalars.
            Otherwise, ``np.broadcast(df, nonc).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized noncentral chi-square distribution.

        Notes
        -----
        The probability density function for the noncentral Chi-square
        distribution is

        .. math:: P(x;df,nonc) = \sum^{\infty}_{i=0}
                               \frac{e^{-nonc/2}(nonc/2)^{i}}{i!}
                               P_{Y_{df+2i}}(x),

        where :math:`Y_{q}` is the Chi-square with q degrees of freedom.

        References
        ----------
        .. [1] Wikipedia, "Noncentral chi-squared distribution"
               https://en.wikipedia.org/wiki/Noncentral_chi-squared_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram

        >>> import matplotlib.pyplot as plt
        >>> values = plt.hist(np.random.noncentral_chisquare(3, 20, 100000),
        ...                   bins=200, density=True)
        >>> plt.show()

        Draw values from a noncentral chisquare with very small noncentrality,
        and compare to a chisquare.

        >>> plt.figure()
        >>> values = plt.hist(np.random.noncentral_chisquare(3, .0000001, 100000),
        ...                   bins=np.arange(0., 25, .1), density=True)
        >>> values2 = plt.hist(np.random.chisquare(3, 100000),
        ...                    bins=np.arange(0., 25, .1), density=True)
        >>> plt.plot(values[1][0:-1], values[0]-values2[0], 'ob')
        >>> plt.show()

        Demonstrate how large values of non-centrality lead to a more symmetric
        distribution.

        >>> plt.figure()
        >>> values = plt.hist(np.random.noncentral_chisquare(3, 20, 100000),
        ...                   bins=200, density=True)
        >>> plt.show()

        
        negative_binomial(n, p, size=None)

        Draw samples from a negative binomial distribution.

        Samples are drawn from a negative binomial distribution with specified
        parameters, `n` successes and `p` probability of success where `n`
        is > 0 and `p` is in the interval [0, 1].

        Parameters
        ----------
        n : float or array_like of floats
            Parameter of the distribution, > 0.
        p : float or array_like of floats
            Parameter of the distribution, >= 0 and <=1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``n`` and ``p`` are both scalars.
            Otherwise, ``np.broadcast(n, p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized negative binomial distribution,
            where each sample is equal to N, the number of failures that
            occurred before a total of n successes was reached.

        Notes
        -----
        The probability mass function of the negative binomial distribution is

        .. math:: P(N;n,p) = \frac{\Gamma(N+n)}{N!\Gamma(n)}p^{n}(1-p)^{N},

        where :math:`n` is the number of successes, :math:`p` is the
        probability of success, :math:`N+n` is the number of trials, and
        :math:`\Gamma` is the gamma function. When :math:`n` is an integer,
        :math:`\frac{\Gamma(N+n)}{N!\Gamma(n)} = \binom{N+n-1}{N}`, which is
        the more common form of this term in the the pmf. The negative
        binomial distribution gives the probability of N failures given n
        successes, with a success on the last trial.

        If one throws a die repeatedly until the third time a "1" appears,
        then the probability distribution of the number of non-"1"s that
        appear before the third "1" is a negative binomial distribution.

        References
        ----------
        .. [1] Weisstein, Eric W. "Negative Binomial Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/NegativeBinomialDistribution.html
        .. [2] Wikipedia, "Negative binomial distribution",
               https://en.wikipedia.org/wiki/Negative_binomial_distribution

        Examples
        --------
        Draw samples from the distribution:

        A real world example. A company drills wild-cat oil
        exploration wells, each with an estimated probability of
        success of 0.1.  What is the probability of having one success
        for each successive well, that is what is the probability of a
        single success after drilling 5 wells, after 6 wells, etc.?

        >>> s = np.random.negative_binomial(1, 0.1, 100000)
        >>> for i in range(1, 11): # doctest: +SKIP
        ...    probability = sum(s<i) / 100000.
        ...    print(i, "wells drilled, probability of one success =", probability)

        
        multivariate_normal(mean, cov, size=None, check_valid='warn', tol=1e-8)

        Draw random samples from a multivariate normal distribution.

        The multivariate normal, multinormal or Gaussian distribution is a
        generalization of the one-dimensional normal distribution to higher
        dimensions.  Such a distribution is specified by its mean and
        covariance matrix.  These parameters are analogous to the mean
        (average or "center") and variance (standard deviation, or "width,"
        squared) of the one-dimensional normal distribution.

        Parameters
        ----------
        mean : 1-D array_like, of length N
            Mean of the N-dimensional distribution.
        cov : 2-D array_like, of shape (N, N)
            Covariance matrix of the distribution. It must be symmetric and
            positive-semidefinite for proper sampling.
        size : int or tuple of ints, optional
            Given a shape of, for example, ``(m,n,k)``, ``m*n*k`` samples are
            generated, and packed in an `m`-by-`n`-by-`k` arrangement.  Because
            each sample is `N`-dimensional, the output shape is ``(m,n,k,N)``.
            If no shape is specified, a single (`N`-D) sample is returned.
        check_valid : { 'warn', 'raise', 'ignore' }, optional
            Behavior when the covariance matrix is not positive semidefinite.
        tol : float, optional
            Tolerance when checking the singular values in covariance matrix.
            cov is cast to double before the check.

        Returns
        -------
        out : ndarray
            The drawn samples, of shape *size*, if that was provided.  If not,
            the shape is ``(N,)``.

            In other words, each entry ``out[i,j,...,:]`` is an N-dimensional
            value drawn from the distribution.

        Notes
        -----
        The mean is a coordinate in N-dimensional space, which represents the
        location where samples are most likely to be generated.  This is
        analogous to the peak of the bell curve for the one-dimensional or
        univariate normal distribution.

        Covariance indicates the level to which two variables vary together.
        From the multivariate normal distribution, we draw N-dimensional
        samples, :math:`X = [x_1, x_2, ... x_N]`.  The covariance matrix
        element :math:`C_{ij}` is the covariance of :math:`x_i` and :math:`x_j`.
        The element :math:`C_{ii}` is the variance of :math:`x_i` (i.e. its
        "spread").

        Instead of specifying the full covariance matrix, popular
        approximations include:

          - Spherical covariance (`cov` is a multiple of the identity matrix)
          - Diagonal covariance (`cov` has non-negative elements, and only on
            the diagonal)

        This geometrical property can be seen in two dimensions by plotting
        generated data-points:

        >>> mean = [0, 0]
        >>> cov = [[1, 0], [0, 100]]  # diagonal covariance

        Diagonal covariance means that points are oriented along x or y-axis:

        >>> import matplotlib.pyplot as plt
        >>> x, y = np.random.multivariate_normal(mean, cov, 5000).T
        >>> plt.plot(x, y, 'x')
        >>> plt.axis('equal')
        >>> plt.show()

        Note that the covariance matrix must be positive semidefinite (a.k.a.
        nonnegative-definite). Otherwise, the behavior of this method is
        undefined and backwards compatibility is not guaranteed.

        References
        ----------
        .. [1] Papoulis, A., "Probability, Random Variables, and Stochastic
               Processes," 3rd ed., New York: McGraw-Hill, 1991.
        .. [2] Duda, R. O., Hart, P. E., and Stork, D. G., "Pattern
               Classification," 2nd ed., New York: Wiley, 2001.

        Examples
        --------
        >>> mean = (1, 2)
        >>> cov = [[1, 0], [0, 1]]
        >>> x = np.random.multivariate_normal(mean, cov, (3, 3))
        >>> x.shape
        (3, 3, 2)

        The following is probably true, given that 0.6 is roughly twice the
        standard deviation:

        >>> list((x[0,0,:] - mean) < 0.6)
        [True, True] # random

        
        multinomial(n, pvals, size=None)

        Draw samples from a multinomial distribution.

        The multinomial distribution is a multivariate generalization of the
        binomial distribution.  Take an experiment with one of ``p``
        possible outcomes.  An example of such an experiment is throwing a dice,
        where the outcome can be 1 through 6.  Each sample drawn from the
        distribution represents `n` such experiments.  Its values,
        ``X_i = [X_0, X_1, ..., X_p]``, represent the number of times the
        outcome was ``i``.

        Parameters
        ----------
        n : int
            Number of experiments.
        pvals : sequence of floats, length p
            Probabilities of each of the ``p`` different outcomes.  These
            must sum to 1 (however, the last element is always assumed to
            account for the remaining probability, as long as
            ``sum(pvals[:-1]) <= 1)``.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : ndarray
            The drawn samples, of shape *size*, if that was provided.  If not,
            the shape is ``(N,)``.

            In other words, each entry ``out[i,j,...,:]`` is an N-dimensional
            value drawn from the distribution.

        Examples
        --------
        Throw a dice 20 times:

        >>> np.random.multinomial(20, [1/6.]*6, size=1)
        array([[4, 1, 7, 5, 2, 1]]) # random

        It landed 4 times on 1, once on 2, etc.

        Now, throw the dice 20 times, and 20 times again:

        >>> np.random.multinomial(20, [1/6.]*6, size=2)
        array([[3, 4, 3, 3, 4, 3], # random
               [2, 4, 3, 4, 0, 7]])

        For the first run, we threw 3 times 1, 4 times 2, etc.  For the second,
        we threw 2 times 1, 4 times 2, etc.

        A loaded die is more likely to land on number 6:

        >>> np.random.multinomial(100, [1/7.]*5 + [2/7.])
        array([11, 16, 14, 17, 16, 26]) # random

        The probability inputs should be normalized. As an implementation
        detail, the value of the last entry is ignored and assumed to take
        up any leftover probability mass, but this should not be relied on.
        A biased coin which has twice as much weight on one side as on the
        other should be sampled like so:

        >>> np.random.multinomial(100, [1.0 / 3, 2.0 / 3])  # RIGHT
        array([38, 62]) # random

        not like:

        >>> np.random.multinomial(100, [1.0, 2.0])  # WRONG
        Traceback (most recent call last):
        ValueError: pvals < 0, pvals > 1 or pvals contains NaNs

        
        logseries(p, size=None)

        Draw samples from a logarithmic series distribution.

        Samples are drawn from a log series distribution with specified
        shape parameter, 0 < ``p`` < 1.

        Parameters
        ----------
        p : float or array_like of floats
            Shape parameter for the distribution.  Must be in the range (0, 1).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``p`` is a scalar.  Otherwise,
            ``np.array(p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized logarithmic series distribution.

        See Also
        --------
        scipy.stats.logser : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Log Series distribution is

        .. math:: P(k) = \frac{-p^k}{k \ln(1-p)},

        where p = probability.

        The log series distribution is frequently used to represent species
        richness and occurrence, first proposed by Fisher, Corbet, and
        Williams in 1943 [2].  It may also be used to model the numbers of
        occupants seen in cars [3].

        References
        ----------
        .. [1] Buzas, Martin A.; Culver, Stephen J.,  Understanding regional
               species diversity through the log series distribution of
               occurrences: BIODIVERSITY RESEARCH Diversity & Distributions,
               Volume 5, Number 5, September 1999 , pp. 187-195(9).
        .. [2] Fisher, R.A,, A.S. Corbet, and C.B. Williams. 1943. The
               relation between the number of species and the number of
               individuals in a random sample of an animal population.
               Journal of Animal Ecology, 12:42-58.
        .. [3] D. J. Hand, F. Daly, D. Lunn, E. Ostrowski, A Handbook of Small
               Data Sets, CRC Press, 1994.
        .. [4] Wikipedia, "Logarithmic distribution",
               https://en.wikipedia.org/wiki/Logarithmic_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a = .6
        >>> s = np.random.logseries(a, 10000)
        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s)

        #   plot against distribution

        >>> def logseries(k, p):
        ...     return -p**k/(k*np.log(1-p))
        >>> plt.plot(bins, logseries(bins, a)*count.max()/
        ...          logseries(bins, a).max(), 'r')
        >>> plt.show()

        
        lognormal(mean=0.0, sigma=1.0, size=None)

        Draw samples from a log-normal distribution.

        Draw samples from a log-normal distribution with specified mean,
        standard deviation, and array shape.  Note that the mean and standard
        deviation are not the values for the distribution itself, but of the
        underlying normal distribution it is derived from.

        Parameters
        ----------
        mean : float or array_like of floats, optional
            Mean value of the underlying normal distribution. Default is 0.
        sigma : float or array_like of floats, optional
            Standard deviation of the underlying normal distribution. Must be
            non-negative. Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mean`` and ``sigma`` are both scalars.
            Otherwise, ``np.broadcast(mean, sigma).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized log-normal distribution.

        See Also
        --------
        scipy.stats.lognorm : probability density function, distribution,
            cumulative density function, etc.

        Notes
        -----
        A variable `x` has a log-normal distribution if `log(x)` is normally
        distributed.  The probability density function for the log-normal
        distribution is:

        .. math:: p(x) = \frac{1}{\sigma x \sqrt{2\pi}}
                         e^{(-\frac{(ln(x)-\mu)^2}{2\sigma^2})}

        where :math:`\mu` is the mean and :math:`\sigma` is the standard
        deviation of the normally distributed logarithm of the variable.
        A log-normal distribution results if a random variable is the *product*
        of a large number of independent, identically-distributed variables in
        the same way that a normal distribution results if the variable is the
        *sum* of a large number of independent, identically-distributed
        variables.

        References
        ----------
        .. [1] Limpert, E., Stahel, W. A., and Abbt, M., "Log-normal
               Distributions across the Sciences: Keys and Clues,"
               BioScience, Vol. 51, No. 5, May, 2001.
               https://stat.ethz.ch/~stahel/lognormal/bioscience.pdf
        .. [2] Reiss, R.D. and Thomas, M., "Statistical Analysis of Extreme
               Values," Basel: Birkhauser Verlag, 2001, pp. 31-32.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, sigma = 3., 1. # mean and standard deviation
        >>> s = np.random.lognormal(mu, sigma, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 100, density=True, align='mid')

        >>> x = np.linspace(min(bins), max(bins), 10000)
        >>> pdf = (np.exp(-(np.log(x) - mu)**2 / (2 * sigma**2))
        ...        / (x * sigma * np.sqrt(2 * np.pi)))

        >>> plt.plot(x, pdf, linewidth=2, color='r')
        >>> plt.axis('tight')
        >>> plt.show()

        Demonstrate that taking the products of random samples from a uniform
        distribution can be fit well by a log-normal probability density
        function.

        >>> # Generate a thousand samples: each is the product of 100 random
        >>> # values, drawn from a normal distribution.
        >>> b = []
        >>> for i in range(1000):
        ...    a = 10. + np.random.standard_normal(100)
        ...    b.append(np.product(a))

        >>> b = np.array(b) / np.min(b) # scale values to be positive
        >>> count, bins, ignored = plt.hist(b, 100, density=True, align='mid')
        >>> sigma = np.std(np.log(b))
        >>> mu = np.mean(np.log(b))

        >>> x = np.linspace(min(bins), max(bins), 10000)
        >>> pdf = (np.exp(-(np.log(x) - mu)**2 / (2 * sigma**2))
        ...        / (x * sigma * np.sqrt(2 * np.pi)))

        >>> plt.plot(x, pdf, color='r', linewidth=2)
        >>> plt.show()

        
        logistic(loc=0.0, scale=1.0, size=None)

        Draw samples from a logistic distribution.

        Samples are drawn from a logistic distribution with specified
        parameters, loc (location or mean, also median), and scale (>0).

        Parameters
        ----------
        loc : float or array_like of floats, optional
            Parameter of the distribution. Default is 0.
        scale : float or array_like of floats, optional
            Parameter of the distribution. Must be non-negative.
            Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized logistic distribution.

        See Also
        --------
        scipy.stats.logistic : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Logistic distribution is

        .. math:: P(x) = P(x) = \frac{e^{-(x-\mu)/s}}{s(1+e^{-(x-\mu)/s})^2},

        where :math:`\mu` = location and :math:`s` = scale.

        The Logistic distribution is used in Extreme Value problems where it
        can act as a mixture of Gumbel distributions, in Epidemiology, and by
        the World Chess Federation (FIDE) where it is used in the Elo ranking
        system, assuming the performance of each player is a logistically
        distributed random variable.

        References
        ----------
        .. [1] Reiss, R.-D. and Thomas M. (2001), "Statistical Analysis of
               Extreme Values, from Insurance, Finance, Hydrology and Other
               Fields," Birkhauser Verlag, Basel, pp 132-133.
        .. [2] Weisstein, Eric W. "Logistic Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/LogisticDistribution.html
        .. [3] Wikipedia, "Logistic-distribution",
               https://en.wikipedia.org/wiki/Logistic_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> loc, scale = 10, 1
        >>> s = np.random.logistic(loc, scale, 10000)
        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, bins=50)

        #   plot against distribution

        >>> def logist(x, loc, scale):
        ...     return np.exp((loc-x)/scale)/(scale*(1+np.exp((loc-x)/scale))**2)
        >>> lgst_val = logist(bins, loc, scale)
        >>> plt.plot(bins, lgst_val * count.max() / lgst_val.max())
        >>> plt.show()

        
        hypergeometric(ngood, nbad, nsample, size=None)

        Draw samples from a Hypergeometric distribution.

        Samples are drawn from a hypergeometric distribution with specified
        parameters, `ngood` (ways to make a good selection), `nbad` (ways to make
        a bad selection), and `nsample` (number of items sampled, which is less
        than or equal to the sum ``ngood + nbad``).

        Parameters
        ----------
        ngood : int or array_like of ints
            Number of ways to make a good selection.  Must be nonnegative.
        nbad : int or array_like of ints
            Number of ways to make a bad selection.  Must be nonnegative.
        nsample : int or array_like of ints
            Number of items sampled.  Must be at least 1 and at most
            ``ngood + nbad``.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if `ngood`, `nbad`, and `nsample`
            are all scalars.  Otherwise, ``np.broadcast(ngood, nbad, nsample).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized hypergeometric distribution. Each
            sample is the number of good items within a randomly selected subset of
            size `nsample` taken from a set of `ngood` good items and `nbad` bad items.

        See Also
        --------
        scipy.stats.hypergeom : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Hypergeometric distribution is

        .. math:: P(x) = \frac{\binom{g}{x}\binom{b}{n-x}}{\binom{g+b}{n}},

        where :math:`0 \le x \le n` and :math:`n-b \le x \le g`

        for P(x) the probability of ``x`` good results in the drawn sample,
        g = `ngood`, b = `nbad`, and n = `nsample`.

        Consider an urn with black and white marbles in it, `ngood` of them
        are black and `nbad` are white. If you draw `nsample` balls without
        replacement, then the hypergeometric distribution describes the
        distribution of black balls in the drawn sample.

        Note that this distribution is very similar to the binomial
        distribution, except that in this case, samples are drawn without
        replacement, whereas in the Binomial case samples are drawn with
        replacement (or the sample space is infinite). As the sample space
        becomes large, this distribution approaches the binomial.

        References
        ----------
        .. [1] Lentner, Marvin, "Elementary Applied Statistics", Bogden
               and Quigley, 1972.
        .. [2] Weisstein, Eric W. "Hypergeometric Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/HypergeometricDistribution.html
        .. [3] Wikipedia, "Hypergeometric distribution",
               https://en.wikipedia.org/wiki/Hypergeometric_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> ngood, nbad, nsamp = 100, 2, 10
        # number of good, number of bad, and number of samples
        >>> s = np.random.hypergeometric(ngood, nbad, nsamp, 1000)
        >>> from matplotlib.pyplot import hist
        >>> hist(s)
        #   note that it is very unlikely to grab both bad items

        Suppose you have an urn with 15 white and 15 black marbles.
        If you pull 15 marbles at random, how likely is it that
        12 or more of them are one color?

        >>> s = np.random.hypergeometric(15, 15, 15, 100000)
        >>> sum(s>=12)/100000. + sum(s<=3)/100000.
        #   answer = 0.003 ... pretty unlikely!

        
        gumbel(loc=0.0, scale=1.0, size=None)

        Draw samples from a Gumbel distribution.

        Draw samples from a Gumbel distribution with specified location and
        scale.  For more information on the Gumbel distribution, see
        Notes and References below.

        Parameters
        ----------
        loc : float or array_like of floats, optional
            The location of the mode of the distribution. Default is 0.
        scale : float or array_like of floats, optional
            The scale parameter of the distribution. Default is 1. Must be non-
            negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Gumbel distribution.

        See Also
        --------
        scipy.stats.gumbel_l
        scipy.stats.gumbel_r
        scipy.stats.genextreme
        weibull

        Notes
        -----
        The Gumbel (or Smallest Extreme Value (SEV) or the Smallest Extreme
        Value Type I) distribution is one of a class of Generalized Extreme
        Value (GEV) distributions used in modeling extreme value problems.
        The Gumbel is a special case of the Extreme Value Type I distribution
        for maximums from distributions with "exponential-like" tails.

        The probability density for the Gumbel distribution is

        .. math:: p(x) = \frac{e^{-(x - \mu)/ \beta}}{\beta} e^{ -e^{-(x - \mu)/
                  \beta}},

        where :math:`\mu` is the mode, a location parameter, and
        :math:`\beta` is the scale parameter.

        The Gumbel (named for German mathematician Emil Julius Gumbel) was used
        very early in the hydrology literature, for modeling the occurrence of
        flood events. It is also used for modeling maximum wind speed and
        rainfall rates.  It is a "fat-tailed" distribution - the probability of
        an event in the tail of the distribution is larger than if one used a
        Gaussian, hence the surprisingly frequent occurrence of 100-year
        floods. Floods were initially modeled as a Gaussian process, which
        underestimated the frequency of extreme events.

        It is one of a class of extreme value distributions, the Generalized
        Extreme Value (GEV) distributions, which also includes the Weibull and
        Frechet.

        The function has a mean of :math:`\mu + 0.57721\beta` and a variance
        of :math:`\frac{\pi^2}{6}\beta^2`.

        References
        ----------
        .. [1] Gumbel, E. J., "Statistics of Extremes,"
               New York: Columbia University Press, 1958.
        .. [2] Reiss, R.-D. and Thomas, M., "Statistical Analysis of Extreme
               Values from Insurance, Finance, Hydrology and Other Fields,"
               Basel: Birkhauser Verlag, 2001.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, beta = 0, 0.1 # location and scale
        >>> s = np.random.gumbel(mu, beta, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> plt.plot(bins, (1/beta)*np.exp(-(bins - mu)/beta)
        ...          * np.exp( -np.exp( -(bins - mu) /beta) ),
        ...          linewidth=2, color='r')
        >>> plt.show()

        Show how an extreme value distribution can arise from a Gaussian process
        and compare to a Gaussian:

        >>> means = []
        >>> maxima = []
        >>> for i in range(0,1000) :
        ...    a = np.random.normal(mu, beta, 1000)
        ...    means.append(a.mean())
        ...    maxima.append(a.max())
        >>> count, bins, ignored = plt.hist(maxima, 30, density=True)
        >>> beta = np.std(maxima) * np.sqrt(6) / np.pi
        >>> mu = np.mean(maxima) - 0.57721*beta
        >>> plt.plot(bins, (1/beta)*np.exp(-(bins - mu)/beta)
        ...          * np.exp(-np.exp(-(bins - mu)/beta)),
        ...          linewidth=2, color='r')
        >>> plt.plot(bins, 1/(beta * np.sqrt(2 * np.pi))
        ...          * np.exp(-(bins - mu)**2 / (2 * beta**2)),
        ...          linewidth=2, color='g')
        >>> plt.show()

        
        geometric(p, size=None)

        Draw samples from the geometric distribution.

        Bernoulli trials are experiments with one of two outcomes:
        success or failure (an example of such an experiment is flipping
        a coin).  The geometric distribution models the number of trials
        that must be run in order to achieve success.  It is therefore
        supported on the positive integers, ``k = 1, 2, ...``.

        The probability mass function of the geometric distribution is

        .. math:: f(k) = (1 - p)^{k - 1} p

        where `p` is the probability of success of an individual trial.

        Parameters
        ----------
        p : float or array_like of floats
            The probability of success of an individual trial.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``p`` is a scalar.  Otherwise,
            ``np.array(p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized geometric distribution.

        Examples
        --------
        Draw ten thousand values from the geometric distribution,
        with the probability of an individual success equal to 0.35:

        >>> z = np.random.geometric(p=0.35, size=10000)

        How many trials succeeded after a single run?

        >>> (z == 1).sum() / 10000.
        0.34889999999999999 #random

        
        gamma(shape, scale=1.0, size=None)

        Draw samples from a Gamma distribution.

        Samples are drawn from a Gamma distribution with specified parameters,
        `shape` (sometimes designated "k") and `scale` (sometimes designated
        "theta"), where both parameters are > 0.

        Parameters
        ----------
        shape : float or array_like of floats
            The shape of the gamma distribution. Must be non-negative.
        scale : float or array_like of floats, optional
            The scale of the gamma distribution. Must be non-negative.
            Default is equal to 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``shape`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(shape, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized gamma distribution.

        See Also
        --------
        scipy.stats.gamma : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gamma distribution is

        .. math:: p(x) = x^{k-1}\frac{e^{-x/\theta}}{\theta^k\Gamma(k)},

        where :math:`k` is the shape and :math:`\theta` the scale,
        and :math:`\Gamma` is the Gamma function.

        The Gamma distribution is often used to model the times to failure of
        electronic components, and arises naturally in processes for which the
        waiting times between Poisson distributed events are relevant.

        References
        ----------
        .. [1] Weisstein, Eric W. "Gamma Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/GammaDistribution.html
        .. [2] Wikipedia, "Gamma distribution",
               https://en.wikipedia.org/wiki/Gamma_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> shape, scale = 2., 2.  # mean=4, std=2*sqrt(2)
        >>> s = np.random.gamma(shape, scale, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> import scipy.special as sps  # doctest: +SKIP
        >>> count, bins, ignored = plt.hist(s, 50, density=True)
        >>> y = bins**(shape-1)*(np.exp(-bins/scale) /  # doctest: +SKIP
        ...                      (sps.gamma(shape)*scale**shape))
        >>> plt.plot(bins, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        f(dfnum, dfden, size=None)

        Draw samples from an F distribution.

        Samples are drawn from an F distribution with specified parameters,
        `dfnum` (degrees of freedom in numerator) and `dfden` (degrees of
        freedom in denominator), where both parameters must be greater than
        zero.

        The random variate of the F distribution (also known as the
        Fisher distribution) is a continuous probability distribution
        that arises in ANOVA tests, and is the ratio of two chi-square
        variates.

        Parameters
        ----------
        dfnum : float or array_like of floats
            Degrees of freedom in numerator, must be > 0.
        dfden : float or array_like of float
            Degrees of freedom in denominator, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``dfnum`` and ``dfden`` are both scalars.
            Otherwise, ``np.broadcast(dfnum, dfden).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Fisher distribution.

        See Also
        --------
        scipy.stats.f : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The F statistic is used to compare in-group variances to between-group
        variances. Calculating the distribution depends on the sampling, and
        so it is a function of the respective degrees of freedom in the
        problem.  The variable `dfnum` is the number of samples minus one, the
        between-groups degrees of freedom, while `dfden` is the within-groups
        degrees of freedom, the sum of the number of samples in each group
        minus the number of groups.

        References
        ----------
        .. [1] Glantz, Stanton A. "Primer of Biostatistics.", McGraw-Hill,
               Fifth Edition, 2002.
        .. [2] Wikipedia, "F-distribution",
               https://en.wikipedia.org/wiki/F-distribution

        Examples
        --------
        An example from Glantz[1], pp 47-40:

        Two groups, children of diabetics (25 people) and children from people
        without diabetes (25 controls). Fasting blood glucose was measured,
        case group had a mean value of 86.1, controls had a mean value of
        82.2. Standard deviations were 2.09 and 2.49 respectively. Are these
        data consistent with the null hypothesis that the parents diabetic
        status does not affect their children's blood glucose levels?
        Calculating the F statistic from the data gives a value of 36.01.

        Draw samples from the distribution:

        >>> dfnum = 1. # between group degrees of freedom
        >>> dfden = 48. # within groups degrees of freedom
        >>> s = np.random.f(dfnum, dfden, 1000)

        The lower bound for the top 1% of the samples is :

        >>> np.sort(s)[-10]
        7.61988120985 # random

        So there is about a 1% chance that the F statistic will exceed 7.62,
        the measured value is 36, so the null hypothesis is rejected at the 1%
        level.

        
        choice(a, size=None, replace=True, p=None)

        Generates a random sample from a given 1-D array

                .. versionadded:: 1.7.0

        Parameters
        ----------
        a : 1-D array-like or int
            If an ndarray, a random sample is generated from its elements.
            If an int, the random sample is generated as if a were np.arange(a)
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.
        replace : boolean, optional
            Whether the sample is with or without replacement
        p : 1-D array-like, optional
            The probabilities associated with each entry in a.
            If not given the sample assumes a uniform distribution over all
            entries in a.

        Returns
        -------
        samples : single item or ndarray
            The generated random samples

        Raises
        ------
        ValueError
            If a is an int and less than zero, if a or p are not 1-dimensional,
            if a is an array-like of size 0, if p is not a vector of
            probabilities, if a and p have different lengths, or if
            replace=False and the sample size is greater than the population
            size

        See Also
        --------
        randint, shuffle, permutation

        Examples
        --------
        Generate a uniform random sample from np.arange(5) of size 3:

        >>> np.random.choice(5, 3)
        array([0, 3, 4]) # random
        >>> #This is equivalent to np.random.randint(0,5,3)

        Generate a non-uniform random sample from np.arange(5) of size 3:

        >>> np.random.choice(5, 3, p=[0.1, 0, 0.3, 0.6, 0])
        array([3, 3, 0]) # random

        Generate a uniform random sample from np.arange(5) of size 3 without
        replacement:

        >>> np.random.choice(5, 3, replace=False)
        array([3,1,0]) # random
        >>> #This is equivalent to np.random.permutation(np.arange(5))[:3]

        Generate a non-uniform random sample from np.arange(5) of size
        3 without replacement:

        >>> np.random.choice(5, 3, replace=False, p=[0.1, 0, 0.3, 0.6, 0])
        array([2, 3, 0]) # random

        Any of the above can be repeated with an arbitrary array-like
        instead of just integers. For instance:

        >>> aa_milne_arr = ['pooh', 'rabbit', 'piglet', 'Christopher']
        >>> np.random.choice(aa_milne_arr, 5, p=[0.5, 0.1, 0.1, 0.3])
        array(['pooh', 'pooh', 'pooh', 'Christopher', 'piglet'], # random
              dtype='<U11')

        
        chisquare(df, size=None)

        Draw samples from a chi-square distribution.

        When `df` independent random variables, each with standard normal
        distributions (mean 0, variance 1), are squared and summed, the
        resulting distribution is chi-square (see Notes).  This distribution
        is often used in hypothesis testing.

        Parameters
        ----------
        df : float or array_like of floats
             Number of degrees of freedom, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` is a scalar.  Otherwise,
            ``np.array(df).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized chi-square distribution.

        Raises
        ------
        ValueError
            When `df` <= 0 or when an inappropriate `size` (e.g. ``size=-1``)
            is given.

        Notes
        -----
        The variable obtained by summing the squares of `df` independent,
        standard normally distributed random variables:

        .. math:: Q = \sum_{i=0}^{\mathtt{df}} X^2_i

        is chi-square distributed, denoted

        .. math:: Q \sim \chi^2_k.

        The probability density function of the chi-squared distribution is

        .. math:: p(x) = \frac{(1/2)^{k/2}}{\Gamma(k/2)}
                         x^{k/2 - 1} e^{-x/2},

        where :math:`\Gamma` is the gamma function,

        .. math:: \Gamma(x) = \int_0^{-\infty} t^{x - 1} e^{-t} dt.

        References
        ----------
        .. [1] NIST "Engineering Statistics Handbook"
               https://www.itl.nist.gov/div898/handbook/eda/section3/eda3666.htm

        Examples
        --------
        >>> np.random.chisquare(2,4)
        array([ 1.89920014,  9.00867716,  3.13710533,  5.62318272]) # random

        
        bytes(length)

        Return random bytes.

        Parameters
        ----------
        length : int
            Number of random bytes.

        Returns
        -------
        out : str
            String of length `length`.

        Examples
        --------
        >>> np.random.bytes(10)
        ' eh\x85\x022SZ\xbf\xa4' #random

        
        binomial(n, p, size=None)

        Draw samples from a binomial distribution.

        Samples are drawn from a binomial distribution with specified
        parameters, n trials and p probability of success where
        n an integer >= 0 and p is in the interval [0,1]. (n may be
        input as a float, but it is truncated to an integer in use)

        Parameters
        ----------
        n : int or array_like of ints
            Parameter of the distribution, >= 0. Floats are also accepted,
            but they will be truncated to integers.
        p : float or array_like of floats
            Parameter of the distribution, >= 0 and <=1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``n`` and ``p`` are both scalars.
            Otherwise, ``np.broadcast(n, p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized binomial distribution, where
            each sample is equal to the number of successes over the n trials.

        See Also
        --------
        scipy.stats.binom : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the binomial distribution is

        .. math:: P(N) = \binom{n}{N}p^N(1-p)^{n-N},

        where :math:`n` is the number of trials, :math:`p` is the probability
        of success, and :math:`N` is the number of successes.

        When estimating the standard error of a proportion in a population by
        using a random sample, the normal distribution works well unless the
        product p*n <=5, where p = population proportion estimate, and n =
        number of samples, in which case the binomial distribution is used
        instead. For example, a sample of 15 people shows 4 who are left
        handed, and 11 who are right handed. Then p = 4/15 = 27%. 0.27*15 = 4,
        so the binomial distribution should be used in this case.

        References
        ----------
        .. [1] Dalgaard, Peter, "Introductory Statistics with R",
               Springer-Verlag, 2002.
        .. [2] Glantz, Stanton A. "Primer of Biostatistics.", McGraw-Hill,
               Fifth Edition, 2002.
        .. [3] Lentner, Marvin, "Elementary Applied Statistics", Bogden
               and Quigley, 1972.
        .. [4] Weisstein, Eric W. "Binomial Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/BinomialDistribution.html
        .. [5] Wikipedia, "Binomial distribution",
               https://en.wikipedia.org/wiki/Binomial_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> n, p = 10, .5  # number of trials, probability of each trial
        >>> s = np.random.binomial(n, p, 1000)
        # result of flipping a coin 10 times, tested 1000 times.

        A real world example. A company drills 9 wild-cat oil exploration
        wells, each with an estimated probability of success of 0.1. All nine
        wells fail. What is the probability of that happening?

        Let's do 20,000 trials of the model, and count the number that
        generate zero positive results.

        >>> sum(np.random.binomial(9, 0.1, 20000) == 0)/20000.
        # answer = 0.38885, or 38%.

        a must be greater than 0 unless no samples are taken'a' cannot be empty unless no samples are takenUnsupported dtype "%s" for randintRandomState.standard_gamma (line 1341)RandomState.multivariate_normal (line 3614)RandomState.logseries (line 3531)RandomState.lognormal (line 2626)RandomState.hypergeometric (line 3403)RandomState.geometric (line 3350)RandomState.dirichlet (line 3892)RandomState.chisquare (line 1659)
        wald(mean, scale, size=None)

        Draw samples from a Wald, or inverse Gaussian, distribution.

        As the scale approaches infinity, the distribution becomes more like a
        Gaussian. Some references claim that the Wald is an inverse Gaussian
        with mean equal to 1, but this is by no means universal.

        The inverse Gaussian distribution was first studied in relationship to
        Brownian motion. In 1956 M.C.K. Tweedie used the name inverse Gaussian
        because there is an inverse relationship between the time to cover a
        unit distance and distance covered in unit time.

        Parameters
        ----------
        mean : float or array_like of floats
            Distribution mean, must be > 0.
        scale : float or array_like of floats
            Scale parameter, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mean`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(mean, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Wald distribution.

        Notes
        -----
        The probability density function for the Wald distribution is

        .. math:: P(x;mean,scale) = \sqrt{\frac{scale}{2\pi x^3}}e^
                                    \frac{-scale(x-mean)^2}{2\cdotp mean^2x}

        As noted above the inverse Gaussian distribution first arise
        from attempts to model Brownian motion. It is also a
        competitor to the Weibull for use in reliability modeling and
        modeling stock returns and interest rate processes.

        References
        ----------
        .. [1] Brighton Webs Ltd., Wald Distribution,
               https://web.archive.org/web/20090423014010/http://www.brighton-webs.co.uk:80/distributions/wald.asp
        .. [2] Chhikara, Raj S., and Folks, J. Leroy, "The Inverse Gaussian
               Distribution: Theory : Methodology, and Applications", CRC Press,
               1988.
        .. [3] Wikipedia, "Inverse Gaussian distribution"
               https://en.wikipedia.org/wiki/Inverse_Gaussian_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram:

        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(np.random.wald(3, 2, 100000), bins=200, density=True)
        >>> plt.show()

        
        standard_normal(size=None)

        Draw samples from a standard Normal distribution (mean=0, stdev=1).

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray
            A floating-point array of shape ``size`` of drawn samples, or a
            single sample if ``size`` was not specified.

        Notes
        -----
        For random samples from :math:`N(\mu, \sigma^2)`, use one of::

            mu + sigma * np.random.standard_normal(size=...)
            np.random.normal(mu, sigma, size=...)

        See Also
        --------
        normal :
            Equivalent function with additional ``loc`` and ``scale`` arguments
            for setting the mean and standard deviation.

        Examples
        --------
        >>> np.random.standard_normal()
        2.1923875335537315 #random

        >>> s = np.random.standard_normal(8000)
        >>> s
        array([ 0.6888893 ,  0.78096262, -0.89086505, ...,  0.49876311,  # random
               -0.38672696, -0.4685006 ])                                # random
        >>> s.shape
        (8000,)
        >>> s = np.random.standard_normal(size=(3, 4, 2))
        >>> s.shape
        (3, 4, 2)

        Two-by-four array of samples from :math:`N(3, 6.25)`:

        >>> 3 + 2.5 * np.random.standard_normal(size=(2, 4))
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        standard_gamma(shape, size=None)

        Draw samples from a standard Gamma distribution.

        Samples are drawn from a Gamma distribution with specified parameters,
        shape (sometimes designated "k") and scale=1.

        Parameters
        ----------
        shape : float or array_like of floats
            Parameter, must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``shape`` is a scalar.  Otherwise,
            ``np.array(shape).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized standard gamma distribution.

        See Also
        --------
        scipy.stats.gamma : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gamma distribution is

        .. math:: p(x) = x^{k-1}\frac{e^{-x/\theta}}{\theta^k\Gamma(k)},

        where :math:`k` is the shape and :math:`\theta` the scale,
        and :math:`\Gamma` is the Gamma function.

        The Gamma distribution is often used to model the times to failure of
        electronic components, and arises naturally in processes for which the
        waiting times between Poisson distributed events are relevant.

        References
        ----------
        .. [1] Weisstein, Eric W. "Gamma Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/GammaDistribution.html
        .. [2] Wikipedia, "Gamma distribution",
               https://en.wikipedia.org/wiki/Gamma_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> shape, scale = 2., 1. # mean and width
        >>> s = np.random.standard_gamma(shape, 1000000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> import scipy.special as sps  # doctest: +SKIP
        >>> count, bins, ignored = plt.hist(s, 50, density=True)
        >>> y = bins**(shape-1) * ((np.exp(-bins/scale))/  # doctest: +SKIP
        ...                       (sps.gamma(shape) * scale**shape))
        >>> plt.plot(bins, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        standard_exponential(size=None)

        Draw samples from the standard exponential distribution.

        `standard_exponential` is identical to the exponential distribution
        with a scale parameter of 1.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray
            Drawn samples.

        Examples
        --------
        Output a 3x8000 array:

        >>> n = np.random.standard_exponential((3, 8000))

        
        standard_cauchy(size=None)

        Draw samples from a standard Cauchy distribution with mode = 0.

        Also known as the Lorentz distribution.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        samples : ndarray or scalar
            The drawn samples.

        Notes
        -----
        The probability density function for the full Cauchy distribution is

        .. math:: P(x; x_0, \gamma) = \frac{1}{\pi \gamma \bigl[ 1+
                  (\frac{x-x_0}{\gamma})^2 \bigr] }

        and the Standard Cauchy distribution just sets :math:`x_0=0` and
        :math:`\gamma=1`

        The Cauchy distribution arises in the solution to the driven harmonic
        oscillator problem, and also describes spectral line broadening. It
        also describes the distribution of values at which a line tilted at
        a random angle will cut the x axis.

        When studying hypothesis tests that assume normality, seeing how the
        tests perform on data from a Cauchy distribution is a good indicator of
        their sensitivity to a heavy-tailed distribution, since the Cauchy looks
        very much like a Gaussian distribution, but with heavier tails.

        References
        ----------
        .. [1] NIST/SEMATECH e-Handbook of Statistical Methods, "Cauchy
              Distribution",
              https://www.itl.nist.gov/div898/handbook/eda/section3/eda3663.htm
        .. [2] Weisstein, Eric W. "Cauchy Distribution." From MathWorld--A
              Wolfram Web Resource.
              http://mathworld.wolfram.com/CauchyDistribution.html
        .. [3] Wikipedia, "Cauchy distribution"
              https://en.wikipedia.org/wiki/Cauchy_distribution

        Examples
        --------
        Draw samples and plot the distribution:

        >>> import matplotlib.pyplot as plt
        >>> s = np.random.standard_cauchy(1000000)
        >>> s = s[(s>-25) & (s<25)]  # truncate distribution so it plots well
        >>> plt.hist(s, bins=100)
        >>> plt.show()

        
        shuffle(x)

        Modify a sequence in-place by shuffling its contents.

        This function only shuffles the array along the first axis of a
        multi-dimensional array. The order of sub-arrays is changed but
        their contents remains the same.

        Parameters
        ----------
        x : array_like
            The array or list to be shuffled.

        Returns
        -------
        None

        Examples
        --------
        >>> arr = np.arange(10)
        >>> np.random.shuffle(arr)
        >>> arr
        [1 7 5 2 9 4 3 6 0 8] # random

        Multi-dimensional arrays are only shuffled along the first axis:

        >>> arr = np.arange(9).reshape((3, 3))
        >>> np.random.shuffle(arr)
        >>> arr
        array([[3, 4, 5], # random
               [6, 7, 8],
               [0, 1, 2]])

        
        random_sample(size=None)

        Return random floats in the half-open interval [0.0, 1.0).

        Results are from the "continuous uniform" distribution over the
        stated interval.  To sample :math:`Unif[a, b), b > a` multiply
        the output of `random_sample` by `(b-a)` and add `a`::

          (b - a) * random_sample() + a

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray of floats
            Array of random floats of shape `size` (unless ``size=None``, in which
            case a single float is returned).

        Examples
        --------
        >>> np.random.random_sample()
        0.47108547995356098 # random
        >>> type(np.random.random_sample())
        <class 'float'>
        >>> np.random.random_sample((5,))
        array([ 0.30220482,  0.86820401,  0.1654503 ,  0.11659149,  0.54323428]) # random

        Three-by-two array of random numbers from [-5, 0):

        >>> 5 * np.random.random_sample((3, 2)) - 5
        array([[-3.99149989, -0.52338984], # random
               [-2.99091858, -0.79479508],
               [-1.23204345, -1.75224494]])

        
        randn(d0, d1, ..., dn)

        Return a sample (or samples) from the "standard normal" distribution.

        .. note::
            This is a convenience function for users porting code from Matlab,
            and wraps `numpy.random.standard_normal`. That function takes a
            tuple to specify the size of the output, which is consistent with
            other NumPy functions like `numpy.zeros` and `numpy.ones`.

        If positive int_like arguments are provided, `randn` generates an array
        of shape ``(d0, d1, ..., dn)``, filled
        with random floats sampled from a univariate "normal" (Gaussian)
        distribution of mean 0 and variance 1. A single float randomly sampled
        from the distribution is returned if no argument is provided.

        Parameters
        ----------
        d0, d1, ..., dn : int, optional
            The dimensions of the returned array, must be non-negative.
            If no argument is given a single Python float is returned.

        Returns
        -------
        Z : ndarray or float
            A ``(d0, d1, ..., dn)``-shaped array of floating-point samples from
            the standard normal distribution, or a single such float if
            no parameters were supplied.

        See Also
        --------
        standard_normal : Similar, but takes a tuple as its argument.
        normal : Also accepts mu and sigma arguments.

        Notes
        -----
        For random samples from :math:`N(\mu, \sigma^2)`, use:

        ``sigma * np.random.randn(...) + mu``

        Examples
        --------
        >>> np.random.randn()
        2.1923875335537315  # random

        Two-by-four array of samples from N(3, 6.25):

        >>> 3 + 2.5 * np.random.randn(2, 4)
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        rand(d0, d1, ..., dn)

        Random values in a given shape.

        .. note::
            This is a convenience function for users porting code from Matlab,
            and wraps `numpy.random.random_sample`. That function takes a
            tuple to specify the size of the output, which is consistent with
            other NumPy functions like `numpy.zeros` and `numpy.ones`.

        Create an array of the given shape and populate it with
        random samples from a uniform distribution
        over ``[0, 1)``.

        Parameters
        ----------
        d0, d1, ..., dn : int, optional
            The dimensions of the returned array, must be non-negative.
            If no argument is given a single Python float is returned.

        Returns
        -------
        out : ndarray, shape ``(d0, d1, ..., dn)``
            Random values.

        See Also
        --------
        random

        Examples
        --------
        >>> np.random.rand(3,2)
        array([[ 0.14022471,  0.96360618],  #random
               [ 0.37601032,  0.25528411],  #random
               [ 0.49313049,  0.94909878]]) #random

        
        poisson(lam=1.0, size=None)

        Draw samples from a Poisson distribution.

        The Poisson distribution is the limit of the binomial distribution
        for large N.

        Parameters
        ----------
        lam : float or array_like of floats
            Expectation of interval, must be >= 0. A sequence of expectation
            intervals must be broadcastable over the requested size.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``lam`` is a scalar. Otherwise,
            ``np.array(lam).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Poisson distribution.

        Notes
        -----
        The Poisson distribution

        .. math:: f(k; \lambda)=\frac{\lambda^k e^{-\lambda}}{k!}

        For events with an expected separation :math:`\lambda` the Poisson
        distribution :math:`f(k; \lambda)` describes the probability of
        :math:`k` events occurring within the observed
        interval :math:`\lambda`.

        Because the output is limited to the range of the C int64 type, a
        ValueError is raised when `lam` is within 10 sigma of the maximum
        representable value.

        References
        ----------
        .. [1] Weisstein, Eric W. "Poisson Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/PoissonDistribution.html
        .. [2] Wikipedia, "Poisson distribution",
               https://en.wikipedia.org/wiki/Poisson_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> import numpy as np
        >>> s = np.random.poisson(5, 10000)

        Display histogram of the sample:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 14, density=True)
        >>> plt.show()

        Draw each 100 values for lambda 100 and 500:

        >>> s = np.random.poisson(lam=(100., 500.), size=(100, 2))

        
        permutation(x)

        Randomly permute a sequence, or return a permuted range.

        If `x` is a multi-dimensional array, it is only shuffled along its
        first index.

        Parameters
        ----------
        x : int or array_like
            If `x` is an integer, randomly permute ``np.arange(x)``.
            If `x` is an array, make a copy and shuffle the elements
            randomly.

        Returns
        -------
        out : ndarray
            Permuted sequence or array range.


        Examples
        --------
        >>> np.random.permutation(10)
        array([1, 7, 4, 3, 0, 9, 2, 5, 8, 6]) # random

        >>> np.random.permutation([1, 4, 9, 12, 15])
        array([15,  1,  9,  4, 12]) # random

        >>> arr = np.arange(9).reshape((3, 3))
        >>> np.random.permutation(arr)
        array([[6, 7, 8], # random
               [0, 1, 2],
               [3, 4, 5]])

        
        laplace(loc=0.0, scale=1.0, size=None)

        Draw samples from the Laplace or double exponential distribution with
        specified location (or mean) and scale (decay).

        The Laplace distribution is similar to the Gaussian/normal distribution,
        but is sharper at the peak and has fatter tails. It represents the
        difference between two independent, identically distributed exponential
        random variables.

        Parameters
        ----------
        loc : float or array_like of floats, optional
            The position, :math:`\mu`, of the distribution peak. Default is 0.
        scale : float or array_like of floats, optional
            :math:`\lambda`, the exponential decay. Default is 1. Must be non-
            negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Laplace distribution.

        Notes
        -----
        It has the probability density function

        .. math:: f(x; \mu, \lambda) = \frac{1}{2\lambda}
                                       \exp\left(-\frac{|x - \mu|}{\lambda}\right).

        The first law of Laplace, from 1774, states that the frequency
        of an error can be expressed as an exponential function of the
        absolute magnitude of the error, which leads to the Laplace
        distribution. For many problems in economics and health
        sciences, this distribution seems to model the data better
        than the standard Gaussian distribution.

        References
        ----------
        .. [1] Abramowitz, M. and Stegun, I. A. (Eds.). "Handbook of
               Mathematical Functions with Formulas, Graphs, and Mathematical
               Tables, 9th printing," New York: Dover, 1972.
        .. [2] Kotz, Samuel, et. al. "The Laplace Distribution and
               Generalizations, " Birkhauser, 2001.
        .. [3] Weisstein, Eric W. "Laplace Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/LaplaceDistribution.html
        .. [4] Wikipedia, "Laplace distribution",
               https://en.wikipedia.org/wiki/Laplace_distribution

        Examples
        --------
        Draw samples from the distribution

        >>> loc, scale = 0., 1.
        >>> s = np.random.laplace(loc, scale, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> x = np.arange(-8., 8., .01)
        >>> pdf = np.exp(-abs(x-loc)/scale)/(2.*scale)
        >>> plt.plot(x, pdf)

        Plot Gaussian for comparison:

        >>> g = (1/(scale * np.sqrt(2 * np.pi)) *
        ...      np.exp(-(x - loc)**2 / (2 * scale**2)))
        >>> plt.plot(x,g)

        
        dirichlet(alpha, size=None)

        Draw samples from the Dirichlet distribution.

        Draw `size` samples of dimension k from a Dirichlet distribution. A
        Dirichlet-distributed random variable can be seen as a multivariate
        generalization of a Beta distribution. The Dirichlet distribution
        is a conjugate prior of a multinomial distribution in Bayesian
        inference.

        Parameters
        ----------
        alpha : array
            Parameter of the distribution (k dimension for sample of
            dimension k).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        samples : ndarray,
            The drawn samples, of shape (size, alpha.ndim).

        Raises
        -------
        ValueError
            If any value in alpha is less than or equal to zero

        Notes
        -----
        The Dirichlet distribution is a distribution over vectors
        :math:`x` that fulfil the conditions :math:`x_i>0` and
        :math:`\sum_{i=1}^k x_i = 1`.

        The probability density function :math:`p` of a
        Dirichlet-distributed random vector :math:`X` is
        proportional to

        .. math:: p(x) \propto \prod_{i=1}^{k}{x^{\alpha_i-1}_i},

        where :math:`\alpha` is a vector containing the positive
        concentration parameters.

        The method uses the following property for computation: let :math:`Y`
        be a random vector which has components that follow a standard gamma
        distribution, then :math:`X = \frac{1}{\sum_{i=1}^k{Y_i}} Y`
        is Dirichlet-distributed

        References
        ----------
        .. [1] David McKay, "Information Theory, Inference and Learning
               Algorithms," chapter 23,
               http://www.inference.org.uk/mackay/itila/
        .. [2] Wikipedia, "Dirichlet distribution",
               https://en.wikipedia.org/wiki/Dirichlet_distribution

        Examples
        --------
        Taking an example cited in Wikipedia, this distribution can be used if
        one wanted to cut strings (each of initial length 1.0) into K pieces
        with different lengths, where each piece had, on average, a designated
        average length, but allowing some variation in the relative sizes of
        the pieces.

        >>> s = np.random.dirichlet((10, 5, 3), 20).transpose()

        >>> import matplotlib.pyplot as plt
        >>> plt.barh(range(20), s[0])
        >>> plt.barh(range(20), s[1], left=s[0], color='g')
        >>> plt.barh(range(20), s[2], left=s[0]+s[1], color='r')
        >>> plt.title("Lengths of Strings")

        RandomState.vonmises (line 1965)RandomState.rayleigh (line 2736)RandomState.logistic (line 2546)RandomState.binomial (line 2972)state dictionary is not valid.probabilities do not sum to 1RandomState.weibull (line 2145)RandomState.tomaxint (line 472)RandomState.shuffle (line 4031)RandomState.poisson (line 3196)RandomState.laplace (line 2343)RandomState.uniform (line 869)RandomState.randint (line 530)RandomState.pareto (line 2048)RandomState.normal (line 1239)RandomState.gumbel (line 2428)ndarray is not C contiguous'a' and 'p' must have same sizeRandomState.randn (line 1024)RandomState.power (line 2243)RandomState.gamma (line 1416)RandomState.choice (line 680)mean must be 1 dimensionalRange exceeds valid boundsRandomState.zipf (line 3269)RandomState.wald (line 2804)RandomState.bytes (line 651)probabilities contain NaNRandomState.seed (line 141)RandomState.rand (line 980)'p' must be 1-dimensionala must be 1-dimensionalRandomState.f (line 1494)standard_exponentialnoncentral_chisquarenumpy.random.mtrandmultivariate_normalngood + nbad < nsamplecline_in_tracebackDeprecationWarningnegative_binomial__randomstate_ctormay_share_memorybounded_integerssum(pvals[:-1]) > 1.0standard_normalstandard_cauchyrandom_integers_poisson_lam_maxstandard_gamma_legacy_seeding_integers_typeshypergeometricRuntimeWarningrandom_samplecount_nonzerobit_generatorOverflowErrorsearchsortedreturn_indexnoncentral_fRuntimeErrorpermutationmultinomialexponentialcheck_validRandomStateImportErrortriangularstandard_t__pyx_vtable__numpy.dualmtrand.pyxmode > rightlogical_orless_equalleft == rightissubdtypeempty_likeValueErrorIndexErrorset_statelogserieslognormalleft > modehas_gaussget_stategeometricdirichletchisquareTypeErrorMT19937warningsvonmisessubtractreversedrayleighoperatorlogisticitemsizeisscalarisnativeisfinitefloatingbinomialallcloseweibulluniformtobytesstridesshufflereshapereplacerandintpoissonnsamplemt19937laplaceintegergreaterfloat64castingcapsule at 0x{:X}asarrayalpha <= 0_MT19937unsafeuniqueuint64uint32uint16samplereducerandom_rand_pickleparetonormalnamelegacykwargs__import__ignoregumbelformatdoublecumsumctypeschoiceastypearangezerosuint8statesigmashapescalerightravelrangerandnraisepvalspowernumpyngoodkappaisnanint64int32int16indexgaussgammafinfoequal__enter__emptydtypedfnumdfden__class__bytesarrayalpha__all__zipfwarnwald__test__takesqrtsortsizesideseedrtolranfrandprodnoncndimnbad__name__modemean__main__longlocklessleftitemintpint8high__exit__datacopyboolbetaatolargstolsvd__str__poslowloclamkeyintgetepsdotcovanyalladd<u4npmuiddf)(pnlfbaTð?:Œ0âŽyE>ð¿˜ð?ÿÿÿÿÿÿÿÀUUUUUUÕ?"@mÅþ²{ò ?à?ø@>@˜3?Írû?q¼ÓëÃì?0@0C@€ï9úþB.æ? *ú«ü?ù,’|§l	@ÉyD<d&@ÊÏ:'Q@0Ì-óá!@
·ü‚Ž5%@Ï÷§!‰š)@M•u5.@t:?—€1@CÕºü3@Î2;œZ6@B*ßó09@FÓ?¦6æ;@„ÿ«>@:5/?¦À@@RîÕò2B@…96S«C@¾wízõ*E@©r4d¨°F@O¨«O<H@Ej…‹§ÍI@NrdK@çeÍ"vM@”g|q¡N@ïO~¶®#P@@3ñøP@1r‘SsÐQ@åÐY‹ ªR@@Zžýæ…S@„ ”›µcT@JÎ:c|CU@º–HG,%V@Xá·W@Xg²yîW@–=$Á(ÕX@£WR÷ö½Y@˜–Ân¨Z@¢+p\…”[@¡œ†0‚\@î>fq]@Oºîb^@ñœ¦+NT_@ŸݭC÷#`@©¤~{ž`@kbbç¯a@Y¥SȐ•a@Ãn“b@1ëÝIb@5cèa
c@Û“ø‹‹c@ͦ3š˜
d@¯\>Šd@‡ànz
e@sÚ9J‹e@FGGʪf@yyuð™Žf@IJC g@YÜ&ÿ”g@¹oF¦h@¡® ·›h@aÇçQL i@½¤áãa¥i@	F~xö*j@&—P±j@¯×Ùö”7k@!¶ß+›¾k@÷VÌøFl@‘¥Îl@¶·¸„tVm@pZ ÷Nßm@ïk9išhn@HQñOUòn@ƒaÆ,~|o@b4nʼnp@+e‹ÿ	Ip@còÛ¿Žp@)±V¨Ôp@*“øÅq@6GãÇaq@¬á�§q@>m#FJîq@ÕFKæ.5r@b)ÇÿC|r@WÐr‰Ãr@V…]ý
s@r‰ Rs@GIÑýqšs@÷
>6qâs@j£B±*t@A=ðört@fIw|»t@d¯'Í-u@X¦+{
Mu@ìÄ#
–u@ZGDßu@í;# (v@b”‡´%rv@¶iv{Իv@ŸØ¬w@¾÷ç«Ow@\&Áәw@}6û-#äw@h͙.x@þÄk?7yx@–'ûÃx@_Ã*åy@³ÈÑìôYy@Ì1¸*¥y@^TT„ðy@,{»L<z@:I$®¦‡z@À|*&nÓz@µ
dY{@룴hk{@
aö™·{@Íúf¯î|@&"™ùeP|@
4ŠŠÿœ|@ê0h»é|@¸÷“^˜6}@™—ƒ}@¤Þ)ó¶Ð}@L§¹÷~@€v@UUUUUUµ?µ¾dÈñgí?UUUUUUµ?lÁlÁf¿  J?88C¿$ÿ+•K?<™ٰj_¿¤A¤Az?—SˆBž¿…8–þÆ?5gGö¿€?/*p?3…f?(_?xY?յS?¹ôN?Ž¡J?¥F?DïB?Qt??u+<?Û
9?6?Ó?3?n‡0?ëé-?Äd+?Ñõ(?6›&?XS$?Í"?Yö?âÞ?mÕ?Ù?é?Æ?i+?q\?V—?™Û?Æ(
?s~?>Ü	?ÊA?Į?Ü"?ʝ?G?§?ðiþ>l‘û>7Äø>êö>*Jó>œœð>ìøí>Ì^ë>ïÍè>Fæ>çÆã>7Pá>ÁáÞ>K{Ü>Ú>‚Å×>ÇuÕ>;-Ó>±ëÐ>û°Î>ð|Ì>eOÊ>4(È>8Æ>LìÃ>N×Á>ȿ>•¾½>œº»>¼¹>Ú·>Ùε>ô߳>ö±>°>ñ0®>ƒU¬>¹~ª>|¬¨>¸ަ>Y¥>IP£>w¡>Ðҟ>Bž>ºeœ>)µš>~™>©_—>šº•>C”>”{’>€á>øJ>﷍>X(Œ>'œŠ>N‰>͇>x†>bŒ„>xƒ>¬—>õ!€>’^}>;z>Хw>@Òt>wr>b<o>ñyl>½i>²g>ÂSd>3§a>óÿ^>ô]\>&ÁY>z)W>â–T>P	R>·€O>ýL>5~J>3H>õŽE>nC>’²@>VK>>®è;>ŽŠ9>ë07>»Û4>óŠ2>ˆ>0>pö->¢²+>s)>»7'>%>†Í">˜ž >¼s>éL>*>=>Tð>TÙ>4Æ>í¶>y«
>ϣ>éŸ	>>L£>‡ª>lµ>å‡ÿ=+¬û=×÷=0
ô=ØCð=‰„ì=8Ìè=Ûå=hpá=ÓÌÝ=0Ú=šÖ=ê
Ó=n‚Ï=¢Ì=|…È=ôÅ=£Á=œ;¾=¼ں=Z€·=o,´=óް=ߗ­=.Wª=ا=×è£=%» =½“=™rš=´W—=	C”=“4‘=M,Ž=4*‹=D.ˆ=y8…=ÏH‚=†¾~=¥÷x=õ<s=rŽm=ìg=ãUb=ÑË\=ÞMW=
ÜQ=TvL=»G=AÏA=æ<=¬X7=–/2=©-=è(=Yý"==ì=9=£e=…ž
=Ðã=“5=¶'ù<týï<ƒìæ<õÝ<7Õ<8SÌ<C©Ã<»<\¤²<íIª<Ž
¢<‘æ™<Oޑ<+ò‰<"‚<ïßt<ɵe<ÓÇV<SH<·¥9<˜t+<ƅ<OÛ<‘w<ºê;OÑ;ú$¸;¾ԟ;ë9ˆ;œÅb;HÄ6;]£;«]É:X}:âî9e'‹5ìÄ2’µV2­™Œ27©2ˆ„Â2ÆÙ2Æfï2‚ß3ن3À3Hœ3®(&3Åo.3z63oN>3ËòE3lM3F¾T3/í[3ßûb3íi34Ãp3f€w3“&~3·[‚3Bš…3œψ3gü‹37!3“>’3÷T•3Õd˜3—n›3Ÿrž3Fq¡3ãj¤3Ã_§31Pª3r<­3Æ$°3k	³3›êµ3Œȸ3q£»3|{¾3ÛPÁ3¹#Ä3CôÆ3žÂÉ3òŽÌ3dYÏ3"Ò3+éÔ3®×3ürÚ3ö5Ý3Í÷ß3¸â3xå3”7è3ðõê3«³í3àpð3¤-ó3êõ37¦ø31bû3þ3ùl4ðÊ4ù(4‡4hå4áC4’¢4ƒ
4¿`4MÀ47 4…€4?á4nB4¤4L4i4aÌ4T04í”45ú42`4îÆ4p. 4¿–!4åÿ"4èi$4ÑÔ%4¨@'4t­(4>*4Š+4ëù,4ßj.4ðÜ/4'P14Ä24):44±54&)74™¢84c:4™;4$=4+–>4®@4¶˜A4KC4v¡D4B(F4¸°G4à:I4ÆÆJ4rTL4ïãM4GuO4„Q4²R4Ú4T4ÎU4EiW4ŸY4 ¦Z4ÔG\4Çë]4’_4š:a4”åb4ÿ’d4èBf4\õg4jªi4bk4‹m4ºÙn4¾™p4¤\r4}"t4Yëu4H·w4[†y4¥X{46.}4 4¼q€4§a4]S‚4æFƒ4N<„4 3…4å,†4+(‡4{%ˆ4ã$‰4o&Š4,*‹4'0Œ4m84
CŽ4P4•_4›q‘47†’4{“4w·”4>ԕ4àó–4s˜4<™4¶dš4›4­¿œ4$ò4(Ÿ4a 4–ž¡4lߢ4$¤4Ål¥4„¹¦4x
¨4Ä_©4ˆ¹ª4ê¬4{­4 ã®4EP°4©±4{:³4귴4);¶4nķ4îS¹4çéº4–†¼4<*¾4տ4‰‡Á4ÈAÃ4.Å4ÏÆ4עÈ4ÚÊ4ˆfÌ4RWÎ4²RÐ4*YÒ4FkÔ4œ‰Ö4δØ4‹íÚ44Ý4§Šß4²ðá4¢gä4ðæ4kŒé4¤<ì4…ï4“ßñ4yÕô4æ÷4uû4ò_þ4ç5Œ°5Ž5Œ5@5ó
5ø5å]5^é5­Ÿ5‡5q§5v
5»¼!5¾Î%5ÂV*5×s/5;S55‡:<5ÿœD5àNO5ó^5ÉNv5QHqoõMֻaÝnj DotTrùotoùuÓ$w'xîÍx,jyíy7\z׻zô{ÜW{S˜{»Ñ{.|Œ3|Ž]|ȃ|¸¦|ÆÆ|Iä|Œÿ|Í}C0}F}„Z}›m}‚}S}( }¯}-½}‚Ê}"×}ã}|î}Mù}™~i
~Æ~¶~B(~o0~C8~Ä?~öF~ßM~T~âZ~a~ìf~›l~r~]w~v|~`~ †~¶Š~$~m“~“—~•›~wŸ~:£~ަ~fª~ѭ~#±~Z´~y·~€º~q½~KÀ~Ã~ÁÅ~^È~éÊ~aÍ~ÇÏ~Ò~`Ô~”Ö~¹Ø~ÎÚ~ÕÜ~ÎÞ~¸à~–â~fä~*æ~âç~é~-ë~Áì~Jî~Éï~=ñ~§ò~ô~\õ~¨ö~ë÷~$ù~Uú~}û~œü~²ý~Áþ~Çÿ~Å»ª‘pHâ¤`	Â	i
	£6ÂH
È
A´!ˆèB–ä+m¨Ý5XtŠš¤§¤›‹tW3	ØŸ`Ìw·K×\Ø
L
·sÃ


G	{¤ÂÖßÜͲ‹Vÿ~þ~Ãü~dû~öù~xø~êö~Kõ~šó~Öñ~ÿï~î~ì~ýé~Ïç~‰å~)ã~®à~Þ~aÛ~ŒØ~•Õ~{Ò~;Ï~ÓË~AÈ~Ä~‘À~m¼~¸~z³~¤®~ˆ©~"¤~kž~]˜~ï‘~‹~ԃ~|~Ås~áj~Ua~W~÷K~ó?~æ2~¬$~~÷~
ñ}Ü}€Ä}	ª}Œ}ši}ÉA}}—Û|Q˜|øD|¼Ú{3N{˜Šz‡eyÙww7msð?7ˆåEî?ñÿP¦Ðì?'{ë{åë?*æ!ë?çúb¥ºvê?›mU—Þé?9ªUÄ1Té?/ÒÓv£Ôè?¸Åxè]è?&1$-Šîç?~Ô	›n…ç?cK©[»!ç?Æ„IÃÂæ?\Omúgæ?f¯§Áíæ?u¬Li=½å?s‡ڂ˜lå?š‰xºå?¯øQÁfÓä?iàŽûjŠä?%ᨯ™Cä?€‹±+Ëþã?ÑáDܻã?Ùݧ­zã?cE#;ã?^ÚEã#ýâ?$O¶˜Àâ?½2m…â?£PŒ"ŽKâ?È>ºêâ?‰{‡sÛá?%;Ç¥á?îoÎmÎoá?œ3¼‡;á?ÃJ9á?++ØÕà?*ÐTˆ[¤à?};î1¹sà?HeÒëèCà?$ó`±âà?vE!þ=Íß?úſŽ-rß?MBëцß?–K=ÀÞ?QÓ}6EiÞ?ü7áu“Þ?!§ˆ¿Ý?zí¹}ÙkÝ?~é½Ý?’à@ÜÁÈÜ?`ûƒÙÜxÜ?ƒ¥Ð*Ü?µî®8ÜÛ?ˆ™QiÛ?o€T”“CÛ?_ï(4°øÚ?åöýָ®Ú?@£j§eÚ?ô!u vÚ?’7ZiÖÙ?¨{	òÙ?šŸìIÙ?]TŒÙ?9]·çÀØ?Œ?¼„‰}Ø?8aDµé:Ø?Yζiù×?€Ɲҷ×?ãr^sSw×?ꍰ0‚7×?žd>[øÖ?œéä%۹Ö?Ÿ
Əþ{Ö?ä'HBÂ>Ö?vXï#Ö?lî1&ÆÕ?ï©:l°ŠÕ?磽!×OÕ?õ‰ލÕ?ù&×ÛÔ?Óڋ«¢Ô?タ+	jÔ?âAëî1Ô?N¡0ZúÓ?…²«0HÃÓ?ï}±G·ŒÓ?ÝÐü(¥VÓ?5$1Æ!Ó?pB9 õëÒ?b"®FS·Ò?)vEW(ƒÒ?ývG}rOÒ?ÿ~ñ/Ò?Û	{÷^éÑ?Z¼šáý¶Ñ?‚…Ñ?ï‘âބSÑ?ºŸºÌi"Ñ?l¦ÙR¸ñÐ?3SønÁÐ?>éNŒ‘Ð?Ґ]ðbÐ?,|y€õ2Ð?jG“«>Ð?T“ÿLҫÏ?~>–\çOÏ?›àèºôÎ?ò@YHšÎ?§ƒ/֎@Î?9O"HŒçÍ?¸îã>Í?ý1´ ¢7Í?ŸÐö8¶àÌ?ÎOxŠÌ?]æ4Ì?5D9gþßË?¥är|¾‹Ë?>ïܸ$8Ë?[ëB/åÊ?I<ÀKܒÊ?¼\ß*AÊ?ÅäÑðÉ?#>䠟É?¡’æžÆOÉ?y»%d†É?ÕbPŸޱÈ?ùŒÄÍcÈ?æç”PRÈ?®…ÈjÉÇ?þFŸ¹}Ç?9(¹Q1Ç?ê„îcæÆ?(ڦ^w›Æ?¬Ñ0U^QÆ?1j°úÐÆ?¶ÂT	ξÅ?õx.BTvÅ?IŒmb.Å?ú¶<X÷æÄ?–0˜Ø Ä?ÆÌ-ɰYÄ?šj8ÓÄ?©ø…wÎÃ?ÉՔ&‰Ã?¯úßBEÃ?n}¾ªgÃ?4Ï…
¾Â?@™`r*{Â?xè»{Æ8Â?eÊ=¯ÝöÁ?fÖ1 oµÁ?x®ðæytÁ?/qÉ ý3Á? ìï÷óÀ?/¶T{i´À?¾¥·îPuÀ?nz­6À?ê˦üð¿?f…u¿?<îóú¾?̹ŽF¾?ûºaõz¾?˜“­‘½?×M‘‡½?Wý€k[£¼?¯.ô.¼?&qWš¹»?He5TF»?eTe±CӺ?·8Ù=]aº?(ôFÐMð¹?pk3G€¹?¹t刯¹?;SZƒ¢¸?ºÄ;,`4¸?ó¦׀sǷ?<†W[·?¶„Hð¶? ¶0܍…¶?÷ÞÊ\Þ¶?>»‘íû²µ?6ÐY¹åJµ?)ِòšã´?\˜CÓ}´?±%d´?žŸ›™w²³?çÆSN³?э”vöê²?pÎaˆ²?Œ,Q’&²?@£o¨‰ű?’SuFe±?PÊV‡È±?;‡§°?Èõ×I°?v–iºÐׯ?4èD™ô¯?å².¥žg®?X1Iα­?Jyƒý¬?é!d¼J¬?…پz™«?„€j»éª?8ñG;ª?L|{‚ʎ©?mw€n—ã¨?k9:è9¨?ž«´¼‘§?R¯¶yë¦?A &ÇòE¦?ÊÒÅU¢¥?ëŖò<¥?k&«_¤?ÿÿG #?®?~#£?ÀVÉ#‡¢?Ôó_´ì¡?¡³ŸÐS¡?QÖ|z¼ ?îú
Y²& ?˜¯Çö$Ÿ?htQz®ÿ?3Tݜ?pXúP¡¾›?›N’æ梚?H*gŠ™?g™ìS(u˜?–ü‡Ú1c—?w@¢r‹T–?Q«¦=I•?¾ð‡ÎQA”?„]1%Ò<“?2:¹áÉ;’?__rTE>‘?ð	RD?ÎljÞý›Ž?W'n¹¶Œ?-ÉBUú؊?½§hê‰?õtªæ¶4‡?Ëä“n…?boQx°ƒ?qv³íiû?ù×_)òN€?Å]túQW}?6H—Ôé#z? 6ì7Ÿw?ý"ãΗús?C@Wi=q?Ḱ³Xl?ÿþ¡óˆØf?$£á¨k”a?%>Tµ+Y?¹ü÷
²O?KŸ2Ã=?Á]¿”ìdÑ<A]‹X`<+M[I²Öj<º[©5“q<s*Jåæ"u<€zÂûPx<̷yïÑ8{<˜½m·Øì}<<\ÆIð;€<pöÖ$Ûp<3&ڐ˜‚<Ên=þˆ³ƒ<!þÆń<ÃJøͅ<½+§ð@φ<ÐÚÍɇ<o`ÓTY¾ˆ<Ò7"U€­‰<R]¾ȗŠ<ģÝݥ}‹<‰?Œ×{_Œ<6|ñM¢=<ZsñxfŽ<ªO_ÏðŽ<	2h]Òď<XujívK<ü€›GH³<¯õI‡ó‘< ßK댑<çI>é&ä‘<.ÿ8eÒG’<h#ឪ’<KÚ&¥š“<‚mâÒm“< b!ÑSΓ<HgpÊ(.”<ç5_\”<“Íkøë”<Mox)J•<ý¾¸=ާ•<Ï.Ýǘ–<àhm-a–<D©úbS½–<»yy—<sy#nt—<r~|oϗ<™ÕþS*˜<ìá+/w„˜<*ÅÐPˆޘ<D¢ý½S8™<8­Bޑ™<¿ÿu,ë™<Jˆ¾BDš<aҖS%š<É$òDØõš<›—Ly_N›<‰?³¾¦›<™þY“ùþ›<ŸÒpšWœ<ÛZÂ+¯œ<ûæðŽò<kØñ½^<WBju¶<þ1|÷ž<Dσ´ež<bâåA½ž<Ÿ”âÆŸ<µþW+FlŸ<¡©eÂß<Ù<šŸ
 <b±
ö]9 <øvre <rK»㐠<7q­¼ <f/z |è <¬9R¡<¾}po0@¡<ûwál¡<–#=©	˜¡<ƒR=Ýġ<âĩð¡<±Ó'¢<)£³MH¢<ŸÐ;ƒt¢<ª͋tɠ¢<];¥d!͢<!Œù¢<vû|
&£<¡ŠªR£<ð…šF£<üïÏL¬£<m3ÀÝأ<Ä	Oôͤ<ÐlFæ×2¤<§lq”ü_¤<ăÈü<¤<¤kšº¤<êEËôè¤<ûف®¥<øµ,ÄgC¥<'o1¼Aq¥<ùœNk=Ÿ¥<5“Ô[ͥ<&ÏVúû¥<.sã*¦<Œ›\–‘X¦<îëÓE‡¦<ß<~ ¶¦<¦YË$å¦<û©PS§<úa¬C§<0ÑwÑ1s§<
$±v䢧<÷}kÅҧ<wrÎÌÕ¨<*æߺ3¨<çaY‰c¨<T¤Ï.”¨<”`ÌHŨ<þóö¨<ásŽ\'©<Š‚5²ØX©<ô»@9ŽŠ©<]ÇÚ}¼©<QéÝܨî©<-YЊ!ª<ÆV5¶Sª<óÐ2›†ª<zeß9ª<ÿ¬ʝ(íª<µ‹nÖÓ «<B%ÏøÃT«<¶O2{úˆ«<&Ûx½«<…ý-@ò«<-àBNS'¬<¤±ꂲ\¬<û##Ø_’¬<l¥•ó\Ȭ<€q탫þ¬<­ò0AM5­<þ£íCl­<
¥S‘£­<5ÒJ7ۭ<›P&´7®<R¤|”K®<#ôšO„®<xvJk½®<h‘[üèö®<¼ nË0¯<Ð^Q˜k¯<åáï³ƥ¯<Ø	Ý
äà¯<Ôùz7°<9ï4,°<£$’žkJ°<Û&ÏÜh°<­:ω‡°<È3÷s¦°<o”©œŰ<·ÏïPå°<Îïf¯±<J’jœ$±<+:oìÍD±<ÁąEe±<ž®o݆±< x¢§
§±<Z*x¦aȱ<p3›ªê±<¢ôð“ò²<PåOR3.²<º;@æÆP²<¦ÚÇa¯s²<+SBé<QÛE´‡º²<p-–|޲<eY&Yγ<Ч*'³<eÉ;³–L³<V¨Œør³<CQ4œõ—³<ƒ‹zD¾³<ÐޭŒå³<­îõé/´<øB½ÉÒ3´<,É…í[´<2”Әƒ„´<L¡]§˜­´<'±{0״<•¹Oµ<²ª¬qø+µ<Z§ø1Wµ<aDLý‚µ<á8úa¯µ<ž½ˆdܵ<y—
¶<”.{$U8¶<2ôÃ`Og¶<îH—Jý–¶<{š/eǶ<%ô±ø¶<Ò\Î}*·<Ãq½â<]·<ùqkµҐ·<Óv}Gŷ<né£ú·<þÀ,ñ0¸<Bsh9h¸<«[i΅ ¸<•6;‚âٸ<DuóÒZ¹<*ü4ûO¹<؍ñЌ¹<êÙ$:êʹ<xñI>V
º<;LèC%Kº<ꆭÂhº<ÄE؂3Ѻ<
¶»<ê‘P±]»<^Úvґ¦»<wïKÞTñ»<§àÂA>¼<ôÈÈBôŒ¼<©òì޼<Å8'k1½<ì;ìo”‡½<ŸñN¯Pà½<`	nò;¾<Có*¯š¾<JêPgÂü¾<§÷‘—nb¿<åÆöCþ˿<.ìb³âÀ<ïŽõ‹VÀ<N¥ËÍQÀ< H]x1ÐÀ<¦’C¨Á<*DugxVÁ<Ö³¼ŸÁ<|úɠ¼ëÁ<Ÿ‘Y¶+=Â<¥ªI®õ“Â<ðDŠãðÂ<^÷Ì'îTÃ<a¸ÈÇNÁÃ<bäf—7Ä<ÑQGÍ׹Ä<ösÏ<ØJÅ<ÒsázîÅ<r¿KmgªÆ</ÆêÖP‡Ç<íò染È<…{H
ÜéÉ<üqÚQžÃË<ƒ»~)ÙÉÎ<Ɨ$'R~1œ×[}<?Žõn®°2·›|D÷'Ñeˆ•r9\-þ²kÕ[~p,Ý4Éȝ¬ß	6xÔq{3¢·|‹Zlo	B{>®¯
—žðN±õ®Ve´½ÃΙ‡ðöÕˆVn®æÐ6Ênô¤ÔÝvK¶–§ãz÷ñicp%Eò t¨Q®)2U¹±1ÁWQ9Linëâ?úˆ×23F:¿L"3\L‡QÀìÃ	¡V–™	Ùf[ŒÐ‚à_rWDÝdx–…ö	hæ+*Åkôä2=Ko:ñq rÖ	M—ÈuÀ\Çxô?AŸ{ŠŸFS~8â;æ€b‘­=Zƒ¹V`±…bB²‰í‡út“uЬ9=ºŒJÐEÌŽ>ñàXƒ–½‘دG¬w“Úd‹O •’8cx¸–’ˆ–A˜€ºFẙi¼&›zqV…œØÏYםΡagŸÀ6	X 83:뇡üÄko­¢‚Îɣ¢jî_ۤ|	Mªä¥‚gä^å¦Ä¥Üݧt¨æ|Ψî_Γ·©X¸­p™ª2‚X^t«„t£H¬蟿‚­W;ޭlò ®~°$\¯z[°ô߁İúñ¶Pp±:–²ž²J¨ß+º²N!X³¾ɦñ³֬ᆴü“ÇóµªýÅ¥µXþ7(.¶
Ɉ³¶˜µ?5·¨}Üh³·ºÖ.¸öG{¥¸tš•¹rº…й&oyaø¹†âî=cºìA/˺D‘´H0»⤮œ’»žÈ<ò»”)Ò9O¼Ô@ᣩ¼žTнœrÞûV½j֋ª½@?˷ú½ÞdsI¾^iÉ@•¾(±†0߾taÞö&¿⊂žl¿Ä©1°¿°ýºñ¿ˆEA1À²T[ÏnÀ&‹mªÀŠi™#äÀdŠ)ùÁB}õQÁJw†Á´tž}¸ÁBê éÁÞÕîÂþƒ<
EÂÂO†vpÂc/šÂF€é<´ÆҢèÂì"Ae
Üއ0ÃÆ~RÃøfßúqÆ(*QÃú—t­ÃH3DÈÃ@«ÌäáèMŽ÷ùÃ`P¸}Ähýwx%Äƿµè8Ä*ÏJÄèGô+[ÄElÿiIJPIwĸû+	ƒÄöE>Äҙç•İ0ݝÄ2´y‘¢ÄüŽŽ¦ÄŒûëø¨ÄžêΩÄ4úA©Ä (N­¦Ät.Ȱ¢Äâ-æÄô-…̕ÄÀ^&܌Äz#ì;‚ÄæޖæuÄ‚~ÖgÄ6XÄ .pmFĘË3Än
ËÄ��ÄbËH²íÃ<Y>ÄÒô‘޵ÃLa™õ–Ã’EZvÃp“óRÃ(²Á-Èx½_Ãbò˿ÜžŸ¹ӰÂðüŒ‚ÂdñyÚQžӶ¬ÂVgŒñèÁ<»7–°ÁÍ܆uÁ¶Öt®7Á$»ööÀ¤MH³À𯋉lÀdó’ "À¸rqտŽH)݄¿
Æ/Å0¿ÆwپÚ}2€}¾¦K	¾D5zº½&ø¹§R½ Æcæ¼äM,}u¼ª·c¿ÿ»¢æ?ò„»ŒѠÙ»¬p5º¶’¿ó¹ü«Ô.b¹J3ʸT[vv+¸\‰[œ…·”UÕ@ضBiÙ÷"¶à7oLeµÒi¿¿ž´FçÈγ>œSÏô²R(D2²–Z> ±ÂáB0$°¦yÄ1¯ágW®r-¿ެ
@樫(ÿ™óaª¢foe©<P³š§òÑ&¦ê‹Ô{¤”ÀœƢó}ôô 
¾k3Ÿ¼ùy+ñœīD¸š¸/x[U˜x?ЫÕòñΩý’äšÚüø…sž¹Œ–Gì*‰ŽÛùE…š6Ãý€&é9xB|Ì*X£w$ q*5·4‚jfâ¨cÄãOfZrÎNrPÚo\fÇD¢YŠ£å6
4P4&{>æËWú®öˆ¡ŒÓ°-¦¢|&‹ÇaY°¬+öÝÀèäÙMÛ€?V#z?£ºu?øq?}›n?„k?L¢h?ée?öRc?çØ`?Zw^?*+\?ÔñY?RÉW?ø¯U?_¤S?X¥Q?߱O?ÉM?3êK?ŽJ?ŽGH?ª‚F?jÅD?`C?(`A?j·??Ô>?x<?øà:?0O9?†Â7?Å:6?»·4?993?¿1?%I0?C×.?Mi-?!ÿ+? ˜*?«5)?'Ö'?úy&?!%?CË#?Šx"?Ì(!?õÛ?ñ‘?­J??$Ä?¾„?ØG?c
?QÕ?”Ÿ?!l?ë:?å?ß?@´?‹‹
?Üd?)@?i
?’ü?Ý?À?4¥?±‹?îs?å]?I?ä6?¼Kþ>í,ü>Nú>Ôø÷>qãõ>Ñó>ÇÁñ>jµï>ú«í>k¥ë>µ¡é>Πç>¬¢å>F§ã>“®á>Œ¸ß>'ÅÝ>\ÔÛ>#æÙ>uú×>JÖ>š*Ô>_FÒ>’dÐ>+…Î>$¨Ì>wÍÊ>õÈ>Ç>JKÅ>ÅyÃ>|ªÁ>iݿ>…¾>ÍI¼>;ƒº>ʾ¸>tü¶>5<µ>	~³>êq>Ô°>ÂO®>±™¬>œåª>~3©>Tƒ§>ե>Í(¤>g~¢>çՠ>G/Ÿ>„Š>›ç›>‰Fš>J§˜>Ü	—>:n•>bԓ>Q<’>¦>x>ª~>—í‹>>^Š>šЈ>«D‡>lº…>Ü1„>ùª‚>À%>\D>„@|>ó?y>¥Bv>–Hs>ÁQp>#^m>¸mj>|€g>m–d>†¯a>ÄË^>$ë[>£
Y>=3V>ð[S>º‡P>–¶M>ƒèJ>~H>…UE>”B>«Î?>Ç=>åS:>›7>"å4>=22>T‚/>dÕ,>m+*>m„'>cà$>N?">,¡>ý>Àm>tØ>F>­¶>1*>¥ 
>>Y–>š>ʗ>ë>öIý=ù_ø=à{ó=«î=^Åé=úòä=ƒ&à=ü_Û=gŸÖ=ÊäÑ='0Í=„È=åØÃ=P6¿=˙º=\¶=	s±=Ûè¬=Ød¨=
ç£=yoŸ=/þš=6“–=š.’=fЍ=§x‰=i'…=½܀=a1y=ª¶p=xIh=ðé_==˜W=ˆTO=G=Ü÷>=Nß6=’Õ.=èÚ&=–ï=ç=-H=L=Äÿ<אð<̀á<ú”Ò<ŽÎÃ<Ø.µ<X·¦<Äi˜<HŠ<R©x<i$]< B<²\'<‘,
<ç;Gõ´;øP„;úü*;.0¥:ÜIú4_hÜ2z…3Êå+3ç@3aQ3i`3{am3A’y3‘i‚3*¨‡35•Œ3=‘3r©•3þá™3öì3|ϡ3ڍ¥3«+©3¬¬3ް3“^³3•¶3׶¹3iż3-¿3c®Â3%‹Å3uYÈ3<Ë3LÎÍ3gvÐ3;Ó3k¥Õ3‹-Ø3$¬Ú3´!Ý3±Žß3ˆóá3Pä3P¦æ3øôè3é<ë3p~í3չï3^ïñ3Jô3ÖIö3<oø3³ú3m«ü3œÂþ3·j4r4Uw4³z45|4ì{4ëy4Bv4q48j	4õa
4FX49M4Û@
4834]$4U4,4ìð4 Ý4SÉ4´4۝4Æ4Ïn4V4w<4$"44Vë4ëÎ4ޱ45”4÷u4,W 4Ù7!4"4¼÷"4ýÖ#4ҵ$4@”%4Mr&4P'4_-(4p
)47ç)4ºÃ*4 +4|,4éW-4—3.4/4~ê/4ÃÅ04ï 14|24W34244
54è54Ã64"ž74@y84sT94¿/:4*;4¸æ;4nÂ<4Rž=4hz>4´V?4=3@4A4íA4qÊB4¨C4†D4udE4-CF4K"G4ÑH4ÇáH41ÂI4£J4v„K4\fL4ÍHM4Ì+N4aO4‘óO4bØP4ٽQ4ý£R4ԊS4crT4²ZU4ÆCV4§-W4ZX4èY4UðY4ªÝZ4îË[4(»\4_«]4›œ^4åŽ_4C‚`4¿va4alb40cc47[d4~Te4Of4òJg42Hh4ÙFi4ñFj4…Hk4 Kl4MPm4˜Vn4^o48hp4¦sq4å€r4s4
¡t4´u4Év4Càw4”ùx4 z4ù2{40S|4Ùu}4›~4ÎÂ4¢v€4@
4L¥4Ò>‚4àق4vƒ4Ä„4¸´„4lV…4ïù…4RŸ†4¦F‡4ÿï‡4p›ˆ4
I‰4ëø‰4"«Š4Ê_‹4üŒ4ÓЌ4l4åLŽ4`4þԏ4坐4<j‘4-:’4æ
“4˜å“4vT4»¡•4¢†–4np—4g_˜4ÛS™4 Nš4”N›4Uœ4¬c4>yž4ݖŸ4%½ 4Áì¡4r&£4k¤4»¥4(§4û„¨4‹ª4«4.­4Qä®4N³°4tž²4ª´4\۶4H9¹4«̻4p¡¾4ÈÁ4~XÅ4wÉ4p_Î4ä~Ô4úÀÜ4¤Ýé4ì™wõE`¨m´r¯’u\zw8Êxk¿y5zz/
{ԃ{—å{ˆ7|3}|&¹|Hí|}C}‹g}ۇ}ü¤}a¿}g×}]í}ƒ~~4%~5~ÕC~“Q~g^~ij~ªu~>€~2Š~•“~rœ~դ~Ƭ~N´~u»~CÂ~¼È~èÎ~ÌÔ~kÚ~Ëß~ïä~Üé~”î~ó~t÷~ û~£ÿ~6Ê
<ÄÜÚ½‡ :#×%](Ð*.-z/³1Ü3ó5û7ó9Ü;·=„?EAøBŸD:FÊGNIÈJ8LMùNLP•QÕR
T=UdV„WœX¬YµZ¸[³\¨]–^~__`;abàbªcod.eèeœfLgögœh<iÙipjk‘kl l!mžmnŒnünhoÑo5p–pópLq¡qòq?r‰rÏrsPs‹sÃsös'tSt|t¡tÃtàtûtu$u3u?uFuJuKuGu?u4u$uuùtÞt¾tštrtEttßs¥sfs#sÚrr:rãq†q#q»pMpÙo_oßnXnËm7mœlùkOkœjâiiThg¡f¸eÆdÈcÀb«aŠ`]_!^Ø\[ZžXWuUÄSþQ"P/N"LúI¶GSEÏB(@Z=d:A7í3e0¤,¤(_$Îê©ä	Fü~>ô~¨ë~7â~È×~/Ì~7¿~°~
 ~
~w~G]~“>~Y~,ë}6°}b}¹ô|ÒO|06{ÒÒxð?‡ðyÉjDï?©l[T·î?wð'à?î?•Þ§oÓí?ò¼W’pí?Ü¡xIí?ë-§¨3½ì?x©Î^jì?êºîÙì?‚ÜáNëÎë?Rõ:e…ë?Ý4‚:>ë?¢èl?*ùê?%zñþµê?áÉPՋtê?¯õýª4ê?Øeî;öé?$"¹é?ÁzaWF}é?Gz‘Bé?Oq1½ñé?¨
æOUÐè?ߺH­˜è?¬¼7üëaè?nÏV,è?Ëâ Kíöç?XhœwšÂç?հ <ç?VØp\ç?m?ôå)ç?îzêºPøæ?‰ZcžXÇæ?*;Q^÷–æ?#ã’*'gæ?U˜â7æ?e&€˜$	æ?jÿJoèÚå?‰\Ȭ)­å?L&äå?FžðSå?ÕleZµ&å?g¶ èÄúä?ÀNIO?Ïä?xRÜr!¤ä?Pß_hyä?y6IJOä?ã_5Š%ä?‚[X™~ûã?£1¯>Òã?Íb¦U©ã?ÕÚ+Àã?éPõ‹„Xã?5:pɗ0ã?ï8dýúã?î;êU¬áâ?J•תºâ?͓Žò“â?í)„mâ?„ېZ]Gâ?ò÷/©|!â? –’©àûá?i™Tþ‡Öá?Ñ?Wq±á?P<›p›Œá?Ú9†há?œ©^­Cá?81H’á?Y2¢³ûà? BAØà?®Ùp¦´à?]™v‘à?6<ðÌ}nà?.?¦¯¼Kà?*‚‹á1)à?Äʸ…Üà?¡½{ŒwÉß?Ê©§…ß?óz/Ë)Bß?•~qÿÞ?T½ n¼Þ?ÅÃNj#zÞ?…›_ê88Þ?	:vG­öÝ?±V2µÝ?3Þ&d­tÝ?€¡64Ý?m[®´ôÜ?H¨ÀsU´Ü?Ç×»ètÜ?¸,oÒ5Ü?ja|÷Û?‘mq֤¸Û?x‹zÛ?Ê1³bÄ<Û?R…¡žNÿÚ?žZ_:)ÂÚ?€ؤJS…Ú?MÀ êËHÚ?>„F9’Ú?ߓ^¥ÐÙ?ÆÀ„•Ù?“ŸàۮYÙ?Ë3›£Ù?ñ¹üáãØ?ˆ‘Þ?i©Ø?¶Z¬¨8oØ?Ù
ªO5Ø?ٸ­û×?°ô¯PÂ×?ëR’¯9‰×?í±ÇigP×?La©;Ù×?ªL†ŽßÖ?!ވ­†§Ö?âË%ÁoÖ?å{7=8Ö?ÈҀtúÖ?DÂvCøÉÕ?¾îÖ6“Õ?=p³\Õ?í;SÂo&Õ?’m¿ŽjðÔ?¢œW£ºÔ?Ôj­Ÿ…Ô?þ$ÃïÌOÔ?z5ѼÔ?ÛҎÐèåÓ?®Cñ|P±Ó?yhó|Ó?žÑù%ÑHÓ?/öZMéÓ?f!w;áÒ?Ý?–>ǭÒ?±MAŒzÒ?‰ÞŠGÒ?žÌ÷yÀÒ?ö.âÑ?PðÂ9կÑ?èTTí²}Ñ?gî4»ÇKÑ?#$ÏOÑ?Ä	‡Y•èÐ?ÚB²ˆM·Ð?6C;†Ð?ÙéB"_UÐ?~tÇö·$Ð?œ߉‹èÏ?52¸ŒˆÏ?Ҙélþ'Ï?DœɤTÈÎ?Ý<(²iÎ?„qE8
Î?
ÇUīÍ?OQ²ø¶MÍ?Ìo^ŠðÌ?Sßq™͒Ì?Gطð5Ì?¡¾zxÙË?ª1‡zd}Ë?:ÑÌR´!Ë?W¢gÆÊ?~&~kÊ?=~-2÷Ê?ZþҿҶÉ?'|j_]É?iút¿¯É?[’‘°ªÈ?8šŠRÈ?uqbÕùÇ?#£hÓø¡Ç?¦µzœ|JÇ?G–~`óÆ?\ò!>¤œÆ?œñ­¢GFÆ?ùƒøvJðÅ?l󈬚Å?5hȩmEÅ?Á㭍ðÄ?-ÎõlœÄ?ÕuÂéGÄ?®1i‹%ôÃ?î×調 Ã?ˆ«´¸MÃ?e*|„ûÂ?zèÂ?·^ƒ¢ÕVÂ?4<%FÂ?B}u’´Á?c-¨å@cÁ?¹n¢ËÁ?º	R=³ÂÀ?…¿¸KùrÀ?*}T#À?,"kË>©¿?R)ÿ¿?K¥šò{o¾?èvaµӽ?命¹«8½?
t;I_ž¼?hм?3âòxÿk»?3öÊéìӺ?†bê3™<º?[Ü¦¹?« ¤u0¹?R(¿{¸?Öï>Êæ·?vªZ9S·?LJisk6?M…$a.¶?¤ftWµ?®+ú›µ?"@á|´?†š&#ïí³?p>ÙäÅ_³?1›ÏfҲ?‘
ÝDÓE²?}‰—¾º±?òÐ/±?%–,�?—ä0ž—°?5nl+,&¯?Q²GÕ®?bñ­þ.	­?,*(>ý«?p_8óª?cU)ùê©?«µh*àã¨?'¯wûާ?dИ³éۦ?ԭò<²ڥ?]']ۤ?Ëî˜Îòݣ?—ô=è|â¢?¼jŸé¡?€–.˜ñ ?ĥׁøŸ?uŒ‚Ûž?	̓0œ?øë"NŸRš?
Á¶Ñy˜?‚¿ôڥ–?d°ûòê֔?^«8
“?0`4I‘?IÝrO*?¬O'¤‹?x¤
Aˆ?àÏB–ë„?’/•)’¥?7hìø`á|?]¸٨žv?ý±°Šp?g°ÁCŸ_e?÷¹¶¦T?yÙx;IÏ<Æöý㍋<´[,<¯P’<a;D8¹|•<§/èü˜<¼ÐL.#š<÷a8/Mœ<trtZ/¬<ÃÕL-H2Ÿ<­»Ž'2M <C];õ <w6A—¦’¡<õz¢'¢<€Øc8.µ¢<õ‘WÀ?<£</±¢^½£<U›ÿï9¤<§þ=6»±¤<tÓbu%¥<–Χ€•¥<ê~ÙÏ1¦<=|£aÒk¦<p’¢Ҧ<¦øFÓÚ6§<w*³­˜§<CõF­Eø§<w
CSÌU¨<šv{žd±¨<˜ÏN©.©<ê,‚Gc©<FÅ8Žɹ©<,§¤Ü̪<YÍwmgbª<0n­´ª<œlm±«<)zB‡„U«<:ŸRŽ6¤«<2‚¿*Öñ«<óNYùp>¬<a;2¥Ь<‹&rþÉԬ<H·€Ÿ­<ä)g­<ø#ί­<Svñ©:÷­<þíҵë=®<oz3郮<΂ù½:ɮ<&bð„ç
¯<ˆöØTöQ¯<®ׇžm•¯<¬.ú}Sد<ì4BàV
°<š9õ@.°<ü¥žêN°< r[Vo°<ôq†°<a¼„}¯°<ÌKf=ϰ<kKÈî°<î•2 ±<¾1G-±<A‘ŽŸ>L±< Ŀk±<4Úx§‰±<ˆmîQ¨±<Ë*øøfƱ<.ÔӋä±<Ÿ @™Š²<éÆÄre ²<Ãé}>²<ûk©´[²<Óf*y²<×ǁ–²<Ú.¸b»³²<S¸ábØв<Ž©ËèÙí²<×Hn
Á
³<0¹ôáŽ'³<¡^&pDD³<ÕRʺâ`³<jX¾j}³<d²²oݙ³<=¸¿;¶³<àV˜†ҳ<ƒZr޾î³<tžàqå
´<]t¦-û&´<¤0<èC´<]ÇÊs÷^´<6Ãfžßz´</H2º–´<]A��<ܳ¬Iδ<¦8ê´<bU^﫵<Z‹
òM!µ<OfjÕæ<µ<ȲNwXµ<x_Utµ<…Ɓµ<Y$#ýªµ<=s}ÑrƵ<ӌ/{ãáµ<8^ŸÈOýµ<ã`¸¶<¢°¢è4¶<&·O¶<r–ÉWâj¶<71±ƒB†¶<±²P)¢¡¶<»C³è½¶<RÓ(abض<Tøa1Äó¶<ëh‹÷'·<ÆiQŽ*·<ÜîpÜ÷E·<så5ea·<IôïúÖ|·<“½ºÈM˜·<	‹<ʳ·<û"ÛóLϷ<çÞsŒÖê·<ꆤg¸<v†ÈÚ"¸<Ÿ‰΢=¸<½õÑNY¸<Å~zou¸<-÷G_и<CÀ’ެ¸<œ¡«eȸ<'jDQIä¸<µs):¹<Gƒ(Ü8¹<ü
ïF8¹<Š¢ybT¹<îÕp»Žp¹<1*.‰ˌ¹<¿™?“©¹<,ÙՌyŹ<to+ìá¹<JÒú&rþ¹<’6ù9º<[Ȣ!»7º<ˆ»žTº<¤©JrZqº<=1 dLŽº<ñŸ>V«º<ÎõZÍxȺ<6³‹á´åº<¡ÃO»<[˜šð| »<à 
>»<=ÎAµ[»<'‰?¹}y»<<÷åñd—»<n%…Ûkµ»<¢À.k“ӻ<ƒ®›Üñ»< ìlH¼<-zðå×.¼<
nŒM¼<‡ìfl¼<¦ëàf‹¼<«¢6½ª¼<Ö;Çáɼ<7àh0^é¼<n‹2	½< ï7Û(½<GÆ3ÞH½<#ñç–i½<¥û×ôs‰½<pn ™	ª½<IüøÒʽ<7.R•Ñë½<ÒIû
¾<öFêÄt.¾<ˆÑYP¾<%þ—/r¾<
¿*K!”¾<o÷¶¾<:§v#پ<©ìaü¾<!SŠ2¿<mM·¤B¿<hÉ _f¿<‚—‰fŠ¿<¿"q»®¿<…ç/Ò`ӿ<öÁYø¿<u ÓGÔÀ<Gɏ¨!À<«©ƒ©4À<Çõ>NÚGÀ<~³­ö;[À<h&§#ÐnÀ<.c˜‚À<T¢è—–À<ÄÀquͪÀ<HÔîÑ=¿À<0=ª4êÓÀ<“eÏÔèÀ<¶Ÿ¦ïÿýÀ<Ap nÁ<5]»›!)Á<m	Äi?Á<;.`HdUÁ<óî;ùkÁ<aÒt߂Á<¬ëNVšÁ<Ž/w­±Á<”¦q©œÉÁ<9®äûëáÁ<ÙâŸúÁ<Ì¼Â<îÓozG-Â<$œ¬¤EGÂ<àXvǼaÂ<.Y¨ú²|Â<xwÍ.˜Â<R
*S7´Â<—ۖ1ÔÐÂ<õx©±
îÂ<î®VÒìÃ<£¤h^{*Ã<£®ÄIÃ<@¨3zÒiÃ<
AV’³ŠÃ<úˆ®pu¬Ã<¦³'ÏÃ<uô`ªÛòÃ<Ú幜¤Ä<”^T˜=Ä<:§DÎdÄ<¼CœubÄ<'Zks·Ä<‰Í
%ãÄ<A¬éSŸÅ<B~:R@Å<äJ©±qÅ<ٍq‹%Å<þÐ:$ŠÜÅ<L†ÏiÆ<êj{ÎSÆ<Ã埾@•Æ<2â	kÛÆ<4z_ð('Ç<s	V•yÇ<ŒÎÖô-ÔÇ<4ò)9È<|ª¿«È<–Do”à.É<«W@îËÉ<Zw”x܏Ê<±ýx8˜Ë<3­	‚´;Í<jï%€=ó¨Æû˜¾B½úT£
êîÁ~öQ~÷ÓéU²¹Ê~KïªDú
GËÿaí7\%a•FO–£ä¥a¤–SuzpšD(ì²|ÓWcñ†Þ%ƒW¦ÚÐMÇ$—	õÛ©túõ`£øK[Þo¨ÜTÓ`ñ¬¹gû°ÆtSŸ´wþf#ì·å¡éìºí«½Wlÿ`0ÀH¢7‚ÂÑ[âz¦Ä1îz—¢Æ¤–(©zÈ…ÞK^2Ê#éÌËÄ9øMÍ™ìMµÎ0É¿ÐæÄÖMFÑPôâ¨rÒÉðOŽÓx´™šÔS’¸˜Õ왎	Ö2èȩn×è{THØŒ,­‹Ùҭ§ÝÙŒ^p™Ú .À]MÛÐü[\ùÛ}š¹ëÜr;ݐ/4ˆÒÝdŸ6dcÞNQpîÞ.´¦tß@í™eôßò$¼äoàX¢%ÂæàL¸(<Yá™?¼ŒÇáªÛé1â‘څ˜â†AµûâJU3[ã*Й·ã­žéä4wÔFgä\	LӺä$•Үåx¼N÷Yåäȥ剆>ïåxÙo6æxÕÆu{æªf¾æòôåUÿæ§Y>ç9ž>‚{ç¢ppã¶çCBwðçŒðS(è:5û^èd„ܓè¼ÎðAÇèöN}8ù蛇Ì)éêˆÓ	Y颚“û†éfHq¬³éն”&ßé|æ«s	ê¤fñœ2ê,•2«Zêtզêðޗ§ê Ùó…Ìê<æexðêì/vëJ*þ…5ë´b1®Vëú„âôvë æ_–ë|Ïô´ëÐIô¸Òë>.n±ïëè½ãìZ±R'ìӯBì–ñ)ý[ìôîl@uì´Pҍì‘¶¥ìþ'Äð¼ìûT„Óì³Ȉtéì·‘Äþì(…5wíI„'íL/$;ínX­ûMíÝØT`íèOArí‚©äWƒíÈ,¤”í·…+¤í´jtȳíRfAßÂíRn¤qÑíӊ<ß퀙ííÔúíÄK®îZÙÀîàWî$eKs)î¼ä
4î<›¸=>îô‚)îG'QîA@éYî.´(5bîñ—Xjîz>lqî‚{2Xxîº{Ï~î²JH҄îCc¶`ŠîQÈÌzîÚ%~ ”îê)¨Q˜î\HœîôsrUŸî®Ìb'¢î¬Bkƒ¤îq-üh¦îúÖnקî
úΨî;3èK©îd)P©î^À٨îTv‰ç§î$Hx¦îƒž¢Š¤îÚä"¢î$ 5.Ÿî.¯&¼›îäò$ŗî:
<G“îuU@Žîzœ6®ˆîý=Ž‚îˆ¸§Þ{îÿ7ÿ›tî^½©Ãlî~žRdîˆ(£E[î¶WN™QîÏJGîP,áS<îØ*à²0î‚­b$îZ<¸^îG*¢	îÌIã'ûíl!vêëí~"äÛíÓ9ÎËíô,d¹íÉ8éܦíé7r“í6¨8í+9Òií®Sí"¤ÞA<íØ/jç#íDæ/s
í4þÚï츷Ôì´n•·ìÁ0¶˜ìx©
yìþ1õWìbɆf5ì5³´LìÐoŽ”ëë’¶ )ÄëÜîõšëB…Éáoëž­ÓBëK-°ëéYâêW"™®®ê&㎍xêåsýÏ?êöٍLê;V/ÖÅé¤G©;„é(GG?éÖÅv½öèæèÄ]ªèê±zàYè@©öèÀ3‚H«ç¥juLç¢*èæث¶ }æ~08ŸæB÷8s”å€r—påXô6ԋä7ý¿ù㜱î5]ãþä/µâWU™âƒx‚<á°gîÄhàªq+°‚ߪþ~ŇÞý;Æ	uÝ¿)åFÜ‚.øøÚuº²á…ÙÏHïæ×e½­ÖðâIÔ¬Ǵ§¡Ñžvâβ^بË"-ÍnÒÇí"/+Ã:¸e½4TĶt(*X@¬˜E—žü¤Hú‰,0ð÷ÅfJ3KZƒ»~)ÙÉ@Áè lªƒѿ3­	‚´;
@࿅8–þÆ?5gGö¿@@´¾dÈñgí?$@=
ףp=@˜nƒÀÊí?[¶Ö	m™?h‘í|?5®?333333@rŠŽäòò?$—ÿ~ûñ?B>è٬ú@rù鷯í?…ëQ¸…Û?ìQ¸…ë±?9´Èv¾ŸŠ?Âõ(\@ffffff@š™™™™™.@€4@ôýÔxé&Á?ä?UUUUUUÅ?€a@ÀX@€`@à|@¸Ê@€MA-DTû!	@ñh㈵øä>-DTû!@àCÿÿÿÿÿÿÿ€4€?ÉNö@SŒ¾¤Ýi@«ªª>Aޓ=?;ȟøÿ„,‡øÿ¬<‡øÿÄ̎øÿœ	äøÿP
áøÿ˜
ޑøÿà
\’øÿøÿ€ÿùÿ`-ÜùÿÜüùÿðL	ùÿ(\	ùÿ<Ü	ùÿP<
ùÿll
ùÿ€\ùÿÐ|ùÿä,ùÿ,Üùÿll
ùÿùÿЬùÿðŒùÿ,	ùÿd	œùÿð	¬ùÿXœùÿœüùÿÔ\ùÿ$üùÿP|ùÿˆLùÿø¼ùÿL
Œùÿœ
| ùÿð
ì!ùÿP¼"ùÿd<#ùÿ˜¼#ùÿä<$ùÿ¬%ùÿ<'ùÿh|(ùÿȬ)ùÿÌ*ùÿ,Œ,ùÿpü-ùÿ¤ü/ùÿÌ5ùÿ”L9ùÿäÌ<ùÿ4AùÿÄ\Dùÿ<lHùÿ´|Lùÿ,ŒPùÿ¤œTùÿüWùÿœ\[ùÿ¼^ùÿœübùÿ,\fùÿ¬iùÿ \mùÿ°¼pùÿ0|uùÿмyùÿ`¬}ùÿàùÿ`…ùÿØì‡ùÿD¼Šùÿ°Žùÿ(L’ùÿ¸—ùÿ¬™ùÿ\ ùÿÔ£ùÿ8Œ§ùÿ( ܩùÿd ¼­ùÿ¸ <±ùÿü ì²ùÿL!œÃùÿ¨!ÜËùÿô!Ôùÿ@",ßùÿ„"ìâùÿü"¬æùÿt#lêùÿì#<îùÿ`$üòùÿè$Œúÿ4%
úÿ%úÿÜ%2úÿ8&\Núÿ„&aúÿà&Lúÿà'²úÿP(Ñúÿ°(Üûÿ )ìSûÿp)ÜyûÿÀ)¼§ûÿ *|Þûÿø*ÿûÿ´+<-üÿŒ,lyüÿ-ìKýÿt-,Mýÿ -lMýÿ¸-Pýÿ.<Pýÿ.lPýÿ4.¼PýÿL.Qýÿd.,Qýÿ|.\Rýÿ´.¼RýÿÔ.¼Sýÿø.ìSýÿ/Týÿ(/ÜTýÿL/Uýÿh/LUýÿˆ/üVýÿ¼/\WýÿÜ/|Wýÿô/Xýÿ 0<]ýÿl0L]ýÿ€0\]ýÿ”0l]ýÿ¨0|]ýÿ¼0Œ]ýÿÔ0,^ýÿì0L_ýÿ,1|`ýÿl1¬`ýÿ„1¼`ýÿ˜1ü`ýÿ°1laýÿà1¼aýÿø1býÿ(2lbýÿH2übýÿˆ2Lcýÿ¨2üdýÿô2ìfýÿL3¼hýÿ3\kýÿÜ3,nýÿ(4Lnýÿ@4lnýÿX4|nýÿl4Œnýÿ€4pýÿ´4LpýÿÌ4¬pýÿì4Üpýÿ5üpýÿ5qýÿ45rýÿ`5<rýÿx5œrýÿ˜5Ürýÿ¸5LsýÿØ5ìsýÿ6|týÿ$6uýÿP6|uýÿp6Üuýÿ6üuýÿ¨6lvýÿÄ6<wýÿè6zýÿ07LzýÿL7,…ýÿœ7\‡ýÿØ7ˆýÿ8‰ýÿH8|‰ýÿh8|ŠýÿŒ8,ýÿ¼8<Žýÿà8œŽýÿø8ýÿ9,ýÿ$9ŒýÿH9¬‘ýÿl9\’ýÿ 9¬“ýÿì9l”ýÿ8:ü•ýÿ´:Œ—ýÿ0;ì—ýÿ\;|šýÿØ;œýÿl<üýÿÐ<< ýÿ4=¼ ýÿt=zRx$yøÿ FJw€?:*3$"Dx€øÿ\p€øÿtøùÿ4ˆùÿEFŒD†D ƒd
GBEAABÀùÿ
Ôùÿwè„ùÿ`H{
EÈùÿ(LäùÿðBŽBE ŒD(†D0ƒ\
(D BBBIY
(A BBBHh„ùÿD|ùÿ¦FFŽB B(ŒA0†A8ƒDP…8A0A(B BBB<Äøùÿ¦BŽEB ŒD(†D0ƒq
(D BBBD hùÿ„A†@
Gh
H<(ÔùÿA†D A
AIG
AHV
AIG
ACh4ùÿŸE†T
Ov8ˆ´ùÿÜBEŒD †D(ƒGP

(A ABBJ4ÄXùÿzBŒA†D 
ABGD
DBF4ü ùÿ‡E†AƒG O
CAHI
CAKP4(…øÿBŽHE ŒA(†D0ƒJ€‹ˆHfˆA€t0D(A BBB\ˆ¤ùÿBŽBE ŒA(†A0ƒR
(D BBBII
(D BBBE{(A EBBD茅øÿýBEŽL E(ŒA0†A8ƒE@Ð8D0A(B BBBD0A†øÿýBEŽL E(ŒA0†A8ƒE@Ð8D0A(B BBB8xö†øÿ~BŽEH ŒA(†A0ƒb(D BBB8´8‡øÿdFŽBE ŒA(†A0J(D BBB@ðLùÿëBŽEE ŒA(†A0ƒGPŠ
0A(A BBBI44øùÿQE†DƒD ^
CAAM
CAGLl 	ùÿTBEŒA †A(ƒD@@
(A ABBEm
(A ABBE(¼0ùÿ’BŒA†G U
DBK4è¤ùÿzBŒA†D }
ABID
DBFl ìùÿÂBŽBB ŒA(†D0ƒDPj
0D(A BBBL`
0D(A BBBE`
0D(D BBBBPL
ùÿlBŒA†D ƒD0B
 DABLh
 AABDk
 AABALähùÿÈBBŽB B(ŒA0†E8ƒG€õ
8A0A(B BBBDP4èùÿíBBŒA †s
EBIA
BBCD
BBHH
IBM\ˆ„ùÿhBBŽB E(ŒD0†A8ƒG@WHJPGXC`AhBpI@o
8D0A(B BBBFè”ùÿÊ0üPùÿtBEŒG e
EBFlEBH0œùÿtBHŒA †D(ƒG0s
(D ABBFN(D ABB(|ÐùÿxBEŒD ^
EBH(¨$ùÿkBŒD l
EII
EB(ÔhùÿkBŒD l
EII
EB\	¬ùÿXBBŒI †A(ƒG0‹
(D ABBGd
(D ABBCD
(D DBBH<`	¬ùÿ/A†D h
AJF
AAJ
AMG
AH  	œùÿy†D F
AA@Ä	˜ùÿµBŒA†A ƒD0`
 AABD…
 FABB0
ùÿeBŒA†A ƒD0T
 AABH\<
PùÿñBBŒA †D(ƒD0’
(D ABBH¤
(E ABBJ|
(I ABBNŒœ
ðùÿÌBBŽB E(ŒD0†D8ƒF`¥
8A0A(B BBBHV
8A0A(B BBBHwhTpAxB€AˆAA˜A A¨A°I`L,0$ùÿ€FBŽB E(ŒD0†ÿ
(E BBBCI
(E BBBDL|`'ùÿ€FBŽB E(ŒD0†ÿ
(E BBBCI
(E BBBDŒÌ*ùÿ?FBŽB B(ŒA0†D8ƒG`eh[pBxF€FˆBF˜A B¨F°M`l
8D0A(B BBBC^hWpyhA`hWpfhA`t\@.ùÿGFŽBB ŒA(†A0ƒGPtXM`GXAPs
0D(A BBBFUXa`BhApAxB€AˆDB˜F MPtÔ1ùÿFŽBB ŒA(†D0ƒGPuX[`BhFpAxE€FˆAB˜F MPh
0D(A BBBEkXW`yXAPtL
°4ùÿFŽBB ŒA(†D0ƒGPuX[`BhFpAxE€FˆAB˜F MPh
0D(A BBBEkXW`yXAPtÄ
H8ùÿFŽBB ŒA(†D0ƒGPuX[`BhFpAxE€FˆAB˜F MPh
0D(A BBBEkXW`yXAPt<à;ùÿFŽBB ŒA(†D0ƒGPuX[`BhFpAxE€FˆAB˜F MPh
0D(A BBBEkXW`yXAP|´x?ùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`|4XBùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`|´8EùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`Œ4Hùÿ?FBŽB B(ŒA0†D8ƒG`eh[pBxF€FˆBF˜A B¨F°M`l
8D0A(B BBBC^hWpyhA`hWpfhA`|ÄÈKùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`pD¨Nùÿ¶FŽBB ŒA(†A0ƒG@tHIP@HA@s
0D(A BBBAOHfPBXA`BhBpAxB€BˆAM@Œ¸ôPùÿ?FBŽB B(ŒA0†D8ƒG`eh[pBxF€FˆBF˜A B¨F°M`l
8D0A(B BBBC^hWpyhA`hWpfhA`|H¤TùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`œÈ„Wùÿ½FBŽB B(ŒA0†D8ƒGptxE€RxAps
8D0A(B BBBDsxX€BˆFA˜E F¨A°B¸FÀMpxW€fxApixV€gxNpŒh¤[ùÿ?FBŽB B(ŒA0†D8ƒG`eh[pBxF€FˆBF˜A B¨F°M`l
8D0A(B BBBC^hWpyhA`hWpfhA`|øT_ùÿèFBŽB B(ŒA0†D8ƒG`“hPpyhA`s
8D0A(B BBBKRh[pBxF€FˆBF˜A B¨F°M`|xÄbùÿXFBŽB B(ŒA0†D8ƒG`zhIp@hA`s
8D0A(B BBBDZhbpBxA€AˆBA˜D B¨F°M`tø¤eùÿFŽBB ŒA(†D0ƒGPuX_`BhApAxE€FˆAB˜A PPh
0D(A BBBHkXW`yXAPhp<iùÿÐFBŒA †A(ƒG@tHIP@HA@s
(D ABBEOHXPBXB`BhBpBxB€BˆBM@hÜ kùÿÐFBŒA †A(ƒG@tHIP@HA@s
(D ABBEOHXPBXB`BhBpBxB€BˆBM@tHnùÿGFŽBB ŒA(†A0ƒGPtXM`GXAPs
0D(A BBBFUXa`BhApAxB€AˆDB˜F MPŒÀÜpùÿ?FBŽB B(ŒA0†D8ƒG`eh[pBxF€FˆBF˜A B¨F°M`l
8D0A(B BBBC^hWpyhA`hWpfhA`PPŒtùÿÊFŽBB ŒA(†D0ƒD@nHIP@HA@s
0D(A BBBGL¤yùÿ†FŽBB ŒA(†A0ƒG@tHIP@HA@s
0D(A BBBAtôH{ùÿZFIŽB B(ŒA0†ë
(E BBBFa
(E BBBDZ
(E BBBKÔ
(E BBBA`l0ùÿòFŽIB ŒA(†A0ƒÎ
(D BBBEY
(D BBBEƒ
(D BBBKDÐ̃ùÿFIŒA †j
BBBl
BBHý
BBG¤8tøÿ?tFBŽB B(ŒA0†D8ƒGÐ!ØNàEèFðFøA€AˆAA˜A NЁØNàEèFðFøA€AˆAA˜A NÐ]8A0A(B BBB8À\‡ùÿOBEŒA †D(ƒGPö
(D ABBFPüp‰ùÿÖBBŒD †G0Z
 ABBB•
 DBBC`
 ABBA@PüŒùÿ€FBŽB B(ŒD0†D@Î
0A(B BBBEL”8ùÿ°BBŒA †A(ƒD@•
(D ABBH~
(D AEBFX䘑ùÿ¢FBŽB B(ŒA0†A8ƒG`hIp@hA`s
8D0A(B BBBEH@ì¡ùÿ2FBŽB B(ŒD0†D8ƒDP;
8D0A(B BBBHHŒà©ùÿ2FBŽB B(ŒD0†D8ƒDP;
8D0A(B BBBH@ØԱùÿ
BBŽB E(ŒA0†D@4
0D(B BBBHt ¼ùÿÀFŽBE ŒA(†D0ƒG`{hIp@hA`r
0A(A BBBHShbpAxA€BˆAD˜B F¨A°T`t”è¿ùÿÀFŽBE ŒA(†D0ƒG`{hIp@hA`r
0A(A BBBHShbpAxA€BˆAD˜B F¨A°T`t0ÃùÿÀFŽBE ŒA(†D0ƒG`{hIp@hA`r
0A(A BBBHShbpAxA€BˆAD˜B F¨A°T`p„xÆùÿÈFBŒA †D(ƒG`uhMpGhA`r
(A ABBJShcpBxA€BˆBG˜E F¨A°M`„øÔÉùÿÀFŽBB ŒD(†D0ƒG`uhWpyhA`r
0A(A BBBGWh[pFxF€BˆFA˜E F¨A°M`ÆhWpfhA`H€Îùÿ…FBŽB B(ŒA0†D8ƒD`S
8A0A(B BBBFXÌPßùÿwFBŽB E(ŒA0†A8ƒDp¼xI€@xApr
8A0A(B BBBIH(tçùÿFBŽB B(ŒD0†A8ƒD`½
8D0A(B BBBAXt8òùÿéFBŽB B(ŒA0†D8ƒD’˜P y˜As
8D0A(B BBBGHÐÌúÿCFBŽB B(ŒD0†A8ƒGPæ
8D0A(B BBBEX Ð'úÿ½FBŽB B(ŒA0†A8ƒGpxI€@xApv
8D0A(B BBBJüx 4:úÿ',FEŽB B(ŒA0†D8ƒD°´¸OÀQ¸B°{¸OÀT¸A°¯¸OÀQ¸A°ï
8D0A(B BBBGw¸PÀy¸A°V
¸OÀR¸B°>¸OÀR¸B°”¸GÀQ¸A°Ý¸BÀT¸A°ß¸EÀR¸B°¹¸GÀQ¸A°lx!deúÿÅ$FBŽB B(ŒA0†D8ƒGЀØWàyØAÐy
8D0A(B BBBAÄ ØWàfØAÐ\è!ĉúÿéFBŽB B(ŒA0†A8ƒG Ä¨I°@¨A s
8D0A(B BBBElH"T¨úÿË6FBŽB B(ŒA0†A8ƒJÐFØWàyØAÐy
8D0A(B BBBKà ØWàfØAÐL¸"´ÞúÿLFEŽB B(ŒA0†G8ƒGÀ±
8A0A(B BBBGL#t*ûÿê%FBŽB B(ŒD0†A8ƒD£
8D0A(B BBBK\X#PûÿØ-FBŽB B(ŒA0†A8ƒJà]èIð@èAày
8D0A(B BBBKÔ¸#”}ûÿ²6FBŽB B(ŒA0†D8ƒD°©	¸fÀFÈAÐBØFàBèGðW°Þ¸EÀR¸A°s
8D0A(B BBBG3¸HÀSÈEÐGØFàAèBðFøA€T°0¸WÀf¸A°¸VÀg¸N°¸$|³ûÿ˜ FBŽB B(ŒA0†A8ƒD ½¨o°B¸AÀFÈBÐAØBàBèAðR Ÿ¨S°S¸AÀFÈBÐAØBàBèAðT ú
8D0A(B BBBH©¨W°y¨A ÔL%`Óûÿ.FBŽB B(ŒA0†D8ƒD°¸fÀBÈBÐBØBàBèBðR°•¸EÀR¸A°r
8D0A(B BBBH8¸IÀOÈEÐBØBàAèBðGøA€Y°å¸WÀf¸A°Š¸VÀg¸N°p$&¨üÿ%LFBŽB B(ŒA0†A8ƒJðA	
8D0A(B BBBJ¡øW€yøAðøW€føAð\˜&dLüÿsÒFBŽB B(ŒA0†D8ƒG ¿
8D0A(B BBBD¨P°y¨A ø&—Úøÿ('pýÿ4EƒG0_
ADÓ
EA8'„ýÿ3HjHP'¬ýÿ¦E†G@¥
AFx
AG4
ACJ
EAJ
AEœ'"ýÿH U´'"ýÿ+H bÌ'0"ýÿB\ ]ä'h"ýÿCH nü' "ýÿHQ4(¨"ýÿ#E†O0r
AIV
AIJ
AEL( #ýÿ[E†G AA l(à#ýÿþMƒO0®
EA(¼$ýÿ(H _¨(Ô$ýÿHI À(Ü$ýÿÉE†G0m
AEä(ˆ%ýÿ*MƒX)œ%ýÿ3E†G ]A0 )¼%ýÿ§E†G@¬
AOl
AS‘AT)8'ýÿWE†G }At)x'ýÿH U(Œ)€'ýÿ†Q†a
Nn
BL
DAH¸)ä'ýÿ/FBŽB E(ŒD0†D8ƒG V
8D0A(B BBBG*È,ýÿ	*Ä,ýÿ	,*À,ýÿ	@*¼,ýÿ	T*¸,ýÿ	l*°,ýÿŸh j<„*8-ýÿA†DƒD@Š
AAK~
DAMcAA<Ä*.ýÿ$A†DƒD0’
AACx
DAKrAA+/ýÿ)K]+ /ýÿ
0+/ýÿ3Kg,H+D/ýÿaKŒE†D ƒABJÃÆÌx+„/ýÿAKu,+¼/ýÿAKŒE†D ƒbABGÃÆÌÀ+Ü/ýÿQE†}
FD<à+0ýÿKŽEF ŒH(†H0ƒN(A BBBEÃÆÌÍÎ ,l0ýÿIE†w
DDH@,œ0ýÿ£FIŽI L(ŒA0†H8ƒG`Ñ
8E0A(B BBBETŒ,2ýÿéOMŽE B(ŒH0†A8ƒGpÿ
8A0A(B BBBD¨ÃÆÌÍÎÏ@ä,˜3ýÿÊFŽEI ŒH(†H0ƒD@Þ
0A(A BBBBH(-$5ýÿ–E†G@¢
AAr
AE1
AFJ
EAJ
AEHt-x7ýÿÆE†G0¸
AKn
AAJ
AEJ
EAJ
AEÀ-ü9ýÿKJØ-:ýÿKJð-:ýÿ.:ýÿ
0.:ýÿ‰z†AƒD@
EAH`ÃÆL.`;ýÿ(H _d.x;ýÿ_E†G QA„.¸;ýÿ,H cœ.Ð;ýÿH U´.Ø;ýÿH U(Ì.à;ýÿóE†G0J
AQAø.´<ýÿHQ/¼<ýÿWE†G }A0/ü<ýÿ3E†G ]AP/=ýÿlE†G ^A(p/l=ýÿ’E†K L
EGdAœ/à=ýÿŒE†G rA(¼/P>ýÿŠEƒG V
AMXAè/´>ýÿoEƒG YA0?ýÿVEƒG HA(0D?ýÿHI@0L?ýÿfH F
E \0 ?ýÿÉE†G0m
AED€0L@ýÿÝFŒAƒGpg
DBEL
DBF0
DBAÈ0äBýÿ*M†XLä0øBýÿß
FFŽG E(ŒD0†A8ƒJ ã
8A0A(E BBBI841ˆMýÿ"FEŒD †D(ƒDpU
(D ABBK0p1|Oýÿ­o†a
ÆHnJÆH†A
ÆGL8¤1øOýÿO†O0n
ACh
GÆQJAÆN0†à1ÌPýÿ[E†G AA 2QýÿøMƒO0«
EA,$2èQýÿ¯EƒDP—
AG^
AI T2hTýÿEƒG@à
ACx2TUýÿ_H V2œUýÿdH V¨2ôUýÿ ¼2Výÿ^EƒG0KF à2<WýÿP@‡
Iz
E038Xýÿ¡QŒG†G ƒP
ABFhÃÆÌH83´XýÿJFBŽB B(ŒD0†A8ƒD@M
8D0A(B BBBAH„3¸Yýÿ·FBŽB B(ŒD0†A8ƒDPq
8D0A(B BBBExÐ3,ZýÿŠFDŽB B(ŒA0†A8ƒDPü
8A0A(B BBBFL
8A0A(D BBBHb
8A0A(B BBBDxL4@[ýÿ‹FDŽB B(ŒA0†A8ƒDPþ
8A0A(B BBBDM
8A0A(D BBBGb
8A0A(B BBBD(È4T\ýÿQE†CƒD g
AAKxô4ˆ\ýÿŒFBŽB B(ŒA0†D8ƒGPh
8A0A(B BBBF“
8A0A(B BBBCó
8A0A(B BBBAp5œ^ýÿŒFBŽB B(ŒA0†C8ƒGP`
8A0A(B BBBG‰
8A0A(B BBBEi
8A0A(B BBBEi8A0A(B BBB`6˜_ýÿäFBŽB E(ŒA0†A8ƒGPi
8A0A(B BBBE‰8A0A(B BBB`h6$aýÿ:FBŽB E(ŒA0†A8ƒGP`
8A0A(B BBBF³
8A0A(B BBBK<Ì6cýÿyKŽGE ŒF(†E0ƒG(A BBBHÃÆÌÍÎ\7@cýÿ¯FIŽB B(ŒA0†D8ƒD`j
8A0A(B BBBAS8A0A(B BBB`9 9'1°
ҍõþÿoð 0
rXà ˆ2Xn	þÿÿo2ÿÿÿoðÿÿo0ùÿÿou0°@°P°`°p°€°° °°°0аà°ð°±± ±0±@±P±`±p±€±± ±°±1бà±ð±²² ²0²@²P²`²p²€²² ²°²2вà²ð²³³ ³0³@³P³`³p³€³³ ³°³3гà³ð³´´ ´0´@´P´`´p´€´´ ´°´4дà´ð´µµ µ0µ@µPµ`µpµ€µµ µ°µ5еàµðµ¶¶ ¶0¶@¶P¶`¶p¶€¶¶ ¶°¶6жà¶ð¶·· ·0·@·P·`·p·€·· ·°·à“ÿÿÿÿÿÿÿÿ
    This is an alias of `random_sample`. See `random_sample`  for the complete
    documentation.
    
    This is an alias of `random_sample`. See `random_sample`  for the complete
    documentation.
    
        permutation(x)

        Randomly permute a sequence, or return a permuted range.

        If `x` is a multi-dimensional array, it is only shuffled along its
        first index.

        Parameters
        ----------
        x : int or array_like
            If `x` is an integer, randomly permute ``np.arange(x)``.
            If `x` is an array, make a copy and shuffle the elements
            randomly.

        Returns
        -------
        out : ndarray
            Permuted sequence or array range.


        Examples
        --------
        >>> np.random.permutation(10)
        array([1, 7, 4, 3, 0, 9, 2, 5, 8, 6]) # random

        >>> np.random.permutation([1, 4, 9, 12, 15])
        array([15,  1,  9,  4, 12]) # random

        >>> arr = np.arange(9).reshape((3, 3))
        >>> np.random.permutation(arr)
        array([[6, 7, 8], # random
               [0, 1, 2],
               [3, 4, 5]])

        
        shuffle(x)

        Modify a sequence in-place by shuffling its contents.

        This function only shuffles the array along the first axis of a
        multi-dimensional array. The order of sub-arrays is changed but
        their contents remains the same.

        Parameters
        ----------
        x : array_like
            The array or list to be shuffled.

        Returns
        -------
        None

        Examples
        --------
        >>> arr = np.arange(10)
        >>> np.random.shuffle(arr)
        >>> arr
        [1 7 5 2 9 4 3 6 0 8] # random

        Multi-dimensional arrays are only shuffled along the first axis:

        >>> arr = np.arange(9).reshape((3, 3))
        >>> np.random.shuffle(arr)
        >>> arr
        array([[3, 4, 5], # random
               [6, 7, 8],
               [0, 1, 2]])

        
        dirichlet(alpha, size=None)

        Draw samples from the Dirichlet distribution.

        Draw `size` samples of dimension k from a Dirichlet distribution. A
        Dirichlet-distributed random variable can be seen as a multivariate
        generalization of a Beta distribution. The Dirichlet distribution
        is a conjugate prior of a multinomial distribution in Bayesian
        inference.

        Parameters
        ----------
        alpha : array
            Parameter of the distribution (k dimension for sample of
            dimension k).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        samples : ndarray,
            The drawn samples, of shape (size, alpha.ndim).

        Raises
        -------
        ValueError
            If any value in alpha is less than or equal to zero

        Notes
        -----
        The Dirichlet distribution is a distribution over vectors
        :math:`x` that fulfil the conditions :math:`x_i>0` and
        :math:`\sum_{i=1}^k x_i = 1`.

        The probability density function :math:`p` of a
        Dirichlet-distributed random vector :math:`X` is
        proportional to

        .. math:: p(x) \propto \prod_{i=1}^{k}{x^{\alpha_i-1}_i},

        where :math:`\alpha` is a vector containing the positive
        concentration parameters.

        The method uses the following property for computation: let :math:`Y`
        be a random vector which has components that follow a standard gamma
        distribution, then :math:`X = \frac{1}{\sum_{i=1}^k{Y_i}} Y`
        is Dirichlet-distributed

        References
        ----------
        .. [1] David McKay, "Information Theory, Inference and Learning
               Algorithms," chapter 23,
               http://www.inference.org.uk/mackay/itila/
        .. [2] Wikipedia, "Dirichlet distribution",
               https://en.wikipedia.org/wiki/Dirichlet_distribution

        Examples
        --------
        Taking an example cited in Wikipedia, this distribution can be used if
        one wanted to cut strings (each of initial length 1.0) into K pieces
        with different lengths, where each piece had, on average, a designated
        average length, but allowing some variation in the relative sizes of
        the pieces.

        >>> s = np.random.dirichlet((10, 5, 3), 20).transpose()

        >>> import matplotlib.pyplot as plt
        >>> plt.barh(range(20), s[0])
        >>> plt.barh(range(20), s[1], left=s[0], color='g')
        >>> plt.barh(range(20), s[2], left=s[0]+s[1], color='r')
        >>> plt.title("Lengths of Strings")

        
        multinomial(n, pvals, size=None)

        Draw samples from a multinomial distribution.

        The multinomial distribution is a multivariate generalization of the
        binomial distribution.  Take an experiment with one of ``p``
        possible outcomes.  An example of such an experiment is throwing a dice,
        where the outcome can be 1 through 6.  Each sample drawn from the
        distribution represents `n` such experiments.  Its values,
        ``X_i = [X_0, X_1, ..., X_p]``, represent the number of times the
        outcome was ``i``.

        Parameters
        ----------
        n : int
            Number of experiments.
        pvals : sequence of floats, length p
            Probabilities of each of the ``p`` different outcomes.  These
            must sum to 1 (however, the last element is always assumed to
            account for the remaining probability, as long as
            ``sum(pvals[:-1]) <= 1)``.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : ndarray
            The drawn samples, of shape *size*, if that was provided.  If not,
            the shape is ``(N,)``.

            In other words, each entry ``out[i,j,...,:]`` is an N-dimensional
            value drawn from the distribution.

        Examples
        --------
        Throw a dice 20 times:

        >>> np.random.multinomial(20, [1/6.]*6, size=1)
        array([[4, 1, 7, 5, 2, 1]]) # random

        It landed 4 times on 1, once on 2, etc.

        Now, throw the dice 20 times, and 20 times again:

        >>> np.random.multinomial(20, [1/6.]*6, size=2)
        array([[3, 4, 3, 3, 4, 3], # random
               [2, 4, 3, 4, 0, 7]])

        For the first run, we threw 3 times 1, 4 times 2, etc.  For the second,
        we threw 2 times 1, 4 times 2, etc.

        A loaded die is more likely to land on number 6:

        >>> np.random.multinomial(100, [1/7.]*5 + [2/7.])
        array([11, 16, 14, 17, 16, 26]) # random

        The probability inputs should be normalized. As an implementation
        detail, the value of the last entry is ignored and assumed to take
        up any leftover probability mass, but this should not be relied on.
        A biased coin which has twice as much weight on one side as on the
        other should be sampled like so:

        >>> np.random.multinomial(100, [1.0 / 3, 2.0 / 3])  # RIGHT
        array([38, 62]) # random

        not like:

        >>> np.random.multinomial(100, [1.0, 2.0])  # WRONG
        Traceback (most recent call last):
        ValueError: pvals < 0, pvals > 1 or pvals contains NaNs

        
        multivariate_normal(mean, cov, size=None, check_valid='warn', tol=1e-8)

        Draw random samples from a multivariate normal distribution.

        The multivariate normal, multinormal or Gaussian distribution is a
        generalization of the one-dimensional normal distribution to higher
        dimensions.  Such a distribution is specified by its mean and
        covariance matrix.  These parameters are analogous to the mean
        (average or "center") and variance (standard deviation, or "width,"
        squared) of the one-dimensional normal distribution.

        Parameters
        ----------
        mean : 1-D array_like, of length N
            Mean of the N-dimensional distribution.
        cov : 2-D array_like, of shape (N, N)
            Covariance matrix of the distribution. It must be symmetric and
            positive-semidefinite for proper sampling.
        size : int or tuple of ints, optional
            Given a shape of, for example, ``(m,n,k)``, ``m*n*k`` samples are
            generated, and packed in an `m`-by-`n`-by-`k` arrangement.  Because
            each sample is `N`-dimensional, the output shape is ``(m,n,k,N)``.
            If no shape is specified, a single (`N`-D) sample is returned.
        check_valid : { 'warn', 'raise', 'ignore' }, optional
            Behavior when the covariance matrix is not positive semidefinite.
        tol : float, optional
            Tolerance when checking the singular values in covariance matrix.
            cov is cast to double before the check.

        Returns
        -------
        out : ndarray
            The drawn samples, of shape *size*, if that was provided.  If not,
            the shape is ``(N,)``.

            In other words, each entry ``out[i,j,...,:]`` is an N-dimensional
            value drawn from the distribution.

        Notes
        -----
        The mean is a coordinate in N-dimensional space, which represents the
        location where samples are most likely to be generated.  This is
        analogous to the peak of the bell curve for the one-dimensional or
        univariate normal distribution.

        Covariance indicates the level to which two variables vary together.
        From the multivariate normal distribution, we draw N-dimensional
        samples, :math:`X = [x_1, x_2, ... x_N]`.  The covariance matrix
        element :math:`C_{ij}` is the covariance of :math:`x_i` and :math:`x_j`.
        The element :math:`C_{ii}` is the variance of :math:`x_i` (i.e. its
        "spread").

        Instead of specifying the full covariance matrix, popular
        approximations include:

          - Spherical covariance (`cov` is a multiple of the identity matrix)
          - Diagonal covariance (`cov` has non-negative elements, and only on
            the diagonal)

        This geometrical property can be seen in two dimensions by plotting
        generated data-points:

        >>> mean = [0, 0]
        >>> cov = [[1, 0], [0, 100]]  # diagonal covariance

        Diagonal covariance means that points are oriented along x or y-axis:

        >>> import matplotlib.pyplot as plt
        >>> x, y = np.random.multivariate_normal(mean, cov, 5000).T
        >>> plt.plot(x, y, 'x')
        >>> plt.axis('equal')
        >>> plt.show()

        Note that the covariance matrix must be positive semidefinite (a.k.a.
        nonnegative-definite). Otherwise, the behavior of this method is
        undefined and backwards compatibility is not guaranteed.

        References
        ----------
        .. [1] Papoulis, A., "Probability, Random Variables, and Stochastic
               Processes," 3rd ed., New York: McGraw-Hill, 1991.
        .. [2] Duda, R. O., Hart, P. E., and Stork, D. G., "Pattern
               Classification," 2nd ed., New York: Wiley, 2001.

        Examples
        --------
        >>> mean = (1, 2)
        >>> cov = [[1, 0], [0, 1]]
        >>> x = np.random.multivariate_normal(mean, cov, (3, 3))
        >>> x.shape
        (3, 3, 2)

        The following is probably true, given that 0.6 is roughly twice the
        standard deviation:

        >>> list((x[0,0,:] - mean) < 0.6)
        [True, True] # random

        
        logseries(p, size=None)

        Draw samples from a logarithmic series distribution.

        Samples are drawn from a log series distribution with specified
        shape parameter, 0 < ``p`` < 1.

        Parameters
        ----------
        p : float or array_like of floats
            Shape parameter for the distribution.  Must be in the range (0, 1).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``p`` is a scalar.  Otherwise,
            ``np.array(p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized logarithmic series distribution.

        See Also
        --------
        scipy.stats.logser : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Log Series distribution is

        .. math:: P(k) = \frac{-p^k}{k \ln(1-p)},

        where p = probability.

        The log series distribution is frequently used to represent species
        richness and occurrence, first proposed by Fisher, Corbet, and
        Williams in 1943 [2].  It may also be used to model the numbers of
        occupants seen in cars [3].

        References
        ----------
        .. [1] Buzas, Martin A.; Culver, Stephen J.,  Understanding regional
               species diversity through the log series distribution of
               occurrences: BIODIVERSITY RESEARCH Diversity & Distributions,
               Volume 5, Number 5, September 1999 , pp. 187-195(9).
        .. [2] Fisher, R.A,, A.S. Corbet, and C.B. Williams. 1943. The
               relation between the number of species and the number of
               individuals in a random sample of an animal population.
               Journal of Animal Ecology, 12:42-58.
        .. [3] D. J. Hand, F. Daly, D. Lunn, E. Ostrowski, A Handbook of Small
               Data Sets, CRC Press, 1994.
        .. [4] Wikipedia, "Logarithmic distribution",
               https://en.wikipedia.org/wiki/Logarithmic_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a = .6
        >>> s = np.random.logseries(a, 10000)
        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s)

        #   plot against distribution

        >>> def logseries(k, p):
        ...     return -p**k/(k*np.log(1-p))
        >>> plt.plot(bins, logseries(bins, a)*count.max()/
        ...          logseries(bins, a).max(), 'r')
        >>> plt.show()

        
        hypergeometric(ngood, nbad, nsample, size=None)

        Draw samples from a Hypergeometric distribution.

        Samples are drawn from a hypergeometric distribution with specified
        parameters, `ngood` (ways to make a good selection), `nbad` (ways to make
        a bad selection), and `nsample` (number of items sampled, which is less
        than or equal to the sum ``ngood + nbad``).

        Parameters
        ----------
        ngood : int or array_like of ints
            Number of ways to make a good selection.  Must be nonnegative.
        nbad : int or array_like of ints
            Number of ways to make a bad selection.  Must be nonnegative.
        nsample : int or array_like of ints
            Number of items sampled.  Must be at least 1 and at most
            ``ngood + nbad``.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if `ngood`, `nbad`, and `nsample`
            are all scalars.  Otherwise, ``np.broadcast(ngood, nbad, nsample).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized hypergeometric distribution. Each
            sample is the number of good items within a randomly selected subset of
            size `nsample` taken from a set of `ngood` good items and `nbad` bad items.

        See Also
        --------
        scipy.stats.hypergeom : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Hypergeometric distribution is

        .. math:: P(x) = \frac{\binom{g}{x}\binom{b}{n-x}}{\binom{g+b}{n}},

        where :math:`0 \le x \le n` and :math:`n-b \le x \le g`

        for P(x) the probability of ``x`` good results in the drawn sample,
        g = `ngood`, b = `nbad`, and n = `nsample`.

        Consider an urn with black and white marbles in it, `ngood` of them
        are black and `nbad` are white. If you draw `nsample` balls without
        replacement, then the hypergeometric distribution describes the
        distribution of black balls in the drawn sample.

        Note that this distribution is very similar to the binomial
        distribution, except that in this case, samples are drawn without
        replacement, whereas in the Binomial case samples are drawn with
        replacement (or the sample space is infinite). As the sample space
        becomes large, this distribution approaches the binomial.

        References
        ----------
        .. [1] Lentner, Marvin, "Elementary Applied Statistics", Bogden
               and Quigley, 1972.
        .. [2] Weisstein, Eric W. "Hypergeometric Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/HypergeometricDistribution.html
        .. [3] Wikipedia, "Hypergeometric distribution",
               https://en.wikipedia.org/wiki/Hypergeometric_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> ngood, nbad, nsamp = 100, 2, 10
        # number of good, number of bad, and number of samples
        >>> s = np.random.hypergeometric(ngood, nbad, nsamp, 1000)
        >>> from matplotlib.pyplot import hist
        >>> hist(s)
        #   note that it is very unlikely to grab both bad items

        Suppose you have an urn with 15 white and 15 black marbles.
        If you pull 15 marbles at random, how likely is it that
        12 or more of them are one color?

        >>> s = np.random.hypergeometric(15, 15, 15, 100000)
        >>> sum(s>=12)/100000. + sum(s<=3)/100000.
        #   answer = 0.003 ... pretty unlikely!

        
        geometric(p, size=None)

        Draw samples from the geometric distribution.

        Bernoulli trials are experiments with one of two outcomes:
        success or failure (an example of such an experiment is flipping
        a coin).  The geometric distribution models the number of trials
        that must be run in order to achieve success.  It is therefore
        supported on the positive integers, ``k = 1, 2, ...``.

        The probability mass function of the geometric distribution is

        .. math:: f(k) = (1 - p)^{k - 1} p

        where `p` is the probability of success of an individual trial.

        Parameters
        ----------
        p : float or array_like of floats
            The probability of success of an individual trial.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``p`` is a scalar.  Otherwise,
            ``np.array(p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized geometric distribution.

        Examples
        --------
        Draw ten thousand values from the geometric distribution,
        with the probability of an individual success equal to 0.35:

        >>> z = np.random.geometric(p=0.35, size=10000)

        How many trials succeeded after a single run?

        >>> (z == 1).sum() / 10000.
        0.34889999999999999 #random

        
        zipf(a, size=None)

        Draw samples from a Zipf distribution.

        Samples are drawn from a Zipf distribution with specified parameter
        `a` > 1.

        The Zipf distribution (also known as the zeta distribution) is a
        continuous probability distribution that satisfies Zipf's law: the
        frequency of an item is inversely proportional to its rank in a
        frequency table.

        Parameters
        ----------
        a : float or array_like of floats
            Distribution parameter. Must be greater than 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar. Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Zipf distribution.

        See Also
        --------
        scipy.stats.zipf : probability density function, distribution, or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Zipf distribution is

        .. math:: p(x) = \frac{x^{-a}}{\zeta(a)},

        where :math:`\zeta` is the Riemann Zeta function.

        It is named for the American linguist George Kingsley Zipf, who noted
        that the frequency of any word in a sample of a language is inversely
        proportional to its rank in the frequency table.

        References
        ----------
        .. [1] Zipf, G. K., "Selected Studies of the Principle of Relative
               Frequency in Language," Cambridge, MA: Harvard Univ. Press,
               1932.

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 2. # parameter
        >>> s = np.random.zipf(a, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> from scipy import special  # doctest: +SKIP

        Truncate s values at 50 so plot is interesting:

        >>> count, bins, ignored = plt.hist(s[s<50], 50, density=True)
        >>> x = np.arange(1., 50.)
        >>> y = x**(-a) / special.zetac(a)  # doctest: +SKIP
        >>> plt.plot(x, y/max(y), linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        poisson(lam=1.0, size=None)

        Draw samples from a Poisson distribution.

        The Poisson distribution is the limit of the binomial distribution
        for large N.

        Parameters
        ----------
        lam : float or array_like of floats
            Expectation of interval, must be >= 0. A sequence of expectation
            intervals must be broadcastable over the requested size.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``lam`` is a scalar. Otherwise,
            ``np.array(lam).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Poisson distribution.

        Notes
        -----
        The Poisson distribution

        .. math:: f(k; \lambda)=\frac{\lambda^k e^{-\lambda}}{k!}

        For events with an expected separation :math:`\lambda` the Poisson
        distribution :math:`f(k; \lambda)` describes the probability of
        :math:`k` events occurring within the observed
        interval :math:`\lambda`.

        Because the output is limited to the range of the C int64 type, a
        ValueError is raised when `lam` is within 10 sigma of the maximum
        representable value.

        References
        ----------
        .. [1] Weisstein, Eric W. "Poisson Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/PoissonDistribution.html
        .. [2] Wikipedia, "Poisson distribution",
               https://en.wikipedia.org/wiki/Poisson_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> import numpy as np
        >>> s = np.random.poisson(5, 10000)

        Display histogram of the sample:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 14, density=True)
        >>> plt.show()

        Draw each 100 values for lambda 100 and 500:

        >>> s = np.random.poisson(lam=(100., 500.), size=(100, 2))

        
        negative_binomial(n, p, size=None)

        Draw samples from a negative binomial distribution.

        Samples are drawn from a negative binomial distribution with specified
        parameters, `n` successes and `p` probability of success where `n`
        is > 0 and `p` is in the interval [0, 1].

        Parameters
        ----------
        n : float or array_like of floats
            Parameter of the distribution, > 0.
        p : float or array_like of floats
            Parameter of the distribution, >= 0 and <=1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``n`` and ``p`` are both scalars.
            Otherwise, ``np.broadcast(n, p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized negative binomial distribution,
            where each sample is equal to N, the number of failures that
            occurred before a total of n successes was reached.

        Notes
        -----
        The probability mass function of the negative binomial distribution is

        .. math:: P(N;n,p) = \frac{\Gamma(N+n)}{N!\Gamma(n)}p^{n}(1-p)^{N},

        where :math:`n` is the number of successes, :math:`p` is the
        probability of success, :math:`N+n` is the number of trials, and
        :math:`\Gamma` is the gamma function. When :math:`n` is an integer,
        :math:`\frac{\Gamma(N+n)}{N!\Gamma(n)} = \binom{N+n-1}{N}`, which is
        the more common form of this term in the the pmf. The negative
        binomial distribution gives the probability of N failures given n
        successes, with a success on the last trial.

        If one throws a die repeatedly until the third time a "1" appears,
        then the probability distribution of the number of non-"1"s that
        appear before the third "1" is a negative binomial distribution.

        References
        ----------
        .. [1] Weisstein, Eric W. "Negative Binomial Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/NegativeBinomialDistribution.html
        .. [2] Wikipedia, "Negative binomial distribution",
               https://en.wikipedia.org/wiki/Negative_binomial_distribution

        Examples
        --------
        Draw samples from the distribution:

        A real world example. A company drills wild-cat oil
        exploration wells, each with an estimated probability of
        success of 0.1.  What is the probability of having one success
        for each successive well, that is what is the probability of a
        single success after drilling 5 wells, after 6 wells, etc.?

        >>> s = np.random.negative_binomial(1, 0.1, 100000)
        >>> for i in range(1, 11): # doctest: +SKIP
        ...    probability = sum(s<i) / 100000.
        ...    print(i, "wells drilled, probability of one success =", probability)

        
        binomial(n, p, size=None)

        Draw samples from a binomial distribution.

        Samples are drawn from a binomial distribution with specified
        parameters, n trials and p probability of success where
        n an integer >= 0 and p is in the interval [0,1]. (n may be
        input as a float, but it is truncated to an integer in use)

        Parameters
        ----------
        n : int or array_like of ints
            Parameter of the distribution, >= 0. Floats are also accepted,
            but they will be truncated to integers.
        p : float or array_like of floats
            Parameter of the distribution, >= 0 and <=1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``n`` and ``p`` are both scalars.
            Otherwise, ``np.broadcast(n, p).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized binomial distribution, where
            each sample is equal to the number of successes over the n trials.

        See Also
        --------
        scipy.stats.binom : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the binomial distribution is

        .. math:: P(N) = \binom{n}{N}p^N(1-p)^{n-N},

        where :math:`n` is the number of trials, :math:`p` is the probability
        of success, and :math:`N` is the number of successes.

        When estimating the standard error of a proportion in a population by
        using a random sample, the normal distribution works well unless the
        product p*n <=5, where p = population proportion estimate, and n =
        number of samples, in which case the binomial distribution is used
        instead. For example, a sample of 15 people shows 4 who are left
        handed, and 11 who are right handed. Then p = 4/15 = 27%. 0.27*15 = 4,
        so the binomial distribution should be used in this case.

        References
        ----------
        .. [1] Dalgaard, Peter, "Introductory Statistics with R",
               Springer-Verlag, 2002.
        .. [2] Glantz, Stanton A. "Primer of Biostatistics.", McGraw-Hill,
               Fifth Edition, 2002.
        .. [3] Lentner, Marvin, "Elementary Applied Statistics", Bogden
               and Quigley, 1972.
        .. [4] Weisstein, Eric W. "Binomial Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/BinomialDistribution.html
        .. [5] Wikipedia, "Binomial distribution",
               https://en.wikipedia.org/wiki/Binomial_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> n, p = 10, .5  # number of trials, probability of each trial
        >>> s = np.random.binomial(n, p, 1000)
        # result of flipping a coin 10 times, tested 1000 times.

        A real world example. A company drills 9 wild-cat oil exploration
        wells, each with an estimated probability of success of 0.1. All nine
        wells fail. What is the probability of that happening?

        Let's do 20,000 trials of the model, and count the number that
        generate zero positive results.

        >>> sum(np.random.binomial(9, 0.1, 20000) == 0)/20000.
        # answer = 0.38885, or 38%.

        
        triangular(left, mode, right, size=None)

        Draw samples from the triangular distribution over the
        interval ``[left, right]``.

        The triangular distribution is a continuous probability
        distribution with lower limit left, peak at mode, and upper
        limit right. Unlike the other distributions, these parameters
        directly define the shape of the pdf.

        Parameters
        ----------
        left : float or array_like of floats
            Lower limit.
        mode : float or array_like of floats
            The value where the peak of the distribution occurs.
            The value must fulfill the condition ``left <= mode <= right``.
        right : float or array_like of floats
            Upper limit, must be larger than `left`.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``left``, ``mode``, and ``right``
            are all scalars.  Otherwise, ``np.broadcast(left, mode, right).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized triangular distribution.

        Notes
        -----
        The probability density function for the triangular distribution is

        .. math:: P(x;l, m, r) = \begin{cases}
                  \frac{2(x-l)}{(r-l)(m-l)}& \text{for $l \leq x \leq m$},\\
                  \frac{2(r-x)}{(r-l)(r-m)}& \text{for $m \leq x \leq r$},\\
                  0& \text{otherwise}.
                  \end{cases}

        The triangular distribution is often used in ill-defined
        problems where the underlying distribution is not known, but
        some knowledge of the limits and mode exists. Often it is used
        in simulations.

        References
        ----------
        .. [1] Wikipedia, "Triangular distribution"
               https://en.wikipedia.org/wiki/Triangular_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram:

        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(np.random.triangular(-3, 0, 8, 100000), bins=200,
        ...              density=True)
        >>> plt.show()

        
        wald(mean, scale, size=None)

        Draw samples from a Wald, or inverse Gaussian, distribution.

        As the scale approaches infinity, the distribution becomes more like a
        Gaussian. Some references claim that the Wald is an inverse Gaussian
        with mean equal to 1, but this is by no means universal.

        The inverse Gaussian distribution was first studied in relationship to
        Brownian motion. In 1956 M.C.K. Tweedie used the name inverse Gaussian
        because there is an inverse relationship between the time to cover a
        unit distance and distance covered in unit time.

        Parameters
        ----------
        mean : float or array_like of floats
            Distribution mean, must be > 0.
        scale : float or array_like of floats
            Scale parameter, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mean`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(mean, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Wald distribution.

        Notes
        -----
        The probability density function for the Wald distribution is

        .. math:: P(x;mean,scale) = \sqrt{\frac{scale}{2\pi x^3}}e^
                                    \frac{-scale(x-mean)^2}{2\cdotp mean^2x}

        As noted above the inverse Gaussian distribution first arise
        from attempts to model Brownian motion. It is also a
        competitor to the Weibull for use in reliability modeling and
        modeling stock returns and interest rate processes.

        References
        ----------
        .. [1] Brighton Webs Ltd., Wald Distribution,
               https://web.archive.org/web/20090423014010/http://www.brighton-webs.co.uk:80/distributions/wald.asp
        .. [2] Chhikara, Raj S., and Folks, J. Leroy, "The Inverse Gaussian
               Distribution: Theory : Methodology, and Applications", CRC Press,
               1988.
        .. [3] Wikipedia, "Inverse Gaussian distribution"
               https://en.wikipedia.org/wiki/Inverse_Gaussian_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram:

        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(np.random.wald(3, 2, 100000), bins=200, density=True)
        >>> plt.show()

        
        rayleigh(scale=1.0, size=None)

        Draw samples from a Rayleigh distribution.

        The :math:`\chi` and Weibull distributions are generalizations of the
        Rayleigh.

        Parameters
        ----------
        scale : float or array_like of floats, optional
            Scale, also equals the mode. Must be non-negative. Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``scale`` is a scalar.  Otherwise,
            ``np.array(scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Rayleigh distribution.

        Notes
        -----
        The probability density function for the Rayleigh distribution is

        .. math:: P(x;scale) = \frac{x}{scale^2}e^{\frac{-x^2}{2 \cdotp scale^2}}

        The Rayleigh distribution would arise, for example, if the East
        and North components of the wind velocity had identical zero-mean
        Gaussian distributions.  Then the wind speed would have a Rayleigh
        distribution.

        References
        ----------
        .. [1] Brighton Webs Ltd., "Rayleigh Distribution,"
               https://web.archive.org/web/20090514091424/http://brighton-webs.co.uk:80/distributions/rayleigh.asp
        .. [2] Wikipedia, "Rayleigh distribution"
               https://en.wikipedia.org/wiki/Rayleigh_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram

        >>> from matplotlib.pyplot import hist
        >>> values = hist(np.random.rayleigh(3, 100000), bins=200, density=True)

        Wave heights tend to follow a Rayleigh distribution. If the mean wave
        height is 1 meter, what fraction of waves are likely to be larger than 3
        meters?

        >>> meanvalue = 1
        >>> modevalue = np.sqrt(2 / np.pi) * meanvalue
        >>> s = np.random.rayleigh(modevalue, 1000000)

        The percentage of waves larger than 3 meters is:

        >>> 100.*sum(s>3)/1000000.
        0.087300000000000003 # random

        
        lognormal(mean=0.0, sigma=1.0, size=None)

        Draw samples from a log-normal distribution.

        Draw samples from a log-normal distribution with specified mean,
        standard deviation, and array shape.  Note that the mean and standard
        deviation are not the values for the distribution itself, but of the
        underlying normal distribution it is derived from.

        Parameters
        ----------
        mean : float or array_like of floats, optional
            Mean value of the underlying normal distribution. Default is 0.
        sigma : float or array_like of floats, optional
            Standard deviation of the underlying normal distribution. Must be
            non-negative. Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mean`` and ``sigma`` are both scalars.
            Otherwise, ``np.broadcast(mean, sigma).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized log-normal distribution.

        See Also
        --------
        scipy.stats.lognorm : probability density function, distribution,
            cumulative density function, etc.

        Notes
        -----
        A variable `x` has a log-normal distribution if `log(x)` is normally
        distributed.  The probability density function for the log-normal
        distribution is:

        .. math:: p(x) = \frac{1}{\sigma x \sqrt{2\pi}}
                         e^{(-\frac{(ln(x)-\mu)^2}{2\sigma^2})}

        where :math:`\mu` is the mean and :math:`\sigma` is the standard
        deviation of the normally distributed logarithm of the variable.
        A log-normal distribution results if a random variable is the *product*
        of a large number of independent, identically-distributed variables in
        the same way that a normal distribution results if the variable is the
        *sum* of a large number of independent, identically-distributed
        variables.

        References
        ----------
        .. [1] Limpert, E., Stahel, W. A., and Abbt, M., "Log-normal
               Distributions across the Sciences: Keys and Clues,"
               BioScience, Vol. 51, No. 5, May, 2001.
               https://stat.ethz.ch/~stahel/lognormal/bioscience.pdf
        .. [2] Reiss, R.D. and Thomas, M., "Statistical Analysis of Extreme
               Values," Basel: Birkhauser Verlag, 2001, pp. 31-32.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, sigma = 3., 1. # mean and standard deviation
        >>> s = np.random.lognormal(mu, sigma, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 100, density=True, align='mid')

        >>> x = np.linspace(min(bins), max(bins), 10000)
        >>> pdf = (np.exp(-(np.log(x) - mu)**2 / (2 * sigma**2))
        ...        / (x * sigma * np.sqrt(2 * np.pi)))

        >>> plt.plot(x, pdf, linewidth=2, color='r')
        >>> plt.axis('tight')
        >>> plt.show()

        Demonstrate that taking the products of random samples from a uniform
        distribution can be fit well by a log-normal probability density
        function.

        >>> # Generate a thousand samples: each is the product of 100 random
        >>> # values, drawn from a normal distribution.
        >>> b = []
        >>> for i in range(1000):
        ...    a = 10. + np.random.standard_normal(100)
        ...    b.append(np.product(a))

        >>> b = np.array(b) / np.min(b) # scale values to be positive
        >>> count, bins, ignored = plt.hist(b, 100, density=True, align='mid')
        >>> sigma = np.std(np.log(b))
        >>> mu = np.mean(np.log(b))

        >>> x = np.linspace(min(bins), max(bins), 10000)
        >>> pdf = (np.exp(-(np.log(x) - mu)**2 / (2 * sigma**2))
        ...        / (x * sigma * np.sqrt(2 * np.pi)))

        >>> plt.plot(x, pdf, color='r', linewidth=2)
        >>> plt.show()

        
        logistic(loc=0.0, scale=1.0, size=None)

        Draw samples from a logistic distribution.

        Samples are drawn from a logistic distribution with specified
        parameters, loc (location or mean, also median), and scale (>0).

        Parameters
        ----------
        loc : float or array_like of floats, optional
            Parameter of the distribution. Default is 0.
        scale : float or array_like of floats, optional
            Parameter of the distribution. Must be non-negative.
            Default is 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized logistic distribution.

        See Also
        --------
        scipy.stats.logistic : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Logistic distribution is

        .. math:: P(x) = P(x) = \frac{e^{-(x-\mu)/s}}{s(1+e^{-(x-\mu)/s})^2},

        where :math:`\mu` = location and :math:`s` = scale.

        The Logistic distribution is used in Extreme Value problems where it
        can act as a mixture of Gumbel distributions, in Epidemiology, and by
        the World Chess Federation (FIDE) where it is used in the Elo ranking
        system, assuming the performance of each player is a logistically
        distributed random variable.

        References
        ----------
        .. [1] Reiss, R.-D. and Thomas M. (2001), "Statistical Analysis of
               Extreme Values, from Insurance, Finance, Hydrology and Other
               Fields," Birkhauser Verlag, Basel, pp 132-133.
        .. [2] Weisstein, Eric W. "Logistic Distribution." From
               MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/LogisticDistribution.html
        .. [3] Wikipedia, "Logistic-distribution",
               https://en.wikipedia.org/wiki/Logistic_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> loc, scale = 10, 1
        >>> s = np.random.logistic(loc, scale, 10000)
        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, bins=50)

        #   plot against distribution

        >>> def logist(x, loc, scale):
        ...     return np.exp((loc-x)/scale)/(scale*(1+np.exp((loc-x)/scale))**2)
        >>> lgst_val = logist(bins, loc, scale)
        >>> plt.plot(bins, lgst_val * count.max() / lgst_val.max())
        >>> plt.show()

        
        gumbel(loc=0.0, scale=1.0, size=None)

        Draw samples from a Gumbel distribution.

        Draw samples from a Gumbel distribution with specified location and
        scale.  For more information on the Gumbel distribution, see
        Notes and References below.

        Parameters
        ----------
        loc : float or array_like of floats, optional
            The location of the mode of the distribution. Default is 0.
        scale : float or array_like of floats, optional
            The scale parameter of the distribution. Default is 1. Must be non-
            negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Gumbel distribution.

        See Also
        --------
        scipy.stats.gumbel_l
        scipy.stats.gumbel_r
        scipy.stats.genextreme
        weibull

        Notes
        -----
        The Gumbel (or Smallest Extreme Value (SEV) or the Smallest Extreme
        Value Type I) distribution is one of a class of Generalized Extreme
        Value (GEV) distributions used in modeling extreme value problems.
        The Gumbel is a special case of the Extreme Value Type I distribution
        for maximums from distributions with "exponential-like" tails.

        The probability density for the Gumbel distribution is

        .. math:: p(x) = \frac{e^{-(x - \mu)/ \beta}}{\beta} e^{ -e^{-(x - \mu)/
                  \beta}},

        where :math:`\mu` is the mode, a location parameter, and
        :math:`\beta` is the scale parameter.

        The Gumbel (named for German mathematician Emil Julius Gumbel) was used
        very early in the hydrology literature, for modeling the occurrence of
        flood events. It is also used for modeling maximum wind speed and
        rainfall rates.  It is a "fat-tailed" distribution - the probability of
        an event in the tail of the distribution is larger than if one used a
        Gaussian, hence the surprisingly frequent occurrence of 100-year
        floods. Floods were initially modeled as a Gaussian process, which
        underestimated the frequency of extreme events.

        It is one of a class of extreme value distributions, the Generalized
        Extreme Value (GEV) distributions, which also includes the Weibull and
        Frechet.

        The function has a mean of :math:`\mu + 0.57721\beta` and a variance
        of :math:`\frac{\pi^2}{6}\beta^2`.

        References
        ----------
        .. [1] Gumbel, E. J., "Statistics of Extremes,"
               New York: Columbia University Press, 1958.
        .. [2] Reiss, R.-D. and Thomas, M., "Statistical Analysis of Extreme
               Values from Insurance, Finance, Hydrology and Other Fields,"
               Basel: Birkhauser Verlag, 2001.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, beta = 0, 0.1 # location and scale
        >>> s = np.random.gumbel(mu, beta, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> plt.plot(bins, (1/beta)*np.exp(-(bins - mu)/beta)
        ...          * np.exp( -np.exp( -(bins - mu) /beta) ),
        ...          linewidth=2, color='r')
        >>> plt.show()

        Show how an extreme value distribution can arise from a Gaussian process
        and compare to a Gaussian:

        >>> means = []
        >>> maxima = []
        >>> for i in range(0,1000) :
        ...    a = np.random.normal(mu, beta, 1000)
        ...    means.append(a.mean())
        ...    maxima.append(a.max())
        >>> count, bins, ignored = plt.hist(maxima, 30, density=True)
        >>> beta = np.std(maxima) * np.sqrt(6) / np.pi
        >>> mu = np.mean(maxima) - 0.57721*beta
        >>> plt.plot(bins, (1/beta)*np.exp(-(bins - mu)/beta)
        ...          * np.exp(-np.exp(-(bins - mu)/beta)),
        ...          linewidth=2, color='r')
        >>> plt.plot(bins, 1/(beta * np.sqrt(2 * np.pi))
        ...          * np.exp(-(bins - mu)**2 / (2 * beta**2)),
        ...          linewidth=2, color='g')
        >>> plt.show()

        
        laplace(loc=0.0, scale=1.0, size=None)

        Draw samples from the Laplace or double exponential distribution with
        specified location (or mean) and scale (decay).

        The Laplace distribution is similar to the Gaussian/normal distribution,
        but is sharper at the peak and has fatter tails. It represents the
        difference between two independent, identically distributed exponential
        random variables.

        Parameters
        ----------
        loc : float or array_like of floats, optional
            The position, :math:`\mu`, of the distribution peak. Default is 0.
        scale : float or array_like of floats, optional
            :math:`\lambda`, the exponential decay. Default is 1. Must be non-
            negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Laplace distribution.

        Notes
        -----
        It has the probability density function

        .. math:: f(x; \mu, \lambda) = \frac{1}{2\lambda}
                                       \exp\left(-\frac{|x - \mu|}{\lambda}\right).

        The first law of Laplace, from 1774, states that the frequency
        of an error can be expressed as an exponential function of the
        absolute magnitude of the error, which leads to the Laplace
        distribution. For many problems in economics and health
        sciences, this distribution seems to model the data better
        than the standard Gaussian distribution.

        References
        ----------
        .. [1] Abramowitz, M. and Stegun, I. A. (Eds.). "Handbook of
               Mathematical Functions with Formulas, Graphs, and Mathematical
               Tables, 9th printing," New York: Dover, 1972.
        .. [2] Kotz, Samuel, et. al. "The Laplace Distribution and
               Generalizations, " Birkhauser, 2001.
        .. [3] Weisstein, Eric W. "Laplace Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/LaplaceDistribution.html
        .. [4] Wikipedia, "Laplace distribution",
               https://en.wikipedia.org/wiki/Laplace_distribution

        Examples
        --------
        Draw samples from the distribution

        >>> loc, scale = 0., 1.
        >>> s = np.random.laplace(loc, scale, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> x = np.arange(-8., 8., .01)
        >>> pdf = np.exp(-abs(x-loc)/scale)/(2.*scale)
        >>> plt.plot(x, pdf)

        Plot Gaussian for comparison:

        >>> g = (1/(scale * np.sqrt(2 * np.pi)) *
        ...      np.exp(-(x - loc)**2 / (2 * scale**2)))
        >>> plt.plot(x,g)

        
        power(a, size=None)

        Draws samples in [0, 1] from a power distribution with positive
        exponent a - 1.

        Also known as the power function distribution.

        Parameters
        ----------
        a : float or array_like of floats
            Parameter of the distribution. Must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized power distribution.

        Raises
        ------
        ValueError
            If a < 1.

        Notes
        -----
        The probability density function is

        .. math:: P(x; a) = ax^{a-1}, 0 \le x \le 1, a>0.

        The power function distribution is just the inverse of the Pareto
        distribution. It may also be seen as a special case of the Beta
        distribution.

        It is used, for example, in modeling the over-reporting of insurance
        claims.

        References
        ----------
        .. [1] Christian Kleiber, Samuel Kotz, "Statistical size distributions
               in economics and actuarial sciences", Wiley, 2003.
        .. [2] Heckert, N. A. and Filliben, James J. "NIST Handbook 148:
               Dataplot Reference Manual, Volume 2: Let Subcommands and Library
               Functions", National Institute of Standards and Technology
               Handbook Series, June 2003.
               https://www.itl.nist.gov/div898/software/dataplot/refman2/auxillar/powpdf.pdf

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 5. # shape
        >>> samples = 1000
        >>> s = np.random.power(a, samples)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, bins=30)
        >>> x = np.linspace(0, 1, 100)
        >>> y = a*x**(a-1.)
        >>> normed_y = samples*np.diff(bins)[0]*y
        >>> plt.plot(x, normed_y)
        >>> plt.show()

        Compare the power function distribution to the inverse of the Pareto.

        >>> from scipy import stats # doctest: +SKIP
        >>> rvs = np.random.power(5, 1000000)
        >>> rvsp = np.random.pareto(5, 1000000)
        >>> xx = np.linspace(0,1,100)
        >>> powpdf = stats.powerlaw.pdf(xx,5)  # doctest: +SKIP

        >>> plt.figure()
        >>> plt.hist(rvs, bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('np.random.power(5)')

        >>> plt.figure()
        >>> plt.hist(1./(1.+rvsp), bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('inverse of 1 + np.random.pareto(5)')

        >>> plt.figure()
        >>> plt.hist(1./(1.+rvsp), bins=50, density=True)
        >>> plt.plot(xx,powpdf,'r-')  # doctest: +SKIP
        >>> plt.title('inverse of stats.pareto(5)')

        
        weibull(a, size=None)

        Draw samples from a Weibull distribution.

        Draw samples from a 1-parameter Weibull distribution with the given
        shape parameter `a`.

        .. math:: X = (-ln(U))^{1/a}

        Here, U is drawn from the uniform distribution over (0,1].

        The more common 2-parameter Weibull, including a scale parameter
        :math:`\lambda` is just :math:`X = \lambda(-ln(U))^{1/a}`.

        Parameters
        ----------
        a : float or array_like of floats
            Shape parameter of the distribution.  Must be nonnegative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Weibull distribution.

        See Also
        --------
        scipy.stats.weibull_max
        scipy.stats.weibull_min
        scipy.stats.genextreme
        gumbel

        Notes
        -----
        The Weibull (or Type III asymptotic extreme value distribution
        for smallest values, SEV Type III, or Rosin-Rammler
        distribution) is one of a class of Generalized Extreme Value
        (GEV) distributions used in modeling extreme value problems.
        This class includes the Gumbel and Frechet distributions.

        The probability density for the Weibull distribution is

        .. math:: p(x) = \frac{a}
                         {\lambda}(\frac{x}{\lambda})^{a-1}e^{-(x/\lambda)^a},

        where :math:`a` is the shape and :math:`\lambda` the scale.

        The function has its peak (the mode) at
        :math:`\lambda(\frac{a-1}{a})^{1/a}`.

        When ``a = 1``, the Weibull distribution reduces to the exponential
        distribution.

        References
        ----------
        .. [1] Waloddi Weibull, Royal Technical University, Stockholm,
               1939 "A Statistical Theory Of The Strength Of Materials",
               Ingeniorsvetenskapsakademiens Handlingar Nr 151, 1939,
               Generalstabens Litografiska Anstalts Forlag, Stockholm.
        .. [2] Waloddi Weibull, "A Statistical Distribution Function of
               Wide Applicability", Journal Of Applied Mechanics ASME Paper
               1951.
        .. [3] Wikipedia, "Weibull distribution",
               https://en.wikipedia.org/wiki/Weibull_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a = 5. # shape
        >>> s = np.random.weibull(a, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> x = np.arange(1,100.)/50.
        >>> def weib(x,n,a):
        ...     return (a / n) * (x / n)**(a - 1) * np.exp(-(x / n)**a)

        >>> count, bins, ignored = plt.hist(np.random.weibull(5.,1000))
        >>> x = np.arange(1,100.)/50.
        >>> scale = count.max()/weib(x, 1., 5.).max()
        >>> plt.plot(x, weib(x, 1., 5.)*scale)
        >>> plt.show()

        
        pareto(a, size=None)

        Draw samples from a Pareto II or Lomax distribution with
        specified shape.

        The Lomax or Pareto II distribution is a shifted Pareto
        distribution. The classical Pareto distribution can be
        obtained from the Lomax distribution by adding 1 and
        multiplying by the scale parameter ``m`` (see Notes).  The
        smallest value of the Lomax distribution is zero while for the
        classical Pareto distribution it is ``mu``, where the standard
        Pareto distribution has location ``mu = 1``.  Lomax can also
        be considered as a simplified version of the Generalized
        Pareto distribution (available in SciPy), with the scale set
        to one and the location set to zero.

        The Pareto distribution must be greater than zero, and is
        unbounded above.  It is also known as the "80-20 rule".  In
        this distribution, 80 percent of the weights are in the lowest
        20 percent of the range, while the other 20 percent fill the
        remaining 80 percent of the range.

        Parameters
        ----------
        a : float or array_like of floats
            Shape of the distribution. Must be positive.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` is a scalar.  Otherwise,
            ``np.array(a).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Pareto distribution.

        See Also
        --------
        scipy.stats.lomax : probability density function, distribution or
            cumulative density function, etc.
        scipy.stats.genpareto : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Pareto distribution is

        .. math:: p(x) = \frac{am^a}{x^{a+1}}

        where :math:`a` is the shape and :math:`m` the scale.

        The Pareto distribution, named after the Italian economist
        Vilfredo Pareto, is a power law probability distribution
        useful in many real world problems.  Outside the field of
        economics it is generally referred to as the Bradford
        distribution. Pareto developed the distribution to describe
        the distribution of wealth in an economy.  It has also found
        use in insurance, web page access statistics, oil field sizes,
        and many other problems, including the download frequency for
        projects in Sourceforge [1]_.  It is one of the so-called
        "fat-tailed" distributions.

        References
        ----------
        .. [1] Francis Hunt and Paul Johnson, On the Pareto Distribution of
               Sourceforge projects.
        .. [2] Pareto, V. (1896). Course of Political Economy. Lausanne.
        .. [3] Reiss, R.D., Thomas, M.(2001), Statistical Analysis of Extreme
               Values, Birkhauser Verlag, Basel, pp 23-30.
        .. [4] Wikipedia, "Pareto distribution",
               https://en.wikipedia.org/wiki/Pareto_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> a, m = 3., 2.  # shape and mode
        >>> s = (np.random.pareto(a, 1000) + 1) * m

        Display the histogram of the samples, along with the probability
        density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, _ = plt.hist(s, 100, density=True)
        >>> fit = a*m**a / bins**(a+1)
        >>> plt.plot(bins, max(count)*fit/max(fit), linewidth=2, color='r')
        >>> plt.show()

        
        vonmises(mu, kappa, size=None)

        Draw samples from a von Mises distribution.

        Samples are drawn from a von Mises distribution with specified mode
        (mu) and dispersion (kappa), on the interval [-pi, pi].

        The von Mises distribution (also known as the circular normal
        distribution) is a continuous probability distribution on the unit
        circle.  It may be thought of as the circular analogue of the normal
        distribution.

        Parameters
        ----------
        mu : float or array_like of floats
            Mode ("center") of the distribution.
        kappa : float or array_like of floats
            Dispersion of the distribution, has to be >=0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``mu`` and ``kappa`` are both scalars.
            Otherwise, ``np.broadcast(mu, kappa).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized von Mises distribution.

        See Also
        --------
        scipy.stats.vonmises : probability density function, distribution, or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the von Mises distribution is

        .. math:: p(x) = \frac{e^{\kappa cos(x-\mu)}}{2\pi I_0(\kappa)},

        where :math:`\mu` is the mode and :math:`\kappa` the dispersion,
        and :math:`I_0(\kappa)` is the modified Bessel function of order 0.

        The von Mises is named for Richard Edler von Mises, who was born in
        Austria-Hungary, in what is now the Ukraine.  He fled to the United
        States in 1939 and became a professor at Harvard.  He worked in
        probability theory, aerodynamics, fluid mechanics, and philosophy of
        science.

        References
        ----------
        .. [1] Abramowitz, M. and Stegun, I. A. (Eds.). "Handbook of
               Mathematical Functions with Formulas, Graphs, and Mathematical
               Tables, 9th printing," New York: Dover, 1972.
        .. [2] von Mises, R., "Mathematical Theory of Probability
               and Statistics", New York: Academic Press, 1964.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, kappa = 0.0, 4.0 # mean and dispersion
        >>> s = np.random.vonmises(mu, kappa, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> from scipy.special import i0  # doctest: +SKIP
        >>> plt.hist(s, 50, density=True)
        >>> x = np.linspace(-np.pi, np.pi, num=51)
        >>> y = np.exp(kappa*np.cos(x-mu))/(2*np.pi*i0(kappa))  # doctest: +SKIP
        >>> plt.plot(x, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        standard_t(df, size=None)

        Draw samples from a standard Student's t distribution with `df` degrees
        of freedom.

        A special case of the hyperbolic distribution.  As `df` gets
        large, the result resembles that of the standard normal
        distribution (`standard_normal`).

        Parameters
        ----------
        df : float or array_like of floats
            Degrees of freedom, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` is a scalar.  Otherwise,
            ``np.array(df).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized standard Student's t distribution.

        Notes
        -----
        The probability density function for the t distribution is

        .. math:: P(x, df) = \frac{\Gamma(\frac{df+1}{2})}{\sqrt{\pi df}
                  \Gamma(\frac{df}{2})}\Bigl( 1+\frac{x^2}{df} \Bigr)^{-(df+1)/2}

        The t test is based on an assumption that the data come from a
        Normal distribution. The t test provides a way to test whether
        the sample mean (that is the mean calculated from the data) is
        a good estimate of the true mean.

        The derivation of the t-distribution was first published in
        1908 by William Gosset while working for the Guinness Brewery
        in Dublin. Due to proprietary issues, he had to publish under
        a pseudonym, and so he used the name Student.

        References
        ----------
        .. [1] Dalgaard, Peter, "Introductory Statistics With R",
               Springer, 2002.
        .. [2] Wikipedia, "Student's t-distribution"
               https://en.wikipedia.org/wiki/Student's_t-distribution

        Examples
        --------
        From Dalgaard page 83 [1]_, suppose the daily energy intake for 11
        women in kilojoules (kJ) is:

        >>> intake = np.array([5260., 5470, 5640, 6180, 6390, 6515, 6805, 7515, \
        ...                    7515, 8230, 8770])

        Does their energy intake deviate systematically from the recommended
        value of 7725 kJ?

        We have 10 degrees of freedom, so is the sample mean within 95% of the
        recommended value?

        >>> s = np.random.standard_t(10, size=100000)
        >>> np.mean(intake)
        6753.636363636364
        >>> intake.std(ddof=1)
        1142.1232221373727

        Calculate the t statistic, setting the ddof parameter to the unbiased
        value so the divisor in the standard deviation will be degrees of
        freedom, N-1.

        >>> t = (np.mean(intake)-7725)/(intake.std(ddof=1)/np.sqrt(len(intake)))
        >>> import matplotlib.pyplot as plt
        >>> h = plt.hist(s, bins=100, density=True)

        For a one-sided t-test, how far out in the distribution does the t
        statistic appear?

        >>> np.sum(s<t) / float(len(s))
        0.0090699999999999999  #random

        So the p-value is about 0.009, which says the null hypothesis has a
        probability of about 99% of being true.

        
        standard_cauchy(size=None)

        Draw samples from a standard Cauchy distribution with mode = 0.

        Also known as the Lorentz distribution.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        samples : ndarray or scalar
            The drawn samples.

        Notes
        -----
        The probability density function for the full Cauchy distribution is

        .. math:: P(x; x_0, \gamma) = \frac{1}{\pi \gamma \bigl[ 1+
                  (\frac{x-x_0}{\gamma})^2 \bigr] }

        and the Standard Cauchy distribution just sets :math:`x_0=0` and
        :math:`\gamma=1`

        The Cauchy distribution arises in the solution to the driven harmonic
        oscillator problem, and also describes spectral line broadening. It
        also describes the distribution of values at which a line tilted at
        a random angle will cut the x axis.

        When studying hypothesis tests that assume normality, seeing how the
        tests perform on data from a Cauchy distribution is a good indicator of
        their sensitivity to a heavy-tailed distribution, since the Cauchy looks
        very much like a Gaussian distribution, but with heavier tails.

        References
        ----------
        .. [1] NIST/SEMATECH e-Handbook of Statistical Methods, "Cauchy
              Distribution",
              https://www.itl.nist.gov/div898/handbook/eda/section3/eda3663.htm
        .. [2] Weisstein, Eric W. "Cauchy Distribution." From MathWorld--A
              Wolfram Web Resource.
              http://mathworld.wolfram.com/CauchyDistribution.html
        .. [3] Wikipedia, "Cauchy distribution"
              https://en.wikipedia.org/wiki/Cauchy_distribution

        Examples
        --------
        Draw samples and plot the distribution:

        >>> import matplotlib.pyplot as plt
        >>> s = np.random.standard_cauchy(1000000)
        >>> s = s[(s>-25) & (s<25)]  # truncate distribution so it plots well
        >>> plt.hist(s, bins=100)
        >>> plt.show()

        
        noncentral_chisquare(df, nonc, size=None)

        Draw samples from a noncentral chi-square distribution.

        The noncentral :math:`\chi^2` distribution is a generalization of
        the :math:`\chi^2` distribution.

        Parameters
        ----------
        df : float or array_like of floats
            Degrees of freedom, must be > 0.

            .. versionchanged:: 1.10.0
               Earlier NumPy versions required dfnum > 1.
        nonc : float or array_like of floats
            Non-centrality, must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` and ``nonc`` are both scalars.
            Otherwise, ``np.broadcast(df, nonc).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized noncentral chi-square distribution.

        Notes
        -----
        The probability density function for the noncentral Chi-square
        distribution is

        .. math:: P(x;df,nonc) = \sum^{\infty}_{i=0}
                               \frac{e^{-nonc/2}(nonc/2)^{i}}{i!}
                               P_{Y_{df+2i}}(x),

        where :math:`Y_{q}` is the Chi-square with q degrees of freedom.

        References
        ----------
        .. [1] Wikipedia, "Noncentral chi-squared distribution"
               https://en.wikipedia.org/wiki/Noncentral_chi-squared_distribution

        Examples
        --------
        Draw values from the distribution and plot the histogram

        >>> import matplotlib.pyplot as plt
        >>> values = plt.hist(np.random.noncentral_chisquare(3, 20, 100000),
        ...                   bins=200, density=True)
        >>> plt.show()

        Draw values from a noncentral chisquare with very small noncentrality,
        and compare to a chisquare.

        >>> plt.figure()
        >>> values = plt.hist(np.random.noncentral_chisquare(3, .0000001, 100000),
        ...                   bins=np.arange(0., 25, .1), density=True)
        >>> values2 = plt.hist(np.random.chisquare(3, 100000),
        ...                    bins=np.arange(0., 25, .1), density=True)
        >>> plt.plot(values[1][0:-1], values[0]-values2[0], 'ob')
        >>> plt.show()

        Demonstrate how large values of non-centrality lead to a more symmetric
        distribution.

        >>> plt.figure()
        >>> values = plt.hist(np.random.noncentral_chisquare(3, 20, 100000),
        ...                   bins=200, density=True)
        >>> plt.show()

        
        chisquare(df, size=None)

        Draw samples from a chi-square distribution.

        When `df` independent random variables, each with standard normal
        distributions (mean 0, variance 1), are squared and summed, the
        resulting distribution is chi-square (see Notes).  This distribution
        is often used in hypothesis testing.

        Parameters
        ----------
        df : float or array_like of floats
             Number of degrees of freedom, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``df`` is a scalar.  Otherwise,
            ``np.array(df).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized chi-square distribution.

        Raises
        ------
        ValueError
            When `df` <= 0 or when an inappropriate `size` (e.g. ``size=-1``)
            is given.

        Notes
        -----
        The variable obtained by summing the squares of `df` independent,
        standard normally distributed random variables:

        .. math:: Q = \sum_{i=0}^{\mathtt{df}} X^2_i

        is chi-square distributed, denoted

        .. math:: Q \sim \chi^2_k.

        The probability density function of the chi-squared distribution is

        .. math:: p(x) = \frac{(1/2)^{k/2}}{\Gamma(k/2)}
                         x^{k/2 - 1} e^{-x/2},

        where :math:`\Gamma` is the gamma function,

        .. math:: \Gamma(x) = \int_0^{-\infty} t^{x - 1} e^{-t} dt.

        References
        ----------
        .. [1] NIST "Engineering Statistics Handbook"
               https://www.itl.nist.gov/div898/handbook/eda/section3/eda3666.htm

        Examples
        --------
        >>> np.random.chisquare(2,4)
        array([ 1.89920014,  9.00867716,  3.13710533,  5.62318272]) # random

        
        noncentral_f(dfnum, dfden, nonc, size=None)

        Draw samples from the noncentral F distribution.

        Samples are drawn from an F distribution with specified parameters,
        `dfnum` (degrees of freedom in numerator) and `dfden` (degrees of
        freedom in denominator), where both parameters > 1.
        `nonc` is the non-centrality parameter.

        Parameters
        ----------
        dfnum : float or array_like of floats
            Numerator degrees of freedom, must be > 0.

            .. versionchanged:: 1.14.0
               Earlier NumPy versions required dfnum > 1.
        dfden : float or array_like of floats
            Denominator degrees of freedom, must be > 0.
        nonc : float or array_like of floats
            Non-centrality parameter, the sum of the squares of the numerator
            means, must be >= 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``dfnum``, ``dfden``, and ``nonc``
            are all scalars.  Otherwise, ``np.broadcast(dfnum, dfden, nonc).size``
            samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized noncentral Fisher distribution.

        Notes
        -----
        When calculating the power of an experiment (power = probability of
        rejecting the null hypothesis when a specific alternative is true) the
        non-central F statistic becomes important.  When the null hypothesis is
        true, the F statistic follows a central F distribution. When the null
        hypothesis is not true, then it follows a non-central F statistic.

        References
        ----------
        .. [1] Weisstein, Eric W. "Noncentral F-Distribution."
               From MathWorld--A Wolfram Web Resource.
               http://mathworld.wolfram.com/NoncentralF-Distribution.html
        .. [2] Wikipedia, "Noncentral F-distribution",
               https://en.wikipedia.org/wiki/Noncentral_F-distribution

        Examples
        --------
        In a study, testing for a specific alternative to the null hypothesis
        requires use of the Noncentral F distribution. We need to calculate the
        area in the tail of the distribution that exceeds the value of the F
        distribution for the null hypothesis.  We'll plot the two probability
        distributions for comparison.

        >>> dfnum = 3 # between group deg of freedom
        >>> dfden = 20 # within groups degrees of freedom
        >>> nonc = 3.0
        >>> nc_vals = np.random.noncentral_f(dfnum, dfden, nonc, 1000000)
        >>> NF = np.histogram(nc_vals, bins=50, density=True)
        >>> c_vals = np.random.f(dfnum, dfden, 1000000)
        >>> F = np.histogram(c_vals, bins=50, density=True)
        >>> import matplotlib.pyplot as plt
        >>> plt.plot(F[1][1:], F[0])
        >>> plt.plot(NF[1][1:], NF[0])
        >>> plt.show()

        
        f(dfnum, dfden, size=None)

        Draw samples from an F distribution.

        Samples are drawn from an F distribution with specified parameters,
        `dfnum` (degrees of freedom in numerator) and `dfden` (degrees of
        freedom in denominator), where both parameters must be greater than
        zero.

        The random variate of the F distribution (also known as the
        Fisher distribution) is a continuous probability distribution
        that arises in ANOVA tests, and is the ratio of two chi-square
        variates.

        Parameters
        ----------
        dfnum : float or array_like of floats
            Degrees of freedom in numerator, must be > 0.
        dfden : float or array_like of float
            Degrees of freedom in denominator, must be > 0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``dfnum`` and ``dfden`` are both scalars.
            Otherwise, ``np.broadcast(dfnum, dfden).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized Fisher distribution.

        See Also
        --------
        scipy.stats.f : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The F statistic is used to compare in-group variances to between-group
        variances. Calculating the distribution depends on the sampling, and
        so it is a function of the respective degrees of freedom in the
        problem.  The variable `dfnum` is the number of samples minus one, the
        between-groups degrees of freedom, while `dfden` is the within-groups
        degrees of freedom, the sum of the number of samples in each group
        minus the number of groups.

        References
        ----------
        .. [1] Glantz, Stanton A. "Primer of Biostatistics.", McGraw-Hill,
               Fifth Edition, 2002.
        .. [2] Wikipedia, "F-distribution",
               https://en.wikipedia.org/wiki/F-distribution

        Examples
        --------
        An example from Glantz[1], pp 47-40:

        Two groups, children of diabetics (25 people) and children from people
        without diabetes (25 controls). Fasting blood glucose was measured,
        case group had a mean value of 86.1, controls had a mean value of
        82.2. Standard deviations were 2.09 and 2.49 respectively. Are these
        data consistent with the null hypothesis that the parents diabetic
        status does not affect their children's blood glucose levels?
        Calculating the F statistic from the data gives a value of 36.01.

        Draw samples from the distribution:

        >>> dfnum = 1. # between group degrees of freedom
        >>> dfden = 48. # within groups degrees of freedom
        >>> s = np.random.f(dfnum, dfden, 1000)

        The lower bound for the top 1% of the samples is :

        >>> np.sort(s)[-10]
        7.61988120985 # random

        So there is about a 1% chance that the F statistic will exceed 7.62,
        the measured value is 36, so the null hypothesis is rejected at the 1%
        level.

        
        gamma(shape, scale=1.0, size=None)

        Draw samples from a Gamma distribution.

        Samples are drawn from a Gamma distribution with specified parameters,
        `shape` (sometimes designated "k") and `scale` (sometimes designated
        "theta"), where both parameters are > 0.

        Parameters
        ----------
        shape : float or array_like of floats
            The shape of the gamma distribution. Must be non-negative.
        scale : float or array_like of floats, optional
            The scale of the gamma distribution. Must be non-negative.
            Default is equal to 1.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``shape`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(shape, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized gamma distribution.

        See Also
        --------
        scipy.stats.gamma : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gamma distribution is

        .. math:: p(x) = x^{k-1}\frac{e^{-x/\theta}}{\theta^k\Gamma(k)},

        where :math:`k` is the shape and :math:`\theta` the scale,
        and :math:`\Gamma` is the Gamma function.

        The Gamma distribution is often used to model the times to failure of
        electronic components, and arises naturally in processes for which the
        waiting times between Poisson distributed events are relevant.

        References
        ----------
        .. [1] Weisstein, Eric W. "Gamma Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/GammaDistribution.html
        .. [2] Wikipedia, "Gamma distribution",
               https://en.wikipedia.org/wiki/Gamma_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> shape, scale = 2., 2.  # mean=4, std=2*sqrt(2)
        >>> s = np.random.gamma(shape, scale, 1000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> import scipy.special as sps  # doctest: +SKIP
        >>> count, bins, ignored = plt.hist(s, 50, density=True)
        >>> y = bins**(shape-1)*(np.exp(-bins/scale) /  # doctest: +SKIP
        ...                      (sps.gamma(shape)*scale**shape))
        >>> plt.plot(bins, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        standard_gamma(shape, size=None)

        Draw samples from a standard Gamma distribution.

        Samples are drawn from a Gamma distribution with specified parameters,
        shape (sometimes designated "k") and scale=1.

        Parameters
        ----------
        shape : float or array_like of floats
            Parameter, must be non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``shape`` is a scalar.  Otherwise,
            ``np.array(shape).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized standard gamma distribution.

        See Also
        --------
        scipy.stats.gamma : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gamma distribution is

        .. math:: p(x) = x^{k-1}\frac{e^{-x/\theta}}{\theta^k\Gamma(k)},

        where :math:`k` is the shape and :math:`\theta` the scale,
        and :math:`\Gamma` is the Gamma function.

        The Gamma distribution is often used to model the times to failure of
        electronic components, and arises naturally in processes for which the
        waiting times between Poisson distributed events are relevant.

        References
        ----------
        .. [1] Weisstein, Eric W. "Gamma Distribution." From MathWorld--A
               Wolfram Web Resource.
               http://mathworld.wolfram.com/GammaDistribution.html
        .. [2] Wikipedia, "Gamma distribution",
               https://en.wikipedia.org/wiki/Gamma_distribution

        Examples
        --------
        Draw samples from the distribution:

        >>> shape, scale = 2., 1. # mean and width
        >>> s = np.random.standard_gamma(shape, 1000000)

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> import scipy.special as sps  # doctest: +SKIP
        >>> count, bins, ignored = plt.hist(s, 50, density=True)
        >>> y = bins**(shape-1) * ((np.exp(-bins/scale))/  # doctest: +SKIP
        ...                       (sps.gamma(shape) * scale**shape))
        >>> plt.plot(bins, y, linewidth=2, color='r')  # doctest: +SKIP
        >>> plt.show()

        
        normal(loc=0.0, scale=1.0, size=None)

        Draw random samples from a normal (Gaussian) distribution.

        The probability density function of the normal distribution, first
        derived by De Moivre and 200 years later by both Gauss and Laplace
        independently [2]_, is often called the bell curve because of
        its characteristic shape (see the example below).

        The normal distributions occurs often in nature.  For example, it
        describes the commonly occurring distribution of samples influenced
        by a large number of tiny, random disturbances, each with its own
        unique distribution [2]_.

        Parameters
        ----------
        loc : float or array_like of floats
            Mean ("centre") of the distribution.
        scale : float or array_like of floats
            Standard deviation (spread or "width") of the distribution. Must be
            non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``loc`` and ``scale`` are both scalars.
            Otherwise, ``np.broadcast(loc, scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized normal distribution.

        See Also
        --------
        scipy.stats.norm : probability density function, distribution or
            cumulative density function, etc.

        Notes
        -----
        The probability density for the Gaussian distribution is

        .. math:: p(x) = \frac{1}{\sqrt{ 2 \pi \sigma^2 }}
                         e^{ - \frac{ (x - \mu)^2 } {2 \sigma^2} },

        where :math:`\mu` is the mean and :math:`\sigma` the standard
        deviation. The square of the standard deviation, :math:`\sigma^2`,
        is called the variance.

        The function has its peak at the mean, and its "spread" increases with
        the standard deviation (the function reaches 0.607 times its maximum at
        :math:`x + \sigma` and :math:`x - \sigma` [2]_).  This implies that
        `numpy.random.normal` is more likely to return samples lying close to
        the mean, rather than those far away.

        References
        ----------
        .. [1] Wikipedia, "Normal distribution",
               https://en.wikipedia.org/wiki/Normal_distribution
        .. [2] P. R. Peebles Jr., "Central Limit Theorem" in "Probability,
               Random Variables and Random Signal Principles", 4th ed., 2001,
               pp. 51, 51, 125.

        Examples
        --------
        Draw samples from the distribution:

        >>> mu, sigma = 0, 0.1 # mean and standard deviation
        >>> s = np.random.normal(mu, sigma, 1000)

        Verify the mean and the variance:

        >>> abs(mu - np.mean(s))
        0.0  # may vary

        >>> abs(sigma - np.std(s, ddof=1))
        0.1  # may vary

        Display the histogram of the samples, along with
        the probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 30, density=True)
        >>> plt.plot(bins, 1/(sigma * np.sqrt(2 * np.pi)) *
        ...                np.exp( - (bins - mu)**2 / (2 * sigma**2) ),
        ...          linewidth=2, color='r')
        >>> plt.show()

        Two-by-four array of samples from N(3, 6.25):

        >>> np.random.normal(3, 2.5, size=(2, 4))
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        standard_normal(size=None)

        Draw samples from a standard Normal distribution (mean=0, stdev=1).

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray
            A floating-point array of shape ``size`` of drawn samples, or a
            single sample if ``size`` was not specified.

        Notes
        -----
        For random samples from :math:`N(\mu, \sigma^2)`, use one of::

            mu + sigma * np.random.standard_normal(size=...)
            np.random.normal(mu, sigma, size=...)

        See Also
        --------
        normal :
            Equivalent function with additional ``loc`` and ``scale`` arguments
            for setting the mean and standard deviation.

        Examples
        --------
        >>> np.random.standard_normal()
        2.1923875335537315 #random

        >>> s = np.random.standard_normal(8000)
        >>> s
        array([ 0.6888893 ,  0.78096262, -0.89086505, ...,  0.49876311,  # random
               -0.38672696, -0.4685006 ])                                # random
        >>> s.shape
        (8000,)
        >>> s = np.random.standard_normal(size=(3, 4, 2))
        >>> s.shape
        (3, 4, 2)

        Two-by-four array of samples from :math:`N(3, 6.25)`:

        >>> 3 + 2.5 * np.random.standard_normal(size=(2, 4))
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        random_integers(low, high=None, size=None)

        Random integers of type np.int between `low` and `high`, inclusive.

        Return random integers of type np.int from the "discrete uniform"
        distribution in the closed interval [`low`, `high`].  If `high` is
        None (the default), then results are from [1, `low`]. The np.int
        type translates to the C long integer type and its precision
        is platform dependent.

        This function has been deprecated. Use randint instead.

        .. deprecated:: 1.11.0

        Parameters
        ----------
        low : int
            Lowest (signed) integer to be drawn from the distribution (unless
            ``high=None``, in which case this parameter is the *highest* such
            integer).
        high : int, optional
            If provided, the largest (signed) integer to be drawn from the
            distribution (see above for behavior if ``high=None``).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : int or ndarray of ints
            `size`-shaped array of random integers from the appropriate
            distribution, or a single such random int if `size` not provided.

        See Also
        --------
        randint : Similar to `random_integers`, only for the half-open
            interval [`low`, `high`), and 0 is the lowest value if `high` is
            omitted.

        Notes
        -----
        To sample from N evenly spaced floating-point numbers between a and b,
        use::

          a + (b - a) * (np.random.random_integers(N) - 1) / (N - 1.)

        Examples
        --------
        >>> np.random.random_integers(5)
        4 # random
        >>> type(np.random.random_integers(5))
        <class 'numpy.int64'>
        >>> np.random.random_integers(5, size=(3,2))
        array([[5, 4], # random
               [3, 3],
               [4, 5]])

        Choose five random numbers from the set of five evenly-spaced
        numbers between 0 and 2.5, inclusive (*i.e.*, from the set
        :math:`{0, 5/8, 10/8, 15/8, 20/8}`):

        >>> 2.5 * (np.random.random_integers(5, size=(5,)) - 1) / 4.
        array([ 0.625,  1.25 ,  0.625,  0.625,  2.5  ]) # random

        Roll two six sided dice 1000 times and sum the results:

        >>> d1 = np.random.random_integers(1, 6, 1000)
        >>> d2 = np.random.random_integers(1, 6, 1000)
        >>> dsums = d1 + d2

        Display results as a histogram:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(dsums, 11, density=True)
        >>> plt.show()

        
        randn(d0, d1, ..., dn)

        Return a sample (or samples) from the "standard normal" distribution.

        .. note::
            This is a convenience function for users porting code from Matlab,
            and wraps `numpy.random.standard_normal`. That function takes a
            tuple to specify the size of the output, which is consistent with
            other NumPy functions like `numpy.zeros` and `numpy.ones`.

        If positive int_like arguments are provided, `randn` generates an array
        of shape ``(d0, d1, ..., dn)``, filled
        with random floats sampled from a univariate "normal" (Gaussian)
        distribution of mean 0 and variance 1. A single float randomly sampled
        from the distribution is returned if no argument is provided.

        Parameters
        ----------
        d0, d1, ..., dn : int, optional
            The dimensions of the returned array, must be non-negative.
            If no argument is given a single Python float is returned.

        Returns
        -------
        Z : ndarray or float
            A ``(d0, d1, ..., dn)``-shaped array of floating-point samples from
            the standard normal distribution, or a single such float if
            no parameters were supplied.

        See Also
        --------
        standard_normal : Similar, but takes a tuple as its argument.
        normal : Also accepts mu and sigma arguments.

        Notes
        -----
        For random samples from :math:`N(\mu, \sigma^2)`, use:

        ``sigma * np.random.randn(...) + mu``

        Examples
        --------
        >>> np.random.randn()
        2.1923875335537315  # random

        Two-by-four array of samples from N(3, 6.25):

        >>> 3 + 2.5 * np.random.randn(2, 4)
        array([[-4.49401501,  4.00950034, -1.81814867,  7.29718677],   # random
               [ 0.39924804,  4.68456316,  4.99394529,  4.84057254]])  # random

        
        rand(d0, d1, ..., dn)

        Random values in a given shape.

        .. note::
            This is a convenience function for users porting code from Matlab,
            and wraps `numpy.random.random_sample`. That function takes a
            tuple to specify the size of the output, which is consistent with
            other NumPy functions like `numpy.zeros` and `numpy.ones`.

        Create an array of the given shape and populate it with
        random samples from a uniform distribution
        over ``[0, 1)``.

        Parameters
        ----------
        d0, d1, ..., dn : int, optional
            The dimensions of the returned array, must be non-negative.
            If no argument is given a single Python float is returned.

        Returns
        -------
        out : ndarray, shape ``(d0, d1, ..., dn)``
            Random values.

        See Also
        --------
        random

        Examples
        --------
        >>> np.random.rand(3,2)
        array([[ 0.14022471,  0.96360618],  #random
               [ 0.37601032,  0.25528411],  #random
               [ 0.49313049,  0.94909878]]) #random

        
        uniform(low=0.0, high=1.0, size=None)

        Draw samples from a uniform distribution.

        Samples are uniformly distributed over the half-open interval
        ``[low, high)`` (includes low, but excludes high).  In other words,
        any value within the given interval is equally likely to be drawn
        by `uniform`.

        Parameters
        ----------
        low : float or array_like of floats, optional
            Lower boundary of the output interval.  All values generated will be
            greater than or equal to low.  The default value is 0.
        high : float or array_like of floats
            Upper boundary of the output interval.  All values generated will be
            less than high.  The default value is 1.0.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``low`` and ``high`` are both scalars.
            Otherwise, ``np.broadcast(low, high).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized uniform distribution.

        See Also
        --------
        randint : Discrete uniform distribution, yielding integers.
        random_integers : Discrete uniform distribution over the closed
                          interval ``[low, high]``.
        random_sample : Floats uniformly distributed over ``[0, 1)``.
        random : Alias for `random_sample`.
        rand : Convenience function that accepts dimensions as input, e.g.,
               ``rand(2,2)`` would generate a 2-by-2 array of floats,
               uniformly distributed over ``[0, 1)``.

        Notes
        -----
        The probability density function of the uniform distribution is

        .. math:: p(x) = \frac{1}{b - a}

        anywhere within the interval ``[a, b)``, and zero elsewhere.

        When ``high`` == ``low``, values of ``low`` will be returned.
        If ``high`` < ``low``, the results are officially undefined
        and may eventually raise an error, i.e. do not rely on this
        function to behave when passed arguments satisfying that
        inequality condition.

        Examples
        --------
        Draw samples from the distribution:

        >>> s = np.random.uniform(-1,0,1000)

        All values are within the given interval:

        >>> np.all(s >= -1)
        True
        >>> np.all(s < 0)
        True

        Display the histogram of the samples, along with the
        probability density function:

        >>> import matplotlib.pyplot as plt
        >>> count, bins, ignored = plt.hist(s, 15, density=True)
        >>> plt.plot(bins, np.ones_like(bins), linewidth=2, color='r')
        >>> plt.show()

        
        choice(a, size=None, replace=True, p=None)

        Generates a random sample from a given 1-D array

                .. versionadded:: 1.7.0

        Parameters
        ----------
        a : 1-D array-like or int
            If an ndarray, a random sample is generated from its elements.
            If an int, the random sample is generated as if a were np.arange(a)
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.
        replace : boolean, optional
            Whether the sample is with or without replacement
        p : 1-D array-like, optional
            The probabilities associated with each entry in a.
            If not given the sample assumes a uniform distribution over all
            entries in a.

        Returns
        -------
        samples : single item or ndarray
            The generated random samples

        Raises
        ------
        ValueError
            If a is an int and less than zero, if a or p are not 1-dimensional,
            if a is an array-like of size 0, if p is not a vector of
            probabilities, if a and p have different lengths, or if
            replace=False and the sample size is greater than the population
            size

        See Also
        --------
        randint, shuffle, permutation

        Examples
        --------
        Generate a uniform random sample from np.arange(5) of size 3:

        >>> np.random.choice(5, 3)
        array([0, 3, 4]) # random
        >>> #This is equivalent to np.random.randint(0,5,3)

        Generate a non-uniform random sample from np.arange(5) of size 3:

        >>> np.random.choice(5, 3, p=[0.1, 0, 0.3, 0.6, 0])
        array([3, 3, 0]) # random

        Generate a uniform random sample from np.arange(5) of size 3 without
        replacement:

        >>> np.random.choice(5, 3, replace=False)
        array([3,1,0]) # random
        >>> #This is equivalent to np.random.permutation(np.arange(5))[:3]

        Generate a non-uniform random sample from np.arange(5) of size
        3 without replacement:

        >>> np.random.choice(5, 3, replace=False, p=[0.1, 0, 0.3, 0.6, 0])
        array([2, 3, 0]) # random

        Any of the above can be repeated with an arbitrary array-like
        instead of just integers. For instance:

        >>> aa_milne_arr = ['pooh', 'rabbit', 'piglet', 'Christopher']
        >>> np.random.choice(aa_milne_arr, 5, p=[0.5, 0.1, 0.1, 0.3])
        array(['pooh', 'pooh', 'pooh', 'Christopher', 'piglet'], # random
              dtype='<U11')

        
        bytes(length)

        Return random bytes.

        Parameters
        ----------
        length : int
            Number of random bytes.

        Returns
        -------
        out : str
            String of length `length`.

        Examples
        --------
        >>> np.random.bytes(10)
        ' eh\x85\x022SZ\xbf\xa4' #random

        
        randint(low, high=None, size=None, dtype='l')

        Return random integers from `low` (inclusive) to `high` (exclusive).

        Return random integers from the "discrete uniform" distribution of
        the specified dtype in the "half-open" interval [`low`, `high`). If
        `high` is None (the default), then results are from [0, `low`).

        Parameters
        ----------
        low : int or array-like of ints
            Lowest (signed) integers to be drawn from the distribution (unless
            ``high=None``, in which case this parameter is one above the
            *highest* such integer).
        high : int or array-like of ints, optional
            If provided, one above the largest (signed) integer to be drawn
            from the distribution (see above for behavior if ``high=None``).
            If array-like, must contain integer values
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.
        dtype : dtype, optional
            Desired dtype of the result. All dtypes are determined by their
            name, i.e., 'int64', 'int', etc, so byteorder is not available
            and a specific precision may have different C types depending
            on the platform. The default value is 'np.int'.

            .. versionadded:: 1.11.0

        Returns
        -------
        out : int or ndarray of ints
            `size`-shaped array of random integers from the appropriate
            distribution, or a single such random int if `size` not provided.

        See Also
        --------
        random.random_integers : similar to `randint`, only for the closed
            interval [`low`, `high`], and 1 is the lowest value if `high` is
            omitted.

        Examples
        --------
        >>> np.random.randint(2, size=10)
        array([1, 0, 0, 0, 1, 1, 0, 0, 1, 0]) # random
        >>> np.random.randint(1, size=10)
        array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0])

        Generate a 2 x 4 array of ints between 0 and 4, inclusive:

        >>> np.random.randint(5, size=(2, 4))
        array([[4, 0, 2, 1], # random
               [3, 2, 2, 0]])

        Generate a 1 x 3 array with 3 different upper bounds

        >>> np.random.randint(1, [3, 5, 10])
        array([2, 2, 9]) # random

        Generate a 1 by 3 array with 3 different lower bounds

        >>> np.random.randint([1, 5, 7], 10)
        array([9, 8, 7]) # random

        Generate a 2 by 4 array using broadcasting with dtype of uint8

        >>> np.random.randint([1, 3, 5, 7], [[10], [20]], dtype=np.uint8)
        array([[ 8,  6,  9,  7], # random
               [ 1, 16,  9, 12]], dtype=uint8)
        
        tomaxint(size=None)

        Return a sample of uniformly distributed random integers in the interval
        [0, ``np.iinfo(np.int).max``]. The np.int type translates to the C long
        integer type and its precision is platform dependent.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : ndarray
            Drawn samples, with shape `size`.

        See Also
        --------
        randint : Uniform sampling over a given half-open interval of integers.
        random_integers : Uniform sampling over a given closed interval of
            integers.

        Examples
        --------
        >>> rs = np.random.RandomState() # need a RandomState object
        >>> rs.tomaxint((2,2,2))
        array([[[1170048599, 1600360186], # random
                [ 739731006, 1947757578]],
               [[1871712945,  752307660],
                [1601631370, 1479324245]]])
        >>> rs.tomaxint((2,2,2)) < np.iinfo(np.int).max
        array([[[ True,  True],
                [ True,  True]],
               [[ True,  True],
                [ True,  True]]])

        
        standard_exponential(size=None)

        Draw samples from the standard exponential distribution.

        `standard_exponential` is identical to the exponential distribution
        with a scale parameter of 1.

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray
            Drawn samples.

        Examples
        --------
        Output a 3x8000 array:

        >>> n = np.random.standard_exponential((3, 8000))

        
        exponential(scale=1.0, size=None)

        Draw samples from an exponential distribution.

        Its probability density function is

        .. math:: f(x; \frac{1}{\beta}) = \frac{1}{\beta} \exp(-\frac{x}{\beta}),

        for ``x > 0`` and 0 elsewhere. :math:`\beta` is the scale parameter,
        which is the inverse of the rate parameter :math:`\lambda = 1/\beta`.
        The rate parameter is an alternative, widely used parameterization
        of the exponential distribution [3]_.

        The exponential distribution is a continuous analogue of the
        geometric distribution.  It describes many common situations, such as
        the size of raindrops measured over many rainstorms [1]_, or the time
        between page requests to Wikipedia [2]_.

        Parameters
        ----------
        scale : float or array_like of floats
            The scale parameter, :math:`\beta = 1/\lambda`. Must be
            non-negative.
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``scale`` is a scalar.  Otherwise,
            ``np.array(scale).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized exponential distribution.

        References
        ----------
        .. [1] Peyton Z. Peebles Jr., "Probability, Random Variables and
               Random Signal Principles", 4th ed, 2001, p. 57.
        .. [2] Wikipedia, "Poisson process",
               https://en.wikipedia.org/wiki/Poisson_process
        .. [3] Wikipedia, "Exponential distribution",
               https://en.wikipedia.org/wiki/Exponential_distribution

        
        beta(a, b, size=None)

        Draw samples from a Beta distribution.

        The Beta distribution is a special case of the Dirichlet distribution,
        and is related to the Gamma distribution.  It has the probability
        distribution function

        .. math:: f(x; a,b) = \frac{1}{B(\alpha, \beta)} x^{\alpha - 1}
                                                         (1 - x)^{\beta - 1},

        where the normalization, B, is the beta function,

        .. math:: B(\alpha, \beta) = \int_0^1 t^{\alpha - 1}
                                     (1 - t)^{\beta - 1} dt.

        It is often seen in Bayesian inference and order statistics.

        Parameters
        ----------
        a : float or array_like of floats
            Alpha, positive (>0).
        b : float or array_like of floats
            Beta, positive (>0).
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  If size is ``None`` (default),
            a single value is returned if ``a`` and ``b`` are both scalars.
            Otherwise, ``np.broadcast(a, b).size`` samples are drawn.

        Returns
        -------
        out : ndarray or scalar
            Drawn samples from the parameterized beta distribution.

        
        random(size=None)

        Return random floats in the half-open interval [0.0, 1.0). Alias for
        `random_sample` to ease forward-porting to the new random API.
        
        random_sample(size=None)

        Return random floats in the half-open interval [0.0, 1.0).

        Results are from the "continuous uniform" distribution over the
        stated interval.  To sample :math:`Unif[a, b), b > a` multiply
        the output of `random_sample` by `(b-a)` and add `a`::

          (b - a) * random_sample() + a

        Parameters
        ----------
        size : int or tuple of ints, optional
            Output shape.  If the given shape is, e.g., ``(m, n, k)``, then
            ``m * n * k`` samples are drawn.  Default is None, in which case a
            single value is returned.

        Returns
        -------
        out : float or ndarray of floats
            Array of random floats of shape `size` (unless ``size=None``, in which
            case a single float is returned).

        Examples
        --------
        >>> np.random.random_sample()
        0.47108547995356098 # random
        >>> type(np.random.random_sample())
        <class 'float'>
        >>> np.random.random_sample((5,))
        array([ 0.30220482,  0.86820401,  0.1654503 ,  0.11659149,  0.54323428]) # random

        Three-by-two array of random numbers from [-5, 0):

        >>> 5 * np.random.random_sample((3, 2)) - 5
        array([[-3.99149989, -0.52338984], # random
               [-2.99091858, -0.79479508],
               [-1.23204345, -1.75224494]])

        
        set_state(state)

        Set the internal state of the generator from a tuple.

        For use if one has reason to manually (re-)set the internal state of
        the bit generator used by the RandomState instance. By default,
        RandomState uses the "Mersenne Twister"[1]_ pseudo-random number
        generating algorithm.

        Parameters
        ----------
        state : {tuple(str, ndarray of 624 uints, int, int, float), dict}
            The `state` tuple has the following items:

            1. the string 'MT19937', specifying the Mersenne Twister algorithm.
            2. a 1-D array of 624 unsigned integers ``keys``.
            3. an integer ``pos``.
            4. an integer ``has_gauss``.
            5. a float ``cached_gaussian``.

            If state is a dictionary, it is directly set using the BitGenerators
            `state` property.

        Returns
        -------
        out : None
            Returns 'None' on success.

        See Also
        --------
        get_state

        Notes
        -----
        `set_state` and `get_state` are not needed to work with any of the
        random distributions in NumPy. If the internal state is manually altered,
        the user should know exactly what he/she is doing.

        For backwards compatibility, the form (str, array of 624 uints, int) is
        also accepted although it is missing some information about the cached
        Gaussian value: ``state = ('MT19937', keys, pos)``.

        References
        ----------
        .. [1] M. Matsumoto and T. Nishimura, "Mersenne Twister: A
           623-dimensionally equidistributed uniform pseudorandom number
           generator," *ACM Trans. on Modeling and Computer Simulation*,
           Vol. 8, No. 1, pp. 3-30, Jan. 1998.

        
        get_state()

        Return a tuple representing the internal state of the generator.

        For more details, see `set_state`.

        Returns
        -------
        out : {tuple(str, ndarray of 624 uints, int, int, float), dict}
            The returned tuple has the following items:

            1. the string 'MT19937'.
            2. a 1-D array of 624 unsigned integer keys.
            3. an integer ``pos``.
            4. an integer ``has_gauss``.
            5. a float ``cached_gaussian``.

            If `legacy` is False, or the BitGenerator is not NT19937, then
            state is returned as a dictionary.

        legacy : bool
            Flag indicating the return a legacy tuple state when the BitGenerator
            is MT19937.

        See Also
        --------
        set_state

        Notes
        -----
        `set_state` and `get_state` are not needed to work with any of the
        random distributions in NumPy. If the internal state is manually altered,
        the user should know exactly what he/she is doing.

        
        seed(self, seed=None)

        Reseed a legacy MT19937 BitGenerator

        Notes
        -----
        This is a convenience, legacy function.

        The best practice is to **not** reseed a BitGenerator, rather to
        recreate a new one. This method is here for legacy reasons.
        This example demonstrates best practice.

        >>> from numpy.random import MT19937
        >>> from numpy.random import RandomState, SeedSequence
        >>> rs = RandomState(MT19937(SeedSequence(123456789)))
        # Later, you want to restart the stream
        >>> rs = RandomState(MT19937(SeedSequence(987654321)))
        0Ê
€Î
ÀÉ
ÀÉ
ÐÒ
(Ò
ÀÉ
HÊ
ÀÉ
ÀÉ
ÀÉ
ðÍ
°Ï
ÀÉ
°Ð
ÐÒ
ÀÉ
Ê
8Ì
ðÍ
°Ï
ÀÉ
ðÍ
°Ï
ÀÉ
ÀÉ
`Î
HÊ
ÀÉ
Ê
ÀÉ
Ê
HÊ
ÀÉ
èÐ
øÐ
ÀÉ
èÐ
øÐ
ØÌ
ÀÉ
Ñ
ÀÉ
Ñ
ØÌ
ÀÉ
ÀÉ
Ñ
ÀÉ
˜Í
èÎ
ÀÉ
ÐÒ
ÀÉ
ÐÒ
ÀÉ
ÐÒ
ÀÉ
`Î
HÊ
ÀÉ
`Î
HÊ
ÀÉ
`Î
HÊ
ÀÉ
ØÍ
ÐÉ
ÀÉ
HÊ
ÀÉ
ØÍ
HÊ
ÀÉ
˜Î
¸Í
pÊ
ÀÉ
XÍ
8Ì
ÀÉ
XÍ
8Ì
ÀÉ
ÀÎ
ÀÉ
ÐÒ
ÀÉ
8Ì
ÀÉ
ðÌ
8Í
xÌ
ÀÉ
8Ì
ÀÉ
ØÍ
8Ñ
ÀÉ
˜Ñ
ÐÈ
XÍ
ˆË
ÀÉ
xÒ
ÀÉ
0Ê
Õ
ÀAÕ
ÀÙÕ
€&øÔ
@<ðÔ

#èÔ
ðÛàÔ
ÀÜØÔ
>ÐÔ
ß	ÈÔ
pÝÀÔ
pݸÔ
À$°Ô
PÛ¨Ô
àË Ô
àÛ˜Ô
àÛÔ
 Õ!ˆÔ
 Ø€Ô
às"xÔ
€×pÔ
 s"hÔ
àØ`Ô
`×XÔ
`s"PÔ
ÀÖHÔ
 s'@Ô
 Ö 8Ô
àÔ!0Ô
àr"(Ô
 r" Ô
 $Ô
`r,Ô
`*Ô
 -Ô
à%øÓ
 ÖðÓ
€ÖèÓ
 $àÓ
Ö ØÓ
@×ÐÓ
€ØÈÓ
`ÖÀÓ
 ׸Ó
`(°Ó
 %¨Ó
 Ô! Ó
`ؘÓ
àÕ Ó
à(ˆÓ
 ,€Ó
 r'xÓ
`(pÓ
 #hÓ
ÀÕ `Ó
à
#XÓ
@ÖPÓ
`Ô!HÓ
Ø@Ó
 Õ 8Ó
à×0Ó
À×(Ó
Û
 Ó
ÛÓ
íáÓ
€
GÓ
 	LÓ
`Ý
øÒ
àq#ðÒ
°ÜèÒ
ÌáàÒ
ßáØÒ
ÝáÐÒ
ëáÈÒ
ëáÀÒ
× ¸Ò
 q0°Ò
ÀبÒ
@
& Ò
`q5˜Ò
ÈáÒ
ÄáˆÒ
¨à€Ò
HÞ	xÒ
žàpÒ
øÞhÒ
Àá`Ò
ÃßXÒ
‚áPÒ
˜àHÒ
ðÞ@Ò
¼ß8Ò
àÞ0Ò
}á(Ò
éá Ò
éáÒ
xáÒ
xáÒ
8Þ	Ò
8Þ	øÑ
`cé
ðÑ
@ÛèÑ
sáàÑ
sáØÑ
@ÚÐÑ
’àÈÑ
Ո˄
àae¸Ñ

(°Ñ
ØÞ¨Ñ
ØÞ Ñ
ÐÞ˜Ñ
ÐÛÑ
À4ˆÑ
PÝ
ۄ
PÝ
xÑ
àYøpÑ
µßhÑ
µß`Ñ
@O›
XÑ
ˆà
PÑ
 ÙHÑ
ná@Ñ
0Û8Ñ
¼á0Ñ
€%(Ñ
@) Ñ
®ßÑ
§ßÑ
iáÑ
ÚáÑ
ÚáøÐ
|àðÐ
|àèÐ
vààÐ
vàØÐ
@Ý
ÐÐ
@Ý
ÈÐ
@ÉÀÐ
¸á¸Ð
 ß°Ð
pà¨Ð
jà Ð
 Ü˜Ð
`à
Ð
´áˆÐ
Zà€Ð
`á	xÐ
ÀÛpÐ
ÀÛhÐ
çá`Ð
çáXÐ
 B
PÐ
TàHÐ
ÈÞ@Ð
(Þ	8Ð
™ß0Ð
Nà(Ð
Nà Ð
 7û
Ð
HàÐ
0Ý
Ð
0Ý
Ð
à0<øÏ
°áðÏ
 Ý
èÏ
 Ý
àÏ
ÀuØÏ
ÀÞÐÏ
’ßÈÏ
’ßÀÏ
À¸Ï
Ý
°Ï
Tá¨Ï
Û Ï
Û˜Ï
€<Ï
×áˆÏ
‹ß€Ï
€ßxÏ
BàpÏ
¬áhÏ
<à`Ï
6àXÏ
0àPÏ
0àHÏ
Oá@Ï
Oá8Ï
¸Þ0Ï
ðÚ(Ï
Já Ï
Þ	Ï
*àÏ
Þ	Ï
øÝ	Ï
ÜøÎ
EáðÎ
èÝ	èÎ
$ààÎ
$àØÎ
¨áÐÎ
rßÈÎ
åáÀÎ
¤á¸Î
¤á°Î
°Þ¨Î
°Þ Î
 ¼—˜Î
@áÎ
ÝˆÎ
€Ü€Î
kßxÎ
àÚpÎ
;áhÎ
pÜ`Î
 áXÎ
 áPÎ
6áHÎ
`Ü@Î
ØÝ	8Î
ØÝ	0Î
 V(Î
ðÜ
 Î
ðÜ
Î
`óµÎ
àÜ
Î
àÜ
Î
€èÙ
øÍ
1áðÍ
œáèÍ
(á	àÍ
 ÚØÍ
áÐÍ
áÈÍ
€#ÀÍ
 ×¸Í
á°Í
PÜ
¨Í
¨Þ Í
@ܘÍ
ÔáÍ
ÔáˆÍ
°Û€Í
°ÛxÍ
`ÝpÍ
`ÙhÍ
`Ù`Í
àÌrXÍ
ãáPÍ
ãáHÍ
á	@Í
fß8Í
á0Í
á(Í
àÖ Í
@"Í
áÍ
àÙÍ
àÙÍ
 À)øÌ
$ðÌ
àèÌ
ààÌ
€ÙØÌ
ûàÐÌ
ûàÈÌ
 ÙÀÌ
 Ù¸Ì
¶ 
°Ì
€Û
¨Ì
€Û
 Ì
à©˜Ì
_ߐÌ
_߈Ì
@›€Ì
ÑáxÌ
 ÞpÌ
 ÞhÌ
à`Ì
›'XÌ
À
"PÌ
0ÜHÌ
@Ù@Ì
ÈÝ	8Ì
áá0Ì
áá(Ì
 Ø Ì
XßÌ
XßÌ
ŒáÌ
 ÛÌ
 ÛøË
ยðË
PßèË
˜ÞàË
˜ÞØË
 °¬ÐË
°ÚÈË
˜áÀË
à¸Ë
à°Ë
@¸¨Ë
€
# Ë
@ؘË
pՐË
öàˆË
à€Ë
àxË
 ÜpË
àhË
ñà`Ë
ñàXË
IßPË
 «~HË
Þ@Ë
Þ8Ë
 t0Ë
à(Ë
à Ë
¤‹Ë
BßË
BßË
 ÚË
 ÚøÊ
i
ðÊ
 ÛèÊ
 ÛàÊ
€ž{ØÊ
ÚÐÊ
ìàÈÊ
ìàÀÊ
ú߸Ê
ôß°Ê
¸Ý	¨Ê
¸Ý	 Ê
`ã˜Ê
;ߐÊ
ˆÞˆÊ
€Þ€Ê
pÛ
xÊ
¨Ý	pÊ
îßhÊ
îß`Ê
çàXÊ
4ßPÊ
4ßHÊ
èß@Ê
èß8Ê
`Û
0Ê
âà(Ê
âà Ê
€]}Ê
ÐÜ
Ê
ÐÜ
Ê
@]?Ê
âßøÉ
âßðÉ
xÞèÉ
xÞàÉ
 ›SØÉ
ÝàÐÉ
ÜßÈÉ
ÜßÀÉ
Øà¸É
Óà°É
Îà¨É
Ú É
Ú˜É
 ’êÉ
ÙˆÉ
Ù€É
@ÕxÉ
ÈÚpÉ
ÈÚhÉ
@…í	`É
€ÚXÉ
€ÚPÉ
`~ÙHÉ
Ü@É
Ü8É
`PÈ0É
Öß(É
Öß É
PÕÉ
 P!É
áÉ
pÞÉ
˜Ý	øÈ
`ÚðÈ
‹áèÈ
ÉààÈ
Àà	ØÈ
hÞÐÈ
‡áÈÈ
ÀJNÀÈ
ܸÈ
ܰÈ
`AK	¨È
Íá È
-ߘÈ
&ߐÈ
&߈È
߀È
ÐßxÈ
`ÞpÈ
`ÞhÈ
6A`È
ßXÈ
À5%PÈ
ßHÈ
ˆÝ	@È
ˆÝ	8È
À)é0È
ºà(È
ºà È
 t6
È
µàÈ
µàÈ
xÝ	È
XÞøÇ
XÞðÇ
àÖèÇ
@
/àÇ
ÊߨÇ
°àÐÇ
°àÈÇ
 ®	ÒÆ
`´
ðÂTÄP÷ð ? = ÓDp÷9 B ¶
@¶
ð~p:à90E Ð!PÞ.@Ê 5Àh
Ù€ã€d
9 b`]
T°ÇàW
Mà W
H ¾àQ
<P» J
3€¸ÀG
U°â`B
=°‘@7
C#À5
þª +
ÃÀ
Ôpü@
ã0ô 
°H€
#°µ 
, ±ó	@®é	PªÞ	¦àÐ	P¡ÀÄ	ýð<	ò°™ ²	âð– ©	א“@œ	ÎP@	Çð‹@	¿ˆ`t	¹0… g	± [	ª}àH	¡y€=	—ðtÀ,	Ž qÀ#	‰`m€	˰/ 		  	Ðàõø íó@`ã¹€ Ý´PØàÍéÀÃÖÐ]€²Ià½`§ªpª@œIp8à˜Q€„ •X`f ”qài ”ee5c3496d5364861015560eed44d0cda3eccb6.debug°<).shstrtab.note.gnu.property.note.gnu.build-id.gnu.hash.dynsym.dynstr.gnu.version.gnu.version_r.rela.dyn.rela.plt.init.plt.got.plt.sec.text.fini.rodata.eh_frame_hdr.eh_frame.init_array.fini_array.dynamic.got.plt.data.bss.gnu_debuglink¨¨ ÈÈ$1öÿÿoðð<;00pC  rKÿÿÿo00ôXþÿÿo22€gˆ2ˆ2XnqBà à X{°°v ° ° 77Šзз“`¿`¿Ÿ™ÒÒ
Ÿàà”P §”0”0lµ77l7¿}ˍ}׍}Ð…àŽà~ à€àéà“àƒ ) 
€­
 ô€­
4´­