Repository URL to install this package:
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Version:
5.0.6-1+cuda10.0 ▾
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#!/usr/bin/python
# Script to dump TensorFlow weights in TRT v1 and v2 dump format.
# The V1 format is for TensorRT 4.0. The V2 format is for TensorRT 4.0 and later.
import sys
import struct
import argparse
try:
import tensorflow as tf
from tensorflow.python import pywrap_tensorflow
except ImportError as err:
sys.stderr.write("""Error: Failed to import module ({})""".format(err))
sys.exit()
parser = argparse.ArgumentParser(description='TensorFlow Weight Dumper')
parser.add_argument('-m', '--model', required=True, help='The checkpoint file basename, example basename(model.ckpt-766908.data-00000-of-00001) -> model.ckpt-766908')
parser.add_argument('-o', '--output', required=True, help='The weight file to dump all the weights to.')
parser.add_argument('-1', '--wtsv1', required=False, default=False, type=bool, help='Dump the weights in the wts v1.')
opt = parser.parse_args()
if opt.wtsv1:
print "Outputting the trained weights in TensorRT's wts v1 format. This format is documented as:"
print "Line 0: <number of buffers in the file>"
print "Line 1-Num: [buffer name] [buffer type] [buffer size] <hex values>"
else:
print "Outputting the trained weights in TensorRT's wts v2 format. This format is documented as:"
print "Line 0: <number of buffers in the file>"
print "Line 1-Num: [buffer name] [buffer type] [(buffer shape{e.g. (1, 2, 3)}] <buffer shaped size bytes of data>"
inputbase = opt.model
outputbase = opt.output
def float_to_hex(f):
return hex(struct.unpack('<I', struct.pack('<f', f))[0])
def getTRTType(tensor):
if tf.as_dtype(tensor.dtype) == tf.float32:
return 0
if tf.as_dtype(tensor.dtype) == tf.float16:
return 1
if tf.as_dtype(tensor.dtype) == tf.int8:
return 2
if tf.as_dtype(tensor.dtype) == tf.int32:
return 3
print("Tensor data type of %s is not supported in TensorRT"%(tensor.dtype))
sys.exit();
try:
# Open output file
if opt.wtsv1:
outputFileName = outputbase + ".wts"
else:
outputFileName = outputbase + ".wts2"
outputFile = open(outputFileName, 'w')
# read vars from checkpoint
reader = pywrap_tensorflow.NewCheckpointReader(inputbase)
var_to_shape_map = reader.get_variable_to_shape_map()
# Record count of weights
count = 0
for key in sorted(var_to_shape_map):
count += 1
outputFile.write("%s\n"%(count))
# Dump the weights in either v1 or v2 format
for key in sorted(var_to_shape_map):
tensor = reader.get_tensor(key)
file_key = key.replace('/','_')
typeOfElem = getTRTType(tensor)
val = tensor.shape
if opt.wtsv1:
val = tensor.size
print("%s %s %s "%(file_key, typeOfElem, val))
flat_tensor = tensor.flatten()
outputFile.write("%s 0 %s "%(file_key, val))
if opt.wtsv1:
for weight in flat_tensor:
hexval = float_to_hex(float(weight))
outputFile.write("%s "%(hexval[2:]))
else:
outputFile.write(flat_tensor.tobytes())
outputFile.write("\n");
outputFile.close()
except Exception as e: # pylint: disable=broad-except
print(str(e))
if "corrupted compressed block contents" in str(e):
print("It's likely that your checkpoint file has been compressed "
"with SNAPPY.")
if ("Data loss" in str(e) and
(any([e in inputbase for e in [".index", ".meta", ".data"]]))):
proposed_file = ".".join(inputbase.split(".")[0:-1])
v2_file_error_template = """
It's likely that this is a V2 checkpoint and you need to provide the filename
*prefix*. Try removing the '.' and extension. Try:
inspect checkpoint --file_name = {}"""
print(v2_file_error_template.format(proposed_file))