## @package sampling_trainable_mixin
# Module caffe2.python.layers.sampling_trainable_mixin
import abc
class SamplingTrainableMixin(metaclass=abc.ABCMeta):
def __init__(self, *args, **kwargs):
super(SamplingTrainableMixin, self).__init__(*args, **kwargs)
self._train_param_blobs = None
self._train_param_blobs_frozen = False
@property
@abc.abstractmethod
def param_blobs(self):
"""
List of parameter blobs for prediction net
"""
pass
@property
def train_param_blobs(self):
"""
If train_param_blobs is not set before used, default to param_blobs
"""
if self._train_param_blobs is None:
self.train_param_blobs = self.param_blobs
return self._train_param_blobs
@train_param_blobs.setter
def train_param_blobs(self, blobs):
assert not self._train_param_blobs_frozen
assert blobs is not None
self._train_param_blobs_frozen = True
self._train_param_blobs = blobs
@abc.abstractmethod
def _add_ops(self, net, param_blobs):
"""
Add ops to the given net, using the given param_blobs
"""
pass
def add_ops(self, net):
self._add_ops(net, self.param_blobs)
def add_train_ops(self, net):
self._add_ops(net, self.train_param_blobs)