CudnnRNNTanhSaveable
Defined in tensorflow/contrib/cudnn_rnn/python/ops/cudnn_rnn_ops.py
.
SaveableObject implementation handling Cudnn RNN Tanh opaque params.
device
The device for SaveSpec Tensors.
__init__
__init__( opaque_params, num_layers, num_units, input_size, input_mode=CUDNN_INPUT_LINEAR_MODE, direction=CUDNN_RNN_UNIDIRECTION, scope=None, name='cudnn_rnn_saveable' )
Creates a CudnnOpaqueParamsSaveable object.
CudnnOpaqueParamsSaveable is saveable/restorable in a checkpoint file and is used to save/restore the weights and biases parameters in a canonical format which is directly consumable by platform-independent tf RNN cells. Parameters are saved as tensors layer by layer with weight tensors followed by bias tensors, and forward direction followed by backward direction (if applicable). When restoring, a user could name param_variables as desired, and restore weight and bias tensors to these variables.
For CudnnRNNRelu or CudnnRNNTanh, there are 2 tensors per weight and per bias for each layer: tensor 0 is applied to the input from the previous layer and tensor 1 to the recurrent input.
For CudnnLSTM, there are 8 tensors per weight and per bias for each layer: tensor 0-3 are applied to the input from the previous layer and tensor 4-7 to the recurrent input. Tensor 0 and 4 are for the input gate; tensor 1 and 5 the forget gate; tensor 2 and 6 the new memory gate; tensor 3 and 7 the output gate.
For CudnnGRU, there are 6 tensors per weight and per bias for each layer: tensor 0-2 are applied to the input from the previous layer and tensor 3-5 to the recurrent input. Tensor 0 and 3 are for the reset gate; tensor 1 and 4 the update gate; tensor 2 and 5 the new memory gate.
opaque_params
: a variable, Cudnn RNN opaque params.num_layers
: the number of layers for the RNN model.num_units
: the number of units within the RNN model.input_size
: the size of the input, it could be different from the num_units.input_mode
: indicate whether there is a linear projection between the input and the actual computation before the first layer. It could be 'linear_input', 'skip_input' or 'auto_select'. 'linear_input' (default) always applies a linear projection of input onto RNN hidden state. (standard RNN behavior). 'skip_input' is only allowed when input_size == num_units; 'auto_select' implies 'skip_input' when input_size == num_units; otherwise, it implies 'linear_input'.direction
: the direction model that the model operates. Could be either 'unidirectional' or 'bidirectional'scope
: string of VariableScope, the scope of equivalent subgraph consisting only platform-independent tf RNN cells.name
: the name of the CudnnOpaqueParamsSaveable object.restore
restore( restored_tensors, restored_shapes )
Restores this object from 'restored_tensors'.
restored_tensors
: the tensors that were loaded from a checkpointrestored_shapes
: the shapes this object should conform to after restore, or None.An operation that restores the state of the object.
ValueError
: If the object cannot be restored using the provided parameters.
© 2018 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/cudnn_rnn/CudnnRNNTanhSaveable