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tf.compat.v1.nn.static_bidirectional_rnn
Creates a bidirectional recurrent neural network. (deprecated)
tf.compat.v1.nn.static_bidirectional_rnn(
    cell_fw, cell_bw, inputs, initial_state_fw=None, initial_state_bw=None,
    dtype=None, sequence_length=None, scope=None
)
  
  Similar to the unidirectional case above (rnn) but takes input and builds independent forward and backward RNNs with the final forward and backward outputs depth-concatenated, such that the output will have the format [time][batch][cell_fw.output_size + cell_bw.output_size]. The input_size of forward and backward cell must match. The initial state for both directions is zero by default (but can be set optionally) and no intermediate states are ever returned -- the network is fully unrolled for the given (passed in) length(s) of the sequence(s) or completely unrolled if length(s) is not given.
| Args | |
|---|---|
cell_fw | 
      An instance of RNNCell, to be used for forward direction. | 
cell_bw | 
      An instance of RNNCell, to be used for backward direction. | 
inputs | 
      A length T list of inputs, each a tensor of shape [batch_size, input_size], or a nested tuple of such elements. | 
initial_state_fw | 
      (optional) An initial state for the forward RNN. This must be a tensor of appropriate type and shape [batch_size, cell_fw.state_size]. If cell_fw.state_size is a tuple, this should be a tuple of tensors having shapes [batch_size, s] for s in cell_fw.state_size. | 
     
initial_state_bw | 
      (optional) Same as for initial_state_fw, but using the corresponding properties of cell_bw. | 
     
dtype | 
      (optional) The data type for the initial state. Required if either of the initial states are not provided. | 
sequence_length | 
      (optional) An int32/int64 vector, size [batch_size], containing the actual lengths for each of the sequences. | 
     
scope | 
      VariableScope for the created subgraph; defaults to "bidirectional_rnn" | 
| Returns | |
|---|---|
A tuple (outputs, output_state_fw, output_state_bw) where: outputs is a length T list of outputs (one for each input), which are depth-concatenated forward and backward outputs. output_state_fw is the final state of the forward rnn. output_state_bw is the final state of the backward rnn. | 
     
| Raises | |
|---|---|
TypeError | 
      If cell_fw or cell_bw is not an instance of RNNCell. | 
     
ValueError | 
      If inputs is None or an empty list. | 
© 2020 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/versions/r2.3/api_docs/python/tf/compat/v1/nn/static_bidirectional_rnn