I used to create the RNN network, in version 0.8 of TensorFlow, using:

from tensorflow.python.ops import rnn

# Define a lstm cell with tensorflow
lstm_cell = rnn_cell.BasicLSTMCell(n_hidden, forget_bias=1.0)

# Get lstm cell output
outputs, states = rnn.rnn(cell=lstm_cell, inputs=x, dtype=tf.float32)

rnn.rnn() is not available anymore, and it sounds it has been moved to tf.contrib. What is the exact code to create RNN network out of a BasicLSTMCell?

Or, in the case that I have an stacked LSTM,

lstm_cell = tf.contrib.rnn.BasicLSTMCell(hidden_size, forget_bias=0.0)
stacked_lstm = tf.contrib.rnn.MultiRNNCell([lstm_cell] * num_layers)
outputs, new_state =  tf.nn.rnn(stacked_lstm, inputs, initial_state=_initial_state)

What is the replacement for tf.nn.rnn in new versions of TensorFlow?


tf.nn.rnn is equivalent to tf.nn.static_rnn.

Note: before version 1.2 of TensorFlow, the namespace tf.nn.static_rnn did not exist, but only tf.contrib.rnn.static_rnn (which is now an alias for tf.nn.static_rnn).


You should use tf.nn.dynamic_rnn.

FYI: What is the upside of using tf.nn.rnn instead of tf.nn.dynamic_rnn in TensorFlow?

  • This does not answer the question. You should remove this answer or make it just a comment under the original question.
    – nbro
    Jul 8 '18 at 23:40
  • @nbro why doesn't it answer the question? Jul 8 '18 at 23:43
  • The question is: What is the replacement for tf.nn.rnn in new versions of TensorFlow?.
    – nbro
    Jul 8 '18 at 23:44
  • @nbro and my answer is "You should use tf.nn.dynamic_rnn.". Jul 8 '18 at 23:45
  • But your answer is to a question like "Should I use dynamic or static RNNs in TF?" or "Should I use dynamic RNNs?".
    – nbro
    Jul 8 '18 at 23:46

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