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I am trying RNN on a variable length multivariate sequence classification problem.

I have defined following function to get the output of the sequence (i.e. the output of RNN cell after the final input from sequence is fed)

def get_sequence_output(x_sequence, initial_hidden_state):
    previous_hidden_state = initial_hidden_state
    for x_single in x_sequence:
        hidden_state = gru_unit(previous_hidden_state, x_single)
        previous_hidden_state = hidden_state
    final_hidden_state = hidden_state
    return final_hidden_state

Here x_sequence is tensor of shape (?, ?, 10) where first ? is for batch size and second ? is for sequence length and each input element is of length 10. gru function takes a previous hidden state and current input and spits out next hidden state (a standard gated recurrent unit).

I am getting an error: 'Tensor' object is not iterable. How do I iterate over a Tensor in sequence manner (reading single element at a time)?

My objective is to apply gru function for every input from the sequence and get the final hidden state.

exAres
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2 Answers2

10

In TF>=1.0, tf.pack and tf.unpack are renamed to tf.stack and tf.unstack respectively

wuhy08
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8

You can convert a tensor into a list using the unpack function which converts the first dimension into a list. There is also a split function which does something similar. I use unstack in an RNN model I am working on.

y = tf.unstack(tf.transpose(y, (1, 0, 2)))

In this case y starts out with shape (BATCH_SIZE, TIME_STEPS, 128) I transpose it to make the time steps the outer dimension and then unpack it into a list of tensors, one per time step. Now every element in the y list if of shape (BATCH_SIZE, 128) and I can feed it into my RNN.

Sridhar Thiagarajan
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chasep255
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