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I am trying to run the encoder-decoder model on the dataset. Below is the sample code:

self._input_data = tf.placeholder(tf.int32, [batch_size, num_steps])
self._targets = tf.placeholder(tf.int32, [batch_size, num_steps])
enc_inputs.append(self._input_data) #one batch at once
dec_inputs.append(self._targets)
model = seq2seq.basic_rnn_seq2seq(enc_inputs, dec_inputs, tf.nn.rnn_cell.BasicLSTMCell(size, state_is_tuple=True))

I get an error of type mismatch (mentioned below). Does anyone know to solve the issue?

tensor_util.py, line 290, in _AssertCompatible
    (dtype.name, repr(mismatch), type(mismatch).__name__))
    TypeError: Expected int32, got -0.1 of type 'float' instead.
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  • Seems, changing tf.int32 to tf.float32 solves the issue. I don't know why but the program runs error-free now. Aug 1, 2016 at 14:22
  • The type error arises when you try to insert a float value into a tensor that has been typed as int32. tensor_util.py is used to construct tensors within python, prior to sending data or graph to the backend client for execution. It's not clear from your question exactly how to reproduce your error. How is _input_data being initialized? With values that include a float? Aug 2, 2016 at 0:06
  • encode_input and decode_input are simple the word ids (integers). Next all processes are handled inside the basic_rnn_seq2seq API. Aug 2, 2016 at 6:22

2 Answers 2

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This is an issue of confusing error message. The actual cause is, when you call tf.get_variable() but do not set the default initializer, the error message will be confusing. You can use a tf.zero_initializer() or something like that to suppress this error.

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The root case of the issue is in Tensorflow rnn_cell.py class:

with vs.variable_scope(scope or "Linear"):
    matrix = vs.get_variable("Matrix", [total_arg_size, output_size], dtype=dtype)

where you have two variable with different types (tf.int32 and tf.float32)

To solve the problem, I used tf.float32 for encoder and decoder inputs, while keeping targets as tf.int32 (required by Seq2Seq model).

Something like this may work:

self._input_data = tf.placeholder(tf.float32, [batch_size, num_steps])
self._targets = tf.placeholder(tf.int32, [batch_size, num_steps])
enc_inputs.append(self._input_data) #one batch at once
dec_inputs.append(self._targets)

Note that the issue was reproduced on TF v0.12.1. I checked the current master for rnn_cell.py and it's quite different. So I assume that issue may go away in later releases.

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