15

I have written a custom keras layer for an AttentiveLSTMCell and AttentiveLSTM(RNN) in line with keras' new approach to RNNs. This attention mechanism is described by Bahdanau where, in an encoder/decoder model a "context" vector is created from all the ouputs of the encoder and the decoder's current hidden state. I then append the context vector, at every timestep, to the input.

The model is being used in to make a Dialog Agent, but is very similar to NMT models in architecture (similar tasks).

However, in adding this attention mechanism, I have slowed down the training of my network 5 fold, and I would really like to know how I could write the part of the code that is slowing it down so much in a more efficient way.

The brunt of the computation is done here:

h_tm1 = states[0]  # previous memory state
c_tm1 = states[1]  # previous carry state

# attention mechanism

# repeat the hidden state to the length of the sequence
_stm = K.repeat(h_tm1, self.annotation_timesteps)

# multiplty the weight matrix with the repeated (current) hidden state
_Wxstm = K.dot(_stm, self.kernel_w)

# calculate the attention probabilities
# self._uh is of shape (batch, timestep, self.units)
et = K.dot(activations.tanh(_Wxstm + self._uh), K.expand_dims(self.kernel_v))

at = K.exp(et)
at_sum = K.sum(at, axis=1)
at_sum_repeated = K.repeat(at_sum, self.annotation_timesteps)
at /= at_sum_repeated  # vector of size (batchsize, timesteps, 1)

# calculate the context vector
context = K.squeeze(K.batch_dot(at, self.annotations, axes=1), axis=1)

# append the context vector to the inputs
inputs = K.concatenate([inputs, context])

in the call method of the AttentiveLSTMCell (one timestep).

The full code can be found here. If it is necessary that I provide some data and ways to interact with the model, then I can do that.

Any ideas? I am, of course, training on a GPU if there is something clever here.

3
  • 2
    Can you post the output of using tensorflow.python.client.timeline.Timeline on some sample training epochs? Without good profiler data, it's essentially just shots in the dark to guess why. Better to gather direct evidence.
    – ely
    Mar 10, 2018 at 20:01
  • yeah, I can get on that in a little @ely.
    – modesitt
    Mar 11, 2018 at 5:13
  • Have you profiled your code? Guessing at where to optimize can be a fools errand. I like the Python line-profiler kernprof, and w/ Keras you could make use of the TF tools like TensorBoard. Jun 24, 2018 at 1:36

2 Answers 2

1

I would recommend training your model using relu rather than tanh, as this operation is significantly faster to compute. This will save you computation time on the order of your training examples * average sequence length per example * number of epochs.

Also, I would evaluate the performance improvement of appending the context vector, keeping in mind that this will slow your iteration cycle on other parameters. If it's not giving you much improvement, it might be worth trying other approaches.

1

You modified the LSTM class which is good for CPU computation, but you mentioned that you're training on GPU.

I recommend looking into the cudnn-recurrent implementation or further into the tf part that is used. Maybe you can extend the code there.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.