11

I was trying to port an existing trained PyTorch model into Keras.

During the porting, I got stuck at LSTM layer.

Keras implementation of LSTM network seems to have three state kind of state matrices while Pytorch implementation have four.

For eg, for an Bidirectional LSTM with hidden_layers=64, input_size=512 & output size=128 state parameters where as follows

State params of Keras LSTM

[<tf.Variable 'bidirectional_1/forward_lstm_1/kernel:0' shape=(512, 256) dtype=float32_ref>,
 <tf.Variable 'bidirectional_1/forward_lstm_1/recurrent_kernel:0' shape=(64, 256) dtype=float32_ref>,
 <tf.Variable 'bidirectional_1/forward_lstm_1/bias:0' shape=(256,) dtype=float32_ref>,
 <tf.Variable 'bidirectional_1/backward_lstm_1/kernel:0' shape=(512, 256) dtype=float32_ref>,
 <tf.Variable 'bidirectional_1/backward_lstm_1/recurrent_kernel:0' shape=(64, 256) dtype=float32_ref>,
 <tf.Variable 'bidirectional_1/backward_lstm_1/bias:0' shape=(256,) dtype=float32_ref>]

State params of PyTorch LSTM

 ['rnn.0.rnn.weight_ih_l0', torch.Size([256, 512])],
 ['rnn.0.rnn.weight_hh_l0', torch.Size([256, 64])],
 ['rnn.0.rnn.bias_ih_l0', torch.Size([256])],
 ['rnn.0.rnn.bias_hh_l0', torch.Size([256])],
 ['rnn.0.rnn.weight_ih_l0_reverse', torch.Size([256, 512])],
 ['rnn.0.rnn.weight_hh_l0_reverse', torch.Size([256, 64])],
 ['rnn.0.rnn.bias_ih_l0_reverse', torch.Size([256])],
 ['rnn.0.rnn.bias_hh_l0_reverse', torch.Size([256])],

I tried to look in to the code of both implementation but not able to understand much.

Can someone please help me to transform 4-set of state params from PyTorch into 3-set of state params in Keras

2
  • It's strange Torch has 4 state matrices in LSTM, considering that the model is supposed to have 3 by design. Commented Jan 20, 2018 at 21:42
  • yes, PyTorch implementation of LSTM is little different: pytorch.org/docs/0.3.0/nn.html?highlight=lstm#torch.nn.LSTM. There are two sets of bias params. If you want to transform PyTorch params to Keras, my suggestion would be turning off the bias parameters.
    – Wasi Ahmad
    Commented Jan 20, 2018 at 22:56

1 Answer 1

12

They are really not that different. If you sum up the two bias vectors in PyTorch, the equations will be the same as what's implemented in Keras.

This is the LSTM formula on PyTorch documentation:

enter image description here

PyTorch uses two separate bias vectors for the input transformation (with a subscript starts with i) and recurrent transformation (with a subscript starts with h).

In Keras LSTMCell:

        x_i = K.dot(inputs_i, self.kernel_i)
        x_f = K.dot(inputs_f, self.kernel_f)
        x_c = K.dot(inputs_c, self.kernel_c)
        x_o = K.dot(inputs_o, self.kernel_o)
        if self.use_bias:
            x_i = K.bias_add(x_i, self.bias_i)
            x_f = K.bias_add(x_f, self.bias_f)
            x_c = K.bias_add(x_c, self.bias_c)
            x_o = K.bias_add(x_o, self.bias_o)

        if 0 < self.recurrent_dropout < 1.:
            h_tm1_i = h_tm1 * rec_dp_mask[0]
            h_tm1_f = h_tm1 * rec_dp_mask[1]
            h_tm1_c = h_tm1 * rec_dp_mask[2]
            h_tm1_o = h_tm1 * rec_dp_mask[3]
        else:
            h_tm1_i = h_tm1
            h_tm1_f = h_tm1
            h_tm1_c = h_tm1
            h_tm1_o = h_tm1
        i = self.recurrent_activation(x_i + K.dot(h_tm1_i,
                                                  self.recurrent_kernel_i))
        f = self.recurrent_activation(x_f + K.dot(h_tm1_f,
                                                  self.recurrent_kernel_f))
        c = f * c_tm1 + i * self.activation(x_c + K.dot(h_tm1_c,
                                                        self.recurrent_kernel_c))
        o = self.recurrent_activation(x_o + K.dot(h_tm1_o,
                                                  self.recurrent_kernel_o))

There's only one bias added in the input transformation. However, the equations would be equivalent if we sum up the two biases in PyTorch.

The two-bias LSTM is what's implemented in cuDNN (see the developer guide). I'm really not that familiar with PyTorch, but I guess that's why they use two bias parameters. In Keras, the CuDNNLSTM layer also has two bias weight vectors.

3
  • 2
    Thanks. I verified it and you are correct. There was only a small difference between two outputs ( in the order of 1E-7 ). Also while checking I found that, Pytorch uses sigmoid as activation function while Keras uses hard_sigmoid by default
    – harish2704
    Commented Jan 21, 2018 at 18:11
  • 1
    @harish2704 if this answer has helped you (which seems to be the case), you should consider accepting it. Commented Jan 21, 2018 at 19:08
  • 2
    Update: I ported my Pytorch Model of my OCR-engine to Keras and successfully run the trained model inside web-browser using Keras-js
    – harish2704
    Commented Jan 25, 2018 at 18:53

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.