I just read through and ran the code here: https://tomaxent.com/2017/04/26/LSTM-by-Example-using-Tensorflow-Text-Generate/

(this guy rips off the following medium.com article, but I can't access medium.com from my work computer); https://medium.com/towards-data-science/lstm-by-example-using-tensorflow-feb0c1968537

From my previous reading, it is my understanding that to train RNNs, we have to 'unwrap' them into feed forward networks (FFN) for a certain number of steps (along with an extra input for the "x at time t"), and set it so that all the weights in the FFN that correspond to a single weight in the RNN are equal.

I'm looking at the code and I don't see any 'unwrapping' step, or even a variable indicating the number of steps for which we want to unwrap.

Is there another way to train an RNN? Am I just missing the line in the code where that variable is defined?

  • RNNs are trained using backprop through time. It is true that at each timestep the weights are the same (until they are update after a batch). – Alex Nov 8 '18 at 15:11

If i am not mistaken there is no such 'unwrapping step'.We generally "unroll" a RNN in-order to understand its working properly (through each time step). Now,coming to Tensorflow Implementation I found this repo:MuhammedBuyukkinaci/TensorFlow-Text-Generator to be very useful and this might clear up your most of the doubts.

Other Useful Links:



Static_RNN Cell

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