IPython notebook for training multilayer LSTM and RNN networks with pycaffe

pycaffe-recurrent IPython notebook for training multilayer LSTM and RNN networks with pycaffe Example of generated code after training on the Linux kernel for a few hours (average test loss ~1): static int __init bit_next_wor

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