I have a pytorch model and a tensorflow model, I want to train them together on one GPU, following the process bellow: input --> pytorch model--> output_pytorch --> tensorflow model --> output_tensorflow --> pytorch model.

Is is possible to do this? If answer is yes, is there any problem which I will encounter?

Thanks in advance.

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  • I would use per_process_gpu_memory_fraction in TF to limit memory usage by a single session and use FIFO queues to connect both models – y.selivonchyk Oct 17 '17 at 17:00
  • Yes. But I would not recommend it. TF prefers to use the GPU alone. – Mo Hossny Oct 21 '17 at 16:16

I haven't done this but it is possible but implementing is can be a little bit. You can consider each network as a function, you want to - in some sense - compose these function to form your network, to do this you can compute the final function by just giving result of one network to the other and then use chain-rule to compute the derivatives(using symbolic differentiation from both packages).

I think a good way for implementing this you might be to wrap TF models as a PyTorch Function and use tf.gradients for computing the backward pass. Doing gradient updates can really get hard (because some variables exist in TF's computation graph) you can turn TF variables to PyTorch Variable turn them into placeholdes in TF computation graph, feed them in feed_dict and update them using PyTorch mechanisms, but I think it would be really hard to do, instead if you do your updates inside backward method of the function you might be able to do the job(it is really ugly but might do the job).

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