I have a next step prediction model on times series which is simply a GRU with a fully-connected layer on top of it. When I train it using CPU after 50 epochs I get a loss of 0.10 but when I train it with GPU the loss is 0.15 after 50 epochs. Doing more epochs doesnt really lower the losses in either cases.

Why is performance after training on CPU better than GPU?

I have tried changing the random seeds for both data and model, and these results are independent of the random seeds.

I have:

Python 3.6.2

PyTorch 0.3.0





I also use PyTorch's weight normalizaton torch.nn.utils.weight_norm on the GRU and on the fully-connected layer.

  • Are you doing a mini-batch based training? Then there will of course be a change in loss between subsequent runs since mini-batch, weight initialization etc changes... please elaborate
    – kmario23
    Jan 26, 2018 at 20:43
  • @kmario As mentioned in the question, multiple runs with different seeds all give the same results with CPU, and they all give the same results with GPU (which is different than CPU). And if you look at my answer below, you will see that if I turn CUDNN off, GPU now gives the same result as CPU. Jan 29, 2018 at 8:26

1 Answer 1


After trying many things I think I found the problem. Apparently the CUDNN libraries are sub-optimal in PyTorch. I don't know if it is a bug in PyTorch or a bug in CUDNN but doing

torch.backends.cudnn.enabled = False

solves the problem. With the above line, training with GPU or CPU gives the same loss at the same epoch.


It seems that it is the interaction of weight normalization and CUDNN which results in things going wrong. If I remove weight normalization it works. If I remove CUDNN it works. It seems that only in combination they do not work in PyTorch.

  • 2
    Sounds like a serious finding. I suggest opening an issue, first with Pytorch, and then possibly with cuDNN
    – desertnaut
    Jan 25, 2018 at 15:08
  • 1
    Thanks. I will do that. Jan 25, 2018 at 15:11
  • 1
    did you set this on your program or somewhere else? can you provide details so that it helps others in future?
    – Wasi Ahmad
    Jan 25, 2018 at 21:56
  • Yes. Add this line at the beginning of your torch code. Jan 26, 2018 at 8:51

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