In this paper: https://arxiv.org/pdf/1609.08144.pdf "Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation", 2016

And at page 12, in Table 1, it is listed that the decoding time for inference on their 2016 neural translation model is almost 3x faster on CPU than GPU. Their model is highly parallelized across GPUs on the depth axis.

Would anyone have any insight?

And would this also mean that generally speaking, it is better to perform the test steps of a neural network on CPU when training on GPU? And would this be true also for models trained on only 1 GPU rather than on many?

  • I almost posted it into the data science one but I hesitated a lot since it is about performance, hence maybe more a code issue. Thanks. Oh, and TensorFlow.org especially redirects to StackOverflow for questions about their framework (CTRL+F for Stack Overflow here) : tensorflow.org/about . I guess the question will stay here since I already posted it. Mar 27 '17 at 3:07
  • I thought about the data science one as well. I half-expected they might have had a machine-learning subsite. I just think your question will be more likely to be seen by serious CSci types in one of the more specialized forums. Mar 27 '17 at 3:09
  • Yeah, I expected too to find a stack exchange site about Deep Learning or at least Machine Learning, but, well. Mar 27 '17 at 3:10
  • 1
    @barry-johnson when referring other sites, it is often helpful to point that cross-posting is frowned upon
    – gnat
    Mar 27 '17 at 7:48
  • @gnat Yeah, exactly, I would not do that. Mar 27 '17 at 23:27

They used 88 CPU cores and denoted it as CPU, while only a single GPU is used. Therefore the theoretical peak performance is not that different. Next the data has to be loaded into the GPU which is an overhead, that is not needed on a CPU. The combination of those two factors make the CPU process perform better.

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