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This question already has an answer here:

I would like to know if it is possible to optimize the image recognition of Tensorflow (InceptionV.3). Indeed, I would like to introduce the latter on a VPS equipped only CPU. Now, I manage to get a result after 30-40 seconds, and I would like to know if there would not be a solution to otherwise reduce this time: / (Without GPU)

I get this warning when executing of this code:

2017-07-15 02: 40: 19.230276: W tensorflow / core / platform / cpu_feature_guard.cc: 45] The TensorFlow library was not compiled to use SSE4.1 instructions, but these are CPU computations.
2017-07-15 02: 40: 19.230359: W tensorflow / core / platform / cpu_feature_guard.cc: 45] The TensorFlow library was not compiled to use SSE4.2 instructions, but these are CPU computations.

Do you think the compilation will greatly reduce this time? I have not found any documents on their site that speak of this warning.  I'm new to Tensorflow, so I do not understand everything ... I'm on ubuntu 16.04 LTS, and i use python 2.7.12

Thank you in advance ! :)

marked as duplicate by Salvador Dali python Jul 15 '17 at 20:38

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

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You get this warning because your CPU has features that tensorflow can use to work faster, but the "build" you downloaded does not support. The solution is to rebuild tensorflow from source, And yes it will work faster for you 99% of the time if that's the warning you get.

To receive instructions on how to build tensorflow from source - Check here

When running the bazel build command, be sure to use the --copt=-msse4.2 flag

  • Thank you very much for this information :) I will immediately follow the instructions on the site, thank you very much :) – Marshall Cocop Jul 15 '17 at 12:27
  • do not answer duplicate questions. This has been asked many times. Just mark as a duplicate – Salvador Dali Jul 15 '17 at 20:37

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