I am using aws ec2 to train a model for a multi-label classification task. After training , I tested the model on the same machine which gives me good results (accuracy of 90+%). However, after I imported the saved model into my local machine (no GPU), it gives different results (accuracy is less than 5%). Any suggestions on why this is happening? Thanks.

TL;DR: Keras/tensorflow model produces different results when transfered from GPU machine to CPU.

  • So what data are you training your model with and depends hhow to programmed it to do it. Feb 24 '17 at 22:56
  • I'm working with text data (tweets). I'm classifying them based on emotions they express(joy, sadness, anger, etc.). I am using keras over tensorflow. My network is a sequencial model (embedding layer-> bidirectional LSTM-> sigmoid dense layer). I'm using binary_crossentropy (since I want to have multiple 0/1 emotion output) and rmsprop for the optimiser. It's working great in aws but not in my local machine. Feb 24 '17 at 23:24
  • I already changed the version of keras and tensorflow on my local machine to same of that in aws. The only difference now is that I'm using a CPU version on my laptop while aws ec2 uses a gpu. However, output in my local machine still tends to give a very different output as compared to aws. Feb 24 '17 at 23:26
  • 1
    You should provide code and what results you are getting, else the question is completely unanswerable.
    – Dr. Snoopy
    Feb 25 '17 at 9:56
  • Sir @MatiasValdenegro, My code is based from this github code posted by Sir Alexander Rakhlin. I modified it to use RNN instead for multiple emotion output. I was getting a good result of 90+% accuracy on the aws ec2 machine while only 5% on my laptop which doesn't have a GPU. I did some searching about this behavior and found that the cause is the cuDNN used on the GPU machine producing non-deterministic values which randomizes the model. I posted the solution I found with some links. Feb 26 '17 at 1:30

Upon searching the net, I found the problem. It seems like that keras over tensorflow when running on a GPU tends to produce results that are not reproducible when transfered to a non-GPU machine. This most likely has something to do with the cuDNN installed. cuDNN's maxpooling and some convolution backward algorithm is non-deterministic - as said from a forum.

Solutions I found say the use of numpy.random.seed(seed_no) right before calling any keras libraries. This works when you run the code on a CPU. Works with both keras/theano and keras/tensorflow.

Solution for GPU users using keras over theano involves modifying the .theanorc file into:

algo_bwd_filter = deterministic
algo_bwd_data = deterministic

Or using theano flags: THEANO_FLAGS="dnn.conv.algo_bwd_filter=deterministic,dnn.conv.algo_bwd_data=deterministic" python rnn_model.py

However, I haven't found any clear instructions yet of how to produce uniform results on a keras with tensorflow as back-end running on a GPU.

  • Hi, Thanks for your answer! What is the parameter seed_no for numpy.random.seed ? And do you know why calling it will stop cuDNN to be nondeterministic ? Thanks! Feb 28 '17 at 14:58
  • Sir @Pusheen_the_dev, seed_no is an integer variable you use to control the random state of numpy making the result predictable. You can see more info here. As far as I know, keras uses numpy to randomize the initial weights of the model. Thus, setting a seed to control this random state will make the output of the model produce uniform results for experiments. However, seeding will not stop the cuDNN from being non-deterministic since it is the default setting when installed. You can use theano flags for this. Mar 3 '17 at 13:28

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.