TLDR: If you find that tensorflow is throwing a
GPU sync failed Error, it may be because the model's inputs are too large (as was my case when first running into this problem) or you don't have cuDNN installed properly. Verify that cuDNN is installed correctly and reset your nvidia caches (ie.
sudo -rf $HOME/.nv/) (if you have no yet done so after initially installing CUDA and cuDNN) and restart your machine.
Running an example found in the tensorflow (TF) docs (https://www.tensorflow.org/tutorials/keras/save_and_restore_models#checkpoint_callback_usage), was getting the error
"GPU sync failed Error"
when running a tf.keras model (with a large input (vectorized MNIST feature data (length=28^2))). Looking into this problem, found this post here (https://github.com/tensorflow/tensorflow/issues/5688) (which talks about the problem being caused specifically by large inputs to a model) and (following the chain of supposed effect) here (https://github.com/tensorflow/tensorflow/issues/5688). The last line of the 2nd post question showing error message snippet
F tensorflow/stream_executor/cuda/cuda_dnn.cc:2440] failed to enqueue convolution on stream:
From this, I decided to try and test if (as required by TF) cuDNN was actually installed correctly (https://docs.nvidia.com/deeplearning/sdk/cudnn-install/index.html#installlinux-deb). Following the docs to try to verify the cuDNN install (https://docs.nvidia.com/deeplearning/sdk/cudnn-install/index.html#verify),
#Copy the cuDNN sample to a writable path.
$cp -r /usr/src/cudnn_samples_v7/ $HOME
#Go to the writable path.
$ cd $HOME/cudnn_samples_v7/mnistCUDNN
#Compile the mnistCUDNN sample.
$make clean && make
#Run the mnistCUDNN sample.
#If cuDNN is properly installed and running on your Linux system, you will see a message similar to the following:
found that was throwing error
cudnnGetVersion() : 6021 , CUDNN_VERSION from cudnn.h : 6021 (6.0.21)
Host compiler version : GCC 5.4.0
There are 1 CUDA capable devices on your machine :
device 0 : sms 20 Capabilities 6.1, SmClock 1797.0 Mhz, MemSize (Mb) 8107, MemClock 5005.0 Mhz, Ecc=0, boardGroupID=0
Using device 0
Testing single precision
Looking into this more, found nvidiadev threads here (https://devtalk.nvidia.com/default/topic/1025900/cudnn/cudnn-fails-with-cudnn_status_internal_error-on-mnist-sample-execution/post/5259556/#5259556) and here (https://devtalk.nvidia.com/default/topic/1024761/cuda-setup-and-installation/cudnn_status_internal_error-when-using-cudnn7-0-with-cuda-8-0/post/5217666/#5217666), which recommend clearing the nvidia caches via
sudo rm -rf ~/.nv/
and restarting (else both installation verification tests for CUDA and cuDNN will fail) my machine. After doing this, both CUDA (https://docs.nvidia.com/cuda/archive/9.0/cuda-installation-guide-linux/index.html#install-samples) and cuDNN (https://docs.nvidia.com/deeplearning/sdk/cudnn-install/index.html#installlinux-deb) installation checks passed.
And was finally able to successfully run the TF model without error.
epochs = 10,
validation_data = (test_images, test_labels),
callbacks = [cp_callback]) # pass callback to training
Train on 1000 samples, validate on 1000 samples Epoch 1/10 1000/1000
[==============================] - 1s 604us/step - loss: 1.1795 - acc:
0.6720 - val_loss: 0.7519 - val_acc: 0.7580
Epoch 00001: saving model to training_1/cp.ckpt
WARNING:tensorflow:This model was compiled with a Keras optimizer
but is being saved in TensorFlow format with
model's weights will be saved, but unlike with TensorFlow optimizers
in the TensorFlow format the optimizer's state will not be saved.
Hope this helps you.
Note: this may be an easy problem to run into, since the tensorflow docs explicitly require that both CUDA and cuDNN be installed for GPU support in TF, but you can actually
pip install tensorflow-gpu without installing cuDNN even though this is not the correct thing to do, which (if someone where too eager) could mislead someone to blame something in their code rather than some other underlying installation requirement (which would actually be the right choice in this case).