Note : this question was initially asked on github, but it was asked to be here instead
I'm having trouble running tensorflow on gpu, and it does not seems to be the usual cuda's configuration problem, because everything seems to indicate cuda is properly setup.
What differs from usual issues is that cuda seems properly installed and running
./deviceQuery from cuda samples is successful (output).
I have two graphical cards:
- an old GTX 650 used for my monitors (I don't want to use that one with tensorflow)
- a GTX 1060 that I want to dedicate to tensorflow
- cuda-8.0 (ls -l /usr/local/cuda/lib64/libcud*)
- nvidia-drivers-375.26 (this was installed by cuda and replaced my distro driver package)
- forcing gpu placement in tensorflow script using
with tf.device('/gpu:0'):when it failed, for good measure)
- whitelisting the gpu I wanted to use with
CUDA_VISIBLE_DEVICES, in case the presence of my old unsupported card did cause problems
- running the script with sudo (because why not)
At this point, I feel like I have followed all the breadcrumbs and have no idea what I could try else. I'm not even sure if I'm contemplating a bug or a configuration problem. Any advice about how to debug this would be greatly appreciated. Thanks!
Update: with the help of Yaroslav on github, I gathered more debugging info by raising log level, but it doesn't seem to say much about the device selection : https://gist.github.com/oelmekki/760a37ca50bf58d4f03f46d104b798bb
Update 2: Using theano detects gpu correctly, but interestingly it complains about cuDNN being too recent, then fallback to cpu (code ran, output). Maybe that could be the problem with tensorflow as well?