I have noticed that some newer TensorFlow versions are incompatible with older CUDA and cuDNN versions. Does an overview of the compatible versions or even a list of officially tested combinations exist? I can't find it in the TensorFlow documentation.
Check the CUDA version:
and cuDNN version:
grep CUDNN_MAJOR -A 2 /usr/local/cuda/include/cudnn.h
and install a combination as given below in the images or here.
The following images and the link provide an overview of the officially supported/tested combinations of CUDA and TensorFlow on Linux, macOS and Windows:
Since the given specifications below in some cases might be too broad, here is one specific configuration that works:
The corresponding cudnn can be downloaded here.
(figures updated Feb 16, 2018)
(figure updated May 31, 2018)
The compatibility table given in https://www.tensorflow.org/install/source#tested_build_configurations does not contain specific minor versions for cuda and cuDNN. It is only generally listed as cuda=9 and cuDNN=7. However, if the specific versions are not met, there will be an error.
cuda==9.0, the compatible
cuDNN version is
7.1.4, which can be downloaded from here after registration.
You can check your cuda version using
cuDNN version using
cat /usr/include/cudnn.h | grep CUDNN_MAJOR -A 2
tensorflow-gpu version using
pip freeze | grep tensorflow-gpu
Working : tensorflow 1.13.1, CUDA 10, CUDNN 7.4.2, python 3.6 (does not work well with 3.7.. 3.7 has many bugs) For Windows 10
You can use this configuration for cuda 10.0 (10.1 does not work as of 3/18), this runs for me:
Install version tensorflow gpu:
pip install tensorflow-gpu==1.4.0