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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.

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    All the requirements are given with the instructions for installation, section called "NVIDIA requirements to run TensorFlow with GPU support". – P-Gn May 31 '18 at 11:35
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    The question was addressing compatibility and (officially) tested combinations which, in my view, are not provided in the instructions for installation. Also, I cannot find the section you're referring to. These observations result in my overall view that the requested information is hard to find and therefore justifies providing easy access to the link posted in the answer. – Fábio May 31 '18 at 11:44
  • You will find that the CUDA and cuDNN versions on the page you mention match the one of the installation instructions. – P-Gn May 31 '18 at 11:46
  • To find the installation instructions, go to the page I linked above then follow the link for your OS. – P-Gn May 31 '18 at 11:47
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    Oh I see what you mean -- trying to see which tensorflow version fits a particular CUDA/cuDNN combination. You could browse TF's release notes but the table you link to is indeed a good summary. – P-Gn May 31 '18 at 13:15
182

Generally:

Check the CUDA version:

cat /usr/local/cuda/version.txt

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:

Minor configurations:

Since the given specifications below in some cases might be too broad, here is one specific configuration that works:

  • tensorflow-gpu==1.12.0
  • cuda==9.0
  • cuDNN==7.1.4

The corresponding cudnn can be downloaded here.

(figures updated May 20, 2020)

Linux GPU

enter image description here

Linux

enter image description here

macOS GPU

enter image description here

macOS

enter image description here

(figure updated May 31, 2018)

Windows

enter image description here

Updated as of 14th Jan 2020: For the updated information please refer Link for Linux and Link for Windows.

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    I did notice though that TensorFlow versions < 1.0 have been excluded from the overview. Does somebody have an idea where to find the same list for older versions? – Fábio May 31 '18 at 10:49
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    Looks like they don't specify minor versions for cuda and cudnn, – mrgloom Nov 30 '18 at 0:58
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    UPDATE: tested TF-GPU 1.12, Windows 10, CUDA 9.0, CuDNN 7.3.1, Python 3.6.6 – mjaniec Feb 14 '19 at 7:03
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    @Fábio: Updated your answer with the Latest Links as per your request. – Tensorflow Support Jan 14 at 10:48
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    appreciate the update @runDOSrun – Fábio May 20 at 15:18
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The compatibility table given in the tensorflow site does not contain specific minor versions for cuda and cuDNN. However, if the specific versions are not met, there will be an error when you try to use tensorflow.

For tensorflow-gpu==1.12.0 and 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
nvcc --version

cuDNN version using
cat /usr/include/cudnn.h | grep CUDNN_MAJOR -A 2

tensorflow-gpu version using
pip freeze | grep tensorflow-gpu

UPDATE: Since tensorflow 2.0, has been released, I will share the compatible cuda and cuDNN versions for it as well (for Ubuntu 18.04).

  • tensorflow-gpu = 2.0.0
  • cuda = 10.0
  • cuDNN = 7.6.0
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    Your answer was very useful. Like you said the documentation was not very clear to call out the minor versions. I followed your configuration and it worked ! – Vikrame Jan 11 '19 at 16:42
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2.0 Compatible Answer: Updating the answer of 'Fábio' as of 13th Jan 2020, with TF Version 2.0.

enter image description here

enter image description here

enter image description here

Windows:

enter image description here

enter image description here

For the updated information please refer Link for Linux and Link for Windows.

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    thank you for the update! Would it make sense to perhaps update my above post with your screenshots by placing them on top and my old screens on the bottom? I think the original answer is the most visible and should yield the most valuable information. Open for other ideas as well. – Fábio Jan 13 at 15:48
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You can use this configuration for cuda 10.0 (10.1 does not work as of 3/18), this runs for me:

  • tensorflow>=1.12.0
  • tensorflow_gpu>=1.4

Install version tensorflow gpu:

pip install tensorflow-gpu==1.4.0
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I had installed CUDA 10.1 and CUDNN 7.6 by mistake. You can use following configurations (This worked for me - as of 9/10). :

  • Tensorflow-gpu == 1.14.0
  • CUDA 10.1
  • CUDNN 7.6
  • Ubuntu 18.04

But I had to create symlinks for it to work as tensorflow originally works with CUDA 10.

sudo ln -s /opt/cuda/targets/x86_64-linux/lib/libcublas.so /opt/cuda/targets/x86_64-linux/lib/libcublas.so.10.0
sudo cp /usr/lib/x86_64-linux-gnu/libcublas.so.10 /usr/local/cuda-10.1/lib64/
sudo ln -s /usr/local/cuda-10.1/lib64/libcublas.so.10 /usr/local/cuda-10.1/lib64/libcublas.so.10.0
sudo ln -s /usr/local/cuda/targets/x86_64-linux/lib/libcusolver.so.10 /usr/local/cuda/lib64/libcusolver.so.10.0
sudo ln -s /usr/local/cuda/targets/x86_64-linux/lib/libcurand.so.10 /usr/local/cuda/lib64/libcurand.so.10.0
sudo ln -s /usr/local/cuda/targets/x86_64-linux/lib/libcufft.so.10 /usr/local/cuda/lib64/libcufft.so.10.0
sudo ln -s /usr/local/cuda/targets/x86_64-linux/lib/libcudart.so /usr/local/cuda/lib64/libcudart.so.10.0
sudo ln -s /usr/local/cuda/targets/x86_64-linux/lib/libcusparse.so.10 /usr/local/cuda/lib64/libcusparse.so.10.0

And add the following to my ~/.bashrc -

export PATH=/usr/local/cuda/bin:$PATH
export LD_LIBRARY_PATH=/usr/local/cuda/lib64:$LD_LIBRARY_PATH
export PATH=/usr/local/cuda-10.1/bin:$PATH
export LD_LIBRARY_PATH=/usr/local/cuda-10.1/lib64:$LD_LIBRARY_PATH
export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/opt/cuda/targets/x86_64-linux/lib/
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if you are coding in jupyter notebook, and want to check which cuda version tf is using, run the follow command directly into jupyter cell:

!conda list cudatoolkit

!conda list cudnn

and to check if the gpu is visible to tf:

tf.test.is_gpu_available(
    cuda_only=False, min_cuda_compute_capability=None
)
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