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Till date, I have been using Tensorflow-GPU by installing it using pip and the Cuda related software and Nvidia softwares/drivers from Nvidia's website. Recently, I found that using conda install tensorflow-gpu also installs cudatoolkit and cudnn.

So, how are these(the ones provided by conda) different from the ones that I downloaded from Nvidia's website?

In my first (previous) environment, conda list showed that I have installed only TensorFlow(from PyPi) and no cudnn/cudatoolkit, but still everything worked.  This is my base environment where I installed Tensorflow-GPU using pip

Also, in a new environment in which I ran conda install tensorflow-gpu, conda list showed me tensorflow-gpu has been installed along with cudatoolkit and cudnn by Anaconda. And in this environment also, everything worked fine.This is a new environment where I used conda to install tensorflow-gpu

So does this mean, that downloading and installing Cuda from Nvidia's website is only necessary if I use pip to install TensorFlow?

2 Answers 2

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If using anaconda to install tensorflow-gpu, yes it will install cuda and cudnn for you in same conda environment as tensorflow-gpu. All you need to install yourself is the latest nvidia-driver (so that it works with the latest CUDA level and all older CUDA levels you use.)

This has many advantages over the pip install tensorflow-gpu method:

  1. Anaconda will always install the CUDA and CuDNN version that the TensorFlow code was compiled to use.
  2. You can have multiple conda environments with different levels of TensorFlow, CUDA, and CuDNN and just use conda activate to switch between them.
  3. You don't have to deal with installing CUDA and cuDNN manaually at the system wide level.

The disadvantage when compared to pip install tensorflow-gpu, is the latest version of tensorflow is added to pypi weeks before Anaconda is able to update the conda recipe and publish their builds of the latest TensorFlow version.

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  • 3
    Do you have any idea what problems could occur if CUDA is installed on the host os? (outside of the conda env)
    – filip
    Sep 11, 2020 at 9:41
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    Anaconda should ignore any version of CUDA outside of the conda env. It shouldn't be able to find it. Sep 11, 2020 at 16:45
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    I never had errors installing CUDA outside conda. @william Between the two methods you suggested, which would offer better performance? Jun 19, 2021 at 6:15
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    I wouldn't expect how CUDA was installed to affect performance. Whatever version offers the most recent version of CUDA I would expect to have the best performance. Jun 19, 2021 at 17:47
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    Does this mean we do not need to manually install CUDA and cuDNN anymore before using tensorflow-gpu (as the dependencies are already handled by conda).
    – Mr.Robot
    Aug 10, 2021 at 14:39
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Nvidia now has official channel for conda. the package name is nvidia/cuda. I prefer conda for easier managing different cuda enviroment.

What I found to be missing in conda-forge/cudatoolkit is nvcc and I guess some other utils for compiling but not running enviroment is also missing.

this post say conda-forge/cudatoolkit-dev will install nvcc, but I haven't tried.

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  • Is it worth using that as a base image if I'll be using Conda anyway? Might I just start from a Ubuntu20 image>? Aug 29, 2022 at 4:17
  • @FreeSoftwareServers well, ubuntu image is also the official way. I use conda simply because I dont have enough space on /usr and I dont want to change it. using conda can install cuda in different location. Aug 29, 2022 at 10:00

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