I am writing a project that relies on tensorflow, but that can be provided by either of two pip packages: tensorflow or tensorflow-gpu. My project works fine with either, but I don't want people running it on a machine without gpu support to have to install the extra overhead, but I still want people running on machines with gpu support to be able to leverage that. Is there a way to mark in my requirements.txt file that I require either tensorflow or tensorflow-gpu but not both?


In this specific case I should note that from the programmer's point of view, both tensorflow and tensorflow-gpu are identical, as they both provide a module tensorflow which has the same functions/classes/methods etc., and only differ in that tensorflow-gpu benefits from GPU acceleration. The problem that I am having is that if I put tensorflow in requirements.txt then in order to run with GPU acceleration, users would have to do pip install -r requirements.txt && pip uninstall tensorflow && pip install tensorflow-gpu which is not ideal, and if I instead put tensorflow-gpu in requirements.txt, then it will require a bunch of unnecessary system libraries (CUDNN etc) and wont work out-of-the-box for non-gpu users.


As a work-around, I've decided to provide two different requirement files, requirements.txt and requirements-gpu.txt, both of which include a shared -r .requirements-core.txt and add their respective version of tensorflow. That way people who want GPU support can pip install -r requirements-gpu.txt but the standard pip install -r requirements.txt will still work out-of-the box for everyone.

  • 1
    No way. pip is rather a simplistic package manager and requirements.txt is just a straightforward list of dependencies. Conditions in requirements.txt can be set for Python version or architecture but that's all. No alterations at all.
    – phd
    Jun 5, 2018 at 20:18

2 Answers 2


You cannot condition download packages with requirements.txt, but you might do one of the following solutions:

1 - Install both packages tensorflow and tensorflow-gpu as dependencies and do a try / except to choose which package will actually be used, like:

tensorflow = null

  tensorflow = __import__("tensorflow-gpu")
  tensorflow = __import__("tensorflow")
enter code here

2 - On your project you ask the client to pass the dependency direct to you:

def my_function_that_uses_tensorflow(tensorflow):
  # do stuff

from my_module import my_function_that_uses_tensorflow
import tensorflow # or tensorflow = __import__("tensorflow-gpu")

3 - If tensorflow-gpu and tensorflow both install their package with the same tensorflow name on your site-packages, then my suggestion is do a try /except as I said on option number 1, but don't include tensorflow-gpu or tensorflow as a dependency of your package (treat it as a "peer dependency" that the code using your package should include as their dependency in order to use it):

  import tensorflow
  raise ImportError('You need to include tensorflow or tensorflow-gpu as a dependency in order to use this package')
  • 1
    In this specific case, these steps are not useful because both tensorflow and tensorflow-gpu act the same from the programmer's perspective (i.e. they both provide a module tensorflow which has identical functions/classes/methods/etc). This is useful for the general case, however.
    – phsyron
    Jun 6, 2018 at 20:24
  • 1
    @phsyron My second suggestion than would work, ask for the user to include the correct tensorflow lib as a dependency (like a peer dependency of your lib) and pass it as an argument to you Or just try to import tensorflow with the try / except on your lib and say the user have to include the correct tensorflow as his dependency if it is missing Jun 6, 2018 at 22:34

There have been a handful of proposals for such functionality, but this currently does not exist within pip environment variables:

... currently PEP 508 does not provide environment markers for GPU/CUDA availability, which leads to problems for projects that want to provide distributions for environments with and without GPU support.

As far as I can tell, there's been multiple suggestions to bring this issue to distutils-sig, but no one has actually done it.

Relevant issues:

There is however a 3rd party library for TensorFlow specifically, but it has its own set of caveats:

There is now a third-party project which attempts to amend this for tensorflow (https://github.com/akatrevorjay/tensorflow-auto-detect) but this approach is somewhat fragile (depends on version numbers being in sync), doesn't directly scale to all similar projects, and would require maintainers for a given project to maintain three separate projects, instead of just one.

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