12

The official PyTorch Docker image is based on nvidia/cuda, which is able to run on Docker CE, without any GPU. It can also run on nvidia-docker, I presume with CUDA support enabled. Is it possible to run nvidia-docker itself on an x86 CPU, without any GPU? Is there a way to build a single Docker image that takes advantage of CUDA support when it is available (e.g. when running inside nvidia-docker) and uses the CPU otherwise? What happens when you use torch.cuda from inside Docker CE? What exactly is the difference between Docker CE and why can't nvidia-docker be merged into Docker CE?

15
+50

nvidia-docker is a shortcut for docker --runtime nvidia. I do hope they merge it one day, but for now it's a 3rd party runtime. They explain what it is and what it does on their GitHub page.

A modified version of runc adding a custom pre-start hook to all containers. If environment variable NVIDIA_VISIBLE_DEVICES is set in the OCI spec, the hook will configure GPU access for the container by leveraging nvidia-container-cli from project libnvidia-container.

Nothing stops you from running images meant for nvidia-docker with normal docker. They work just fine but if you run something in them that requires the GPU, that will fail.

I don't think you can run nvidia-docker on a machine without a GPU. It won't be able to find the CUDA files it's looking for and will error out.

To create an image that can run on both docker and nvidia-docker, your program inside it needs to be able to know where it's running. I am not sure if there's an official way, but you can try one of the following:

  • Check if nvidia-smi is available
  • Check if the directory specified in $CUDA_LIB_PATH exists
  • Check if your program can load the CUDA libraries successfully, and if it can't just fallback

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.