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We want to extend our batch system to support GPU computations.

The problem is that from the batch system viewpoint, the GPU is a resource. We can easily count used resources, but we also need to limit the access to them.

For GPUs that means that each job claims a GPU exclusively (when a GPU is requested).

From what I have been told, sharing GPUs between jobs is a very bad idea (because the GPU part of jobs might be killed randomly).

So, what I need is some way to limit access to GPUs for CUDA and OpenCL. The batch system has root privileges. I can limit access to devices in /dev/ using cgroups but I figured, that this won't be enough in this case.

Ideal state would be if the job would only see as many GPUs as it requested and these couldn't be accessed by any other job.

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why can't you just change the ownership of the /dev/nvidiax devices when a job is being run on it, and provide a check to see who owns it before trying to run there? – Marm0t Nov 2 '10 at 18:00
@Marm I can easily forbid the job to access /dev/something. Is that enough? – Let_Me_Be Nov 2 '10 at 18:52
Changing ownership to a different user for /dev/nvidia and then applying a check on the ownership before running a job should be enough - I use nvidia GPUs over the network and sometimes people log onto those machines locally- when they do ownership is changed and I can't access the nvidia device. You may want to run the jobs as an unprivileged user with sudo access to chown /dev/nvidia - that could work. – Marm0t Nov 2 '10 at 20:55
up vote 3 down vote accepted

There are two relevant mechanisms at the moment:

  • Use nvidia-smi to set the devices into exclusive mode, that way once a process has a GPU no other process can attach to the same GPU.
  • Use the CUDA_VISIBLE_DEVICES variable to limit which GPUs a process sees when it looks for a GPU.

The latter is of course subject to abuse but it's a start for now.

From what I have been told, sharing GPUs between jobs is a very bad idea (because the GPU part of jobs might be killed randomly).

Not really, the main reason that sharing the GPU is a bad idea is that they will have to compete for the available memory and the processes may all fail, even though in reality one of them could have proceeded. In addition, they compete for access to the DMA and compute engines which can result in poor overall performance.

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Ah, CUDA_VISIBLE_DEVICES is one thing I'd forgotten about, very useful. – Edric Nov 4 '10 at 7:48

I believe there are two things that can help with NVIDIA CUDA GPUs:

  1. Put the GPUs in "Compute Exclusive" mode via the nvidia-smi tool
  2. Instruct users to use the no-args "cudaSetDevice()" call which will automatically pick an unused GPU
  3. Instruct users to use some other means of initializing the device other than cudaSetDevice, as described in section 8.3 of the "Best Practices Guide"

I'm not sure how to achieve this for OpenCL.

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OK, that helps a little. Does the cudaSetDevice fail in exclusive mode if already used card is requested? Unfortunately it doesn't address problems with different cards on one machine and doesn't forbid the user from taking more cards then he requested. – Let_Me_Be Nov 2 '10 at 15:30
Yes, cudaSetDevice() does fail on an exclusive mode GPU if it's already in use. – Edric Nov 2 '10 at 15:50
Argh, re-read the section of the Best Practices Guide - there is no "no-args cudaSetDevice" – Edric Nov 4 '10 at 7:46

I developped a library that will sort the available OpenCL platforms and devices. It will pick up the best device on a platform. It then tries to create a context on it. If this fails, it goes to the next in the list. The list is sorted by the number of compute units.

It supports nvidia (gpu), amd (gpu & cpu), intel (cpu) and apple (gpu & cpu).

There is locking mechanism for exclusive access. It is not the best though. I'm still looking for a better solution. Basically it saves a file with the platform+device used in /tmp.

This is what we use in our lab. It's available under the GPLv3 and can be found on github: https://github.com/nbigaouette/oclutils/

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