Better performace: GPU + Workers

4 views (last 30 days)
Nycholas Maia
Nycholas Maia on 5 May 2017
Commented: Joss Knight on 15 May 2017
How can I know what is the best optimization method for me?
  1. Run the code only inside the GPU? Or run only inside the multiple workers/cores?
  2. Is possible to join/mix theses two methods to get a even better performance?

Accepted Answer

Joss Knight
Joss Knight on 13 May 2017
It depends what you're optimizing. Use of the GPU only really make sense if the objective function is a large enough operation to fully utilize the GPU (e.g. it is multiplying a very large matrix by a vector, such as in iterative solvers). Use of a parallel pool with GPU computation only gains you anything if you have multiple GPUs, but is perfectly possible if you are implementing your own objective function.
Alternatively, if you are on linux, you can try using MPS to allow overlapping use of the same GPU on multiple workers. This can potentially make it viable to use the GPU with smaller operations.
  3 Comments
Walter Roberson
Walter Roberson on 14 May 2017
"Is not good always use GPU in small or medium operations too?"
Not always. There is communications overhead with the GPU.
Joss Knight
Joss Knight on 15 May 2017
Well, my answer to that would be no, the GPU SMs are a lot slower than a CPU core, so you need a lot of parallelism to make it worthwhile.

Sign in to comment.

More Answers (0)

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!