Parallel computing for Reinforcement Learning training on VM

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Tech Logg Ding
Tech Logg Ding le 1 Juin 2021
Commenté : Tech Logg Ding le 13 Juin 2021
Hi,
I am writing to ask if there's a way to increase the number of vCPU assigned to a worker when using parallel training for Reinforcement Learning application?
I noticed that the number of vCPU used at 100% is the same as the number of workers (set using parpool(numworkers)). When testing my model and running simulations on my local computer, the computational load exceeds the processing power of 1 vCPU. It took approximately 3-4 cores (50% of a typical intel i7 CPU) to run the simulation and train the agent.
Therefore, I would like to increase the number of vCPU assigned to a worker. I've tried to set 'numthreads' to 4 per worker, but that doesn't seem to solve the problem.
I am using a Ubuntu 18.04 Virtual Machine to run Matlab 2021a.
Thank you!
  2 commentaires
Emmanouil Tzorakoleftherakis
Any reason why you do not increase the number of workers instead?
Tech Logg Ding
Tech Logg Ding le 13 Juin 2021
Hi Emmanouil,
Thank you for your reply. I've initially wanted to increase the number of cores per worker as the simulation was quite computationally expensive. However, after learning more about parallel computing, I understand that using more cores per worker might not help the problem if the code is not configured to use more cores. I have increased the number of workers to use more of the available cores at a time and that seems to work fine. I also checked and noticed that the 'client' is configured to use more cores and is able to distribute its' workload across multiple cores.

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