- the first 2/3 of the iterations are divided equally between the cores, large chunks
- the next 1/6 (I think it might have been) of the iterations are divided into smaller chunks and handed out to cores as the cores become available
- the remaining (1/6th?) iterations are handed out to cores individually as they become available.
parallel computing workers number vs. PSO particle number
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Wei Wang
il 12 Ago 2021
Commentato: Walter Roberson
il 12 Ago 2021
Hi there,
I'm trying to run PSO in Matlab. I have a processor of 64 cores. I'm wondering how I should assign particle numbers for PSO. Is that true that at each iteration if I assign 64*n (n is an integer) particles, there won't be idle workers waiting each other, which brings efficiency compared with non-64*n particles? My simulation time varies from 25-40s per simulation.
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Walter Roberson
il 12 Ago 2021
Is that true that at each iteration if I assign 64*n (n is an integer) particles, there won't be idle workers waiting each other
No, that is not true. When you use parfor, the only way to avoid having cores idle waiting for other cores, is use a pool of size 1.
The question becomes how long they are going to wait. The answer to that is going to depend upon the variability in work loads.
When there are sufficient cores:
It is possible in this scheme for cores to run out of individual iterations while one of the original large chunks is still executing.
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Walter Roberson
il 12 Ago 2021
I would suggest that you experiment with a parpool of 16 that is allocated 4 cores per worker. Use the Cluster Profile manager to reduce number of workers but increase numthreads.
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