about parfor and spmd speedup
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hi,
I have tested the speedup of parfor and spmd as
1)for
tic
for n=1:1000
A=B*C;
end
toc;
2)parfor spmd in one worker in the same pc:
// I have stored B C in the worker before computing
tic
parfor n=1:1000
A=B*C;
end
toc;
I find that the speed of parfor and spmd is only 2/3 of single matlab. is it possible to make it faster?
Réponse acceptée
Walter Roberson
le 30 Déc 2011
If your matrices are not very big, then the time required to set up workers and communicate data in to them can overwhelm any saving of using multiple workers.
3 commentaires
Walter Roberson
le 30 Déc 2011
With a matrix that big, your "for" matrix multiplication would be farmed out to the highly optimized and multithreaded BLAS or LAPACK, using multiple cores or hyperthreading.
I gather that each "parfor" or "smpd" worker requires a new process, and my understanding is that those would only have access to the core or hyperthread they are allocated to.
Plus de réponses (1)
Knut
le 3 Jan 2012
So the spot where parfor can really shine is loops that are : a)Simple enough that parfor can do them in parallell b)complex/non-general enough that MATLAB does not have a low-level library that does it in paralell anyways
?
1 commentaire
Titus Edelhofer
le 3 Jan 2012
As a rule of thumb: yes. Another way to formulate b): when you have e.g. a quad core (with hyperthreading), i.e., your task manager shows you 8 CPU usages, and your (loop) code runs at exactly 12.5% average CPU usage ...
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