Parpool slow with chol operation
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Hi, I found a bottleneck in my code, and I can't understand what is happening. I tried this in several computers and matlab versions (2014 and 2016) , and I found more or less the same pattern.
Suppose you have a large matrix operation, like a Choleski Decomposition of a large matrix. Well, if I parallelize across several cores (no matter how many, 4 ,8 ,16, regardless of the amount), I get that the single operation runs much slower. Example: Create this objects
z=randn(5200); Z=z*z'; zm=randn(1,5200);
open your parpool, and run a Chol. Decomp. in a parfor, you get for instance 3 seconds.
tic; parfor j=1:16; chol(Z,'lower'); end; toc
Now if you do the same in a standard sequential loop, you get the same result in similar time (or even a bit less)!!!
tic; for j=1:16; chol(Z,'lower'); end; toc
Why does this happen? What can I do to parallelize this code (my package does lot of things more than just a Choleski...) without penalizing so much the performance of a single task?
Many thanks in advance.
2 Comments
I am not sure I follow. How do you think you are parallelizing the decomposition? To me it looks like each parfor loop is computing the decomposition: you are just doing the same operation multiple times instead of dividing one operation between multiple threads.
I don't think you can achieve what you want with parfor in this case.
Francesco C
on 18 Aug 2016
Accepted Answer
More Answers (1)
The problem is that your Z-matrices need to be cloned and broadcast to each of the workers, which carries considerable overhead given their 5200x5200 size. If you create the Z matrices on the workers themselves, you get a more favorable comparison, e.g.,
>> tic; for j=1:16; z=randn(5200); Z=z*z'; chol(Z,'lower'); end; toc
Elapsed time is 29.711892 seconds.
>> tic; parfor j=1:16; z=randn(5200); Z=z*z'; chol(Z,'lower'); end; toc
Elapsed time is 18.471961 seconds.
1 Comment
Francesco C
on 18 Aug 2016
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