I can't figure out the problem in the following short script which should compare a single CPU computation with a parallelization concerning computation time.
Link to full image: LINK
The code is:
n = 700; ranksSingle = zeros(1,n); tic for ind = 1:n ranksSingle(ind) = rank(magic(ind)); end toc matlabpool local 4 tic ranks = zeros(1,n); parfor (ind = 1:n) ranks(ind) = rank(magic(ind)); end toc isequal(ranksSingle, ranks) matlabpool close
I also tried it with
matlabpool 2. As you can clearly see from the process window, all cores are busy to 100% when running the parallel computation (marked red).
When running the single-cpu computation (marked blue), strangly the 4 cores are also more busy than before. I would have expected only ONE core to go up. I searched the internet to see, if perhaps the
rank function are built-in parallelized, but as you can read from here: http://www.walkingrandomly.com/?p=1894 it's not the case. So it's okay that those 4 cores are not fully busy, but still I'm wondering why ALL cores go up.
Secondly, I really wonder the computation time of the parallelized version. I know there's some sort of overhead by distributing the jobs to the single cores, but this shouldn't be so high that there's no benefit at all in the end :(
Perhaps anybody can tell me something about it :( I'm really stuck at this since I want to speed up some of my for-loops. Second question is, if there's any command to always set the worker size to the number of physical cores I have in my computer? (and also using Hyper Threading if that's an additional benefit?)
Thanks a lot!