Parallelize calculations on a big cell array without making N input copies
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Hello,
The existing answers on matlab answers, also due to their age, have not made it clear to me if it is possible to parallelize CPU-intensive calculations done with either cellfun or a for loop over a large (15.000.000x1) cell array with each cell containing a 24x24 matrix, and then writing the calculation results for each into a 15.000.000x1 vector.
Using just parfor is no use since my PC runs out of memory (I have enough memory for 1 copy of the cell array but not 6 copies for the 6 workers). Is there a way to perhaps copy it only once, with each of the 6 workers receiving only a 6th of the total array as copy?
An older comment said there was a userwritten solution with shared memory, but that this would not work anymore with newer Matlab versions (I use 2016a).
Thank you for your help!
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Accepted Answer
OCDER
on 14 Sep 2017
Edited: OCDER
on 14 Sep 2017
If each calculation is independent (as in, you don't need the entire 15000000x1 cell to make 1 calculation), then you could rewrite the parfor loop to work on a sliced variable. Workers will only receive a "slice" of the large 15000000x1 cell. This prevents passing the large cell as a broadcast variable, which will use too much memory.
The parfor loop should look something like this:
LargeCell = repmat({zeros(24)}, 100, 1); %Represent your 15000000x1 cell
Results = zeros(size(LargeCell)); %Store results here
parfor k = 1:length(LargeCell)
Results(k) = complex_function( LargeCell{k} ); %Do your CPU-intensive calculation here
end
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