Why doesn't parfeval(@splitapply) improve splitapply's performance?
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I want to readtable many html-files to extract tables. I wrote a function extract_sheet to do just that. I had used parfor to perform this task, and it runs decently fast. Then it occurs to me that those html-files can be grouped according to their foder and filename segments. So, I try splitapply(extract_sheet, input variables, groupNumber), and it works. Then I want to see if parfeval would improve the speed. I do something like parfeval(@splitapply, extract_sheet, input variables, groupNumber.)
For a small testing file list, both methods spend almost the same amount of elapsed time, around 27.5 +/- .1 seconds. My question is why parfeval doesn't improve the performance?
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Matt J
am 31 Aug. 2023
Bearbeitet: Matt J
am 31 Aug. 2023
It probably means that Matlab's internal parallellization already does what parfeval does.
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Sam Marshalik
am 5 Sep. 2023
Bearbeitet: Sam Marshalik
am 5 Sep. 2023
@Matt J: You bring up a good point that the doc page is lacking information on this topic. I put in an enhancement request to improve that. In the meantime, I would suggest to call our Technical Support - they can investigate this further and reach out to the relevant Dev team.
Weitere Antworten (1)
Matt J
am 5 Sep. 2023
Bearbeitet: Matt J
am 5 Sep. 2023
If you're going to be using PCT functions anyway, I wonder if a parfor loop might do better than splitapply. I.e., instead of,
splitapply(func,X,G)
one might instead do,
I=splitapply(@(x){x}, 1:numel(G), G);
parfor j=1:numel(I)
results{j}=func( X(I{j}) );
end
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