'parfor' slower than 'for' for simple tutorial example
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Hi everybody, I'm a phd student in physics and I just started learning something about parallel programming in matlab. Unfortunately from the very beginning I've encountered some problems in running parallelized code on my computer. Just to have a try I used this simple code to run some test:
parfor ii=1:1000
A(ii)=ii;
end
A
If I compare the time elapsed for this calculation to the one of the same code with the normal for loop it appears evident that the parfor loop is much slower. I've tried to use matlabpool with default settings and also varying the number of workers (I’ve also tried to completely close the pool), and i've also tried to combine this with gpuArray preallocating A on the GPU, but simple for loop remains the best choice. Is it an hardware incompatibility? I'm currently using Matlab 2011b with Parallel Computing Toolbox 5.2. In my computer I've an INTEL i7 processor and a NVIDIA GEFORCE 540M. Does it matter?
1 comentario
Roberto
el 27 de Abr. de 2014
I've encountered the same issue; here is what I've tried:
n = 50000;
x = randn(1,n) ;
y = zeros(3,n);
tic
for i = 1 : n
y(1,i) = std(x(1:i));
end
fprintf('\n For normal: %f secs\n',toc);
tic
for i = drange(1 : n)
y(2,i) = std(x(1:i));
end
fprintf('\n For drange: %f secs\n',toc);
tic
parfor i = 1 : n
y(3,i) = std(x(1:i));
end
fprintf('\n parFor: %f secs\n',toc);
and here are the results:
For normal: 11.337090 secs
For drange: 11.569059 secs
parFor: 11.552776 secs
Respuesta aceptada
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