Vectorized code slower than loops?
Show older comments
This question is a bit an offspring from an other one, but I have the following two codes:
maxN = 100;
levels = maxN+1;
xElements = 101;
umn = complex(zeros(levels, levels)); % cleaning
bessels = ones(1201, 1201, 101); % 1.09 GB
negMcontainer = ones(1201, 1201, 100);
posMcontainer = negMcontainer;
tic
for j = 1 : xElements
for i = 1 : xElements
for n = 1 : 2 : maxN
nn = n + 1;
mm = 1;
m = 1:2:n;
numOfEl = ceil(n/2);
umn(nn, mm:mm+numOfEl-1) = bessels(i, j, nn) * posMcontainer(i, j, m);
end
end
end
toc
tic
for j = 1 : xElements
for i = 1 : xElements
for n = 1 : 2 : maxN
nn = n + 1;
mm = 1;
for m = 1 : 2 : n
umn(nn, mm) = bessels(i, j, nn) * posMcontainer(i, j, m);
mm = mm + 1;
end
end
end
end
toc
And it tourns out, that loops version is faste >2x. Why is that so? I know that i happens if vectorization requiers large temporary variables, but (it seems) it is not true here.
And generally, what (other than parfor) can I do to speed up this code?
Best regards, Alex
1 Comment
Alexandra Harkai
on 2 Sep 2016
Not sure about the speedup possibilities just yet, but regarding the vectorisation, this may be helpful in seeing where the vector/loop implementations make a difference: http://www.matlabtips.com/matlab-is-no-longer-slow-at-for-loops/
Accepted Answer
More Answers (0)
Categories
Find more on Loops and Conditional Statements in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!