Vectorization

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Alan Shillitoe
Alan Shillitoe on 21 May 2012
Hi all,
Answer please in terms of 'Vectorization For Dummies'.
If I have a nested for loop of the form:
for i = 1:10
for j = 1:10
for k = 1:10
array(i,j,k) = function(input1(i), input2(j), input3(k))
end
end
end
What is the shortened codeneed to use to vectorize this?
Thanks
Alan
  3 Comments
Oleg Komarov
Oleg Komarov on 21 May 2012
The answer would be to vectorize the function such that it accepts arrays instead of scalars.
Daniel Shub
Daniel Shub on 21 May 2012
I believe the speed up to loops has been around since the introduction of the JIT (maybe MATLAB 6.5). TMW tends not to give details of the JIT because it is a moving target. The profiler also does not use the JIT so timing becomes problematic. One advantage of loops is you can use parfor loops and take advantage of all you CPUs/cores.

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Answers (4)

Jan
Jan on 22 May 2012
No new answer, but more explicit:
Very slow:
for i = 1:100
for j = 1:100
for k = 1:100
array(i,j,k) = sin(i+j+k);
end
end
end
Faster with pre-allocation:
array = zeros(100,100,100);
for i = 1:100
for j = 1:100
for k = 1:100
array(i,j,k) = sin(i+j+k);
end
end
end
Fast partial vectorization:
array = zeros(100,100,100);
for i = 1:100
for j = 1:100
array(i,j,1:100) = sin(i+j+(1:100));
end
end
Full vectorization:
value = bsxfun(@plus, bsxfun(@plus, 1:100, transpose(1:100)), reshape(1:100, 1, 1, 100));
array = sin(value);
For large problems the creation of the large temporary arrays needs more time that the vectorized operation can save. Therefore the full vectorization is optimal for expensive functions, which have a lot of overhead for checking of inputs etc.
  2 Comments
Alan Shillitoe
Alan Shillitoe on 22 May 2012
Thanks Jan.
That is the sort of thing I was after. I'll have a closer look at bsxfun to understand it better.
A.
Daniel Shub
Daniel Shub on 22 May 2012
+1, but why not make the outer loop a parfor?

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Alan Shillitoe
Alan Shillitoe on 21 May 2012
Aren't they? This is the first I have read about this. Have you got a link to this in the documentation?
A.
  1 Comment
Oleg Komarov
Oleg Komarov on 21 May 2012
Please use comments.

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Alan Shillitoe
Alan Shillitoe on 21 May 2012
Oleg,
How do I do that? I'm pretty new to this, so need it in really basic terms.
A.
  1 Comment
Oleg Komarov
Oleg Komarov on 21 May 2012
Edit your original question and post the relevant code of the function.

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Walter Roberson
Walter Roberson on 21 May 2012
Loops are no longer as slow in MATLAB, but function calls are. You want to reduce the number of function calls, which you do by rewriting the function itself to be vectorized. If you cannot do that, then there is effectively no available speed-up for your current code (assuming you have pre-allocated the output array)

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