how to avoid for loop to increase speed

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I would like to calculate the mean value of vector A for every sample as defined in vector B. So, the first point of the resulting vector C is the mean of the first 9 (=B(1)) datapoints of A. The second point of C is the mean of the following 10 (=B(2) datapoints of A. Etc. The following code works, but takes time when processing large vectors:
A=rand(91,1); % vector with 91 random samples
B=[9,10,10,8,11,10,10,9,10,6]; % vector with the number of samples
C= zeros(length(B),1); % preallocate C
first=1;
for i = 1: length(C)
last = first+B(i)-1;
interval=(first:last);
C(i) = mean(A(interval));
first =last+1;
end
Is there a way to use B in an index of A, instead of using this for loop?
  2 Comments
Matt J
Matt J on 4 Jan 2023
Shouldn't sum(B) equal length(A)?
A=rand(91,1); % vector with 91 random samples
B=[9,10,10,8,11,10,10,9,10,6]; % vector with the number of samples
sum(B)
ans = 93
length(A)
ans = 91
Bertil Veenstra
Bertil Veenstra on 4 Jan 2023
Yes, you are right. They should be the same length

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Accepted Answer

Matt J
Matt J on 4 Jan 2023
Edited: Matt J on 5 Jan 2023
A=rand(91,1); % vector with 91 random samples
B=[9,10,10,8,11,10,10,9,10,6]; % vector with the number of samples
G=repelem(1:numel(B), B);
n=min(numel(A),numel(G));
G=G(:); A=A(:);
C=accumarray(G(1:n),A(1:n))./accumarray(G(1:n),1); %NOTE: faster than accumarray(G,A,[],@mean)
  4 Comments
Matt J
Matt J on 5 Jan 2023
Edited: Matt J on 5 Jan 2023
Better to avoid two ACCUMARRAY() calls and specify the function instead:
That would be quite a bit slower, unfortunately. I very deliberately avoided it for that reason:
A=rand(900000,1); % vector with 91 random samples
B=ones(1,90000)*10; % vector with the number of samples
assert(sum(B)==numel(A))
G=repelem(1:numel(B), B);
n=min(numel(A),numel(G));
G=G(:); A=A(:);
tic;
C=accumarray(G(1:n),A(1:n))./accumarray(G(1:n),1);
toc
Elapsed time is 0.022540 seconds.
tic;
C=accumarray(G(1:n),A(1:n),[],@mean); % simpler and faster
toc
Elapsed time is 0.333534 seconds.
Stephen23
Stephen23 on 5 Jan 2023
"That would be quite a bit slower, unfortunately. I very deliberately avoided it for that reason:"
Aah, that is a shame. Perhaps a code comment would help to make that choice clear.

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More Answers (2)

Mathieu NOE
Mathieu NOE on 4 Jan 2023
hello
had to change A to 93 samples so that it matches with sum(B) = 93
see my suggestion below. On this small data we can see an iùprovement of factor 4
Elapsed time is 0.004598 seconds (your code)
Elapsed time is 0.001204 seconds. (my code)
delta = 1.0e-14 *
0
-0.0222
-0.0111
-0.0333
-0.0555
0.1110
0.0777
-0.0222
-0.0444
-0.0222
wonder if that is going to be even better for larger vectors ?
A=rand(93,1); % vector with 93 random samples
B=[9,10,10,8,11,10,10,9,10,6]; % vector with the number of samples
C= zeros(length(B),1); % preallocate C
first=1;
tic
for i = 1: length(C)
last = first+B(i)-1;
interval=(first:last);
C(i) = mean(A(interval));
first =last+1;
end
toc
% alternative code
tic
As = cumsum(A(:));
Bs = cumsum(B(:));
As = As(Bs);
Cs = [As(1); diff(As)]./B(:);
toc
delta = C - Cs
plot(C,'-*b')
hold on
plot(Cs,'dr')
hold off
  7 Comments
Matt J
Matt J on 6 Jan 2023
Edited: Matt J on 6 Jan 2023
@Stephen23 already showed you earlier that you can use accumarray to apply any function to the blocks.
A = randi(5,1,9300); % vector with random integers ranging from 1 to 5
B=ones(1,930)*10; % vector the number of samples
tic
C= zeros(length(B),1); % preallocate C
first=1;
for i = 1: length(C)
last = first+B(i)-1;
interval=(first:last);
C(i) = mode(A(interval));
first =last+1;
end
toc
Elapsed time is 0.032246 seconds.
tic
G=repelem((1:numel(B)),B);
C=accumarray(G(:),A(:),[],@mode);
toc
Elapsed time is 0.019723 seconds.
It is to be expected that speed-up is more modest, unfortunately. Accumarray isn't as well optimized for arbitrary functions.
Bertil Veenstra
Bertil Veenstra on 6 Jan 2023
Thanks you Matt for this code. It doesns't seem to run faster than the for loop, but it did learn me more about writing and understanding matlab code.

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Matt J
Matt J on 6 Jan 2023
Edited: Matt J on 6 Jan 2023
And instead of the mean, I am interested in the mode.
This method should offer speed-up for a generic function, provided that it can ignore NaNs and provided the blocks don't vary too greatly in length:
B = randi([5,10],1,9300);
A = randi(5,1,sum(B));
discrepancy = max( abs(loopMethod(A,B)-altMethod(A,B)),[],'all')
discrepancy = 0
timeit(@() loopMethod(A,B))
ans = 0.1231
timeit(@() altMethod(A,B))
ans = 0.0027
function C=loopMethod(A,B)
C= zeros(1,length(B)); % preallocate C
first=1;
for i = 1: length(C)
last = first+B(i)-1;
interval=(first:last);
C(i) = mode(A(interval));
first =last+1;
end
end
function C=altMethod(A,B)
bmax=max(B);
I=(1:bmax)'<=B;
T=nan(size(I));
T(I)=A(:);
C=mode(T,1);
end
  1 Comment
Bertil Veenstra
Bertil Veenstra on 6 Jan 2023
Hi Matt, this works nice. On larger files I get an 3-4 fold increase in speed. Smart solution. Thanks for your time.

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