# Matlab slow parallel processing with distributed arrays

I am new to using distributed and codistributed arrays in matlab. The parallel code I have produced works, but is much slower than the serial version and I have no idea why. The code examples below compute the eigenvalues of hessian matrices from volumetic data.

Serial version:

S = size(D);
Dsmt=imgaussian(D,2,20);
DHess = zeros([3 3 S(1) S(2) S(3)]);

d = zeros([3 S(1) S(2) S(3)]);
for i = 1 : S(1)
fprintf('Slice %d out of %d\n', i, S(1));
for ii = 1 : S(2)
for iii = 1 : S(3)
d(:,i,ii,iii) = eig(squeeze(DHess(:,:,i,ii,iii)));
end
end
end


Parallel version:

S = size(D);
Dsmt=imgaussian(D,2,20);
DHess = zeros([3 3 S(1) S(2) S(3)]);
CDHess = distributed(DHess);
spmd
d = zeros([3 S(1) S(2) S(3)], codistributor('1d',4));
for i = 1 : S(1)
fprintf('Slice %d out of %d\n', i, S(1));
for ii = 1 : S(2)
for iii = drange(1 : S(3))
d(:,i,ii,iii) = eig(squeeze(CDHess(:,:,i,ii,iii)));
end
end
end
end


If someone could shed some light on the issue I would be very grateful

-
How long does a single iteration take? –  Jonas Oct 25 '12 at 19:21
are you opening your matlabpool? –  Rasman Oct 26 '12 at 3:00
@Jonas A single iteration (over variable i) on the serial version takes around 1.7 seconds. A single iteration on the parallel version does not complete in over 5 minutes at which point I have terminated the execution. –  Hampycalc Oct 26 '12 at 10:34
@Rasman Yes, I forgot to mention I am opening the matlabpool using the 'local' profile with 6 labs –  Hampycalc Oct 26 '12 at 10:35

Here is a re-written version of your code. I have split the work over the outer-most loop, not as in your case - the inner-most loop. I have also explicitly allocated local parts of the d result vector, and the local part of the Hessian matrix.

In your code you rely on drange to split the work, and you access the distributed arrays directly to avoid extracting the local part. Admittedly, it should not result in such a great slowdown if MATLAB did everything correctly. The bottom line is, I don't know why your code is so slow - most likely because MATLAB does some remote data accessing despite the fact that you distributed your matrices.

Anyway, the below code runs and gives pretty good speedup on my computer using 4 labs. I have generated synthetic random input data to have something to work on. Have a look at the comments. If something is unclear, I can elaborate later.

clear all;

D = rand(512, 512, 3);
S = size(D);

% this part could also be parallelized - at least a bit.
tic;
DHess = zeros([3 3 S(1) S(2) S(3)]);
toc

d = zeros([3, S(1) S(2) S(3)]);
disp('sequential')
tic
for i = 1 : S(1)
for ii = 1 : S(2)
for iii = 1 : S(3)
d(:,i,ii,iii) = eig(squeeze(DHess(:,:,i,ii,iii)));
end
end
end
toc

% my parallel implementation
disp('parallel')
tic
spmd
% just for information
disp(['lab ' num2str(labindex)]);

% distribute the input data along the third dimension
% This is the dimension of the outer-most loop, hence this is where we
% want to parallelize!
DHess_dist  = codistributed(DHess, codistributor1d(3));
DHess_local = getLocalPart(DHess_dist);

% create an output data distribution -
% note that this time we split along the second dimension
codist = codistributor1d(2, codistributor1d.unsetPartition, [3, S(1) S(2) S(3)]);
localSize = [3 codist.Partition(labindex) S(2) S(3)];

% allocate local part of the output array d
d_local = zeros(localSize);

% your ordinary loop, BUT! the outermost loop is split amongst the
% threads explicitly, using local indexing. In the loop only local parts
% of matrix d and DHess are accessed
for i = 1:size(d_local,2)
for ii = 1 : S(2)
for iii = 1 : S(3)
d_local(:,i,ii,iii) = eig(squeeze(DHess_local(:,:,i,ii,iii)));
end
end
end

% assemble local results to a codistributed matrix
d_dist = codistributed.build(d_local, codist);
end
toc

isequal(d, d_dist)


And the output

Elapsed time is 0.364255 seconds.
sequential
Elapsed time is 33.498985 seconds.
parallel
Lab 1:
lab 1
Lab 2:
lab 2
Lab 3:
lab 3
Lab 4:
lab 4
Elapsed time is 9.445856 seconds.

ans =

1


Edit I have checked the performance on a reshaped matrix DHess=[3x3xN]. The performance is not much better (10%), so it is not substantial. But maybe you can implement the eig a bit differently? After all, those are 3x3 matrices you are dealing with.

-
It's great that you have taken the time to provide this example as I will be able to use these ideas with many future projects. A couple of questions: I used 'drange' in my code, what is the purpose of this if you have to use 'getLocalPart'. Using your code I am getting an error: 'Error using distcompserialize Error during serialization' at the line DHess_dist = codistributed(DHess, codistributor1d(3)); The size of my input D is around 512x512x200, perhaps the size is an issue; although it seems it should not matter how big the array is, as this is a main purpose of parallel processing –  Hampycalc Oct 26 '12 at 14:42
I should also state that D is a double. –  Hampycalc Oct 26 '12 at 14:43
@Hampycalc I am sorry, I have obviously missed the fact that you used drange. I will edit my answer - you did divide your work after all. My bad. –  angainor Oct 26 '12 at 14:55
@Hampycalc I have tried the code for other dimensions and it does not complain. D in my code is also of type double, so no problem there. I do not use drange and extract the local parts of my matrices to explicitly operate only on local data. In your case you relied on MATLAB to do the work splitting, which apparently went rather bad. –  angainor Oct 26 '12 at 14:57
Yes, I will do as you have advised and extract local parts first in the future. I am still getting the error as before, but I shall search elsewhere for a solution as you have already answered my original question. Oddly I am using a x64 system with >50GB RAM and Matlab 2012a x64, so would be surprised if it is a memory issue. Anyway, thanks again for your help. –  Hampycalc Oct 26 '12 at 15:12
If you are using some other scheduler with the workers on a separate machine then you might be able to get speedup, but that depends on what you're doing. There's an example here http://www.mathworks.com/products/parallel-computing/examples.html?file=/products/demos/shipping/distcomp/paralleldemo_backslash_bench.html which shows some benchmarks of MATLAB's \ operator.