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# Using parfor to parallelize a nested loop for computation of a symmetric distance matrix

I am trying to compute the pairwise distances between two struct objects. This distance is symmetric. I have about N = 8000, such objects in an array.

So I need to compute N * (N+1)/2 distances only. How can I parallelize this computation, since each computation is independent ?

Here my objects are stored in Array X and I want to store the distances in Array A which is of size N*(N+1)/2. BDHMM() is a function which returns the distance between two objects.

I have tried the following Matlab Code.

``````N = 8000;
size = N*(N+1)/2;
A = zeros(size,1);

matlabpool open local 4
parfor i = 1:N-1
i
T = [];
for j = i:N
if(j == i)
temp = 0;
else
temp = BDHMM(X(i),X(j));
end
T = [T; temp];
end

beg = size - (N + 1 - i)*(N + 2 - i)/2 + 1;
l = length(T);
A(beg:beg+l-1, 1) = T;
end
matlabpool close
``````

I am getting the following error:

``````Error: The variable A in a parfor cannot be classified.
``````

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You might want to read the section of the doc on classification of variables, in particular the bit about sliced variables: mathworks.co.uk/help/distcomp/advanced-topics.html#bq_tcng-1 – am304 Sep 12 '13 at 13:28
This is happening probably because the calculation of the variable `beg` is happening inside of this loop, so because of this you may end up having overlapping ranges in the different loops, causing a bad issue. – MZimmerman6 Sep 12 '13 at 13:29
– am304 Sep 12 '13 at 13:38

You cannot assassin to indexes you calculate withing the parfor, Matlab needs to know in advance what sections of the matrix will be assassin by witch iteration. this makes sense if you think about it.

this should solve it:

``````N = 800;
size = N*(N+1)/2;
A = cell(N,1);
matlabpool open local 4
parfor i = 1:N-1
i
T = zeros(N-i+1,1);
for j = i:N
if(j == i)
T(j-i+1) = 0;
else
T(j-i+1) = BDHMM(X(i),X(j));
end
end

A{i, 1} = T;
end

matlabpool close
B=vertcat(A{:})
``````
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