# Matlab parallel computing

I am dealing with a very huge matrix and so wanted to use parallel computing in Matlab to run in clusters. Here I have created a sparse matrix using

I have a written function "adj" using which I can fill the matrix `Ad`. Everytime the loop runs ,from the function "adj" I get a square symmetric matrix which is to be assigned to the `Ad` from `3682*(i-1)+1` to `3682 *(i-1)+3682` in the first index and similarly in the second index . This is shown here

parfor i=1:length(con)

end

In normal for loop it is running without any problem. But in `parfor` in parallel computing I am getting an error that there is a problem in using the sliced arrays with `parfor`.

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Outputs from PARFOR loops must either be reduction variables (e.g. calculating a summation) or "sliced". See this page in the doc for more.

In your case, you're trying to form a "sliced" output, but your indexing expression is too complicated for PARFOR. In a PARFOR, a sliced output must be indexed by: the loop variable for one subscript, and by some constant expression for the other subscripts. The constant expression must be either `:`, `end` or a literal scalar. The following example shows several sliced outputs:

``````x3 = zeros(4, 10, 3);
parfor ii = 1:10
x1(ii) = rand;
x2(ii,:) = rand(1,10);
x3(:,ii,end) = rand(4,1);
x4{ii} = rand(ii);
end
``````

In your case, your indexing expression into Ad is too complicated for PARFOR to handle. Probably the simplest thing you can do is return the calculations as a cell array, and then inject them into `Ad` on the host side using a regular FOR loop, like so:

``````parfor i = 1:length(con)
tmpout{i} = ....;
end
for i = 1:length(con)
end
``````
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this seems very useful...Thank you so much .I will be trying this immediately and will post if any further problems. – sushma Mar 25 '11 at 6:16

Edric has already explained why you're getting an error, but I wanted to make another suggestion for a solution. The matrix `Ad` you are creating is made up of a series of 3682-by-3682 blocks along the main diagonal, with zeroes everywhere else. One solution is to first create your blocks in a PARFOR loop, storing them in a cell array. Then you can combine them all into one matrix with a call to the function BLKDIAG:

``````cellArray = cell(1,length(con));  %# Preallocate the cell array
parfor i = 1:length(con)
cellArray{i} = sparse(adj(a,b,uni_core));  %# Compute matrices in parallel
end
The resulting matrix `Ad` will be sparse because each block was converted to a sparse matrix before being placed in the cell array.