Reduction with OpenMP

I am trying to compute mean of a 2d matrix using openmp. This 2d matrix is actually an image.

I am doing the thread-wise division of data. For example, if I have N threads than I process Rows/N number of rows with thread0, and so on.

My question is can I use the openmp reduction clause with "#pragma omp parallel"? Something like

``````#pragma omp parallel reduction( + : sum )
{
bla bla code
sum = sum + val;

else if( thread == 1 )
bla bla code
sum = sum + val;
}
``````
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Yes, you can. You can also use OpenMP worksharing constructs like for to distribute loop iterations among the threads in the team:

``````#pragma omp parallel for reduction(+:sum)
for (row = 0; row < Rows; row++)
{
bla bla code
sum += val;
}
``````

Note that reduction variables are private and their intermediate values (i.e. the value they hold before the end of the `parallel` region) are only partial and not very useful. For example the following serial loop cannot be (easily?) transformed to a reduction operation:

``````for (row = 0; row < Rows; row++)
{
bla bla code
sum += val;
if (sum > threshold)
}
``````

(there is also a possible data dependence between the later iterations and the earlier iterations in this case, which might call for ordered execution, but lets pretend that `yada yada code` does not influence next iterations)

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If he calls ordered with that kind o distribution he loose most of the parallelism. –  dreamcrash Nov 8 '12 at 16:25
@dreamcrash, if implemented correctly, ordered execution might not kill most of the parallelism - see this answer. –  Hristo Iliev Nov 8 '12 at 16:31
Exactly, we must not use the static for with the default chunk size. –  dreamcrash Nov 8 '12 at 16:40
In the second case if instead of a reduction on a sum, e.g with `reduction(+:...`, it was to find the minimum or maximum, e.g with `reduction(min:...`, one could do it manually using double-checked locking and it work work fine. –  Z boson May 8 '14 at 7:06

In your case, the `sum = sum + val` could interpreted as `val[i] = val[i-1] + val[i]` in 1-d array (or `val[rows][cols] = val[rows][cols-1] + val[rows][cols]` in 2-d array) which is a prefix sum calculation.

Reduction is one of solution for prefix sum, you can use reduction to any commutative-associative operators like '+', '-', '*', '/'.

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