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This block of openMP Code is running fine but I need to ensure that there is no race condition. Therefore, I have made the j variable private.

By doing this, I don't think that any race condition should exist for the assignment operation in the most inner loop. Please correct me if I am wrong.

#pragma omp parallel for private(i,j,k) shared (result_buffer,trans_a,element_b)
for (i=0; i<N; i++)
result_buffer[i]=0; 
{   
    for (j = 0; j<(N/comm_size); j++)
    {               
            for(k=0; k<N; k++)
            result_buffer[k]=result_buffer[k]+trans_a[j*N+k]*element_b[j];
    }               
 } 
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Um... is the first { supposed to be before the result_buffer[i]=0;? –  Mysticial Dec 16 '11 at 1:10
    
no..it is inside the most outer 'For' loop. –  Manit Sidhu Dec 16 '11 at 1:17
    
If the first for-loop is an outer-loop, then please edit the question to show this. As it is right now, the the first loop is by itself and is the only thing being parallelized. –  Mysticial Dec 16 '11 at 1:20
    
Mystical: I know that only the first outer loop is parallelized as #pragma is put on the outermost "for" loop. I am interested to know whether this piece of code will result in race condition during the "assignment operation" carried out in the inner-most "For" loop with index "k". –  Manit Sidhu Dec 16 '11 at 4:27
    
result_buffer[k]=result_buffer[k]+trans_a[j*N+k]*element_b[j]; –  Manit Sidhu Dec 16 '11 at 4:28

1 Answer 1

up vote 2 down vote accepted

Well, one problem right now is that your "outer-loop" isn't an outer-loop because you don't have the {} in the right place.

So in that sense, no you don't have a race-condition because the pragma will only apply to this:

for (i=0; i<N; i++)
    result_buffer[i]=0;

and not the rest of the code. Your other two loops are not parallelized and therefore no race condition.


That aside, if you intended your code to be this:

for (i=0; i<N; i++)
    result_buffer[i]=0; 

#pragma omp parallel for private(i,j,k) shared (result_buffer,trans_a,element_b)
for (j = 0; j<(N/comm_size); j++)
{               
    for(k=0; k<N; k++)
        result_buffer[k]=result_buffer[k]+trans_a[j*N+k]*element_b[j];
}               

Then yes, you will have a race condition.

Your inner loop modifies the entire result_buffer array. All iterations of the outer-loop will also clash on the same dataset. So there will be a race condition.

As it stands right now, the only loop that that's parallelizable is the inner-most loop.

share|improve this answer
    
hey mystical..you just nailed it. –  Manit Sidhu Dec 16 '11 at 7:21
    
thank you very much :) –  Manit Sidhu Dec 16 '11 at 7:22

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