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I have to parallelize the following code, the data dependence is i -> i-3

 for(i=3; i<N2; i++)
        for(j=0; j<N3; j++)
          D[i][j] = D[i-3][j] / 3.0 + x + E[i];
          if (D[i][j] < 6.5) bat = bat + D[i][j]/100.0;

I tried with #pragma omp parallel for reduction(+:bat) private(i,j) shared(D,x,E) and similar things but it wasn't correct

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You already posted this question and then deleted it just as I was giving an answer. Do you plan to leave the question this time? You have a race condition in D[i][j]. –  user2088790 Jun 6 '13 at 14:58

1 Answer 1

up vote 0 down vote accepted

Let's consider two threads and why parallelizing the outer loop is failing.

Thread 1: i=3, j=0.  This reads D[0][0] and writes D[3][0]
Thread 2: i=6, j=0.  This reads D[3][0] and writes D[6][0]

So thread 2 reads D[3][0], the same value that thread 1 is writing. That's the race condition. I think if you parallelize the inner loop you won't have a problem.

for(i=3; i<N2; i++) {
    #pragma omp parallel for reduction(+:bat) private(j)        
    for(j=0; j<N3; j++) {
        D[i][j] = D[i-3][j] / 3.0 + x + E[i];
        if (D[i][j] < 6.5) bat = bat + D[i][j]/100.0;

Edit: I forgot to add the reduction and make j private. I fixed that now.

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works perfect!! –  user2154826 Jun 6 '13 at 18:04
I realized after the fact the main problem is probably not the race condition, though that is a problem, but that you have three independent dependency changes (D[3k][j] -> D[3k+3][j], D[3k+1][j] -> D[3k+4][j], and D[3k+2][j] -> D[3k+5][j]). You might be able to exploit that fact to increase the parallelism further. –  user2088790 Jun 7 '13 at 6:51
parallelizing by columns? the speedup is 2 with 32 cores, the acceleration factor isn't very good... –  user2154826 Jun 7 '13 at 17:40
I just mean it's additional information that may be helpful. –  user2088790 Jun 8 '13 at 9:31

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