13

I am trying to use OpenMP to add the numbers in an array. The following is my code:

  int* input = (int*) malloc (sizeof(int)*snum);
  int sum = 0;
  int i;
  for(i=0;i<snum;i++){
      input[i] = i+1;
  }
  #pragma omp parallel for schedule(static)
  for(i=0;i<snum;i++)
  {
      int* tmpsum = input+i;
 sum += *tmpsum;
  }

This does not produce the right result for sum. What's wrong?

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  • 2
    sum should be a reduction variable, reduction(+:sum) Nov 18, 2014 at 15:44

2 Answers 2

19

Your code currently has a race condition, which is why the result is incorrect. To illustrate why this is, let's use a simple example:

You are running on 2 threads and the array is int input[4] = {1, 2, 3, 4};. You initialize sum to 0 correctly and are ready to start the loop. In the first iteration of your loop, thread 0 and thread 1 read sum from memory as 0, and then add their respective element to sum, and write it back to memory. However, this means that thread 0 is trying to write sum = 1 to memory (the first element is 1, and sum = 0 + 1 = 1), while thread 1 is trying to write sum = 2 to memory (the second element is 2, and sum = 0 + 2 = 2). The end result of this code depends on which one of the threads finishes last, and therefore writes to memory last, which is a race condition. Not only that, but in this particular case, neither of the answers that the code could produce are correct! There are several ways to get around this; I'll detail three basic ones below:

#pragma omp critical:

In OpenMP, there is what is called a critical directive. This restricts the code so that only one thread can do something at a time. For example, your for-loop can be written:

#pragma omp parallel for schedule(static)
for(i = 0; i < snum; i++) {
    int *tmpsum = input + i;
#pragma omp critical
    sum += *tmpsum;
}

This eliminates the race condition as only one thread accesses and writes to sum at a time. However, the critical directive is very very bad for performance, and will likely kill a large portion (if not all) of the gains you get from using OpenMP in the first place.

#pragma omp atomic:

The atomic directive is very similar to the critical directive. The major difference is that, while the critical directive applies to anything that you would like to do one thread at a time, the atomic directive only applies to memory read/write operations. As all we are doing in this code example is reading and writing to sum, this directive will work perfectly:

#pragma omp parallel for schedule(static)
for(i = 0; i < snum; i++) {
    int *tmpsum = input + i;
#pragma omp atomic
    sum += *tmpsum;
}

The performance of atomic is generally significantly better than that of critical. However, it is still not the best option in your particular case.

reduction:

The method you should use, and the method that has already been suggested by others, is reduction. You can do this by changing the for-loop to:

#pragma omp parallel for schedule(static) reduction(+:sum)
for(i = 0; i < snum; i++) {
    int *tmpsum = input + i;
    sum += *tmpsum;
}

The reduction command tells OpenMP that, while the loop is running, you want each thread to keep track of its own sum variable, and add them all up at the end of the loop. This is the most efficient method as your entire loop now runs in parallel, with the only overhead being right at the end of the loop, when the sum values of each of the threads need to be added up.

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  • 1
    There are quite some places in your answer where you've used process while the correct word would be threads. You might want to correct this to prevent confusion. Nov 18, 2014 at 20:42
  • @HristoIliev: Righto. I'm writing an MPI code at the moment, so I've been thinking in terms of processes all day; hence the mixup. Fixed now, thanks.
    – wolfPack88
    Nov 18, 2014 at 20:52
  • thanks for you answer,and if the var-sum is a array,like this "int sum[2]".I used #pragma omp reduction(+:sum) and #pragma omp reduction(+:sum[0]) #pragma omp reduction(+:sum[1]),doesn't work! what can I do?
    – YOung
    Nov 19, 2014 at 8:59
  • @YOung: Don't make sum an array; in fact, keep the code before the loop exactly the same as it was before. NikolayKondratyev provides a working code sample in the other answer. To clarify: while I did say that each thread will keep track of its own sum variable, the compiler will take care of that for you with the reduction directive; you do not need to set up an array yourself. In fact, setting up an array yourself will confuse the compiler, and cause the code to produce incorrect results, as you've seen.
    – wolfPack88
    Nov 19, 2014 at 14:02
  • @wolfPack88 using "reduction" ,I got the right answer.but I try to use "critical" or "automic" to do this.I found the "reductioin" solution is almost twice as fast as others;How can I use phtread or openmp to get this performance
    – YOung
    Dec 8, 2014 at 15:25
3

Use reduction clause (description at MSDN).

int* input = (int*) malloc (sizeof(int)*snum);
int sum = 0;
int i;
for(i=0;i<snum;i++){
    input[i] = i+1;
}
#pragma omp parallel for schedule(static) reduction(+:sum)
for(i=0;i<snum;i++)
{
    sum += input[i];
}

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