16

Considering :

    void saxpy_worksharing(float* x, float* y, float a, int N) {
      #pragma omp parallel for
      for (int i = 0; i < N; i++) {
         y[i] = y[i]+a*x[i];
      }
    }

And

    void saxpy_tasks(float* x, float* y, float a, int N) {
      #pragma omp parallel
      {
         for (int i = 0; i < N; i++) {
         #pragma omp task
         {
           y[i] = y[i]+a*x[i];
         }
      }
   }

What is the difference using tasks and the omp parallel directive ? Why can we write recursive algorithms such as merge sort with tasks, but not with worksharing ?

1 Answer 1

30

I would suggest that you have a look at the OpenMP tutorial from Lawrence Livermore National Laboratory, available here.

Your particular example is one that should not be implemented using OpenMP tasks. The second code creates N times the number of threads tasks (because there is an error in the code beside the missing }; I would come back to it later), and each task is only performing a very simple computation. The overhead of tasks would be gigantic, as you can see in my answer to this question. Besides the second code is conceptually wrong. Since there is no worksharing directive, all threads would execute all iterations of the loop and instead of N tasks, N times the number of threads tasks would get created. It should be rewritten in one of the following ways:

Single task producer - common pattern, NUMA unfriendly:

void saxpy_tasks(float* x, float* y, float a, int N) {
   #pragma omp parallel
   {
      #pragma omp single
      {
         for (int i = 0; i < N; i++)
            #pragma omp task
            {
               y[i] = y[i]+a*x[i];
            }
      }
   }
}

The single directive would make the loop run inside a single thread only. All other threads would skip it and hit the implicit barrier at the end of the single construct. As barriers contain implicit task scheduling points, the waiting threads will start processing tasks immediately as they become available.

Parallel task producer - more NUMA friendly:

void saxpy_tasks(float* x, float* y, float a, int N) {
   #pragma omp parallel
   {
      #pragma omp for
      for (int i = 0; i < N; i++)
         #pragma omp task
         {
            y[i] = y[i]+a*x[i];
         }
   }
}

In this case the task creation loop would be shared among the threads.

If you do not know what NUMA is, ignore the comments about NUMA friendliness.

11
  • +1, Did not understand the -1, you must have encounter an hater.
    – dreamcrash
    Commented Feb 13, 2013 at 22:34
  • 1
    Neither do I, but that's what the real world delivers - haters, trolls, etc. :) Commented Feb 14, 2013 at 10:14
  • 1
    @ManuelSelva, back then, when I wrote this particular answer, I still hadn't realised that the implicit barrier at the end of the single construct is also a task scheduling point. The case with nowait could allow the rest of the threads to do something else while the task producer thread is still producing tasks. Commented Apr 5, 2016 at 10:54
  • 1
    @zeawoas developments in modern architectures tend to decrease the difference between local and remote memory, but in general NUMA-aware code works faster. Commented Dec 7, 2019 at 11:52
  • 1
    @AliTou The tutorial has moved to a new location. I've updated the link. Commented Dec 8, 2022 at 11:51

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