Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I am trying to parallelize the following program, but don't know how to reduce on an array. I know it is not possible to do so, but is there an alternative? Thanks.(I added reduction on m which is wrong but would like to have an advice on how to do it.)

#include <iostream>
#include <stdio.h>
#include <time.h>
#include <omp.h>
using namespace std;

int A [] = {84, 30, 95, 94, 36, 73, 52, 23, 2, 13};
int S [10];
int n,m=0;
time_t start_time, end_time;

int main ()
{
start_time = time(NULL);
#pragma omp parallel for private (m)reduction(+:m)
for ( n=0 ; n<10 ; ++n )
{
    for (m=0; m<=n; ++m){
    S[n] += A[m];
    }
}
end_time = time(NULL);
cout << end_time-start_time;
}
share|improve this question

3 Answers 3

up vote 11 down vote accepted

Yes it is possible to do an array reduction with with OpenMP. In Fortran it even has construct for this. In C/C++ you have to do it yourself. Here are two ways to do it.

The first method makes private version of S for each thread, fill them in parallel, and then merges them into S in a critical section (see the code below). The second method makes an array with dimentions 10*nthreads. Fills this array in parallel and then merges it into S without using a critical section. The second method is much more complicated and can have cache issues especially on multi-socket systems if you are not careful. For more details see this Fill histograms (array reduction) in parallel with OpenMP without using a critical section

First method

int A [] = {84, 30, 95, 94, 36, 73, 52, 23, 2, 13};
int S [10] = {0};
#pragma omp parallel
{
    int S_private[10] = {0};
    #pragma omp for
    for (int n=0 ; n<10 ; ++n ) {
        for (int m=0; m<=n; ++m){
            S_private[n] += A[m];
        }
    }
    #pragma omp critical
    {
        for(int n=0; n<10; ++n) {
            S[n] += S_private[n];
        }
    }
}

Second method

int A [] = {84, 30, 95, 94, 36, 73, 52, 23, 2, 13};
int S [10] = {0};
int *S_private;
#pragma omp parallel
{
    const int nthreads = omp_get_num_threads();
    const int ithread = omp_get_thread_num();

    #pragma omp single 
    {
        S_private = new int[10*nthreads];
        for(int i=0; i<(10*nthreads); i++) S_private[i] = 0;
    }
    #pragma omp for
    for (int n=0 ; n<10 ; ++n )
    {
        for (int m=0; m<=n; ++m){
            S_private[ithread*10+n] += A[m];
        }
    }
    #pragma omp for
    for(int i=0; i<10; i++) {
        for(int t=0; t<nthreads; t++) {
            S[i] += S_private[10*t + i];
        }
    }
}
delete[] S_private;
share|improve this answer
1  
This is a much better answer than mine. –  High Performance Mark Dec 6 '13 at 10:14

I have two remarks concerning Zboson's answer:
1. Method 1 is certainly correct but the reduction loop is actually run serially, because of the #pragma omp critical which is of course necessary as the partial matrices are local to each thread and the corresponding reduction has to be done by the thread owing the matrix.
2. Method 2: The initialization loop can be moved outside the single section and therefore become parallelizable.

The following program implements array reduction using openMP v4.0 user defined reduction facility:

/* Compile with:
     gcc -Wall -fopenmp -o ar ar.c
   Run with:
     OMP_DISPLAY_ENV=TRUE OMP_NUM_THREADS=10 OMP_NESTED=TRUE ./ar
*/
#include <stdio.h>
#include <omp.h>
struct m10x1 {int v[10];};
int A [] =       {84, 30, 95, 94, 36, 73, 52, 23, 2, 13};  
struct m10x1 S = {{ 0,  0,  0,  0,  0,  0,  0,  0, 0,  0}};
int n,m=0;

void print_m10x1(struct m10x1 x){
  int i;
  for(i=0;i<10;i++) printf("%d ",x.v[i]);
  printf("\n");
}

struct m10x1 add_m10x1(struct m10x1 x,struct m10x1 y){
  struct m10x1 r ={{ 0,  0,  0,  0,  0,  0,  0,  0, 0,  0}};
  int i;
  for (i=0;i<10;i++) r.v[i]=x.v[i]+y.v[i];
  return r;
}

#pragma omp declare reduction(m10x1Add: struct m10x1: \
omp_out=add_m10x1(omp_out, omp_in)) initializer( \
omp_priv={{ 0,  0,  0,  0,  0,  0,  0,  0, 0,  0}} )

int main ()
{
  #pragma omp parallel for reduction(m10x1Add: S)
  for ( n=0 ; n<10 ; ++n )
    {
      for (m=0; m<=n; ++m){
        S.v[n] += A[m];
      }
    }
  print_m10x1(S);
}

This follows verbatim the complex number reduction example on page 97 of OpenMP 4.0 features.

Although the parallel version works correctly, there probably are performance issues, which I have not investigated:

  1. add_m10x1 inputs and output are passed by value.
  2. The loop in add_m10x1 is run serially.

Said "performance issues" are of my own making and it is completely straightforward not to introduce them:

  1. Parameters to add_m10x1 should be passed by reference (via pointers in C, references in C++)
  2. The computation in add_m10x1 should be done in place.
  3. add_m10x1 should be declared void and the return statement deleted. The result is returned via the first parameter.
  4. The declare reduction pragma should be accordingly modified, the combiner should be just a function call and not an assignment (v4.0 specs p181 lines 9,10).
  5. The for loop in add_m10x1 can be parallelized via an omp parallel for pragma
  6. Parallel nesting should be enabled (e.g. via OMP_NESTED=TRUE)

The modified part of the code then is:

void add_m10x1(struct m10x1 * x,struct m10x1 * y){
  int i;
  #pragma omp parallel for
  for (i=0;i<10;i++) x->v[i] += y->v[i];
}

#pragma omp declare reduction(m10x1Add: struct m10x1: \
add_m10x1(&omp_out, &omp_in)) initializer( \
omp_priv={{ 0,  0,  0,  0,  0,  0,  0,  0, 0,  0}} )
share|improve this answer
    
I just saw your answer. Good work, I'm glad to see you added something using custom reductions. As to your comments the fact that the merging is done with a critical section in t he first method is probably not a problem since the number of items you fill N is likely much larger then the number of bins*threads. And you're right about the initialization of the second method can be moved out. But that's rather trivial. I should have used S_private = new int[10*nthreads]() or used memset in parallel. –  Z boson Apr 17 at 8:45
    
I also saw your comment only today May 15 2015. I thank you, what I said should actually be comments to your answer, I just didn't have the right to comment at the time. –  user2422503 May 9 at 13:41

If translating your code to Fortran, which can use arrays in OpenMP reduction operations, doesn't appeal, you could use a bunch of temporary variables. For example

int S0, S1, S2, ..., S9;
...
#pragma omp parallel for private(...) shared(S0, S1, S2, ..., S9) \
            reduction(+:S0, S1, S2, ..., S9)
for ...

This leaves you with the unappealing prospect of having to write some kind of if or case statement to determine which of the temporaries is to be updated. If your code is just an example you want to use for learning, carry on.

But if your intention is genuinely to write a parallel prefix sum routine then search around. This is a good place to start.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.