Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Is it possible to parallelize std::inner_product() from C++ with omp.h library? Unfortunately I can't use __gnu_parallel::inner_product() available in newer versions of gcc. I know that I can implement my own inner_product and parallelize it, but I would like to use standard means.

share|improve this question
1  
You can run two or more concurrent inner products with OpenMP :) –  Hristo Iliev Dec 7 '12 at 14:15

2 Answers 2

up vote 2 down vote accepted

Short answer: no.

The whole point of algorithms like inner_product is that they abstract the loop away from you. But in order to parallelise the algorithm you need to parallelise that loop – either via #pragma omp parallel for or via parallel sections. Both methods are inherently linked to the loop in the code structure so even if the loop were trivially parallelisable (which it might well be), you need to put the OpenMP pragmas inside the function to apply parallelism to it.

share|improve this answer

Following up on Hristo's comment, you can kind of do this by decomposing the arrays over threads, calling inner_product on each subarray, and then using some sort of reduction operation to combine the sub-results

#include <iostream>
#include <numeric>
#include <omp.h>

#include <sys/time.h>
void tick(struct timeval *t);
double tock(struct timeval *t);

int main (int argc, char **argv) {
  const long int nelements=1000000;
  long int *a = new long int[nelements];
  long int *b = new long int[nelements];
  int nthreads;
  long int sum = 0;
  struct timeval t;
  double time;

  #pragma omp parallel for
  for (long int i=0; i<nelements; i++) {
        a[i] = i+1;
        b[i] = 1;
  }

  tick(&t);
  #pragma omp parallel 
  #pragma omp single
  nthreads = omp_get_num_threads();

  #pragma omp parallel default(none) reduction(+:sum) shared(a,b,nthreads) 
  {
       int tid = omp_get_thread_num();
       int nitems = nelements/nthreads;
       int start = tid*nitems;
       int end   = start + nitems;
       if (tid == nthreads-1) end = nelements;

       sum += std::inner_product( &(a[start]), a+end, &(b[start]), 0L);
  }
  time = tock(&t);

  std::cout << "using omp: sum = " << sum << " time = " << time << std::endl;

  delete [] a;
  delete [] b;



  a = new long int[nelements];
  b = new long int[nelements];
  sum = 0;

  for (long int i=0; i<nelements; i++) {
        a[i] = i+1;
        b[i] = 1;
  }
  tick(&t);
  sum = std::inner_product( a, a+nelements, b, 0L);
  time = tock(&t);

  std::cout << "single threaded: sum = " << sum << " time = " << time << std::endl;

  std::cout << "correct answer: sum = " << (nelements)*(nelements+1)/2 << std::endl ;

  delete [] a;
  delete [] b;

  return 0;
}

void tick(struct timeval *t) {
    gettimeofday(t, NULL);
}

/* returns time in seconds from now to time described by t */
double tock(struct timeval *t) {
    struct timeval now;
    gettimeofday(&now, NULL);
    return (double)(now.tv_sec - t->tv_sec) + ((double)(now.tv_usec - t->tv_usec)/1000000.);
}

Running this gets better speedup than I would have expected:

$ for NT in 1 2 4 8; do export OMP_NUM_THREADS=${NT}; echo; echo "NTHREADS=${NT}";./inner; done

NTHREADS=1
using omp: sum = 500000500000 time = 0.004675
single threaded: sum = 500000500000 time = 0.004765
correct answer: sum = 500000500000

NTHREADS=2
using omp: sum = 500000500000 time = 0.002317
single threaded: sum = 500000500000 time = 0.004773
correct answer: sum = 500000500000

NTHREADS=4
using omp: sum = 500000500000 time = 0.001205
single threaded: sum = 500000500000 time = 0.004758
correct answer: sum = 500000500000

NTHREADS=8
using omp: sum = 500000500000 time = 0.000617
single threaded: sum = 500000500000 time = 0.004784
correct answer: sum = 500000500000
share|improve this answer
    
...but of course you can write calls to inner_product that don't have the property that they decompose nicely like this. –  Jonathan Dursi Dec 7 '12 at 15:00
    
You can use omp_get_max_threads() instead of this trick with omp_get_num_threads in a single construct, because you might run into the nice OpenMP feature of dynamic teams (given the proper environment) and get 1. –  Hristo Iliev Dec 7 '12 at 16:27

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.