I am trying to speed up a sparse matrix-vector product using open mp, the code is as follows:
void zAx(double * z, double * data, long * colind, long * row_ptr, double * x, int M){
long i, j, ckey;
int chunk = 1000;
//int * counts[8]={0};
#pragma omp parallel num_threads(8)
{
#pragma omp for private(ckey,j,i) schedule(static,chunk)
for (i=0; i<M; i++ ){
z[i]=0;
for (ckey=row_ptr[i]; ckey<row_ptr[i+1]; ckey++) {
j = colind[ckey];
z[i] += data[ckey]*x[j];
}
}
}
}
Now, this code runs fine, and produces the correct result, it however only gives me a speed up of ~30%. I have checked to see that the threads are all getting about the same number of non-zero elements (they are), and the matrix is fairly large (300,000 x 300,000), so I'm hoping the overhead isn't the only issue. I've also tried running with different chunk sizes and thread numbers, and I get similar performance.
Is there something else I could try to get a bit of extra speed out of this? Or something I'm obviously doing wrong?
Cheers.
Edit: Just commented out '//int * counts[8]={0}', because it was leftover from counting the work allocation. Not needed
Edit2 (more details):
Okay so I timed a loop of calling this 5000 times and got the average times:
- seq: 0.0036 (seconds?)
- 2 threads: 0.002613
- 4 threads: 0.002308
- 8 threads: 0.002384
The matrix is of size: 303544x303544 and has: 2122980 non-zero elements.
With a much smaller matrix 30000x30000 I get times that go more like
- seq 0.000303
- 8 threads 0.000078
So it seems the large size may be my issue.