# Implementing a parallel algorithm to compute pi

I would like to implement a parallel version of the code below using threads in OpenMP,is there any better way to do this?

``````/* Program to compute Pi using Monte Carlo methods */

#include <stdlib.h>
#include <stdio.h>
#include <math.h>
#include <string.h>
#include <time.h>
#define SEED 35791246

int main(int argc, char* argv)
{
int niter=0;
double x,y;
int i,count=0; /* # of points in the 1st quadrant of unit circle */
double z;
double pi;
clock_t end_time, start_time;

printf("Enter the number of iterations used to estimate pi: ");
scanf("%d",&niter);

start_time = clock();
/* initialize random numbers */
srand(SEED);
count=0;

#pragma omp parallel for
for ( i=0; i<niter; i++) {
x = (double)rand()/RAND_MAX;
y = (double)rand()/RAND_MAX;
z = x*x+y*y;
if (z<=1) count++;
}
pi=(double)count/niter*4;
#pragma omp barrier

end_time = clock();

printf("# of trials= %d , estimate of pi is %g, time= %f \n",niter,pi, difftime(end_time, start_time));

return 0;
}
``````
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It could be improved by correcting some OpenMP bugs. First, since you're summing up (copies of) `count` in all of the parallel threads, you need to apply a reduction operator at the end of the parallel segment to combine all of those back into a single value. Also, the variables `i`, `x`, `y`, and `z` need to have individual instances for each parallel thread -- you don't want the threads using the same one! To specify all of that, your `#pragma` directive at the top of the loop should be:

``````#pragma omp parallel for private(i, x, y, z) reduction(+:count)
``````

Also, the scope of that is the `for` loop, so you don't need to do anything else; there will automatically be a synchronization of the threads after the loop exits. (And you need that synchronization to get `count` to contain all the increments from all threads!) In particular, your `task` and `barrier` pragmas are meaningless, as at that point you are back to just one thread -- and, besides, there's no point in putting that single computation in a parallel task.

And there's the issue that gabe raised about the likely slowness and/or poor randomness of the system random number generator in these cases. You will probably want to investigate the particulars of that on your system, and give it a new random seed in each thread or use a different random-number generator depending on what you find.

Besides that, it looks fairly reasonable. Not much else you can do to that algorithm, as it's short and trivially parallelizable.

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It all makes sense to me now.Am still learning how to parallelise computation using OpenMP.From what Brooks suggested,i did specify #pragma omp parallel for private(i, x, y, z) reduction(+:count) at the top of the loop and run the program again.It still took a longer time to do the computation compared to the serial algorithm.This then takes me to the issue raised by gabe of rand function not being thread friendly.How do i assign a new random seed in each thread or use a different random-number generator in my code to improve performance of the algorithm? –  kayn Mar 2 '10 at 11:04
The `rand` function is not a good idea to use here. Either it is not threadsafe and you will have threads getting duplicate values (not very random), or it will have a lock and the MP version will be slower than the single-thread version.
`rand` requires a reproducible internal value to be kept. That is pretty much by design and makes it inherently locked or thread unsafe. Additionally in traditional UNIX and BSD systems it uses a very bad pseudo-random number generator. Reading from good PRNGs or RNGs limits speed again with at least kernel locks for file I/O. This is a case where re-inventing the wheel or using 3rd party code might actually be better than using standard library functions. –  jbcreix Mar 3 '10 at 15:04