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I have this piece of code. I am trying to apply OpenMP, __gnu_parallel::for_each as well to make it parallel, but none of the methods are working.

What should I do? Here make is a vector of sets and the type contained in the set is OctCell*.

The algorithm gives the correct output, but does not speed up the code. I have 4 cores.

void Oct :: applyFunction3(void (*Function)(OctCell* cell), unsigned int level)
{
    __gnu_parallel::for_each(make.at(level).begin(),make.at(level).end(),Function);
}

The Function is

void directionalSweepX(OctCell* cell) {
OctCell* positiveCell,*negativeCell;
     positiveCell = cell->getNeighbour(RIGHT);
   negativeCell = cell->getNeighbour(LEFT);
    addFluxToConserveds(cell, positiveCell, negativeCell, X);
}

The addFluxtoConserveds does the following

void addFluxToConserveds(OctCell* cell, OctCell* positiveCell, OctCell* negativeCell, SWEEP_DIRECTION direction) {

    double deltaT = pow(2.0, cell->getLevel() - cell->getParentOct()->lMin)*gDeltaT;
    // You have corrected that delta t is delta (L)
    double alpha = (1 << (int) cell->getParentOct()->lMin) * gDeltaT/gL;// whats the purpose f <<

    double beta = alpha/8.0;
    double gamma;
    double Flux[5] = {0.0, 0.0, 0.0, 0.0, 0.0};

    if ( positiveCell == 0) {
        Flux[direction+1] = getPressure(cell);
    } else if ( positiveCell->isLeaf() ) {
        computeFlux(cell, positiveCell, direction, Flux);
        gamma = (positiveCell->getLevel() == cell->getLevel())  ? alpha : beta;
    }

    for (int i=0; i<5; i++) {
        cell->mConserveds_n[i] -= alpha * Flux[i];
        if (positiveCell) positiveCell->mConserveds_n[i] += gamma * Flux[i];
    }

    Flux[0] = Flux[1] = Flux[2] = Flux[3] = Flux[4] = 0.0;

    if ( negativeCell == 0 ) {
        Flux[direction+1] = getPressure(cell);
    } else if (negativeCell->isLeaf() && negativeCell->getLevel() == cell->getLevel() - 1 ) {
        computeFlux(negativeCell, cell, direction, Flux);
    }

    for (int i=0; i<5; i++) {
        cell->mConserveds_n[i] += alpha * Flux[i];
        if (negativeCell) negativeCell->mConserveds_n[i] -= beta * Flux[i];
   }

}
share|improve this question
2  
What does the function do? – David Schwartz Jul 6 '12 at 7:23
    
The function operates on an octcell, given its pointer. – Aakash Anuj Jul 6 '12 at 7:24
    
Right, but what does it do? (It may just not be an operation that parallelizes very well.) – David Schwartz Jul 6 '12 at 7:25
    
void directionalSweepX(OctCell* cell) { OctCell* positiveCell,*negativeCell; positiveCell = cell->getNeighbour(RIGHT); negativeCell = cell->getNeighbour(LEFT); addFluxToConserveds(cell, positiveCell, negativeCell, X); } – Aakash Anuj Jul 6 '12 at 7:29
    
How many OctCells are in your vector? if its very few, the overhead of distributing the tasks to threads is probably canceling out your parallel computation gain. – Necrolis Jul 6 '12 at 7:30
up vote 0 down vote accepted

use #include <omp.h>.

In the function addFluxtoConserveds you can add a #pragma omp for to the two for loops. This is because each iteration does not depend on the others to complete. Because you have a secquential code that important to the second for loop, you can't work with sections or tasks in here.

What is the sequential implementation of applyFunction3 ?

You have to remember one critical thing about OpenMP. A program compiled on an architecture does not become optimized for every other architecture, even in the same family of processors (intel core duo vs intel dual core; intel vs amd; etc.). This means it runs fast on the original architecture it was compiled and on the other ones it's just luck.

share|improve this answer
    
But the parallel thing is not working for the two loops....its not speeding up at all. – Aakash Anuj Jul 6 '12 at 7:54
    
What do i do now ? Can you give me your mail id? – Aakash Anuj Jul 6 '12 at 7:56
    
there are 5 iterations with simple operations in them. They will execute extremely fast which means in this case you should see if the the thread overhead is not worse then sequential for. But besides personal observation, how do you measure the speed of the algorithm ? (what is the code) – amb Jul 6 '12 at 7:56
    
Applying pragma to that portion is making the code even slower – Aakash Anuj Jul 6 '12 at 7:58
    
and again, what is the purpose of applyFunction3 and how is computeflux implemented ? – amb Jul 6 '12 at 7:58

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