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I have asked a similar question before ,but I have not obtained enough attention to my problem due to the complexity of it , so let me rephrase the whole problem .

moveT ChooseComputerMove(state)
{
 moveT bestMove;
 maxMove(state,bestMove);

 return bestMove;
}

int maxMove(state, bestMove)
{

  int v = -1000;

  #pragma omp parallel for 
  for(int i = 0; i< nMoves; i++)
  {

   moveT move = validMoves[i];

   makemove(state,move);

   #pragma omp task 

   rating = -maxMove(state, move);

    if(rating < v)
      {v=rating ; bestMove = move;}

    #pragma omp taskwait   

    Retractmove(state,move)
 }

 return v;
}

Is my code semantically correct ; I already have tested it in my code , and it gives me segmentation fault;

Update : Sorry for the spelling mistakes and I have edited my code .

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This isn't C, C has no references. –  Jens Gustedt Dec 29 '12 at 9:12
    
b isn't even declared in the snippet you are showing us. Sure that you'd have at least to declare it locally. And I don't really understand what you are trying to achieve. You call it "semantically correct" but you don't give us a hint on the semantics that it should follow. –  Jens Gustedt Dec 29 '12 at 9:16
    
@JensGustedt: I am trying to parallelize a simple minmax algorithm . The whole code is given here <ideone.com/KZ4LrO>; . I want to parallelize the portion where the computer chooses to give the move . Should I use a #pragma omp criticial and enclose the region from move=moveList[i] to RetractMove(state, move ) or use the normal #pragma omp task and #pragma omp taskwait as shown in the code . I am new to omp so , please , bear with me. –  motiur Dec 29 '12 at 11:22

2 Answers 2

up vote 4 down vote accepted

Consider this a comment. Your explicit task region is incorrectly written and besides that it is also redundant. You spawn only one explicit task in each iteration and then wait for it to finish with the taskwait. But since task execution may be deferred, the task itself might execute after the line with the comparison operator. E.g.

#pragma omp task
rating = -maxMove(state, move); // <-- This stmt is the body of the task

if(rating < v)
  {v=rating ; bestMove = move;}

#pragma omp taskwait

The body of the task is the next block that follows the task pragma.

The actual execution flow might be:

  • The task is created but queued.
  • The if(rating < v) .... statement is executed.
  • The taskwait construct is hit which blocks execution until all tasks are processed. This initiates the execution of the task.
  • The new rating is computed but the value of v is never updated since the if statement was already executed.

You would rather want to put both statements in a task construct and also remove the taskwait since it is implied at the end of the parallel region. Since makemove modifies the state vector, you might want to employ the single task producer pattern:

#pragma omp parallel
{
   #pragma omp single nowait
   for(int i = 0; i < nMoves; i++)
   {
      moveT move = validMoves[i], opponentsBestMove;

      makemove(state, move);

      #pragma omp task firstprivate(state)
      {
         // Declare rating here
         int rating = -maxMove(state, opponentsBestMove);

         #pragma omp critical
         if (rating > v) { v = rating; bestMove = move; }
      }

      Retractmove(state, move)
   }

   // An implicit taskwait here
}

The task producer loop is run in serial in one thread only (because of the single directive). Then at the end of the parallel region there is an implicit task scheduling point, hence the other threads start executing the queued tasks. The state is shared by default and has to be made firstprivate in order for the task to inherit a private version, otherwise all tasks would modify the same global state variable at the same time which would lead to problems. The privatisation of state would result in much higher memory usage, hence it is not a good idea to allow tasking up to the bottom of the recursion tree. Rather you should stop generating tasks at a certain level and continue with serial execution. This would also reduce the overhead induced by the explicit tasking.

Another thing to notice - unless special measures are taken, only the top-level call would run in parallel. All other recursive calls would result in nested parallel regions and nested parallelism is disabled by default, which means that deeper recursion levels would automatically execute serially. To enable nested parallelism, either set the environment value OMP_NESTED to true or put the following call somewhere in the beginning of the program:

#include <omp.h>

...
omp_set_nested(1);
...
// Now call the recursive function
...

Beware that this might result in a huge number of concurrent threads.

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Hi, I am running Intel Parallel Studio compiler icpc on Ubuntu ,linux and I got this error ; OMP: Error #178: Function pthread_create failed: OMP: System error #1: Operation not permitted Aborted (core dumped) . If you have can you view my code where I implemented the AI portion ; MinMax(state,bestMove) at : [ideone.com/KZ4LrO ] –  motiur Dec 29 '12 at 16:59
    
@MotiurRahman, sorry, I run Mac OS X and I don't have access to Intel tools. I have access at my workplace though but now I am on vacation. pthread_create might fail if the stack size is too high or if you hit the number of processes limit. Check these limits with ulimit -a in the shell. –  Hristo Iliev Dec 29 '12 at 19:20
    
@HristoIlliev : Yes, it seems that my computer has a problem allocating so many threads . Is there a process ,(now I am a complete novice in OpenMP) , by which I can destroy threads ,after the function maxMove(state,move) has returned the relevant value . –  motiur Dec 30 '12 at 6:11
    
@HristoIlliev: Sorry for disturbing you again . What do I think should I do to my minmax algorithm ( I am trying to parallelize minmax algorithm of tictactoe ) , to utilize the multiple core in my computer . My serial minmax is fine . –  motiur Dec 30 '12 at 6:33
    
Just run without nested parallelism. Thus the first level would run in parallel. Further levels would be serial but will still run in parallel as descendants of the parallel first level. –  Hristo Iliev Dec 30 '12 at 7:28

What you are trying to achieve here is to make a parallel recursion call. This can cause you lots of problems.

Assume you have 8 physical threads. As nMoves in your case does not exceed 8, that would be perfectly fine to run function MaxMove with different arguments in 8 parallel threads. However, in each of these calls you are trying to create another nMoves-1 threads, so complexity of parallel threads you create is exponentional. You won't gain extra performance from running every function call in parallel as the number of physical threads is finite, so eventually all threads will be busy. Also an overhead cost on creating each thread can be too high comparing with amount of calculations you do inside function call.

I'd remove inner #pragma omp task and #pragma omp taskwait annotations and leave this code serial inside already created threads.

Your code runs for me and I don't get segmentation fault, but I would assume that this is caused by your approach to parallelization.

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My serial code is fine : my question is whether I can parallelize my serial code; and how can I do it ? I ran my code using Intel Parallel Studio and under the current condition is crashes . If I remove #pragma omp task and #pragma omp taskwait ; the code runs ok ; but I do not get the perfect AI that I would get with my serial code . There is an implementation of parallel minmax algorithm here using cilk from MIT ; its done in cilk which is not supported by current Intel Parallel Studio . <supertech.csail.mit.edu/cilk/lecture-3.pdf>; ; hence I choose to do it using openmp . –  motiur Dec 29 '12 at 12:20
    
For your code I would suggest something like this. When you need to make a parallel min-max search you create a separate thread for each search path. Within every path you run strictly serial code. The similar description of parallel algorithm for tic-tac-toe game can be found here. –  Pavel Zaichenkov Dec 29 '12 at 16:09

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