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I am new about openmp. I am trying to parallelize do loop in subroutine GAUSSLEG. Variables Xg, Wg and Ng are taken from module matric. I am getting the unexpected results. I am confused about proper assigning of variables(private and shared). Can somebody help me ?

SUBROUTINE GAUSSLEG(f,a,b,s)
     USE OMP_LIB
     USE MATRIC , ONLY : XG ,WG , NG
     IMPLICIT DOUBLE PRECISION(A-H,O-Z)
     external f
     xm = 0.5d0*(b+a)
     xl = 0.5d0*(b-a)
     s = 0.d0
    !$omp parallel do reduction ( + : s) default(none)
    !$omp private(j) shared(xm,xl,wg,xg,ng,dx)

     do  j=1,ng
         dx = xl*xg(j)
         s = s + wg(j)*(func(xm+dx)+func(xm-dx))
     end do
   !$omp end parallel do

    s = xl*s/2.0
    return
  END

Hi, I have used the subroutine gaussleg to calculate the integration of sin(x) from 0 to pi, I get the same result (2.5464790894) whether i make dx private or shared but the exact result is 2.0. I have also tried by putting xl*xg(j) directly and removing dx, still getting same result as above.Without -openmp option in the compilation, i get the exact result 2.0.This is whole program.

  MODULE MATRIC
   IMPLICIT NONE
    INTEGER , PARAMETER :: NG = 40
    DOUBLE PRECISION , PARAMETER :: PI=2.0D0*ACOS(0.0D0)
    DOUBLE PRECISION ::  XG(60) , WG(60)
  END MODULE MATRIC
  program gauss
   use matric, only : xg,wg,pi
   implicit none
   double precision :: x1,x2,a,b,ans
   external :: f
   x1 = -1.0d0 ; x2 = 1.0d0
   a  = 0.0    ; b  = PI
   call gauleg(x1,x2)
   call gaussleg(f,a,b,ans)
   write(*,*)ans
  end program gauss
  !function to be integrated
  double precision function f(x)
        implicit none
        double precision, intent(in) :: x
        f = sin(x)
  end function f
  SUBROUTINE GAUSSLEG(func,a,b,ss)
     USE OMP_LIB
     USE MATRIC , ONLY : XG ,WG , NG
     double precision,intent(in) :: a , b
     double precision,intent(out)::ss
     double precision :: xm , xl , dx
     integer :: j
     double precision,external::func
     xm = 0.5d0*(b+a)
     xl = 0.5d0*(b-a)
     ss = 0.d0
    !$OMP PARALLEL DO REDUCTION( + : ss) default(none) &
    !$OMP PRIVATE(j,dx) SHARED(xm,xl,xg,wg)
       do  j=1,ng
           dx = xl*xg(j)
           ss = ss + wg(j)*(func(xm+dx)+func(xm-dx))
       end do
    !$OMP END PARALLEL DO
      ss = xl*ss/2.0
      return
      END
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  • can you also provide an example of expected and actual output? Commented May 27, 2015 at 6:45
  • Hi sir, i am sorry, i made a mistake, ng is not there in the shared list. With ng i was getting error so my shared list is (xm,xl,wg,xg,dx). I tried to check subroutine by calculating the integration of sin(x) with x limit 0 to pi. If i compile the program without -openmp option, i get 2.00000 with is the exact answer Commented May 28, 2015 at 8:03

2 Answers 2

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Your code includes a canonical data race. You have declared dx shared, then written

         dx = xl*xg(j)

so that all threads can update the same, shared, variable, without any co-ordination. I think, but it is your responsibility to check this, that you can make dx private and have each thread look after its own value of the variable.

Incidentally. DO NOT USE implicit typing, you're just asking for trouble. Asking for trouble while you are trying to learn how to use OpenMP is just, well, asking for more trouble. USE implicit none. And don't respond Oh, I'm just updating an existing codebase which uses implicit typing. If that's what you are doing, do it properly.

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Got exact results in the following way.

SUBROUTINE QGAUSSP(func,a,b,ss)

     USE OMP_LIB
     USE MATRIC , ONLY : XG ,WG , NG
     implicit none
     double precision, intent(in) :: a , b
     double precision, intent(out):: ss
     double precision :: xm , xl , dx , xgd , wgd
     double precision :: s(NG)
     integer :: j,tid
     double precision,external::func
     xm = 0.5d0*(b+a)
     xl = 0.5d0*(b-a)
     ss = 0.d0
  !$omp parallel do private(j,xgd,wgd,dx) shared(xm,xl,xg,wg,s) num_threads(15) 
   do  j=1,ng
       xgd=xg(j)
       wgd=wg(j)
       dx = xl*xgd
       s(j)=wgd*(func(xm+dx)+func(xm-dx))
   end do
  !$omp end parallel do
   ss=sum(s) *xl/2.0
   return
  END

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