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I have a program which distributes particles into a cloud-in-cell mesh. Simply loops over the total number of particles (Ntot) and populates a 256^3 mesh (i.e. each particle gets distributed over 8 cells).

% gfortran -fopenmp cic.f90 -o ./cic

Which compiles fine. But when I run it (./cic) I get a segmentation fault. I my looping is a classic omp do problem. The program works when I don't compile it in openmp.

!$omp parallel do
 do i = 1,Ntot
   if (x1(i).gt.0.and.y1(i).gt.0.and.z1(i).gt.0) then
     dense(int(x1(i)),int(y1(i)),int(z1(i))) = dense(int(x1(i)),int(y1(i)),int(z1(i))) &
     + dx1(i) * dy1(i) * dz1(i) * mpart
   end if

   if (x2(i).le.Ng.and.y1(i).gt.0.and.z1(i).gt.0) then
     dense(int(x2(i)),int(y1(i)),int(z1(i))) = dense(int(x2(i)),int(y1(i)),int(z1(i))) &
     + dx2(i) * dy1(i) * dz1(i) * mpart
   end if

   if (x1(i).gt.0.and.y2(i).le.Ng.and.z1(i).gt.0) then
     dense(int(x1(i)),int(y2(i)),int(z1(i))) = dense(int(x1(i)),int(y2(i)),int(z1(i))) &
     + dx1(i) * dy2(i) * dz1(i) * mpart
   end if

   if (x2(i).le.Ng.and.y2(i).le.Ng.and.z1(i).gt.0) then
     dense(int(x2(i)),int(y2(i)),int(z1(i))) = dense(int(x2(i)),int(y2(i)),int(z1(i))) &
     + dx2(i) * dy2(i) * dz1(i) * mpart
   end if

   if (x1(i).gt.0.and.y1(i).gt.0.and.z2(i).le.Ng) then
     dense(int(x1(i)),int(y1(i)),int(z2(i))) = dense(int(x1(i)),int(y1(i)),int(z2(i))) &
     + dx1(i) * dy1(i) * dz2(i) * mpart
   end if

   if (x2(i).le.Ng.and.y1(i).gt.0.and.z2(i).le.Ng) then
     dense(int(x2(i)),int(y1(i)),int(z2(i))) = dense(int(x2(i)),int(y1(i)),int(z2(i))) &
     + dx2(i) * dy1(i) * dz2(i) * mpart
   end if

   if (x1(i).gt.0.and.y2(i).le.Ng.and.z2(i).le.Ng) then
     dense(int(x1(i)),int(y2(i)),int(z2(i))) = dense(int(x1(i)),int(y2(i)),int(z2(i))) &
     + dx1(i) * dy2(i) * dz2(i) * mpart
   end if

   if (x2(i).le.Ng.and.y2(i).le.Ng.and.z2(i).le.Ng) then
     dense(int(x2(i)),int(y2(i)),int(z2(i))) = dense(int(x2(i)),int(y2(i)),int(z2(i))) &
     +  dx2(i) * dy2(i) * dz2(i) * mpart
   end if
  end do
!$omp end parallel do

There are no dependencies between iterations. Ideas?

share|improve this question
    
It seems that you haven't declared any variables to be shared or private, so it's not surprising that you get segfaults. –  DaveP Dec 13 '12 at 23:49
    
Could you be a little more helpful/specific please? "dense" is the only variable each thread will be feeding back into so presumably that is shared. All of the rest are independent. Are there any compiling flags I could use to locate where it is going wrong? –  Griff Dec 14 '12 at 0:12
    
How is dense declared? Is it an automatic array, is it save'd or is it allocatable and how exactly is it allocated? –  Hristo Iliev Dec 14 '12 at 8:30
    
Note beside: I have good experience with the free Solaris Studio's data race analyzer. It can speed up the search for the error location considerably. –  Vladimir F Dec 14 '12 at 10:22
    
dense is static allocated at the very beginning. –  Griff Dec 14 '12 at 18:47

2 Answers 2

up vote 1 down vote accepted

This problem, as well as the one in your other question, comes from the fact that automatic heap arrays are disabled when OpenMP is enabled. This means that without -fopenmp, big arrays are automatically placed in the static storage (known as the .bss segment) while small arrays are allocated on the stack. When you switch OpenMP support on, no automatic static allocation is used and your dense arrays gets allocated on the stack of the routine. The default stack limits on OS X are very restrictive, hence the segmentation fault.

You have several options here. The first option is to make dense have static allocation by giving it the SAVE attribute. The other option is to explicitly allocate it on the heap by making it ALLOCATABLE and then using the ALLOCATE statement, e.g.:

REAL, DIMENSION(:,:,:), ALLOCATABLE :: dense

ALLOCATE(dense(256,256,256))

! Computations, computations, computations

DEALLOCATE(dense)

Newer Fortran versions support automatic deallocation of arrays without the SAVE attribute when they go out of scope.

Note that your OpenMP directive is just fine and no additional data sharing clauses are necessary. You do not need to declare i in a PRIVATE clause since loop counters have predetermined private data-sharing class. You do not need to put the other variables in SHARED clause as they are implicitly shared. Yet the operations that you do on dense should either be synchronised with ATOMIC UPDATE (or simply ATOMIC on older OpenMP implementations) or you should use REDUCTION(+:dense). Atomic updates are translated to locked additions and should not incur much of a slowdown, compared to the huge slowdown from having conditionals inside the loop:

INTEGER :: xi, yi, zi

!$OMP PARALLEL DO PRIVATE(xi,yi,zi)
...
if (x1(i).gt.0.and.y1(i).gt.0.and.z1(i).gt.0) then
  xi = int(x1(i))
  yi = int(y1(i))
  zi = int(z1(i))
  !$OMP ATOMIC UPDATE
  dense(xi,yi,zi) = dense(xi,yi,zi) &
                  + dx1(i) * dy1(i) * dz1(i) * mpart
end if
...

Replicate the code with the proper changes for the other cases. If your compiler complains about the UPDATE clause in the ATOMIC construct, simply delete it.

REDUCTION(+:dense) would create one copy of dense in each thread, which would consume a lot of memory and the reduction applied in the end would grow slower and slower with the size of dense. For small arrays it would work better than atomic updates.

share|improve this answer
    
Thanks Hristo - I already had allocated dense exactly how you specified. So I can essentially delete both the shared and private components because it is implicit. Where should I use the ATOMIC UPDATE? Thanks. –  Griff Dec 14 '12 at 18:29
    
@Griff, see the updated text. –  Hristo Iliev Dec 14 '12 at 20:15
    
I presume that needs a !$OMP END PARALLEL DO at the end and the PRIVATE statement is just before the inner loop, not on the outside. –  Griff Dec 14 '12 at 20:59
    
@Griff, yes, the PARALLEL DO is there just to show where the PRIVATE clause goes - basically this is the parallel do from your original code. I've just added the three helper variables that need to be private. In your code there is only one parallel region, whether it encompass the inner loop only or also the outer loop, as I've shown you possible in you other question. –  Hristo Iliev Dec 14 '12 at 21:16
    
OK Thanks. It still isn't working. I"m not asking you to go through line by line but if there is anything that stands out here: dl.dropbox.com/u/22892859/cic_openmp_test2.f90 could you let me know. Perhaps a casual check I am doing the things you are saying correctly would help. You've already been very helpful and I don't want to take up too much more of your time. Thanks. –  Griff Dec 14 '12 at 21:43

See https://computing.llnl.gov/tutorials/openMP/#Clauses for a description of how to make variables shared and private.

It looks like all your variables should be shared, except the loop variable i which must be private. This would suggest using the following line:

!$omp parallel do default(shared) private(i)

This should fix your segmentation fault (assuming I got all the variables correct

However, there is the risk that different threads will attempt to overwrite the same parts of dense simultaneously, resulting in incorrect totals. To protect against this case, you will need to wrap each assignment to dense within something like an !$omp atomic or !$omp critical section.

However, you may find that such critical sections will cause threads to spend most of their time waiting, so you may not see any improvement over purely serial code.

In principal you could solve this problem by declaring dense with the reduction keyword, but unfortunately it cannot be used for arrays.

share|improve this answer
    
Neither default(shared) nor private(i) would change anything in this case as in Fortran OpenMP variables are implicitly shared by default unless declared threadprivate and the loop counter has a predetermined private data-sharing attribute. –  Hristo Iliev Dec 14 '12 at 8:15
    
The reduction clause does not accept arrays in C/C++ only. In Fortran arrays are perfectly acceptable for reduction, even allocatable ones. –  Hristo Iliev Dec 14 '12 at 8:27
    
This loop above is within another loop which doesn't need to be in parallel - it only loops 4 times. Do I need to specify what to do with this outer loop? The only thing I want parallel is the loop above. –  Griff Dec 14 '12 at 16:15

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