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I have an MPI program with some array of data. Every rank needs all the array to do its work, but will only work on a patch of the array. After a calculation step I need every rank to communicate its computed piece of the array to all other ranks.

How do I achieve this efficiently?

In pseudo code I would do something like this as a first approach:

if rank == 0: // only master rank
  initialise_data()
end if

MPI_Bcast(all_data,0) // from master to every rank

compute which part of the data to work on

for ( several steps ): // each rank
  execute_computation(part_of_data)

  for ( each rank ):
    MPI_Bcast(part_of_data, rank_number) // from every rank to every rank
  end for
end for

The disadvantage is that there is as many broadcasts, i.e. barriers as there is ranks. So how would I replace the MPI_Bcasts ?

edit: I just might have found a hint... Is it MPI_Allgather I am looking for?

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What you are looking for is MPI_Allgather (or MPI_Allgatherv if chunks are of varying size) in in-place mode. –  Hristo Iliev Jan 24 '13 at 15:26

1 Answer 1

up vote 1 down vote accepted

Yes, you are looking for MPI_Allgather. Note that recvcount is not the length of the whole recieve buffer, but the amount of data should be recieved from one process. Analogically, in MPI_Allgatherv recvcount[i] is the amount of data you want to recieve from i-th process. Moreover, recvcount should be equal (not less) to the respective sendcount. I tested it on my implemetation (OpenMPI), and if I tried to recieve less elements that were sent, I got MPI_ERR_TRUNCATE error.

Also in some rare cases I used MPI_Allreduce for that puprose. For example if we have the following arrays:

process0: AA0000
process1: 0000BB
process2: 00CC00

then we can do Allreduce with MPI_SUM operation and get AACCBB in all processes. Obviously, the same trick can be done with ones instead of zeros and MPI_PROD instead of MPI_SUM.

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Ok... One more question: Is recvcount always the same as sendcount? And a comment: I can't use Allreduce because in the other fields there is the "old" data. Of course I could set is to 0... –  steffen Jan 23 '13 at 14:34
    
@steffen I updated the answer. Yes, it always should be the same, or you get the error. For now, I tested it on MPICH as well, and got the same error. If the patches of your array have different sizes in different process, use allgatherv, but keep recvcount[i] equal to sendcount of i-th process. Using allreduce for this purpose is very uncommon and it will work slower than allgather in most cases. Surely you shouldn't use it if there is "old" data in the buffer. –  Sergey Jan 23 '13 at 14:41
    
got it, thanks. –  steffen Jan 23 '13 at 14:55
    
The number of primitive data items sent should match the number of primitive data items received, not the values of sendcount and recvcount. For example, one might send 100 MPI_INT elements and receive 1 element of a user-defined vector type that consists of 100 MPI_INT elements. –  Hristo Iliev Jan 24 '13 at 15:20

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