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I'm writing to a file as follows. The order does not necessarily matter (though it would be nice if I could get it ordered by K, as would be inherently in serial code)

            WRITE(EIGENVALUES_UP_IO, *) K * 0.0001_DP * PI, (EIGENVALUES(J), J = 1, ATOM_COUNT)

I'm aware this is likely to be the worst option.

I've taken a look at MPI_FILE_WRITE_AT etc. but I'm not sure they (directly) take data in the form that I have?

The file must be in the same format as this, which comes out as a line per K, with ATOM_COUNT + 1 columns. The values are REAL(8)

I've hunted over and over, and can't find any simple references on achieving this. Any help? :)

Similar code in C (assuming it's basically the same as FORTRAN) is just as useful


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k here is something that each task has one (or some number) of? And does everyone have the same ATOM_COUNT? – Jonathan Dursi Dec 5 '10 at 2:11
Oh, wait -- I didn't notice the unformatted write. Are you doing this in ASCII? If yes, then (a) you really shouldn't (it's slow, makes for big files, and unless you're really printing it out and doing the analysis by eye, why bother?), and (b) you're likely out of luck with any sort of parallel IO approach. With what you're doing, since the output data is small, you're probably better off having rank 0 MPI_GATHER() all the data together and write it out rather than loop over barriers. – Jonathan Dursi Dec 5 '10 at 3:09
It goes into gnuplot, so has to be formatted like this (AFAIK) – Sticky Dec 5 '10 at 9:01
up vote 2 down vote accepted

So determining the right IO strategy depends on a lot of factors. If you are just sending back a handful of eigenvalues, and you're stuck writing out ASCII, you might be best off just sending all the data back to process 0 to write. This is not normally a winning strategy, as it obviously doesn't scale; but if the amount of data is very small, it could well be better than the contention involved in trying to write out to a shared file (which is, again, harder with ASCII).

Some code is below which will schlep the amount of data back to proc 0, assuming everyone has the same amount of data.

Another approach would just be to have everyone write out their own ks and eigenvalues, and then as a postprocessing step once the program is finished, cat them all together. That avoids the MPI step, and (with the right filesystem) can scale up quite a ways, and is easy; whether that's better is fairly easily testable, and will depend on the amount of data, number of processors, and underlying file system.

   program testio
    use mpi
    implicit none

    integer, parameter :: atom_count = 5
    integer, parameter :: kpertask   = 2
    integer, parameter :: fileunit   = 7
    integer, parameter :: io_master  = 0
    double precision, parameter :: pi = 3.14159

    integer :: totalk
    integer :: ierr
    integer :: rank, nprocs

    integer :: handle
    integer(kind=MPI_OFFSET_KIND) :: offset
    integer :: filetype

    integer :: j,k
    double precision, dimension(atom_count, kpertask) :: eigenvalues
    double precision, dimension(kpertask) :: ks

    double precision, allocatable, dimension(:,:):: alleigenvals
    double precision, allocatable, dimension(:)  :: allks

    call MPI_INIT(ierr)
    call MPI_COMM_SIZE(MPI_COMM_WORLD, nprocs, ierr)
    call MPI_COMM_RANK(MPI_COMM_WORLD, rank, ierr)

    totalk   = nprocs*kpertask

    !! setup test data

    do k=1,kpertask
        ks(k) = (rank*kpertask+k)*1.d-4*PI
        do j=1,atom_count
            eigenvalues(j,k) = rank*100+j

    !! Everyone sends proc 0 their data

    if (rank == 0) then
        allocate(alleigenvals(atom_count, totalk))

    call MPI_GATHER(ks, kpertask, MPI_DOUBLE_PRECISION,    &
                    allks, kpertask, MPI_DOUBLE_PRECISION, &
                    io_master, MPI_COMM_WORLD, ierr)

    call MPI_GATHER(eigenvalues, kpertask*atom_count, MPI_DOUBLE_PRECISION,  &
                    alleigenvals, kpertask*atom_count, MPI_DOUBLE_PRECISION, &
                    io_master, MPI_COMM_WORLD, ierr)

    if (rank == 0) then 
        open(unit=fileunit, file='output.txt')
        do k=1,totalk
            WRITE(fileunit, *) allks(k), (alleigenvals(j,k), j = 1, atom_count)

    call MPI_FINALIZE(ierr)
end program testio
share|improve this answer
Thanks for the example. I guess I didn't mention, this is in a loop of K (0 to 1000) and EIGENVALUES can have a lot of elements (500 is normal), so every iteration of the loop EIGENVALUES are lost - so sending them back isn't feasible. However, saving to different files on different processors is possible, and might help as an easy solution for now :) – Sticky Dec 5 '10 at 8:58
I went for a separate file for each process, and stitching them together. I have to keep the formatting for gnuplot, so it seems using MPI to write directly would be a pain. This works good for now, thanks – Sticky Dec 5 '10 at 10:20

If you can determine how long each rank's write will be, you can call MPI_SCAN(size, offset, 1, MPI_INT, MPI_SUM, MPI_COMM_WORLD) to compute the offset that each rank should start at, and then they can all call MPI_FILE_WRITE_AT. This is probably more suitable if you have a lot of data, and you are confident that your MPI implementation does the write efficiently (doesn't serialize internally, or the like).

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