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I am teaching myself the Python mpi4py module for programming in multiple processes. I have written the following piece of code to practice scatter.

from mpi4py import MPI

size = comm.Get_size()
rank = comm.Get_rank()

if rank == 0:
   data = [i for i in range(8)]
   data = None
data = comm.scatter(data, root=0)
print str(rank) + ': ' + str(data)

Running the above code with 8 processes works great. However, when I run it with 4 processes, I get an error:

Traceback (most recent call last):
  File "scatter.py", line 11, in <module>
    data = comm.scatter(data, root=0)
  File "Comm.pyx", line 874, in mpi4py.MPI.Comm.scatter (src/mpi4py.MPI.c:68023)
  File "pickled.pxi", line 656, in mpi4py.MPI.PyMPI_scatter (src/mpi4py.MPI.c:32402)
  File "pickled.pxi", line 127, in mpi4py.MPI._p_Pickle.dumpv (src/mpi4py.MPI.c:26813)
ValueError: expecting 4 items, got 8

What does this error mean? My intention is to break up my large array of 8 items into small arrays of 8 / 4 = 2 items and send each process one such subarray. How do I do that? I would also like to generalize if possible to numbers of processes that do not divide evenly into 8 such as 3.

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I am not familiar with MPI in Python. I think you should provide the counts and displacements when calling scatter routine as in C/Fortran. –  Li Dong Oct 10 '12 at 9:30

1 Answer 1

up vote 5 down vote accepted

It seems that comm.scatter can not take count as an argument and expects a list of exactly comm.size elements as data to be scattered; so you need to distribute your data between processes yourself. Something like this will do:

if rank == 0:
    data = [i for i in range(8)]
# dividing data into chunks
    chunks = [[] for _ in range(size)]
    for i, chunk in enumerate(data):
        chunks[i % size].append(chunk)
    data = None
    chunks = None
data = comm.scatter(chunks, root=0)
print str(rank) + ': ' + str(data)

[physics@tornado] ~/utils> mpirun -np 3 ./mpi.py 
2: [2, 5]
0: [0, 3, 6]
1: [1, 4, 7]

Hope this helps.

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