Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am pretty new to python and I'm unsure of what is the best way to implement a multithread/multiprocess code on a distributed cluster.

I am trying to write a wrapper script using Python that calls an external MPI programme running on a large cluster using a PBS queuing system. A (very) simplified version of type of script I've been working on is given below, where the code moves into a specific directory, runs an external MPI programme and checks the results to see if there have been any large changes.

#!/local/python-2.7.1/bin/python2.7

import os
import subprocess as sp
import coordinate_functions as coord_funcs

os.chdir('/usr/work/cmurray/SeachTest/')
print os.getcwd()

# Gets nodefile and num procs (NP)
cat_np = sp.Popen('cat $PBS_NODEFILE | wc -l', shell = True, stdout=sp.PIPE)
NP = int(cat_np.communicate()[0])
sp.call('cat $PBS_NODEFILE > nodefile', shell = True)

def run_mpi(np, nodefile):
        mpi_cmd = 'mpirun -machinefile %s -np %d mpipg > calc.out' % (nodefile, np)
        sp.call(vasp_cmd, shell = True)


def search_loop(calc_dir, t_total, nodefile, num_procs):

    os.chdir(calc_dir)
    no_events = True
    while no_events or t < t_total:
        run_mpi(mynodefile, NP)
        num_events = coord_funcs.change_test('OUTFILE', 'INFILE', 0.01)
        if num_events > 0:
            event = True
        else:
            t += 1

search_loop('/usr/work/cmurray/SeachTest/calc_1/', 10, mynodefile, NP)

This is then submitted to the queue using:

qsub -l nodes=4 -N SeachTest ./SearchTest

What I want to do is run multiple versions of the search_loop function in parallel in different directories (containing different starting positions for example) read from a list. The processes is very IO heavy with the MPI calculations taking maybe a few minutes to run each time they are called.

Would the threading module be ok for this purpose or is the multiprocessing module a better choice? I will probably need to pass simple messages like the event boolean in the above example between threads/processes.

Also, how do I make sure that the python script is not using processors that I've assigned to the MPI runs?

share|improve this question
    
Why don't you use the MPI program to run the program on the different nodes? –  dbeer Nov 23 '11 at 21:06
    
Unfortunately the MPI program is a proprietary piece of software that has been carefully optimised and compiled by our cluster gurus. I have just today began to use mpi4py instead of multiprocessing. Bit of a paradigm shift (I've seen MPI described as "schizophrenic programming") but should make the code more scalable and have better control of the node/processor assignment. –  CiaranAM Nov 24 '11 at 17:07

1 Answer 1

What I want to do is run multiple versions of the search_loop function in parallel in different directories (containing different starting positions for example) read from a list. The processes is very IO heavy with the MPI calculations taking maybe a few minutes to run each time they are called.

Would the threading module be ok for this purpose or is the multiprocessing module a better choice? I will probably need to pass simple messages like the event boolean in the above example between threads/processes.

I'd try multithreading first for an I/O-intensive program, assuming that there's enough bandwidth to actually parallelize the I/O.

Also, how do I make sure that the python script is not using processors that I've assigned to the MPI runs?

If you don't use multiprocessing, the script will only use a single CPU due to the Global Interpreter Lock.

share|improve this answer
    
Thanks for the quick reply, I tried using threading but for some reason the MPI programme would only run in 1 thread, though the other threads would carry out other tasks like attempting to the test function and some debugging print lines I included. As it happens, my threads weren't as I/O bound as I first thought (forgot about the MPI programme doing a lot of read/write operations as it runs) so I tried the multiprocessing method instead and that seems to work fine, with no problems (yet) with processor distribution. –  CiaranAM Nov 17 '11 at 12:48

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.