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()) 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.
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?