I have a iterable object in python
Z, which is to large to fit into memory. I would like to perform a parallel calculation over this object and write the results, in order that they appear in
Z, to a file. Consider this silly example:
import numpy as np import multiprocessing as mp import itertools as itr FOUT = open("test",'w') def f(x): val = hash(np.random.random()) FOUT.write("%s\n"%val) N = 10**9 Z = itr.repeat(0,N) P = mp.Pool() P.map(f,Z,chunksize=50) P.close() P.join() FOUT.close()
There are two major problems with this:
- multiple results can be written to the same line
- a result is returned with
Nobjects in it - this will be to big to hold in memory (and we don't need it!).
What I've tried:
- Using a global lock
mp.Lock()to share the
FOUTresource: doesn't help, because I think each worker creates it's own namespace.
map: While having callback fixes 1], 2], it doesn't accept an iterable object.
mapand iterating over the results:
def f(x): val = hash(np.random.random()) return val P = mp.Pool() C = P.imap(f,Z,chunksize=50) for x in C: FOUT.write("%s\n"%x)
This still uses inordinate amounts of memory, though I'm not sure why.