I'm running 64-bit Python 2.7.3 on Windows 7.
I'm trying to parallelise some data processing operations using the Python multiprocessing module. Part of the worker function that I send to my processes involves unpickling an Orange classifier stored in a text file on my hard drive, doing some predictions with it, and putting the output into an output queue. The basic structure of the worker function is as follows:
def getPredictions(inputQueue, outputQueue): for data in iter(inputQueue.get, 'STOP'): .... # Unpickle the file f = open(classifierFilepath, 'r') classifier = pickle.load(f) f.close() # Et cetera
When I run my program, the worker function seems to have an issue with the
pickle.load() line: the program as a whole doesn't complete: it just sits there and doesn't appear to be doing anything. There are no error messages from the independent processes, of course. On the other hand if I remove this line, the worker function executes fine (although doesn't do anything useful) and then the program moves on to completion. I wondered if this was because the processes didn't know where pickle came from, so I stuck
import pickle at the top of the function (before the
for loop) but it didn't make a difference.
So my question is: how do I (or can I?) use external modules like pickle in a worker function?
As an aside, what is the benefit in subclassing
multiprocessing.Process like Doug Hellmann does in his second example here? I haven't tried that in this application.
Edited to incorporate comments.
Ah. Never mind. The problem is not that the pickler itself doesn't work; it's because the pickler is not able to unpickle the file from disk properly. Rats...