I want to process a large for loop in parallel, and from what I have read the best way to do this is to use the multiprocessing library that comes standard with Python.
I have a list of around 40,000 objects, and I want to process them in parallel in a separate class. The reason for doing this in a separate class is mainly because of what I read here.
In one class I have all the objects in a list and via the multiprocessing.Pool and Pool.map functions I want to carry out parallel computations for each object by making it go through another class and return a value.
# ... some class that generates the list_objects pool = multiprocessing.Pool(4) results = pool.map(Parallel, self.list_objects)
And then I have a class which I want to process each object passed by the pool.map function:
class Parallel(object): def __init__(self, args): self.some_variable = args self.some_other_variable = args self.yet_another_variable = args self.result = None def __call__(self): self.result = self.calculate(self.some_variable)
The reason I have a call method is due to the post I linked before, yet I'm not sure I'm using it correctly as it seems to have no effect. I'm not getting the self.result value to be generated.
Any suggestions? Thanks!