I am using the Pool class from python's multiprocessing library write a program that will run on an HPC cluster.
Here is an abstraction of what I am trying to do:
def myFunction(x): # myObject is a global variable in this case return myFunction2(x, myObject) def myFunction2(x,myObject): myObject.modify() # here I am calling some method that changes myObject return myObject.f(x) poolVar = Pool() argsArray = [ARGS ARRAY GOES HERE] output = poolVar.map(myFunction, argsArray)
The function f(x) is contained in a *.so file, i.e., it is calling a C function.
The problem I am having is that the value of the output variable is different each time I run my program (even though the function myObject.f() is a deterministic function). (If I only have one process then the output variable is the same each time I run the program.)
I have tried creating the object rather than storing it as a global variable:
def myFunction(x): myObject = createObject() return myFunction2(x, myObject)
However, in my program the object creation is expensive, and thus, it is a lot easier to create myObject once and then modify it each time I call myFunction2(). Thus, I would like to not have to create the object each time.
Do you have any tips? I am very new to parallel programming so I could be going about this all wrong. I decided to use the Pool class since I wanted to start with something simple. But I am willing to try a better way of doing it.