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()
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.

  • Could you fix this program to be one that runs? Declaring the functions after you try to use them won't work in Python (and could be relevant to your problem)
    – Thomas
    Commented Sep 13, 2013 at 5:24
  • Is myObject.modify() idempotent? That is, can you call it an arbitrary number of times without changing what it does (such as, a reset() function)? If so, your code should work. If not, you'll have issues because the different processes will each modify their own copies of the object separately from each other, and so you may get duplicated values across processes.
    – Blckknght
    Commented Sep 14, 2013 at 4:51
  • Yes, myObject.modify() is idempotent.
    – Hugh Medal
    Commented Sep 16, 2013 at 11:45

2 Answers 2


I am using the Pool class from python's multiprocessing library to do some shared memory processing on an HPC cluster.

Processes are not threads! You cannot simply replace Thread with Process and expect all to work the same. Processes do not share memory, which means that the global variables are copied, hence their value in the original process doesn't change.

If you want to use shared memory between processes then you must use the multiprocessing's data types, such as Value, Array, or use the Manager to create shared lists etc.

In particular you might be interested in the Manager.register method, which allows the Manager to create shared custom objects(although they must be picklable).

However I'm not sure whether this will improve the performance. Since any communication between processes requires pickling, and pickling takes usually more time then simply instantiating the object.

Note that you can do some initialization of the worker processes passing the initializer and initargs argument when creating the Pool.

For example, in its simplest form, to create a global variable in the worker process:

def initializer():
    global data
    data = createObject()

Used as:

pool = Pool(4, initializer, ())

Then the worker functions can use the data global variable without worries.

Style note: Never use the name of a built-in for your variables/modules. In your case object is a built-in. Otherwise you'll end up with unexpected errors which may be obscure and hard to track down.

  • 1
    Thanks! Actually, I do want each worker to have its own copy of the global variable and be able to modify it. (I changed my question to reflect this.) I will check out your answer.
    – Hugh Medal
    Commented Sep 13, 2013 at 12:09
  • 6
    I tried your your solution above but it is not working. I still have the same problem.
    – Hugh Medal
    Commented Sep 24, 2013 at 15:06
  • Thank you so much, I was using processes for opening multiple webpages in parallel instead of threads and wondering why the global variables are not working as expected.
    – Vissu
    Commented Nov 26, 2019 at 18:16
  • What happens if global data is being modified by worker processes? Will the result reflect in the global data?
    – CKM
    Commented Apr 29, 2020 at 14:05
  • @chandresh If you want data to be shared by multiple processes you need to use special objects from the multiprocessing module, see the documentation. Changes to these objects will be reflected among processes.
    – Bakuriu
    Commented Apr 30, 2020 at 7:02

Global keyword works on the same file only. Another way is to set value dynamically in pool process initialiser, somefile.py can just be an empty file:

import importlib

def pool_process_init():
    m = importlib.import_module("somefile.py")
    m.my_global_var = "some value"

pool = Pool(4, initializer=pool_process_init)

How to use the var in task:

def my_coroutine():
    m = importlib.import_module("somefile.py")
  • This is false. You are probably missing some detail. The initializer can set new globals and they are available to the functions. Open a question showing the actual code you are trying and we will see what's the problem, but my answer works exactly as describe up to python 3.10.
    – Bakuriu
    Commented Dec 31, 2022 at 9:29
  • Oh, but it shows name not found for me
    – Dan D.
    Commented Dec 31, 2022 at 10:10
  • I corrected my answer
    – Dan D.
    Commented Dec 31, 2022 at 10:11
  • Possibly my case is that the init func and task func are on different files
    – Dan D.
    Commented Dec 31, 2022 at 10:15

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