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I am sorry that I can't reproduce the error with a simpler example, and my code is too complicated to post. If I run the program in IPython shell instead of the regular python, things work out well.

I looked up some previous notes on this problem. They were all caused by using pool to call function defined within a class function. But this is not the case for me.

Exception in thread Thread-3:
Traceback (most recent call last):
  File "/usr/lib64/python2.7/threading.py", line 552, in __bootstrap_inner
  File "/usr/lib64/python2.7/threading.py", line 505, in run
    self.__target(*self.__args, **self.__kwargs)
  File "/usr/lib64/python2.7/multiprocessing/pool.py", line 313, in _handle_tasks
PicklingError: Can't pickle <type 'function'>: attribute lookup __builtin__.function failed

I would appreciate any help.

UPDATE: The function I pickle is defined at the top level of the module. Though it calls a function that contains a nested function. i.e, f() calls g() calls h() which has a nested function i(), and I am calling pool.apply_async(f). f(), g(), h() are all defined at the top level. I tried simpler example with this pattern and it works though.

share|improve this question
The top-level / accepted answer is good, but it could mean you need to re-structure your code, which might be painful. I would recommend for anyone who has this issue to also read the additional answers utilising dill and pathos. However, I no luck with any of the solutions when working with vtkobjects :( Anyone has managed to run python code in parallel processing vtkPolyData? – Chris Aug 12 '15 at 10:34
up vote 76 down vote accepted

Here is a list of what can be pickled. In particular, functions are only picklable if they are defined at the top-level of a module.

This piece of code:

import multiprocessing as mp

class Foo():
    def work(self):

pool = mp.Pool()
foo = Foo()

yields an error almost identical to the one you posted:

Exception in thread Thread-2:
Traceback (most recent call last):
  File "/usr/lib/python2.7/threading.py", line 552, in __bootstrap_inner
  File "/usr/lib/python2.7/threading.py", line 505, in run
    self.__target(*self.__args, **self.__kwargs)
  File "/usr/lib/python2.7/multiprocessing/pool.py", line 315, in _handle_tasks
PicklingError: Can't pickle <type 'function'>: attribute lookup __builtin__.function failed

The problem is that the pool methods all use a queue.Queue to pass tasks to the worker processes. Everything that goes through the queue.Queue must be pickable, and foo.work is not picklable since it is not defined at the top level of the module.

It can be fixed by defining a function at the top level, which calls foo.work():

def work(foo):


Notice that foo is pickable, since Foo is defined at the top level and foo.__dict__ is picklable.

share|improve this answer
Thanks for your reply. I updated my question. I don't htink that's the cause, though – CodeNoob Jan 10 '12 at 15:04
To get a PicklingError something must be put on the Queue which is not picklable. It could be the function or its arguments. To find out more about the problem, I suggest make a copy of your program, and start paring it down, making it simpler and simpler, each time re-running the program to see if the problem remains. When it becomes really simple, you'll either have discovered the problem yourself, or will have something which you can post here. – unutbu Jan 10 '12 at 15:56
Also: if you define a function at the top-level of a module, but it's decorated, then the reference will be to the output of the decorator, and you'll get this error anyway. – bobpoekert Apr 17 '13 at 0:35

I'd use pathos.multiprocesssing, instead of multiprocessing. pathos.multiprocessing is a fork of multiprocessing that uses dill. dill can serialize almost anything in python, so you are able to send a lot more around in parallel. The pathos fork also has the ability to work directly with multiple argument functions, as you need for class methods.

>>> from pathos.multiprocessing import ProcessingPool as Pool
>>> p = Pool(4)
>>> class Test(object):
...   def plus(self, x, y): 
...     return x+y
>>> t = Test()
>>> p.map(t.plus, x, y)
[4, 6, 8, 10]
>>> class Foo(object):
...   @staticmethod
...   def work(self, x):
...     return x+1
>>> f = Foo()
>>> p.apipe(f.work, f, 100)
<processing.pool.ApplyResult object at 0x10504f8d0>
>>> res = _
>>> res.get()

Get pathos (and if you like, dill) here: https://github.com/uqfoundation

share|improve this answer
worked a treat. For anyone else, I installed both libraries through: sudo pip install git+https://github.com/uqfoundation/dill.git@master and sudo pip install git+https://github.com/uqfoundation/pathos.git@master – Alexander McFarlane Mar 29 '15 at 21:20
@AlexanderMcFarlane I wouldn't install python packages with sudo (from external sources such as github especially). Instead, I would recommend to run: pip install --user git+... – Chris Aug 12 '15 at 10:00
Using just pip install pathos does not work sadly and gives this message: Could not find a version that satisfies the requirement pp==1.5.7-pathos (from pathos) – xApple May 18 at 15:00
Yes. I have not released in a while as I have been splitting up the functionality into separate packages, and also converting to 2/3 compatible code. Much of the above has been modularized in multiprocess which is 2/3 compatible. See stackoverflow.com/questions/27873093/… and pypi.python.org/pypi/multiprocess. – Mike McKerns May 18 at 17:14
pip install pathos now works, and pathos is python 3 compatible. – Mike McKerns 2 days ago

I have found that I can also generate exactly that error output on a perfectly working piece of code by attempting to use the profiler on it.

Note that this was on Windows (where the forking is a bit less elegant).

I was running:

python -m profile -o output.pstats <script> 

And found that removing the profiling removed the error and placing the profiling restored it. Was driving me batty too because I knew the code used to work. I was checking to see if something had updated pool.py... then had a sinking feeling and eliminated the profiling and that was it.

Posting here for the archives in case anybody else runs into it.

share|improve this answer

As others have said multiprocessing can only transfer Python objects to worker processes which can be pickled. If you cannot reorganize your code as described by unutbu, you can use dills extended pickling/unpickling capabilities for transferring data (especially code data) as I show below.

This solution requires only the installation of dill and no other libraries as pathos:

import os
from multiprocessing import Pool

import dill

def run_dill_encoded(what):
    fun, args = dill.loads(what)
    return fun(*args)

def apply_async(pool, fun, args):
    return pool.apply_async(run_dill_encoded, (dill.dumps((fun, args)),))

if __name__ == "__main__":

    pool = Pool(processes=5)

    # asyn execution of lambda
    jobs = []
    for i in range(10):
        job = apply_async(pool, lambda a, b: (a, b, a * b), (i, i + 1))

    for job in jobs:
        print job.get()

    # async execution of static method

    class O(object):

        def calc():
            return os.getpid()

    jobs = []
    for i in range(10):
        job = apply_async(pool, O.calc, ())

    for job in jobs:
        print job.get()
share|improve this answer
I'm the dill and pathos author… and while you are right, isn't it so much nicer and cleaner and more flexible to also use pathos as in my answer? Or maybe I'm a little biased… – Mike McKerns Oct 2 '14 at 16:38
I was not aware about the status of pathos at the time of writing and wanted to present a solution which is very near to the answer. Now that I've seen your solution I agree that this is the way to go. – rocksportrocker Oct 6 '14 at 7:31
I read your solution and was like, Doh… I didn't even think of doing it like that. So that was kinda cool. – Mike McKerns Oct 6 '14 at 11:36
Thanks for posting, I used this approach for dilling/undilling arguments that could not be pickled: stackoverflow.com/questions/27883574/… – jazzblue Jan 11 '15 at 21:37
@rocksportrocker. I am reading this example and cannot understand why there is explicit for loop. I would normally see parallel routine take a list and return a list without loop. – user1700890 Apr 13 at 19:57

Are you passing a numpy array of strings by any chance?

I've had this same exact error when I pass an array that happens to contain an empty string. I think it may be due to this bug: http://projects.scipy.org/numpy/ticket/1658

share|improve this answer

This solution requires only the installation of dill and no other libraries as pathos

def apply_packed_function_for_map((dumped_function, item, args, kwargs),):
    Unpack dumped function as target function and call it with arguments.

    :param (dumped_function, item, args, kwargs):
        a tuple of dumped function and its arguments
        result of target function
    target_function = dill.loads(dumped_function)
    res = target_function(item, *args, **kwargs)
    return res

def pack_function_for_map(target_function, items, *args, **kwargs):
    Pack function and arguments to object that can be sent from one
    multiprocessing.Process to another. The main problem is:
        «multiprocessing.Pool.map*» or «apply*»
        cannot use class methods or closures.
    It solves this problem with «dill».
    It works with target function as argument, dumps it («with dill»)
    and returns dumped function with arguments of target function.
    For more performance we dump only target function itself
    and don't dump its arguments.
    How to use (pseudo-code):

        ~>>> import multiprocessing
        ~>>> images = [...]
        ~>>> pool = multiprocessing.Pool(100500)
        ~>>> features = pool.map(
        ~...     *pack_function_for_map(
        ~...         super(Extractor, self).extract_features,
        ~...         images,
        ~...         type='png'
        ~...         **options,
        ~...     )
        ~... )

    :param target_function:
        function, that you want to execute like  target_function(item, *args, **kwargs).
    :param items:
        list of items for map
    :param args:
        positional arguments for target_function(item, *args, **kwargs)
    :param kwargs:
        named arguments for target_function(item, *args, **kwargs)
    :return: tuple(function_wrapper, dumped_items)
        It returs a tuple with
            * function wrapper, that unpack and call target function;
            * list of packed target function and its' arguments.
    dumped_function = dill.dumps(target_function)
    dumped_items = [(dumped_function, item, args, kwargs) for item in items]
    return apply_packed_function_for_map, dumped_items

It also works for numpy arrays.

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