better multiprocessing and multithreading in python
multiprocess
is a fork of multiprocessing
, and is developed as part of pathos
: https://github.com/uqfoundation/pathos
multiprocessing
is a package for the Python language which supports the
spawning of processes using the API of the standard library's
threading
module. multiprocessing
has been distributed in the standard
library since python 2.6.
Features:
-
Objects can be transferred between processes using pipes or multi-producer/multi-consumer queues.
-
Objects can be shared between processes using a server process or (for simple data) shared memory.
-
Equivalents of all the synchronization primitives in
threading
are available. -
A
Pool
class makes it easy to submit tasks to a pool of worker processes.
multiprocess
is part of pathos
, a python framework for heterogeneous computing.
multiprocess
is in active development, so any user feedback, bug reports, comments,
or suggestions are highly appreciated. A list of issues is located at https://github.com/uqfoundation/multiprocess/issues, with a legacy list maintained at https://uqfoundation.github.io/project/pathos/query.
NOTE: A C compiler is required to build the included extension module. For python 3.3 and above, a C compiler is suggested, but not required.
- enhanced serialization, using
dill
This version a fork of multiprocessing-0.70a1
.
The latest released version of multiprocess
is available from::
https://pypi.org/project/multiprocess
multiprocessing
is distributed under a BSD license.
You can get the latest development version with all the shiny new features at:: https://github.com/uqfoundation
If you have a new contribution, please submit a pull request.
The multiprocess.Process
class follows the API of threading.Thread
.
For example ::
from multiprocess import Process, Queue
def f(q):
q.put('hello world')
if __name__ == '__main__':
q = Queue()
p = Process(target=f, args=[q])
p.start()
print (q.get())
p.join()
Synchronization primitives like locks, semaphores and conditions are available, for example ::
>>> from multiprocess import Condition
>>> c = Condition()
>>> print (c)
<Condition(<RLock(None, 0)>), 0>
>>> c.acquire()
True
>>> print (c)
<Condition(<RLock(MainProcess, 1)>), 0>
One can also use a manager to create shared objects either in shared memory or in a server process, for example ::
>>> from multiprocess import Manager
>>> manager = Manager()
>>> l = manager.list(range(10))
>>> l.reverse()
>>> print (l)
[9, 8, 7, 6, 5, 4, 3, 2, 1, 0]
>>> print (repr(l))
<Proxy[list] object at 0x00E1B3B0>
Tasks can be offloaded to a pool of worker processes in various ways, for example ::
>>> from multiprocess import Pool
>>> def f(x): return x*x
...
>>> p = Pool(4)
>>> result = p.map_async(f, range(10))
>>> print (result.get(timeout=1))
[0, 1, 4, 9, 16, 25, 36, 49, 64, 81]
When dill
is installed, serialization is extended to most objects,
for example ::
>>> from multiprocess import Pool
>>> p = Pool(4)
>>> print (p.map(lambda x: (lambda y:y**2)(x) + x, xrange(10)))
[0, 2, 6, 12, 20, 30, 42, 56, 72, 90]
Probably the best way to get started is to look at the documentation at
http://multiprocess.rtfd.io. See multiprocess.examples
for a set of example
scripts. You can also run the test suite with python -m multiprocess.tests
.
Please feel free to submit a ticket on github, or ask a question on
stackoverflow (@Mike McKerns). If you would like to share how you use
multiprocess
in your work, please post send an email
(to mmckerns at uqfoundation dot org).
If you use multiprocess
to do research that leads to publication, we ask that you
acknowledge use of multiprocess
by citing the following in your publication::
M.M. McKerns, L. Strand, T. Sullivan, A. Fang, M.A.G. Aivazis,
"Building a framework for predictive science", Proceedings of
the 10th Python in Science Conference, 2011;
http://arxiv.org/pdf/1202.1056
Michael McKerns and Michael Aivazis,
"pathos: a framework for heterogeneous computing", 2010- ;
https://uqfoundation.github.io/project/pathos
Please see https://uqfoundation.github.io/project/pathos or http://arxiv.org/pdf/1202.1056 for further information.