Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I was wondering if there's any library for asynchronous method calls in Python. It would be great if you could do something like

def longComputation():

token = longComputation()
# alternative, polling
while not token.finished():
    if token.finished():
        result = token.result()

Or to call a non-async routine asynchronously

def longComputation()

token = asynccall(longComputation())

It would be great to have a more refined strategy as native in the language core. Was this considered?

share|improve this question
As of Python 3.4: (there's a backport for 3.3 and shiny new async and await syntax from 3.5). – jonrsharpe Dec 28 '15 at 11:16

11 Answers 11

up vote 71 down vote accepted

You can use the multiprocessing module added in Python 2.6. You can use pools of processes and then get results asynchronously with:

apply_async(func[, args[, kwds[, callback]]])


from multiprocessing import Pool

def f(x):
    return x*x

if __name__ == '__main__':
    pool = Pool(processes=1)              # Start a worker processes.
    result = pool.apply_async(f, [10], callback) # Evaluate "f(10)" asynchronously calling callback when finished.

This is only one alternative. This module provides lots of facilities to achieve what you want. Also it will be really easy to make a decorator from this.

share|improve this answer
Lucas S., your example does not work, unfortunately. The callback function never gets called. – DataGreed Aug 29 '09 at 23:50
It's probably worth bearing in mind that this spawns separate processes rather than separate thread within a process. This might some implications. – user47741 Feb 6 '10 at 11:12
This works: result = pool.apply_async(f, [10], callback=finish) – Michael A. Jackson Nov 18 '11 at 0:52
To truly do anything asynchronously in python requires using the multiprocessing module to spawn new processes. Merely creating new threads is still at the mercy of the Global Interpreter Lock which prevents a python process from doing multiple things at once. – Drahkar Dec 22 '14 at 1:00
@LucasS. : Any idea on how do it for networking without creating for bombs – user2284570 Oct 31 '15 at 17:14

What about something like

import threading

thr = threading.Thread(target=foo, args=(), kwargs={})
thr.start() # will run "foo"
thr.is_alive() # will return whether foo is running currently
thr.join() # will wait till "foo" is done

See the docs at for more details; this code should work for python 3 as well.

share|improve this answer
This really should be the top answer. I tried all the others and had issues. This is so simple. – dustynachos Oct 16 '12 at 14:24
yeah, if you just need to do things asynchronously, why dont just use thread? after all thread is light weight than process – kk1957 Mar 21 '13 at 16:09
Important note: the standard implementation (CPython) of threads won't help with compute-bound tasks, due to the "Global Interpreter Lock". See the library doc:link – solublefish May 26 '13 at 19:56
Is using thread.join() really asynchronous? What if you want to not block a thread (e.g. a UI thread) and not use a ton of resources doing a while loop on it? – Mgamerz Jun 5 '14 at 18:50
@Mgamerz join is synchronous. You you could let the thread to put the results of the execution in some queue, or/and call a callback. Otherwise you do not know when it's done (if at all). – Drakosha Jun 5 '14 at 22:10

It's not in the language core, but a very mature library that does what you want is Twisted. It introduces the Deferred object, which you can attach callbacks or error handlers ("errbacks") to. A Deferred is basically a "promise" that a function will have a result eventually.

share|improve this answer
In particular, look at twisted.internet.defer (…). – Nicholas Riley Oct 31 '09 at 20:56
Link in answer is broken. – Muhd Feb 22 '11 at 23:17

You can implement a decorator to make your functions asynchronous, though that's a bit tricky. The multiprocessing module is full of little quirks and seemingly arbitrary restrictions – all the more reason to encapsulate it behind a friendly interface, though.

from inspect import getmodule
from multiprocessing import Pool

def async(decorated):
    r'''Wraps a top-level function around an asynchronous dispatcher.

        when the decorated function is called, a task is submitted to a
        process pool, and a future object is returned, providing access to an
        eventual return value.

        The future object has a blocking get() method to access the task
        result: it will return immediately if the job is already done, or block
        until it completes.

        This decorator won't work on methods, due to limitations in Python's
        pickling machinery (in principle methods could be made pickleable, but
        good luck on that).
    # Keeps the original function visible from the module global namespace,
    # under a name consistent to its __name__ attribute. This is necessary for
    # the multiprocessing pickling machinery to work properly.
    module = getmodule(decorated)
    decorated.__name__ += '_original'
    setattr(module, decorated.__name__, decorated)

    def send(*args, **opts):
        return async.pool.apply_async(decorated, args, opts)

    return send

The code below illustrates usage of the decorator:

def printsum(uid, values):
    summed = 0
    for value in values:
        summed += value

    print("Worker %i: sum value is %i" % (uid, summed))

    return (uid, summed)

if __name__ == '__main__':
    from random import sample

    # The process pool must be created inside __main__.
    async.pool = Pool(4)

    p = range(0, 1000)
    results = []
    for i in range(4):
        result = printsum(i, sample(p, 100))

    for result in results:
        print("Worker %i: sum value is %i" % result.get())

In a real-world case I would ellaborate a bit more on the decorator, providing some way to turn it off for debugging (while keeping the future interface in place), or maybe a facility for dealing with exceptions; but I think this demonstrates the principle well enough.

share|improve this answer


import threading, time

def f():
    print "f started"
    print "f finished"

share|improve this answer

You could use eventlet. It lets you write what appears to be synchronous code, but have it operate asynchronously over the network.

Here's an example of a super minimal crawler:

urls = ["",

import eventlet
from import urllib2

def fetch(url):

  return urllib2.urlopen(url).read()

pool = eventlet.GreenPool()

for body in pool.imap(fetch, urls):
  print "got body", len(body)
share|improve this answer

My solution is:

import threading

class TimeoutError(RuntimeError):

class AsyncCall(object):
    def __init__(self, fnc, callback = None):
        self.Callable = fnc
        self.Callback = callback

    def __call__(self, *args, **kwargs):
        self.Thread = threading.Thread(target =, name = self.Callable.__name__, args = args, kwargs = kwargs)
        return self

    def wait(self, timeout = None):
        if self.Thread.isAlive():
            raise TimeoutError()
            return self.Result

    def run(self, *args, **kwargs):
        self.Result = self.Callable(*args, **kwargs)
        if self.Callback:

class AsyncMethod(object):
    def __init__(self, fnc, callback=None):
        self.Callable = fnc
        self.Callback = callback

    def __call__(self, *args, **kwargs):
        return AsyncCall(self.Callable, self.Callback)(*args, **kwargs)

def Async(fnc = None, callback = None):
    if fnc == None:
        def AddAsyncCallback(fnc):
            return AsyncMethod(fnc, callback)
        return AddAsyncCallback
        return AsyncMethod(fnc, callback)

And works exactly as requested:

def fnc():
share|improve this answer

Is there any reason not to use threads? You can use the "threading" class. Instead of finished() function use the isAlive(), the result() function could join() the thread and retrieve the result and if you can override the run() and init functions to call the function specified in constructor and save the value somewhere to the instance of the class.

share|improve this answer
If it's a computationally expensive function threading won't get you anything (it will probably make things slower actually) since a Python process is limited to one CPU core due to the GIL. – Kurt Sep 23 '09 at 21:01
@Kurt, while that's true, the OP didn't mention that performance was his concern. There are other reasons for wanting asynchronous behaviour... – Peter Hansen Dec 14 '09 at 13:24
Threads in python aren't great when you want to have the option of killing the asynchronous method call, since only the main thread in python receives signals. – CivFan Jan 20 at 17:43

Something like this works for me, you can then call the function, and it will dispatch itself onto a new thread.

from thread import start_new_thread

def dowork(asynchronous=True):
    if asynchronous:
        args = (False)
        start_new_thread(dowork,args) #Call itself on a new thread.
        while True:
            #do something...
            time.sleep(60) #sleep for a minute
share|improve this answer

I heard Tornado is a fast library for multiprocessing in python. This is an example code:

import tornado.web
import tornado.httpserver
import tornado.ioloop

class MainHandler(tornado.web.RequestHandler):
    def get(self):
        self.write("Greetings from the instance %s!" % tornado.process.task_id())

app = tornado.web.Application([
    (r"/", MainHandler),

if __name__ == "__main__":
    server = tornado.httpserver.HTTPServer(app)
    server.start(0)  # autodetect number of cores and fork a process for each
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.