I'm trying to transfer a function across a network connection (using asyncore). Is there an easy way to serialize a python function (one that, in this case at least, will have no side effects) for transfer like this?

I would ideally like to have a pair of functions similar to these:

def transmit(func):
    obj = pickle.dumps(func)
    [send obj across the network]

def receive():
    [receive obj from the network]
    func = pickle.loads(s)
  • This would be so cooler than all the serialization and API classes of REST
    – Kermit
    Oct 19, 2020 at 23:09

12 Answers 12


You could serialise the function bytecode and then reconstruct it on the caller. The marshal module can be used to serialise code objects, which can then be reassembled into a function. ie:

import marshal
def foo(x): return x*x
code_string = marshal.dumps(foo.__code__)

Then in the remote process (after transferring code_string):

import marshal, types

code = marshal.loads(code_string)
func = types.FunctionType(code, globals(), "some_func_name")

func(10)  # gives 100

A few caveats:

  • marshal's format (any python bytecode for that matter) may not be compatable between major python versions.

  • Will only work for cpython implementation.

  • If the function references globals (including imported modules, other functions etc) that you need to pick up, you'll need to serialise these too, or recreate them on the remote side. My example just gives it the remote process's global namespace.

  • You'll probably need to do a bit more to support more complex cases, like closures or generator functions.

  • 1
    In Python 2.5, the "new" module is deprecated. 'new.function' should be replaced by 'types.FunctionType', after an "import types", I believe. Aug 10, 2009 at 10:31
  • 3
    Thanks. This is exactly what I was looking for. Based on some cursory testing, it works as is for generators. Aug 10, 2009 at 17:47
  • 2
    If you read the first couple of paragraphs on the marshal module you see it strongly suggests using pickle instead? Same for the pickle page. docs.python.org/2/library/marshal.html
    – dgorissen
    Feb 25, 2013 at 9:48
  • 1
    I am trying to apply the marshal module to serialize a dictionary of dictionaries initialized as defaultdict(lambda : defaultdict(int)). But it returns the error ValueError: unmarshallable object. Note I'am usin python2.7. Any idea? Thanks
    – user17375
    May 8, 2013 at 4:56
  • 4
    On Python 3.5.3, foo.func_code raises AttributeError. Is there another way to get the function code?
    – AlQuemist
    Nov 18, 2018 at 19:42

Check out Dill, which extends Python's pickle library to support a greater variety of types, including functions:

>>> import dill as pickle
>>> def f(x): return x + 1
>>> g = pickle.dumps(f)
>>> f(1)
>>> pickle.loads(g)(1)

It also supports references to objects in the function's closure:

>>> def plusTwo(x): return f(f(x))
>>> pickle.loads(pickle.dumps(plusTwo))(1)
  • 2
    dill also does a pretty good job of getting the source code from functions and lambdas and saving those to disk, if you'd prefer that over object pickling. Jan 23, 2014 at 4:03
  • 2
    Just works. And a drop-in solution too, it works straight after import, didn't have to modify any other code around pickle.
    – Be Kind
    Mar 10, 2021 at 5:25
  • It also saves the globals within the function too!
    – Princy
    May 19, 2021 at 16:44
  • should this be the newly accepted answer?
    – xappppp
    Aug 22, 2022 at 21:12

The most simple way is probably inspect.getsource(object) (see the inspect module) which returns a String with the source code for a function or a method.

  • This looks good, except that the function name is explicitly defined in the code, which is slightly problematic. I could strip the first line of the code off, but that's breakable by doing something like 'def \/n func():'. I could pickle the name of the function with the function itself, but I'd have no guarantees that the name wouldn't collide, or I'd have to put the function in a wrapper, which is still not the cleanest solution, but it might have to do. Aug 10, 2009 at 8:01
  • 1
    Note that the inspect module is actually just asking the function where it was defined, and then reading in those lines from the source code file - hardly sophisticated. Aug 10, 2009 at 9:05
  • 1
    You can find out the function's name using its .__name__ attribute. You could do a regex replace on ^def\s*{name}\s*( and give it whatever name you like. It's not foolproof, but it will work for most things. Aug 10, 2009 at 9:09

Pyro is able to do this for you.

  • I'd need to stick with the standard library for this particular project. Aug 10, 2009 at 7:48
  • 24
    But that doesn't mean you can't look at the code of Pyro to see how it is done :) Aug 10, 2009 at 9:45
  • 6
    @AaronDigulla- true, but it's worth mentioning that before reading a single line of someone else's published code, you should always check the software's license. Reading someone else's code and reusing the ideas without citing the source or adhering to license/copying constraints could be considered plagiarism and/or copyright violation in many cases.
    – mdscruggs
    Aug 14, 2013 at 14:07

It all depends on whether you generate the function at runtime or not:

If you do - inspect.getsource(object) won't work for dynamically generated functions as it gets object's source from .py file, so only functions defined before execution can be retrieved as source.

And if your functions are placed in files anyway, why not give receiver access to them and only pass around module and function names.

The only solution for dynamically created functions that I can think of is to construct function as a string before transmission, transmit source, and then eval() it on the receiver side.

Edit: the marshal solution looks also pretty smart, didn't know you can serialize something other thatn built-ins


In modern Python you can pickle functions, and many variants. Consider this

import pickle, time
def foobar(a,b):
    print("%r %r"%(a,b))

you can pickle it

p = pickle.dumps(foobar)
q = pickle.loads(p)

you can pickle closures

import functools
foobar_closed = functools.partial(foobar,'locked')
p = pickle.dumps(foobar_closed)
q = pickle.loads(p)

even if the closure uses a local variable

def closer():
    z = time.time()
    return functools.partial(foobar,z)
p = pickle.dumps(closer())
q = pickle.loads(p)

but if you close it using an internal function, it will fail

def builder():
    z = 'internal'
    def mypartial(b):
        return foobar(z,b)
    return mypartial
p = pickle.dumps(builder())
q = pickle.loads(p)

with error

pickle.PicklingError: Can't pickle <function mypartial at 0x7f3b6c885a50>: it's not found as __ main __.mypartial

Tested with Python 2.7 and 3.6

  • 5
    Just note, pickling does not actually serializer all the code. This is just serialising a reference to the function. Which means you can only run it if the function exists in the future. Think of the case where you want to replay code at a point in time (not that you would), but this would not allow it - you couldn't store the pickled function and call it in a moved on code base if that function no longer exists or doesn't exist in the same form.
    – Trent
    Apr 4, 2022 at 23:54
  • absolutely true; but the OP was explicitly asking for "pickling"
    – am70
    Oct 20, 2023 at 7:21

The cloud package (pip install cloud) can pickle arbitrary code, including dependencies. See https://stackoverflow.com/a/16891169/1264797.

code_string = '''
def foo(x):
    return x * 2
def bar(x):
    return x ** 2

obj = pickle.dumps(code_string)



> 2
> 9

Cloudpickle is probably what you are looking for. Cloudpickle is described as follows:

cloudpickle is especially useful for cluster computing where Python code is shipped over the network to execute on remote hosts, possibly close to the data.

Usage example:

def add_one(n):
  return n + 1

pickled_function = cloudpickle.dumps(add_one)

You can do this:

def fn_generator():
    def fn(x, y):
        return x + y
    return fn

Now, transmit(fn_generator()) will send the actual definiton of fn(x,y) instead of a reference to the module name.

You can use the same trick to send classes across network.


The basic functions used for this module covers your query, plus you get the best compression over the wire; see the instructive source code:

y_serial.py module :: warehouse Python objects with SQLite

"Serialization + persistance :: in a few lines of code, compress and annotate Python objects into SQLite; then later retrieve them chronologically by keywords without any SQL. Most useful "standard" module for a database to store schema-less data."



Here is a helper class you can use to wrap functions in order to make them picklable. Caveats already mentioned for marshal will apply but an effort is made to use pickle whenever possible. No effort is made to preserve globals or closures across serialization.

    class PicklableFunction:
        def __init__(self, fun):
            self._fun = fun

        def __call__(self, *args, **kwargs):
            return self._fun(*args, **kwargs)

        def __getstate__(self):
                return pickle.dumps(self._fun)
            except Exception:
                return marshal.dumps((self._fun.__code__, self._fun.__name__))

        def __setstate__(self, state):
                self._fun = pickle.loads(state)
            except Exception:
                code, name = marshal.loads(state)
                self._fun = types.FunctionType(code, {}, name)

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