How can I change the serialization method used by the Python multiprocessing library? In particular, the default serialization method uses the pickle library with the default pickle protocol version for that version of Python. The default pickle protocol is version 2 in Python 2.7 and version 3 in Python 3.6. How can I set the protocol version to 2 in Python 3.6, so I can use some of the classes (like Client and Listener) in the multiprocessing library to communicate between a server processing run by Python 2.7 and a client process run by Python 3.6?

(Side note: as a test, I modified line 206 of multiprocessing/connection.py by adding protocol=2 to the dump() call to force the protocol version to 2 and my client/server processes worked in my limited testing with the server run by 2.7 and the client by 3.6).

In Python 3.6, a patch was merged to let the serializer be set, but the patch was undocumented, and I haven't figured out how to use it. Here is how I tried to use it (I posted this also to the Python ticket that I linked to):


from multiprocessing.reduction import ForkingPickler, AbstractReducer

class ForkingPickler2(ForkingPickler):
    def __init__(self, *args):
        if len(args) > 1:
            args[1] = 2

    def dumps(cls, obj, protocol=2):
        return ForkingPickler.dumps(obj, protocol)

def dump(obj, file, protocol=2):
    ForkingPickler2(file, protocol).dump(obj)

class Pickle2Reducer(AbstractReducer):
    ForkingPickler = ForkingPickler2
    register = ForkingPickler2.register
    dump = dump

and in my client:

import pickle2reducer
multiprocessing.reducer = pickle2reducer.Pickle2Reducer()

at the top before doing anything else with multiprocessing. I still see ValueError: unsupported pickle protocol: 3 on the server run by Python 2.7 when I do this.


2 Answers 2


I believe the patch you're referring to works if you're using a multiprocessing "context" object.

Using your pickle2reducer.py, your client should start with:

import pickle2reducer
import multiprocessing as mp

ctx = mp.get_context()
ctx.reducer = pickle2reducer.Pickle2Reducer()

And ctx has the same API as multiprocessing.

Hope that helps!

  • That seems like the right way to make use of the patch. I don't see how to use a context in my specific situation. I use from multiprocessing.connection import Client, Listener and from multiprocessing.managers import BaseManager, NameSpaceProxy and none of those four classes are accessible from the context object. I was able to do this instead: multiprocessing.context._default_context.reducer = Pickle2Reducer().
    – ws_e_c421
    Jul 28, 2017 at 20:04

Thanks so much for this. It led me exactly to the solution I needed. I ended up doing something similar but by modifying the Connection class. It felt cleaner to me than making my own full subclass and replacing that.

from multiprocessing.connection import Connection, _ForkingPickler, Client, Listener

def send_py2(self, obj):
    self._send_bytes(_ForkingPickler.dumps(obj, protocol=2))

Connection.send = send_py2

This is just exactly the code from multiprocessing.connection with only the protocol=2 argument added.

I suppose you could even do the same thing by directly editing the original ForkingPickler class inside of multiprocessing.reduction.

  • There is a syntax error at the third line in the function, you forgot a close parenthesis in self._send_bytes Jul 4, 2021 at 4:48
  • Thanks! That's what happens when you copy and paste carelessly. Just updated it. Jul 5, 2021 at 5:19

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