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I am considering the implementation of a light weight distributed processing framework, which has similar api with multiprocessing in Python. An example is as follow:

#! /usr/bin/env python
# distributed processing demo api
from dprocessing import Pool, SSHBackend

def woker(*args, **kwargs):
    print args
    print kwargs

ssh_config = {
    'artisans': [
        {'host': '', 'username': 'user',
            'password': 'pass', 'cores': 2},
        {'host': '', 'username': 'user',
            'password': 'pass', 'cores': 4},
backend = SSHBackend(**ssh_config)

pool = Pool(backend), range(10)) # run 10 jobs in 6 processes by 2 artisans

Do these projects can achieve such kind of goal that running jobs in multi-computers with simple api? And would you give me some advises to implement the framework?

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1 Answer 1

Maybe you're looking for something like Scientific.BSP and Scientific.MPI?

The projects you've mentioned certainly could solve the problem at some level. Afterall some of them implement CORBA and CORBA-like specifications which are definitely designed to provide "you even don't know where your code runs on" model of execution. But I couldn't admit that these technologies provide such a simple to use abstraction as multiprocessing does. Well, a sprt of, it's something that doesn't have well defined comparison criteria and in general heavily depend on personal tastes and previous experience...

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