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I plan do program a simple data flow framework, which basically consists of lazy method calls of objects. If I ever consider distributed programming, what is the easiest way to enable that in Python? Any transparent solution without me doing network programming?

Or for a start, how can I make use of multi-core processors in Python?

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closed as too broad by gnat, Mark Rotteveel, Mi-Creativity, jedrzej.kurylo, Paul92 Jan 2 at 16:09

There are either too many possible answers, or good answers would be too long for this format. Please add details to narrow the answer set or to isolate an issue that can be answered in a few paragraphs.If this question can be reworded to fit the rules in the help center, please edit the question.

@Karoly: If I knew any of the technical terms there I wouldn't ask (CORBA, RPC, Cloud). – Gerenuk Apr 22 '12 at 9:06
up vote 10 down vote accepted

lazy method calls of objects

Can be anything at all really, so lets brake it down:

Simple Let-Me-Call-That-Function (RPC)

Well lucky you! python has the one of greatest implemetations of Remote Procedure Calls: RPyC.

Just run the server (double click a file, see the tutorial),

Open an interpreter and:

import rpyc
conn = rpyc.classic.connect("localhost")
data_obj = conn.modules.lazyme.AwesomeObject("ABCDE")
print data_obj.calculate(10)

And a lazy version (async):

# wrap the remote function with async(), which turns the invocation asynchronous
acalc = rpyc.async(data_obj.calculate)
res = acalc(10)
print res.ready, res.value

Simple Data Distribution

You have a defined unit of work, say a complex image manipulation. What you do is roughly create Node(s), which does the actual work (aka, take an image, do the manipulation, and return the result), someone who collect the results (a Sink) and someone who create the work (the Distributor).

Take a look at Celery.

If it's very small scale, or if you just want to play with it, see the Pool object in the multiprocessing package:

from multiprocessing import Pool
p = Pool(5)
def f(x):
     return x*x
print p.map(f, [1,2,3])

And the truly-lazy version:

print p.map_async(f, [1,2,3])

Which returns a Result object which can be inspected for results.

Complex Data Distribution

Some multi-level more-than-just-fire&forget complex data manipulation, or a multi-step processing use case.

In such case, you should use a Message Broker such as ZeroMQ or RabbitMQ. They allow to you send 'messages' across multiple servers with great ease.

They save you from the horrors of the TCP land, but they are a bit more complex (some, like RabbitMQ, require a separate process/server for the Broker). However, they give you much more fine-grained control over the flow of data, and help you build a truly scalable application.


While not data-distribution per se, It is the hottest trend in web server back-ends: use 'green' threads (or events, or coroutines) to delegate IO heavy tasks to a dedicated thread, while the application code is busy maxing-out the CPU.

I like Eventlet a lot, and gevent is another option.

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Wow, that's really useful :) It will take me a while to go through these options. But first I finish my dataflow framework. It's pretty cool what can be done with Python. – Gerenuk Apr 23 '12 at 8:43

Try Gearman http://gearman.org/

Gearman provides a generic application framework to farm out work to other machines or processes that are better suited to do the work. It allows you to do work in parallel, to load balance processing, and to call functions between languages. It can be used in a variety of applications, from high-availability web sites to the transport of database replication events. In other words, it is the nervous system for how distributed processing communicates.

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Thanks. Sounds interesting :) – Gerenuk Apr 22 '12 at 13:49

Please read python.org official resoureces as the starter:


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I had seen that. But I don't know what fork/job/cluster/grid means. Maybe you could outline differences and suggest an appropriate solution? The actual library I can find out myself. – Gerenuk Apr 22 '12 at 9:08
Since your question is vague, you get vague answers. I am afraid that with this unspecific question this is the best answer you might get. I suggest you code your application first and come back with more concrete questions, or spend your time studying different solutions. – Mikko Ohtamaa Apr 22 '12 at 9:10
Also for very very basic needs this is enough: docs.python.org/library/… – Mikko Ohtamaa Apr 22 '12 at 9:11
The questions isn't vague but should be an indication that I don't know much about that topic (that's why it's a question). So answers could adjust accordingly explaining basic concepts. But maybe you last comment is some start. Thanks. – Gerenuk Apr 22 '12 at 9:16
google fork/job/cluster/grid – Karoly Horvath Apr 22 '12 at 10:35

Another framework you might consider is Versile Python (full disclosure: I am a VPy developer). Documentation recipes has relevant code examples. With the framework it is easy to set up and connect to services, and you can either define explicit public method interfaces to classes or use the native python type framework to remotely access local methods.

Note you would have to set up your program to run in multiple processes in order to take advantage of multiple cores (due to the python global interpreter lock).

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