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:
Just run the server (double click a file, see the tutorial),
Open an interpreter and:
conn = rpyc.classic.connect("localhost")
data_obj = conn.modules.lazyme.AwesomeObject("ABCDE")
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
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
from multiprocessing import Pool
p = Pool(5)
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.