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I have a requirement - need to make about 20000+ calls to a webservice with different parameters. The webservice will return JSON data which needs to be processed. I have to write in Python. I am thinking of making it a cron job (a one time thing). Should I use Twisted for faster processing?

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closed as not constructive by JBernardo, Jarrod Roberson, Mike Graham, David Thornley, Charles Sep 7 '11 at 2:15

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A cron job is the exact opposite of a one-time thing. –  Wooble Sep 6 '11 at 19:15
You should really provide some more details about your performance and concurrency requirements, and what you mean by "faster". A separate question about how you might do this with Twisted or how you might do it with something else might be more useful. –  Glyph Sep 6 '11 at 21:05

3 Answers 3

up vote -5 down vote accepted

Twisted is about asynchronous processing not concurrent processing. deferToThread won't give you concurrency either, just a naive way to wrap blocking code in a non-blocking behavior. With CPython this doesn't give you concurrency because of the GIL.

If you have to process the results of the webservice calls synchronously then Twisted won't help at all, since that would imply blocking behavior.

It might be of some benefit if you can fire off the requests and put the responses in a queue and process them asynchronously, but the complexity of writing all the deferred implementations and queue handling would be high and need lots of testing.

But this would be more about throughput of the entire system rather than speed of execution of a single call.

Twisted is single threaded and will NOT exploit multiple cores at all and can be very complicated to make perform correctly, it still have all the limitations of the GIL that any CPython application has.

Everything in Twisted runs in a single process. Which means when one piece of code is running the entire server process is dedicated to that code, and no other request can be handled.

Twisted is great for IO bound tasks that can be done in a non-blocking manner. That said, for other tasks it can get CPU bound very quickly doing things like parsing/processing data represented as Strings, which is what JSON is can bog down a CPU this will cause blocking in Twisted.

If you require that as many calls to this webservice are made as quickly as possible in the shortest about of time ( stress test ) a better approach to this problem might be to write a program that can exploit the multiprocessing module and forget about the complexities of Twisted.

Break up the problem so that each worker can send and process N number of requests independently and create one process for each actual physical core on the machine.

If you require that as many request be made and as many as possible be held open simultaneously Twisted might be a good solution. ( Different type of stress test )

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launchpad.net/ampoule –  Jean-Paul Calderone Sep 6 '11 at 19:54
@wberry, The GIL means that a CPython program will not execute two threads running Python code in parallel, implying that if the processing makes this a CPU-bound problem, multithreading will not help. For waiting on something (where your time is spent in an IO-bound application), Twisted already solves the problem by not waiting. –  Mike Graham Sep 6 '11 at 20:44
@Mike Graham: This is diverging into the realm of discussion, but I personally find multiprocessing to be very well thought out. It works around the core problem of the GIL quite elegantly, and in a way that that is seldom a serious obstacle to combining it into a larger program. The main downside is the same as with any forking architecture; processes are expensive and the ways they can communicate are more limited. Making multiprocessing work well requires really understanding the problem, and really thinking through what the implementation aught to do to use its' resources well. –  SingleNegationElimination Sep 6 '11 at 21:25
@TokenMacGuy, Have you ever seriously used multiprocessing? Compared to when I've used MPI, RPC+process pool, independent processes + shared state in a database, or 0mq to achieve parallelization, I've found it fragile, limiting, and undebuggable. Its use of pickle also makes it desperate to introduce unnecessary bugs and inefficiencies. –  Mike Graham Sep 6 '11 at 21:58
The statement "With CPython [using threads] doesn't give you concurrency because of the GIL." is simply not accurate. Concurrency and parallelization are related things that many people equivocate. Concurrency is simply doing multiple things at once, which does not imply anything about executing on multiple processors at the same moment in time. Parallelization is splitting a task up over multiple processors to perform the processing in a distributed manner. –  Mike Graham Sep 6 '11 at 22:06

20000+ calls to a webservice with different parameters.

It may be in your best interest for something of this nature to not perform as well as possible. Most web services have terms of use that limit in some way the maximum number of requests coming from a particular account. Although it is worthwhile to employ some concurrency to this problem, and twisted might be a good fit for your particular needs (or another framework like celery or plain old multiprocessing/threading modules), make sure that whatever solution you use results in an access pattern that is well within the usage policy for the service in question, lest your IP or account get blocked for abuse.

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Valentino Volonghi has already solved this problem at Adroll, and they have graciously shared it with the world! Even better, it's written using Twisted! bitbucket.org/adroll/turtl –  lvh Sep 6 '11 at 22:32

Twisted handles a lot of the concurrency problem for you, and I have a lot of respect for that framework. But you do have to code within its world view, so make sure the payoff is worth the investment.

If you were looking for quick and dirty, which judging from your question is possible, then you could do worse than manually creating N Thread objects at a time and then joining them all in a loop.

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I would appreciate a comment to go with the downvote. –  wberry Sep 6 '11 at 20:30
Twisted is about asynchronous processing, which doesn't imply concurrency as it is well know you can block the main Twisted thread very easily. deferToThread does not give you concurrency either because of the GIL, it just gives you a naive way to not block. –  Jarrod Roberson Sep 6 '11 at 21:33
@Jarrod, That is not a fair explanation at all. Twisted exists to do concurrent network programming, and the fact that you can easily block the mainloop (if you wrote a bad program) no more implies you lack concurrency than the existence of locks implies threads cannot be used for concurrency. (This last statement holds true even when we bring in a specific lock--CPython's GIL. Your statement deferToThread does not give you concurrency either because of the GIL is not true or especially relevant.) –  Mike Graham Sep 6 '11 at 21:55
@Jarrod, Both threaded IO and Twisted certainly allow you to perform multiple network operations without waiting for one to complete before performing the other. –  Mike Graham Sep 6 '11 at 22:11
Fortunately, IO can be done plenty concurrently without needing to acquire the GIL. In a lot of applications (and from what I can tell, the original asker is in this case), CPU time is not the limiting factor. –  lvh Sep 6 '11 at 22:37

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