Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I want to run a cpu intensive program in Python across multiple cores and am trying to figure out how to write C extensions to do this. Are there any code samples or tutorials on this?

share|improve this question

5 Answers 5

You can already break a Python program into multiple processes. The OS will already allocate your processes across all the cores.

Do this.

python part1.py | python part2.py | python part3.py | ... etc.

The OS will assure that part uses as many resources as possible. You can trivially pass information along this pipeline by using cPickle on sys.stdin and sys.stdout.

Without too much work, this can often lead to dramatic speedups.

Yes -- to the haterz -- it's possible to construct an algorithm so tortured that it may not be sped up much. However, this often yields huge benefits for minimal work.

And.

The restructuring for this purpose will exactly match the restructuring required to maximize thread concurrency. So. Start with shared-nothing process parallelism until you can prove that sharing more data would help, then move to the more complex shared-everything thread parallelism.

share|improve this answer

Take a look at multiprocessing. It's an often overlooked fact that not globally sharing data, and not cramming loads of threads into a single process is what operating systems prefer.

If you still insist that your CPU intensive behaviour requires threading, take a look at the documentation for working with the GIL in C. It's quite informative.

share|improve this answer
    
The biggest problem I ran into with trying to use multiprocessing vs threading is that with trying to run 1000+ threads (processes) is that you get a separate instance of the Python interpreter with each one. This gets extremely expensive in terms of memory. –  Andy Oct 5 '11 at 12:48
    
@nalroff: That doesn't sound right. The memory used for the majority of the interpreter is shared by all instances of that interpreter. Only the pages that differ will increase total memory usage. Make sure that you're looking at the right value. It's also worth noting that processes do not use significantly more memory than additional threads. –  Matt Joiner Oct 5 '11 at 22:55
    
In every instance I have used the multiprocessing module in Python, I have always seen a dramatic difference in memory usage between processes and threads. Anyway, the threading module seems to be sufficiently fast for threaded web scraping and performance testing of a web app, which is all I'm using it for anyway. –  Andy Oct 6 '11 at 12:42

multiprocessing is easy. if thats not fast enough, your question is complicated.

share|improve this answer

Have you considered using one of the python mpi libraries like mpi4py? Although MPI is normally used to distribute work across a cluster, it works quite well on a single multicore machine. The downside is that you'll have to refactor your code to use MPI's communication calls (which may be easy).

share|improve this answer

This is a good use of C extension. The keyword you should search for is Py_BEGIN_ALLOW_THREADS.

http://docs.python.org/c-api/init.html#thread-state-and-the-global-interpreter-lock

P.S. I mean if you processing is already in C, like imaging processing, then release the lock in C extension is good. If your processing code is mainly in Python, other people's suggestion to multiprocessing is better. It is usually not justify to rewrite the code in C for background processing.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.