From my experience, multi-threading is probably not going to be a viable option for speeding things up (due to the Global Interpreter Lock).
A good alternative is the
multiprocessing module. This may or may not work well, depending on how much data you end up having to pass around from one process to another.
Another good alternative would be to consider using
numpy for your computations (if you aren't already). If you can vectorize your code, you should be able to achieve significant speedups even on a single core. Depending on what exactly you're doing and on your build of
numpy, it might even be able to transparently distribute the computations across multiple cores.
edit Here is a complete example of using the
multiprocessing module to perform a simple computation. It uses four processes to compute the squares of the numbers from zero to nine.
from multiprocessing import Pool
if __name__ == '__main__':
pool = Pool(processes=4) # start 4 worker processes
inputs = range(10)
result = pool.map(f, inputs)
This is meant as a simple illustration. Given the trivial nature of
f(), this parallel version will almost certainly be slower than computing the same thing serially.