I have a nested for loop in my python code that looks something like this:
results =  for azimuth in azimuths: for zenith in zeniths: # Do various bits of stuff # Eventually get a result results.append(result)
I'd like to parallelise this loop on my 4 core machine to speed it up. Looking at the IPython parallel programming documentation (http://ipython.org/ipython-doc/dev/parallel/parallel_multiengine.html#quick-and-easy-parallelism) it seems that there is an easy way to use
map to parallelise iterative operations.
However, to do that I need to have the code inside the loop as a function (which is easy to do), and then map across this function. The problem I have is that I can't get an array to map this function across.
itertools.product() produces an iterator which I can't seem to use the map function with.
Am I barking up the wrong tree by trying to use map here? Is there a better way to do it? Or is there some way to use
itertools.product and then do parallel execution with a function mapped across the results?