Basically, I have a large object that I want to perform some function on, that lends itself well to parallel processing. In this example, I have a large matrix and I want to compute all pairwise inner products between column vectors.
Please take a look at the following IPython Notebook.
I realise that the
@interactive decorator is not necessary in this context and I tried removing the
@require decorator but its impact is negligible.
My question is: Is there any way available to improve the performance of the parallel machinery?
I don't know the implementation details of the
map methods, could I avoid overhead by pushing the function that is executed in parallel to the engines in the view? I can't imagine that it is sent with every argument, though.
Chunking the argument list myself and writing a function for remote use that works on that seems silly as well.
I tried the notebook on a four core machine and the results in the notebook are for a two core machine.