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I am new to python and my problem is the following:

I have defined a function func(a,b) that return a value, given two input values.

Now I have my data stored in lists or numpy arrays A,Band would like to use func for every combination. (A and B have over one million entries)

ATM i use this snippet:

for p in A:
  for k in B:
    value = func(p,k)

This takes really really a lot of time.

So i was thinking that maybe something like this:


But this method only works pairwise... Any ideas?

Thanks for help

share|improve this question
Your func() is symmetric, right? func(a,b) == func(b,a)? – Aman Oct 30 '12 at 16:04
@madzone: What kind of comparison are you doing with these pairs? – Phil H Oct 30 '12 at 16:42
We need more information about func and about what you plan to do with the result. Are you trying to store all the results at once in a trillion-item matrix? (Good luck!) Or do you just need to iterate over each result without storing any of them? – senderle Oct 30 '12 at 16:48
@PhilH, its just a numerical integration with these two numbers of A and B as borders @senderle, I need to store the results and visualize it, e.g. with pyplot – madzone Oct 30 '12 at 16:51
@madzone: a trillion values? You don't want to store or calculate a trillion values, let alone attempt to visualize them. – Phil H Oct 30 '12 at 17:14

4 Answers 4

up vote 1 down vote accepted

suppose, itertools.product does what you need:

from itertools import product

pro = product(A,B)
C = map(lambda x: func(*x), pro)

so far as it is generator it doesn't require additional memory

share|improve this answer
This calls f(A[0], B[0]), f(A[1], B[1]), and so on. Probably not what the OP wants. – katrielalex Oct 30 '12 at 16:11
@adray, I think you want combinations_with_replacement, as apparently func(a,b) == func(b,a). – Phil H Oct 30 '12 at 16:55
@ Works really good after I subdivided the arrays. Thanks very much – madzone Nov 2 '12 at 15:56

First issue

You need to calculate the output of f for many pairs of values. The "standard" way to speed up this kind of loops (calculations) is to make your function f accept (NumPy) arrays as input, and do the calculation on the whole array at once (ie, no looping as seen from Python). Check any NumPy tutorial to get an introduction.

Second issue

If A and B have over a million entries each, there are one trillion combinations. For 64 bits numbers, that means you'll need 7.3 TiB of space just to store the result of your calculation. Do you have enough hard drive to just store the result?

Third issue

If A and B where much smaller, in your particular case you'd be able to do this:

values = f(*meshgrid(A, B))

meshgrid returns the cartesian product of A and B, so it's simply a way to generate the points that have to be evaluated.


  • You need to use NumPy effectively to avoid Python loops. (Or if all else fails or they can't easily be vectorized, write those loops in a compiled language, for instance by using Cython)

  • Working with terabytes of data is hard. Do you really need that much data?

  • Any solution that calls a function f 1e12 times in a loop is bound to be slow, specially in CPython (which is the default Python implementation. If you're not really sure and you're using NumPy, you're using it too).

share|improve this answer
Hi. Thanks for the answer.Unfortunately CPython is not an option atm. What does meshgrid exactly do? Can you please explain a bit further? – madzone Oct 30 '12 at 16:36
Ok, you seem a bit confused (I understand that, and I'm sorry for using so much terminology in my answer, but you have a few intertwined issues right now). I'll try to expand my answer. – jorgeca Oct 30 '12 at 16:44
Hi, thx @jorgeca. – madzone Nov 1 '12 at 10:20
Hi, thx @jorgeca. As you suggested I also try to avoid explicit loops and did write all my functions so that I can run them on entire numpy.arrays. I can make subsamples of my arrays and ran the code in pieces, that's a good point. Still the calculations take too much time.. thnx anyway – madzone Nov 1 '12 at 11:28
@madzone I strongly suspect you're doing way too many calculations. I'm repeating myself, but how do you expect to store the result? What kind of machine are you going to use to plot over 7 TiB of data using matplotlib? Using a HiRes display at 200 ppi and 1 pixel per calculated value, you'd need a display of over 160 m^2 to see the whole thing!! – jorgeca Nov 1 '12 at 11:50

One million times one million is one trillion. Calling f one trillion times will take a while.

Unless you have a way of reducing the number of values to compute, you can't do better than the above.

share|improve this answer
NumPy lets you push the loops (and their overhead, including function calls) down to C, so it's much faster. Still, one trillion floats are quite a lot... – jorgeca Oct 30 '12 at 16:40

If you use NumPy, you should definitely look the np.vectorize function which is designed for this kind of problems...

share|improve this answer
Hi @Pierre GM, as much as I understood np.vectorize is similar to the python map function. If I vectorize a function and call it with two arrays, it will work as follows: f(A[0], B[0]), f(A[1], B[1]). But I need to call in every combination. thx – madzone Nov 1 '12 at 9:12

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