# 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.

# Summary

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).

`func()`

is symmetric, right?`func(a,b)`

==`func(b,a)`

? – Aman Oct 30 '12 at 16:04`A`

and`B`

as borders @senderle, I need to store the results and visualize it, e.g. with pyplot – madzone Oct 30 '12 at 16:51orcalculate a trillion values, let alone attempt to visualize them. – Phil H Oct 30 '12 at 17:14