I have to lists like these:

```
a = ["1a","2a","3a","4a","5a","6a","7a","8a","9a","10a","11a","12a","13a","14a"]
b = ["1b","2b","3b","4b","5b","6b","7b","8b","9b","10b","11b","12b","13b","14b"]
```

**And what I want is to combine them, so that there is at least a difference of n elements between an element from a and it's corresponding element in b.**

As an example, if my *n* is 10, and "3a" is in position 3 and "3b" is in position 5, that isn't a solution since there's only a distance of 2 between these corresponding elements.

I have already solved this for the purpose I want through a brute force method: shuffle the union of the two arrays and see if the constraint is met; if not, shuffle again and so on... Needless to say, that for 14 elements array, sometimes there is 5 to 10 second computation to yield a solution with a minimum distance of 10. Even though that's kind of ok for what I am looking for, I am curious about how I could solve this in a more optimized way.

I am currently using Python, but code in any language (or pseudo-code) is more than welcomed.

**EDIT**: The context of this problem is something like a questionnarie, in which around 100 participants are expected to join in. Therefore, I am not necessarily interested in *all* the solutions, but rather something like the first 100.

Thanks.

totallyhard, you could try an optimization approach as in this related question. – tobias_k Jun 25 '13 at 16:54