I have a numpy datastructure as follows:

```
[[['diaad'],
['iaadf'],
['aadfe'],
['hedbb'],
['edbbb'],
['dbbbb']],
[['gegec'],
['ehecf'],
['gecfc'],
['gadff'],
['adfef'],
['dffgc']],
[['ddddj'],
['dddjd'],
['ddjdd'],
['jfffd'],
['fgfdb'],
['ggdbb']]]
```

which is instantiated like this:

```
>>> a = np.array([[['diaad'], ['iaadf'], ['aadfe'], ['hedbb'], ['edbbb'], ['dbbbb']], [['gegec'], ['ehecf'], ['gecfc'], ['gadff'], ['adfef'], ['dffgc']], [['ddddj'], ['dddjd'], ['ddjdd'], ['jfffd'], ['fgfdb'], ['ggdbb']]])
```

Is there a direct `numpy`

way of computing a custom function over pairwise elements?

For instance, say, my custom function is called `processPair(a,b)`

. It should compute the result for all pairwise elements along the column i.e. between `('diaad', 'gegec')`

, `('gegec', 'ddddj')`

and `('diaad', 'ddddj')`

. Any suggestions on doing this? I was thinking the `map`

function can achieve this but am not entirely sure how though.