I'm trying to build a function that returns the products of subsets of array elements. Basically I want to build a 'prod_by_group' function that does this:

```
values = np.array([1,2,3,4,5,6])
groups = np.array([1 1 1 2 3 3])
Vprods = prod_by_group(values, groups)
```

And the resulting Vprods should be:

```
Vprods
array([6, 4, 30])
```

There's a great answer here for sums of elements that I think it should be similar to: http://stackoverflow.com/a/4387453/1085691

I tried taking the `log`

first, then sum_by_group, then `exp`

, but ran into numerical issues :)

There are some other similar answers here for min and max of elements by group: http://stackoverflow.com/a/8623168/1085691

Edit: Thanks for the quick answers! I'm trying them out. I should add that I want it to be as fast as possible (that's the reason I'm trying to get it in numpy in some vectorized way, like the examples I gave). Thanks!

Edit: I evaluated all the answers given so far, and the best one is given by @seberg below. Here's the full function that I ended up using:

```
def prod_by_group(values, groups):
order = np.argsort(groups)
groups = groups[order]
values = values[order]
group_changes = np.concatenate(([0], np.where(groups[:-1] != groups[1:])[0] + 1))
return np.multiply.reduceat(values, group_changes)
```

`group_by`

and`aggregate`

, but my point is that if you want to do this a lot, it pays to read the`pandas`

documentation and learn to use pandas as a whole, because it makes this kind of thing easy with its entire setup of data structures. – BrenBarn Nov 16 '12 at 20:08