I just started to play with numpy/scipy a bit and I'm having trouble finding a feature in the documentation and I was wondering if you could help:

If I have an array in numpy with two columns and k rows. One column serves as an numerical indicator (e.g. 2 = male, 1 = female, 0 = unknown) while the second column is perhaps a list of values or scores.

Lets say that I want to find the standard deviation (could be mean or whatever, I just want to apply a function) of the values for all rows with indicator 0, and then for 1, and finally, 2. Is there a predefined function to composite this for me? In R, the equivalent can be found in the 'plyr' package. Does numpy/scipy have an equivalent or am I stuck creating a mask for this array and then somehow filtering through this mask and then applying my function? What is the numpy way?

As always, thanks for your help!