# Composite a numpy array/matrix based on column values and variables?

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!

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If I understand your description, you have a dataset something like this:

``````In [79]: x=np.random.randint(0,3,size=100)

In [80]: y=np.random.randint(0,100,size=100)

In [81]: d=np.vstack([x,y]).T

In [88]: print d[:5,:]
[[ 0 43]
[ 1 60]
[ 2 60]
[ 1  4]
[ 0 30]]
``````

In this situation `numpy.unique` can be used to generate an array of unique "key" values:

``````In [82]: idx=np.unique(d[:,0])

In [83]: print idx
[0 1 2]
``````

and those values used to drive a generator expression like this:

``````[113]: g=(d[np.where(d[:,0]==val),1].std() for val in idx)
``````

The generator `g` will emit the standard deviation of all the entries in `d` which match each entry in the index. `numpy.fromiterator` can then be used to collect the results:

``````In [114]: print np.vstack([idx,np.fromiter(g,dtype=np.float)]).T
[[  0.          26.87376385]
[  1.          29.41046084]
[  2.          24.2477246 ]]
``````

Note there is conversion of the keys to floating point in the last step during stacking, you might not want that depending on your data, but I did just it for illustrative purposes to have a "nice" looking final result to post.

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To create the mask, you can use the numpy.where function, like so:

``````male_mask = numpy.where(a[:,0]==2, False, True)
``````

Then, remember to use the special functions from numpy.ma: http://docs.scipy.org/doc/numpy/reference/routines.ma.html

``````male_average = numpy.ma.average(ma.array(a[:,1], mask=male_mask))
``````

EDIT: actually, this works just as well:

``````numpy.ma.average(ma.array(a[:,1], mask=a[:,0]!=value))
``````
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talonmies answer is quite nice here. I would just point out you can achieve more or less the same result with some simple slicing tricks and fancy indexing:

``````k = 100  #k rows of data
x = np.random.randint(0, 3, k)
y = np.random.randint(0, 100, k)
d = np.c_[x,y]

for i in xrange(3):
print 'std of {0} group = {1}'.format(i, d[where(d.T[0] == i)].T[1].std())
``````

I like the generator solution too, but knowing some of numpy's slicing and fancy indexing magic is a powerful tool to have at the fingertips when mucking around at the interpreter!

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