# Numpy data alignment when slicing

I do the following:

from numpy import genfromtxt

x = genfromtxt('foo.csv',delimiter=',',usecols=(0,1))

y = genfromtxt('foo.csv',delimiter=',',usecols=(2),dtype=str)

Then I enter:

x[y=='y1Out',0] # assume the set of "y" is 'y1Out' and 'y2Out'

That command prints all the "0 column" values in "x" that have an associated "y" value equal to y1Out. How is this possible? That is, how does numpy keep track of the alignment between "x" and "y"? I thought numpy doesn't have data alignment.

-

When you do y == 'y10ut' and y is an array of dtype string, numpy returns a boolean array with the indices of y where the condition is met. E.g.:

import numpy as np
y = np.empty(10, dtype='S8')
# populating the array with 'y10ut' and 'y20ut' alternatively
y[1::2] = 'y10ut'
y[::2] = 'y20ut'

then you can evaluate the condition:

>>> y == 'y10ut'
array([False,  True, False,  True, False,  True, False,
True, False,  True], dtype=bool)

And this resulting array can be used as an index array for x. Note that if y is not an array of strings, the resulting evaluation is no longer an index array:

>>> y = np.arange(5, dtype='f')
>>> y == 'y10ut'
False

In your case, numpy doesn't know the relation between x and y. But given the condition y == 'y10ut', it will index the first dimension of x according to it, which seems to be what you want.

-