I have two numpy arrays. One is N by M the other is N by 1. I want to be able to sort the first list by any one of it's M dimensions, and I want the lists to keep the same order (i.e. if I swap rows 1 and 15 of list1, I want rows 1 and 15 of list2 to swap too.)
For example:
import numpy as np
a = np.array([[1,6],[3,4],[2,5]])
b = np.array([[.5],[.8],[.2]])
Then, I'd like to be able to sort by, say, the first element of each row in a
to give:
a = [[1,6],[2,5],[3,4]]
b = [[.5],[.2],[.8]]
or to sort by, say, the second element of each row in a
to give:
a = [[3,4],[2,5],[1,6]]
b = [[.8],[.2],[.5]
I see lots of similar problems in which both lists are single dimensional like, e.g, this question. Or questions about sorting lists of lists, e.g., this one. But I can't find what I'm looking for.
Eventually I got this to work:
import numpy as np
a = np.array([[1,6],[3,4],[2,5]])
b = np.array([[.5],[.8],[.2]])
package = zip(a,b)
print package[0][1]
sortedpackage= sorted(package, key=lambda dim: dim[0][1])
d,e = zip(*sortedpackage)
print d
print e
Now this produces d and e as I want:
d = [[3,4],[2,5],[1,6]]
e = [[.8],[.2],[.5]
But I don't understand why. The print package[0][1]
gives 0.5 -- which is not the element I'm sorting by. Why is this? Is what I'm doing robust?