You could use np.lexsort:
Perform an indirect sort using a sequence of keys.
Given multiple sorting keys, which can be interpreted as columns in a
spreadsheet, lexsort returns an array of integer indices that
describes the sort order by multiple columns.
In : data = np.matrix(np.arange(10)[::-1].reshape(-1,2))
In : data
In : temp = data.view(np.ndarray)
In : np.lexsort((temp[:, 1], ))
Out: array([4, 3, 2, 1, 0])
In : temp[np.lexsort((temp[:, 1], ))]
Note if you pass more than one key to
np.lexsort, the last key is the primary key. The next to last key is the second key, and so on.
np.lexsort as I show above requires the use of a temporary array because
np.lexsort does not work on numpy matrices. Since
temp = data.view(np.ndarray) creates a view, rather than a copy of
data, it does not require much extra memory. However,
temp[np.lexsort((temp[:, 1], ))]
is a new array, which does require more memory.
There is also a way to sort by columns in-place. The idea is to view the array as a structured array with two columns. Unlike plain ndarrays, structured arrays have a
sort method which allows you to specify columns as keys:
In : data.dtype
In : temp2 = data.ravel().view('int32, int32')
In : temp2.sort(order = ['f1', 'f0'])
Notice that since
temp2 is a view of
data, it does not require allocating new memory and copying the array. Also, sorting
data at the same time:
In : data