EDIT2: as negative inicies in python have meaning, I think they should not be used to specify descending order for the column, therefore I used here an auxiliary Descending-object.

```
import numpy as np
class Descending:
""" for np_sortrows: sort column in descending order """
def __init__(self, column_index):
self.column_index = column_index
def __int__(self): # when cast to integer
return self.column_index
def np_sortrows(M, columns=None):
""" sorting 2D matrix by rows
:param M: 2D numpy array to be sorted by rows
:param columns: None for all columns to be used,
iterable of indexes or Descending objects
:return: returns sorted M
"""
if len(M.shape) != 2:
raise ValueError('M must be 2d numpy.array')
if columns is None: # no columns specified, use all in reversed order
M_columns = tuple(M[:, c] for c in range(M.shape[1]-1, -1, -1))
else:
M_columns = []
for c in columns:
M_c = M[:, int(c)]
if isinstance(c, Descending):
M_columns.append(M_c[::-1])
else:
M_columns.append(M_c)
M_columns.reverse()
return M[np.lexsort(M_columns), :]
data = np.array([[3, 0, 0, .24],
[4, 1, 1, .41],
[2, 1, 3, .25],
[2, 1, 1, .63],
[1, 1, 3, .38]])
# third column is index 2, fourth column in reversed order at index 3
print(np_sortrows(data, [2, Descending(3)]))
```