5

I have this line of code:

TableArr = numpy.sort(TableArr, order=['destID','ATTRACT'])

I need the 'ATTRACT' order to be descending while the destID to be ascending, which is default for both. Attempts with [::-1] failed, as it reverses the entire array.

I'll add that a reverse argument that can be set to True or False was mentioned elsewhere, but it doesn't work for me and isn't mentioned in the Numpy's documentation.

4
  • I assume TableArr is a numpy record array? You're probably better of using pandas: its DataFrame class has a sort method that can do what you want.
    – user707650
    Sep 4, 2015 at 8:30
  • The Python list sort takes a reverse parameter; numpy's does not. The numpy solution in the link was to multiply a column by -1, and argsort.
    – hpaulj
    Sep 4, 2015 at 12:29
  • If @hpauli's approach doesn't work for you, you could sort by 'destID', and then sort slices with the same values in this field independently by 'ATTRACT' and replace the slices. This might be slow though. Or you convert to a list and use the key-argument of list.sort
    – Dux
    Sep 4, 2015 at 14:24
  • @hpauli's Thanks for the tip, I simply multiplied that 'ATTRACT' column by (-1) before and after the sort. Thanks all the others as well.
    – Blerg
    Sep 4, 2015 at 17:17

1 Answer 1

3

Here's an interactive session that tests the idea in my comment:

In [1]: import numpy as np

In [2]: dt = np.dtype([('destID',int),('ATTRACT',float),('other','S10')])
In [3]: TableArr=np.zeros((10,),dt)
In [5]: TableArr['destID']=np.random.randint(10,size=(10,))
In [6]: TableArr['ATTRACT']=np.random.randint(100,size=(10,))

In [7]: TableArr
Out[7]: 
array([(2, 39.0, b''), (7, 7.0, b''), (8, 74.0, b''), (5, 83.0, b''),
       (5, 3.0, b''), (9, 26.0, b''), (8, 9.0, b''), (3, 1.0, b''),
       (1, 67.0, b''), (7, 5.0, b'')], 
      dtype=[('destID', '<i4'), ('ATTRACT', '<f8'), ('other', 'S10')])

In [13]: Tcopy=TableArr[['destID','ATTRACT']].copy()
# use copy() to avoid a FutureWarning

In [14]: Tcopy['ATTRACT'] *= -1  # 'reverse' a field

In [16]: I=np.argsort(Tcopy,order=['destID','ATTRACT'])

In [17]: I
Out[17]: array([8, 0, 7, 3, 4, 1, 9, 2, 6, 5], dtype=int32)

In [18]: TableArr[I]
Out[18]: 
array([(1, 67.0, b''), (2, 39.0, b''), (3, 1.0, b''), (5, 83.0, b''),
       (5, 3.0, b''), (7, 7.0, b''), (7, 5.0, b''), (8, 74.0, b''),
       (8, 9.0, b''), (9, 26.0, b'')], 
      dtype=[('destID', '<i4'), ('ATTRACT', '<f8'), ('other', 'S10')])

The integers are increasing, and for the 3 cases where they tie, the floats are decreasing. So it works.

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