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I have a structured numpy array, and I am sorting it by a order. It works pretty fine but in just one direction!

Descending:

sort(myStructuredArray,order=my_order)[::-1]

and

Ascending:

sort(myStructuredArray,order=my_order)

The order my_order is something like [col1,col2,-col3,col4,-col5,...,colN] and for some columns I would like to order it ascending like col1,col2 and colN and for others descending col3 and col5 (minus signal) . In this example I would like to sort my array first by col1 ascending, then by col2 ascending, then by col3 descending, then by col4 ascending, then by col5 descending and so on... How can I do that?

Thank you

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Hi. Thank you all, but I already found a solution! It was so easy! :) When specifying the type of my signal if one type is int I can specify <i8 descending or >i8 ascending. –  user2209128 Apr 12 '13 at 14:13
1  
Try the key= argument. –  ExP Apr 12 '13 at 14:15
    
@user2209128 You can answer your own question. –  askewchan Apr 12 '13 at 14:56
    
Not yeat..because I am a new user...I have to wait 7 hours –  user2209128 Apr 12 '13 at 15:29
2  
@user2209128 I don't think that changing the endianess (which is what you are changing with your > and <) is the exact same as reversing the order. IT may behave similarly for certain values, but I don't think it does for all, test it carefully! –  Jaime Apr 12 '13 at 15:43

1 Answer 1

up vote 0 down vote accepted

You can do this with numpy.lexsort

In [1]: import numpy as np
In [2]: a = np.array([(4,0), (1,9), (1,0), (4,9)],
                     dtype=[('x',int),('y',float)])

In [3]: a
Out[3]: 
array([(4, 0.0), (1, 9.0), (1, 0.0), (4, 9.0)], 
      dtype=[('x', '<i8'), ('y', '<f8')])

In [4]: a['x']
Out[4]: array([4, 1, 1, 4])

In [5]: a['y']
Out[5]: array([ 0.,  9.,  0.,  9.])

The order priority of the arguments to lexsort are opposite that of np.sort(..., order=...). So, to sort first by descending 'x' and then by ascending 'y':

In [6]: a[np.lexsort((a['y'], -a['x']))]
Out[6]: 
array([(4, 0.0), (4, 9.0), (1, 0.0), (1, 9.0)], 
      dtype=[('x', '<i8'), ('y', '<f8')])

Notes:

  • This works assuming all your values are numerical (since the negative won't reverse string sorting).
  • I've seen somewhere the use of a['x'][::-1] as a key instead of -a['x'] but that's not working for me right now.
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