# slice numpy array by column except for 1 row

How can you slice a numpy array by column, and exclude a particular row?

Imagine you have a numpy array where the first column serves as an index as to a 'player', and the next columns are the players scores at different games. How can you return the scores for a game, whilst excluding one player.

For example:

``````[0  0  0  0
1  2  1  1
2 -6  0  2
3  4  1  3]
``````

If you want to return the first score (column 1), you would do:

``````>>score[:,1]
[0,2,-6,4]
``````

But how can you exclude a player/row? If that player/row 3, how do you get:

``````[0,2,-6]
``````

Or, if that player/row 1, how do you get:

``````[0,-6, 4]
``````
-

You can just pass the players that you want to include as a list to the first index of `score` like this:

``````>>> import numpy as np
>>> score = np.array([
... [0,0,0,0],
... [1,2,1,1],
... [2,-6,0,2],
... [3,4,1,3]
... ])
>>> players_to_include = [0,2,3]
>>> score[players_to_include, 1]
array([ 0, -6,  4])
``````

This will get you only player [0,2,3]'s score.

To generalize, you can do:

``````>>> players = list(xrange(np.size(score, 0)))
>>> players
[0, 1, 2, 3]
>>> excludes = [2,3]
>>> players_to_include = [p for p in players if p not in excludes]
>>> players_to_include
[0, 1]
>>> score[players_to_include, 1]
array([0, 2])
``````
-

You can enter the range of requested rows as a list, for example:

``````score[ range(2) + [4], 1]
``````

For a more general predicate function p(x) = 1 if x is a good row, you can do:

``````score [ [x for x in range(score.shape[0]) if p(x)], 1]
``````
-
Doesn't that only work for continuous rows? –  Zach Sep 1 '12 at 17:16
Nope. score[ [0,2], 1] is completely legal. –  Guy Adini Sep 1 '12 at 17:43
Note that you can also just index with `score[[p(x) for x in range(..)], 1]`, since numpy allows boolean indexing like that. –  huon-dbaupp Sep 1 '12 at 20:26
@dbaupp - thanks, I forgot about that. –  Guy Adini Sep 1 '12 at 20:59