# How slice Numpy array by column value

I have an array like this numpy array

`````` dd =[[0.567 2 0.611]
[0.469 1 0.479]
[0.220 2 0.269]
[0.480 1 0.508]
[0.324 1 0.324]]
``````

I need 2 seperate array `dd[:,1] ==1` and `dd[:,1] ==2`

These array are what I am after:

`````` na =[[0.469 1 0.479]
[0.480 1 0.508]
[0.324 1 0.324]]

na2 =[[0.567 2 0.611]
[0.220 2 0.269]]
``````

I have tried `np.where` did really work

-

You could use numpy fancy indexing:

``````[~/repo/py]
|32>dd[dd[:,1] == 1]
[32]
array([[ 0.469,  1.   ,  0.479],
[ 0.48 ,  1.   ,  0.508],
[ 0.324,  1.   ,  0.324]])

[~/repo/py]
|33>dd[dd[:,1] == 2]
[33]
array([[ 0.567,  2.   ,  0.611],
[ 0.22 ,  2.   ,  0.269]])
``````

Alternatively you could use a list comprehension:

``````[~/repo/py]
|21>np.array([row for row in dd if row[1] == 1])
[21]
array([[ 0.469,  1.   ,  0.479],
[ 0.48 ,  1.   ,  0.508],
[ 0.324,  1.   ,  0.324]])

[~/repo/py]
|22>np.array([row for row in dd if row[1] == 2])
[22]
array([[ 0.567,  2.   ,  0.611],
[ 0.22 ,  2.   ,  0.269]])
``````

edit:

how to time these things in ipython:

``````[~/repo/py]
|36>timeit dd[dd[:,1] == 1]
100000 loops, best of 3: 6 us per loop

[~/repo/py]
|37>timeit np.array([row for row in dd if row[1] == 1])
100000 loops, best of 3: 11.5 us per loop
``````
-
@ wim which is faster? –  Merlin Sep 28 '11 at 1:46
the first example (fancy indexing) is about twice as fast. –  wim Sep 28 '11 at 1:49
+1. Fancy indexing is faster, and also much easier to read. –  mtrw Sep 28 '11 at 1:54