# indexing numpy multidimensional arrays

I need to access this numpy array, sometimes with only the rows where the last column is 0, and sometimes the rows where the value of the last column is 1.

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

I have to do this over and over, but would prefer to shy away from creating duplicate arrays or having to recalculate each time. Is there someway that I can identify the indices concerned and just call them? So that I can do this:

``````>>print y[LAST_COLUMN_IS_0]
[0  0  0  0
3  4  1  0]

>>print y[LAST_COLUMN_IS_1]
[1  2  1  1
2 -6  0  1]
``````

P.S. The number of columns in the array never changes, it's always going to have 4 columns.

-

You can use numpy's boolean indexing to identify which rows you want to select, and numpy's fancy indexing/slicing to select the whole row.

``````print y[y[:,-1] == 0, :]
print y[y[:,-1] == 1, :]
``````

You can save `y[:,-1] == 0` and `... == 1` as usual, since they are just numpy arrays.

(The `y[:,-1]` selects the whole of the last column, and the `==` equality check happens element-wise, resulting in an array of booleans.)

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+1, It works. But I'm having trouble understanding what `y[:,-1] == 0` is. It's a numpy array, but not a range? How can you then use it to index? –  Zach Sep 1 '12 at 18:02
@Zach, scipy.org/… –  dbaupp Sep 1 '12 at 18:03
Thanks. Quick additional question, how do I then select a column from the result. For example, to select the 1st column, this doesn't work: `y[y[:,-1] == 0, :][0]` –  Zach Sep 1 '12 at 18:09
Maybe `result[:, 0]`. –  dbaupp Sep 1 '12 at 18:15