# Indexing columns (or rows) in a numpy matrix with a Boolean list

Given a numpy matrix `A` of shape `(m,n)` and a list `ind` of Boolean values with length `n`, I want to extract the columns of `A` where the corresponding element of the Boolean list is true.

My first naive try

``````Asub = A[:,cols]
``````

gives quite weird results, not necessary to cite here...

Following pv.'s answer to this question, I tried with `numpy.ix_` as follows:

``````>>> A = numpy.diag([1,2,3])
>>> ind = [True, True, False]
>>> A[:,numpy.ix_(ind)]
array([[[1, 0]],

[[0, 2]],

[[0, 0]]])
>>> A[:,numpy.ix_(ind)].shape
(3, 1, 2)
``````

Now the result is of inappropriate shape: I want to have a `(3,2)` resulting array. I guess I could collapse the result down to two dimensions, but there surely must be a better way of doing this?

-

As the docs discuss, boolean indexing like you want "occurs when obj is an array object of Boolean type (such as may be returned from comparison operators)."

IOW, `ind` needs to be an `ndarray` of type `bool`:

``````In [15]: A = numpy.diag([1,2,3])

In [16]: ind = [True, True, False]

In [17]: A[:,ind]
Out[17]:
array([[0, 0, 1],
[2, 2, 0],
[0, 0, 0]])
``````

which occurs because it's interpreting the bools as integers, and giving you columns `[1, 1, 0]`.

OTOH:

``````In [18]: A[:,numpy.array(ind)]
Out[18]:
array([[1, 0],
[0, 2],
[0, 0]])
``````
-
Convert `ind` to an array:
``````>>> A[:, np.array(ind)]