# Modify numpy array section in-place using boolean indexing

Given a 2D numpy array, i.e.;

``````import numpy as np

data = np.array([
[11,12,13],
[21,22,23],
[31,32,33],
[41,42,43],
])
``````

I need modify in place a sub-array based on two masking vectors for the desired rows and columns;

``````rows = np.array([False, False, True, True], dtype=bool)
cols = np.array([True, True, False], dtype=bool)
``````

Such that i.e.;

``````print data

#[[11,12,13],
# [21,22,23],
# [0,0,33],
# [0,0,43]]
``````
-

Now that you know how to access the rows/cols you want, just assigne the value you want to your subarray. It's a tad trickier, though:

``````mask = rows[:,None]*cols[None,:]
``````

The reason is that when we access the subarray as `data[rows][:,cols]` (as illustrated in your previous question, we're taking a view of a view, and some references to the original data get lost in the way.

Instead, here we construct a 2D boolean array by broadcasting your two 1D arrays `rows` and `cols` one with the other. Your `mask` array has now the shape `(len(rows),len(cols)`. We can use `mask` to directly access the original items of `data`, and we set them to a new value. Note that when you do `data[mask]`, you get a 1D array, which was not the answer you wanted in your previous question.

To construct the mask, we could have used the `&` operator instead of `*` (because we're dealing with boolean arrays), or the simpler `np.outer` function:

``````mask = np.outer(rows,cols)
``````

Edit: props to @Marcus Jones for the `np.outer` solution.

-
Does the job, but how about "mask = np.outer(rows,cols)"? –  Marcus Jones Sep 15 '12 at 12:24