# How to properly mask a numpy 2D array?

Say I have a two dimensional array of coordinates that looks something like

`x = array([[1,2],[2,3],[3,4]])`

Previously in my work so far, I generated a mask that ends up looking something like

`mask = [False,False,True]`

When I try to use this mask on the 2D coordinate vector, I get an error

``````newX = np.ma.compressed(np.ma.masked_array(x,mask))

>>>numpy.ma.core.MaskError: Mask and data not compatible: data size
is 6, mask size is 3.`
``````

which makes sense, I suppose. So I tried to simply use the following mask instead:

``````mask2 = np.column_stack((mask,mask))
newX = np.ma.compressed(np.ma.masked_array(x,mask2))
``````

And what I get is close:

`>>>array([1,2,2,3])`

to what I would expect (and want):

`>>>array([[1,2],[2,3]])`

There must be an easier way to do this?

## 4 Answers

Is this what you are looking for?

``````import numpy as np
x[~np.array(mask)]
# array([[1, 2],
#        [2, 3]])
``````

Or from numpy masked array:

``````newX = np.ma.array(x, mask = np.column_stack((mask, mask)))
newX

# masked_array(data =
#  [[1 2]
#  [2 3]
#  [-- --]],
#              mask =
#  [[False False]
#  [False False]
#  [ True  True]],
#        fill_value = 999999)
``````
• Ah I see, so what I was trying does work, I just can't compress it. Hm. is there a way to remove masked elements of an array without loosing dimensionality of the array? `np.ma.compressed()` does both. – Anonymous Jul 5 '16 at 1:47
• I don't too much about masked array either, probably the same level as you. Just trying to make it work. Well, if you are trying to remove elements, I think logic index is not a bad way. – Psidom Jul 5 '16 at 1:52

Your `x` is 3x2:

``````In : x
Out:
array([[1, 2],
[2, 3],
[3, 4]])
``````

Make a 3 element boolean mask:

``````In : rowmask=np.array([False,False,True])
``````

That can be used to select the rows where it is True, or where it is False. In both cases the result is 2d:

``````In : x[rowmask,:]
Out: array([[3, 4]])

In : x[~rowmask,:]
Out:
array([[1, 2],
[2, 3]])
``````

This is without using the MaskedArray subclass. To make such array, we need a mask that matches `x` in shape. There isn't provision for masking just one dimension.

``````In : xmask=np.stack((rowmask,rowmask),-1)  # column stack

In : xmask
Out:
array([[False, False],
[False, False],
[ True,  True]], dtype=bool)

In : np.ma.MaskedArray(x,xmask)
Out:
masked_array(data =
[[1 2]
[2 3]
[-- --]],
mask =
[[False False]
[False False]
[ True  True]],
fill_value = 999999)
``````

Applying `compressed` to that produces a raveled array: `array([1, 2, 2, 3])`

Since masking is element by element, it could mask one element in row 1, 2 in row 2 etc. So in general `compressing`, removing the masked elements, will not yield a 2d array. The flattened form is the only general choice.

`np.ma` makes most sense when there's a scattering of masked values. It isn't of much value if you want want to select, or deselect, whole rows or columns.

===============

Here are more typical masked arrays:

``````In : np.ma.masked_inside(x,2,3)
Out:
masked_array(data =
[[1 --]
[-- --]
[-- 4]],
mask =
[[False  True]
[ True  True]
[ True False]],
fill_value = 999999)

In : np.ma.masked_equal(x,2)
Out:
masked_array(data =
[[1 --]
[-- 3]
[3 4]],
mask =
[[False  True]
[ True False]
[False False]],
fill_value = 2)

In : np.ma.masked_outside(x,2,3)
Out:
masked_array(data =
[[-- 2]
[2 3]
[3 --]],
mask =
[[ True False]
[False False]
[False  True]],
fill_value = 999999)
``````

Since none of these solutions worked for me, I thought to write down what solution did, maybe it will useful for somebody else. I use python 3.x and I worked on two 3D arrays. One, which I call `data_3D` contains float values of recordings in a brain scan, and the other, `template_3D` contains integers which represent regions of the brain. I wanted to choose those values from `data_3D` corresponding to an integer `region_code` as per `template_3D`:

``````my_mask = np.in1d(template_3D, region_code).reshape(template_3D.shape)
data_3D_masked = data_3D[my_mask]
``````

which gives me a 1D array of only relevant recordings.

In your last example, the problem is not the mask. It is your use of `compressed`. From the docstring of `compressed`:

``````Return all the non-masked data as a 1-D array.
``````

So `compressed` flattens the nonmasked values into a 1-d array. (It has to, because there is no guarantee that the compressed data will have an n-dimensional structure.)

Take a look at the masked array before you compress it:

``````In : np.ma.masked_array(x, mask2)

Out:
masked_array(data =
[[1 2]
[2 3]
[-- --]],
mask =
[[False False]
[False False]
[ True  True]],
fill_value = 999999)
``````
• You're right, its correct before I compress it. I will read the documentation for a way to remove masked elements while preserving array dimensionality. Thanks – Anonymous Jul 5 '16 at 1:48
• If I understand what you are trying to do, @Psidom's first suggestion looks reasonable. In particular, you probably don't need a masked array. Just index a regular array with a boolean array. – Warren Weckesser Jul 5 '16 at 1:50