# How to apply 1D mask on 2D array in Python numpy? [duplicate]

This question already has an answer here:

There is a 1D array of values:

``````arr0 = numpy.array([8,0,9,5])
``````

There is another 2D array whose shape is `(len(arr0),3)`:

``````arr1 = numpy.array([9,5,6],
[2,7,4],
[6,7,8],
[1,8,3])
``````

I want to create a masked array of `arr1` where `arr1[i]` is masked if `arr0[i] == 0`:

``````Result arr2 = [[9,5,6],
[-,-,-],
[6,7,8],
[1,8,3]]
``````

What is an elegant way to create this new masked array?

I know I can create it using a mask of shape `(len(arr0),3)`. I am hoping I can create this using a mask of shape that is just `(len(arr0))`.

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Why is there any problem with just making a mask like `(arr0 * np.ones((arr1.shape[1], 1))).T` –  wim Apr 26 '13 at 5:08
@askewchan This is not the same as that question. It does not have a 1D array whose values are used to extract a masked array out of a 2D array. –  Ashwin Apr 26 '13 at 5:57

## marked as duplicate by askewchan, plaes, Sindre Sorhus, bdares, Emil VikströmApr 26 '13 at 8:04

Your mask can just set by the bool array `arr0 == 0` if you do the following:

``````In [1]: arr1 = numpy.ma.masked_array(arr1)
In [2]: arr1[arr0 == 0] = numpy.ma.masked
In [3]: print arr1
[[9 5 6]
[-- -- --]
[6 7 8]
[1 8 3]]
``````

(And by the way, you need an extra set of brackets around your arr1 definition.)

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