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Suppose I have the following numpy array:

a = [[1, 5, 6],
     [2, 4, 1],
     [3, 1, 5]]

I want to mask all the rows which have 1 in the first column. That is, I want

   [[--, --, --],
     [2, 4, 1],
     [3, 1, 5]]

Is this possible to do using numpy masked array operations? How can one do it?

Thanks.

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2 Answers 2

up vote 6 down vote accepted
import numpy as np

a = np.array([[1, 5, 6],
              [2, 4, 1],
              [3, 1, 5]])

np.ma.MaskedArray(a, mask=(np.ones_like(a)*(a[:,0]==1)).T)

# Returns: 
masked_array(data =
 [[-- -- --]
 [2 4 1]
 [3 1 5]],
             mask =
 [[ True  True  True]
 [False False False]
 [False False False]])
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2  
This stops working if there is a 0 in the first column. –  Sven Marnach Jan 7 '11 at 13:34
    
@Sven - well seen! I have replaced the simple a with np.ones_like(a). Should work with zeros now. Thanks! –  eumiro Jan 7 '11 at 13:39
    
Thanks! This is great. –  Curious2learn Jan 7 '11 at 17:57
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You can create the desired mask by

mask = numpy.repeat(a[:,0]==1, a.shape[1])

and the masked array by

masked_a = numpy.ma.array(a, mask=numpy.repeat(a[:,0]==1, a.shape[1]))
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Thanks for the reply Sven! I am new to numpy and was not aware of repeat method. Will look it up. –  Curious2learn Jan 7 '11 at 17:58
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