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I am trying to compare a one dimensional array in a collection of 1 dimensional array using python. For example:

import numpy as np;
data= np.array( [  [1,2] , [2,3] ,[3,4], [1,2] , [0,9] ])
#I want to get the indexes of [1,2] which are 0 and 3 for above list

Does anyone have an idea how to implement that in python?

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1 Answer

up vote 2 down vote accepted
In [116]: data = np.array( [  [1,2] , [1,3] ,[3,4], [1,2] , [0,9] ])

In [117]: np.where(np.prod(data == [1,2], axis = -1))
Out[117]: (array([0, 3]),)
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Thanks for your answer, can't we think of a more generic version? –  pacodelumberg Oct 10 '12 at 21:29
    
What part of the problem can generalize? The dimension of data? The values 1 and 2? Are you always looking for rows, or might you sometimes be looking for columns? –  unutbu Oct 10 '12 at 21:32
    
Actually the length of the array being compared, can't we do that without the logical AND? –  pacodelumberg Oct 10 '12 at 21:34
1  
Well, there is np.where(np.logical_and(*(data[:,i] == x for i, x in enumerate([1, 2])))). I suspect there is a better way, however. –  unutbu Oct 10 '12 at 21:38
    
That looks really interesting, Could you post that as an answer? –  pacodelumberg Oct 10 '12 at 21:42
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