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I have a (N,3) array of numpy values:

>>> vals = numpy.array([[1,2,3],[4,5,6],[7,8,7],[0,4,5],[2,2,1],[0,0,0],[5,4,3]])
>>> vals
array([[1, 2, 3],
       [4, 5, 6],
       [7, 8, 7],
       [0, 4, 5],
       [2, 2, 1],
       [0, 0, 0],
       [5, 4, 3]])

I'd like to remove rows from the array that have a duplicate value. For example, the result for the above array should be:

>>> duplicates_removed
array([[1, 2, 3],
       [4, 5, 6],
       [0, 4, 5],
       [5, 4, 3]])

I'm not sure how to do this efficiently with numpy without looping (the array could be quite large). Anyone know how I could do this?

share|improve this question
By "without looping" what do you mean? You've got to check every item in the array, so it's O(m*n) no matter what tricks you use to hide the loop. – agf Sep 15 '11 at 23:14
I think he means looping in Numpy rather than looping in Python. O(mn) inside a compiled Numpy function is much faster than O(mn) in a Python for loop. When the options are compiled code and interpreted code, constants matter. – Jim Pivarski Jun 18 '14 at 16:17
up vote 6 down vote accepted

This is an option:

import numpy
vals = numpy.array([[1,2,3],[4,5,6],[7,8,7],[0,4,5],[2,2,1],[0,0,0],[5,4,3]])
a = (vals[:,0] == vals[:,1]) | (vals[:,1] == vals[:,2]) | (vals[:,0] == vals[:,2])
vals = numpy.delete(vals, numpy.where(a), axis=0)
share|improve this answer
I was trying to work this out, good job. But don't you need | not ^ ? – Ned Batchelder Sep 15 '11 at 23:23
This is much faster than the list comprehension methods, so I'll probably accept. Wondering if there is any way to generalize to NxM though? – jterrace Sep 15 '11 at 23:27
^ works, but curious why not use | ? – jterrace Sep 15 '11 at 23:30
@Ned Batchelder: yes, although it doesn't change anything in this case. – Benjamin Sep 15 '11 at 23:32
@jterrace You could generalize by generating the combinations of 0-m, using them in a generator expression to make the comparisons, then reducing by | to get a. – agf Sep 16 '11 at 6:08
numpy.array([v for v in vals if len(set(v)) == len(v)])

Mind you, this still loops behind the scenes. You can't avoid that. But it should work fine even for millions of rows.

share|improve this answer
I came up with [item for item in vals if Counter(item).most_common(1)[0][1] is 1] but that's nicer, especially since you already know len(v). You're still "looping" in that you're iterating over the array, however. – agf Sep 15 '11 at 23:13
This is actually surprisingly fast for a large array though, although I need the index locations of the duplicates, so I like @Benjamin's solution – jterrace Sep 15 '11 at 23:15

Identical to Marcelo, but I think using numpy.unique() instead of set() may get across exactly what you are shooting for.

numpy.array([v for v in vals if len(numpy.unique(v)) == len(v)])
share|improve this answer
I think that's numpy.unique – jterrace Sep 15 '11 at 23:16
Well, set also gets across the same intent, but is numpy.unique faster, perhaps? – Marcelo Cantos Sep 15 '11 at 23:20
It actually seems to be much slower - 23 seconds for numpy.unique() vs. 3 seconds for set() on my machine with 1 million rows – jterrace Sep 15 '11 at 23:24
Thank you for the correction. – Curtis Patrick Sep 16 '11 at 13:09

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