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I have a numpy.ndarray like this:

array([[ 11.18033989,   0.        ],
       [  8.24621125,   3.        ],
       [ 13.03840481,   5.        ],
       [  6.        ,   5.38516481],
       [ 11.18033989,   3.16227766],
       [  0.        ,  11.18033989],
       [  8.06225775,   4.24264069]])

I want to get a new array A, such that A[i] is the index of minimum element in ith row of above matrix. Such as this: array([1, 1, 1, 1, 1, 0, 1])

I can do it with for loops with argmin, but since I want this algorithm to be scalable, I am looking for a way to do it using a vectorized implementation. I guess numpy would offer such a feature, but I am new to numpy, so I am not sure where to look.

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1 Answer 1

up vote 9 down vote accepted

If X is your array,

X.argmin(axis=1)
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I expected it to be something easy, but this was beyond my expectation. Thanks a lot. –  yasar Jan 10 '12 at 20:31

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