For example,

x = array([[1,2,3],[3,2,5],[9,0,2]])
some_func(x) gives (2,1)

I know one can do it by a custom function:

def find_min_idx(x):
    k = x.argmin()
    ncol = x.shape[1]
    return k/ncol, k%ncol

However, I am wondering if there's a numpy built-in function that does this faster.


EDIT: thanks for the answers. I tested their speeds as follows:

%timeit np.unravel_index(x.argmin(), x.shape)
#100000 loops, best of 3: 4.67 µs per loop

%timeit np.where(x==x.min())
#100000 loops, best of 3: 12.7 µs per loop

%timeit find_min_idx(x) # this is using the custom function above
#100000 loops, best of 3: 2.44 µs per loop

Seems the custom function is actually faster than unravel_index() and where(). unravel_index() does similar things as the custom function plus the overhead of checking extra arguments. where() is capable of returning multiple indices but is significantly slower for my purpose. Perhaps pure python code is not that slow for doing just two simple arithmetic and the custom function approach is as fast as one can get.

  • np.where(x == np.min(x))?
    – Anzel
    May 12, 2015 at 1:35

2 Answers 2


You may use np.where:

In [9]: np.where(x == np.min(x))
Out[9]: (array([2]), array([1]))

Also as @senderle mentioned in comment, to get values in an array, you can use np.argwhere:

In [21]: np.argwhere(x == np.min(x))
Out[21]: array([[2, 1]])


As OP's times show, and much clearer that argmin is desired (no duplicated mins etc.), one way I think may slightly improve OP's original approach is to use divmod:

divmod(x.argmin(), x.shape[1])

Timed them and you will find that extra bits of speed, not much but still an improvement.

%timeit find_min_idx(x)
1000000 loops, best of 3: 1.1 µs per loop

%timeit divmod(x.argmin(), x.shape[1])
1000000 loops, best of 3: 1.04 µs per loop

If you are really concerned about performance, you may take a look at cython.

  • 1
    Might be worth mentioning argwhere as well -- depends on whether NH needs the values to be usable as indices or as values in an array.
    – senderle
    May 12, 2015 at 1:41
  • Though looking at it more that distinction only holds when the minimum value occurs more than once.
    – senderle
    May 12, 2015 at 1:46
  • @senderle, OP has a working solution so I am not surprised that can be easily converted like tuple(map(int, np.where(x == np.min(x))))
    – Anzel
    May 12, 2015 at 1:49

You can use np.unravel_index

print(np.unravel_index(x.argmin(), x.shape))
(2, 1)
  • very nice, does OP wants the minimum value of array or single item among arrays?
    – Anzel
    May 12, 2015 at 1:41
  • If this is the answer, isn't this whole question a dup of this?
    – DSM
    May 12, 2015 at 1:43
  • 1
    Revisiting my last comment -- this works for indexing or as a sequence of indices, but only because argmin returns just one value, even if the minimum occurs multiple times. The where(x == np.min(x)) solution can capture multiple minima.
    – senderle
    May 12, 2015 at 1:48
  • 1
    Quite right. I'm just obsessively working through all the details, probably to an unnecessary degree!
    – senderle
    May 12, 2015 at 1:52
  • 1
    @DSM, you might be right but I don't know if I am right yet. May 12, 2015 at 1:54

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