# Get the position of the largest value in a multi-dimensional NumPy array

How can I get get the position (indices) of the largest value in a multi-dimensional NumPy array?

• In case there are multiple positions with equally large values, do you need them all or only the first (or last or just any)? Oct 21, 2020 at 12:21

The `argmax()` method should help.

Update

(After reading comment) I believe the `argmax()` method would work for multi dimensional arrays as well. The linked documentation gives an example of this:

``````>>> a = array([[10,50,30],[60,20,40]])
>>> maxindex = a.argmax()
>>> maxindex
3
``````

Update 2

(Thanks to KennyTM's comment) You can use `unravel_index(a.argmax(), a.shape)` to get the index as a tuple:

``````>>> from numpy import unravel_index
>>> unravel_index(a.argmax(), a.shape)
(1, 0)
``````
• But i have a multidimensional array.
– kame
Aug 27, 2010 at 12:51
• Use `unravel_index(a.argmax(), a.shape)` to get the index as a tuple. Aug 27, 2010 at 12:57
• what does number 3 mean? Okay i see. I was looking for (1,0).
– kame
Aug 27, 2010 at 12:58
• there should really be a built-in function for getting the value as a tuple Jul 18, 2013 at 18:17
• unravel_index docs: docs.scipy.org/doc/numpy-1.10.1/reference/generated/… Aug 29, 2016 at 0:55

(edit) I was referring to an old answer which had been deleted. And the accepted answer came after mine. I agree that `argmax` is better than my answer.

Wouldn't it be more readable/intuitive to do like this?

``````numpy.nonzero(a.max() == a)
(array([1]), array([0]))
``````

Or,

``````numpy.argwhere(a.max() == a)
``````
• Needlessly slow, because you compute the max and then compare it to all of a. unravel_index(a.argmax(), a.shape). Oct 24, 2014 at 0:25
• I voted for this because it assumes nothing about the number of occurrences of a.max() in a. Whereas a.argmax() will return the "first" occurrence (which is ill-defined in the case of a multi-dimensional array since it depends on the choice of traversal path). docs.scipy.org/doc/numpy/reference/generated/… I also think np.where() is a more natural/readable chose rather than np.nonzero(). Apr 24, 2017 at 18:30

You can simply write a function (that works only in 2d):

``````def argmax_2d(matrix):
maxN = np.argmax(matrix)
(xD,yD) = matrix.shape
if maxN >= xD:
x = maxN//xD
y = maxN % xD
else:
y = maxN
x = 0
return (x,y)
``````

An alternative way is change `numpy` array to `list` and use `max` and `index` methods:

``````List = np.array([34, 7, 33, 10, 89, 22, -5])
_max = List.tolist().index(max(List))
_max
>>> 4
``````