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I'm trying to get the indices of the maximum element in a Numpy array. This can be done using numpy.argmax. My problem is, that I would like to find the biggest element in the whole array and get the indices of that.

numpy.argmax can be either applied along one axis, which is not what I want, or on the flattened array, which is kind of what I want.

My problem is that using numpy.argmax with axis=None returns the flat index when I want the multi-dimensional index.

I could use divmod to get a non-flat index but this feels ugly. Is there any better way of doing this?

1
  • I am actually surprised that this is not a standard behaviour, because that would be how it is defined mathematically. Does anybody know why this is done this way?
    – melon_lord
    Commented Nov 22, 2023 at 22:36

3 Answers 3

238

You could use numpy.unravel_index() on the result of numpy.argmax():

>>> a = numpy.random.random((10, 10))
>>> numpy.unravel_index(a.argmax(), a.shape)
(6, 7)
>>> a[6, 7] == a.max()
True
7
  • This seems to fail when array is masked like a[a>3].argmax
    – majkrzak
    Commented May 30, 2023 at 12:27
  • see: colab.research.google.com/drive/…
    – majkrzak
    Commented May 30, 2023 at 12:34
  • 1
    @majkrzak Advanced indexing like a[a > 3] does not create a masked array. It creates a flat, one-dimensional copy of the data containining only the matching elements. The return value of argmax() applies to that new array, but you can't use it as an index into a. Commented May 30, 2023 at 12:39
  • it's not a real copy as modification affects the original array. But it probably may be suitable for a separated question
    – majkrzak
    Commented May 30, 2023 at 12:42
  • 1
    @majkrzak a[a > 3] in expression context is as real a copy as it gets. The fact that you can use the same string of characters as an assignment target may be confusing, but it doesn't change that a[a > 3].argmax() runs on a "real" copy of the data, since we have a[a > 3] in expression context and not as an assignment target. (Don't blame me for Python's data model.) Commented May 30, 2023 at 13:06
27
np.where(a==a.max())

returns coordinates of the maximum element(s), but has to parse the array twice.

>>> a = np.array(((3,4,5),(0,1,2)))
>>> np.where(a==a.max())
(array([0]), array([2]))

This, comparing to argmax, returns coordinates of all elements equal to the maximum. argmax returns just one of them (np.ones(5).argmax() returns 0).

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  • 10
    This will iterate the array three times, not only twice. One time to find the maximum, a second time to build the result of ==, and a third time to extract the True values from this result. Note that there might be more than one item equal to the maximum. Commented Feb 28, 2012 at 14:40
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To get the non-flat index of all occurrences of the maximum value, you can modify eumiro's answer slightly by using argwhere instead of where:

np.argwhere(a==a.max())

>>> a = np.array([[1,2,4],[4,3,4]])
>>> np.argwhere(a==a.max())
array([[0, 2],
       [1, 0],
       [1, 2]])
1
  • It's not effective since you get three passes and a matrix creation. Imagine we've got 9000x7000 image (A3@600dpi) - would you still insist on your solution? Commented Nov 20, 2018 at 10:14

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