# Argmax of numpy array returning non-flat indices

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?

• 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? Commented Nov 22, 2023 at 22:36

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
``````
• This seems to fail when array is masked like `a[a>3].argmax` Commented May 30, 2023 at 12:27
• Commented May 30, 2023 at 12:34
• @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 Commented May 30, 2023 at 12:42
• @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
``````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`).

• 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

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]])
``````
• 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