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# testing if a numpy array is symmetric?

Is there a better pythonic way of checking if a ndarray is diagonally symmetric in a particular dimension? i.e for all of x

``````(arr[:,:,x].T==arr[:,:,x]).all()
``````

I'm sure I'm missing an (duh) answer but its 2:15 here... :)

EDIT: to clarify, I'm looking for a more 'elegant' way to do :

``````for x in range(xmax):
assert (arr[:,:,x].T==arr[:,:,x]).all()
``````
-
I think that your method is perfectly reasonable, and I can't think of a built-in function that tests symmetry that would do this in a more concise/efficient way. – JoshAdel Mar 16 '11 at 3:07

If I understand you correctly, you want to do the check

``````all((arr[:,:,x].T==arr[:,:,x]).all() for x in range(arr.shape[2]))
``````

without the Python loop. Here is how to do it:

``````(arr.transpose(1, 0, 2) == arr).all()
``````
-

If your array contains floats (especially if they're the result of a computation), use `allclose`

``````np.allclose(arr.transpose(1, 0, 2), arr)
``````

If some of your values might be `NaN`, set those to a marker value before the test.

``````arr[np.isnan(arr)] = 0
``````
-
typo (brackets instead of parentheses): arr[np.isnan(arr)] = 0 – Picarus Apr 27 '14 at 11:29
@Picarus Thanks. Fixed it. :) – Waylon Flinn Apr 27 '14 at 13:34
If I'm not mistaken, `np.transpose` shouldn't change the values, only their positions, so they should be really equal. – moi Jun 28 at 20:43
@moi `allclose` is only necessary if you're testing on floats and those floats are the result of a computation or other potentially precision reducing operation. However, it's a good habit to have in general, for avoiding surprises. – Waylon Flinn Jun 29 at 10:52