Comparing two numpy arrays for equality, element-wise

What is the simplest way to compare two numpy arrays for equality (where equality is defined as: A = B iff for all indices i: `A[i] == B[i]`)?

Simply using `==` gives me a boolean array:

`````` >>> numpy.array([1,1,1]) == numpy.array([1,1,1])

array([ True,  True,  True], dtype=bool)
``````

Do I have to `and` the elements of this array to determine if the arrays are equal, or is there a simpler way to compare?

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``````(A==B).all()
``````

test if all values of array (A==B) are True.

Edit (from dbaupp's answer and yoavram's comment)

It should be noted that:

• this solution can have a strange behavior in a particular case: if either `A` or `B` is empty and the other one contains a single element, then it return `True`. For some reason, the comparison `A==B` returns an empty array, for which the `all` operator returns `True`.
• Another risk is if `A` and `B` don't have the same shape and aren't broadcastable, then this approach will raise an error.

In conclusion, the solution I proposed is the standard one, I think, but if you have a doubt about `A` and `B` shape or simply want to be safe: use one of the specialized functions:

``````np.array_equal(A,B)  # test if same shape, same elements values
np.array_equiv(A,B)  # test if broadcastable shape, same elements values
np.allclose(A,B,...) # test if same shape, elements have close enough values
``````
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+1 for giving good alternatives. – VaidAbhishek Oct 12 '13 at 6:06

The `(A==B).all()` solution is very neat, but there are some built-in functions for this task. Namely `array_equal`, `allclose` and `array_equiv`.

(Although, some quick testing with `timeit` seems to indicate that the `(A==B).all()` method is the fastest, which is a little peculiar, given it has to allocate a whole new array.)

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you're right, except that if one of the compared arrays is empty you'll get the wrong answer with `(A==B).all()`. For example, try: `(np.array([1])==np.array([])).all()`, it gives `True`, while `np.array_equal(np.array([1]), np.array([]))` gives `False` – yoavram Jan 17 '13 at 12:53
I just discovered this performance difference too. It's strange because if you have 2 arrays that are completely different `(a==b).all()` is still faster than `np.array_equal(a, b)` (which could have just checked a single element and exited). – Aidan Kane Jan 16 at 13:51