# Difference between numpy.logical_and and &

I'm trying to use the `logical_and` of two or more numpy arrays. I know numpy has the function `logical_and()`, but I find the simple operator `&` returns the same results and are potentially easier to use.

For example, consider three numpy arrays a, b, and c. Is `np.logical_and(a, np.logical_and(b,c))` equivalent to `a & b & c`?

If they are (more or less) equivalent, what's the advantage of using `logical_and()`?

• From docs.scipy.org/doc/numpy/reference/generated/… bitwise "Computes the bit-wise AND of the underlying binary representation of the integers in the input arrays" only applies to ints and Booleans. It is not quite the same as np.logical_and except when working with booleans – user1121588 Oct 28 '15 at 7:32

@user1121588 answered most of this in a comment, but to answer fully...

"Bitwise and" (`&`) behaves much the same as `logical_and` on boolean arrays, but it doesn't convey the intent as well as using `logical_and`, and raises the possibility of getting misleading answers in non-trivial cases (packed or sparse arrays, maybe).

To use logical_and on multiple arrays, do:

``````np.logical_and.reduce([a, b, c])
``````

where the argument is a list of as many arrays as you wish to `logical_and` together. They should all be the same shape.

I have been googling some official confirmation that I can use `&` instead of `logical_and` on NumPy bool arrays, and found one in the NumPy v1.15 Manual:

If you know you have boolean arguments, you can get away with using NumPy’s bitwise operators, but be careful with parentheses, like this: `z = (x > 1) & (x < 2)`. The absence of NumPy operator forms of `logical_and` and `logical_or` is an unfortunate consequence of Python’s design.

So one can also use `~` for `logical_not` and `|` for `logical_or`.