Probably the best way is using the operator `not`

:

```
>>> value = True
>>> not value
False
>>> value = False
>>> not value
True
```

So instead of your code:

```
if bool == True:
return False
else:
return True
```

You could use:

```
return not bool
```

## The logical negation as function

There are also two functions in the `operator`

module `operator.not_`

and it's alias `operator.__not__`

in case you need it as function instead of as operator:

```
>>> import operator
>>> operator.not_(False)
True
>>> operator.not_(True)
False
```

These can be useful if you want to use a function that requires a predicate-function or a callback.

For example `map`

or `filter`

:

```
>>> lst = [True, False, True, False]
>>> list(map(operator.not_, lst))
[False, True, False, True]
>>> lst = [True, False, True, False]
>>> list(filter(operator.not_, lst))
[False, False]
```

Of course the same could also be achieved with an equivalent `lambda`

function:

```
>>> my_not_function = lambda item: not item
>>> list(map(my_not_function, lst))
[False, True, False, True]
```

## Do not use the bitwise invert operator `~`

on booleans

One might be tempted to use the bitwise invert operator `~`

or the equivalent operator function `operator.inv`

(or one of the other 3 aliases there). But because `bool`

is a subclass of `int`

the result could be unexpected because it doesn't return the "inverse boolean", it returns the "inverse integer":

```
>>> ~True
-2
>>> ~False
-1
```

That's because `True`

is equivalent to `1`

and `False`

to `0`

and bitwise inversion operates on the bitwise representation of the **integers** `1`

and `0`

.

So these cannot be used to "negate" a `bool`

.

## Negation with NumPy arrays (and subclasses)

If you're dealing with NumPy arrays (or subclasses like `pandas.Series`

or `pandas.DataFrame`

) containing booleans you can actually use the bitwise inverse operator (`~`

) to negate **all** booleans in an array:

```
>>> import numpy as np
>>> arr = np.array([True, False, True, False])
>>> ~arr
array([False, True, False, True])
```

Or the equivalent NumPy function:

```
>>> np.bitwise_not(arr)
array([False, True, False, True])
```

You cannot use the `not`

operator or the `operator.not`

function on NumPy arrays because these require that these return a single `bool`

(not an array of booleans), however NumPy also contains a logical not function that works element-wise:

```
>>> np.logical_not(arr)
array([False, True, False, True])
```

That can also be applied to non-boolean arrays:

```
>>> arr = np.array([0, 1, 2, 0])
>>> np.logical_not(arr)
array([ True, False, False, True])
```

## Customizing your own classes

`not`

works by calling `bool`

on the value and negate the result. In the simplest case the truth value will just call `__bool__`

on the object.

So by implementing `__bool__`

(or `__nonzero__`

in Python 2) you can customize the truth value and thus the result of `not`

:

```
class Test(object):
def __init__(self, value):
self._value = value
def __bool__(self):
print('__bool__ called on {!r}'.format(self))
return bool(self._value)
__nonzero__ = __bool__ # Python 2 compatibility
def __repr__(self):
return '{self.__class__.__name__}({self._value!r})'.format(self=self)
```

I added a `print`

statement so you can verify that it really calls the method:

```
>>> a = Test(10)
>>> not a
__bool__ called on Test(10)
False
```

Likewise you could implement the `__invert__`

method to implement the behavior when `~`

is applied:

```
class Test(object):
def __init__(self, value):
self._value = value
def __invert__(self):
print('__invert__ called on {!r}'.format(self))
return not self._value
def __repr__(self):
return '{self.__class__.__name__}({self._value!r})'.format(self=self)
```

Again with a `print`

call to see that it is actually called:

```
>>> a = Test(True)
>>> ~a
__invert__ called on Test(True)
False
>>> a = Test(False)
>>> ~a
__invert__ called on Test(False)
True
```

However implementing `__invert__`

like that could be confusing because it's behavior is different from "normal" Python behavior. If you ever do that clearly document it and make sure that it has a pretty good (and common) use-case.

`int`

and`bool`

are both builtin names (for the types they represent), and should not be used as variable names.`if x == True:`

should be written`if x:`

.