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Classes

Classes are the core of Python. They give us a lot of power but it is really easy to misuse this power. In this section I will share some obscure tricks and caveats related to classes in Python. Let's get going!

1. Instance & Class variables

Most beginners and even some advanced Python programmers do not understand the distinction between instance and class variables. Their lack of understanding forces them to use these different types of variables incorrectly. Let's understand them.

The basic difference is:

  • Instance variables are for data which is unique to every object
  • Class variables are for data shared between different instances of a class

Let's take a look at an example:

class Cal(object):
    # pi is a class variable
    pi = 3.142

    def __init__(self, radius):
        # self.radius is an instance variable
        self.radius = radius

    def area(self):
        return self.pi * (self.radius ** 2)

a = Cal(32)
a.area()
# Output: 3217.408
a.pi
# Output: 3.142
a.pi = 43
a.pi
# Output: 43

b = Cal(44)
b.area()
# Output: 6082.912
b.pi
# Output: 3.142
b.pi = 50
b.pi
# Output: 50

There are not many issues while using mutable class variables. This is the major reason due to which beginners do not try to learn more about this subject because everything works! If you also believe that instance and class variables can not cause any problem if used incorrectly then check the next example.

class SuperClass(object):
    superpowers = []

    def __init__(self, name):
        self.name = name

    def add_superpower(self, power):
        self.superpowers.append(power)

foo = SuperClass('foo')
bar = SuperClass('bar')
foo.name
# Output: 'foo'

bar.name
# Output: 'bar'

foo.add_superpower('fly')
bar.superpowers
# Output: ['fly']

foo.superpowers
# Output: ['fly']

That is the beauty of the wrong usage of mutable class variables. To make your code safe against this kind of surprise attacks then make sure that you do not use mutable class variables. You may use them only if you know what you are doing.

2. New style classes

New style classes were introduced in Python 2.1 but a lot of people do not know about them even now! It is so because Python also supports old style classes just to maintain backward compatibility. I have said a lot about new and old but I have not told you about the difference. Well the major difference is that:

  • Old base classes do not inherit from anything
  • New style base classes inherit from object

A very basic example is:

class OldClass():
    def __init__(self):
        print('I am an old class')

class NewClass(object):
    def __init__(self):
        print('I am a jazzy new class')

old = OldClass()
# Output: I am an old class

new = NewClass()
# Output: I am a jazzy new class

This inheritance from object allows new style classes to utilize some magic. A major advantage is that you can employ some useful optimizations like __slots__. You can use super() and descriptors and the likes. Bottom line? Always try to use new-style classes.

Note: Python 3 only has new-style classes. It does not matter whether you subclass from object or not. However it is recommended that you still subclass from object.

3. Magic Methods

Python's classes are famous for their magic methods, commonly called dunder (double underscore) methods. I am going to discuss a few of them.

  • __init__

It is a class initializer. Whenever an instance of a class is created its __init__ method is called. For example:

class GetTest(object):
    def __init__(self):
        print('Greetings!!')
    def another_method(self):
        print('I am another method which is not'
              ' automatically called')

a = GetTest()
# Output: Greetings!!

a.another_method()
# Output: I am another method which is not automatically
# called

You can see that __init__ is called immediately after an instance is created. You can also pass arguments to the class during it's initialization. Like this:

class GetTest(object):
    def __init__(self, name):
        print('Greetings!! {0}'.format(name))
    def another_method(self):
        print('I am another method which is not'
              ' automatically called')

a = GetTest('yasoob')
# Output: Greetings!! yasoob

# Try creating an instance without the name arguments
b = GetTest()
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
TypeError: __init__() takes exactly 2 arguments (1 given)

I am sure that now you understand the __init__ method.

  • __getitem__

Implementing getitem in a class allows its instances to use the [] (indexer) operator. Here is an example:

class GetTest(object):
    def __init__(self):
        self.info = {
            'name':'Yasoob',
            'country':'Pakistan',
            'number':12345812
        }

    def __getitem__(self,i):
        return self.info[i]

foo = OldClass()
foo['title']
# Output: 'Yasoob'

foo['number']
# Output: 36845124

Without the __getitem__ method we would have got this error:

>>> foo['title']

Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
TypeError: 'GetTest' object has no attribute '__getitem__'

Static, Class & Abstract methods