Classes
Introduction#
Python offers itself not only as a popular scripting language, but also supports the object-oriented programming paradigm. Classes describe data and provide methods to manipulate that data, all encompassed under a single object. Furthermore, classes allow for abstraction by separating concrete implementation details from abstract representations of data.
Code utilizing classes is generally easier to read, understand, and maintain.
Basic inheritance
Inheritance in Python is based on similar ideas used in other object oriented languages like Java, C++ etc. A new class can be derived from an existing class as follows.
class BaseClass(object):
pass
class DerivedClass(BaseClass):
pass
The BaseClass
is the already existing (parent) class, and the DerivedClass
is the new (child) class that inherits (or subclasses) attributes from BaseClass
. Note: As of Python 2.2, all classes implicitly inherit from the object
class, which is the base class for all built-in types.
We define a parent Rectangle
class in the example below, which implicitly inherits from object
:
class Rectangle():
def __init__(self, w, h):
self.w = w
self.h = h
def area(self):
return self.w * self.h
def perimeter(self):
return 2 * (self.w + self.h)
The Rectangle
class can be used as a base class for defining a Square
class, as a square is a special case of rectangle.
class Square(Rectangle):
def __init__(self, s):
# call parent constructor, w and h are both s
super(Square, self).__init__(s, s)
self.s = s
The Square
class will automatically inherit all attributes of the Rectangle
class as well as the object class. super()
is used to call the __init__()
method of Rectangle
class, essentially calling any overridden method of the base class. Note: in Python 3, super()
does not require arguments.
Derived class objects can access and modify the attributes of its base classes:
r.area()
# Output: 12
r.perimeter()
# Output: 14
s.area()
# Output: 4
s.perimeter()
# Output: 8
Built-in functions that work with inheritance
issubclass(DerivedClass, BaseClass)
: returns True
if DerivedClass
is a subclass of the BaseClass
isinstance(s, Class)
: returns True
if s is an instance of Class
or any of the derived classes of Class
# subclass check
issubclass(Square, Rectangle)
# Output: True
# instantiate
r = Rectangle(3, 4)
s = Square(2)
isinstance(r, Rectangle)
# Output: True
isinstance(r, Square)
# Output: False
# A rectangle is not a square
isinstance(s, Rectangle)
# Output: True
# A square is a rectangle
isinstance(s, Square)
# Output: True
Class and instance variables
Instance variables are unique for each instance, while class variables are shared by all instances.
class C:
x = 2 # class variable
def __init__(self, y):
self.y = y # instance variable
C.x
# 2
C.y
# AttributeError: type object 'C' has no attribute 'y'
c1 = C(3)
c1.x
# 2
c1.y
# 3
c2 = C(4)
c2.x
# 2
c2.y
# 4
Class variables can be accessed on instances of this class, but assigning to the class attribute will create an instance variable which shadows the class variable
c2.x = 4
c2.x
# 4
C.x
# 2
Note that mutating class variables from instances can lead to some unexpected consequences.
class D:
x = []
def __init__(self, item):
self.x.append(item) # note that this is not an assigment!
d1 = D(1)
d2 = D(2)
d1.x
# [1, 2]
d2.x
# [1, 2]
D.x
# [1, 2]
Bound, unbound, and static methods
The idea of bound and unbound methods was removed in Python 3. In Python 3 when you declare a method within a class, you are using a def
keyword, thus creating a function object. This is a regular function, and the surrounding class works as its namespace. In the following example we declare method f
within class A
, and it becomes a function A.f
:
class A(object):
def f(self, x):
return 2 * x
A.f
# <function A.f at ...> (in Python 3.x)
In Python 2 the behavior was different: function objects within the class were implicitly replaced with objects of type instancemethod
, which were called unbound methods because they were not bound to any particular class instance. It was possible to access the underlying function using .__func__
property.
A.f
# <unbound method A.f> (in Python 2.x)
A.f.__class__
# <type 'instancemethod'>
A.f.__func__
# <function f at ...>
The latter behaviors are confirmed by inspection - methods are recognized as functions in Python 3, while the distinction is upheld in Python 2.
import inspect
inspect.isfunction(A.f)
# True
inspect.ismethod(A.f)
# False
import inspect
inspect.isfunction(A.f)
# False
inspect.ismethod(A.f)
# True
In both versions of Python function/method A.f
can be called directly, provided that you pass an instance of class A
as the first argument.
A.f(1, 7)
# Python 2: TypeError: unbound method f() must be called with
# A instance as first argument (got int instance instead)
# Python 3: 14
a = A()
A.f(a, 20)
# Python 2 & 3: 40
Now suppose a
is an instance of class A
, what is a.f
then? Well, intuitively this should be the same method f
of class A
, only it should somehow “know” that it was applied to the object a
– in Python this is called method bound to a
.
The nitty-gritty details are as follows: writing a.f
invokes the magic __getattribute__
method of a
, which first checks whether a
has an attribute named f
(it doesn’t), then checks the class A
whether it contains a method with such a name (it does), and creates a new object m
of type method
which has the reference to the original A.f
in m.__func__
, and a reference to the object a
in m.__self__
. When this object is called as a function, it simply does the following: m(...) => m.__func__(m.__self__, ...)
. Thus this object is called a bound method because when invoked it knows to supply the object it was bound to as the first argument. (These things work same way in Python 2 and 3).
a = A()
a.f
# <bound method A.f of <__main__.A object at ...>>
a.f(2)
# 4
# Note: the bound method object a.f is recreated *every time* you call it:
a.f is a.f # False
# As a performance optimization you can store the bound method in the object's
# __dict__, in which case the method object will remain fixed:
a.f = a.f
a.f is a.f # True
Finally, Python has class methods and static methods – special kinds of methods. Class methods work the same way as regular methods, except that when invoked on an object they bind to the class of the object instead of to the object. Thus m.__self__ = type(a)
. When you call such bound method, it passes the class of a
as the first argument. Static methods are even simpler: they don’t bind anything at all, and simply return the underlying function without any transformations.
class D(object):
multiplier = 2
@classmethod
def f(cls, x):
return cls.multiplier * x
@staticmethod
def g(name):
print("Hello, %s" % name)
D.f
# <bound method type.f of <class '__main__.D'>>
D.f(12)
# 24
D.g
# <function D.g at ...>
D.g("world")
# Hello, world
Note that class methods are bound to the class even when accessed on the instance:
d = D()
d.multiplier = 1337
(D.multiplier, d.multiplier)
# (2, 1337)
d.f
# <bound method D.f of <class '__main__.D'>>
d.f(10)
# 20
It is worth noting that at the lowest level, functions, methods, staticmethods, etc. are actually descriptors that invoke __get__
, __set
__ and optionally __del__
special methods. For more details on classmethods and staticmethods:
- https://stackoverflow.com/questions/136097/what-is-the-difference-between-staticmethod-and-classmethod-in-python
- https://stackoverflow.com/questions/12179271/python-classmethod-and-staticmethod-for-beginner
New-style vs. old-style classes
New-style classes were introduced in Python 2.2 to unify classes and types. They inherit from the top-level object
type. A new-style class is a user-defined type, and is very similar to built-in types.
# new-style class
class New(object):
pass
# new-style instance
new = New()
new.__class__
# <class '__main__.New'>
type(new)
# <class '__main__.New'>
issubclass(New, object)
# True
Old-style classes do not inherit from object
. Old-style instances are always implemented with a built-in instance
type.
# old-style class
class Old:
pass
# old-style instance
old = Old()
old.__class__
# <class __main__.Old at ...>
type(old)
# <type 'instance'>
issubclass(Old, object)
# False
In Python 3, old-style classes were removed.
New-style classes in Python 3 implicitly inherit from object
, so there is no need to specify MyClass(object)
anymore.
class MyClass:
pass
my_inst = MyClass()
type(my_inst)
# <class '__main__.MyClass'>
my_inst.__class__
# <class '__main__.MyClass'>
issubclass(MyClass, object)
# True
Default values for instance variables
If the variable contains a value of an immutable type (e.g. a string) then it is okay to assign a default value like this
class Rectangle(object):
def __init__(self, width, height, color='blue'):
self.width = width
self.height = height
self.color = color
def area(self):
return self.width * self.height
# Create some instances of the class
default_rectangle = Rectangle(2, 3)
print(default_rectangle.color) # blue
red_rectangle = Rectangle(2, 3, 'red')
print(red_rectangle.color) # red
One needs to be careful when initializing mutable objects such as lists in the constructor. Consider the following example:
class Rectangle2D(object):
def __init__(self, width, height, pos=[0,0], color='blue'):
self.width = width
self.height = height
self.pos = pos
self.color = color
r1 = Rectangle2D(5,3)
r2 = Rectangle2D(7,8)
r1.pos[0] = 4
r1.pos # [4, 0]
r2.pos # [4, 0] r2's pos has changed as well
This behavior is caused by the fact that in Python default parameters are bound at function execution and not at function declaration. To get a default instance variable that’s not shared among instances, one should use a construct like this:
class Rectangle2D(object):
def __init__(self, width, height, pos=None, color='blue'):
self.width = width
self.height = height
self.pos = pos or [0, 0] # default value is [0, 0]
self.color = color
r1 = Rectangle2D(5,3)
r2 = Rectangle2D(7,8)
r1.pos[0] = 4
r1.pos # [4, 0]
r2.pos # [0, 0] r2's pos hasn't changed
See also Mutable Default Arguments and “Least Astonishment” and the Mutable Default Argument.
Multiple Inheritance
Python uses the C3 linearization algorithm to determine the order in which to resolve class attributes, including methods. This is known as the Method Resolution Order (MRO).
Here’s a simple example:
class Foo(object):
foo = 'attr foo of Foo'
class Bar(object):
foo = 'attr foo of Bar' # we won't see this.
bar = 'attr bar of Bar'
class FooBar(Foo, Bar):
foobar = 'attr foobar of FooBar'
Now if we instantiate FooBar, if we look up the foo attribute, we see that Foo’s attribute is found first
fb = FooBar()
and
>>> fb.foo
'attr foo of Foo'
Here’s the MRO of FooBar:
>>> FooBar.mro()
[<class '__main__.FooBar'>, <class '__main__.Foo'>, <class '__main__.Bar'>, <type 'object'>]
It can be simply stated that Python’s MRO algorithm is
- Depth first (e.g.
FooBar
thenFoo
) unless - a shared parent (
object
) is blocked by a child (Bar
) and - no circular relationships allowed.
That is, for example, Bar cannot inherit from FooBar while FooBar inherits from Bar.
For a comprehensive example in Python, see the wikipedia entry.
Another powerful feature in inheritance is super
. super can fetch parent classes features.
class Foo(object):
def foo_method(self):
print "foo Method"
class Bar(object):
def bar_method(self):
print "bar Method"
class FooBar(Foo, Bar):
def foo_method(self):
super(FooBar, self).foo_method()
Multiple inheritance with init method of class, when every class has own init method then we try for multiple ineritance then only init method get called of class which is inherit first.
for below example only Foo class init method getting called Bar class init not getting called
class Foo(object):
def __init__(self):
print "foo init"
class Bar(object):
def __init__(self):
print "bar init"
class FooBar(Foo, Bar):
def __init__(self):
print "foobar init"
super(FooBar, self).__init__()
a = FooBar()
Output:
foobar init
foo init
But it doesn’t mean that Bar class is not inherit. Instance of final FooBar class is also instance of Bar class and Foo class.
print isinstance(a,FooBar)
print isinstance(a,Foo)
print isinstance(a,Bar)
Output:
True
True
True
Descriptors and Dotted Lookups
Descriptors are objects that are (usually) attributes of classes and that have any of __get__
, __set__
, or __delete__
special methods.
Data Descriptors have any of __set__
, or __delete__
These can control the dotted lookup on an instance, and are used to implement functions, staticmethod
, classmethod
, and property
. A dotted lookup (e.g. instance foo
of class Foo
looking up attribute bar
- i.e. foo.bar
) uses the following algorithm:
-
bar
is looked up in the class,Foo
. If it is there and it is a Data Descriptor, then the data descriptor is used. That’s howproperty
is able to control access to data in an instance, and instances cannot override this. If a Data Descriptor is not there, then -
bar
is looked up in the instance__dict__
. This is why we can override or block methods being called from an instance with a dotted lookup. Ifbar
exists in the instance, it is used. If not, we then -
look in the class
Foo
forbar
. If it is a Descriptor, then the descriptor protocol is used. This is how functions (in this context, unbound methods),classmethod
, andstaticmethod
are implemented. Else it simply returns the object there, or there is anAttributeError
Class methods: alternate initializers
Class methods present alternate ways to build instances of classes. To illustrate, let’s look at an example.
Let’s suppose we have a relatively simple Person
class:
class Person(object):
def __init__(self, first_name, last_name, age):
self.first_name = first_name
self.last_name = last_name
self.age = age
self.full_name = first_name + " " + last_name
def greet(self):
print("Hello, my name is " + self.full_name + ".")
It might be handy to have a way to build instances of this class specifying a full name instead of first and last name separately. One way to do this would be to have last_name
be an optional parameter, and assuming that if it isn’t given, we passed the full name in:
class Person(object):
def __init__(self, first_name, age, last_name=None):
if last_name is None:
self.first_name, self.last_name = first_name.split(" ", 2)
else:
self.first_name = first_name
self.last_name = last_name
self.full_name = self.first_name + " " + self.last_name
self.age = age
def greet(self):
print("Hello, my name is " + self.full_name + ".")
However, there are two main problems with this bit of code:
-
The parameters
first_name
andlast_name
are now misleading, since you can enter a full name forfirst_name
. Also, if there are more cases and/or more parameters that have this kind of flexibility, the if/elif/else branching can get annoying fast. -
Not quite as important, but still worth pointing out: what if
last_name
isNone
, butfirst_name
doesn’t split into two or more things via spaces? We have yet another layer of input validation and/or exception handling…
Enter class methods. Rather than having a single initializer, we will create a separate initializer, called from_full_name
, and decorate it with the (built-in) classmethod
decorator.
class Person(object):
def __init__(self, first_name, last_name, age):
self.first_name = first_name
self.last_name = last_name
self.age = age
self.full_name = first_name + " " + last_name
@classmethod
def from_full_name(cls, name, age):
if " " not in name:
raise ValueError
first_name, last_name = name.split(" ", 2)
return cls(first_name, last_name, age)
def greet(self):
print("Hello, my name is " + self.full_name + ".")
Notice cls
instead of self
as the first argument to from_full_name
. Class methods are applied to the overall class, not an instance of a given class (which is what self
usually denotes). So, if cls
is our Person
class, then the returned value from the from_full_name
class method is Person(first_name, last_name, age)
, which uses Person
’s __init__
to create an instance of the Person
class. In particular, if we were to make a subclass Employee
of Person
, then from_full_name
would work in the Employee
class as well.
To show that this works as expected, let’s create instances of Person
in more than one way without the branching in __init__
:
In [2]: bob = Person("Bob", "Bobberson", 42)
In [3]: alice = Person.from_full_name("Alice Henderson", 31)
In [4]: bob.greet()
Hello, my name is Bob Bobberson.
In [5]: alice.greet()
Hello, my name is Alice Henderson.
Other references:
-
https://stackoverflow.com/questions/12179271/python-classmethod-and-staticmethod-for-beginner
-
https://docs.python.org/2/library/functions.html#classmethod
-
https://docs.python.org/3.5/library/functions.html#classmethod
Class composition
Class composition allows explicit relations between objects. In this example, people live in cities that belong to countries. Composition allows people to access the number of all people living in their country:
class Country(object):
def __init__(self):
self.cities=[]
def addCity(self,city):
self.cities.append(city)
class City(object):
def __init__(self, numPeople):
self.people = []
self.numPeople = numPeople
def addPerson(self, person):
self.people.append(person)
def join_country(self,country):
self.country = country
country.addCity(self)
for i in range(self.numPeople):
person(i).join_city(self)
class Person(object):
def __init__(self, ID):
self.ID=ID
def join_city(self, city):
self.city = city
city.addPerson(self)
def people_in_my_country(self):
x= sum([len(c.people) for c in self.city.country.cities])
return x
US=Country()
NYC=City(10).join_country(US)
SF=City(5).join_country(US)
print(US.cities[0].people[0].people_in_my_country())
# 15
Monkey Patching
In this case, “monkey patching” means adding a new variable or method to a class after it’s been defined. For instance, say we defined class A
as
class A(object):
def __init__(self, num):
self.num = num
def __add__(self, other):
return A(self.num + other.num)
But now we want to add another function later in the code. Suppose this function is as follows.
def get_num(self):
return self.num
But how do we add this as a method in A
? That’s simple we just essentially place that function into A
with an assignment statement.
A.get_num = get_num
Why does this work? Because functions are objects just like any other object, and methods are functions that belong to the class.
The function get_num
shall be available to all existing (already created) as well to the new instances of A
These additions are available on all instances of that class (or its subclasses) automatically. For example:
foo = A(42)
A.get_num = get_num
bar = A(6);
foo.get_num() # 42
bar.get_num() # 6
Note that, unlike some other languages, this technique does not work for certain built-in types, and it is not considered good style.
Listing All Class Members
The dir()
function can be used to get a list of the members of a class:
dir(Class)
For example:
>>> dir(list)
['__add__', '__class__', '__contains__', '__delattr__', '__delitem__', '__dir__', '__doc__', '__eq__', '__format__', '__ge__', '__getattribute__', '__getitem__', '__gt__', '__hash__', '__iadd__', '__imul__', '__init__', '__iter__', '__le__', '__len__', '__lt__', '__mul__', '__ne__', '__new__', '__reduce__', '__reduce_ex__', '__repr__', '__reversed__', '__rmul__', '__setattr__', '__setitem__', '__sizeof__', '__str__', '__subclasshook__', 'append', 'clear', 'copy', 'count', 'extend', 'index', 'insert', 'pop', 'remove', 'reverse', 'sort']
It is common to look only for “non-magic” members. This can be done using a simple comprehension that lists members with names not starting with __
:
>>> [m for m in dir(list) if not m.startswith('__')]
['append', 'clear', 'copy', 'count', 'extend', 'index', 'insert', 'pop', 'remove', 'reverse', 'sort']
Caveats:
Classes can define a __dir__()
method. If that method exists calling dir()
will call __dir__()
, otherwise Python will try to create a list of members of the class. This means that the dir function can have unexpected results. Two quotes of importance from the official python documentation:
If the object does not provide dir(), the function tries its best to gather information from the object’s dict attribute, if defined, and from its type object. The resulting list is not necessarily complete, and may be inaccurate when the object has a custom getattr().
Note: Because dir() is supplied primarily as a convenience for use at an interactive prompt, it tries to supply an interesting set of names more than it tries to supply a rigorously or consistently defined set of names, and its detailed behavior may change across releases. For example, metaclass attributes are not in the result list when the argument is a class.
Introduction to classes
A class, functions as a template that defines the basic characteristics of a particular object. Here’s an example:
class Person(object):
"""A simple class.""" # docstring
species = "Homo Sapiens" # class attribute
def __init__(self, name): # special method
"""This is the initializer. It's a special
method (see below).
"""
self.name = name # instance attribute
def __str__(self): # special method
"""This method is run when Python tries
to cast the object to a string. Return
this string when using print(), etc.
"""
return self.name
def rename(self, renamed): # regular method
"""Reassign and print the name attribute."""
self.name = renamed
print("Now my name is {}".format(self.name))
There are a few things to note when looking at the above example.
- The class is made up of attributes (data) and methods (functions).
- Attributes and methods are simply defined as normal variables and functions.
- As noted in the corresponding docstring, the
__init__()
method is called the initializer. It’s equivalent to the constructor in other object oriented languages, and is the method that is first run when you create a new object, or new instance of the class. - Attributes that apply to the whole class are defined first, and are called class attributes.
- Attributes that apply to a specific instance of a class (an object) are called instance attributes. They are generally defined inside
__init__()
; this is not necessary, but it is recommended (since attributes defined outside of__init__()
run the risk of being accessed before they are defined). - Every method, included in the class definition passes the object in question as its first parameter. The word
self
is used for this parameter (usage ofself
is actually by convention, as the wordself
has no inherent meaning in Python, but this is one of Python’s most respected conventions, and you should always follow it). - Those used to object-oriented programming in other languages may be surprised by a few things. One is that Python has no real concept of
private
elements, so everything, by default, imitates the behavior of the C++/Javapublic
keyword. For more information, see the “Private Class Members” example on this page. - Some of the class’s methods have the following form:
__functionname__(self, other_stuff)
. All such methods are called “magic methods” and are an important part of classes in Python. For instance, operator overloading in Python is implemented with magic methods. For more information, see the relevant documentation.
Now let’s make a few instances of our Person
class!
>>> # Instances
>>> kelly = Person("Kelly")
>>> joseph = Person("Joseph")
>>> john_doe = Person("John Doe")
We currently have three Person
objects, kelly
, joseph
, and john_doe
.
We can access the attributes of the class from each instance using the dot operator .
Note again the difference between class and instance attributes:
>>> # Attributes
>>> kelly.species
'Homo Sapiens'
>>> john_doe.species
'Homo Sapiens'
>>> joseph.species
'Homo Sapiens'
>>> kelly.name
'Kelly'
>>> joseph.name
'Joseph'
We can execute the methods of the class using the same dot operator .
:
>>> # Methods
>>> john_doe.__str__()
'John Doe'
>>> print(john_doe)
'John Doe'
>>> john_doe.rename("John")
'Now my name is John'
Properties
Python classes support properties, which look like regular object variables, but with the possibility of attaching custom behavior and documentation.
class MyClass(object):
def __init__(self):
self._my_string = ""
@property
def string(self):
"""A profoundly important string."""
return self._my_string
@string.setter
def string(self, new_value):
assert isinstance(new_value, str), \
"Give me a string, not a %r!" % type(new_value)
self._my_string = new_value
@string.deleter
def x(self):
self._my_string = None
The object’s of class MyClass
will appear to have have a property .string
, however it’s behavior is now tightly controlled:
mc = MyClass()
mc.string = "String!"
print(mc.string)
del mc.string
As well as the useful syntax as above, the property syntax allows for validation, or other augmentations to be added to those attributes. This could be especially useful with public APIs - where a level of help should be given to the user.
Another common use of properties is to enable the class to present ‘virtual attributes’ - attributes which aren’t actually stored but are computed only when requested.
class Character(object):
def __init__(name, max_hp):
self._name = name
self._hp = max_hp
self._max_hp = max_hp
# Make hp read only by not providing a set method
@property
def hp(self):
return self._hp
# Make name read only by not providing a set method
@property
def name(self):
return self.name
def take_damage(self, damage):
self.hp -= damage
self.hp = 0 if self.hp <0 else self.hp
@property
def is_alive(self):
return self.hp != 0
@property
def is_wounded(self):
return self.hp < self.max_hp if self.hp > 0 else False
@property
def is_dead(self):
return not self.is_alive
bilbo = Character('Bilbo Baggins', 100)
bilbo.hp
# out : 100
bilbo.hp = 200
# out : AttributeError: can't set attribute
# hp attribute is read only.
bilbo.is_alive
# out : True
bilbo.is_wounded
# out : False
bilbo.is_dead
# out : False
bilbo.take_damage( 50 )
bilbo.hp
# out : 50
bilbo.is_alive
# out : True
bilbo.is_wounded
# out : True
bilbo.is_dead
# out : False
bilbo.take_damage( 50 )
bilbo.hp
# out : 0
bilbo.is_alive
# out : False
bilbo.is_wounded
# out : False
bilbo.is_dead
# out : True
Singleton class
A singleton is a pattern that restricts the instantiation of a class to one instance/object. For more info on python singleton design patterns, see here.
class Singleton:
def __new__(cls):
try:
it = cls.__it__
except AttributeError:
it = cls.__it__ = object.__new__(cls)
return it
def __repr__(self):
return '<{}>'.format(self.__class__.__name__.upper())
def __eq__(self, other):
return other is self
Another method is to decorate your class. Following the example from this answer create a Singleton class:
class Singleton:
"""
A non-thread-safe helper class to ease implementing singletons.
This should be used as a decorator -- not a metaclass -- to the
class that should be a singleton.
The decorated class can define one `__init__` function that
takes only the `self` argument. Other than that, there are
no restrictions that apply to the decorated class.
To get the singleton instance, use the `Instance` method. Trying
to use `__call__` will result in a `TypeError` being raised.
Limitations: The decorated class cannot be inherited from.
"""
def __init__(self, decorated):
self._decorated = decorated
def Instance(self):
"""
Returns the singleton instance. Upon its first call, it creates a
new instance of the decorated class and calls its `__init__` method.
On all subsequent calls, the already created instance is returned.
"""
try:
return self._instance
except AttributeError:
self._instance = self._decorated()
return self._instance
def __call__(self):
raise TypeError('Singletons must be accessed through `Instance()`.')
def __instancecheck__(self, inst):
return isinstance(inst, self._decorated)
To use you can use the Instance
method
@Singleton
class Single:
def __init__(self):
self.name=None
self.val=0
def getName(self):
print(self.name)
x=Single.Instance()
y=Single.Instance()
x.name='I\'m single'
x.getName() # outputs I'm single
y.getName() # outputs I'm single