What is the difference between old style and new style classes in Python? When should I use one or the other?
8 Answers
From New-style and classic classes:
Up to Python 2.1, old-style classes were the only flavour available to the user.
The concept of (old-style) class is unrelated to the concept of type: if
x
is an instance of an old-style class, thenx.__class__
designates the class ofx
, buttype(x)
is always<type 'instance'>
.This reflects the fact that all old-style instances, independently of their class, are implemented with a single built-in type, called instance.
New-style classes were introduced in Python 2.2 to unify the concepts of class and type. A new-style class is simply a user-defined type, no more, no less.
If x is an instance of a new-style class, then
type(x)
is typically the same asx.__class__
(although this is not guaranteed – a new-style class instance is permitted to override the value returned forx.__class__
).The major motivation for introducing new-style classes is to provide a unified object model with a full meta-model.
It also has a number of immediate benefits, like the ability to subclass most built-in types, or the introduction of "descriptors", which enable computed properties.
For compatibility reasons, classes are still old-style by default.
New-style classes are created by specifying another new-style class (i.e. a type) as a parent class, or the "top-level type" object if no other parent is needed.
The behaviour of new-style classes differs from that of old-style classes in a number of important details in addition to what type returns.
Some of these changes are fundamental to the new object model, like the way special methods are invoked. Others are "fixes" that could not be implemented before for compatibility concerns, like the method resolution order in case of multiple inheritance.
Python 3 only has new-style classes.
No matter if you subclass from
object
or not, classes are new-style in Python 3.
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43None of these differences sound like compelling reasons to use new-style classes, yet everyone says you should always use the new-style. If I'm using duck typing like I should, I never need to use
type(x)
. If I'm not subclassing a built in type, then there doesn't seem to be any advantage that I can see of the new-style classes. There is a disadvantage, which is the extra typing of(object)
. Commented May 3, 2011 at 12:45 -
87Certain features like
super()
don't work on old-style classes. Not to mention, as that article says, there are fundamental fixes, like MRO, and special methods, which is more than a good reason to use it.– John DoeCommented Dec 8, 2011 at 17:04 -
24@User: Old-style classes behave the same in 2.7 as they did in 2.1—and, because few people even remember the quirks, and the documentation no longer discusses most of them, they're even worse. The documentation quote above directly says this: there are "fixes" that could not be implemented on old-style classes. Unless you want to run into quirks that nobody else has dealt with since Python 2.1, and that the documentation no longer even explains, don't use old-style classes.– abarnertCommented Jan 7, 2013 at 6:30
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12Here's an example of a quirk you may stumble upon if you use old-style classes in 2.7: bugs.python.org/issue21785– KT.Commented Jun 17, 2014 at 8:18
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7For anyone wondering, a good reason to explicitly inherit from object in Python 3 is that it makes support multiple versions of Python easier.– jpmc26Commented Sep 17, 2014 at 17:57
Declaration-wise:
New-style classes inherit from object, or from another new-style class.
class NewStyleClass(object):
pass
class AnotherNewStyleClass(NewStyleClass):
pass
Old-style classes don't.
class OldStyleClass():
pass
Python 3 Note:
Python 3 doesn't support old style classes, so either form noted above results in a new-style class.
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24if a new-style class inherits from another new-style class, then by extension, it inherits from
object
. Commented Dec 21, 2010 at 23:53 -
2Is this an incorrect example of old style python class?
class AnotherOldStyleClass: pass
Commented Aug 20, 2013 at 20:23 -
11@abc I believe that
class A: pass
andclass A(): pass
are strictly equivalent. The first means "A doesn't inherit of any parent class" and the second means "A inherits of no parent class" . That's quite similar tonot is
andis not
– eyquemCommented Dec 20, 2013 at 23:21 -
5Just as a side note, for 3.X, the inheritance of "object" is automatically assumed (meaning that we've got no way to not inherit "object" in 3.X). For the backward compatibility reason, it is not bad to keep "(object)" there though.– Yo HsiaoCommented Apr 14, 2014 at 2:32
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1If we're going to get technical about inherited classes, this answer should note that you an create another old-style class by inheriting from an old style class. (As written, this answer leaves the user questioning whether you can inherit from an old-style class. You can.)– jpmc26Commented Sep 17, 2014 at 17:56
Important behavior changes between old and new style classes
- super added
- MRO changed (explained below)
- descriptors added
- new style class objects cannot be raised unless derived from
Exception
(example below) __slots__
added
MRO (Method Resolution Order) changed
It was mentioned in other answers, but here goes a concrete example of the difference between classic MRO and C3 MRO (used in new style classes).
The question is the order in which attributes (which include methods and member variables) are searched for in multiple inheritance.
Classic classes do a depth-first search from left to right. Stop on the first match. They do not have the __mro__
attribute.
class C: i = 0
class C1(C): pass
class C2(C): i = 2
class C12(C1, C2): pass
class C21(C2, C1): pass
assert C12().i == 0
assert C21().i == 2
try:
C12.__mro__
except AttributeError:
pass
else:
assert False
New-style classes MRO is more complicated to synthesize in a single English sentence. It is explained in detail here. One of its properties is that a base class is only searched for once all its derived classes have been. They have the __mro__
attribute which shows the search order.
class C(object): i = 0
class C1(C): pass
class C2(C): i = 2
class C12(C1, C2): pass
class C21(C2, C1): pass
assert C12().i == 2
assert C21().i == 2
assert C12.__mro__ == (C12, C1, C2, C, object)
assert C21.__mro__ == (C21, C2, C1, C, object)
New style class objects cannot be raised unless derived from Exception
Around Python 2.5 many classes could be raised, and around Python 2.6 this was removed. On Python 2.7.3:
# OK, old:
class Old: pass
try:
raise Old()
except Old:
pass
else:
assert False
# TypeError, new not derived from `Exception`.
class New(object): pass
try:
raise New()
except TypeError:
pass
else:
assert False
# OK, derived from `Exception`.
class New(Exception): pass
try:
raise New()
except New:
pass
else:
assert False
# `'str'` is a new style object, so you can't raise it:
try:
raise 'str'
except TypeError:
pass
else:
assert False
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8Nice clear summary, thanks. When you say "difficult to explain in English" I think you are describing a postorder depth-first search as opposed to the old-style class which uses a preorder depth-first search. (preorder means we search ourself before our first child and postorder means we search ourself after our last child). Commented Oct 5, 2016 at 9:20
Old style classes are still marginally faster for attribute lookup. This is not usually important, but it may be useful in performance-sensitive Python 2.x code:
In [3]: class A: ...: def __init__(self): ...: self.a = 'hi there' ...: In [4]: class B(object): ...: def __init__(self): ...: self.a = 'hi there' ...: In [6]: aobj = A() In [7]: bobj = B() In [8]: %timeit aobj.a 10000000 loops, best of 3: 78.7 ns per loop In [10]: %timeit bobj.a 10000000 loops, best of 3: 86.9 ns per loop
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5Interesting that you noticed in practice, I just read that this is because new-style classes, once they have found the attribute in the instance dict, have to do an additional lookup to work out whether it is a description, ie, it has a get method that needs to be invoked to get the value to be returned. Old style classes simple return the found object with no addition computations (but then do not support descriptors). You can read more in this excellent post by Guido python-history.blogspot.co.uk/2010/06/…, specifically the section on slots Commented Mar 20, 2012 at 16:58
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1doesn’t seem to be true with CPython 2.7.2:
%timeit aobj.a
10000000 loops, best of 3: 66.1 ns per loop
%timeit bobj.a
10000000 loops, best of 3: 53.9 ns per loop
Commented Mar 24, 2012 at 22:38 -
1Still faster for aobj in CPython 2.7.2 on x86-64 Linux for me.– xioxoxCommented Apr 5, 2012 at 12:49
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45It's probably a bad idea to rely on pure Python code for performance sensitive applications. Nobody says: "I need fast code so I'll use old-style Python classes." Numpy doesn't count as pure Python. Commented Jun 30, 2012 at 22:42
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also in IPython 2.7.6, this isn't true. ''''477 ns vs. 456 ns per loop''''– kmonsoorCommented Jul 20, 2014 at 11:48
Guido has written The Inside Story on New-Style Classes, a really great article about new-style and old-style class in Python.
Python 3 has only new-style class. Even if you write an 'old-style class', it is implicitly derived from object
.
New-style classes have some advanced features lacking in old-style classes, such as super
, the new C3 mro, some magical methods, etc.
Here's a very practical, true/false difference. The only difference between the two versions of the following code is that in the second version Person inherits from object. Other than that, the two versions are identical, but with different results:
Old-style classes
class Person(): _names_cache = {} def __init__(self,name): self.name = name def __new__(cls,name): return cls._names_cache.setdefault(name,object.__new__(cls,name)) ahmed1 = Person("Ahmed") ahmed2 = Person("Ahmed") print ahmed1 is ahmed2 print ahmed1 print ahmed2 >>> False <__main__.Person instance at 0xb74acf8c> <__main__.Person instance at 0xb74ac6cc> >>>
New-style classes
class Person(object): _names_cache = {} def __init__(self,name): self.name = name def __new__(cls,name): return cls._names_cache.setdefault(name,object.__new__(cls,name)) ahmed1 = Person("Ahmed") ahmed2 = Person("Ahmed") print ahmed2 is ahmed1 print ahmed1 print ahmed2 >>> True <__main__.Person object at 0xb74ac66c> <__main__.Person object at 0xb74ac66c> >>>
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2
-
4
_names_cache
is a dictionary that caches (stores for future retrieval) every name you pass toPerson.__new__
. The setdefault method (defined in any dictionary) takes two arguments : a key and a value. If the key is in the dict, it will return its value. If it's not in the dict, it will set it first to the value passed as second argument and then return it. Commented Jan 22, 2014 at 21:53 -
4The usage is wrong. The idea is to not construct a new object if it already exists, but in your case
__new__()
is always called, and it always constructs a new object, and then throws it. In this case aif
is preferable over.setdefault()
. Commented Jul 8, 2015 at 10:56 -
But, I didn't get why is the difference in the output i.e. in old style class the two instances were different thus returned False, but in new style class, both the instances are same. How ? What is the change in new style class, that made the two instances same, which was not in old style class ? Commented Oct 27, 2016 at 2:31
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2@PabitraPati: It's kind of a cheap demonstration here.
__new__
isn't actually a thing for old-style classes, it doesn't get used in instance construction (it's just a random name that looks special, like defining__spam__
). So constructing the old-style class only invokes__init__
, while the new-style construction invokes__new__
(coalescing to singleton instance by name) to construct, and__init__
to initialize it. Commented Mar 24, 2017 at 19:20
New-style classes inherit from object
and must be written as such in Python 2.2 onwards (i.e. class Classname(object):
instead of class Classname:
). The core change is to unify types and classes, and the nice side-effect of this is that it allows you to inherit from built-in types.
Read descrintro for more details.
New style classes may use super(Foo, self)
where Foo
is a class and self
is the instance.
super(type[, object-or-type])
Return a proxy object that delegates method calls to a parent or sibling class of type. This is useful for accessing inherited methods that have been overridden in a class. The search order is same as that used by getattr() except that the type itself is skipped.
And in Python 3.x you can simply use super()
inside a class without any parameters.