75

I want to test whether an object is an instance of a class, and only this class (no subclasses). I could do it either with:

obj.__class__ == Foo
obj.__class__ is Foo
type(obj) == Foo
type(obj) is Foo

Are there reasons to choose one over another? (performance differences, pitfalls, etc)

In other words: a) is there any practical difference between using __class__ and type(x)? b) are class objects always safe for comparison using is?


Update: Thanks all for the feedback. I'm still puzzled by whether or not class objects are singletons, my common sense says they are, but it's been really hard to get a confirmation (try googling for "python", "class" and "unique" or "singleton").

I'd also like to clarify that, for my particular needs, the "cheaper" solution that just works is the best, since I'm trying to optimize the most out of a few, specialized classes (almost reaching the point where the sensible thing to do is to drop Python and develop that particular module in C). But the reason behind the question was to understand better the language, since some of its features are a bit too obscure for me to find that information easily. That's why I'm letting the discussion extend a little instead of settling for __class__ is, so I can hear the opinion of more experienced people. So far it's been very fruitful!

I ran a small test to benchmark the performance of the 4 alternatives. The profiler results were:

               Python  PyPy (4x)
type()    is   2.138   2.594
__class__ is   2.185   2.437
type()    ==   2.213   2.625
__class__ ==   2.271   2.453

Unsurprisingly, is performed better than == for all cases. type() performed better in Python (2% faster) and __class__ performed better in PyPy (6% faster). Interesting to note that __class__ == performed better in PyPy than type() is.


Update 2: many people don't seem to understand what I mean with "a class is a singleton", so I'll ilustrate with an example:

>>> class Foo(object): pass
...
>>> X = Foo
>>> class Foo(object): pass
...
>>> X == Foo
False
>>> isinstance(X(), Foo)
False
>>> isinstance(Foo(), X)
False

>>> x = type('Foo', (object,), dict())
>>> y = type('Foo', (object,), dict())
>>> x == y
False
>>> isinstance(x(), y)
False

>>> y = copy.copy(x)
>>> x == y
True
>>> x is y
True
>>> isinstance(x(), y)
True
>>> y = copy.deepcopy(x)
>>> x == y
True
>>> x is y
True
>>> isinstance(x(), y)
True

It doesn't matter if there are N objects of type type, given an object, only one will be its class, hence it's safe to compare for reference in this case. And since reference comparison will always be cheaper than value comparison, I wanted to know whether or not my assertion above holds. I'm reaching the conclusion that it does, unless someone presents evidence in contrary.

10
  • If you want to know which is fastest for your use, just test it with the timeit module. Mar 8, 2012 at 2:14
  • 2
    @jsbueno That's not what I meant. Of course there are many instances, but only one will be "the class" of a given object, right? In other words if x.__class__ == a and a == b then a is b (for well behaved __eq__, of course), that's the conjecture I'm trying to confirm/refute.
    – mgibsonbr
    Mar 8, 2012 at 12:23
  • 3
    The title is a DoS attack on my brain's syntax unit :) Jul 3, 2013 at 16:39
  • 3
    possible duplicate of Difference between type(obj) and obj.__class__
    – user
    Mar 24, 2014 at 14:45
  • 1
    @mgibsonbr if x.__class__ == a and a == b then a is b see here -> Are classobjects singleton in python?
    – wim
    Dec 21, 2015 at 16:14

4 Answers 4

50

For old-style classes, there is a difference:

>>> class X: pass
... 
>>> type(X)
<type 'classobj'>
>>> X.__class__
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
AttributeError: class X has no attribute '__class__'
>>> x = X()
>>> x.__class__
<class __main__.X at 0x171b5d50>
>>> type(x)
<type 'instance'>

The point of new-style classes was to unify class and type. Technically speaking, __class__ is the only solution that will work both for new and old-style class instances, but it will also throw an exception on old-style class objects themselves. You can call type() on any object, but not every object has __class__. Also, you can muck with __class__ in a way you can't muck with type().

>>> class Z(object):
...     def __getattribute__(self, name):
...             return "ham"
... 
>>> z = Z()
>>> z.__class__
'ham'
>>> type(z)
<class '__main__.Z'>

Personally, I usually have an environment with new-style classes only, and as a matter of style prefer to use type() as I generally prefer built-in functions when they exist to using magic attributes. For example, I would also prefer bool(x) to x.__nonzero__().

7
  • 2
    That would make __class__ preferable then, right? Since it will work both for new and old style classes.
    – mgibsonbr
    Mar 8, 2012 at 0:09
  • 2
    I've expanded my answer to answer this question as well as I can. I don't think there is a universal answer, but if you can be sure you won't need to use this on old-style classes, type() should work better. Mar 8, 2012 at 0:51
  • 1
    One weird quirk is that even in Python 3, .__class__ is still used by isinstance checks, which is something that is used deliberately by proxy objects (such as the ones provided by the wrapt library). So it actually turns out that if when proxy objects are in play, foo.__class__ is more "correct" than type(foo) unless you're actively looking to specially handle, reject, or break proxy objects within your code.
    – mtraceur
    Jul 1, 2022 at 8:21
  • Needing to use type() or .__class__ is pretty rare these days. I mainly use them during debugging, for which I would absolutely want to know if some sort of proxy class were involved. I wouldn't want to make assumptions about what behavior is desired as a universal. Jul 5, 2022 at 18:58
  • @MichaelHoffman Right, hence the "unless". Anyway, I actually find a lot of use nowadays for either type(self) or self.__class__: to get __name__ in the __repr__ implementations of my classes and to construct new instances of the current class (f.e. in __add__), it's nicer for subclassing, especially the __repr__ case (where a hard-coded class name is automatically wrong in the majority of cases where the rest of the repr might be perfectly fine still). (In which case the difference only comes up if code calls the unbound method with a wrapped instance as the first argument.)
    – mtraceur
    Dec 3, 2022 at 4:19
17

The result of type() is equivalent to obj.__class__ in new style classes, and class objects are not safe for comparison using is, use == instead.

For new style classes the preferable way here would be type(obj) == Foo.

As Michael Hoffman pointed out in his answer, there is a difference here between new and old style classes, so for backwards compatible code you may need to use obj.__class__ == Foo.

For those claiming that isinstance(obj, Foo) is preferable, consider the following scenario:

class Foo(object):
    pass

class Bar(Foo):
    pass

>>> obj = Bar()
>>> isinstance(obj, Foo)
True
>>> type(obj) == Foo
False

The OP wants the behavior of type(obj) == Foo, where it will be false even though Foo is a base class of Bar.

10
  • 5
    Can you give an example of a class object that is equal but not identical? Mar 8, 2012 at 0:04
  • 2
    @MichaelHoffman: If you use a metaclass, could you override the __eq__ method for the class itself? I can't see any use for it, but it's the only exception I can think of.
    – Thomas K
    Mar 8, 2012 at 0:13
  • 1
    @MichaelHoffman - I can't, but this is a value comparison and there are no guarantees that equivalent values will have the same identity. It is an implementation detail when that is the case, and even though there are some instances (this may be one of them) where the implementation makes it impossible to have equal and non-identical values, that doesn't make it safe. Mar 8, 2012 at 0:18
  • 6
    @F.J Yeah, that's exactly my point. Python's style guide says that "Comparisons to singletons like None should always be done with 'is' or 'is not', never the equality operators." Well, a class object is like a singleton in the sense that another class will never be "the" class of an object... or at least my common sense says so. However, I'd like to find references to confirm (or refute) that.
    – mgibsonbr
    Mar 8, 2012 at 1:49
  • 7
    "The result of type() is equivalent to obj.__class__ in new style classes" is a reasonable assumption about sane code but it is not guaranteed by Python. If the class body definition includes __class__ = 123 then the builtin type returns the correct result (that is, it returns the object that effectively controls the behavior). One could also probably do nasty things with getattribute.
    – Niriel
    Sep 23, 2015 at 12:37
15

is should only be used for identity checks, not type checks (there is an exception to the rule where you can and should use is for check against singletons).

Note: I would generally not use type and == for type checks, either. The preferable way for type checks is isinstance(obj, Foo). If you ever have a reason to check if something is not an subclass instance, it smells like a fishy design to me. When class Bar(Foo):, then Bar is a Foo, and you should be avoiding any situations where some part of your code has to work on a Foo instance but breaks on a Bar instance.

5
  • Right. If you can't do that, you usually have a broken design. Mar 8, 2012 at 0:02
  • BTW I agree my design is not the best one, but I'm writing a few very specialized classes that need to be optimized for space, and are not meant to be subclassed outside my library. That's not something I'd do in the general case though...
    – mgibsonbr
    Mar 8, 2012 at 0:17
  • 3
    If you're optimizing for space, consider using __slots__. Proceed with caution! :)
    – jathanism
    Mar 8, 2012 at 1:24
  • @jathanism Thanks a lot, didn't even imagine something like that existed in Python! Doesn't solve all my problems, but for most of them it's better than the alternatives I knew of.
    – mgibsonbr
    Mar 8, 2012 at 1:35
  • 1
    I use isinstance 99% of the time in my code, but there are a few places where I use type(x) where acting on a subclass would not work. For instance, say I have a slotted class that I know has only two attributes that can only be simple objects, but that gets copied a lot, I can save a lot of time in copying overriding __deepcopy__ to simply create a new object with those two attributes (faster than copy.py's code) and then resort to the copy.py code if it's a subclass. Then subclassing classes do not need to know to override __deepcopy__ itself. Sep 10, 2017 at 17:52
-3

Update: Thanks all for the feedback. I'm still puzzled by whether or not class objects are singletons, my common sense says they are, but it's been really hard to get a confirmation (try googling for "python", "class" and "unique" or "singleton").

I can confirm that __instance__ is a singleton. Here is the proof.

>>> t1=File.test()
made class
>>> t2=File.test()
made class
>>> print t1.__class__()
made class
<File.test object at 0x1101bdd10>
>>> print t2.__class__()
made class
<File.test object at 0x1101bdd10>

As you can see both t1 and t2 print out the same value in memory even though t1 and t2 are at different values in memory. Here is the proof of that.

>>> print t1
<File.test object at 0x1101bdc90>
>>> print t2
<File.test object at 0x1101bdcd0>

The __instance__ method only exists if you used class "name"(object):. If you use the classic style class, class "name":, than the __instance__ method doesn't exist.

What this means is to be the most generic you probably want to use type unless you know for a fact instance does exist.

5
  • 1
    Thanks for your answer! About the last comment, just paste the whole code, then select it and click the "code sample" button (or simply indent your code by 4 spaces before pasting here, whichever is easier).
    – mgibsonbr
    Feb 14, 2014 at 22:33
  • 2
    This is not "proof", it's just one example. Here's another x, y = 7, 7; x is y will evaluate True but it is not proof that integers are singletons (they are not).
    – wim
    Nov 25, 2015 at 1:17
  • What exactly is "__instance__"?
    – DylanYoung
    Dec 23, 2019 at 19:44
  • Worth noting: while integers in general aren't singletons (this is dead obvious because: there is more than one of them), in cpython 7 is indeed a singleton, as are "small" strings and other small integers.
    – DylanYoung
    Dec 26, 2019 at 17:44
  • 1

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