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In Java, for example, the @Override annotation not only provides compile-time checking of an override but makes for excellent self-documenting code. I'm just looking for documentation (although if it's an indicator to some checker like pylint, that's a bonus). I can add a comment or docstring somewhere, but what is the idiomatic way to indicate an override in Python?

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Java != Python, different paradigms –  Ed S. Jul 22 '09 at 22:38
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In other words, you don't ever indicate that you're overriding a method? Leave it to the reader to figure that out himself? –  Bluu Jul 22 '09 at 23:49
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Yeah, I know it seems like an error prone situation coming from a compiled language, but you just have to accept it. In practice I have not found it to be much of a problem (Ruby in my case, not Python, but same idea) –  Ed S. Jul 23 '09 at 17:12
    
@Bluu Can you accept mkorpela's answer instead? –  Quentin Pradet Oct 16 '13 at 15:28
    
Sure, done. Both Triptych's answer and mkorpela's answers are simple, I like that, but the latter's explicit-over-implicit spirit, and intelligibly preventing mistakes wins. –  Bluu Oct 17 '13 at 16:07

8 Answers 8

up vote 63 down vote accepted

From time to time I end up here looking at this question. Mainly this happens after (again) seeing the same bug in our code base: Someone has forgotten some "interface" implementing class while renaming a method in the "interface"..

Well Python ain't Java but Python has power -- and explicit is better than implicit -- and there are real concrete cases in the real world where this thing would have helped me.

So here is a sketch of overrides decorator. This will check that the class given as a parameter has the same method (or something) name as the method being decorated.

If you can think of a better solution please post it here!

def overrides(interface_class):
    def overrider(method):
        assert(method.__name__ in dir(interface_class))
        return method
    return overrider

It works as follows:

class MySuperInterface(object):
    def my_method(self):
        print 'hello world!'


class ConcreteImplementer(MySuperInterface):
    @overrides(MySuperInterface)
    def my_method(self):
        print 'hello kitty!'

and if you do a faulty version it will raise an assertion error during class loading:

class ConcreteFaultyImplementer(MySuperInterface):
    @overrides(MySuperInterface)
    def your_method(self):
        print 'bye bye!'

>> AssertionError!!!!!!!
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3  
Awesome. This caught a misspelling bug the first time I tried it. Kudos. –  Christopher Bruns Jan 12 '12 at 23:15
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So, I am using python 2.7 and if my class extends a bunch of other classes and, unlike with the interface, I do not want to hard-code the exact class name that contains the interface function, then can this work in general if I inherit from more than one class or will the method resolution order break this? –  Hamish Grubijan Nov 26 '12 at 20:28
    
To my best knowledge you can not access class attributes while in the class body - this is where the overrides decorator is executed. So in general case without specifying some superclass overrides method doesn't work. –  mkorpela Nov 27 '12 at 18:30
    
How would you write an assertion that checks whether the number of arguments is the same in the base class/interface and the child class? –  Skarab Jan 10 '13 at 18:25
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This is also nice for doc strings! overrides could copy the docstring of the overridden method if the overriding method doesn't have one of its own. –  neo May 29 at 10:20

Here's an implementation that doesn't require specification of the interface_class name.

import inspect
import re

def overrides(method):
    # actually can't do this because a method is really just a function while inside a class def'n  
    #assert(inspect.ismethod(method))

    stack = inspect.stack()
    base_classes = re.search(r'class.+\((.+)\)\s*\:', stack[2][4][0]).group(1)

    # handle multiple inheritance
    base_classes = [s.strip() for s in base_classes.split(',')]
    if not base_classes:
        raise ValueError('overrides decorator: unable to determine base class') 

    # stack[0]=overrides, stack[1]=inside class def'n, stack[2]=outside class def'n
    derived_class_locals = stack[2][0].f_locals

    # replace each class name in base_classes with the actual class type
    for i, base_class in enumerate(base_classes):

        if '.' not in base_class:
            base_classes[i] = derived_class_locals[base_class]

        else:
            components = base_class.split('.')

            # obj is either a module or a class
            obj = derived_class_locals[components[0]]

            for c in components[1:]:
                assert(inspect.ismodule(obj) or inspect.isclass(obj))
                obj = getattr(obj, c)

            base_classes[i] = obj


    assert( any( hasattr(cls, method.__name__) for cls in base_classes ) )
    return method
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1  
A little magical but makes typical usage a lot easier. Can you include usage examples? –  Bluu Oct 17 '13 at 16:06
    
what are the average and worst-case costs of using this decorator, perhaps expressed as a comparison with a build-in decorator like @classmethod or @property? –  larham1 Dec 17 '13 at 21:23
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@larham1 This decorator is executed once, when class definition is analyzed, not on each call. Therefore it's execution cost is irrelevant, when compared to program runtime. –  Abgan Apr 6 at 9:10

Python ain't Java. There's of course no such thing really as compile-time checking.

I think a comment in the docstring is plenty. This allows any user of your method to type help(obj.method) and see that the method is an override.

You can also explicitly extend an interface with class Foo(Interface), which will allow users to type help(Interface.method) to get an idea about the functionality your method is intended to provide.

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17  
The real point of @Override in Java isn't to document - it's to catch a mistake when you intended to override a method, but ended up defining a new one (e.g. because you misspelled a name; in Java, it may also happen because you used the wrong signature, but this isn't an issue in Python - but spelling mistake still is). –  Pavel Minaev Jul 22 '09 at 19:35
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@ Pavel Minaev: True, but it is still convenient to have for documentation, especially if you're using an IDE / text editor which doesn't have automatic indicators for overrides (Eclipse's JDT shows them neatly alongside line numbers, for example). –  Tuukka Mustonen Aug 3 '11 at 12:19
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@PavelMinaev Wrong. One of the main points of @Override is documentation in addition to compile time checking. –  siamii Nov 20 '11 at 9:15
    
@siamii I think an aid to documentation is great, but in all the official Java documentation I see, they only indicate the importance of the compile time checks. Please substantiate your claim that Pavel is "wrong." –  Andrew Mellinger Jun 2 at 11:13

As far as I know, there is no special way to indicate an override in Python. You just define the method and include a docstring, like always.

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If you want this for documentation purposes only, you can define your own override decorator:

def override(f):
    return f


class MyClass (BaseClass):

    @override
    def method(self):
        pass

This is really nothing but eye-candy, unless you create override(f) in such a way that is actually checks for an override.

But then, this is Python, why write it like it was Java?

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One could add actual validation via inspection to the override decorator. –  Erik Allik Jul 29 '11 at 22:53
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But then, this is Python, why write it like it was Java? Because some ideas in Java are good and worth extending to other languages? –  Piotr Dobrogost Feb 17 '13 at 18:53
    
Because when you rename a method in a superclass it would be nice to know that some subclass 2 levels down was overriding it. Sure, it's easy to check, but a little help from language parser wouldn't hurt. –  Abgan May 9 '13 at 13:01

Java is a strong static type language, which limits its ability of doing abstraction job. However, we have Python as a dynamic type language, providing us a much more powerful way to handle this.

Override is an ugly implementation of MapReduce. Map is an abstraction of processes that takes one parameter to do variety of works. Imagine you have a potato, you'd like to peel and cut and cook it. They seem very similar - can I do them in one step? You may ask. Here is the code in Python:

def Map(act, potato):

    # we have 100 potatoes!
    for i in range(100):
        act(potato)

def peel(potato):
    print 'peel %s' % potato

def cut(potato):
    print 'cut %s' % potato

def cook(potato):
    print 'cook %s' % potato

And we do it just as override this action:

Map(peel, potato)
Map(cut, potato)
Map(cook, potato)

# and we can do it to apple
Map(peel, apple)
......

And also, we can abstract all above to another abstraction. For example:

def Abs(f, *args):
    f(*args)

# here is what we do
Abs(Map, cook, potatoes)
Abs(Reduce, peel, apple)

This lisp magic is much more powerful than Override of Java. For Reduce, we do similar work on a set of variables. Just as if we can kick a ball, and also kick a rock. It all depends on how you define your function. Whatever, it's totally feasible.

MapReduce even can be done on a set of computing group, parallelly! System distributes tasks to separate units, just as you have 100 cooks peeling and cutting potatoes.

See: http://www.joelonsoftware.com/items/2006/08/01.html If you are smart, you even can do it inline with lambda expression!

Hope this is what you need.

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Like others have said unlike Java there is not @Overide tag however above you can create your own using decorators however I would suggest using the getattrib() global method instead of using the internal dict so you get something like the following:

def Override(superClass):
    def method(func)
        getattr(superClass,method.__name__)
    return method

If you wanted to you could catch getattr() in your own try catch raise your own error but I think getattr method is better in this case.

Also this catches all items bound to a class including class methods and vairables

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Hear is simplest and working under Jython with Java classes:

class MyClass(SomeJavaClass):
     def __init__(self):
         setattr(self, "name_of_method_to_override", __method_override__)

     def __method_override__(self, some_args):
         some_thing_to_do()
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