I have a number of classes which all share the same methods, only with different implementations. In Java, it would make sense to have each of these classes implement an interface or extend an abstract class. Does Python have anything similar to this, or should I be taking an alternative approach?


5 Answers 5


There's a bit of a story behind interfaces in Python. The original attitude, which held sway for many years, is that you don't need them: Python works on the EAFP (easier to ask forgiveness than permission) principle. That is, instead of specifying that you accept an, I don't know, ICloseable object, you simply try to close the object when you need to, and if it raises an exception then it raises an exception.

So in this mentality you would just write your classes separately, and use them as you will. If one of them doesn't conform to the requirements, your program will raise an exception; conversely, if you write another class with the right methods then it will just work, without your needing to specify that it implements your particular interface.

This works pretty well, but there are definite use cases for interfaces, especially with larger software projects. The final decision in Python was to provide the abc module, which allows you to write abstract base classes i.e. classes that you can't instantiate unless you override all their methods. It's your decision as to whether you think using them is worth it.

The PEP introducing ABCs explain much better than I can:

In the domain of object-oriented programming, the usage patterns for interacting with an object can be divided into two basic categories, which are 'invocation' and 'inspection'.

Invocation means interacting with an object by invoking its methods. Usually this is combined with polymorphism, so that invoking a given method may run different code depending on the type of an object.

Inspection means the ability for external code (outside of the object's methods) to examine the type or properties of that object, and make decisions on how to treat that object based on that information.

Both usage patterns serve the same general end, which is to be able to support the processing of diverse and potentially novel objects in a uniform way, but at the same time allowing processing decisions to be customized for each different type of object.

In classical OOP theory, invocation is the preferred usage pattern, and inspection is actively discouraged, being considered a relic of an earlier, procedural programming style. However, in practice this view is simply too dogmatic and inflexible, and leads to a kind of design rigidity that is very much at odds with the dynamic nature of a language like Python.

In particular, there is often a need to process objects in a way that wasn't anticipated by the creator of the object class. It is not always the best solution to build in to every object methods that satisfy the needs of every possible user of that object. Moreover, there are many powerful dispatch philosophies that are in direct contrast to the classic OOP requirement of behavior being strictly encapsulated within an object, examples being rule or pattern-match driven logic.

On the other hand, one of the criticisms of inspection by classic OOP theorists is the lack of formalisms and the ad hoc nature of what is being inspected. In a language such as Python, in which almost any aspect of an object can be reflected and directly accessed by external code, there are many different ways to test whether an object conforms to a particular protocol or not. For example, if asking 'is this object a mutable sequence container?', one can look for a base class of 'list', or one can look for a method named '_getitem_'. But note that although these tests may seem obvious, neither of them are correct, as one generates false negatives, and the other false positives.

The generally agreed-upon remedy is to standardize the tests, and group them into a formal arrangement. This is most easily done by associating with each class a set of standard testable properties, either via the inheritance mechanism or some other means. Each test carries with it a set of promises: it contains a promise about the general behavior of the class, and a promise as to what other class methods will be available.

This PEP proposes a particular strategy for organizing these tests known as Abstract Base Classes, or ABC. ABCs are simply Python classes that are added into an object's inheritance tree to signal certain features of that object to an external inspector. Tests are done using isinstance(), and the presence of a particular ABC means that the test has passed.

In addition, the ABCs define a minimal set of methods that establish the characteristic behavior of the type. Code that discriminates objects based on their ABC type can trust that those methods will always be present. Each of these methods are accompanied by an generalized abstract semantic definition that is described in the documentation for the ABC. These standard semantic definitions are not enforced, but are strongly recommended.

Like all other things in Python, these promises are in the nature of a gentlemen's agreement, which in this case means that while the language does enforce some of the promises made in the ABC, it is up to the implementer of the concrete class to insure that the remaining ones are kept.


I'm not that familiar with Python, but I would hazard a guess that it doesn't.

The reason why interfaces exist in Java is that they specify a contract. Something that implements java.util.List, for example, is guaranteed to have an add() method to conforms to the general behaviour as defined on the interface. You could drop in any (sane) implementation of List without knowing its specific class, call a sequence of methods defined on the interface and get the same general behaviour.

Moreover, both the developer and compiler can know that such a method exists and is callable on the object in question, even if they don't know its exact class. It's a form of polymorphism that's needed with static typing to allow different implementation classes yet still know that they're all legal.

This doesn't really make sense in Python, because it's not statically typed. You don't need to declare the class of an object, nor convince the compiler that methods you're calling on it definitely exist. "Interfaces" in a duck-typing world are as simple as invoking the method and trusting that the object can handle that message appropriately.

Note - edits from more knowledgeable Pythonistas are welcome.

  • Or because there is no multiple inheritance in Java.
    – alex vasi
    Nov 18, 2011 at 11:33

May be you can use something like this. This will act as an abstract class. Every subclass is thus forced to implement func1()

class Abstract:

    def func1(self):
        raise NotImplementedError("The method not implemented")
  • This is already in the stdlib as abc (docs.python.org/library/abc.html).
    – Katriel
    Nov 18, 2011 at 11:42
  • 1
    Well, abc is much better than the previous example, because abc will raise an error when the class is created while the previous example only raises when the method is called.
    – madjar
    Nov 18, 2011 at 12:04

I wrote a library in 3.5+ the allows for writing interfaces in Python.

The gist is to write a class decorator with the help of inspect.

import inspect

def implements(interface_cls):
    def _decorator(cls):
        verify_methods(interface_cls, cls)
        verify_properties(interface_cls, cls)
        verify_attributes(interface_cls, cls)
        return cls

    return _decorator

def verify_methods(interface_cls, cls):
    methods_predicate = lambda m: inspect.isfunction(m) or inspect.ismethod(m)
    for name, method in inspect.getmembers(interface_cls, methods_predicate):
        signature = inspect.signature(method)
        cls_method = getattr(cls, name, None)
        cls_signature = inspect.signature(cls_method) if cls_method else None
        if cls_signature != signature:
            raise NotImplementedError(
                "'{}' must implement method '{}({})' defined in interface '{}'"
                .format(cls.__name__, name, signature, interface_cls.__name__)

def verify_properties(interface_cls, cls):
    prop_attrs = dict(fget='getter', fset='setter', fdel='deleter')
    for name, prop in inspect.getmembers(interface_cls, inspect.isdatadescriptor):
        cls_prop = getattr(cls, name, None)
        for attr in prop_attrs:
            # instanceof doesn't work for class function comparison
            if type(getattr(prop, attr, None)) != type(getattr(cls_prop, attr, None)):
                raise NotImplementedError(
                    "'{}' must implement a {} for property '{}' defined in interface '{}'"  # flake8: noqa
                    .format(cls.__name__, prop_attrs[attr], name, interface_cls.__name__)

def verify_attributes(interface_cls, cls):
    interface_attributes = get_attributes(interface_cls)
    cls_attributes = get_attributes(cls)
    for missing_attr in (interface_attributes - cls_attributes):
        raise NotImplementedError(
            "'{}' must have class attribute '{}' defined in interface '{}'"
            .format(cls.__name__, missing_attr, interface_cls.__name__)

def get_attributes(cls):
    boring = dir(type('dummy', (object,), {}))
    return set(item[0] for item in inspect.getmembers(cls)
               if item[0] not in boring and not callable(item[1]))

You can then write classes like this:

class Quackable:
    def quack(self) -> bool:

class MallardDuck:    
    def quack(self) -> bool:

Below would give you an error though:

class RubberDuck:    
    def quack(self) -> str:

NotImplementedError: 'RubberdDuck' must implement method 'quack((self) -> bool)' defined in interface 'Quackable'

according this articule https://realpython.com/python-interface/ , this is how you can do formal interface:

import abc

class CRUDInterface(metaclass=abc.ABCMeta):
    def create(self, *args, **kwargs):
        """Load in the data set"""
        raise NotImplementedError
    def read(self, *args, **kwargs):
        """Load in the data set"""
        raise NotImplementedError
    def update(self, *args, **kwargs):
        """Load in the data set"""
        raise NotImplementedError
    def delete(self, *args, **kwargs):
        """Load in the data set"""
        raise NotImplementedError

class ModelTest1(CRUDInterface):
    def create(self, *args, **kwargs):
    def read(self, *args, **kwargs):
    def update(self, *args, **kwargs):
    def delete(self, *args, **kwargs):
class ModelTest2(CRUDInterface):

formal interface that will raise errors when the abstract methods aren’t overridden.

>>> t1 = ModelTest1()
>>> t2 = ModelTest2()
Traceback (most recent call last):
  File "../abstractmodel.py", line 46, in <module>
    t2 = ModelTest2()
TypeError: Can't instantiate abstract class ModelTest2 with abstract methods create, delete, read, update

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