What are metaclasses and what do we use them for?

15 Answers 15

up vote 2099 down vote accepted

A metaclass is the class of a class. Like a class defines how an instance of the class behaves, a metaclass defines how a class behaves. A class is an instance of a metaclass.

metaclass diagram

While in Python you can use arbitrary callables for metaclasses (like Jerub shows), the more useful approach is actually to make it an actual class itself. type is the usual metaclass in Python. In case you're wondering, yes, type is itself a class, and it is its own type. You won't be able to recreate something like type purely in Python, but Python cheats a little. To create your own metaclass in Python you really just want to subclass type.

A metaclass is most commonly used as a class-factory. Like you create an instance of the class by calling the class, Python creates a new class (when it executes the 'class' statement) by calling the metaclass. Combined with the normal __init__ and __new__ methods, metaclasses therefore allow you to do 'extra things' when creating a class, like registering the new class with some registry, or even replace the class with something else entirely.

When the class statement is executed, Python first executes the body of the class statement as a normal block of code. The resulting namespace (a dict) holds the attributes of the class-to-be. The metaclass is determined by looking at the baseclasses of the class-to-be (metaclasses are inherited), at the __metaclass__ attribute of the class-to-be (if any) or the __metaclass__ global variable. The metaclass is then called with the name, bases and attributes of the class to instantiate it.

However, metaclasses actually define the type of a class, not just a factory for it, so you can do much more with them. You can, for instance, define normal methods on the metaclass. These metaclass-methods are like classmethods, in that they can be called on the class without an instance, but they are also not like classmethods in that they cannot be called on an instance of the class. type.__subclasses__() is an example of a method on the type metaclass. You can also define the normal 'magic' methods, like __add__, __iter__ and __getattr__, to implement or change how the class behaves.

Here's an aggregated example of the bits and pieces:

def make_hook(f):
    """Decorator to turn 'foo' method into '__foo__'"""
    f.is_hook = 1
    return f

class MyType(type):
    def __new__(mcls, name, bases, attrs):

        if name.startswith('None'):
            return None

        # Go over attributes and see if they should be renamed.
        newattrs = {}
        for attrname, attrvalue in attrs.iteritems():
            if getattr(attrvalue, 'is_hook', 0):
                newattrs['__%s__' % attrname] = attrvalue
            else:
                newattrs[attrname] = attrvalue

        return super(MyType, mcls).__new__(mcls, name, bases, newattrs)

    def __init__(self, name, bases, attrs):
        super(MyType, self).__init__(name, bases, attrs)

        # classregistry.register(self, self.interfaces)
        print "Would register class %s now." % self

    def __add__(self, other):
        class AutoClass(self, other):
            pass
        return AutoClass
        # Alternatively, to autogenerate the classname as well as the class:
        # return type(self.__name__ + other.__name__, (self, other), {})

    def unregister(self):
        # classregistry.unregister(self)
        print "Would unregister class %s now." % self

class MyObject:
    __metaclass__ = MyType


class NoneSample(MyObject):
    pass

# Will print "NoneType None"
print type(NoneSample), repr(NoneSample)

class Example(MyObject):
    def __init__(self, value):
        self.value = value
    @make_hook
    def add(self, other):
        return self.__class__(self.value + other.value)

# Will unregister the class
Example.unregister()

inst = Example(10)
# Will fail with an AttributeError
#inst.unregister()

print inst + inst
class Sibling(MyObject):
    pass

ExampleSibling = Example + Sibling
# ExampleSibling is now a subclass of both Example and Sibling (with no
# content of its own) although it will believe it's called 'AutoClass'
print ExampleSibling
print ExampleSibling.__mro__
  • "You won't be able to recreate something like type purely in Python, but Python cheats a little" is not true. – ppperry Aug 3 '17 at 14:32
  • class A(type):pass<NEWLINE>class B(type,metaclass=A):pass<NEWLINE>b.__class__ = b – ppperry Aug 3 '17 at 14:34
up vote 5780 down vote
+200

Classes as objects

Before understanding metaclasses, you need to master classes in Python. And Python has a very peculiar idea of what classes are, borrowed from the Smalltalk language.

In most languages, classes are just pieces of code that describe how to produce an object. That's kinda true in Python too:

>>> class ObjectCreator(object):
...       pass
...

>>> my_object = ObjectCreator()
>>> print(my_object)
<__main__.ObjectCreator object at 0x8974f2c>

But classes are more than that in Python. Classes are objects too.

Yes, objects.

As soon as you use the keyword class, Python executes it and creates an OBJECT. The instruction

>>> class ObjectCreator(object):
...       pass
...

creates in memory an object with the name "ObjectCreator".

This object (the class) is itself capable of creating objects (the instances), and this is why it's a class.

But still, it's an object, and therefore:

  • you can assign it to a variable
  • you can copy it
  • you can add attributes to it
  • you can pass it as a function parameter

e.g.:

>>> print(ObjectCreator) # you can print a class because it's an object
<class '__main__.ObjectCreator'>
>>> def echo(o):
...       print(o)
...
>>> echo(ObjectCreator) # you can pass a class as a parameter
<class '__main__.ObjectCreator'>
>>> print(hasattr(ObjectCreator, 'new_attribute'))
False
>>> ObjectCreator.new_attribute = 'foo' # you can add attributes to a class
>>> print(hasattr(ObjectCreator, 'new_attribute'))
True
>>> print(ObjectCreator.new_attribute)
foo
>>> ObjectCreatorMirror = ObjectCreator # you can assign a class to a variable
>>> print(ObjectCreatorMirror.new_attribute)
foo
>>> print(ObjectCreatorMirror())
<__main__.ObjectCreator object at 0x8997b4c>

Creating classes dynamically

Since classes are objects, you can create them on the fly, like any object.

First, you can create a class in a function using class:

>>> def choose_class(name):
...     if name == 'foo':
...         class Foo(object):
...             pass
...         return Foo # return the class, not an instance
...     else:
...         class Bar(object):
...             pass
...         return Bar
...
>>> MyClass = choose_class('foo')
>>> print(MyClass) # the function returns a class, not an instance
<class '__main__.Foo'>
>>> print(MyClass()) # you can create an object from this class
<__main__.Foo object at 0x89c6d4c>

But it's not so dynamic, since you still have to write the whole class yourself.

Since classes are objects, they must be generated by something.

When you use the class keyword, Python creates this object automatically. But as with most things in Python, it gives you a way to do it manually.

Remember the function type? The good old function that lets you know what type an object is:

>>> print(type(1))
<type 'int'>
>>> print(type("1"))
<type 'str'>
>>> print(type(ObjectCreator))
<type 'type'>
>>> print(type(ObjectCreator()))
<class '__main__.ObjectCreator'>

Well, type has a completely different ability, it can also create classes on the fly. type can take the description of a class as parameters, and return a class.

(I know, it's silly that the same function can have two completely different uses according to the parameters you pass to it. It's an issue due to backwards compatibility in Python)

type works this way:

type(name of the class,
     tuple of the parent class (for inheritance, can be empty),
     dictionary containing attributes names and values)

e.g.:

>>> class MyShinyClass(object):
...       pass

can be created manually this way:

>>> MyShinyClass = type('MyShinyClass', (), {}) # returns a class object
>>> print(MyShinyClass)
<class '__main__.MyShinyClass'>
>>> print(MyShinyClass()) # create an instance with the class
<__main__.MyShinyClass object at 0x8997cec>

You'll notice that we use "MyShinyClass" as the name of the class and as the variable to hold the class reference. They can be different, but there is no reason to complicate things.

type accepts a dictionary to define the attributes of the class. So:

>>> class Foo(object):
...       bar = True

Can be translated to:

>>> Foo = type('Foo', (), {'bar':True})

And used as a normal class:

>>> print(Foo)
<class '__main__.Foo'>
>>> print(Foo.bar)
True
>>> f = Foo()
>>> print(f)
<__main__.Foo object at 0x8a9b84c>
>>> print(f.bar)
True

And of course, you can inherit from it, so:

>>>   class FooChild(Foo):
...         pass

would be:

>>> FooChild = type('FooChild', (Foo,), {})
>>> print(FooChild)
<class '__main__.FooChild'>
>>> print(FooChild.bar) # bar is inherited from Foo
True

Eventually you'll want to add methods to your class. Just define a function with the proper signature and assign it as an attribute.

>>> def echo_bar(self):
...       print(self.bar)
...
>>> FooChild = type('FooChild', (Foo,), {'echo_bar': echo_bar})
>>> hasattr(Foo, 'echo_bar')
False
>>> hasattr(FooChild, 'echo_bar')
True
>>> my_foo = FooChild()
>>> my_foo.echo_bar()
True

And you can add even more methods after you dynamically create the class, just like adding methods to a normally created class object.

>>> def echo_bar_more(self):
...       print('yet another method')
...
>>> FooChild.echo_bar_more = echo_bar_more
>>> hasattr(FooChild, 'echo_bar_more')
True

You see where we are going: in Python, classes are objects, and you can create a class on the fly, dynamically.

This is what Python does when you use the keyword class, and it does so by using a metaclass.

What are metaclasses (finally)

Metaclasses are the 'stuff' that creates classes.

You define classes in order to create objects, right?

But we learned that Python classes are objects.

Well, metaclasses are what create these objects. They are the classes' classes, you can picture them this way:

MyClass = MetaClass()
my_object = MyClass()

You've seen that type lets you do something like this:

MyClass = type('MyClass', (), {})

It's because the function type is in fact a metaclass. type is the metaclass Python uses to create all classes behind the scenes.

Now you wonder why the heck is it written in lowercase, and not Type?

Well, I guess it's a matter of consistency with str, the class that creates strings objects, and int the class that creates integer objects. type is just the class that creates class objects.

You see that by checking the __class__ attribute.

Everything, and I mean everything, is an object in Python. That includes ints, strings, functions and classes. All of them are objects. And all of them have been created from a class:

>>> age = 35
>>> age.__class__
<type 'int'>
>>> name = 'bob'
>>> name.__class__
<type 'str'>
>>> def foo(): pass
>>> foo.__class__
<type 'function'>
>>> class Bar(object): pass
>>> b = Bar()
>>> b.__class__
<class '__main__.Bar'>

Now, what is the __class__ of any __class__ ?

>>> age.__class__.__class__
<type 'type'>
>>> name.__class__.__class__
<type 'type'>
>>> foo.__class__.__class__
<type 'type'>
>>> b.__class__.__class__
<type 'type'>

So, a metaclass is just the stuff that creates class objects.

You can call it a 'class factory' if you wish.

type is the built-in metaclass Python uses, but of course, you can create your own metaclass.

The __metaclass__ attribute

You can add a __metaclass__ attribute when you write a class:

class Foo(object):
    __metaclass__ = something...
    [...]

If you do so, Python will use the metaclass to create the class Foo.

Careful, it's tricky.

You write class Foo(object) first, but the class object Foo is not created in memory yet.

Python will look for __metaclass__ in the class definition. If it finds it, it will use it to create the object class Foo. If it doesn't, it will use type to create the class.

Read that several times.

When you do:

class Foo(Bar):
    pass

Python does the following:

Is there a __metaclass__ attribute in Foo?

If yes, create in memory a class object (I said a class object, stay with me here), with the name Foo by using what is in __metaclass__.

If Python can't find __metaclass__, it will look for a __metaclass__ at the MODULE level, and try to do the same (but only for classes that don't inherit anything, basically old-style classes).

Then if it can't find any __metaclass__ at all, it will use the Bar's (the first parent) own metaclass (which might be the default type) to create the class object.

Be careful here that the __metaclass__ attribute will not be inherited, the metaclass of the parent (Bar.__class__) will be. If Bar used a __metaclass__ attribute that created Bar with type() (and not type.__new__()), the subclasses will not inherit that behavior.

Now the big question is, what can you put in __metaclass__ ?

The answer is: something that can create a class.

And what can create a class? type, or anything that subclasses or uses it.

Custom metaclasses

The main purpose of a metaclass is to change the class automatically, when it's created.

You usually do this for APIs, where you want to create classes matching the current context.

Imagine a stupid example, where you decide that all classes in your module should have their attributes written in uppercase. There are several ways to do this, but one way is to set __metaclass__ at the module level.

This way, all classes of this module will be created using this metaclass, and we just have to tell the metaclass to turn all attributes to uppercase.

Luckily, __metaclass__ can actually be any callable, it doesn't need to be a formal class (I know, something with 'class' in its name doesn't need to be a class, go figure... but it's helpful).

So we will start with a simple example, by using a function.

# the metaclass will automatically get passed the same argument
# that you usually pass to `type`
def upper_attr(future_class_name, future_class_parents, future_class_attr):
    """
      Return a class object, with the list of its attribute turned
      into uppercase.
    """

    # pick up any attribute that doesn't start with '__' and uppercase it
    uppercase_attr = {}
    for name, val in future_class_attr.items():
        if not name.startswith('__'):
            uppercase_attr[name.upper()] = val
        else:
            uppercase_attr[name] = val

    # let `type` do the class creation
    return type(future_class_name, future_class_parents, uppercase_attr)

__metaclass__ = upper_attr # this will affect all classes in the module

class Foo(): # global __metaclass__ won't work with "object" though
    # but we can define __metaclass__ here instead to affect only this class
    # and this will work with "object" children
    bar = 'bip'

print(hasattr(Foo, 'bar'))
# Out: False
print(hasattr(Foo, 'BAR'))
# Out: True

f = Foo()
print(f.BAR)
# Out: 'bip'

Now, let's do exactly the same, but using a real class for a metaclass:

# remember that `type` is actually a class like `str` and `int`
# so you can inherit from it
class UpperAttrMetaclass(type):
    # __new__ is the method called before __init__
    # it's the method that creates the object and returns it
    # while __init__ just initializes the object passed as parameter
    # you rarely use __new__, except when you want to control how the object
    # is created.
    # here the created object is the class, and we want to customize it
    # so we override __new__
    # you can do some stuff in __init__ too if you wish
    # some advanced use involves overriding __call__ as well, but we won't
    # see this
    def __new__(upperattr_metaclass, future_class_name,
                future_class_parents, future_class_attr):

        uppercase_attr = {}
        for name, val in future_class_attr.items():
            if not name.startswith('__'):
                uppercase_attr[name.upper()] = val
            else:
                uppercase_attr[name] = val

        return type(future_class_name, future_class_parents, uppercase_attr)

But this is not really OOP. We call type directly and we don't override or call the parent __new__. Let's do it:

class UpperAttrMetaclass(type):

    def __new__(upperattr_metaclass, future_class_name,
                future_class_parents, future_class_attr):

        uppercase_attr = {}
        for name, val in future_class_attr.items():
            if not name.startswith('__'):
                uppercase_attr[name.upper()] = val
            else:
                uppercase_attr[name] = val

        # reuse the type.__new__ method
        # this is basic OOP, nothing magic in there
        return type.__new__(upperattr_metaclass, future_class_name,
                            future_class_parents, uppercase_attr)

You may have noticed the extra argument upperattr_metaclass. There is nothing special about it: __new__ always receives the class it's defined in, as first parameter. Just like you have self for ordinary methods which receive the instance as first parameter, or the defining class for class methods.

Of course, the names I used here are long for the sake of clarity, but like for self, all the arguments have conventional names. So a real production metaclass would look like this:

class UpperAttrMetaclass(type):

    def __new__(cls, clsname, bases, dct):

        uppercase_attr = {}
        for name, val in dct.items():
            if not name.startswith('__'):
                uppercase_attr[name.upper()] = val
            else:
                uppercase_attr[name] = val

        return type.__new__(cls, clsname, bases, uppercase_attr)

We can make it even cleaner by using super, which will ease inheritance (because yes, you can have metaclasses, inheriting from metaclasses, inheriting from type):

class UpperAttrMetaclass(type):

    def __new__(cls, clsname, bases, dct):

        uppercase_attr = {}
        for name, val in dct.items():
            if not name.startswith('__'):
                uppercase_attr[name.upper()] = val
            else:
                uppercase_attr[name] = val

        return super(UpperAttrMetaclass, cls).__new__(cls, clsname, bases, uppercase_attr)

That's it. There is really nothing more about metaclasses.

The reason behind the complexity of the code using metaclasses is not because of metaclasses, it's because you usually use metaclasses to do twisted stuff relying on introspection, manipulating inheritance, vars such as __dict__, etc.

Indeed, metaclasses are especially useful to do black magic, and therefore complicated stuff. But by themselves, they are simple:

  • intercept a class creation
  • modify the class
  • return the modified class

Why would you use metaclasses classes instead of functions?

Since __metaclass__ can accept any callable, why would you use a class since it's obviously more complicated?

There are several reasons to do so:

  • The intention is clear. When you read UpperAttrMetaclass(type), you know what's going to follow
  • You can use OOP. Metaclass can inherit from metaclass, override parent methods. Metaclasses can even use metaclasses.
  • Subclasses of a class will be instances of its metaclass if you specified a metaclass-class, but not with a metaclass-function.
  • You can structure your code better. You never use metaclasses for something as trivial as the above example. It's usually for something complicated. Having the ability to make several methods and group them in one class is very useful to make the code easier to read.
  • You can hook on __new__, __init__ and __call__. Which will allow you to do different stuff. Even if usually you can do it all in __new__, some people are just more comfortable using __init__.
  • These are called metaclasses, damn it! It must mean something!

Why would you use metaclasses?

Now the big question. Why would you use some obscure error prone feature?

Well, usually you don't:

Metaclasses are deeper magic that 99% of users should never worry about. If you wonder whether you need them, you don't (the people who actually need them know with certainty that they need them, and don't need an explanation about why).

Python Guru Tim Peters

The main use case for a metaclass is creating an API. A typical example of this is the Django ORM.

It allows you to define something like this:

class Person(models.Model):
    name = models.CharField(max_length=30)
    age = models.IntegerField()

But if you do this:

guy = Person(name='bob', age='35')
print(guy.age)

It won't return an IntegerField object. It will return an int, and can even take it directly from the database.

This is possible because models.Model defines __metaclass__ and it uses some magic that will turn the Person you just defined with simple statements into a complex hook to a database field.

Django makes something complex look simple by exposing a simple API and using metaclasses, recreating code from this API to do the real job behind the scenes.

The last word

First, you know that classes are objects that can create instances.

Well in fact, classes are themselves instances. Of metaclasses.

>>> class Foo(object): pass
>>> id(Foo)
142630324

Everything is an object in Python, and they are all either instances of classes or instances of metaclasses.

Except for type.

type is actually its own metaclass. This is not something you could reproduce in pure Python, and is done by cheating a little bit at the implementation level.

Secondly, metaclasses are complicated. You may not want to use them for very simple class alterations. You can change classes by using two different techniques:

99% of the time you need class alteration, you are better off using these.

But 98% of the time, you don't need class alteration at all.

  • 10
    It appears that in Django models.Model it does not use __metaclass__ but rather class Model(metaclass=ModelBase): to reference a ModelBase class which then does the aforementioned metaclass magic. Great post! Here's the Django source: github.com/django/django/blob/master/django/db/models/… – Max Goodridge Apr 12 '17 at 13:18
  • 3
    <<Be careful here that the __metaclass__ attribute will not be inherited, the metaclass of the parent (Bar.__class__) will be. If Bar used a __metaclass__ attribute that created Bar with type() (and not type.__new__()), the subclasses will not inherit that behavior.>> -- Could you/someone please explain a bit deeper this passage? – petrux Apr 25 '17 at 21:32
  • 6
    @MaxGoodridge That's the Python 3 syntax for metaclasses. See Python 3.6 Data model VS Python 2.7 Data model – TBBle Jun 13 '17 at 13:22
  • 7
    It's a community wiki answer (so, those who commented with corrections/improvements might consider editing their comments into the answer, if they're sure they are correct). – Shule Nov 8 '17 at 8:59
  • 4
    Which parts of this answer is about python2 and which about pythono3? – styrofoam fly Jan 19 at 15:21

Note, this answer is for Python 2.x as it was written in 2008, metaclasses are slightly different in 3.x, see the comments.

Metaclasses are the secret sauce that make 'class' work. The default metaclass for a new style object is called 'type'.

class type(object)
  |  type(object) -> the object's type
  |  type(name, bases, dict) -> a new type

Metaclasses take 3 args. 'name', 'bases' and 'dict'

Here is where the secret starts. Look for where name, bases and the dict come from in this example class definition.

class ThisIsTheName(Bases, Are, Here):
    All_the_code_here
    def doesIs(create, a):
        dict

Lets define a metaclass that will demonstrate how 'class:' calls it.

def test_metaclass(name, bases, dict):
    print 'The Class Name is', name
    print 'The Class Bases are', bases
    print 'The dict has', len(dict), 'elems, the keys are', dict.keys()

    return "yellow"

class TestName(object, None, int, 1):
    __metaclass__ = test_metaclass
    foo = 1
    def baz(self, arr):
        pass

print 'TestName = ', repr(TestName)

# output => 
The Class Name is TestName
The Class Bases are (<type 'object'>, None, <type 'int'>, 1)
The dict has 4 elems, the keys are ['baz', '__module__', 'foo', '__metaclass__']
TestName =  'yellow'

And now, an example that actually means something, this will automatically make the variables in the list "attributes" set on the class, and set to None.

def init_attributes(name, bases, dict):
    if 'attributes' in dict:
        for attr in dict['attributes']:
            dict[attr] = None

    return type(name, bases, dict)

class Initialised(object):
    __metaclass__ = init_attributes
    attributes = ['foo', 'bar', 'baz']

print 'foo =>', Initialised.foo
# output=>
foo => None

Note that the magic behaviour that 'Initalised' gains by having the metaclass init_attributes is not passed onto a subclass of Initalised.

Here is an even more concrete example, showing how you can subclass 'type' to make a metaclass that performs an action when the class is created. This is quite tricky:

class MetaSingleton(type):
    instance = None
    def __call__(cls, *args, **kw):
        if cls.instance is None:
            cls.instance = super(MetaSingleton, cls).__call__(*args, **kw)
        return cls.instance

 class Foo(object):
     __metaclass__ = MetaSingleton

 a = Foo()
 b = Foo()
 assert a is b

One use for metaclasses is adding new properties and methods to an instance automatically.

For example, if you look at Django models, their definition looks a bit confusing. It looks as if you are only defining class properties:

class Person(models.Model):
    first_name = models.CharField(max_length=30)
    last_name = models.CharField(max_length=30)

However, at runtime the Person objects are filled with all sorts of useful methods. See the source for some amazing metaclassery.

  • 1
    Isn't the use of meta classes adding new properties and methods to a class and not an instance? As far as i understood it the meta class alters the class itself and as a result the instances can be constructed differently by the altered class. Could be a bit misleading to people who try to get the nature of a meta class. Having useful methods on instances can be achieved by normal inherence. The reference to Django code as an example is good, though. – trixn Jan 27 '17 at 23:24

Others have explained how metaclasses work and how they fit into the Python type system. Here's an example of what they can be used for. In a testing framework I wrote, I wanted to keep track of the order in which classes were defined, so that I could later instantiate them in this order. I found it easiest to do this using a metaclass.

class MyMeta(type):

    counter = 0

    def __init__(cls, name, bases, dic):
        type.__init__(cls, name, bases, dic)
        cls._order = MyMeta.counter
        MyMeta.counter += 1

class MyType(object):              # Python 2
    __metaclass__ = MyMeta

class MyType(metaclass=MyMeta):    # Python 3
    pass

Anything that's a subclass of MyType then gets a class attribute _order that records the order in which the classes were defined.

I think the ONLamp introduction to metaclass programming is well written and gives a really good introduction to the topic despite being several years old already.

http://www.onlamp.com/pub/a/python/2003/04/17/metaclasses.html (archived at https://web.archive.org/web/20080206005253/http://www.onlamp.com/pub/a/python/2003/04/17/metaclasses.html)

In short: A class is a blueprint for the creation of an instance, a metaclass is a blueprint for the creation of a class. It can be easily seen that in Python classes need to be first-class objects too to enable this behavior.

I've never written one myself, but I think one of the nicest uses of metaclasses can be seen in the Django framework. The model classes use a metaclass approach to enable a declarative style of writing new models or form classes. While the metaclass is creating the class, all members get the possibility to customize the class itself.

The thing that's left to say is: If you don't know what metaclasses are, the probability that you will not need them is 99%.

What are metaclasses? What do you use them for?

TLDR: A metaclass instantiates and defines behavior for a class just like a class instantiates and defines behavior for an instance.

Pseudocode:

>>> Class(...)
instance

The above should look familiar. Well, where does Class come from? It's an instance of a metaclass (also pseudocode):

>>> Metaclass(...)
Class

In real code, we can pass the default metaclass, type, everything we need to instantiate a class and we get a class:

>>> type('Foo', (object,), {}) # requires a name, bases, and a namespace
<class '__main__.Foo'>

Putting it differently

  • A class is to an instance as a metaclass is to a class.

    When we instantiate an object, we get an instance:

    >>> object()                          # instantiation of class
    <object object at 0x7f9069b4e0b0>     # instance
    

    Likewise, when we define a class explicitly with the default metaclass, type, we instantiate it:

    >>> type('Object', (object,), {})     # instantiation of metaclass
    <class '__main__.Object'>             # instance
    
  • Put another way, a class is an instance of a metaclass:

    >>> isinstance(object, type)
    True
    
  • Put a third way, a metaclass is a class's class.

    >>> type(object) == type
    True
    >>> object.__class__
    <class 'type'>
    

When you write a class definition and Python executes it, it uses a metaclass to instantiate the class object (which will, in turn, be used to instantiate instances of that class).

Just as we can use class definitions to change how custom object instances behave, we can use a metaclass class definition to change the way a class object behaves.

What can they be used for? From the docs:

The potential uses for metaclasses are boundless. Some ideas that have been explored include logging, interface checking, automatic delegation, automatic property creation, proxies, frameworks, and automatic resource locking/synchronization.

Nevertheless, it is usually encouraged for users to avoid using metaclasses unless absolutely necessary.

You use a metaclass every time you create a class:

When you write a class definition, for example, like this,

class Foo(object): 
    'demo'

You instantiate a class object.

>>> Foo
<class '__main__.Foo'>
>>> isinstance(Foo, type), isinstance(Foo, object)
(True, True)

It is the same as functionally calling type with the appropriate arguments and assigning the result to a variable of that name:

name = 'Foo'
bases = (object,)
namespace = {'__doc__': 'demo'}
Foo = type(name, bases, namespace)

Note, some things automatically get added to the __dict__, i.e., the namespace:

>>> Foo.__dict__
dict_proxy({'__dict__': <attribute '__dict__' of 'Foo' objects>, 
'__module__': '__main__', '__weakref__': <attribute '__weakref__' 
of 'Foo' objects>, '__doc__': 'demo'})

The metaclass of the object we created, in both cases, is type.

(A side-note on the contents of the class __dict__: __module__ is there because classes must know where they are defined, and __dict__ and __weakref__ are there because we don't define __slots__ - if we define __slots__ we'll save a bit of space in the instances, as we can disallow __dict__ and __weakref__ by excluding them. For example:

>>> Baz = type('Bar', (object,), {'__doc__': 'demo', '__slots__': ()})
>>> Baz.__dict__
mappingproxy({'__doc__': 'demo', '__slots__': (), '__module__': '__main__'})

... but I digress.)

We can extend type just like any other class definition:

Here's the default __repr__ of classes:

>>> Foo
<class '__main__.Foo'>

One of the most valuable things we can do by default in writing a Python object is to provide it with a good __repr__. When we call help(repr) we learn that there's a good test for a __repr__ that also requires a test for equality - obj == eval(repr(obj)). The following simple implementation of __repr__ and __eq__ for class instances of our type class provides us with a demonstration that may improve on the default __repr__ of classes:

class Type(type):
    def __repr__(cls):
        """
        >>> Baz
        Type('Baz', (Foo, Bar,), {'__module__': '__main__', '__doc__': None})
        >>> eval(repr(Baz))
        Type('Baz', (Foo, Bar,), {'__module__': '__main__', '__doc__': None})
        """
        metaname = type(cls).__name__
        name = cls.__name__
        parents = ', '.join(b.__name__ for b in cls.__bases__)
        if parents:
            parents += ','
        namespace = ', '.join(': '.join(
          (repr(k), repr(v) if not isinstance(v, type) else v.__name__))
               for k, v in cls.__dict__.items())
        return '{0}(\'{1}\', ({2}), {{{3}}})'.format(metaname, name, parents, namespace)
    def __eq__(cls, other):
        """
        >>> Baz == eval(repr(Baz))
        True            
        """
        return (cls.__name__, cls.__bases__, cls.__dict__) == (
                other.__name__, other.__bases__, other.__dict__)

So now when we create an object with this metaclass, the __repr__ echoed on the command line provides a much less ugly sight than the default:

>>> class Bar(object): pass
>>> Baz = Type('Baz', (Foo, Bar,), {'__module__': '__main__', '__doc__': None})
>>> Baz
Type('Baz', (Foo, Bar,), {'__module__': '__main__', '__doc__': None})

With a nice __repr__ defined for the class instance, we have a stronger ability to debug our code. However, much further checking with eval(repr(Class)) is unlikely (as functions would be rather impossible to eval from their default __repr__'s).

An expected usage: __prepare__ a namespace

If, for example, we want to know in what order a class's methods are created in, we could provide an ordered dict as the namespace of the class. We would do this with __prepare__ which returns the namespace dict for the class if it is implemented in Python 3:

from collections import OrderedDict

class OrderedType(Type):
    @classmethod
    def __prepare__(metacls, name, bases, **kwargs):
        return OrderedDict()
    def __new__(cls, name, bases, namespace, **kwargs):
        result = Type.__new__(cls, name, bases, dict(namespace))
        result.members = tuple(namespace)
        return result

And usage:

class OrderedMethodsObject(object, metaclass=OrderedType):
    def method1(self): pass
    def method2(self): pass
    def method3(self): pass
    def method4(self): pass

And now we have a record of the order in which these methods (and other class attributes) were created:

>>> OrderedMethodsObject.members
('__module__', '__qualname__', 'method1', 'method2', 'method3', 'method4')

Note, this example was adapted from the documentation - the new enum in the standard library does this.

So what we did was instantiate a metaclass by creating a class. We can also treat the metaclass as we would any other class. It has a method resolution order:

>>> inspect.getmro(OrderedType)
(<class '__main__.OrderedType'>, <class '__main__.Type'>, <class 'type'>, <class 'object'>)

And it has approximately the correct repr (which we can no longer eval unless we can find a way to represent our functions.):

>>> OrderedMethodsObject
OrderedType('OrderedMethodsObject', (object,), {'method1': <function OrderedMethodsObject.method1 at 0x0000000002DB01E0>, 'members': ('__module__', '__qualname__', 'method1', 'method2', 'method3', 'method4'), 'method3': <function OrderedMet
hodsObject.method3 at 0x0000000002DB02F0>, 'method2': <function OrderedMethodsObject.method2 at 0x0000000002DB0268>, '__module__': '__main__', '__weakref__': <attribute '__weakref__' of 'OrderedMethodsObject' objects>, '__doc__': None, '__d
ict__': <attribute '__dict__' of 'OrderedMethodsObject' objects>, 'method4': <function OrderedMethodsObject.method4 at 0x0000000002DB0378>})

Python 3 update

There are (at this point) two key methods in a metaclass:

  • __prepare__, and
  • __new__

__prepare__ lets you supply a custom mapping (such as an OrderedDict) to be used as the namespace while the class is being created. You must return an instance of whatever namespace you choose. If you don't implement __prepare__ a normal dict is used.

__new__ is responsible for the actual creation/modification of the final class.

A bare-bones, do-nothing-extra metaclass would like:

class Meta(type):

    def __prepare__(metaclass, cls, bases):
        return dict()

    def __new__(metacls, cls, bases, clsdict):
        return super().__new__(metacls, cls, bases, clsdict)

A simple example:

Say you want some simple validation code to run on your attributes -- like it must always be an int or a str. Without a metaclass, your class would look something like:

class Person:
    weight = ValidateType('weight', int)
    age = ValidateType('age', int)
    name = ValidateType('name', str)

As you can see, you have to repeat the name of the attribute twice. This makes typos possible along with irritating bugs.

A simple metaclass can address that problem:

class Person(metaclass=Validator):
    weight = ValidateType(int)
    age = ValidateType(int)
    name = ValidateType(str)

This is what the metaclass would look like (not using __prepare__ since it is not needed):

class Validator(type):
    def __new__(metacls, cls, bases, clsdict):
        # search clsdict looking for ValidateType descriptors
        for name, attr in clsdict.items():
            if isinstance(attr, ValidateType):
                attr.name = name
                attr.attr = '_' + name
        # create final class and return it
        return super().__new__(metacls, cls, bases, clsdict)

A sample run of:

p = Person()
p.weight = 9
print(p.weight)
p.weight = '9'

produces:

9
Traceback (most recent call last):
  File "simple_meta.py", line 36, in <module>
    p.weight = '9'
  File "simple_meta.py", line 24, in __set__
    (self.name, self.type, value))
TypeError: weight must be of type(s) <class 'int'> (got '9')

Note: This example is simple enough it could have also been accomplished with a class decorator, but presumably an actual metaclass would be doing much more.

The 'ValidateType' class for reference:

class ValidateType:
    def __init__(self, type):
        self.name = None  # will be set by metaclass
        self.attr = None  # will be set by metaclass
        self.type = type
    def __get__(self, inst, cls):
        if inst is None:
            return self
        else:
            return inst.__dict__[self.attr]
    def __set__(self, inst, value):
        if not isinstance(value, self.type):
            raise TypeError('%s must be of type(s) %s (got %r)' %
                    (self.name, self.type, value))
        else:
            inst.__dict__[self.attr] = value
  • In the metaclass example I get NameError: name 'ValidateType' is not defined. Any suggestions how to best fix this? I'm using python 2 – Nickpick Nov 11 '17 at 13:01

A metaclass is a class that tells how (some) other class should be created.

This is a case where I saw metaclass as a solution to my problem: I had a really complicated problem, that probably could have been solved differently, but I chose to solve it using a metaclass. Because of the complexity, it is one of the few modules I have written where the comments in the module surpass the amount of code that has been written. Here it is...

#!/usr/bin/env python

# Copyright (C) 2013-2014 Craig Phillips.  All rights reserved.

# This requires some explaining.  The point of this metaclass excercise is to
# create a static abstract class that is in one way or another, dormant until
# queried.  I experimented with creating a singlton on import, but that did
# not quite behave how I wanted it to.  See now here, we are creating a class
# called GsyncOptions, that on import, will do nothing except state that its
# class creator is GsyncOptionsType.  This means, docopt doesn't parse any
# of the help document, nor does it start processing command line options.
# So importing this module becomes really efficient.  The complicated bit
# comes from requiring the GsyncOptions class to be static.  By that, I mean
# any property on it, may or may not exist, since they are not statically
# defined; so I can't simply just define the class with a whole bunch of
# properties that are @property @staticmethods.
#
# So here's how it works:
#
# Executing 'from libgsync.options import GsyncOptions' does nothing more
# than load up this module, define the Type and the Class and import them
# into the callers namespace.  Simple.
#
# Invoking 'GsyncOptions.debug' for the first time, or any other property
# causes the __metaclass__ __getattr__ method to be called, since the class
# is not instantiated as a class instance yet.  The __getattr__ method on
# the type then initialises the class (GsyncOptions) via the __initialiseClass
# method.  This is the first and only time the class will actually have its
# dictionary statically populated.  The docopt module is invoked to parse the
# usage document and generate command line options from it.  These are then
# paired with their defaults and what's in sys.argv.  After all that, we
# setup some dynamic properties that could not be defined by their name in
# the usage, before everything is then transplanted onto the actual class
# object (or static class GsyncOptions).
#
# Another piece of magic, is to allow command line options to be set in
# in their native form and be translated into argparse style properties.
#
# Finally, the GsyncListOptions class is actually where the options are
# stored.  This only acts as a mechanism for storing options as lists, to
# allow aggregation of duplicate options or options that can be specified
# multiple times.  The __getattr__ call hides this by default, returning the
# last item in a property's list.  However, if the entire list is required,
# calling the 'list()' method on the GsyncOptions class, returns a reference
# to the GsyncListOptions class, which contains all of the same properties
# but as lists and without the duplication of having them as both lists and
# static singlton values.
#
# So this actually means that GsyncOptions is actually a static proxy class...
#
# ...And all this is neatly hidden within a closure for safe keeping.
def GetGsyncOptionsType():
    class GsyncListOptions(object):
        __initialised = False

    class GsyncOptionsType(type):
        def __initialiseClass(cls):
            if GsyncListOptions._GsyncListOptions__initialised: return

            from docopt import docopt
            from libgsync.options import doc
            from libgsync import __version__

            options = docopt(
                doc.__doc__ % __version__,
                version = __version__,
                options_first = True
            )

            paths = options.pop('<path>', None)
            setattr(cls, "destination_path", paths.pop() if paths else None)
            setattr(cls, "source_paths", paths)
            setattr(cls, "options", options)

            for k, v in options.iteritems():
                setattr(cls, k, v)

            GsyncListOptions._GsyncListOptions__initialised = True

        def list(cls):
            return GsyncListOptions

        def __getattr__(cls, name):
            cls.__initialiseClass()
            return getattr(GsyncListOptions, name)[-1]

        def __setattr__(cls, name, value):
            # Substitut option names: --an-option-name for an_option_name
            import re
            name = re.sub(r'^__', "", re.sub(r'-', "_", name))
            listvalue = []

            # Ensure value is converted to a list type for GsyncListOptions
            if isinstance(value, list):
                if value:
                    listvalue = [] + value
                else:
                    listvalue = [ None ]
            else:
                listvalue = [ value ]

            type.__setattr__(GsyncListOptions, name, listvalue)

    # Cleanup this module to prevent tinkering.
    import sys
    module = sys.modules[__name__]
    del module.__dict__['GetGsyncOptionsType']

    return GsyncOptionsType

# Our singlton abstract proxy class.
class GsyncOptions(object):
    __metaclass__ = GetGsyncOptionsType()

Role of a metaclass' __call__() method when creating a class instance

If you've done Python programming for more than a few months you'll eventually stumble upon code that looks like this:

# define a class
class SomeClass(object):
    # ...
    # some definition here ...
    # ...

# create an instance of it
instance = SomeClass()

# then call the object as if it's a function
result = instance('foo', 'bar')

The latter is possible when you implement the __call__() magic method on the class.

class SomeClass(object):
    # ...
    # some definition here ...
    # ...

    def __call__(self, foo, bar):
        return bar + foo

The __call__() method is invoked when an instance of a class is used as a callable. But as we've seen from previous answers a class itself is an instance of a metaclass, so when we use the class as a callable (i.e. when we create an instance of it) we're actually calling its metaclass' __call__() method. At this point most Python programmers are a bit confused because they've been told that when creating an instance like this instance = SomeClass() you're calling its __init__() method. Some who've dug a bit deeper know that before __init__() there's __new__(). Well, today another layer of truth is being revealed, before __new__() there's the metaclass' __call__().

Let's study the method call chain from specifically the perspective of creating an instance of a class.

This is a metaclass that logs exactly the moment before an instance is created and the moment it's about to return it.

class Meta_1(type):
    def __call__(cls):
        print "Meta_1.__call__() before creating an instance of ", cls
        instance = super(Meta_1, cls).__call__()
        print "Meta_1.__call__() about to return instance."
        return instance

This is a class that uses that metaclass

class Class_1(object):

    __metaclass__ = Meta_1

    def __new__(cls):
        print "Class_1.__new__() before creating an instance."
        instance = super(Class_1, cls).__new__(cls)
        print "Class_1.__new__() about to return instance."
        return instance

    def __init__(self):
        print "entering Class_1.__init__() for instance initialization."
        super(Class_1,self).__init__()
        print "exiting Class_1.__init__()."

And now let's create an instance of Class_1

instance = Class_1()
# Meta_1.__call__() before creating an instance of <class '__main__.Class_1'>.
# Class_1.__new__() before creating an instance.
# Class_1.__new__() about to return instance.
# entering Class_1.__init__() for instance initialization.
# exiting Class_1.__init__().
# Meta_1.__call__() about to return instance.

The code above doesn't actually do anything other than logging the task and then delegating the actual work to the parent (i.e. keeping the default behavior). So with type being Meta_1's parent class, we can imagine that this would be the pseudo implementation of type.__call__():

class type:
    def __call__(cls, *args, **kwarg):

        # ... maybe a few things done to cls here

        # then we call __new__() on the class to create an instance
        instance = cls.__new__(cls, *args, **kwargs)

        # ... maybe a few things done to the instance here

        # then we initialize the instance with its __init__() method
        instance.__init__(*args, **kwargs)

        # ... maybe a few more things done to instance here

        # then we return it
        return instance

We can see that the metaclass' __call__() method is the one that's called first. It then delegates creation of the instance to the class's __new__() method and initialization to the instance's __init__(). It's also the one that ultimately returns the instance.

From the above it stems that the metaclass' __call__() is also given the opportunity to decide whether or not a call to Class_1.__new__() or Class_1.__init__() will eventually be made. Over the course of its execution it could actually return an object that hasn't been touched by either of these methods. Take for example this approach to the singleton pattern:

class Meta_2(type):
    singletons = {}

    def __call__(cls, *args, **kwargs):
        if cls in Meta_2.singletons:
            # we return the only instance and skip a call to __new__()
            # and __init__()
            print ("{} singleton returning from Meta_2.__call__(), "
                   "skipping creation of new instance.".format(cls))
            return Meta_2.singletons[cls]

        # else if the singleton isn't present we proceed as usual
        print "Meta_2.__call__() before creating an instance."
        instance = super(Meta_2, cls).__call__(*args, **kwargs)
        Meta_2.singletons[cls] = instance
        print "Meta_2.__call__() returning new instance."
        return instance

class Class_2(object):

    __metaclass__ = Meta_2

    def __new__(cls, *args, **kwargs):
        print "Class_2.__new__() before creating instance."
        instance = super(Class_2, cls).__new__(cls)
        print "Class_2.__new__() returning instance."
        return instance

    def __init__(self, *args, **kwargs):
        print "entering Class_2.__init__() for initialization."
        super(Class_2, self).__init__()
        print "exiting Class_2.__init__()."

Let's observe what happens when repeatedly trying to create an object of type Class_2

a = Class_2()
# Meta_2.__call__() before creating an instance.
# Class_2.__new__() before creating instance.
# Class_2.__new__() returning instance.
# entering Class_2.__init__() for initialization.
# exiting Class_2.__init__().
# Meta_2.__call__() returning new instance.

b = Class_2()
# <class '__main__.Class_2'> singleton returning from Meta_2.__call__(), skipping creation of new instance.

c = Class_2()
# <class '__main__.Class_2'> singleton returning from Meta_2.__call__(), skipping creation of new instance.

a is b is c # True

type is actually a metaclass -- a class that creates another classes. Most metaclass are the subclasses of type. The metaclass receives the new class as its first argument and provide access to class object with details as mentioned below:

>>> class MetaClass(type):
...     def __init__(cls, name, bases, attrs):
...         print ('class name: %s' %name )
...         print ('Defining class %s' %cls)
...         print('Bases %s: ' %bases)
...         print('Attributes')
...         for (name, value) in attrs.items():
...             print ('%s :%r' %(name, value))
... 

>>> class NewClass(object, metaclass=MetaClass):
...    get_choch='dairy'
... 
class name: NewClass
Bases <class 'object'>: 
Defining class <class 'NewClass'>
get_choch :'dairy'
__module__ :'builtins'
__qualname__ :'NewClass'

Note:

Notice that the class was not instantiated at any time; the simple act of creating the class triggered execution of the metaclass.

The tl;dr version

The type(obj) function gets you the type of an object.

The type() of a class is its metaclass.

To use a metaclass:

class Foo(object):
    __metaclass__ = MyMetaClass

Python classes are themselves objects - as in instance - of their meta-class.

The default metaclass, which is applied when when you determine classes as:

class foo:
    ...

meta class are used to apply some rule to an entire set of classes. For example, suppose you're building an ORM to access a database, and you want records from each table to be of a class mapped to that table (based on fields, business rules, etc..,), a possible use of metaclass is for instance, connection pool logic, which is share by all classes of record from all tables. Another use is logic to to support foreign keys, which involves multiple classes of records.

when you define metaclass, you subclass type, and can overrided the following magic methods to insert your logic.

class somemeta(type):
    __new__(mcs, name, bases, clsdict):
      """
  mcs: is the base metaclass, in this case type.
  name: name of the new class, as provided by the user.
  bases: tuple of base classes 
  clsdict: a dictionary containing all methods and attributes defined on class

  you must return a class object by invoking the __new__ constructor on the base metaclass. 
 ie: 
    return type.__call__(mcs, name, bases, clsdict).

  in the following case:

  class foo(baseclass):
        __metaclass__ = somemeta

  an_attr = 12

  def bar(self):
      ...

  @classmethod
  def foo(cls):
      ...

      arguments would be : ( somemeta, "foo", (baseclass, baseofbase,..., object), {"an_attr":12, "bar": <function>, "foo": <bound class method>}

      you can modify any of these values before passing on to type
      """
      return type.__call__(mcs, name, bases, clsdict)


    def __init__(self, name, bases, clsdict):
      """ 
      called after type has been created. unlike in standard classes, __init__ method cannot modify the instance (cls) - and should be used for class validaton.
      """
      pass


    def __prepare__():
        """
        returns a dict or something that can be used as a namespace.
        the type will then attach methods and attributes from class definition to it.

        call order :

        somemeta.__new__ ->  type.__new__ -> type.__init__ -> somemeta.__init__ 
        """
        return dict()

    def mymethod(cls):
        """ works like a classmethod, but for class objects. Also, my method will not be visible to instances of cls.
        """
        pass

anyhow, those two are the most commonly used hooks. metaclassing is powerful, and above is nowhere near and exhaustive list of uses for metaclassing.

The type() function can return the type of an object or create a new type,

for example, we can create a Hi class with the type() function and do not need to use this way with class Hi(object):

def func(self, name='mike'):
    print('Hi, %s.' % name)

Hi = type('Hi', (object,), dict(hi=func))
h = Hi()
h.hi()
Hi, mike.

type(Hi)
type

type(h)
__main__.Hi

In addition to using type() to create classes dynamically, you can control creation behavior of class and use metaclass.

According to the Python object model, the class is the object, so the class must be an instance of another certain class. By default, a Python class is instance of the type class. That is, type is metaclass of most of the built-in classes and metaclass of user-defined classes.

class ListMetaclass(type):
    def __new__(cls, name, bases, attrs):
        attrs['add'] = lambda self, value: self.append(value)
        return type.__new__(cls, name, bases, attrs)

class CustomList(list, metaclass=ListMetaclass):
    pass

lst = CustomList()
lst.add('custom_list_1')
lst.add('custom_list_2')

lst
['custom_list_1', 'custom_list_2']

Magic will take effect when we passed keyword arguments in metaclass, it indicates the Python interpreter to create the CustomList through ListMetaclass. new (), at this point, we can modify the class definition, for example, and add a new method and then return the revised definition.

Two sentences to master Python's most difficult knowledge point: Metaclass

Original source: segmentfault.com/a/1190000011447445

translated and corrected by me.

The orignal author of this article preserve all right, however the translating jobs still can not be ignored

If there are some mistakes or some format against PEP8, please help me to correct it. Thanks!!!

At the begining, there are some examples from chinese traditional culture(I am not Chinese, but I have some knowledge about it. If you like it, it is good. And if you don't, just ignore it. The understanding of metaclass is most important thing)

It is a brief introduction of Metaclass in Python with some practical and useful example. Wish you will like it.

Don't be frightened by such rhetoric as the so-called "feature that the metaclass is not used by 99% of Python programmers." Because every person is a natural user.

To understand metaclasses, you only need to know two sentences:

sentence 1: one came from truth, two came from one, three came from two, all the things came from three

sentence 2: who am I? Where did I come from? Where do I go?

In the python world, there is an eternal truth, that is, "type", please remember in mind, type is the truth. The python ecosystem that is so vast is produced by type.

one came from truth, two came from one, three came from two, all the things came from three:

The truth is type

One is the metaclass (metaclass, or class generator)

Second is the class (class, or instance generator)

Three is an instance (example)

Everything is the various attributes and methods of an instance. When we use Python, we call them.

Truth and One are the propositions we discuss today. The second, third, and all things are the classes, instances, attributes, and methods that we often use. We use hello world as an example:

# Create a Hello class that has the attributes say_hello ---- Second Origin

class Hello () :

     def say_hello ( self ,name= 'world' ) :

         print( 'Hello, %s.' % name )





# Create an instance hello from the Hello class ---- Two students three

Hello = Hello ()



# Use hello to call the method say_hello ---- all three things

Hello.say_hello () 

Output effect:

Hello, world. 

This is a standard "three came from two, all the things came from three" process. From the class to the methods we can call, these two steps are used.

Then we can't help from the main question, where does the class come from? Go back to the first line of code.

The class Hello is actually a "semantic abbreviation" of a function, just to make the code easier to understand. Another way of writing it is:

def  fn(self ,name='world' ) : # If we have a function called fn
     print ( 'Hello, %s.' % name )


Hello = type ('Hello',(object,),dict(say_hello = fn))
# Create Hello class by type ---- Mysterious "Truth", you can change everything, this time we directly from the "Truth" gave birth to "2" 

This type of writing is exactly the same as the previous Class Hello writing. You can try to create an instance and call it.

# Create an instance of hello from the Hello class.

hello = Hello ()



# Use hello call method say_hello ---- all three things, exactly the same

Hello . say_hello () 

Output effect:

Hello, world. ---- The result of the call is exactly the same. 

We looked back at the most exciting place. The road gave birth directly to two:

Hello = type('Hello', (object,), dict(say_hello=fn)) 

This is the "Truth", the origin of the python world. You can marvel at this.

Pay attention to its three parameters! Three eternal propositions that coincide with mankind: Who am I, where do I come from, where do I go?

The first parameter: who I am. Here, I need a name that distinguishes everything else. The above example names me "Hello."

The second parameter: where do I come from. Here, I need to know where I come from, which is my "parent". In my example above, my parent is "object" - a very primitive class in Python.

The third parameter: Where do I go? Here, we include the methods and properties that we need to call into a dictionary and pass them as parameters. In the above example, we have a say_hello method packed into a dictionary. 

It is worth noting that the three major eternal propositions are all classes, all instances, and even all instance properties and methods. As it should be, their "creators", Truth and One, namely type and metaclass, also have these three parameters. But usually, the three eternal propositions of the class are not passed as parameters, but are passed in as follows

class Hello(object):{

After class # statement "Who Am I?"

# In the parentheses declare "where do I come from"

# In curly brackets declare "Where do I go?"

     def say_hello ():{



     }

} 


The Creator can create a single person directly, but this is a hard labor. The Creator will first create the species "human" and then create a specific individual in batches. And pass on the three eternal propositions.

"Truth" can produce "2" directly, but it will produce "1" and then make "2" in batches.

Type can directly generate a class, but it can also be a metaclass and then use a metaclass to customize a class. 

Metaclass - One came from Truth, two came from one.

In general, metaclasses are named suffix Metaclass. Imagine that we need a metaclass that can automatically say hello. The class methods in it, sometimes need say_Hello, sometimes say_Hi, sometimes say_Sayolala, and sometimes say_Nihao.

If every built-in say_xxx needs to be declared once in a class, how terribly hard work it will be! It is better to use metaclasses to solve the problem.

The following is a meta class code for creating a special "greet":

class SayMetaClass(type):



     def __new__ (cls, Name ,Bases ,Attrs) :

         attrs[ 'say_' + name ] = lambda   self, value , saying = name : print ( saying + ',' + value + '!' )

         Return   Type . __new__ ( cls ,name, bases ,   attrs) 

Remember two things:

Metaclasses are derived from "type", so the parent class needs to pass in the type. [Taosheng 1, so one must include Tao]

Metaclass operations are done in __new__. The first parameter is the class that will be created. The following parameters are the three eternal propositions: Who am I, where do I come from, and where do I go. The objects it returns are also the three eternal propositions. Next, these three parameters will always be with us.

In new, I only performed one operation.

Attrs['say_'+name] = lambda self,value,saying=name: print(saying+','+value+'!') 

It creates a class method with the name of the class. For example, the class we created from metaclass is called "Hello". When it was created, it would automatically have a class method called "say_Hello". Then it would use the class name "Hello" as the default parameter to say, and passed it to the method. Then pass in the hello method call as a value, and finally print it out.

So how does a metaclass go from creation to invocation?

Come! Together with the principles of Daosheng, Yishengyou, Bishengsan, Sanshengwu, enter the life cycle of the Yuan class!

# Tao Shengyi: incoming type

class SayMetaClass(type):



     # Incoming three eternal propositions: class name, parent class, attribute

     def __new__(cls ,name ,bases ,attrs):

         # Create "talent"

         attrs[ 'say_' + name ] = lambda   self, value , saying = name : print( saying + ',' + value + '!' )

         # Three eternal propositions: class name, parent class, attribute

         return type . __new__ ( cls ,name ,bases ,attrs )



# Lifetime 2: Create class

class Hello ( object ,metaclass = SayMetaClass):
     pass



# two students three: create a real column

Hello = Hello ()



# Three things: call the instance method

hello.say_Hello('world!') 

The output is

Hello, world! 

Note: The class created by the metaclass, the first parameter is the parent class, the second parameter is the metaclass

Ordinary people will not be able to speak at birth, but some people will say hello, “hello” and “sayolala” when they are born. This is the power of talent. It will give us object-oriented programming to save countless troubles.

Now, keeping the metaclass unchanged, we can continue to create the Sayolala, Nihao class, as follows:

# Two came from one: Create class

class Sayolala ( object ,metaclass = SayMetaClass ) :
    pass



# three came from two: create a real column

s = Sayolala ()



# all things came from two: call the instance method

s.say_Sayolala ( 'japan!' ) 

Output

Sayolala, japan! 

Can also speak Chinese

# Two came from one: Create class

class Nihao(object ,metaclass = SayMetaClass ) :
    pass



# two students three: create a real column

n = Nihao()



# Three things: call the instance method

n.say_Nihao ( '中 中华!' ) 

Output

Nihao, China! 

Another small example:

# one came from truth.

class ListMetaclass (type) :

     def   __new__ ( cls ,name, bases ,   attrs) :

         # Talent: Bind values ​​by the add method

         attrs[ 'add' ] = lambda   self, value: self.append(value)

         return type . __new__ ( cls ,name ,bases ,attrs )



# One lifetime

class MyList ( list ,   Metaclass = ListMetaclass ) :
    pass



# Two students three

L = MyList ()



# Three things

L.add( 1 ) 

Now we print L

print(L)



>>> [ 1 ] 

The ordinary list does not have an add() method

L2 = list ()

L2 . add ( 1 )



>>> AttributeError : 'list'   Object   Has no attribute   'add' 

awesome! Learned here, have you experienced the joy of the Creator?

Everything in the python world is at your fingertips. 

Young Creator, please follow me to create a new world.

We choose two areas, one is the core idea of ​​Django, "Object Relational Mapping", object-relational mapping, referred to as ORM.

This is a major Django difficulty, but after learning the metaclass, everything becomes clear. Your understanding of Django will be even better!

Another area is reptiles (hackers), an automatic search of available agents on the network, and then changing IP to break other people's anti-crawler restrictions.

These two skills are very useful and very fun!

Challenge 1: Create ORM by Metaclass

Prepare to create a Field class

class Field ( object ) :
     def __init__ ( self, name, column_type ) :

         Self.name = name

         Self.column_type = column_type



     def   __str__ ( self ) :

         return   '<%s:%s>' % ( self . __class__ . __name__ ,   self. name ) 

Its role is

When the Field class is instantiated, it will get two parameters, name and column_type. They will be bound to Field's private property. If you want to convert the Field into a string, it will return "Field:XXX". XXX is passed in. Name name.

Preparation: Create StringField and IntergerField

class StringField ( Field ) :



    def   __init__ ( self ,   name ) :

         super( StringField ,   self). __init__ ( name ,   'varchar(100)' )



class IntegerField ( Field ) :
     def   __init__ ( self ,name) :

         super( IntegerField ,   self). __init__ ( name ,   'bigint' ) 

Its role is

When the StringField, IntegerField instance is initialized, the parent's initialization method is automatically called.

one came from the truth

class ModelMetaclass ( type ) :



     def __new__ ( cls ,name, bases ,   attrs) :

         Ifname== 'Model' :

             Return   Type . __new__ ( cls ,name, bases ,   attrs)

         print( 'Found model: %s' % name )

         Mappings = dict ()

         for k ,   v   In   attrs. items () :

             If   Isinstance ( v ,   Field ) :

                 print( 'Found mapping: %s ==> %s' % ( k ,   v ))

                 Mappings [ k ] = v

         for k   In   Mappings . keys () :

             attrs. pop ( k )

         attrs[ '__mappings__' ] = mappings   # Save the mapping between attributes and columns

         attrs[ '__table__' ] = name   # Assume that the table name and class name are the same

         Return   Type . __new__ ( cls ,name, bases ,   attrs) 

It does the following things

Create a new dictionary mapping

Each property of the class is traversed through its .items() key-value pair. If the value is a Field class, the key is printed and the key is bound to the mapping dictionary.

Delete the property that was just passed in as the Field class.

Create a special __mappings__ attribute and save the dictionary mapping.

Create a special __table__ attribute and save the name of the passed in class. 

two came from one

class Model ( dict ,   Metaclass = ModelMetaclass ) :



     def __init__ ( self , ** kwarg ) :

         super(model ,   self). __init__ ( ** kwarg )



     def __getattr__ ( self ,   Key ) :

         Try :

             Return   self[ key ]

         except KeyError :

             Raise   AttributeError ( "'Model' object has no attribute '%s'" % key )



     def __setattr__ ( self ,   Key ,   Value ) :

         self[ key ] = value



     # Simulate table creation operation

     def save( self ) :

         Fields = []

         Args = []

         for k ,   v   In   self. __mappings__ . items () :

             Fields . append ( v . name )

             Args . append ( getattr ( self ,   k ,   None ))

         Sql = 'insert into %s (%s) values ​​(%s)' % ( self . __table__ ,   ',' . join ( fields ),   ',' . join ([ str ( i )   for i   In   Args ]))

         print( 'SQL: %s' % sql )

         print( 'ARGS: %s' % str ( args )) 

If you create a subclass User from themodel:

class User (model ) :

     # Define the mapping of attributes's attributes to columns:

     Id = IntegerField ( 'id' )

  name= StringField ( 'username' )

     Email = StringField ( 'email' )

     Password = StringField ( 'password' ) 

At this time

Id= IntegerField('id') will automatically resolve to:

Model.setattr(self, 'id', IntegerField('id'))

Because IntergerField('id') is an instance of Field's subclass, the metaclass's new is automatically triggered, so the IntergerField('id') is stored in mappings and the key-value pair is deleted.

Two students, three students, all things

When you initialize an instance and call the save() method

u = User ( id = 12345 ,name= 'Batman' ,   Email = 'batman@nasa.org' ,   Password = 'iamback' )

u . save () 

At this time, the process of two students is completed first:

First call Model.__setattr__ to load key values ​​into private objects

Then call the "genius" of the metaclass, ModelMetaclass.__new__, and private objects in the Model, as long as they are instances of Field, are automatically stored in u.__mappings__. 

The next step is to complete the three things:

Simulate data inventory operations through u.save(). Here we just do a little traversal mappings operation, virtual sql and print, in reality, by entering the sql statement and the database to run.

The output is

Found model : User

Found mapping : name ==> < StringField : username >

Found mapping : password ==> < StringField : password >

Found mapping : id ==> < IntegerField : id >

Found mapping : email ==> < StringField : email >

SQL : insert into User   ( username , password , id , email )   Values   ( Batman , iamback , 12345 , batman @ nasa . org )

ARGS : [ 'Batman' ,   'iamback'   12345 ,   'batman@nasa.org' ] 


    Young Creator, you have experienced with me the great course of evolution of Everything from the Tao, which is also the core principle of the Model section in Django.

    Next, join me in a more fun reptile battle (well, you are now a junior hacker): crawling web agents! 

Challenge II: Crawling of Network Agents

Prepare to climb a page to play

Please make sure that both packages, requests and pyquery, are installed.

# File: get_page.py

import Requests



Base_headers = {

     'User-Agent' : 'Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/54.0.2840.71 Safari/537.36' ,

     'Accept-Encoding' : 'gzip, deflate, sdch' ,

     'Accept-Language' : 'zh-CN,zh;q=0.8'

}





def Get_page ( url ) :

     Headers = dict ( base_headers )

     print( 'Getting' ,   Url )

     Try :

         r = requests . get ( url ,   Headers = headers )

         print( 'Getting result' ,   Url ,   r . status_code )

         If   r . status_code == 200 :

             Return   r .

     exceptConnectionError :

         print( 'Crawling Failed' ,   Url )

         Return   None 

Here, we use the request package to climb out of Baidu's source code.

Try to try Baidu

Stick this paragraph behind get_page.py and try deleting

If ( __name__ == '__main__' ) :

     Rs = get_page ( 'https://www.baidu.com' )

     print( 'result: ' ,   Rs ) 

Try to catch agents

Stick this paragraph behind get_page.py and try deleting

If ( __name__ == '__main__' ) :

     from Pyquery import   PyQuery as   Pq

     Start_url = 'http://www.proxy360.cn/Region/China'

     print( 'Crawling' ,   Start_url )

     Html = get_page ( start_url )

     If   Html :

         Doc = pq ( html )

         Lines = doc ( 'div[name="list_proxy_ip"]' ). items ()

         for Line in   Lines :

             Ip = line . find ( '.tbBottomLine:nth-child(1)' ). text ()

             Port = line . find ( '.tbBottomLine:nth-child(2)' ). text ()

             print( ip + ':' + port ) 


Next, go to the topic: Use the metaclass batch fetch proxy 

Batch processing crawling agent

from Getpage import   Get_page

from Pyquery import   PyQuery as   Pq





# one came from truth: Create metaclass of extraction agent

class ProxyMetaclass ( type ) :

     """

Metaclass, added in the FreeProxyGetter class

__CrawlFunc__ and __CrawlFuncCount__

Two parameters, which represent the crawler function and the number of crawler functions, respectively.

"""

     def __new__ ( cls ,name, bases ,   attrs) :

         Count = 0

         attrs[ '__CrawlFunc__' ] = []

         attrs[ '__CrawlName__' ] = []

         for k ,   v   In   attrs. items () :

             If   'crawl_'   In   k :

                 attrs[ '__CrawlName__' ]. append ( k )

                 attrs[ '__CrawlFunc__' ]. append ( v )

                 Count += 1

         for k   In   attrs[ '__CrawlName__' ] :

             attrs. pop ( k )

         attrs[ '__CrawlFuncCount__' ] = count

         Return   Type . __new__ ( cls ,name, bases ,   attrs)





# two came from one: Create an agent to get the class



class ProxyGetter ( object ,   Metaclass = ProxyMetaclass ) :

     def Get_raw_proxies ( self ,   Site ) :

         Proxies = []

         print( 'Site' ,   Site )

         for Func in   self. __CrawlFunc__ :

             If   Func . __name__ == site :

                 This_page_proxies = func ( self )

                 for Proxy in   This_page_proxies :

                     print( 'Getting' ,   Proxy ,   'from' ,   Site )

                     Proxies . append ( proxy )

         Return   Proxies





     def Crawl_daili66 ( self ,   Page_count = 4 ) :

         Start_url = 'http://www.66ip.cn/{}.html'

         Urls = [ start_url . format ( page )   for Page in   Range ( 1 ,   Page_count + 1 )]

         for Url in   Urls :

             print( 'Crawling' ,   Url )

             Html = get_page ( url )

             If   Html :

                 Doc = pq ( html )

                 Trs = doc ( '.containerbox table tr:gt(0)' ). items ()

                 for Tr in   Trs :

                     Ip = tr . find ( 'td:nth-child(1)' ). text ()

                     Port = tr . find ( 'td:nth-child(2)' ). text ()

                     Yield   ':' . join ([ ip ,   Port ])



     def Crawl_proxy360 ( self ) :

         Start_url = 'http://www.proxy360.cn/Region/China'

         print( 'Crawling' ,   Start_url )

         Html = get_page ( start_url )

         If   Html :

             Doc = pq ( html )

             Lines = doc ( 'div[name="list_proxy_ip"]' ). items ()

             for Line in   Lines :

                 Ip = line . find ( '.tbBottomLine:nth-child(1)' ). text ()

                 Port = line . find ( '.tbBottomLine:nth-child(2)' ). text ()

                 Yield   ':' . join ([ ip ,   Port ])



     def Crawl_goubanjia ( self ) :

         Start_url = 'http://www.goubanjia.com/free/gngn/index.shtml'

         Html = get_page ( start_url )

         If   Html :

             Doc = pq ( html )

             Tds = doc ( 'td.ip' ). items ()

             for Td in   Tds :

                 Td . find ( 'p' ). remove ()

                 Yield   Td . text (). replace ( ' ' ,   '' )





If   __name__ == '__main__' :

     # Two students three: Instantiate ProxyGetter

     Crawler = ProxyGetter ()

     print(crawler . __CrawlName__ )

     # Three things

     for Site_label in   Range ( crawler . __CrawlFuncCount__ ) :

         Site = crawler . __CrawlName__ [ site_label ]

         myProxies = crawler . get_raw_proxies ( site ) 

one came from truth: In the metaclass new, he did four things:

Push the name of the class method that starts with "crawl_" into ProxyGetter.__CrawlName__

Push the class method that starts with "crawl_" itself into ProxyGetter.__CrawlFunc__

Calculate the number of class methods that match "crawl_"

Delete all class methods that match "crawl_" 


how about it? Is it very similar to the __mappings__ process used to create an ORM? 

two came from one: The class defines the method of using pyquery to grab page elements

Each of the agents shown on the page was crawled from three free agent sites.

If you are not familiar with yield usage, check out: Liao Xuefeng's python tutorial: generator

three came from two: create instance object crawler

slightly

Three things: Traversing every CrawlFunc

Above ProxyGetter.__CrawlName__, get the URL name that can be crawled.

Trigger class method ProxyGetter.get_raw_proxies(site)

Traverse ProxyGetter.__CrawlFunc__, if the method name and URL are the same, then execute this method

Integrate the proxy obtained from each URL into an array output. 


So. . . How to use bulk agents, impact other people's websites, capture other people's passwords, frantically advertise water stickers, and regularly harass customers? Uh! Think it! These self-realization! If you do not realize it, please listen to the next decomposition! 

The young Creator, the tool for creating the world, is already in your hands. Please use its power to the fullest!

Remember the wielding tool's mouth:

One came from truth, two came from one, three came from two, all the thing came from three.

Who am I, where do I come from, where do I go 

protected by missingfaktor Oct 18 '12 at 18:42

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