Raymond Hettinger
<python at rcn dot com>
内容
Descriptor Guide
Primer
简单范例:返回常量的描述符
动态查找
管理属性
定制名称
Closing thoughts
完整实践范例
Validator class
自定义验证器
Practical application
技术教程
抽象
Definition and introduction
描述符协议
Overview of descriptor invocation
Invocation from an instance
Invocation from a class
Invocation from super
Summary of invocation logic
Automatic name notification
ORM example
Pure Python Equivalents
特性
Functions and methods
Kinds of methods
Static methods
Class methods
Member objects and __slots__
Descriptors let objects customize attribute lookup, storage, and deletion.
This guide has four major sections:
The “primer” gives a basic overview, moving gently from simple examples, adding one feature at a time. Start here if you’re new to descriptors.
The second section shows a complete, practical descriptor example. If you already know the basics, start there.
The third section provides a more technical tutorial that goes into the detailed mechanics of how descriptors work. Most people don’t need this level of detail.
The last section has pure Python equivalents for built-in descriptors that are written in C. Read this if you’re curious about how functions turn into bound methods or about the implementation of common tools like classmethod() , staticmethod() , property() ,和 __slots__ .
classmethod()
staticmethod()
property()
In this primer, we start with the most basic possible example and then we’ll add new capabilities one by one.
The Ten class is a descriptor whose __get__() method always returns the constant 10 :
Ten
__get__()
10
class Ten: def __get__(self, obj, objtype=None): return 10
要使用描述符,必须将它作为类变量存储在另一类中:
class A: x = 5 # Regular class attribute y = Ten() # Descriptor instance
交互会话展示正常属性查找和描述符查找之间的区别:
>>> a = A() # Make an instance of class A >>> a.x # Normal attribute lookup 5 >>> a.y # Descriptor lookup 10
在 a.x attribute lookup, the dot operator finds 'x': 5 在类字典中。在 a.y 查找,点运算符找到描述符实例,识别通过其 __get__ method. Calling that method returns 10 .
a.x
'x': 5
a.y
__get__
注意,值 10 未存储在类字典或实例字典中。相反,值 10 是按需计算的。
此范例展示简单描述符是如何工作的,但并不是很有用。为检索常量,正常属性查找会更好。
在下一章节,我们将创建一些更有用的东西 (动态查找)。
有趣的是,描述符通常运行计算而不是返回常量:
import os class DirectorySize: def __get__(self, obj, objtype=None): return len(os.listdir(obj.dirname)) class Directory: size = DirectorySize() # Descriptor instance def __init__(self, dirname): self.dirname = dirname # Regular instance attribute
交互会话展示的查找是动态的 — 它每次计算不同的答案并更新:
>>> s = Directory('songs') >>> g = Directory('games') >>> s.size # The songs directory has twenty files 20 >>> g.size # The games directory has three files 3 >>> os.remove('games/chess') # Delete a game >>> g.size # File count is automatically updated 2
Besides showing how descriptors can run computations, this example also reveals the purpose of the parameters to __get__() 。 self 参数为 size , an instance of DirectorySize 。 obj parameter is either g or s , an instance of 目录 . It is the obj parameter that lets the __get__() method learn the target directory. The objtype parameter is the class 目录 .
A popular use for descriptors is managing access to instance data. The descriptor is assigned to a public attribute in the class dictionary while the actual data is stored as a private attribute in the instance dictionary. The descriptor’s __get__() and __set__() methods are triggered when the public attribute is accessed.
__set__()
在以下范例中, age is the public attribute and _age is the private attribute. When the public attribute is accessed, the descriptor logs the lookup or update:
import logging logging.basicConfig(level=logging.INFO) class LoggedAgeAccess: def __get__(self, obj, objtype=None): value = obj._age logging.info('Accessing %r giving %r', 'age', value) return value def __set__(self, obj, value): logging.info('Updating %r to %r', 'age', value) obj._age = value class Person: age = LoggedAgeAccess() # Descriptor instance def __init__(self, name, age): self.name = name # Regular instance attribute self.age = age # Calls __set__() def birthday(self): self.age += 1 # Calls both __get__() and __set__()
An interactive session shows that all access to the managed attribute age is logged, but that the regular attribute name is not logged:
>>> mary = Person('Mary M', 30) # The initial age update is logged INFO:root:Updating 'age' to 30 >>> dave = Person('David D', 40) INFO:root:Updating 'age' to 40 >>> vars(mary) # The actual data is in a private attribute {'name': 'Mary M', '_age': 30} >>> vars(dave) {'name': 'David D', '_age': 40} >>> mary.age # Access the data and log the lookup INFO:root:Accessing 'age' giving 30 30 >>> mary.birthday() # Updates are logged as well INFO:root:Accessing 'age' giving 30 INFO:root:Updating 'age' to 31 >>> dave.name # Regular attribute lookup isn't logged 'David D' >>> dave.age # Only the managed attribute is logged INFO:root:Accessing 'age' giving 40 40
One major issue with this example is that the private name _age is hardwired in the LoggedAgeAccess class. That means that each instance can only have one logged attribute and that its name is unchangeable. In the next example, we’ll fix that problem.
When a class uses descriptors, it can inform each descriptor about which variable name was used.
在此范例中, Person class has two descriptor instances, name and age 。当 Person class is defined, it makes a callback to __set_name__() in LoggedAccess so that the field names can be recorded, giving each descriptor its own public_name and private_name :
Person
__set_name__()
import logging logging.basicConfig(level=logging.INFO) class LoggedAccess: def __set_name__(self, owner, name): self.public_name = name self.private_name = '_' + name def __get__(self, obj, objtype=None): value = getattr(obj, self.private_name) logging.info('Accessing %r giving %r', self.public_name, value) return value def __set__(self, obj, value): logging.info('Updating %r to %r', self.public_name, value) setattr(obj, self.private_name, value) class Person: name = LoggedAccess() # First descriptor instance age = LoggedAccess() # Second descriptor instance def __init__(self, name, age): self.name = name # Calls the first descriptor self.age = age # Calls the second descriptor def birthday(self): self.age += 1
An interactive session shows that the Person class has called __set_name__() so that the field names would be recorded. Here we call vars() to look up the descriptor without triggering it:
vars()
>>> vars(vars(Person)['name']) {'public_name': 'name', 'private_name': '_name'} >>> vars(vars(Person)['age']) {'public_name': 'age', 'private_name': '_age'}
The new class now logs access to both name and age :
>>> pete = Person('Peter P', 10) INFO:root:Updating 'name' to 'Peter P' INFO:root:Updating 'age' to 10 >>> kate = Person('Catherine C', 20) INFO:root:Updating 'name' to 'Catherine C' INFO:root:Updating 'age' to 20
The two Person instances contain only the private names:
>>> vars(pete) {'_name': 'Peter P', '_age': 10} >>> vars(kate) {'_name': 'Catherine C', '_age': 20}
A descriptor is what we call any object that defines __get__() , __set__() ,或 __delete__() .
__delete__()
Optionally, descriptors can have a __set_name__() method. This is only used in cases where a descriptor needs to know either the class where it was created or the name of class variable it was assigned to. (This method, if present, is called even if the class is not a descriptor.)
Descriptors get invoked by the dot operator during attribute lookup. If a descriptor is accessed indirectly with vars(some_class)[descriptor_name] , the descriptor instance is returned without invoking it.
vars(some_class)[descriptor_name]
Descriptors only work when used as class variables. When put in instances, they have no effect.
The main motivation for descriptors is to provide a hook allowing objects stored in class variables to control what happens during attribute lookup.
Traditionally, the calling class controls what happens during lookup. Descriptors invert that relationship and allow the data being looked-up to have a say in the matter.
Descriptors are used throughout the language. It is how functions turn into bound methods. Common tools like classmethod() , staticmethod() , property() ,和 functools.cached_property() are all implemented as descriptors.
functools.cached_property()
In this example, we create a practical and powerful tool for locating notoriously hard to find data corruption bugs.
A validator is a descriptor for managed attribute access. Prior to storing any data, it verifies that the new value meets various type and range restrictions. If those restrictions aren’t met, it raises an exception to prevent data corruption at its source.
This Validator class is both an 抽象基类 and a managed attribute descriptor:
Validator
from abc import ABC, abstractmethod class Validator(ABC): def __set_name__(self, owner, name): self.private_name = '_' + name def __get__(self, obj, objtype=None): return getattr(obj, self.private_name) def __set__(self, obj, value): self.validate(value) setattr(obj, self.private_name, value) @abstractmethod def validate(self, value): pass
Custom validators need to inherit from Validator and must supply a validate() method to test various restrictions as needed.
validate()
Here are three practical data validation utilities:
OneOf verifies that a value is one of a restricted set of options.
OneOf
Number verifies that a value is either an int or float . Optionally, it verifies that a value is between a given minimum or maximum.
Number
int
float
String verifies that a value is a str . Optionally, it validates a given minimum or maximum length. It can validate a user-defined predicate 还。
String
str
class OneOf(Validator): def __init__(self, *options): self.options = set(options) def validate(self, value): if value not in self.options: raise ValueError(f'Expected {value!r} to be one of {self.options!r}') class Number(Validator): def __init__(self, minvalue=None, maxvalue=None): self.minvalue = minvalue self.maxvalue = maxvalue def validate(self, value): if not isinstance(value, (int, float)): raise TypeError(f'Expected {value!r} to be an int or float') if self.minvalue is not None and value < self.minvalue: raise ValueError( f'Expected {value!r} to be at least {self.minvalue!r}' ) if self.maxvalue is not None and value > self.maxvalue: raise ValueError( f'Expected {value!r} to be no more than {self.maxvalue!r}' ) class String(Validator): def __init__(self, minsize=None, maxsize=None, predicate=None): self.minsize = minsize self.maxsize = maxsize self.predicate = predicate def validate(self, value): if not isinstance(value, str): raise TypeError(f'Expected {value!r} to be an str') if self.minsize is not None and len(value) < self.minsize: raise ValueError( f'Expected {value!r} to be no smaller than {self.minsize!r}' ) if self.maxsize is not None and len(value) > self.maxsize: raise ValueError( f'Expected {value!r} to be no bigger than {self.maxsize!r}' ) if self.predicate is not None and not self.predicate(value): raise ValueError( f'Expected {self.predicate} to be true for {value!r}' )
Here’s how the data validators can be used in a real class:
class Component: name = String(minsize=3, maxsize=10, predicate=str.isupper) kind = OneOf('wood', 'metal', 'plastic') quantity = Number(minvalue=0) def __init__(self, name, kind, quantity): self.name = name self.kind = kind self.quantity = quantity
The descriptors prevent invalid instances from being created:
>>> Component('Widget', 'metal', 5) # Blocked: 'Widget' is not all uppercase Traceback (most recent call last): ... ValueError: Expected <method 'isupper' of 'str' objects> to be true for 'Widget' >>> Component('WIDGET', 'metle', 5) # Blocked: 'metle' is misspelled Traceback (most recent call last): ... ValueError: Expected 'metle' to be one of {'metal', 'plastic', 'wood'} >>> Component('WIDGET', 'metal', -5) # Blocked: -5 is negative Traceback (most recent call last): ... ValueError: Expected -5 to be at least 0 >>> Component('WIDGET', 'metal', 'V') # Blocked: 'V' isn't a number Traceback (most recent call last): ... TypeError: Expected 'V' to be an int or float >>> c = Component('WIDGET', 'metal', 5) # Allowed: The inputs are valid
What follows is a more technical tutorial for the mechanics and details of how descriptors work.
Defines descriptors, summarizes the protocol, and shows how descriptors are called. Provides an example showing how object relational mappings work.
Learning about descriptors not only provides access to a larger toolset, it creates a deeper understanding of how Python works.
In general, a descriptor is an attribute value that has one of the methods in the descriptor protocol. Those methods are __get__() , __set__() ,和 __delete__() . If any of those methods are defined for an attribute, it is said to be a descriptor .
The default behavior for attribute access is to get, set, or delete the attribute from an object’s dictionary. For instance, a.x has a lookup chain starting with a.__dict__['x'] ,那么 type(a).__dict__['x'] , and continuing through the method resolution order of type(a) . If the looked-up value is an object defining one of the descriptor methods, then Python may override the default behavior and invoke the descriptor method instead. Where this occurs in the precedence chain depends on which descriptor methods were defined.
a.__dict__['x']
type(a).__dict__['x']
type(a)
Descriptors are a powerful, general purpose protocol. They are the mechanism behind properties, methods, static methods, class methods, and super() . They are used throughout Python itself. Descriptors simplify the underlying C code and offer a flexible set of new tools for everyday Python programs.
super()
descr.__get__(self, obj, type=None)
descr.__set__(self, obj, value)
descr.__delete__(self, obj)
That is all there is to it. Define any of these methods and an object is considered a descriptor and can override default behavior upon being looked up as an attribute.
If an object defines __set__() or __delete__() , it is considered a data descriptor. Descriptors that only define __get__() are called non-data descriptors (they are often used for methods but other uses are possible).
Data and non-data descriptors differ in how overrides are calculated with respect to entries in an instance’s dictionary. If an instance’s dictionary has an entry with the same name as a data descriptor, the data descriptor takes precedence. If an instance’s dictionary has an entry with the same name as a non-data descriptor, the dictionary entry takes precedence.
To make a read-only data descriptor, define both __get__() and __set__() 采用 __set__() raising an AttributeError when called. Defining the __set__() method with an exception raising placeholder is enough to make it a data descriptor.
AttributeError
A descriptor can be called directly with desc.__get__(obj) or desc.__get__(None, cls) .
desc.__get__(obj)
desc.__get__(None, cls)
But it is more common for a descriptor to be invoked automatically from attribute access.
表达式 obj.x looks up the attribute x in the chain of namespaces for obj . If the search finds a descriptor outside of the instance __dict__ , its __get__() method is invoked according to the precedence rules listed below.
obj.x
x
obj
__dict__
The details of invocation depend on whether obj is an object, class, or instance of super.
Instance lookup scans through a chain of namespaces giving data descriptors the highest priority, followed by instance variables, then non-data descriptors, then class variables, and lastly __getattr__() if it is provided.
__getattr__()
If a descriptor is found for a.x , then it is invoked with: desc.__get__(a, type(a)) .
desc.__get__(a, type(a))
The logic for a dotted lookup is in object.__getattribute__() . Here is a pure Python equivalent:
object.__getattribute__()
def find_name_in_mro(cls, name, default): "Emulate _PyType_Lookup() in Objects/typeobject.c" for base in cls.__mro__: if name in vars(base): return vars(base)[name] return default def object_getattribute(obj, name): "Emulate PyObject_GenericGetAttr() in Objects/object.c" null = object() objtype = type(obj) cls_var = find_name_in_mro(objtype, name, null) descr_get = getattr(type(cls_var), '__get__', null) if descr_get is not null: if (hasattr(type(cls_var), '__set__') or hasattr(type(cls_var), '__delete__')): return descr_get(cls_var, obj, objtype) # data descriptor if hasattr(obj, '__dict__') and name in vars(obj): return vars(obj)[name] # instance variable if descr_get is not null: return descr_get(cls_var, obj, objtype) # non-data descriptor if cls_var is not null: return cls_var # class variable raise AttributeError(name)
Note, there is no __getattr__() hook in the __getattribute__() code. That is why calling __getattribute__() directly or with super().__getattribute__ will bypass __getattr__() entirely.
__getattribute__()
super().__getattribute__
Instead, it is the dot operator and the getattr() function that are responsible for invoking __getattr__() whenever __getattribute__() 引发 AttributeError . Their logic is encapsulated in a helper function:
getattr()
def getattr_hook(obj, name): "Emulate slot_tp_getattr_hook() in Objects/typeobject.c" try: return obj.__getattribute__(name) except AttributeError: if not hasattr(type(obj), '__getattr__'): raise return type(obj).__getattr__(obj, name) # __getattr__
The logic for a dotted lookup such as A.x 是在 type.__getattribute__() . The steps are similar to those for object.__getattribute__() but the instance dictionary lookup is replaced by a search through the class’s 方法分辨次序 .
A.x
type.__getattribute__()
If a descriptor is found, it is invoked with desc.__get__(None, A) .
desc.__get__(None, A)
The full C implementation can be found in type_getattro() and _PyType_Lookup() in Objects/typeobject.c .
type_getattro()
_PyType_Lookup()
The logic for super’s dotted lookup is in the __getattribute__() method for object returned by super() .
A dotted lookup such as super(A, obj).m 搜索 obj.__class__.__mro__ 对于基类 B immediately following A 然后返回 B.__dict__['m'].__get__(obj, A) . If not a descriptor, m is returned unchanged.
super(A, obj).m
obj.__class__.__mro__
B
A
B.__dict__['m'].__get__(obj, A)
m
The full C implementation can be found in super_getattro() in Objects/typeobject.c . A pure Python equivalent can be found in Guido’s Tutorial .
super_getattro()
The mechanism for descriptors is embedded in the __getattribute__() methods for object , type ,和 super() .
object
type
The important points to remember are:
Descriptors are invoked by the __getattribute__() 方法。
Classes inherit this machinery from object , type ,或 super() .
Overriding __getattribute__() prevents automatic descriptor calls because all the descriptor logic is in that method.
object.__getattribute__() and type.__getattribute__() make different calls to __get__() . The first includes the instance and may include the class. The second puts in None for the instance and always includes the class.
None
Data descriptors always override instance dictionaries.
Non-data descriptors may be overridden by instance dictionaries.
Sometimes it is desirable for a descriptor to know what class variable name it was assigned to. When a new class is created, the type metaclass scans the dictionary of the new class. If any of the entries are descriptors and if they define __set_name__() , that method is called with two arguments. The owner is the class where the descriptor is used, and the name is the class variable the descriptor was assigned to.
The implementation details are in type_new() and set_names() in Objects/typeobject.c .
type_new()
set_names()
Since the update logic is in type.__new__() , notifications only take place at the time of class creation. If descriptors are added to the class afterwards, __set_name__() will need to be called manually.
type.__new__()
The following code is a simplified skeleton showing how data descriptors could be used to implement an object relational mapping .
The essential idea is that the data is stored in an external database. The Python instances only hold keys to the database’s tables. Descriptors take care of lookups or updates:
class Field: def __set_name__(self, owner, name): self.fetch = f'SELECT {name} FROM {owner.table} WHERE {owner.key}=?;' self.store = f'UPDATE {owner.table} SET {name}=? WHERE {owner.key}=?;' def __get__(self, obj, objtype=None): return conn.execute(self.fetch, [obj.key]).fetchone()[0] def __set__(self, obj, value): conn.execute(self.store, [value, obj.key]) conn.commit()
We can use the Field class to define models that describe the schema for each table in a database:
Field
class Movie: table = 'Movies' # Table name key = 'title' # Primary key director = Field() year = Field() def __init__(self, key): self.key = key class Song: table = 'Music' key = 'title' artist = Field() year = Field() genre = Field() def __init__(self, key): self.key = key
To use the models, first connect to the database:
>>> import sqlite3 >>> conn = sqlite3.connect('entertainment.db')
An interactive session shows how data is retrieved from the database and how it can be updated:
>>> Movie('Star Wars').director 'George Lucas' >>> jaws = Movie('Jaws') >>> f'Released in {jaws.year} by {jaws.director}' 'Released in 1975 by Steven Spielberg' >>> Song('Country Roads').artist 'John Denver' >>> Movie('Star Wars').director = 'J.J. Abrams' >>> Movie('Star Wars').director 'J.J. Abrams'
The descriptor protocol is simple and offers exciting possibilities. Several use cases are so common that they have been prepackaged into built-in tools. Properties, bound methods, static methods, class methods, and __slots__ are all based on the descriptor protocol.
调用 property() is a succinct way of building a data descriptor that triggers a function call upon access to an attribute. Its signature is:
property(fget=None, fset=None, fdel=None, doc=None) -> property
The documentation shows a typical use to define a managed attribute x :
class C: def getx(self): return self.__x def setx(self, value): self.__x = value def delx(self): del self.__x x = property(getx, setx, delx, "I'm the 'x' property.")
To see how property() is implemented in terms of the descriptor protocol, here is a pure Python equivalent:
class Property: "Emulate PyProperty_Type() in Objects/descrobject.c" def __init__(self, fget=None, fset=None, fdel=None, doc=None): self.fget = fget self.fset = fset self.fdel = fdel if doc is None and fget is not None: doc = fget.__doc__ self.__doc__ = doc self._name = '' def __set_name__(self, owner, name): self._name = name def __get__(self, obj, objtype=None): if obj is None: return self if self.fget is None: raise AttributeError( f'property {self._name!r} of {type(obj).__name__!r} object has no getter' ) return self.fget(obj) def __set__(self, obj, value): if self.fset is None: raise AttributeError( f'property {self._name!r} of {type(obj).__name__!r} object has no setter' ) self.fset(obj, value) def __delete__(self, obj): if self.fdel is None: raise AttributeError( f'property {self._name!r} of {type(obj).__name__!r} object has no deleter' ) self.fdel(obj) def getter(self, fget): prop = type(self)(fget, self.fset, self.fdel, self.__doc__) prop._name = self._name return prop def setter(self, fset): prop = type(self)(self.fget, fset, self.fdel, self.__doc__) prop._name = self._name return prop def deleter(self, fdel): prop = type(self)(self.fget, self.fset, fdel, self.__doc__) prop._name = self._name return prop
The property() builtin helps whenever a user interface has granted attribute access and then subsequent changes require the intervention of a method.
For instance, a spreadsheet class may grant access to a cell value through Cell('b10').value . Subsequent improvements to the program require the cell to be recalculated on every access; however, the programmer does not want to affect existing client code accessing the attribute directly. The solution is to wrap access to the value attribute in a property data descriptor:
Cell('b10').value
class Cell: ... @property def value(self): "Recalculate the cell before returning value" self.recalc() return self._value
Either the built-in property() or our Property() equivalent would work in this example.
Property()
Python’s object oriented features are built upon a function based environment. Using non-data descriptors, the two are merged seamlessly.
Functions stored in class dictionaries get turned into methods when invoked. Methods only differ from regular functions in that the object instance is prepended to the other arguments. By convention, the instance is called self but could be called this or any other variable name.
Methods can be created manually with types.MethodType which is roughly equivalent to:
types.MethodType
class MethodType: "Emulate PyMethod_Type in Objects/classobject.c" def __init__(self, func, obj): self.__func__ = func self.__self__ = obj def __call__(self, *args, **kwargs): func = self.__func__ obj = self.__self__ return func(obj, *args, **kwargs)
To support automatic creation of methods, functions include the __get__() method for binding methods during attribute access. This means that functions are non-data descriptors that return bound methods during dotted lookup from an instance. Here’s how it works:
class Function: ... def __get__(self, obj, objtype=None): "Simulate func_descr_get() in Objects/funcobject.c" if obj is None: return self return MethodType(self, obj)
Running the following class in the interpreter shows how the function descriptor works in practice:
class D: def f(self, x): return x
The function has a 合格名称 attribute to support introspection:
>>> D.f.__qualname__ 'D.f'
Accessing the function through the class dictionary does not invoke __get__() . Instead, it just returns the underlying function object:
>>> D.__dict__['f'] <function D.f at 0x00C45070>
Dotted access from a class calls __get__() which just returns the underlying function unchanged:
>>> D.f <function D.f at 0x00C45070>
The interesting behavior occurs during dotted access from an instance. The dotted lookup calls __get__() which returns a bound method object:
>>> d = D() >>> d.f <bound method D.f of <__main__.D object at 0x00B18C90>>
Internally, the bound method stores the underlying function and the bound instance:
>>> d.f.__func__ <function D.f at 0x00C45070> >>> d.f.__self__ <__main__.D object at 0x00B18C90>
If you have ever wondered where self comes from in regular methods or where cls comes from in class methods, this is it!
Non-data descriptors provide a simple mechanism for variations on the usual patterns of binding functions into methods.
To recap, functions have a __get__() method so that they can be converted to a method when accessed as attributes. The non-data descriptor transforms an obj.f(*args) call into f(obj, *args) 。调用 cls.f(*args) becomes f(*args) .
obj.f(*args)
f(obj, *args)
cls.f(*args)
f(*args)
This chart summarizes the binding and its two most useful variants:
Transformation Called from an object Called from a class function f(obj, *args) f(*args) staticmethod f(*args) f(*args) classmethod f(type(obj), *args) f(cls, *args) Static methods ¶ Static methods return the underlying function without changes. Calling either c.f or C.f is the equivalent of a direct lookup into object.__getattribute__(c, "f") or object.__getattribute__(C, "f") . As a result, the function becomes identically accessible from either an object or a class. Good candidates for static methods are methods that do not reference the self 变量。 For instance, a statistics package may include a container class for experimental data. The class provides normal methods for computing the average, mean, median, and other descriptive statistics that depend on the data. However, there may be useful functions which are conceptually related but do not depend on the data. For instance, erf(x) is handy conversion routine that comes up in statistical work but does not directly depend on a particular dataset. It can be called either from an object or the class: s.erf(1.5) --> .9332 or Sample.erf(1.5) --> .9332 . Since static methods return the underlying function with no changes, the example calls are unexciting: class E: @staticmethod def f(x): return x * 10 >>> E.f(3) 30 >>> E().f(3) 30 Using the non-data descriptor protocol, a pure Python version of staticmethod() would look like this: import functools class StaticMethod: "Emulate PyStaticMethod_Type() in Objects/funcobject.c" def __init__(self, f): self.f = f functools.update_wrapper(self, f) def __get__(self, obj, objtype=None): return self.f def __call__(self, *args, **kwds): return self.f(*args, **kwds) The functools.update_wrapper() call adds a __wrapped__ attribute that refers to the underlying function. Also it carries forward the attributes necessary to make the wrapper look like the wrapped function: __name__ , __qualname__ , __doc__ ,和 __annotations__ . Class methods ¶ Unlike static methods, class methods prepend the class reference to the argument list before calling the function. This format is the same for whether the caller is an object or a class: class F: @classmethod def f(cls, x): return cls.__name__, x >>> F.f(3) ('F', 3) >>> F().f(3) ('F', 3) This behavior is useful whenever the method only needs to have a class reference and does not rely on data stored in a specific instance. One use for class methods is to create alternate class constructors. For example, the classmethod dict.fromkeys() creates a new dictionary from a list of keys. The pure Python equivalent is: class Dict(dict): @classmethod def fromkeys(cls, iterable, value=None): "Emulate dict_fromkeys() in Objects/dictobject.c" d = cls() for key in iterable: d[key] = value return d Now a new dictionary of unique keys can be constructed like this: >>> d = Dict.fromkeys('abracadabra') >>> type(d) is Dict True >>> d {'a': None, 'b': None, 'r': None, 'c': None, 'd': None} Using the non-data descriptor protocol, a pure Python version of classmethod() would look like this: import functools class ClassMethod: "Emulate PyClassMethod_Type() in Objects/funcobject.c" def __init__(self, f): self.f = f functools.update_wrapper(self, f) def __get__(self, obj, cls=None): if cls is None: cls = type(obj) if hasattr(type(self.f), '__get__'): # This code path was added in Python 3.9 # and was deprecated in Python 3.11. return self.f.__get__(cls, cls) return MethodType(self.f, cls) The code path for hasattr(type(self.f), '__get__') was added in Python 3.9 and makes it possible for classmethod() to support chained decorators. For example, a classmethod and property could be chained together. In Python 3.11, this functionality was deprecated. class G: @classmethod @property def __doc__(cls): return f'A doc for {cls.__name__!r}' >>> G.__doc__ "A doc for 'G'" The functools.update_wrapper() call in ClassMethod adds a __wrapped__ attribute that refers to the underlying function. Also it carries forward the attributes necessary to make the wrapper look like the wrapped function: __name__ , __qualname__ , __doc__ ,和 __annotations__ . Member objects and __slots__ ¶ When a class defines __slots__ , it replaces instance dictionaries with a fixed-length array of slot values. From a user point of view that has several effects: 1. Provides immediate detection of bugs due to misspelled attribute assignments. Only attribute names specified in __slots__ are allowed: class Vehicle: __slots__ = ('id_number', 'make', 'model') >>> auto = Vehicle() >>> auto.id_nubmer = 'VYE483814LQEX' Traceback (most recent call last): ... AttributeError: 'Vehicle' object has no attribute 'id_nubmer' 2. Helps create immutable objects where descriptors manage access to private attributes stored in __slots__ : class Immutable: __slots__ = ('_dept', '_name') # Replace the instance dictionary def __init__(self, dept, name): self._dept = dept # Store to private attribute self._name = name # Store to private attribute @property # Read-only descriptor def dept(self): return self._dept @property def name(self): # Read-only descriptor return self._name >>> mark = Immutable('Botany', 'Mark Watney') >>> mark.dept 'Botany' >>> mark.dept = 'Space Pirate' Traceback (most recent call last): ... AttributeError: property 'dept' of 'Immutable' object has no setter >>> mark.location = 'Mars' Traceback (most recent call last): ... AttributeError: 'Immutable' object has no attribute 'location' 3. Saves memory. On a 64-bit Linux build, an instance with two attributes takes 48 bytes with __slots__ and 152 bytes without. This flyweight design pattern likely only matters when a large number of instances are going to be created. 4. Improves speed. Reading instance variables is 35% faster with __slots__ (as measured with Python 3.10 on an Apple M1 processor). 5. Blocks tools like functools.cached_property() which require an instance dictionary to function correctly: from functools import cached_property class CP: __slots__ = () # Eliminates the instance dict @cached_property # Requires an instance dict def pi(self): return 4 * sum((-1.0)**n / (2.0*n + 1.0) for n in reversed(range(100_000))) >>> CP().pi Traceback (most recent call last): ... TypeError: No '__dict__' attribute on 'CP' instance to cache 'pi' property. It is not possible to create an exact drop-in pure Python version of __slots__ because it requires direct access to C structures and control over object memory allocation. However, we can build a mostly faithful simulation where the actual C structure for slots is emulated by a private _slotvalues list. Reads and writes to that private structure are managed by member descriptors: null = object() class Member: def __init__(self, name, clsname, offset): 'Emulate PyMemberDef in Include/structmember.h' # Also see descr_new() in Objects/descrobject.c self.name = name self.clsname = clsname self.offset = offset def __get__(self, obj, objtype=None): 'Emulate member_get() in Objects/descrobject.c' # Also see PyMember_GetOne() in Python/structmember.c if obj is None: return self value = obj._slotvalues[self.offset] if value is null: raise AttributeError(self.name) return value def __set__(self, obj, value): 'Emulate member_set() in Objects/descrobject.c' obj._slotvalues[self.offset] = value def __delete__(self, obj): 'Emulate member_delete() in Objects/descrobject.c' value = obj._slotvalues[self.offset] if value is null: raise AttributeError(self.name) obj._slotvalues[self.offset] = null def __repr__(self): 'Emulate member_repr() in Objects/descrobject.c' return f'<Member {self.name!r} of {self.clsname!r}>' The type.__new__() method takes care of adding member objects to class variables: class Type(type): 'Simulate how the type metaclass adds member objects for slots' def __new__(mcls, clsname, bases, mapping, **kwargs): 'Emulate type_new() in Objects/typeobject.c' # type_new() calls PyTypeReady() which calls add_methods() slot_names = mapping.get('slot_names', []) for offset, name in enumerate(slot_names): mapping[name] = Member(name, clsname, offset) return type.__new__(mcls, clsname, bases, mapping, **kwargs) The object.__new__() method takes care of creating instances that have slots instead of an instance dictionary. Here is a rough simulation in pure Python: class Object: 'Simulate how object.__new__() allocates memory for __slots__' def __new__(cls, *args, **kwargs): 'Emulate object_new() in Objects/typeobject.c' inst = super().__new__(cls) if hasattr(cls, 'slot_names'): empty_slots = [null] * len(cls.slot_names) object.__setattr__(inst, '_slotvalues', empty_slots) return inst def __setattr__(self, name, value): 'Emulate _PyObject_GenericSetAttrWithDict() Objects/object.c' cls = type(self) if hasattr(cls, 'slot_names') and name not in cls.slot_names: raise AttributeError( f'{cls.__name__!r} object has no attribute {name!r}' ) super().__setattr__(name, value) def __delattr__(self, name): 'Emulate _PyObject_GenericSetAttrWithDict() Objects/object.c' cls = type(self) if hasattr(cls, 'slot_names') and name not in cls.slot_names: raise AttributeError( f'{cls.__name__!r} object has no attribute {name!r}' ) super().__delattr__(name) To use the simulation in a real class, just inherit from Object and set the metaclass to Type : class H(Object, metaclass=Type): 'Instance variables stored in slots' slot_names = ['x', 'y'] def __init__(self, x, y): self.x = x self.y = y At this point, the metaclass has loaded member objects for x and y : >>> from pprint import pp >>> pp(dict(vars(H))) {'__module__': '__main__', '__doc__': 'Instance variables stored in slots', 'slot_names': ['x', 'y'], '__init__': <function H.__init__ at 0x7fb5d302f9d0>, 'x': <Member 'x' of 'H'>, 'y': <Member 'y' of 'H'>} When instances are created, they have a slot_values list where the attributes are stored: >>> h = H(10, 20) >>> vars(h) {'_slotvalues': [10, 20]} >>> h.x = 55 >>> vars(h) {'_slotvalues': [55, 20]} Misspelled or unassigned attributes will raise an exception: >>> h.xz Traceback (most recent call last): ... AttributeError: 'H' object has no attribute 'xz'
Transformation
Called from an object
Called from a class
Static methods return the underlying function without changes. Calling either c.f or C.f is the equivalent of a direct lookup into object.__getattribute__(c, "f") or object.__getattribute__(C, "f") . As a result, the function becomes identically accessible from either an object or a class.
c.f
C.f
object.__getattribute__(c, "f")
object.__getattribute__(C, "f")
Good candidates for static methods are methods that do not reference the self 变量。
self
For instance, a statistics package may include a container class for experimental data. The class provides normal methods for computing the average, mean, median, and other descriptive statistics that depend on the data. However, there may be useful functions which are conceptually related but do not depend on the data. For instance, erf(x) is handy conversion routine that comes up in statistical work but does not directly depend on a particular dataset. It can be called either from an object or the class: s.erf(1.5) --> .9332 or Sample.erf(1.5) --> .9332 .
erf(x)
s.erf(1.5) --> .9332
Sample.erf(1.5) --> .9332
Since static methods return the underlying function with no changes, the example calls are unexciting:
class E: @staticmethod def f(x): return x * 10
>>> E.f(3) 30 >>> E().f(3) 30
Using the non-data descriptor protocol, a pure Python version of staticmethod() would look like this:
import functools class StaticMethod: "Emulate PyStaticMethod_Type() in Objects/funcobject.c" def __init__(self, f): self.f = f functools.update_wrapper(self, f) def __get__(self, obj, objtype=None): return self.f def __call__(self, *args, **kwds): return self.f(*args, **kwds)
The functools.update_wrapper() call adds a __wrapped__ attribute that refers to the underlying function. Also it carries forward the attributes necessary to make the wrapper look like the wrapped function: __name__ , __qualname__ , __doc__ ,和 __annotations__ .
functools.update_wrapper()
__wrapped__
__name__
__qualname__
__doc__
__annotations__
Unlike static methods, class methods prepend the class reference to the argument list before calling the function. This format is the same for whether the caller is an object or a class:
class F: @classmethod def f(cls, x): return cls.__name__, x
>>> F.f(3) ('F', 3) >>> F().f(3) ('F', 3)
This behavior is useful whenever the method only needs to have a class reference and does not rely on data stored in a specific instance. One use for class methods is to create alternate class constructors. For example, the classmethod dict.fromkeys() creates a new dictionary from a list of keys. The pure Python equivalent is:
dict.fromkeys()
class Dict(dict): @classmethod def fromkeys(cls, iterable, value=None): "Emulate dict_fromkeys() in Objects/dictobject.c" d = cls() for key in iterable: d[key] = value return d
Now a new dictionary of unique keys can be constructed like this:
>>> d = Dict.fromkeys('abracadabra') >>> type(d) is Dict True >>> d {'a': None, 'b': None, 'r': None, 'c': None, 'd': None}
Using the non-data descriptor protocol, a pure Python version of classmethod() would look like this:
import functools class ClassMethod: "Emulate PyClassMethod_Type() in Objects/funcobject.c" def __init__(self, f): self.f = f functools.update_wrapper(self, f) def __get__(self, obj, cls=None): if cls is None: cls = type(obj) if hasattr(type(self.f), '__get__'): # This code path was added in Python 3.9 # and was deprecated in Python 3.11. return self.f.__get__(cls, cls) return MethodType(self.f, cls)
The code path for hasattr(type(self.f), '__get__') was added in Python 3.9 and makes it possible for classmethod() to support chained decorators. For example, a classmethod and property could be chained together. In Python 3.11, this functionality was deprecated.
hasattr(type(self.f), '__get__')
class G: @classmethod @property def __doc__(cls): return f'A doc for {cls.__name__!r}'
>>> G.__doc__ "A doc for 'G'"
The functools.update_wrapper() call in ClassMethod adds a __wrapped__ attribute that refers to the underlying function. Also it carries forward the attributes necessary to make the wrapper look like the wrapped function: __name__ , __qualname__ , __doc__ ,和 __annotations__ .
ClassMethod
When a class defines __slots__ , it replaces instance dictionaries with a fixed-length array of slot values. From a user point of view that has several effects:
__slots__
1. Provides immediate detection of bugs due to misspelled attribute assignments. Only attribute names specified in __slots__ are allowed:
class Vehicle: __slots__ = ('id_number', 'make', 'model')
>>> auto = Vehicle() >>> auto.id_nubmer = 'VYE483814LQEX' Traceback (most recent call last): ... AttributeError: 'Vehicle' object has no attribute 'id_nubmer'
2. Helps create immutable objects where descriptors manage access to private attributes stored in __slots__ :
class Immutable: __slots__ = ('_dept', '_name') # Replace the instance dictionary def __init__(self, dept, name): self._dept = dept # Store to private attribute self._name = name # Store to private attribute @property # Read-only descriptor def dept(self): return self._dept @property def name(self): # Read-only descriptor return self._name
>>> mark = Immutable('Botany', 'Mark Watney') >>> mark.dept 'Botany' >>> mark.dept = 'Space Pirate' Traceback (most recent call last): ... AttributeError: property 'dept' of 'Immutable' object has no setter >>> mark.location = 'Mars' Traceback (most recent call last): ... AttributeError: 'Immutable' object has no attribute 'location'
3. Saves memory. On a 64-bit Linux build, an instance with two attributes takes 48 bytes with __slots__ and 152 bytes without. This flyweight design pattern likely only matters when a large number of instances are going to be created.
4. Improves speed. Reading instance variables is 35% faster with __slots__ (as measured with Python 3.10 on an Apple M1 processor).
5. Blocks tools like functools.cached_property() which require an instance dictionary to function correctly:
from functools import cached_property class CP: __slots__ = () # Eliminates the instance dict @cached_property # Requires an instance dict def pi(self): return 4 * sum((-1.0)**n / (2.0*n + 1.0) for n in reversed(range(100_000)))
>>> CP().pi Traceback (most recent call last): ... TypeError: No '__dict__' attribute on 'CP' instance to cache 'pi' property.
It is not possible to create an exact drop-in pure Python version of __slots__ because it requires direct access to C structures and control over object memory allocation. However, we can build a mostly faithful simulation where the actual C structure for slots is emulated by a private _slotvalues list. Reads and writes to that private structure are managed by member descriptors:
_slotvalues
null = object() class Member: def __init__(self, name, clsname, offset): 'Emulate PyMemberDef in Include/structmember.h' # Also see descr_new() in Objects/descrobject.c self.name = name self.clsname = clsname self.offset = offset def __get__(self, obj, objtype=None): 'Emulate member_get() in Objects/descrobject.c' # Also see PyMember_GetOne() in Python/structmember.c if obj is None: return self value = obj._slotvalues[self.offset] if value is null: raise AttributeError(self.name) return value def __set__(self, obj, value): 'Emulate member_set() in Objects/descrobject.c' obj._slotvalues[self.offset] = value def __delete__(self, obj): 'Emulate member_delete() in Objects/descrobject.c' value = obj._slotvalues[self.offset] if value is null: raise AttributeError(self.name) obj._slotvalues[self.offset] = null def __repr__(self): 'Emulate member_repr() in Objects/descrobject.c' return f'<Member {self.name!r} of {self.clsname!r}>'
The type.__new__() method takes care of adding member objects to class variables:
class Type(type): 'Simulate how the type metaclass adds member objects for slots' def __new__(mcls, clsname, bases, mapping, **kwargs): 'Emulate type_new() in Objects/typeobject.c' # type_new() calls PyTypeReady() which calls add_methods() slot_names = mapping.get('slot_names', []) for offset, name in enumerate(slot_names): mapping[name] = Member(name, clsname, offset) return type.__new__(mcls, clsname, bases, mapping, **kwargs)
The object.__new__() method takes care of creating instances that have slots instead of an instance dictionary. Here is a rough simulation in pure Python:
object.__new__()
class Object: 'Simulate how object.__new__() allocates memory for __slots__' def __new__(cls, *args, **kwargs): 'Emulate object_new() in Objects/typeobject.c' inst = super().__new__(cls) if hasattr(cls, 'slot_names'): empty_slots = [null] * len(cls.slot_names) object.__setattr__(inst, '_slotvalues', empty_slots) return inst def __setattr__(self, name, value): 'Emulate _PyObject_GenericSetAttrWithDict() Objects/object.c' cls = type(self) if hasattr(cls, 'slot_names') and name not in cls.slot_names: raise AttributeError( f'{cls.__name__!r} object has no attribute {name!r}' ) super().__setattr__(name, value) def __delattr__(self, name): 'Emulate _PyObject_GenericSetAttrWithDict() Objects/object.c' cls = type(self) if hasattr(cls, 'slot_names') and name not in cls.slot_names: raise AttributeError( f'{cls.__name__!r} object has no attribute {name!r}' ) super().__delattr__(name)
To use the simulation in a real class, just inherit from Object and set the metaclass to Type :
Object
Type
class H(Object, metaclass=Type): 'Instance variables stored in slots' slot_names = ['x', 'y'] def __init__(self, x, y): self.x = x self.y = y
At this point, the metaclass has loaded member objects for x and y :
>>> from pprint import pp >>> pp(dict(vars(H))) {'__module__': '__main__', '__doc__': 'Instance variables stored in slots', 'slot_names': ['x', 'y'], '__init__': <function H.__init__ at 0x7fb5d302f9d0>, 'x': <Member 'x' of 'H'>, 'y': <Member 'y' of 'H'>}
When instances are created, they have a slot_values list where the attributes are stored:
slot_values
>>> h = H(10, 20) >>> vars(h) {'_slotvalues': [10, 20]} >>> h.x = 55 >>> vars(h) {'_slotvalues': [55, 20]}
Misspelled or unassigned attributes will raise an exception:
>>> h.xz Traceback (most recent call last): ... AttributeError: 'H' object has no attribute 'xz'
采用 Python 进行 Curses 编程
Debugging C API extensions and CPython Internals with GDB
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