描述符(__get__和__set__和__delete__)

描述符(get__和__set__和__delete)

一、描述符

描述符是什么:描述符本质就是一个新式类,在这个新式类中,至少实现了__get__(),__set__(),__delete__()中的一个,这也被称为描述符协议

__get__():调用一个属性时,触发
__set__():为一个属性赋值时,触发
__delete__():采用del删除属性时,触发

定义一个描述符

class Foo:  
    # 在python3中Foo是新式类,它实现了__get__(),__set__(),__delete__()
    # 中的一个三种方法的一个,这个类就被称作一个描述符
    def __get__(self, instance, owner):
        pass

    def __set__(self, instance, value):
        pass
    
    def __delete__(self, instance):
        pass

二、描述符的作用

描述符是干什么的:描述符的作用是用来代理另外一个类的属性的,必须把描述符定义成这个类的类属性,不能定义到构造函数中

class Foo:
    def __get__(self, instance, owner):
        print('触发get')

    def __set__(self, instance, value):
        print('触发set')
    
    def __delete__(self, instance):
        print('触发delete')


f1 = Foo()

包含这三个方法的新式类称为描述符,由这个类产生的实例进行属性的调用/赋值/删除,并不会触发这三个方法

f1.name = 'nick'
f1.name
del f1.name

2.1 何时,何地,会触发这三个方法的执行

class Str:
    """描述符Str"""

    def __get__(self, instance, owner):
        print('Str调用')
    
    def __set__(self, instance, value):
        print('Str设置...')
    
    def __delete__(self, instance):
        print('Str删除...')


class Int:
    """描述符Int"""

    def __get__(self, instance, owner):
        print('Int调用')
    
    def __set__(self, instance, value):
        print('Int设置...')
    
    def __delete__(self, instance):
        print('Int删除...')


class People:
    name = Str()
    age = Int()

    def __init__(self, name, age):  # name被Str类代理,age被Int类代理
        self.name = name
        self.age = age


# 何地?:定义成另外一个类的类属性

# 何时?:且看下列演示

p1 = People('alex', 18)
Str设置...
Int设置...

描述符Str的使用

p1.name
p1.name = 'nick'
del p1.name
Str调用
Str设置...
Str删除...

描述符Int的使用

p1.age
p1.age = 18
del p1.age
Int调用
Int设置...
Int删除...

我们来瞅瞅到底发生了什么

print(p1.__dict__)
print(People.__dict__)
{}
{
'__module__': '__main__', 
'name': <__main__.Str object at 0x107a86940>, 
'age': <__main__.Int object at 0x107a863c8>, 
'__init__': <function People.__init__ at 0x107ba2ae8>, 
'__dict__': <attribute '__dict__' of 'People' objects>,
'__weakref__': <attribute '__weakref__' of 'People' objects>, '__doc__': None
}

补充

print(type(p1) == People)  # type(obj)其实是查看obj是由哪个类实例化来的
print(type(p1).__dict__ == People.__dict__)
True
True

三、两种描述符

3.1 数据描述符

至少实现了__get__()和__set__()

class Foo:
    def __set__(self, instance, value):
        print('set')

    def __get__(self, instance, owner):
        print('get')

3.2 非数据描述符

没有实现__set__()

class Foo:
    def __get__(self, instance, owner):
        print('get')

四、描述符注意事项

undefined

  • 描述符本身应该定义成新式类,被代理的类也应该是新式类
  • 必须把描述符定义成这个类的类属性,不能为定义到构造函数中
  • 要严格遵循该优先级,优先级由高到底分别是
    1.类属性
    2.数据描述符
    3.实例属性
    4.非数据描述符
    5.找不到的属性触发__getattr__()

五、使用描述符

众所周知,python是弱类型语言,即参数的赋值没有类型限制,下面我们通过描述符机制来实现类型限制功能

5.1 牛刀小试

class Str:
    def __init__(self, name):
        self.name = name

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


class People:
    name = Str('name')

    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


p1 = People('nick', 18, 3231.3)
set---> <__main__.People object at 0x107a86198> nick

调用

print(p1.__dict__)
{'name': 'nick', 'age': 18, 'salary': 3231.3}
print(p1.name)
get---> <__main__.People object at 0x107a86198> <class '__main__.People'>
nick

赋值

print(p1.__dict__)
{'name': 'nick', 'age': 18, 'salary': 3231.3}
p1.name = 'nicklin'
print(p1.__dict__)
set---> <__main__.People object at 0x107a86198> nicklin
{'name': 'nicklin', 'age': 18, 'salary': 3231.3}

删除

print(p1.__dict__)
{'name': 'nicklin', 'age': 18, 'salary': 3231.3}
del p1.name
print(p1.__dict__)
delete---> <__main__.People object at 0x107a86198>
{'age': 18, 'salary': 3231.3}

5.2 拔刀相助

class Str:
    def __init__(self, name):
        self.name = name

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


class People:
    name = Str('name')

    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


# 疑问:如果我用类名去操作属性呢
try:
    People.name  # 报错,错误的根源在于类去操作属性时,会把None传给instance
except Exception as e:
    print(e)
get---> None <class '__main__.People'>
'NoneType' object has no attribute '__dict__'

修订__get__方法

class Str:
    def __init__(self, name):
        self.name = name

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        if instance is None:
            return self
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


class People:
    name = Str('name')

    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


print(People.name)  # 完美,解决
get---> None <class '__main__.People'>
<__main__.Str object at 0x107a86da0>

5.3 磨刀霍霍

class Str:
    def __init__(self, name, expected_type):
        self.name = name
        self.expected_type = expected_type

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        if instance is None:
            return self
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        if not isinstance(value, self.expected_type):  # 如果不是期望的类型,则抛出异常
            raise TypeError('Expected %s' % str(self.expected_type))
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


class People:
    name = Str('name', str)  # 新增类型限制str

    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


try:
    p1 = People(123, 18, 3333.3)  # 传入的name因不是字符串类型而抛出异常
except Exception as e:
    print(e)
set---> <__main__.People object at 0x1084cd940> 123
Expected <class 'str'>

5.4 大刀阔斧

class Typed:
    def __init__(self, name, expected_type):
        self.name = name
        self.expected_type = expected_type

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        if instance is None:
            return self
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        if not isinstance(value, self.expected_type):
            raise TypeError('Expected %s' % str(self.expected_type))
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


class People:
    name = Typed('name', str)
    age = Typed('name', int)
    salary = Typed('name', float)

    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


try:
    p1 = People(123, 18, 3333.3)
except Exception as e:
    print(e)
set---> <__main__.People object at 0x1082c7908> 123
Expected <class 'str'>
try:
    p1 = People('nick', '18', 3333.3)
except Exception as e:
    print(e)
set---> <__main__.People object at 0x1078dd438> nick
set---> <__main__.People object at 0x1078dd438> 18
Expected <class 'int'>
p1 = People('nick', 18, 3333.3)
set---> <__main__.People object at 0x1081b3da0> nick
set---> <__main__.People object at 0x1081b3da0> 18
set---> <__main__.People object at 0x1081b3da0> 3333.3

大刀阔斧之后我们已然能实现功能了,但是问题是,如果我们的类有很多属性,你仍然采用在定义一堆类属性的方式去实现,low,这时候我需要教你一招:独孤九剑

undefined

5.4.1 类的装饰器:无参

def decorate(cls):
    print('类的装饰器开始运行啦------>')
    return cls


@decorate  # 无参:People = decorate(People)
class People:
    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


p1 = People('nick', 18, 3333.3)
类的装饰器开始运行啦------>

5.4.2 类的装饰器:有参

def typeassert(**kwargs):
    def decorate(cls):
        print('类的装饰器开始运行啦------>', kwargs)
        return cls

    return decorate


@typeassert(
    name=str, age=int, salary=float
)  # 有参:1.运行typeassert(...)返回结果是decorate,此时参数都传给kwargs 
  		 # 2.People=decorate(People)
class People:
    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary

p1 = People('nick', 18, 3333.3)
类的装饰器开始运行啦------> 
{'name': <class 'str'>, 'age': <class 'int'>, 'salary': <class 'float'>}

5.5 刀光剑影

class Typed:
    def __init__(self, name, expected_type):
        self.name = name
        self.expected_type = expected_type

    def __get__(self, instance, owner):
        print('get--->', instance, owner)
        if instance is None:
            return self
        return instance.__dict__[self.name]

    def __set__(self, instance, value):
        print('set--->', instance, value)
        if not isinstance(value, self.expected_type):
            raise TypeError('Expected %s' % str(self.expected_type))
        instance.__dict__[self.name] = value

    def __delete__(self, instance):
        print('delete--->', instance)
        instance.__dict__.pop(self.name)


def typeassert(**kwargs):
    def decorate(cls):
        print('类的装饰器开始运行啦------>', kwargs)
        for name, expected_type in kwargs.items():
            setattr(cls, name, Typed(name, expected_type))
        return cls

    return decorate


@typeassert(
    name=str, age=int, salary=float
)  # 有参:1.运行typeassert(...)返回结果是decorate,此时参数都传给kwargs 
		# 2.People=decorate(People)
class People:
    def __init__(self, name, age, salary):
        self.name = name
        self.age = age
        self.salary = salary


print(People.__dict__)
p1 = People('nick', 18, 3333.3)
类的装饰器开始运行啦------> 
{'name': <class 'str'>, 'age': <class 'int'>, 'salary': <class 'float'>}

{
'__module__': '__main__', '__init__': <function People.__init__ at 0x10797a400>,
'__dict__': <attribute '__dict__' of 'People' objects>, 
'__weakref__': <attribute '__weakref__' of 'People' objects>, 
'__doc__': None, 'name': <__main__.Typed object at 0x1080b2a58>, 
'age': <__main__.Typed object at 0x1080b2ef0>,
'salary': <__main__.Typed object at 0x1080b2c18>
}


set---> <__main__.People object at 0x1080b22e8> nick
set---> <__main__.People object at 0x1080b22e8> 18
set---> <__main__.People object at 0x1080b22e8> 3333.3

六、描述符总结

描述符是可以实现大部分python类特性中的底层魔法,包括@classmethod,@staticmethd,@property甚至是__slots__属性

描述父是很多高级库和框架的重要工具之一,描述符通常是使用到装饰器或者元类的大型框架中的一个组件.

七、自定制@property

利用描述符原理完成一个自定制@property,实现延迟计算(本质就是把一个函数属性利用装饰器原理做成一个描述符:类的属性字典中函数名为key,value为描述符类产生的对象)

7.1 property回顾

class Room:
    def __init__(self, name, width, length):
        self.name = name
        self.width = width
        self.length = length

    @property
    def area(self):
        return self.width * self.length


r1 = Room('alex', 1, 1)
print(r1.area)
1

7.2 自定制property

class Lazyproperty:
    def __init__(self, func):
        self.func = func

    def __get__(self, instance, owner):
        print('这是我们自己定制的静态属性,r1.area实际是要执行r1.area()')
        if instance is None:
            return self
        return self.func(instance)  # 此时你应该明白,到底是谁在为你做自动传递self的事情


class Room:
    def __init__(self, name, width, length):
        self.name = name
        self.width = width
        self.length = length

    @Lazyproperty  # area=Lazyproperty(area) 相当于定义了一个类属性,即描述符
    def area(self):
        return self.width * self.length


r1 = Room('alex', 1, 1)
print(r1.area)
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
1

7.3 实现延迟计算功能

class Lazyproperty:
    def __init__(self, func):
        self.func = func

    def __get__(self, instance, owner):
        print('这是我们自己定制的静态属性,r1.area实际是要执行r1.area()')
        if instance is None:
            return self
        else:
            print('--->')
            value = self.func(instance)
            setattr(instance, self.func.__name__, value)  #计算一次就缓存到实例的属性字典中
            return value

class Room:
    def __init__(self, name, width, length):
        self.name = name
        self.width = width
        self.length = length

    @Lazyproperty  # area=Lazyproperty(area) 相当于'定义了一个类属性,即描述符'
    def area(self):
        return self.width * self.length


r1 = Room('alex', 1, 1)
print(r1.area)  # 先从自己的属性字典找,没有再去类的中找,然后出发了area的__get__方法
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
--->
1
print(r1.area)  # 先从自己的属性字典找,找到了,是上次计算的结果,这样就不用每执行一次都去计算
1

八、打破延迟计算

一个小的改动,延迟计算的美梦就破碎了

class Lazyproperty:
    def __init__(self, func):
        self.func = func

    def __get__(self, instance, owner):
        print('这是我们自己定制的静态属性,r1.area实际是要执行r1.area()')
        if instance is None:
            return self
        else:
            value = self.func(instance)
            instance.__dict__[self.func.__name__] = value
            return value
        # return self.func(instance) # 此时你应该明白,到底是谁在为你做自动传递self的事情
    def __set__(self, instance, value):
        print('hahahahahah')


class Room:
    def __init__(self, name, width, length):
        self.name = name
        self.width = width
        self.length = length

    @Lazyproperty  # area=Lazyproperty(area) 相当于定义了一个类属性,即描述符
    def area(self):
        return self.width * self.length
print(Room.__dict__)
{
'__module__': '__main__', '__init__': <function Room.__init__ at 0x107d53620>,
'area': <__main__.Lazyproperty object at 0x107ba3860>, 
'__dict__': <attribute '__dict__' of 'Room' objects>,
'__weakref__': <attribute '__weakref__' of 'Room' objects>, 
'__doc__': None
}
r1 = Room('alex', 1, 1)
print(r1.area)
print(r1.area)
print(r1.area)
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
1
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
1
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
1
print(
    r1.area
)   # 缓存功能失效,每次都去找描述符了,为何,因为描述符实现了set方法,
	# 它由非数据描述符变成了数据描述符,数据描述符比实例属性有更高的优先级,
	# 因而所有的属性操作都去找描述符了
这是我们自己定制的静态属性,r1.area实际是要执行r1.area()
1

九、自定制@classmethod

class ClassMethod:
    def __init__(self, func):
        self.func = func

    def __get__(
            self, instance,
            owner):  # 类来调用,instance为None,owner为类本身,实例来调用,
        			# instance为实例,owner为类本身,
        def feedback():
            print('在这里可以加功能啊...')
            return self.func(owner)

        return feedback


class People:
    name = 'nick'

    @ClassMethod  # say_hi=ClassMethod(say_hi)
    def say_hi(cls):
        print('你好啊,帅哥 %s' % cls.name)


People.say_hi()

p1 = People()
在这里可以加功能啊...
你好啊,帅哥 nick
p1.say_hi()
在这里可以加功能啊...
你好啊,帅哥 nick

疑问,类方法如果有参数呢,好说,好说

class ClassMethod:
    def __init__(self, func):
        self.func = func

    def __get__(self, instance, owner
                ):   # 类来调用,instance为None,owner为类本身,实例来调用,
        			# instance为实例,owner为类本身,
        def feedback(*args, **kwargs):
            print('在这里可以加功能啊...')
            return self.func(owner, *args, **kwargs)

        return feedback


class People:
    name = 'nick'

    @ClassMethod  # say_hi=ClassMethod(say_hi)
    def say_hi(cls, msg):
        print('你好啊,帅哥 %s %s' % (cls.name, msg))


People.say_hi('你是那偷心的贼')

p1 = People()
在这里可以加功能啊...
你好啊,帅哥 nick 你是那偷心的贼
p1.say_hi('你是那偷心的贼')
在这里可以加功能啊...
你好啊,帅哥 nick 你是那偷心的贼

一十、自定制@staticmethod

class StaticMethod:
    def __init__(self, func):
        self.func = func

    def __get__(
            self, instance,
            owner):  # 类来调用,instance为None,owner为类本身,实例来调用,
        			# instance为实例,owner为类本身
        def feedback(*args, **kwargs):
            print('在这里可以加功能啊...')
            return self.func(*args, **kwargs)

        return feedback


class People:
    @StaticMethod  # say_hi = StaticMethod(say_hi)
    def say_hi(x, y, z):
        print('------>', x, y, z)


People.say_hi(1, 2, 3)

p1 = People()
在这里可以加功能啊...
------> 1 2 3
p1.say_hi(4, 5, 6)
在这里可以加功能啊...
------> 4 5 6
posted @ 2019-11-13 17:33  つつつつつつ  阅读(120)  评论(0编辑  收藏  举报