python装饰器---@wraps

BEGIN:

python装饰器

装饰器(Decorators)是Python的一个重要部分。简单地说:装饰器是修改其他函数的功能的函数。他们有助于让我们的代码更简短,也更Pythonic(Python范儿)。

 一切皆对象

在python中你所看到的用到的几乎都是对象。下面举个例子重新认识一下python函数

def hi(name="yasoob"):
    return "hi " + name
 
print(hi())
# output: 'hi yasoob'
 
# 我们甚至可以将一个函数赋值给一个变量,比如
greet = hi
# 我们这里没有在使用小括号,因为我们并不是在调用hi函数
# 而是在将它放在greet变量里头。我们尝试运行下这个
 
print(greet())
# output: 'hi yasoob'
 
# 如果我们删掉旧的hi函数,看看会发生什么!
del hi
print(hi())
#outputs: NameError
 
print(greet())
#outputs: 'hi yasoob'

上述:函数可以直接调用,也可以作为一个值赋给另一个变量,使得新变量拥有函数地址,进而通过新变量访问函数。

在函数中定义函数

java语言中也有内函数,而在python中将更为灵活。

def hi(name="yasoob"):
    print("now you are inside the hi() function")
 
    def greet():
        return "now you are in the greet() function"
 
    def welcome():
        return "now you are in the welcome() function"
 
    print(greet())
    print(welcome())
    print("now you are back in the hi() function")
 
hi()
#output:now you are inside the hi() function
#       now you are in the greet() function
#       now you are in the welcome() function
#       now you are back in the hi() function
 
# 上面展示了无论何时你调用hi(), greet()和welcome()将会同时被调用。
# 然后greet()和welcome()函数在hi()函数之外是不能访问的,比如:
 
greet()
#outputs: NameError: name 'greet' is not defined

上述:函数中可以嵌套创建函数

从函数中返回函数

谨记python一切皆对象原则,函数同样可以作为变量返回,如:

def hi(name="yasoob"):
    def greet():
        return "now you are in the greet() function"
 
    def welcome():
        return "now you are in the welcome() function"
 
    if name == "yasoob":
        return greet
    else:
        return welcome
 
a = hi()
print(a)
#outputs: <function greet at 0x7f2143c01500>
 
#上面清晰地展示了`a`现在指向到hi()函数中的greet()函数
#现在试试这个
 
print(a())
#outputs: now you are in the greet() function

上述:当我们写下 a = hi(),hi() 会被执行,而由于 name 参数默认是 yasoob,所以函数 greet 被返回了。如果我们把语句改为 a = hi(name = "ali"),那么 welcome 函数将被返回。我们还可以打印出 hi()(),这会输出 now you are in the greet() function

将函数作为参数传递

函数不仅能作为变量,同样也能像参数一样进行传递。如:

def hi():
    return "hi yasoob!"
 
def doSomethingBeforeHi(func):
    print("I am doing some boring work before executing hi()")
    print(func())
 
doSomethingBeforeHi(hi)
#outputs:I am doing some boring work before executing hi()
#        hi yasoob!

 

普通装饰器

1 第一个装饰器:

def a_new_decorator(a_func):
 
    def wrapTheFunction():
        print("I am doing some boring work before executing a_func()")
 
        a_func()
 
        print("I am doing some boring work after executing a_func()")
 
    return wrapTheFunction
 
def a_function_requiring_decoration():
    print("I am the function which needs some decoration to remove my foul smell")
 
a_function_requiring_decoration()
#outputs: "I am the function which needs some decoration to remove my foul smell"
 
a_function_requiring_decoration = a_new_decorator(a_function_requiring_decoration)
#now a_function_requiring_decoration is wrapped by wrapTheFunction()
 
a_function_requiring_decoration()
#outputs:I am doing some boring work before executing a_func()
#        I am the function which needs some decoration to remove my foul smell
#        I am doing some boring work after executing a_func()

上述:a_new_decorator装饰了a_function_requiring_decoration的参数即将函数a_function_requiring_decoration作为a_new_decorator的参数并执行函数a_new_decorator

2 用@简短装饰

@a_new_decorator
def a_function_requiring_decoration():
    """Hey you! Decorate me!"""
    print("I am the function which needs some decoration to "
          "remove my foul smell")
 
a_function_requiring_decoration()
#outputs: I am doing some boring work before executing a_func()
#         I am the function which needs some decoration to remove my foul smell
#         I am doing some boring work after executing a_func()
 
#the @a_new_decorator is just a short way of saying:
a_function_requiring_decoration = a_new_decorator(a_function_requiring_decoration)

上述:在函数前加上@a_new_decorator相当于将该函数作为a_new_decorator的参数并执行函数a_new_decorator

上面两种方法运行:

print(a_function_requiring_decoration.__name__)
# Output: wrapTheFunction

输出内容会被修改为作为装饰器的函数名,这并不是我们想要的!Ouput输出应该是"a_function_requiring_decoration"。这里的函数被warpTheFunction替代了。它重写了我们函数的名字和注释文档(docstring)。幸运的是Python提供给我们一个简单的函数来解决这个问题,那就是functools.wraps。

3 使用functools.wraps

from functools import wraps
 
def a_new_decorator(a_func):
    @wraps(a_func)
    def wrapTheFunction():
        print("I am doing some boring work before executing a_func()")
        a_func()
        print("I am doing some boring work after executing a_func()")
    return wrapTheFunction
 
@a_new_decorator
def a_function_requiring_decoration():
    """Hey yo! Decorate me!"""
    print("I am the function which needs some decoration to "
          "remove my foul smell")
 
print(a_function_requiring_decoration.__name__)
# Output: a_function_requiring_decoration

4 蓝本规范

from functools import wraps
def decorator_name(f):
    @wraps(f)
    def decorated(*args, **kwargs):
        if not can_run:
            return "Function will not run"
        return f(*args, **kwargs)
    return decorated
 
@decorator_name
def func():
    return("Function is running")
 
can_run = True
print(func())
# Output: Function is running
 
can_run = False
print(func())
# Output: Function will not run

注意:@wraps接受一个函数来进行装饰,并加入了复制函数名称、注释文档、参数列表等等的功能。这可以让我们在装饰器里面访问在装饰之前的函数的属性。

5 例子

授权(Authorization)

装饰器能有助于检查某个人是否被授权去使用一个web应用的端点(endpoint)。它们被大量使用于Flask和Django web框架中。这里是一个例子来使用基于装饰器的授权

from functools import wraps
 
def requires_auth(f):
    @wraps(f)
    def decorated(*args, **kwargs):
        auth = request.authorization
        if not auth or not check_auth(auth.username, auth.password):
            authenticate()
        return f(*args, **kwargs)
    return decorated

日志(Logging)

日志是装饰器运用的另一个亮点。这是个例子:

from functools import wraps
 
def logit(func):
    @wraps(func)
    def with_logging(*args, **kwargs):
        print(func.__name__ + " was called")
        return func(*args, **kwargs)
    return with_logging
 
@logit
def addition_func(x):
   """Do some math."""
   return x + x
 
 
result = addition_func(4)
# Output: addition_func was called

 

带参数的装饰器

我们回到日志的例子,并创建一个包裹函数,能让我们指定一个用于输出的日志文件。

from functools import wraps
 
def logit(logfile='out.log'):
    def logging_decorator(func):
        @wraps(func)
        def wrapped_function(*args, **kwargs):
            log_string = func.__name__ + " was called"
            print(log_string)
            # 打开logfile,并写入内容
            with open(logfile, 'a') as opened_file:
                # 现在将日志打到指定的logfile
                opened_file.write(log_string + '\n')
            return func(*args, **kwargs)
        return wrapped_function
    return logging_decorator
 
@logit()
def myfunc1():
    pass
 
myfunc1()
# Output: myfunc1 was called
# 现在一个叫做 out.log 的文件出现了,里面的内容就是上面的字符串
 
@logit(logfile='func2.log')
def myfunc2():
    pass
 
myfunc2()
# Output: myfunc2 was called
# 现在一个叫做 func2.log 的文件出现了,里面的内容就是上面的字符串

装饰器类

现在我们有了能用于正式环境的logit装饰器,但当我们的应用的某些部分还比较脆弱时,异常也许是需要更紧急关注的事情。比方说有时你只想打日志到一个文件。而有时你想把引起你注意的问题发送到一个email,同时也保留日志,留个记录。这是一个使用继承的场景,但目前为止我们只看到过用来构建装饰器的函数。

幸运的是,类也可以用来构建装饰器。那我们现在以一个类而不是一个函数的方式,来重新构建logit。

from functools import wraps
 
class logit(object):
    def __init__(self, logfile='out.log'):
        self.logfile = logfile
 
    def __call__(self, func):
        @wraps(func)
        def wrapped_function(*args, **kwargs):
            log_string = func.__name__ + " was called"
            print(log_string)
            # 打开logfile并写入
            with open(self.logfile, 'a') as opened_file:
                # 现在将日志打到指定的文件
                opened_file.write(log_string + '\n')
            # 现在,发送一个通知
            self.notify()
            return func(*args, **kwargs)
        return wrapped_function
 
    def notify(self):
        # logit只打日志,不做别的
        pass

这个实现有一个附加优势,在于比嵌套函数的方式更加整洁,而且包裹一个函数还是使用跟以前一样的语法:

@logit()
def myfunc1():
    pass

 

参考:

[1] https://www.runoob.com/w3cnote/python-func-decorators.html

[2] https://eastlakeside.gitbook.io/interpy-zh/decorators

END.

posted @ 2020-09-12 11:13  Gangpei  阅读(740)  评论(0)    收藏  举报