Python annotator usage learning notes, python learning notes

Source: Internet
Author: User

Python annotator usage learning notes, python learning notes

In python, the @ func. this is the decorator. The decorator uses a function as a parameter and is often used to extend existing functions, that is, adding a function without changing the current function status.

def run():  print "I'm run."

I have such a function. I want to know when and when this function will end. I should write it like this.

def run():  print time.ctime()  print "I'm run."  print time.ctime()

However, if the function cannot be modified, you need a decorator.

def count(func):  def wrapper():    print time.ctime()    ret = func()    print time.ctime()    return ret  return wrapper@countdef run():  print "I'm run."      # print '2015-4-10'

Eg:

def now():  print '2015-4-10'f = nowf()  

 

A function has a _ name _ object which can be defined by dir (func) func.

now.__name__    # print 'now'f.__name__     # print 'now'print f       # print '<function now at 0x000000000213A908>'print now      # print '<function now at 0x000000000213A908>'

We use the decorator to print log logs.

def log(func):  def wrapper(*args, **kwargs):    print "call %s()" % func.__name__    return func(*args, **kwargs)  return wrapper@logdef now():  print '2015-4-10'now()        # print 'call now()'

In fact, the modifier function is equivalent to now = log (now), that is, the modifier function assigns the modified function as a parameter to a variable of the same name.

Functools. wraps Function

When the decorator is used, the value of now _ name _ has changed.

# The previous now. _ name _ # print 'now '# now. _ name _ # print 'wrapper' is not used'

Before using the decorator, now. _ name _ uses the current now function, but after use, the now function is actually a log (now), that is, the return value of the log function, that is, the wrapped wrapper. the solution is functools. wraps function.

Decorative closure,Call import functools before use

def log(func):  @functools.wraps(func)  def wrapper(*args, **kwargs):    ...

Decorator with Parameters

If the decorator needs to input parameters, you need to write a higher-order function that returns the decorator, which is more complex to write.

Def login (level): def _ deco (func): def wrapper (* args, ** kwargs): if level> = 5: print 'user VIP grade % d' % int (level-5) else: print 'user silk grade % d' % abs (level-5) return func (* args, ** kwargs) return wrapper return _ deco @ login (5) def user (username): print 'Welcome, % s' % username # user vip level 0 # welcome, minkuser ('mink ')

Decorator with parameters is equal to func = decorator function (decorator parameter) (func)

Decorations

You can use classes like functions through the _ call _ of classes.

class A(object):  def __init__(self, func):    self.func = func  def __call__(self):    return self.func() ** 2@Adef foo():  return 10print foo()   # print 100

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