passing variables between two python decorators - python

Is there are a way to pass a variable between two python decorators applied to the same function? The goal is for one of the decorators to know that the other was also applied. I need something like decobar_present() from the example below:
def decobar(f):
def wrap():
return f() + "bar"
return wrap
def decofu(f):
def wrap():
print decobar_present() # Tells me whether decobar was also applied
return f() + "fu"
return wrap
#decofu
#decobar
def important_task():
return "abc"
More generally I would like to be able to modify the behavior of decofu depending on whether decobar was also applied.

You can add the function to a "registry" when decobar is applied to it, then later check the registry to determine whether decobar was applied to the function or not. This approach requires preserving original function's __module__ and __name__ properties intact (use functools.wraps over the wrapper function for that).
import functools
class decobar(object):
registry = set()
#classmethod
def _func_key(cls, f):
return '.'.join((f.__module__, f.func_name))
#classmethod
def present(cls, f):
return cls._func_key(f) in cls.registry
def __call__(self, f):
self.registry.add(self._func_key(f))
#functools.wraps(f)
def wrap():
return f() + "bar"
return wrap
# Make the decorator singleton
decobar = decobar()
def decofu(f):
#functools.wraps(f)
def wrap():
print decobar.present(f) # Tells me whether decobar was also applied
return f() + "fu"
return wrap
#decofu
#decobar
def important_task():
return "abc"
Used a class to implement decobar, as it keeps registry and present() in a single namespace (which feels slighly cleaner, IMO)

To pass a variable between two python decorators you can use the decorated function's keyword arguments dictionary. Only don't forget to pop the added argument from there before calling the function from within the second decorator.
def decorator1(func):
def wrap(*args, **kwargs):
kwargs['cat_says'] = 'meow'
return func(*args, **kwargs)
return wrap
def decorator2(func):
def wrap(*args, **kwargs):
print(kwargs.pop('cat_says'))
return func(*args, **kwargs)
return wrap
class C:
#decorator1
#decorator2
def spam(self, a, b, c, d=0):
print("Hello, cat! What's your favourite number?")
return a + b + c + d
x=C()
print(x.spam(1, 2, 3, d=7))

While it is possible to do things like manipulate the stack trace, you're better off, I think, simply creating a function decofubar and incorporate as much of both "fu" and "bar" as possible. At a minimum, it will make your code cleaner and more obvious.

Each decorator gets to wrap another function. The function passed to decofu() is the result of the decobar() decorator.
Just test for specific traits of the decobar wrapper, provided you make the wrapper recognisable:
def decobar(f):
def wrap():
return f() + "bar"
wrap.decobar = True
return wrap
def decofu(f):
def wrap():
print 'decobar!' if getattr(f, 'decobar') else 'not decobar'
return f() + "fu"
return wrap
I used an arbitrary attribute on the wrapper function, but you could try to test for a name (not so unambiguous), for the signature (using inspect.getargspec() perhaps), etc.
This is limited to direct wrapping only.
Generally speaking, you don't want to couple decorators as tightly as all this. Work out a different solution and only depend on function signature or return values.

You can assign flag to f (or rather wrap) in decobar just like this
def decobar(f):
def wrap():
return f() + "bar"
wrap.decobar_applied = True
return wrap
def decofu(f):
def wrap():
if hasattr(f, 'decobar_applied') and f.decobar_applied:
print decobar_present() # Tells me whether decobar was also applied
return f() + "fu"
return wrap
#decofu
#decobar
def important_task():
return "abc"

Related

How to change or redefine function parameter in another python module [duplicate]

How do I make two decorators in Python that would do the following?
#make_bold
#make_italic
def say():
return "Hello"
Calling say() should return:
"<b><i>Hello</i></b>"
If you are not into long explanations, see Paolo Bergantino’s answer.
Decorator Basics
Python’s functions are objects
To understand decorators, you must first understand that functions are objects in Python. This has important consequences. Let’s see why with a simple example :
def shout(word="yes"):
return word.capitalize()+"!"
print(shout())
# outputs : 'Yes!'
# As an object, you can assign the function to a variable like any other object
scream = shout
# Notice we don't use parentheses: we are not calling the function,
# we are putting the function "shout" into the variable "scream".
# It means you can then call "shout" from "scream":
print(scream())
# outputs : 'Yes!'
# More than that, it means you can remove the old name 'shout',
# and the function will still be accessible from 'scream'
del shout
try:
print(shout())
except NameError as e:
print(e)
#outputs: "name 'shout' is not defined"
print(scream())
# outputs: 'Yes!'
Keep this in mind. We’ll circle back to it shortly.
Another interesting property of Python functions is they can be defined inside another function!
def talk():
# You can define a function on the fly in "talk" ...
def whisper(word="yes"):
return word.lower()+"..."
# ... and use it right away!
print(whisper())
# You call "talk", that defines "whisper" EVERY TIME you call it, then
# "whisper" is called in "talk".
talk()
# outputs:
# "yes..."
# But "whisper" DOES NOT EXIST outside "talk":
try:
print(whisper())
except NameError as e:
print(e)
#outputs : "name 'whisper' is not defined"*
#Python's functions are objects
Functions references
Okay, still here? Now the fun part...
You’ve seen that functions are objects. Therefore, functions:
can be assigned to a variable
can be defined in another function
That means that a function can return another function.
def getTalk(kind="shout"):
# We define functions on the fly
def shout(word="yes"):
return word.capitalize()+"!"
def whisper(word="yes") :
return word.lower()+"..."
# Then we return one of them
if kind == "shout":
# We don't use "()", we are not calling the function,
# we are returning the function object
return shout
else:
return whisper
# How do you use this strange beast?
# Get the function and assign it to a variable
talk = getTalk()
# You can see that "talk" is here a function object:
print(talk)
#outputs : <function shout at 0xb7ea817c>
# The object is the one returned by the function:
print(talk())
#outputs : Yes!
# And you can even use it directly if you feel wild:
print(getTalk("whisper")())
#outputs : yes...
There’s more!
If you can return a function, you can pass one as a parameter:
def doSomethingBefore(func):
print("I do something before then I call the function you gave me")
print(func())
doSomethingBefore(scream)
#outputs:
#I do something before then I call the function you gave me
#Yes!
Well, you just have everything needed to understand decorators. You see, decorators are “wrappers”, which means that they let you execute code before and after the function they decorate without modifying the function itself.
Handcrafted decorators
How you’d do it manually:
# A decorator is a function that expects ANOTHER function as parameter
def my_shiny_new_decorator(a_function_to_decorate):
# Inside, the decorator defines a function on the fly: the wrapper.
# This function is going to be wrapped around the original function
# so it can execute code before and after it.
def the_wrapper_around_the_original_function():
# Put here the code you want to be executed BEFORE the original function is called
print("Before the function runs")
# Call the function here (using parentheses)
a_function_to_decorate()
# Put here the code you want to be executed AFTER the original function is called
print("After the function runs")
# At this point, "a_function_to_decorate" HAS NEVER BEEN EXECUTED.
# We return the wrapper function we have just created.
# The wrapper contains the function and the code to execute before and after. It’s ready to use!
return the_wrapper_around_the_original_function
# Now imagine you create a function you don't want to ever touch again.
def a_stand_alone_function():
print("I am a stand alone function, don't you dare modify me")
a_stand_alone_function()
#outputs: I am a stand alone function, don't you dare modify me
# Well, you can decorate it to extend its behavior.
# Just pass it to the decorator, it will wrap it dynamically in
# any code you want and return you a new function ready to be used:
a_stand_alone_function_decorated = my_shiny_new_decorator(a_stand_alone_function)
a_stand_alone_function_decorated()
#outputs:
#Before the function runs
#I am a stand alone function, don't you dare modify me
#After the function runs
Now, you probably want that every time you call a_stand_alone_function, a_stand_alone_function_decorated is called instead. That’s easy, just overwrite a_stand_alone_function with the function returned by my_shiny_new_decorator:
a_stand_alone_function = my_shiny_new_decorator(a_stand_alone_function)
a_stand_alone_function()
#outputs:
#Before the function runs
#I am a stand alone function, don't you dare modify me
#After the function runs
# That’s EXACTLY what decorators do!
Decorators demystified
The previous example, using the decorator syntax:
#my_shiny_new_decorator
def another_stand_alone_function():
print("Leave me alone")
another_stand_alone_function()
#outputs:
#Before the function runs
#Leave me alone
#After the function runs
Yes, that’s all, it’s that simple. #decorator is just a shortcut to:
another_stand_alone_function = my_shiny_new_decorator(another_stand_alone_function)
Decorators are just a pythonic variant of the decorator design pattern. There are several classic design patterns embedded in Python to ease development (like iterators).
Of course, you can accumulate decorators:
def bread(func):
def wrapper():
print("</''''''\>")
func()
print("<\______/>")
return wrapper
def ingredients(func):
def wrapper():
print("#tomatoes#")
func()
print("~salad~")
return wrapper
def sandwich(food="--ham--"):
print(food)
sandwich()
#outputs: --ham--
sandwich = bread(ingredients(sandwich))
sandwich()
#outputs:
#</''''''\>
# #tomatoes#
# --ham--
# ~salad~
#<\______/>
Using the Python decorator syntax:
#bread
#ingredients
def sandwich(food="--ham--"):
print(food)
sandwich()
#outputs:
#</''''''\>
# #tomatoes#
# --ham--
# ~salad~
#<\______/>
The order you set the decorators MATTERS:
#ingredients
#bread
def strange_sandwich(food="--ham--"):
print(food)
strange_sandwich()
#outputs:
##tomatoes#
#</''''''\>
# --ham--
#<\______/>
# ~salad~
Now: to answer the question...
As a conclusion, you can easily see how to answer the question:
# The decorator to make it bold
def makebold(fn):
# The new function the decorator returns
def wrapper():
# Insertion of some code before and after
return "<b>" + fn() + "</b>"
return wrapper
# The decorator to make it italic
def makeitalic(fn):
# The new function the decorator returns
def wrapper():
# Insertion of some code before and after
return "<i>" + fn() + "</i>"
return wrapper
#makebold
#makeitalic
def say():
return "hello"
print(say())
#outputs: <b><i>hello</i></b>
# This is the exact equivalent to
def say():
return "hello"
say = makebold(makeitalic(say))
print(say())
#outputs: <b><i>hello</i></b>
You can now just leave happy, or burn your brain a little bit more and see advanced uses of decorators.
Taking decorators to the next level
Passing arguments to the decorated function
# It’s not black magic, you just have to let the wrapper
# pass the argument:
def a_decorator_passing_arguments(function_to_decorate):
def a_wrapper_accepting_arguments(arg1, arg2):
print("I got args! Look: {0}, {1}".format(arg1, arg2))
function_to_decorate(arg1, arg2)
return a_wrapper_accepting_arguments
# Since when you are calling the function returned by the decorator, you are
# calling the wrapper, passing arguments to the wrapper will let it pass them to
# the decorated function
#a_decorator_passing_arguments
def print_full_name(first_name, last_name):
print("My name is {0} {1}".format(first_name, last_name))
print_full_name("Peter", "Venkman")
# outputs:
#I got args! Look: Peter Venkman
#My name is Peter Venkman
Decorating methods
One nifty thing about Python is that methods and functions are really the same. The only difference is that methods expect that their first argument is a reference to the current object (self).
That means you can build a decorator for methods the same way! Just remember to take self into consideration:
def method_friendly_decorator(method_to_decorate):
def wrapper(self, lie):
lie = lie - 3 # very friendly, decrease age even more :-)
return method_to_decorate(self, lie)
return wrapper
class Lucy(object):
def __init__(self):
self.age = 32
#method_friendly_decorator
def sayYourAge(self, lie):
print("I am {0}, what did you think?".format(self.age + lie))
l = Lucy()
l.sayYourAge(-3)
#outputs: I am 26, what did you think?
If you’re making general-purpose decorator--one you’ll apply to any function or method, no matter its arguments--then just use *args, **kwargs:
def a_decorator_passing_arbitrary_arguments(function_to_decorate):
# The wrapper accepts any arguments
def a_wrapper_accepting_arbitrary_arguments(*args, **kwargs):
print("Do I have args?:")
print(args)
print(kwargs)
# Then you unpack the arguments, here *args, **kwargs
# If you are not familiar with unpacking, check:
# http://www.saltycrane.com/blog/2008/01/how-to-use-args-and-kwargs-in-python/
function_to_decorate(*args, **kwargs)
return a_wrapper_accepting_arbitrary_arguments
#a_decorator_passing_arbitrary_arguments
def function_with_no_argument():
print("Python is cool, no argument here.")
function_with_no_argument()
#outputs
#Do I have args?:
#()
#{}
#Python is cool, no argument here.
#a_decorator_passing_arbitrary_arguments
def function_with_arguments(a, b, c):
print(a, b, c)
function_with_arguments(1,2,3)
#outputs
#Do I have args?:
#(1, 2, 3)
#{}
#1 2 3
#a_decorator_passing_arbitrary_arguments
def function_with_named_arguments(a, b, c, platypus="Why not ?"):
print("Do {0}, {1} and {2} like platypus? {3}".format(a, b, c, platypus))
function_with_named_arguments("Bill", "Linus", "Steve", platypus="Indeed!")
#outputs
#Do I have args ? :
#('Bill', 'Linus', 'Steve')
#{'platypus': 'Indeed!'}
#Do Bill, Linus and Steve like platypus? Indeed!
class Mary(object):
def __init__(self):
self.age = 31
#a_decorator_passing_arbitrary_arguments
def sayYourAge(self, lie=-3): # You can now add a default value
print("I am {0}, what did you think?".format(self.age + lie))
m = Mary()
m.sayYourAge()
#outputs
# Do I have args?:
#(<__main__.Mary object at 0xb7d303ac>,)
#{}
#I am 28, what did you think?
Passing arguments to the decorator
Great, now what would you say about passing arguments to the decorator itself?
This can get somewhat twisted, since a decorator must accept a function as an argument. Therefore, you cannot pass the decorated function’s arguments directly to the decorator.
Before rushing to the solution, let’s write a little reminder:
# Decorators are ORDINARY functions
def my_decorator(func):
print("I am an ordinary function")
def wrapper():
print("I am function returned by the decorator")
func()
return wrapper
# Therefore, you can call it without any "#"
def lazy_function():
print("zzzzzzzz")
decorated_function = my_decorator(lazy_function)
#outputs: I am an ordinary function
# It outputs "I am an ordinary function", because that’s just what you do:
# calling a function. Nothing magic.
#my_decorator
def lazy_function():
print("zzzzzzzz")
#outputs: I am an ordinary function
It’s exactly the same. "my_decorator" is called. So when you #my_decorator, you are telling Python to call the function 'labelled by the variable "my_decorator"'.
This is important! The label you give can point directly to the decorator—or not.
Let’s get evil. ☺
def decorator_maker():
print("I make decorators! I am executed only once: "
"when you make me create a decorator.")
def my_decorator(func):
print("I am a decorator! I am executed only when you decorate a function.")
def wrapped():
print("I am the wrapper around the decorated function. "
"I am called when you call the decorated function. "
"As the wrapper, I return the RESULT of the decorated function.")
return func()
print("As the decorator, I return the wrapped function.")
return wrapped
print("As a decorator maker, I return a decorator")
return my_decorator
# Let’s create a decorator. It’s just a new function after all.
new_decorator = decorator_maker()
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
# Then we decorate the function
def decorated_function():
print("I am the decorated function.")
decorated_function = new_decorator(decorated_function)
#outputs:
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function
# Let’s call the function:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
No surprise here.
Let’s do EXACTLY the same thing, but skip all the pesky intermediate variables:
def decorated_function():
print("I am the decorated function.")
decorated_function = decorator_maker()(decorated_function)
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function.
# Finally:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
Let’s make it even shorter:
#decorator_maker()
def decorated_function():
print("I am the decorated function.")
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function.
#Eventually:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
Hey, did you see that? We used a function call with the "#" syntax! :-)
So, back to decorators with arguments. If we can use functions to generate the decorator on the fly, we can pass arguments to that function, right?
def decorator_maker_with_arguments(decorator_arg1, decorator_arg2):
print("I make decorators! And I accept arguments: {0}, {1}".format(decorator_arg1, decorator_arg2))
def my_decorator(func):
# The ability to pass arguments here is a gift from closures.
# If you are not comfortable with closures, you can assume it’s ok,
# or read: https://stackoverflow.com/questions/13857/can-you-explain-closures-as-they-relate-to-python
print("I am the decorator. Somehow you passed me arguments: {0}, {1}".format(decorator_arg1, decorator_arg2))
# Don't confuse decorator arguments and function arguments!
def wrapped(function_arg1, function_arg2) :
print("I am the wrapper around the decorated function.\n"
"I can access all the variables\n"
"\t- from the decorator: {0} {1}\n"
"\t- from the function call: {2} {3}\n"
"Then I can pass them to the decorated function"
.format(decorator_arg1, decorator_arg2,
function_arg1, function_arg2))
return func(function_arg1, function_arg2)
return wrapped
return my_decorator
#decorator_maker_with_arguments("Leonard", "Sheldon")
def decorated_function_with_arguments(function_arg1, function_arg2):
print("I am the decorated function and only knows about my arguments: {0}"
" {1}".format(function_arg1, function_arg2))
decorated_function_with_arguments("Rajesh", "Howard")
#outputs:
#I make decorators! And I accept arguments: Leonard Sheldon
#I am the decorator. Somehow you passed me arguments: Leonard Sheldon
#I am the wrapper around the decorated function.
#I can access all the variables
# - from the decorator: Leonard Sheldon
# - from the function call: Rajesh Howard
#Then I can pass them to the decorated function
#I am the decorated function and only knows about my arguments: Rajesh Howard
Here it is: a decorator with arguments. Arguments can be set as variable:
c1 = "Penny"
c2 = "Leslie"
#decorator_maker_with_arguments("Leonard", c1)
def decorated_function_with_arguments(function_arg1, function_arg2):
print("I am the decorated function and only knows about my arguments:"
" {0} {1}".format(function_arg1, function_arg2))
decorated_function_with_arguments(c2, "Howard")
#outputs:
#I make decorators! And I accept arguments: Leonard Penny
#I am the decorator. Somehow you passed me arguments: Leonard Penny
#I am the wrapper around the decorated function.
#I can access all the variables
# - from the decorator: Leonard Penny
# - from the function call: Leslie Howard
#Then I can pass them to the decorated function
#I am the decorated function and only know about my arguments: Leslie Howard
As you can see, you can pass arguments to the decorator like any function using this trick. You can even use *args, **kwargs if you wish. But remember decorators are called only once. Just when Python imports the script. You can't dynamically set the arguments afterwards. When you do "import x", the function is already decorated, so you can't
change anything.
Let’s practice: decorating a decorator
Okay, as a bonus, I'll give you a snippet to make any decorator accept generically any argument. After all, in order to accept arguments, we created our decorator using another function.
We wrapped the decorator.
Anything else we saw recently that wrapped function?
Oh yes, decorators!
Let’s have some fun and write a decorator for the decorators:
def decorator_with_args(decorator_to_enhance):
"""
This function is supposed to be used as a decorator.
It must decorate an other function, that is intended to be used as a decorator.
Take a cup of coffee.
It will allow any decorator to accept an arbitrary number of arguments,
saving you the headache to remember how to do that every time.
"""
# We use the same trick we did to pass arguments
def decorator_maker(*args, **kwargs):
# We create on the fly a decorator that accepts only a function
# but keeps the passed arguments from the maker.
def decorator_wrapper(func):
# We return the result of the original decorator, which, after all,
# IS JUST AN ORDINARY FUNCTION (which returns a function).
# Only pitfall: the decorator must have this specific signature or it won't work:
return decorator_to_enhance(func, *args, **kwargs)
return decorator_wrapper
return decorator_maker
It can be used as follows:
# You create the function you will use as a decorator. And stick a decorator on it :-)
# Don't forget, the signature is "decorator(func, *args, **kwargs)"
#decorator_with_args
def decorated_decorator(func, *args, **kwargs):
def wrapper(function_arg1, function_arg2):
print("Decorated with {0} {1}".format(args, kwargs))
return func(function_arg1, function_arg2)
return wrapper
# Then you decorate the functions you wish with your brand new decorated decorator.
#decorated_decorator(42, 404, 1024)
def decorated_function(function_arg1, function_arg2):
print("Hello {0} {1}".format(function_arg1, function_arg2))
decorated_function("Universe and", "everything")
#outputs:
#Decorated with (42, 404, 1024) {}
#Hello Universe and everything
# Whoooot!
I know, the last time you had this feeling, it was after listening a guy saying: "before understanding recursion, you must first understand recursion". But now, don't you feel good about mastering this?
Best practices: decorators
Decorators were introduced in Python 2.4, so be sure your code will be run on >= 2.4.
Decorators slow down the function call. Keep that in mind.
You cannot un-decorate a function. (There are hacks to create decorators that can be removed, but nobody uses them.) So once a function is decorated, it’s decorated for all the code.
Decorators wrap functions, which can make them hard to debug. (This gets better from Python >= 2.5; see below.)
The functools module was introduced in Python 2.5. It includes the function functools.wraps(), which copies the name, module, and docstring of the decorated function to its wrapper.
(Fun fact: functools.wraps() is a decorator! ☺)
# For debugging, the stacktrace prints you the function __name__
def foo():
print("foo")
print(foo.__name__)
#outputs: foo
# With a decorator, it gets messy
def bar(func):
def wrapper():
print("bar")
return func()
return wrapper
#bar
def foo():
print("foo")
print(foo.__name__)
#outputs: wrapper
# "functools" can help for that
import functools
def bar(func):
# We say that "wrapper", is wrapping "func"
# and the magic begins
#functools.wraps(func)
def wrapper():
print("bar")
return func()
return wrapper
#bar
def foo():
print("foo")
print(foo.__name__)
#outputs: foo
How can the decorators be useful?
Now the big question: What can I use decorators for?
Seem cool and powerful, but a practical example would be great. Well, there are 1000 possibilities. Classic uses are extending a function behavior from an external lib (you can't modify it), or for debugging (you don't want to modify it because it’s temporary).
You can use them to extend several functions in a DRY’s way, like so:
def benchmark(func):
"""
A decorator that prints the time a function takes
to execute.
"""
import time
def wrapper(*args, **kwargs):
t = time.clock()
res = func(*args, **kwargs)
print("{0} {1}".format(func.__name__, time.clock()-t))
return res
return wrapper
def logging(func):
"""
A decorator that logs the activity of the script.
(it actually just prints it, but it could be logging!)
"""
def wrapper(*args, **kwargs):
res = func(*args, **kwargs)
print("{0} {1} {2}".format(func.__name__, args, kwargs))
return res
return wrapper
def counter(func):
"""
A decorator that counts and prints the number of times a function has been executed
"""
def wrapper(*args, **kwargs):
wrapper.count = wrapper.count + 1
res = func(*args, **kwargs)
print("{0} has been used: {1}x".format(func.__name__, wrapper.count))
return res
wrapper.count = 0
return wrapper
#counter
#benchmark
#logging
def reverse_string(string):
return str(reversed(string))
print(reverse_string("Able was I ere I saw Elba"))
print(reverse_string("A man, a plan, a canoe, pasta, heros, rajahs, a coloratura, maps, snipe, percale, macaroni, a gag, a banana bag, a tan, a tag, a banana bag again (or a camel), a crepe, pins, Spam, a rut, a Rolo, cash, a jar, sore hats, a peon, a canal: Panama!"))
#outputs:
#reverse_string ('Able was I ere I saw Elba',) {}
#wrapper 0.0
#wrapper has been used: 1x
#ablE was I ere I saw elbA
#reverse_string ('A man, a plan, a canoe, pasta, heros, rajahs, a coloratura, maps, snipe, percale, macaroni, a gag, a banana bag, a tan, a tag, a banana bag again (or a camel), a crepe, pins, Spam, a rut, a Rolo, cash, a jar, sore hats, a peon, a canal: Panama!',) {}
#wrapper 0.0
#wrapper has been used: 2x
#!amanaP :lanac a ,noep a ,stah eros ,raj a ,hsac ,oloR a ,tur a ,mapS ,snip ,eperc a ,)lemac a ro( niaga gab ananab a ,gat a ,nat a ,gab ananab a ,gag a ,inoracam ,elacrep ,epins ,spam ,arutaroloc a ,shajar ,soreh ,atsap ,eonac a ,nalp a ,nam A
Of course the good thing with decorators is that you can use them right away on almost anything without rewriting. DRY, I said:
#counter
#benchmark
#logging
def get_random_futurama_quote():
from urllib import urlopen
result = urlopen("http://subfusion.net/cgi-bin/quote.pl?quote=futurama").read()
try:
value = result.split("<br><b><hr><br>")[1].split("<br><br><hr>")[0]
return value.strip()
except:
return "No, I'm ... doesn't!"
print(get_random_futurama_quote())
print(get_random_futurama_quote())
#outputs:
#get_random_futurama_quote () {}
#wrapper 0.02
#wrapper has been used: 1x
#The laws of science be a harsh mistress.
#get_random_futurama_quote () {}
#wrapper 0.01
#wrapper has been used: 2x
#Curse you, merciful Poseidon!
Python itself provides several decorators: property, staticmethod, etc.
Django uses decorators to manage caching and view permissions.
Twisted to fake inlining asynchronous functions calls.
This really is a large playground.
Check out the documentation to see how decorators work. Here is what you asked for:
from functools import wraps
def makebold(fn):
#wraps(fn)
def wrapper(*args, **kwargs):
return "<b>" + fn(*args, **kwargs) + "</b>"
return wrapper
def makeitalic(fn):
#wraps(fn)
def wrapper(*args, **kwargs):
return "<i>" + fn(*args, **kwargs) + "</i>"
return wrapper
#makebold
#makeitalic
def hello():
return "hello world"
#makebold
#makeitalic
def log(s):
return s
print hello() # returns "<b><i>hello world</i></b>"
print hello.__name__ # with functools.wraps() this returns "hello"
print log('hello') # returns "<b><i>hello</i></b>"
Alternatively, you could write a factory function which return a decorator which wraps the return value of the decorated function in a tag passed to the factory function. For example:
from functools import wraps
def wrap_in_tag(tag):
def factory(func):
#wraps(func)
def decorator():
return '<%(tag)s>%(rv)s</%(tag)s>' % (
{'tag': tag, 'rv': func()})
return decorator
return factory
This enables you to write:
#wrap_in_tag('b')
#wrap_in_tag('i')
def say():
return 'hello'
or
makebold = wrap_in_tag('b')
makeitalic = wrap_in_tag('i')
#makebold
#makeitalic
def say():
return 'hello'
Personally I would have written the decorator somewhat differently:
from functools import wraps
def wrap_in_tag(tag):
def factory(func):
#wraps(func)
def decorator(val):
return func('<%(tag)s>%(val)s</%(tag)s>' %
{'tag': tag, 'val': val})
return decorator
return factory
which would yield:
#wrap_in_tag('b')
#wrap_in_tag('i')
def say(val):
return val
say('hello')
Don't forget the construction for which decorator syntax is a shorthand:
say = wrap_in_tag('b')(wrap_in_tag('i')(say)))
Decorators are just syntactical sugar.
This
#decorator
def func():
...
expands to
def func():
...
func = decorator(func)
And of course you can return lambdas as well from a decorator function:
def makebold(f):
return lambda: "<b>" + f() + "</b>"
def makeitalic(f):
return lambda: "<i>" + f() + "</i>"
#makebold
#makeitalic
def say():
return "Hello"
print say()
Python decorators add extra functionality to another function
An italics decorator could be like
def makeitalic(fn):
def newFunc():
return "<i>" + fn() + "</i>"
return newFunc
Note that a function is defined inside a function.
What it basically does is replace a function with the newly defined one. For example, I have this class
class foo:
def bar(self):
print "hi"
def foobar(self):
print "hi again"
Now say, I want both functions to print "---" after and before they are done.
I could add a print "---" before and after each print statement.
But because I don't like repeating myself, I will make a decorator
def addDashes(fn): # notice it takes a function as an argument
def newFunction(self): # define a new function
print "---"
fn(self) # call the original function
print "---"
return newFunction
# Return the newly defined function - it will "replace" the original
So now I can change my class to
class foo:
#addDashes
def bar(self):
print "hi"
#addDashes
def foobar(self):
print "hi again"
For more on decorators, check
http://www.ibm.com/developerworks/linux/library/l-cpdecor.html
You could make two separate decorators that do what you want as illustrated directly below. Note the use of *args, **kwargs in the declaration of the wrapped() function which supports the decorated function having multiple arguments (which isn't really necessary for the example say() function, but is included for generality).
For similar reasons, the functools.wraps decorator is used to change the meta attributes of the wrapped function to be those of the one being decorated. This makes error messages and embedded function documentation (func.__doc__) be those of the decorated function instead of wrapped()'s.
from functools import wraps
def makebold(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return "<b>" + fn(*args, **kwargs) + "</b>"
return wrapped
def makeitalic(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return "<i>" + fn(*args, **kwargs) + "</i>"
return wrapped
#makebold
#makeitalic
def say():
return 'Hello'
print(say()) # -> <b><i>Hello</i></b>
Refinements
As you can see there's a lot of duplicate code in these two decorators. Given this similarity it would be better for you to instead make a generic one that was actually a decorator factory—in other words, a decorator function that makes other decorators. That way there would be less code repetition—and allow the DRY principle to be followed.
def html_deco(tag):
def decorator(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return '<%s>' % tag + fn(*args, **kwargs) + '</%s>' % tag
return wrapped
return decorator
#html_deco('b')
#html_deco('i')
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
To make the code more readable, you can assign a more descriptive name to the factory-generated decorators:
makebold = html_deco('b')
makeitalic = html_deco('i')
#makebold
#makeitalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
or even combine them like this:
makebolditalic = lambda fn: makebold(makeitalic(fn))
#makebolditalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
Efficiency
While the above examples do all work, the code generated involves a fair amount of overhead in the form of extraneous function calls when multiple decorators are applied at once. This may not matter, depending the exact usage (which might be I/O-bound, for instance).
If speed of the decorated function is important, the overhead can be kept to a single extra function call by writing a slightly different decorator factory-function which implements adding all the tags at once, so it can generate code that avoids the addtional function calls incurred by using separate decorators for each tag.
This requires more code in the decorator itself, but this only runs when it's being applied to function definitions, not later when they themselves are called. This also applies when creating more readable names by using lambda functions as previously illustrated. Sample:
def multi_html_deco(*tags):
start_tags, end_tags = [], []
for tag in tags:
start_tags.append('<%s>' % tag)
end_tags.append('</%s>' % tag)
start_tags = ''.join(start_tags)
end_tags = ''.join(reversed(end_tags))
def decorator(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return start_tags + fn(*args, **kwargs) + end_tags
return wrapped
return decorator
makebolditalic = multi_html_deco('b', 'i')
#makebolditalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
Another way of doing the same thing:
class bol(object):
def __init__(self, f):
self.f = f
def __call__(self):
return "<b>{}</b>".format(self.f())
class ita(object):
def __init__(self, f):
self.f = f
def __call__(self):
return "<i>{}</i>".format(self.f())
#bol
#ita
def sayhi():
return 'hi'
Or, more flexibly:
class sty(object):
def __init__(self, tag):
self.tag = tag
def __call__(self, f):
def newf():
return "<{tag}>{res}</{tag}>".format(res=f(), tag=self.tag)
return newf
#sty('b')
#sty('i')
def sayhi():
return 'hi'
How can I make two decorators in Python that would do the following?
You want the following function, when called:
#makebold
#makeitalic
def say():
return "Hello"
To return:
<b><i>Hello</i></b>
Simple solution
To most simply do this, make decorators that return lambdas (anonymous functions) that close over the function (closures) and call it:
def makeitalic(fn):
return lambda: '<i>' + fn() + '</i>'
def makebold(fn):
return lambda: '<b>' + fn() + '</b>'
Now use them as desired:
#makebold
#makeitalic
def say():
return 'Hello'
and now:
>>> say()
'<b><i>Hello</i></b>'
Problems with the simple solution
But we seem to have nearly lost the original function.
>>> say
<function <lambda> at 0x4ACFA070>
To find it, we'd need to dig into the closure of each lambda, one of which is buried in the other:
>>> say.__closure__[0].cell_contents
<function <lambda> at 0x4ACFA030>
>>> say.__closure__[0].cell_contents.__closure__[0].cell_contents
<function say at 0x4ACFA730>
So if we put documentation on this function, or wanted to be able to decorate functions that take more than one argument, or we just wanted to know what function we were looking at in a debugging session, we need to do a bit more with our wrapper.
Full featured solution - overcoming most of these problems
We have the decorator wraps from the functools module in the standard library!
from functools import wraps
def makeitalic(fn):
# must assign/update attributes from wrapped function to wrapper
# __module__, __name__, __doc__, and __dict__ by default
#wraps(fn) # explicitly give function whose attributes it is applying
def wrapped(*args, **kwargs):
return '<i>' + fn(*args, **kwargs) + '</i>'
return wrapped
def makebold(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return '<b>' + fn(*args, **kwargs) + '</b>'
return wrapped
It is unfortunate that there's still some boilerplate, but this is about as simple as we can make it.
In Python 3, you also get __qualname__ and __annotations__ assigned by default.
So now:
#makebold
#makeitalic
def say():
"""This function returns a bolded, italicized 'hello'"""
return 'Hello'
And now:
>>> say
<function say at 0x14BB8F70>
>>> help(say)
Help on function say in module __main__:
say(*args, **kwargs)
This function returns a bolded, italicized 'hello'
Conclusion
So we see that wraps makes the wrapping function do almost everything except tell us exactly what the function takes as arguments.
There are other modules that may attempt to tackle the problem, but the solution is not yet in the standard library.
A decorator takes the function definition and creates a new function that executes this function and transforms the result.
#deco
def do():
...
is equivalent to:
do = deco(do)
Example:
def deco(func):
def inner(letter):
return func(letter).upper() #upper
return inner
This
#deco
def do(number):
return chr(number) # number to letter
is equivalent to this
def do2(number):
return chr(number)
do2 = deco(do2)
65 <=> 'a'
print(do(65))
print(do2(65))
>>> B
>>> B
To understand the decorator, it is important to notice, that decorator created a new function do which is inner that executes function and transforms the result.
This answer has long been answered, but I thought I would share my Decorator class which makes writing new decorators easy and compact.
from abc import ABCMeta, abstractclassmethod
class Decorator(metaclass=ABCMeta):
""" Acts as a base class for all decorators """
def __init__(self):
self.method = None
def __call__(self, method):
self.method = method
return self.call
#abstractclassmethod
def call(self, *args, **kwargs):
return self.method(*args, **kwargs)
For one I think this makes the behavior of decorators very clear, but it also makes it easy to define new decorators very concisely. For the example listed above, you could then solve it as:
class MakeBold(Decorator):
def call():
return "<b>" + self.method() + "</b>"
class MakeItalic(Decorator):
def call():
return "<i>" + self.method() + "</i>"
#MakeBold()
#MakeItalic()
def say():
return "Hello"
You could also use it to do more complex tasks, like for instance a decorator which automatically makes the function get applied recursively to all arguments in an iterator:
class ApplyRecursive(Decorator):
def __init__(self, *types):
super().__init__()
if not len(types):
types = (dict, list, tuple, set)
self._types = types
def call(self, arg):
if dict in self._types and isinstance(arg, dict):
return {key: self.call(value) for key, value in arg.items()}
if set in self._types and isinstance(arg, set):
return set(self.call(value) for value in arg)
if tuple in self._types and isinstance(arg, tuple):
return tuple(self.call(value) for value in arg)
if list in self._types and isinstance(arg, list):
return list(self.call(value) for value in arg)
return self.method(arg)
#ApplyRecursive(tuple, set, dict)
def double(arg):
return 2*arg
print(double(1))
print(double({'a': 1, 'b': 2}))
print(double({1, 2, 3}))
print(double((1, 2, 3, 4)))
print(double([1, 2, 3, 4, 5]))
Which prints:
2
{'a': 2, 'b': 4}
{2, 4, 6}
(2, 4, 6, 8)
[1, 2, 3, 4, 5, 1, 2, 3, 4, 5]
Notice that this example didn't include the list type in the instantiation of the decorator, so in the final print statement the method gets applied to the list itself, not the elements of the list.
#decorator.py
def makeHtmlTag(tag, *args, **kwds):
def real_decorator(fn):
css_class = " class='{0}'".format(kwds["css_class"]) \
if "css_class" in kwds else ""
def wrapped(*args, **kwds):
return "<"+tag+css_class+">" + fn(*args, **kwds) + "</"+tag+">"
return wrapped
# return decorator dont call it
return real_decorator
#makeHtmlTag(tag="b", css_class="bold_css")
#makeHtmlTag(tag="i", css_class="italic_css")
def hello():
return "hello world"
print hello()
You can also write decorator in Class
#class.py
class makeHtmlTagClass(object):
def __init__(self, tag, css_class=""):
self._tag = tag
self._css_class = " class='{0}'".format(css_class) \
if css_class != "" else ""
def __call__(self, fn):
def wrapped(*args, **kwargs):
return "<" + self._tag + self._css_class+">" \
+ fn(*args, **kwargs) + "</" + self._tag + ">"
return wrapped
#makeHtmlTagClass(tag="b", css_class="bold_css")
#makeHtmlTagClass(tag="i", css_class="italic_css")
def hello(name):
return "Hello, {}".format(name)
print hello("Your name")
Here is a simple example of chaining decorators. Note the last line - it shows what is going on under the covers.
############################################################
#
# decorators
#
############################################################
def bold(fn):
def decorate():
# surround with bold tags before calling original function
return "<b>" + fn() + "</b>"
return decorate
def uk(fn):
def decorate():
# swap month and day
fields = fn().split('/')
date = fields[1] + "/" + fields[0] + "/" + fields[2]
return date
return decorate
import datetime
def getDate():
now = datetime.datetime.now()
return "%d/%d/%d" % (now.day, now.month, now.year)
#bold
def getBoldDate():
return getDate()
#uk
def getUkDate():
return getDate()
#bold
#uk
def getBoldUkDate():
return getDate()
print getDate()
print getBoldDate()
print getUkDate()
print getBoldUkDate()
# what is happening under the covers
print bold(uk(getDate))()
The output looks like:
17/6/2013
<b>17/6/2013</b>
6/17/2013
<b>6/17/2013</b>
<b>6/17/2013</b>
Speaking of the counter example - as given above, the counter will be shared between all functions that use the decorator:
def counter(func):
def wrapped(*args, **kws):
print 'Called #%i' % wrapped.count
wrapped.count += 1
return func(*args, **kws)
wrapped.count = 0
return wrapped
That way, your decorator can be reused for different functions (or used to decorate the same function multiple times: func_counter1 = counter(func); func_counter2 = counter(func)), and the counter variable will remain private to each.
Decorate functions with different number of arguments:
def frame_tests(fn):
def wrapper(*args):
print "\nStart: %s" %(fn.__name__)
fn(*args)
print "End: %s\n" %(fn.__name__)
return wrapper
#frame_tests
def test_fn1():
print "This is only a test!"
#frame_tests
def test_fn2(s1):
print "This is only a test! %s" %(s1)
#frame_tests
def test_fn3(s1, s2):
print "This is only a test! %s %s" %(s1, s2)
if __name__ == "__main__":
test_fn1()
test_fn2('OK!')
test_fn3('OK!', 'Just a test!')
Result:
Start: test_fn1
This is only a test!
End: test_fn1
Start: test_fn2
This is only a test! OK!
End: test_fn2
Start: test_fn3
This is only a test! OK! Just a test!
End: test_fn3
Paolo Bergantino's answer has the great advantage of only using the stdlib, and works for this simple example where there are no decorator arguments nor decorated function arguments.
However it has 3 major limitations if you want to tackle more general cases:
as already noted in several answers, you can not easily modify the code to add optional decorator arguments. For example creating a makestyle(style='bold') decorator is non-trivial.
besides, wrappers created with #functools.wraps do not preserve the signature, so if bad arguments are provided they will start executing, and might raise a different kind of error than the usual TypeError.
finally, it is quite difficult in wrappers created with #functools.wraps to access an argument based on its name. Indeed the argument can appear in *args, in **kwargs, or may not appear at all (if it is optional).
I wrote decopatch to solve the first issue, and wrote makefun.wraps to solve the other two. Note that makefun leverages the same trick than the famous decorator lib.
This is how you would create a decorator with arguments, returning truly signature-preserving wrappers:
from decopatch import function_decorator, DECORATED
from makefun import wraps
#function_decorator
def makestyle(st='b', fn=DECORATED):
open_tag = "<%s>" % st
close_tag = "</%s>" % st
#wraps(fn)
def wrapped(*args, **kwargs):
return open_tag + fn(*args, **kwargs) + close_tag
return wrapped
decopatch provides you with two other development styles that hide or show the various python concepts, depending on your preferences. The most compact style is the following:
from decopatch import function_decorator, WRAPPED, F_ARGS, F_KWARGS
#function_decorator
def makestyle(st='b', fn=WRAPPED, f_args=F_ARGS, f_kwargs=F_KWARGS):
open_tag = "<%s>" % st
close_tag = "</%s>" % st
return open_tag + fn(*f_args, **f_kwargs) + close_tag
In both cases you can check that the decorator works as expected:
#makestyle
#makestyle('i')
def hello(who):
return "hello %s" % who
assert hello('world') == '<b><i>hello world</i></b>'
Please refer to the documentation for details.
I add a case when you need to add custom parameters in decorator, pass it to final function and then work it with.
the very decorators:
def jwt_or_redirect(fn):
#wraps(fn)
def decorator(*args, **kwargs):
...
return fn(*args, **kwargs)
return decorator
def jwt_refresh(fn):
#wraps(fn)
def decorator(*args, **kwargs):
...
new_kwargs = {'refreshed_jwt': 'xxxxx-xxxxxx'}
new_kwargs.update(kwargs)
return fn(*args, **new_kwargs)
return decorator
and the final function:
#app.route('/')
#jwt_or_redirect
#jwt_refresh
def home_page(*args, **kwargs):
return kwargs['refreched_jwt']
Yet another example of nested decorators for plotting an image:
import matplotlib.pylab as plt
def remove_axis(func):
def inner(img, alpha):
plt.axis('off')
func(img, alpha)
return inner
def plot_gray(func):
def inner(img, alpha):
plt.gray()
func(img, alpha)
return inner
#remove_axis
#plot_gray
def plot_image(img, alpha):
plt.imshow(img, alpha=alpha)
plt.show()
Now, let's show a color image first without axis labels using the nested decorators:
plot_image(plt.imread('lena_color.jpg'), 0.4)
Next, let's show a gray scale image without axis labels using the nested decorators remove_axis and plot_gray (we need to cmap='gray', otherwise the default colormap is viridis, so a grayscale image is by default not displayed in black and white shades, unless explicitly specified)
plot_image(plt.imread('lena_bw.jpg'), 0.8)
The above function call reduces down to the following nested call
remove_axis(plot_gray(plot_image))(img, alpha)
With make_bold() and make_italic() below:
def make_bold(func):
def core(*args, **kwargs):
result = func(*args, **kwargs)
return "<b>" + result + "</b>"
return core
def make_italic(func):
def core(*args, **kwargs):
result = func(*args, **kwargs)
return "<i>" + result + "</i>"
return core
You can use them as decorators with say() as shown below:
#make_bold
#make_italic
def say():
return "Hello"
print(say())
Output:
<b><i>Hello</i></b>
And of course, you can directly use make_bold() and make_italic() without decorators as shown below:
def say():
return "Hello"
f1 = make_italic(say)
f2 = make_bold(f1)
result = f2()
print(result)
In short:
def say():
return "Hello"
result = make_bold(make_italic(say))()
print(result)
Output:
<b><i>Hello</i></b>
Consider the following decorator, note that we are returning the wrapper() function as an object
def make_bold(func):
def wrapper():
return '<b>'+func()+'</b>'
return wrapper
So This
#make_bold
def say():
return "Hello"
evaluates to this
x = make_bold(say)
Note that x is not the say() but the wrapper object that calls say() internally. That is how decorator works. It always returns the wrapper object which calls the actual function.
In case of chaining this
#make_italic
#make_bold
def say():
return "Hello"
gets converted to this
x = make_bold(say)
y = make_italic(x)
Below is the complete code
def make_italic(func):
def wrapper():
return '<i>'+func()+'</i>'
return wrapper
def make_bold(func):
def wrapper():
return '<b>'+func()+'</b>'
return wrapper
#make_italic
#make_bold
def say():
return "Hello"
if __name__ == '__main__':
# x = make_bold(say) When you wrap say with make_bold decorator
# y = make_italic(x) When you also add make_italic as part of chaining
# print(y())
print(say())
The above code will return
<i><b>Hello</b></i>
Hope this helps

Python Decorators: background [duplicate]

How do I make two decorators in Python that would do the following?
#make_bold
#make_italic
def say():
return "Hello"
Calling say() should return:
"<b><i>Hello</i></b>"
If you are not into long explanations, see Paolo Bergantino’s answer.
Decorator Basics
Python’s functions are objects
To understand decorators, you must first understand that functions are objects in Python. This has important consequences. Let’s see why with a simple example :
def shout(word="yes"):
return word.capitalize()+"!"
print(shout())
# outputs : 'Yes!'
# As an object, you can assign the function to a variable like any other object
scream = shout
# Notice we don't use parentheses: we are not calling the function,
# we are putting the function "shout" into the variable "scream".
# It means you can then call "shout" from "scream":
print(scream())
# outputs : 'Yes!'
# More than that, it means you can remove the old name 'shout',
# and the function will still be accessible from 'scream'
del shout
try:
print(shout())
except NameError as e:
print(e)
#outputs: "name 'shout' is not defined"
print(scream())
# outputs: 'Yes!'
Keep this in mind. We’ll circle back to it shortly.
Another interesting property of Python functions is they can be defined inside another function!
def talk():
# You can define a function on the fly in "talk" ...
def whisper(word="yes"):
return word.lower()+"..."
# ... and use it right away!
print(whisper())
# You call "talk", that defines "whisper" EVERY TIME you call it, then
# "whisper" is called in "talk".
talk()
# outputs:
# "yes..."
# But "whisper" DOES NOT EXIST outside "talk":
try:
print(whisper())
except NameError as e:
print(e)
#outputs : "name 'whisper' is not defined"*
#Python's functions are objects
Functions references
Okay, still here? Now the fun part...
You’ve seen that functions are objects. Therefore, functions:
can be assigned to a variable
can be defined in another function
That means that a function can return another function.
def getTalk(kind="shout"):
# We define functions on the fly
def shout(word="yes"):
return word.capitalize()+"!"
def whisper(word="yes") :
return word.lower()+"..."
# Then we return one of them
if kind == "shout":
# We don't use "()", we are not calling the function,
# we are returning the function object
return shout
else:
return whisper
# How do you use this strange beast?
# Get the function and assign it to a variable
talk = getTalk()
# You can see that "talk" is here a function object:
print(talk)
#outputs : <function shout at 0xb7ea817c>
# The object is the one returned by the function:
print(talk())
#outputs : Yes!
# And you can even use it directly if you feel wild:
print(getTalk("whisper")())
#outputs : yes...
There’s more!
If you can return a function, you can pass one as a parameter:
def doSomethingBefore(func):
print("I do something before then I call the function you gave me")
print(func())
doSomethingBefore(scream)
#outputs:
#I do something before then I call the function you gave me
#Yes!
Well, you just have everything needed to understand decorators. You see, decorators are “wrappers”, which means that they let you execute code before and after the function they decorate without modifying the function itself.
Handcrafted decorators
How you’d do it manually:
# A decorator is a function that expects ANOTHER function as parameter
def my_shiny_new_decorator(a_function_to_decorate):
# Inside, the decorator defines a function on the fly: the wrapper.
# This function is going to be wrapped around the original function
# so it can execute code before and after it.
def the_wrapper_around_the_original_function():
# Put here the code you want to be executed BEFORE the original function is called
print("Before the function runs")
# Call the function here (using parentheses)
a_function_to_decorate()
# Put here the code you want to be executed AFTER the original function is called
print("After the function runs")
# At this point, "a_function_to_decorate" HAS NEVER BEEN EXECUTED.
# We return the wrapper function we have just created.
# The wrapper contains the function and the code to execute before and after. It’s ready to use!
return the_wrapper_around_the_original_function
# Now imagine you create a function you don't want to ever touch again.
def a_stand_alone_function():
print("I am a stand alone function, don't you dare modify me")
a_stand_alone_function()
#outputs: I am a stand alone function, don't you dare modify me
# Well, you can decorate it to extend its behavior.
# Just pass it to the decorator, it will wrap it dynamically in
# any code you want and return you a new function ready to be used:
a_stand_alone_function_decorated = my_shiny_new_decorator(a_stand_alone_function)
a_stand_alone_function_decorated()
#outputs:
#Before the function runs
#I am a stand alone function, don't you dare modify me
#After the function runs
Now, you probably want that every time you call a_stand_alone_function, a_stand_alone_function_decorated is called instead. That’s easy, just overwrite a_stand_alone_function with the function returned by my_shiny_new_decorator:
a_stand_alone_function = my_shiny_new_decorator(a_stand_alone_function)
a_stand_alone_function()
#outputs:
#Before the function runs
#I am a stand alone function, don't you dare modify me
#After the function runs
# That’s EXACTLY what decorators do!
Decorators demystified
The previous example, using the decorator syntax:
#my_shiny_new_decorator
def another_stand_alone_function():
print("Leave me alone")
another_stand_alone_function()
#outputs:
#Before the function runs
#Leave me alone
#After the function runs
Yes, that’s all, it’s that simple. #decorator is just a shortcut to:
another_stand_alone_function = my_shiny_new_decorator(another_stand_alone_function)
Decorators are just a pythonic variant of the decorator design pattern. There are several classic design patterns embedded in Python to ease development (like iterators).
Of course, you can accumulate decorators:
def bread(func):
def wrapper():
print("</''''''\>")
func()
print("<\______/>")
return wrapper
def ingredients(func):
def wrapper():
print("#tomatoes#")
func()
print("~salad~")
return wrapper
def sandwich(food="--ham--"):
print(food)
sandwich()
#outputs: --ham--
sandwich = bread(ingredients(sandwich))
sandwich()
#outputs:
#</''''''\>
# #tomatoes#
# --ham--
# ~salad~
#<\______/>
Using the Python decorator syntax:
#bread
#ingredients
def sandwich(food="--ham--"):
print(food)
sandwich()
#outputs:
#</''''''\>
# #tomatoes#
# --ham--
# ~salad~
#<\______/>
The order you set the decorators MATTERS:
#ingredients
#bread
def strange_sandwich(food="--ham--"):
print(food)
strange_sandwich()
#outputs:
##tomatoes#
#</''''''\>
# --ham--
#<\______/>
# ~salad~
Now: to answer the question...
As a conclusion, you can easily see how to answer the question:
# The decorator to make it bold
def makebold(fn):
# The new function the decorator returns
def wrapper():
# Insertion of some code before and after
return "<b>" + fn() + "</b>"
return wrapper
# The decorator to make it italic
def makeitalic(fn):
# The new function the decorator returns
def wrapper():
# Insertion of some code before and after
return "<i>" + fn() + "</i>"
return wrapper
#makebold
#makeitalic
def say():
return "hello"
print(say())
#outputs: <b><i>hello</i></b>
# This is the exact equivalent to
def say():
return "hello"
say = makebold(makeitalic(say))
print(say())
#outputs: <b><i>hello</i></b>
You can now just leave happy, or burn your brain a little bit more and see advanced uses of decorators.
Taking decorators to the next level
Passing arguments to the decorated function
# It’s not black magic, you just have to let the wrapper
# pass the argument:
def a_decorator_passing_arguments(function_to_decorate):
def a_wrapper_accepting_arguments(arg1, arg2):
print("I got args! Look: {0}, {1}".format(arg1, arg2))
function_to_decorate(arg1, arg2)
return a_wrapper_accepting_arguments
# Since when you are calling the function returned by the decorator, you are
# calling the wrapper, passing arguments to the wrapper will let it pass them to
# the decorated function
#a_decorator_passing_arguments
def print_full_name(first_name, last_name):
print("My name is {0} {1}".format(first_name, last_name))
print_full_name("Peter", "Venkman")
# outputs:
#I got args! Look: Peter Venkman
#My name is Peter Venkman
Decorating methods
One nifty thing about Python is that methods and functions are really the same. The only difference is that methods expect that their first argument is a reference to the current object (self).
That means you can build a decorator for methods the same way! Just remember to take self into consideration:
def method_friendly_decorator(method_to_decorate):
def wrapper(self, lie):
lie = lie - 3 # very friendly, decrease age even more :-)
return method_to_decorate(self, lie)
return wrapper
class Lucy(object):
def __init__(self):
self.age = 32
#method_friendly_decorator
def sayYourAge(self, lie):
print("I am {0}, what did you think?".format(self.age + lie))
l = Lucy()
l.sayYourAge(-3)
#outputs: I am 26, what did you think?
If you’re making general-purpose decorator--one you’ll apply to any function or method, no matter its arguments--then just use *args, **kwargs:
def a_decorator_passing_arbitrary_arguments(function_to_decorate):
# The wrapper accepts any arguments
def a_wrapper_accepting_arbitrary_arguments(*args, **kwargs):
print("Do I have args?:")
print(args)
print(kwargs)
# Then you unpack the arguments, here *args, **kwargs
# If you are not familiar with unpacking, check:
# http://www.saltycrane.com/blog/2008/01/how-to-use-args-and-kwargs-in-python/
function_to_decorate(*args, **kwargs)
return a_wrapper_accepting_arbitrary_arguments
#a_decorator_passing_arbitrary_arguments
def function_with_no_argument():
print("Python is cool, no argument here.")
function_with_no_argument()
#outputs
#Do I have args?:
#()
#{}
#Python is cool, no argument here.
#a_decorator_passing_arbitrary_arguments
def function_with_arguments(a, b, c):
print(a, b, c)
function_with_arguments(1,2,3)
#outputs
#Do I have args?:
#(1, 2, 3)
#{}
#1 2 3
#a_decorator_passing_arbitrary_arguments
def function_with_named_arguments(a, b, c, platypus="Why not ?"):
print("Do {0}, {1} and {2} like platypus? {3}".format(a, b, c, platypus))
function_with_named_arguments("Bill", "Linus", "Steve", platypus="Indeed!")
#outputs
#Do I have args ? :
#('Bill', 'Linus', 'Steve')
#{'platypus': 'Indeed!'}
#Do Bill, Linus and Steve like platypus? Indeed!
class Mary(object):
def __init__(self):
self.age = 31
#a_decorator_passing_arbitrary_arguments
def sayYourAge(self, lie=-3): # You can now add a default value
print("I am {0}, what did you think?".format(self.age + lie))
m = Mary()
m.sayYourAge()
#outputs
# Do I have args?:
#(<__main__.Mary object at 0xb7d303ac>,)
#{}
#I am 28, what did you think?
Passing arguments to the decorator
Great, now what would you say about passing arguments to the decorator itself?
This can get somewhat twisted, since a decorator must accept a function as an argument. Therefore, you cannot pass the decorated function’s arguments directly to the decorator.
Before rushing to the solution, let’s write a little reminder:
# Decorators are ORDINARY functions
def my_decorator(func):
print("I am an ordinary function")
def wrapper():
print("I am function returned by the decorator")
func()
return wrapper
# Therefore, you can call it without any "#"
def lazy_function():
print("zzzzzzzz")
decorated_function = my_decorator(lazy_function)
#outputs: I am an ordinary function
# It outputs "I am an ordinary function", because that’s just what you do:
# calling a function. Nothing magic.
#my_decorator
def lazy_function():
print("zzzzzzzz")
#outputs: I am an ordinary function
It’s exactly the same. "my_decorator" is called. So when you #my_decorator, you are telling Python to call the function 'labelled by the variable "my_decorator"'.
This is important! The label you give can point directly to the decorator—or not.
Let’s get evil. ☺
def decorator_maker():
print("I make decorators! I am executed only once: "
"when you make me create a decorator.")
def my_decorator(func):
print("I am a decorator! I am executed only when you decorate a function.")
def wrapped():
print("I am the wrapper around the decorated function. "
"I am called when you call the decorated function. "
"As the wrapper, I return the RESULT of the decorated function.")
return func()
print("As the decorator, I return the wrapped function.")
return wrapped
print("As a decorator maker, I return a decorator")
return my_decorator
# Let’s create a decorator. It’s just a new function after all.
new_decorator = decorator_maker()
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
# Then we decorate the function
def decorated_function():
print("I am the decorated function.")
decorated_function = new_decorator(decorated_function)
#outputs:
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function
# Let’s call the function:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
No surprise here.
Let’s do EXACTLY the same thing, but skip all the pesky intermediate variables:
def decorated_function():
print("I am the decorated function.")
decorated_function = decorator_maker()(decorated_function)
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function.
# Finally:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
Let’s make it even shorter:
#decorator_maker()
def decorated_function():
print("I am the decorated function.")
#outputs:
#I make decorators! I am executed only once: when you make me create a decorator.
#As a decorator maker, I return a decorator
#I am a decorator! I am executed only when you decorate a function.
#As the decorator, I return the wrapped function.
#Eventually:
decorated_function()
#outputs:
#I am the wrapper around the decorated function. I am called when you call the decorated function.
#As the wrapper, I return the RESULT of the decorated function.
#I am the decorated function.
Hey, did you see that? We used a function call with the "#" syntax! :-)
So, back to decorators with arguments. If we can use functions to generate the decorator on the fly, we can pass arguments to that function, right?
def decorator_maker_with_arguments(decorator_arg1, decorator_arg2):
print("I make decorators! And I accept arguments: {0}, {1}".format(decorator_arg1, decorator_arg2))
def my_decorator(func):
# The ability to pass arguments here is a gift from closures.
# If you are not comfortable with closures, you can assume it’s ok,
# or read: https://stackoverflow.com/questions/13857/can-you-explain-closures-as-they-relate-to-python
print("I am the decorator. Somehow you passed me arguments: {0}, {1}".format(decorator_arg1, decorator_arg2))
# Don't confuse decorator arguments and function arguments!
def wrapped(function_arg1, function_arg2) :
print("I am the wrapper around the decorated function.\n"
"I can access all the variables\n"
"\t- from the decorator: {0} {1}\n"
"\t- from the function call: {2} {3}\n"
"Then I can pass them to the decorated function"
.format(decorator_arg1, decorator_arg2,
function_arg1, function_arg2))
return func(function_arg1, function_arg2)
return wrapped
return my_decorator
#decorator_maker_with_arguments("Leonard", "Sheldon")
def decorated_function_with_arguments(function_arg1, function_arg2):
print("I am the decorated function and only knows about my arguments: {0}"
" {1}".format(function_arg1, function_arg2))
decorated_function_with_arguments("Rajesh", "Howard")
#outputs:
#I make decorators! And I accept arguments: Leonard Sheldon
#I am the decorator. Somehow you passed me arguments: Leonard Sheldon
#I am the wrapper around the decorated function.
#I can access all the variables
# - from the decorator: Leonard Sheldon
# - from the function call: Rajesh Howard
#Then I can pass them to the decorated function
#I am the decorated function and only knows about my arguments: Rajesh Howard
Here it is: a decorator with arguments. Arguments can be set as variable:
c1 = "Penny"
c2 = "Leslie"
#decorator_maker_with_arguments("Leonard", c1)
def decorated_function_with_arguments(function_arg1, function_arg2):
print("I am the decorated function and only knows about my arguments:"
" {0} {1}".format(function_arg1, function_arg2))
decorated_function_with_arguments(c2, "Howard")
#outputs:
#I make decorators! And I accept arguments: Leonard Penny
#I am the decorator. Somehow you passed me arguments: Leonard Penny
#I am the wrapper around the decorated function.
#I can access all the variables
# - from the decorator: Leonard Penny
# - from the function call: Leslie Howard
#Then I can pass them to the decorated function
#I am the decorated function and only know about my arguments: Leslie Howard
As you can see, you can pass arguments to the decorator like any function using this trick. You can even use *args, **kwargs if you wish. But remember decorators are called only once. Just when Python imports the script. You can't dynamically set the arguments afterwards. When you do "import x", the function is already decorated, so you can't
change anything.
Let’s practice: decorating a decorator
Okay, as a bonus, I'll give you a snippet to make any decorator accept generically any argument. After all, in order to accept arguments, we created our decorator using another function.
We wrapped the decorator.
Anything else we saw recently that wrapped function?
Oh yes, decorators!
Let’s have some fun and write a decorator for the decorators:
def decorator_with_args(decorator_to_enhance):
"""
This function is supposed to be used as a decorator.
It must decorate an other function, that is intended to be used as a decorator.
Take a cup of coffee.
It will allow any decorator to accept an arbitrary number of arguments,
saving you the headache to remember how to do that every time.
"""
# We use the same trick we did to pass arguments
def decorator_maker(*args, **kwargs):
# We create on the fly a decorator that accepts only a function
# but keeps the passed arguments from the maker.
def decorator_wrapper(func):
# We return the result of the original decorator, which, after all,
# IS JUST AN ORDINARY FUNCTION (which returns a function).
# Only pitfall: the decorator must have this specific signature or it won't work:
return decorator_to_enhance(func, *args, **kwargs)
return decorator_wrapper
return decorator_maker
It can be used as follows:
# You create the function you will use as a decorator. And stick a decorator on it :-)
# Don't forget, the signature is "decorator(func, *args, **kwargs)"
#decorator_with_args
def decorated_decorator(func, *args, **kwargs):
def wrapper(function_arg1, function_arg2):
print("Decorated with {0} {1}".format(args, kwargs))
return func(function_arg1, function_arg2)
return wrapper
# Then you decorate the functions you wish with your brand new decorated decorator.
#decorated_decorator(42, 404, 1024)
def decorated_function(function_arg1, function_arg2):
print("Hello {0} {1}".format(function_arg1, function_arg2))
decorated_function("Universe and", "everything")
#outputs:
#Decorated with (42, 404, 1024) {}
#Hello Universe and everything
# Whoooot!
I know, the last time you had this feeling, it was after listening a guy saying: "before understanding recursion, you must first understand recursion". But now, don't you feel good about mastering this?
Best practices: decorators
Decorators were introduced in Python 2.4, so be sure your code will be run on >= 2.4.
Decorators slow down the function call. Keep that in mind.
You cannot un-decorate a function. (There are hacks to create decorators that can be removed, but nobody uses them.) So once a function is decorated, it’s decorated for all the code.
Decorators wrap functions, which can make them hard to debug. (This gets better from Python >= 2.5; see below.)
The functools module was introduced in Python 2.5. It includes the function functools.wraps(), which copies the name, module, and docstring of the decorated function to its wrapper.
(Fun fact: functools.wraps() is a decorator! ☺)
# For debugging, the stacktrace prints you the function __name__
def foo():
print("foo")
print(foo.__name__)
#outputs: foo
# With a decorator, it gets messy
def bar(func):
def wrapper():
print("bar")
return func()
return wrapper
#bar
def foo():
print("foo")
print(foo.__name__)
#outputs: wrapper
# "functools" can help for that
import functools
def bar(func):
# We say that "wrapper", is wrapping "func"
# and the magic begins
#functools.wraps(func)
def wrapper():
print("bar")
return func()
return wrapper
#bar
def foo():
print("foo")
print(foo.__name__)
#outputs: foo
How can the decorators be useful?
Now the big question: What can I use decorators for?
Seem cool and powerful, but a practical example would be great. Well, there are 1000 possibilities. Classic uses are extending a function behavior from an external lib (you can't modify it), or for debugging (you don't want to modify it because it’s temporary).
You can use them to extend several functions in a DRY’s way, like so:
def benchmark(func):
"""
A decorator that prints the time a function takes
to execute.
"""
import time
def wrapper(*args, **kwargs):
t = time.clock()
res = func(*args, **kwargs)
print("{0} {1}".format(func.__name__, time.clock()-t))
return res
return wrapper
def logging(func):
"""
A decorator that logs the activity of the script.
(it actually just prints it, but it could be logging!)
"""
def wrapper(*args, **kwargs):
res = func(*args, **kwargs)
print("{0} {1} {2}".format(func.__name__, args, kwargs))
return res
return wrapper
def counter(func):
"""
A decorator that counts and prints the number of times a function has been executed
"""
def wrapper(*args, **kwargs):
wrapper.count = wrapper.count + 1
res = func(*args, **kwargs)
print("{0} has been used: {1}x".format(func.__name__, wrapper.count))
return res
wrapper.count = 0
return wrapper
#counter
#benchmark
#logging
def reverse_string(string):
return str(reversed(string))
print(reverse_string("Able was I ere I saw Elba"))
print(reverse_string("A man, a plan, a canoe, pasta, heros, rajahs, a coloratura, maps, snipe, percale, macaroni, a gag, a banana bag, a tan, a tag, a banana bag again (or a camel), a crepe, pins, Spam, a rut, a Rolo, cash, a jar, sore hats, a peon, a canal: Panama!"))
#outputs:
#reverse_string ('Able was I ere I saw Elba',) {}
#wrapper 0.0
#wrapper has been used: 1x
#ablE was I ere I saw elbA
#reverse_string ('A man, a plan, a canoe, pasta, heros, rajahs, a coloratura, maps, snipe, percale, macaroni, a gag, a banana bag, a tan, a tag, a banana bag again (or a camel), a crepe, pins, Spam, a rut, a Rolo, cash, a jar, sore hats, a peon, a canal: Panama!',) {}
#wrapper 0.0
#wrapper has been used: 2x
#!amanaP :lanac a ,noep a ,stah eros ,raj a ,hsac ,oloR a ,tur a ,mapS ,snip ,eperc a ,)lemac a ro( niaga gab ananab a ,gat a ,nat a ,gab ananab a ,gag a ,inoracam ,elacrep ,epins ,spam ,arutaroloc a ,shajar ,soreh ,atsap ,eonac a ,nalp a ,nam A
Of course the good thing with decorators is that you can use them right away on almost anything without rewriting. DRY, I said:
#counter
#benchmark
#logging
def get_random_futurama_quote():
from urllib import urlopen
result = urlopen("http://subfusion.net/cgi-bin/quote.pl?quote=futurama").read()
try:
value = result.split("<br><b><hr><br>")[1].split("<br><br><hr>")[0]
return value.strip()
except:
return "No, I'm ... doesn't!"
print(get_random_futurama_quote())
print(get_random_futurama_quote())
#outputs:
#get_random_futurama_quote () {}
#wrapper 0.02
#wrapper has been used: 1x
#The laws of science be a harsh mistress.
#get_random_futurama_quote () {}
#wrapper 0.01
#wrapper has been used: 2x
#Curse you, merciful Poseidon!
Python itself provides several decorators: property, staticmethod, etc.
Django uses decorators to manage caching and view permissions.
Twisted to fake inlining asynchronous functions calls.
This really is a large playground.
Check out the documentation to see how decorators work. Here is what you asked for:
from functools import wraps
def makebold(fn):
#wraps(fn)
def wrapper(*args, **kwargs):
return "<b>" + fn(*args, **kwargs) + "</b>"
return wrapper
def makeitalic(fn):
#wraps(fn)
def wrapper(*args, **kwargs):
return "<i>" + fn(*args, **kwargs) + "</i>"
return wrapper
#makebold
#makeitalic
def hello():
return "hello world"
#makebold
#makeitalic
def log(s):
return s
print hello() # returns "<b><i>hello world</i></b>"
print hello.__name__ # with functools.wraps() this returns "hello"
print log('hello') # returns "<b><i>hello</i></b>"
Alternatively, you could write a factory function which return a decorator which wraps the return value of the decorated function in a tag passed to the factory function. For example:
from functools import wraps
def wrap_in_tag(tag):
def factory(func):
#wraps(func)
def decorator():
return '<%(tag)s>%(rv)s</%(tag)s>' % (
{'tag': tag, 'rv': func()})
return decorator
return factory
This enables you to write:
#wrap_in_tag('b')
#wrap_in_tag('i')
def say():
return 'hello'
or
makebold = wrap_in_tag('b')
makeitalic = wrap_in_tag('i')
#makebold
#makeitalic
def say():
return 'hello'
Personally I would have written the decorator somewhat differently:
from functools import wraps
def wrap_in_tag(tag):
def factory(func):
#wraps(func)
def decorator(val):
return func('<%(tag)s>%(val)s</%(tag)s>' %
{'tag': tag, 'val': val})
return decorator
return factory
which would yield:
#wrap_in_tag('b')
#wrap_in_tag('i')
def say(val):
return val
say('hello')
Don't forget the construction for which decorator syntax is a shorthand:
say = wrap_in_tag('b')(wrap_in_tag('i')(say)))
Decorators are just syntactical sugar.
This
#decorator
def func():
...
expands to
def func():
...
func = decorator(func)
And of course you can return lambdas as well from a decorator function:
def makebold(f):
return lambda: "<b>" + f() + "</b>"
def makeitalic(f):
return lambda: "<i>" + f() + "</i>"
#makebold
#makeitalic
def say():
return "Hello"
print say()
Python decorators add extra functionality to another function
An italics decorator could be like
def makeitalic(fn):
def newFunc():
return "<i>" + fn() + "</i>"
return newFunc
Note that a function is defined inside a function.
What it basically does is replace a function with the newly defined one. For example, I have this class
class foo:
def bar(self):
print "hi"
def foobar(self):
print "hi again"
Now say, I want both functions to print "---" after and before they are done.
I could add a print "---" before and after each print statement.
But because I don't like repeating myself, I will make a decorator
def addDashes(fn): # notice it takes a function as an argument
def newFunction(self): # define a new function
print "---"
fn(self) # call the original function
print "---"
return newFunction
# Return the newly defined function - it will "replace" the original
So now I can change my class to
class foo:
#addDashes
def bar(self):
print "hi"
#addDashes
def foobar(self):
print "hi again"
For more on decorators, check
http://www.ibm.com/developerworks/linux/library/l-cpdecor.html
You could make two separate decorators that do what you want as illustrated directly below. Note the use of *args, **kwargs in the declaration of the wrapped() function which supports the decorated function having multiple arguments (which isn't really necessary for the example say() function, but is included for generality).
For similar reasons, the functools.wraps decorator is used to change the meta attributes of the wrapped function to be those of the one being decorated. This makes error messages and embedded function documentation (func.__doc__) be those of the decorated function instead of wrapped()'s.
from functools import wraps
def makebold(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return "<b>" + fn(*args, **kwargs) + "</b>"
return wrapped
def makeitalic(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return "<i>" + fn(*args, **kwargs) + "</i>"
return wrapped
#makebold
#makeitalic
def say():
return 'Hello'
print(say()) # -> <b><i>Hello</i></b>
Refinements
As you can see there's a lot of duplicate code in these two decorators. Given this similarity it would be better for you to instead make a generic one that was actually a decorator factory—in other words, a decorator function that makes other decorators. That way there would be less code repetition—and allow the DRY principle to be followed.
def html_deco(tag):
def decorator(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return '<%s>' % tag + fn(*args, **kwargs) + '</%s>' % tag
return wrapped
return decorator
#html_deco('b')
#html_deco('i')
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
To make the code more readable, you can assign a more descriptive name to the factory-generated decorators:
makebold = html_deco('b')
makeitalic = html_deco('i')
#makebold
#makeitalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
or even combine them like this:
makebolditalic = lambda fn: makebold(makeitalic(fn))
#makebolditalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
Efficiency
While the above examples do all work, the code generated involves a fair amount of overhead in the form of extraneous function calls when multiple decorators are applied at once. This may not matter, depending the exact usage (which might be I/O-bound, for instance).
If speed of the decorated function is important, the overhead can be kept to a single extra function call by writing a slightly different decorator factory-function which implements adding all the tags at once, so it can generate code that avoids the addtional function calls incurred by using separate decorators for each tag.
This requires more code in the decorator itself, but this only runs when it's being applied to function definitions, not later when they themselves are called. This also applies when creating more readable names by using lambda functions as previously illustrated. Sample:
def multi_html_deco(*tags):
start_tags, end_tags = [], []
for tag in tags:
start_tags.append('<%s>' % tag)
end_tags.append('</%s>' % tag)
start_tags = ''.join(start_tags)
end_tags = ''.join(reversed(end_tags))
def decorator(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return start_tags + fn(*args, **kwargs) + end_tags
return wrapped
return decorator
makebolditalic = multi_html_deco('b', 'i')
#makebolditalic
def greet(whom=''):
return 'Hello' + (' ' + whom) if whom else ''
print(greet('world')) # -> <b><i>Hello world</i></b>
Another way of doing the same thing:
class bol(object):
def __init__(self, f):
self.f = f
def __call__(self):
return "<b>{}</b>".format(self.f())
class ita(object):
def __init__(self, f):
self.f = f
def __call__(self):
return "<i>{}</i>".format(self.f())
#bol
#ita
def sayhi():
return 'hi'
Or, more flexibly:
class sty(object):
def __init__(self, tag):
self.tag = tag
def __call__(self, f):
def newf():
return "<{tag}>{res}</{tag}>".format(res=f(), tag=self.tag)
return newf
#sty('b')
#sty('i')
def sayhi():
return 'hi'
How can I make two decorators in Python that would do the following?
You want the following function, when called:
#makebold
#makeitalic
def say():
return "Hello"
To return:
<b><i>Hello</i></b>
Simple solution
To most simply do this, make decorators that return lambdas (anonymous functions) that close over the function (closures) and call it:
def makeitalic(fn):
return lambda: '<i>' + fn() + '</i>'
def makebold(fn):
return lambda: '<b>' + fn() + '</b>'
Now use them as desired:
#makebold
#makeitalic
def say():
return 'Hello'
and now:
>>> say()
'<b><i>Hello</i></b>'
Problems with the simple solution
But we seem to have nearly lost the original function.
>>> say
<function <lambda> at 0x4ACFA070>
To find it, we'd need to dig into the closure of each lambda, one of which is buried in the other:
>>> say.__closure__[0].cell_contents
<function <lambda> at 0x4ACFA030>
>>> say.__closure__[0].cell_contents.__closure__[0].cell_contents
<function say at 0x4ACFA730>
So if we put documentation on this function, or wanted to be able to decorate functions that take more than one argument, or we just wanted to know what function we were looking at in a debugging session, we need to do a bit more with our wrapper.
Full featured solution - overcoming most of these problems
We have the decorator wraps from the functools module in the standard library!
from functools import wraps
def makeitalic(fn):
# must assign/update attributes from wrapped function to wrapper
# __module__, __name__, __doc__, and __dict__ by default
#wraps(fn) # explicitly give function whose attributes it is applying
def wrapped(*args, **kwargs):
return '<i>' + fn(*args, **kwargs) + '</i>'
return wrapped
def makebold(fn):
#wraps(fn)
def wrapped(*args, **kwargs):
return '<b>' + fn(*args, **kwargs) + '</b>'
return wrapped
It is unfortunate that there's still some boilerplate, but this is about as simple as we can make it.
In Python 3, you also get __qualname__ and __annotations__ assigned by default.
So now:
#makebold
#makeitalic
def say():
"""This function returns a bolded, italicized 'hello'"""
return 'Hello'
And now:
>>> say
<function say at 0x14BB8F70>
>>> help(say)
Help on function say in module __main__:
say(*args, **kwargs)
This function returns a bolded, italicized 'hello'
Conclusion
So we see that wraps makes the wrapping function do almost everything except tell us exactly what the function takes as arguments.
There are other modules that may attempt to tackle the problem, but the solution is not yet in the standard library.
A decorator takes the function definition and creates a new function that executes this function and transforms the result.
#deco
def do():
...
is equivalent to:
do = deco(do)
Example:
def deco(func):
def inner(letter):
return func(letter).upper() #upper
return inner
This
#deco
def do(number):
return chr(number) # number to letter
is equivalent to this
def do2(number):
return chr(number)
do2 = deco(do2)
65 <=> 'a'
print(do(65))
print(do2(65))
>>> B
>>> B
To understand the decorator, it is important to notice, that decorator created a new function do which is inner that executes function and transforms the result.
This answer has long been answered, but I thought I would share my Decorator class which makes writing new decorators easy and compact.
from abc import ABCMeta, abstractclassmethod
class Decorator(metaclass=ABCMeta):
""" Acts as a base class for all decorators """
def __init__(self):
self.method = None
def __call__(self, method):
self.method = method
return self.call
#abstractclassmethod
def call(self, *args, **kwargs):
return self.method(*args, **kwargs)
For one I think this makes the behavior of decorators very clear, but it also makes it easy to define new decorators very concisely. For the example listed above, you could then solve it as:
class MakeBold(Decorator):
def call():
return "<b>" + self.method() + "</b>"
class MakeItalic(Decorator):
def call():
return "<i>" + self.method() + "</i>"
#MakeBold()
#MakeItalic()
def say():
return "Hello"
You could also use it to do more complex tasks, like for instance a decorator which automatically makes the function get applied recursively to all arguments in an iterator:
class ApplyRecursive(Decorator):
def __init__(self, *types):
super().__init__()
if not len(types):
types = (dict, list, tuple, set)
self._types = types
def call(self, arg):
if dict in self._types and isinstance(arg, dict):
return {key: self.call(value) for key, value in arg.items()}
if set in self._types and isinstance(arg, set):
return set(self.call(value) for value in arg)
if tuple in self._types and isinstance(arg, tuple):
return tuple(self.call(value) for value in arg)
if list in self._types and isinstance(arg, list):
return list(self.call(value) for value in arg)
return self.method(arg)
#ApplyRecursive(tuple, set, dict)
def double(arg):
return 2*arg
print(double(1))
print(double({'a': 1, 'b': 2}))
print(double({1, 2, 3}))
print(double((1, 2, 3, 4)))
print(double([1, 2, 3, 4, 5]))
Which prints:
2
{'a': 2, 'b': 4}
{2, 4, 6}
(2, 4, 6, 8)
[1, 2, 3, 4, 5, 1, 2, 3, 4, 5]
Notice that this example didn't include the list type in the instantiation of the decorator, so in the final print statement the method gets applied to the list itself, not the elements of the list.
#decorator.py
def makeHtmlTag(tag, *args, **kwds):
def real_decorator(fn):
css_class = " class='{0}'".format(kwds["css_class"]) \
if "css_class" in kwds else ""
def wrapped(*args, **kwds):
return "<"+tag+css_class+">" + fn(*args, **kwds) + "</"+tag+">"
return wrapped
# return decorator dont call it
return real_decorator
#makeHtmlTag(tag="b", css_class="bold_css")
#makeHtmlTag(tag="i", css_class="italic_css")
def hello():
return "hello world"
print hello()
You can also write decorator in Class
#class.py
class makeHtmlTagClass(object):
def __init__(self, tag, css_class=""):
self._tag = tag
self._css_class = " class='{0}'".format(css_class) \
if css_class != "" else ""
def __call__(self, fn):
def wrapped(*args, **kwargs):
return "<" + self._tag + self._css_class+">" \
+ fn(*args, **kwargs) + "</" + self._tag + ">"
return wrapped
#makeHtmlTagClass(tag="b", css_class="bold_css")
#makeHtmlTagClass(tag="i", css_class="italic_css")
def hello(name):
return "Hello, {}".format(name)
print hello("Your name")
Here is a simple example of chaining decorators. Note the last line - it shows what is going on under the covers.
############################################################
#
# decorators
#
############################################################
def bold(fn):
def decorate():
# surround with bold tags before calling original function
return "<b>" + fn() + "</b>"
return decorate
def uk(fn):
def decorate():
# swap month and day
fields = fn().split('/')
date = fields[1] + "/" + fields[0] + "/" + fields[2]
return date
return decorate
import datetime
def getDate():
now = datetime.datetime.now()
return "%d/%d/%d" % (now.day, now.month, now.year)
#bold
def getBoldDate():
return getDate()
#uk
def getUkDate():
return getDate()
#bold
#uk
def getBoldUkDate():
return getDate()
print getDate()
print getBoldDate()
print getUkDate()
print getBoldUkDate()
# what is happening under the covers
print bold(uk(getDate))()
The output looks like:
17/6/2013
<b>17/6/2013</b>
6/17/2013
<b>6/17/2013</b>
<b>6/17/2013</b>
Speaking of the counter example - as given above, the counter will be shared between all functions that use the decorator:
def counter(func):
def wrapped(*args, **kws):
print 'Called #%i' % wrapped.count
wrapped.count += 1
return func(*args, **kws)
wrapped.count = 0
return wrapped
That way, your decorator can be reused for different functions (or used to decorate the same function multiple times: func_counter1 = counter(func); func_counter2 = counter(func)), and the counter variable will remain private to each.
Decorate functions with different number of arguments:
def frame_tests(fn):
def wrapper(*args):
print "\nStart: %s" %(fn.__name__)
fn(*args)
print "End: %s\n" %(fn.__name__)
return wrapper
#frame_tests
def test_fn1():
print "This is only a test!"
#frame_tests
def test_fn2(s1):
print "This is only a test! %s" %(s1)
#frame_tests
def test_fn3(s1, s2):
print "This is only a test! %s %s" %(s1, s2)
if __name__ == "__main__":
test_fn1()
test_fn2('OK!')
test_fn3('OK!', 'Just a test!')
Result:
Start: test_fn1
This is only a test!
End: test_fn1
Start: test_fn2
This is only a test! OK!
End: test_fn2
Start: test_fn3
This is only a test! OK! Just a test!
End: test_fn3
Paolo Bergantino's answer has the great advantage of only using the stdlib, and works for this simple example where there are no decorator arguments nor decorated function arguments.
However it has 3 major limitations if you want to tackle more general cases:
as already noted in several answers, you can not easily modify the code to add optional decorator arguments. For example creating a makestyle(style='bold') decorator is non-trivial.
besides, wrappers created with #functools.wraps do not preserve the signature, so if bad arguments are provided they will start executing, and might raise a different kind of error than the usual TypeError.
finally, it is quite difficult in wrappers created with #functools.wraps to access an argument based on its name. Indeed the argument can appear in *args, in **kwargs, or may not appear at all (if it is optional).
I wrote decopatch to solve the first issue, and wrote makefun.wraps to solve the other two. Note that makefun leverages the same trick than the famous decorator lib.
This is how you would create a decorator with arguments, returning truly signature-preserving wrappers:
from decopatch import function_decorator, DECORATED
from makefun import wraps
#function_decorator
def makestyle(st='b', fn=DECORATED):
open_tag = "<%s>" % st
close_tag = "</%s>" % st
#wraps(fn)
def wrapped(*args, **kwargs):
return open_tag + fn(*args, **kwargs) + close_tag
return wrapped
decopatch provides you with two other development styles that hide or show the various python concepts, depending on your preferences. The most compact style is the following:
from decopatch import function_decorator, WRAPPED, F_ARGS, F_KWARGS
#function_decorator
def makestyle(st='b', fn=WRAPPED, f_args=F_ARGS, f_kwargs=F_KWARGS):
open_tag = "<%s>" % st
close_tag = "</%s>" % st
return open_tag + fn(*f_args, **f_kwargs) + close_tag
In both cases you can check that the decorator works as expected:
#makestyle
#makestyle('i')
def hello(who):
return "hello %s" % who
assert hello('world') == '<b><i>hello world</i></b>'
Please refer to the documentation for details.
I add a case when you need to add custom parameters in decorator, pass it to final function and then work it with.
the very decorators:
def jwt_or_redirect(fn):
#wraps(fn)
def decorator(*args, **kwargs):
...
return fn(*args, **kwargs)
return decorator
def jwt_refresh(fn):
#wraps(fn)
def decorator(*args, **kwargs):
...
new_kwargs = {'refreshed_jwt': 'xxxxx-xxxxxx'}
new_kwargs.update(kwargs)
return fn(*args, **new_kwargs)
return decorator
and the final function:
#app.route('/')
#jwt_or_redirect
#jwt_refresh
def home_page(*args, **kwargs):
return kwargs['refreched_jwt']
Yet another example of nested decorators for plotting an image:
import matplotlib.pylab as plt
def remove_axis(func):
def inner(img, alpha):
plt.axis('off')
func(img, alpha)
return inner
def plot_gray(func):
def inner(img, alpha):
plt.gray()
func(img, alpha)
return inner
#remove_axis
#plot_gray
def plot_image(img, alpha):
plt.imshow(img, alpha=alpha)
plt.show()
Now, let's show a color image first without axis labels using the nested decorators:
plot_image(plt.imread('lena_color.jpg'), 0.4)
Next, let's show a gray scale image without axis labels using the nested decorators remove_axis and plot_gray (we need to cmap='gray', otherwise the default colormap is viridis, so a grayscale image is by default not displayed in black and white shades, unless explicitly specified)
plot_image(plt.imread('lena_bw.jpg'), 0.8)
The above function call reduces down to the following nested call
remove_axis(plot_gray(plot_image))(img, alpha)
With make_bold() and make_italic() below:
def make_bold(func):
def core(*args, **kwargs):
result = func(*args, **kwargs)
return "<b>" + result + "</b>"
return core
def make_italic(func):
def core(*args, **kwargs):
result = func(*args, **kwargs)
return "<i>" + result + "</i>"
return core
You can use them as decorators with say() as shown below:
#make_bold
#make_italic
def say():
return "Hello"
print(say())
Output:
<b><i>Hello</i></b>
And of course, you can directly use make_bold() and make_italic() without decorators as shown below:
def say():
return "Hello"
f1 = make_italic(say)
f2 = make_bold(f1)
result = f2()
print(result)
In short:
def say():
return "Hello"
result = make_bold(make_italic(say))()
print(result)
Output:
<b><i>Hello</i></b>
Consider the following decorator, note that we are returning the wrapper() function as an object
def make_bold(func):
def wrapper():
return '<b>'+func()+'</b>'
return wrapper
So This
#make_bold
def say():
return "Hello"
evaluates to this
x = make_bold(say)
Note that x is not the say() but the wrapper object that calls say() internally. That is how decorator works. It always returns the wrapper object which calls the actual function.
In case of chaining this
#make_italic
#make_bold
def say():
return "Hello"
gets converted to this
x = make_bold(say)
y = make_italic(x)
Below is the complete code
def make_italic(func):
def wrapper():
return '<i>'+func()+'</i>'
return wrapper
def make_bold(func):
def wrapper():
return '<b>'+func()+'</b>'
return wrapper
#make_italic
#make_bold
def say():
return "Hello"
if __name__ == '__main__':
# x = make_bold(say) When you wrap say with make_bold decorator
# y = make_italic(x) When you also add make_italic as part of chaining
# print(y())
print(say())
The above code will return
<i><b>Hello</b></i>
Hope this helps

How to print graph call as tree?

For instanse, I have the following code snippet:
def func1(num):
print(num)
def func2(num):
func1(num)
def func3(num):
func2(num)
func1(num)
def begin():
pass
def print_graph():
pass
def main():
begin()
func3(3)
print_graph()
Is there any simple way to print something like that:
func3(1)
func2(1)
func1(1)
func1(1)
I believe, that I have to use globals(), but I don't know, what I do next. It is some sort of study task, therefore I cant use any libraries.
I can go one better than #jme. Here's a version of his decorator that indents and dedents according to your location in the call stack:
import functools
# a factory for decorators
def create_tracer(tab_width):
indentation_level = 0
def decorator(f): # a decorator is a function which takes a function and returns a function
#functools.wraps(f)
def wrapper(*args): # we wish to extend the function that was passed to the decorator, so we define a wrapper function to return
nonlocal indentation_level # python 3 only, sorry
msg = " " * indentation_level + "{}({})".format(f.__name__, ", ".join([str(a) for a in args]))
print(msg)
indentation_level += tab_width # mutate the closure so the next function that is called gets a deeper indentation level
result = f(*args)
indentation_level -= tab_width
return result
return wrapper
return decorator
tracer = create_tracer(4) # create the decorator itself
#tracer
def f1():
x = f2(5)
return f3(x)
#tracer
def f2(x):
return f3(2)*x
#tracer
def f3(x):
return 4*x
f1()
Output:
f1()
f2(5)
f3(2)
f3(40)
The nonlocal statement allows us to mutate the indentation_level in the outer scope. Upon entering a function, we increase the indentation level so that the next print gets indented further. Then upon exiting we decrease it again.
This is called decorator syntax. It's purely 'syntactic sugar'; the transformation into equivalent code without # is very simple.
#d
def f():
pass
is just the same as:
def f():
pass
f = d(f)
As you can see, # simply uses the decorator to process the decorated function in some way, and replaces the original function with the result, just like in #jme's answer. It's like Invasion of the Body Snatchers; we are replacing f with something that looks similar to f but behaves differently.
If you're stuck on Python 2, you can simulate the nonlocal statement by using a class with an instance variable. This might make a bit more sense to you, if you've never used decorators before.
# a class which acts like a decorator
class Tracer(object):
def __init__(self, tab_width):
self.tab_width = tab_width
self.indentation_level = 0
# make the class act like a function (which takes a function and returns a function)
def __call__(self, f):
#functools.wraps(f)
def wrapper(*args):
msg = " " * self.indentation_level + "{}({})".format(f.__name__, ", ".join([str(a) for a in args]))
print msg
self.indentation_level += self.tab_width
result = f(*args)
self.indentation_level -= self.tab_width
return result
return wrapper
tracer = Tracer(4)
#tracer
def f1():
# etc, as above
You mentioned that you're not allowed to change the existing functions. You can retro-fit the decorator by messing around with globals() (though this generally isn't a good idea unless you really need to do it):
for name, val in globals().items(): # use iteritems() in Python 2
if name.contains('f'): # look for the functions we wish to trace
wrapped_func = tracer(val)
globals()[name] = wrapped_func # overwrite the function with our wrapped version
If you don't have access to the source of the module in question, you can achieve something very similar by inspecting the imported module and mutating the items it exports.
The sky's the limit with this approach. You could build this into an industrial-strength code analysis tool by storing the calls in some sort of graph data structure, instead of simply indenting and printing. You could then query your data to answer questions like "which functions in this module are called the most?" or "which functions are the slowest?". In fact, that's a great idea for a library...
If you don't want to use modify code, you can always use sys.settrace. Here is a simple sample:
import sys
import inspect
class Tracer(object):
def __init__(self):
self._indentation_level = 0
#property
def indentation_level(self):
return self._indentation_level
#indentation_level.setter
def indentation_level(self, value):
self._indentation_level = max(0, value)
def __enter__(self):
sys.settrace(self)
def __exit__(self, exc_type, exc_value, traceback):
sys.settrace(None)
def __call__(self, frame, event, args):
frameinfo = inspect.getframeinfo(frame)
filename = frameinfo.filename
# Use `in` instead of comparing because you need to cover for `.pyc` files as well.
if filename in __file__:
return None
if event == 'return':
self.indentation_level -= 1
elif event == 'call':
print "{}{}{}".format(" " * self.indentation_level,
frameinfo.function,
inspect.formatargvalues(*inspect.getargvalues(frame)))
self.indentation_level += 1
else:
return None
return self
Usage:
from tracer import Tracer
def func1(num):
pass
def func2(num):
func1(num)
def func3(num):
func2(num)
func1(num)
def main():
with Tracer():
func3(1)
And results:
func3(num=1)
func2(num=1)
func1(num=1)
func1(num=1)
How about using decorators to print a function's name when it is called? Something like this:
from functools import wraps
def print_on_entry(fn):
#wraps(fn)
def wrapper(*args):
print "{}({})".format(fn.func_name, ", ".join(str(a) for a in args))
fn(*args)
return wrapper
Then you can wrap each of your functions up:
func1 = print_on_entry(func1)
func2 = print_on_entry(func2)
func3 = print_on_entry(func3)
So that:
>>> func3(1)
func3(1)
func2(1)
func1(1)
1
func1(1)
1
Of course there are a lot of assumptions in the above code -- the arguments can be converted to strings, for example -- but you get the picture.

A more elegant way for this python decorator

Basically I want a decorator with an argument list that contains more than just a function to be able to be called from both the #- and regular forms. I've "designed" a quick workaround, but it's ugly and executes a function in #-form immediately, which is an undesired side-effect (that's due to return body_two() of course).
def status_display_with_comment(comment, closure = None):
def body_one(function = None):
def body_two():
print(comment)
#an ugly workaround to be able to run both the #- and regular forms
if function != None:
print("Entering", function.__name__)
function()
print("Exited", function.__name__)
elif closure != None:
print("Entering", closure.__name__)
closure()
print("Exited", closure.__name__)
return body_two()
return body_one
def a_function():
print('a_function executes')
#status_display_with_comment(comment = 'some comment')
def a_function_with_comment():
print('a_function_with_comment executes')
a_function_status_display_with_comment = status_display_with_comment(closure = a_function, comment = 'a comment')
a_function_status_display_with_comment()
Thanks in advance.
P.S.: I have to wrap my head around that whole closure thing. Which is fun considering it could be done recursively like in Scheme (a long time ago for me).
You want a function that returns a decorator:
def status_display_with_comment(comment):
def decorator(function):
def wrapper():
print(comment)
print("Entering", function.__name__)
result = function()
print("Exited", function.__name__)
return result
return wrapper
return decorator
def a_function():
print('a_function executes')
a_function_SD_WC = status_display_with_comment('a comment')(a_function)
a_function_SD_WC()
Also works:
#status_display_with_comment('a comment')
def a_function():
print('a_function executes')
a_function()
The regular, direct decorator already returns a closure:
def a_normal_decorator(function):
def wrapper():
return function()
return wrapper
wrapper here is a closure since it has to keep function around even after a_normal_decorator finished executing.
For reference, this is how an idiomatic decorator is usually written:
import functools
def decorator(function):
#functools.wraps(function)
def wrapper(*a, **kw):
return function(*a, **kw)
return wrapper
That is, it passes arguments to the wrapped function and doesn't throw away its return value.
functools.wraps copies from the function being wrapped to the wrapper function __name__, __module__, __annotations__ and __doc__, the documentation string.

python, confused in decorate and closure

I have some test code:
def num(num):
def deco(func):
def wrap(*args, **kwargs):
inputed_num = num
return func(*args, **kwargs)
return wrap
return deco
#num(5)
def test(a):
return a + inputed_num
print test(1)
when run this code, I got an error shows that 'inputed_num' is not defined
My question is:
In wrap function, is there not a closure that func can got 'inputed_num' ?
Anyway, If not, how should I do to got my aim: Initialize some value, and use this value directly in the main function.
Thinks.
No, there isn't a closure like that. Functions can close over variables that are present in the surrounding lexical context, not in the calling context. In other words, if you actually write one function in another, then the inner one can have access to variables in the outer one:
def f():
g = 2
def f2():
print g
f2()
But functions never have access to variables inside the function that called them.
In general there isn't a way to do what you want, viz., set an arbitrary variable in a function from outside the function. The closest thing is you could use a global inputed_num in your decorator to assign inputed_num as a global variable. Then test would access the global value.
def num(num):
def deco(func):
def wrap(*args, **kwargs):
global outsider
outsider = num
return func(*args, **kwargs)
return wrap
return deco
#num(5)
def test(a):
print a+outsider
>>> test(2)
7
But of course the variable setting is then global, so multiple concurrent uses (e.g., recursion) wouldn't work. (Just for fun, you can also see here for a very arcane way to do this, but it is way too crazy to be useful in a real-world context.)
My question is: In wrap function, is there not a closure that func can got 'inputed_num' ?
Sorry, that's not the way decorators work. They get applied after the function is initially defined. By then, it's too late.
When you write:
#num(5)
def test(a):
return a + inputed_num
That is the equivalent of:
def test(a):
return a + inputed_num
test = num(5)(test) # note that num(5) is called after test() is defined.
To achieve your goal, let inputed_num be the first argument to test. Then, have your decorator pass in that argument:
def num(num):
def deco(func):
def wrap(*args, **kwargs):
inputed_num = num
return func(inputed_num, *args, **kwargs) # this line changed
return wrap
return deco
#num(5)
def test(inputed_num, a): # this line changed
return a + inputed_num
#num(6)
def test2(inputed_num, a):
return a + inputed_num
print test(10) # outputs 15
print test2(10) # outputs 16
Hope that clears everything up for you :-)
As #Raymond puts it - decorators are applied after the function is defined. Which means that while compiling the function body itself, Pythn sees the inputed_num variable, and as i it snod a localy defined variable, it generates code to try access it a as a global variable instead.
Which means you can make a work-around for it in your decorator:
Your decorator can set a global variable with the desired name in the function globals() space, and then call the function. It should work reliably in single-threaded code:
def num(num):
def deco(func):
def wrap(*args, **kwargs):
glob = func.func_globals
marker = object()
original_value = glob.get("inputed_num", marker)
glob["inputed_num"] = num
result = func(*args, **kwargs)
if original_value is marker:
del glob["inputed_num"]
else:
glob["inputed_num"] = original_value
return result
return wrap
return deco
#num(5)
def test(a):
return a + inputed_num
and:
>>> print test(1)
6
It's not the way decorator should be used, I think your purpose may be done with this
def outwrapper(n):
def wrapper(func):
def f(*args, **argw):
return n + func(*args, **argw)
return f
return wrapper
#outwrapper(4)
def test(n):
return n
print test(1)

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