Python decorator guide
2016-05-22 21:50
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A guide to Python's function decorators
Python is rich with powerful features and expressive syntax. One of my favorites is decorators. In the context of design patterns, decorators dynamically alter the functionality of a function, method or class without having to directly use subclasses. Thisis ideal when you need to extend the functionality of functions that you don't want to modify. We can implement the decorator pattern anywhere, but Python facilitates the implementation by providing much more expressive features and syntax for that.
In this post I will be discussing Python's function decorators in depth, accompanied by a bunch of examples on the way to clear up the concepts. All examples are in Python 2.7 but the same concepts should apply to Python 3 with some change in the syntax.
Essentially, decorators work as wrappers, modifying the behavior of the code before and after a target function execution, without the need to modify the function itself, augmenting the original functionality, thus decorating it.
What you need to know about functions
Before diving in, there are some prerequisites that should be clear. In Python, functions are first class citizens, they are objects and that means we can do a lot of useful stuff with them.
Assign functions to variables
def greet(name): return "hello "+name greet_someone = greet print greet_someone("John") # Outputs: hello John
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Define functions inside other functions
def greet(name): def get_message(): return "Hello " result = get_message()+name return result print greet("John") # Outputs: Hello John
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Functions can be passed as parameters to other functions
def greet(name): return "Hello " + name def call_func(func): other_name = "John" return func(other_name) print call_func(greet) # Outputs: Hello John
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Functions can return other functions
In other words, functions generating other functions.def compose_greet_func(): def get_message(): return "Hello there!" return get_message greet = compose_greet_func() print greet() # Outputs: Hello there!
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Inner functions have access to the enclosing scope
More commonly known as a closure.A very powerful pattern that we will come across while building decorators. Another thing to note, Python only allows read
access to the outer scopeand not assignment. Notice how we modified the example above to read a "name" argument from the enclosing scope of the inner function and return the new function.
def compose_greet_func(name): def get_message(): return "Hello there "+name+"!" return get_message greet = compose_greet_func("John") print greet() # Outputs: Hello there John!
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Composition of Decorators
Function decorators are simply wrappers to existing functions. Putting the ideas mentioned above together, we can build a decorator. In this example let's consider a function that wraps the string output of another function by p tags.def get_text(name): return "lorem ipsum, {0} dolor sit amet".format(name) def p_decorate(func): def func_wrapper(name): return "<p>{0}</p>".format(func(name)) return func_wrapper my_get_text = p_decorate(get_text) print my_get_text("John") # <p>Outputs lorem ipsum, John dolor sit amet</p>
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That was our first decorator. A function that takes another function as an argument, generates a new function, augmenting the work of the original function, and returning the generated function so we can use it anywhere. To have get_text itself be decorated
by p_decorate, we just have to assign get_text to the result of p_decorate.
get_text = p_decorate(get_text) print get_text("John") # Outputs lorem ipsum, John dolor sit amet
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Another thing to notice is that our decorated function takes a name argument. All what we had to do in the decorator is to let the wrapper of get_text pass that argument.
Python's Decorator Syntax
Python makes creating and using decorators a bit cleaner and nicer for the programmer through some syntacticsugar To decorate get_text we don't have to
get_text = p_decorator(get_text)There is a neat shortcut for that, which is to mention the name of the decorating function before the function to be decorated. The name of the decorator should be perpended with an @ symbol.
def p_decorate(func): def func_wrapper(name): return "<p>{0}</p>".format(func(name)) return func_wrapper @p_decorate def get_text(name): return "lorem ipsum, {0} dolor sit amet".format(name) print get_text("John") # Outputs <p>lorem ipsum, John dolor sit amet</p>
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Now let's consider we wanted to decorate our get_text function by 2 other functions to wrap a div and strong tag around the string output.
def p_decorate(func): def func_wrapper(name): return "<p>{0}</p>".format(func(name)) return func_wrapper def strong_decorate(func): def func_wrapper(name): return "<strong>{0}</strong>".format(func(name)) return func_wrapper def div_decorate(func): def func_wrapper(name): return "<div>{0}</div>".format(func(name)) return func_wrapper
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With the basic approach, decorating get_text would be along the lines of
[code]get_text = div_decorate(p_decorate(strong_decorate(get_text)))
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With Python's decorator syntax, same thing can be achieved with much more expressive power.
@div_decorate @p_decorate @strong_decorate def get_text(name): return "lorem ipsum, {0} dolor sit amet".format(name) print get_text("John") # Outputs <div><p><strong>lorem ipsum, John dolor sit amet</strong></p></div>
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One important thing to notice here is that the order of setting our decorators matters. If the order was different in the example above, the output would have been different.
Decorating Methods
In Python, methods are functions that expect their first parameter to be a reference to the current object. We can build decorators for methods the same way, while taking self intoconsideration in the wrapper function.
def p_decorate(func): def func_wrapper(self): return "<p>{0}</p>".format(func(self)) return func_wrapper class Person(object): def __init__(self): self.name = "John" self.family = "Doe" @p_decorate def get_fullname(self): return self.name+" "+self.family my_person = Person() print my_person.get_fullname()
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A much better approach would be to make our decorator useful for functions and methods alike. This can be done by putting *args
and **kwargs as parameters for the wrapper, then it can accept any arbitrary number of arguments and keyword arguments.
def p_decorate(func): def func_wrapper(*args, **kwargs): return "<p>{0}</p>".format(func(*args, **kwargs)) return func_wrapper class Person(object): def __init__(self): self.name = "John" self.family = "Doe" @p_decorate def get_fullname(self): return self.name+" "+self.family my_person = Person() print my_person.get_fullname()
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Passing arguments to decorators
Looking back at the example before the one above, you can notice how redundant the decorators in the example are. 3 decorators(div_decorate, p_decorate, strong_decorate) each with the same functionality but wrapping the string with different tags. We can definitelydo much better than that. Why not have a more general implementation for one that takes the tag to wrap with as a string? Yes please!
def tags(tag_name): def tags_decorator(func): def func_wrapper(name): return "<{0}>{1}</{0}>".format(tag_name, func(name)) return func_wrapper return tags_decorator @tags("p") def get_text(name): return "Hello "+name print get_text("John") # Outputs <p>Hello John</p>
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It took a bit more work in this case. Decorators expect to receive a function as an argument, that is why we will have to build a function that takes those extra arguments and generate our decorator on the fly. In the example above tags,
is our decorator generator.
Debugging decorated functions
At the end of the day decorators are just wrapping our functions, in case of debugging that can be problematic since the wrapper function does not carry the name, module and docstring of the original function. Based on the example above if we do:print get_text.__name__ # Outputs func_wrapper
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The output was expected to be get_text yet, the attributes
__name__,
__doc__,
and
__module__of get_text got
overridden by those of the wrapper(func_wrapper. Obviously we can re-set them within func_wrapper but Python provides a much nicer way.
Functools to the rescue
Fortunately Python (as of version 2.5) includes the functools modulewhich contains functools.wraps.
Wraps is a decorator for updating the attributes of the wrapping function(func_wrapper) to those of the original function(get_text). This is as simple as decorating func_wrapper by @wraps(func). Here is the updated example:
from functools import wraps def tags(tag_name): def tags_decorator(func): @wraps(func) def func_wrapper(name): return "<{0}>{1}</{0}>".format(tag_name, func(name)) return func_wrapper return tags_decorator @tags("p") def get_text(name): """returns some text""" return "Hello "+name print get_text.__name__ # get_text print get_text.__doc__ # returns some text print get_text.__module__ # __main__
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You can notice from the output that the attributes of get_text are the correct ones now.
Where to use decorators
The examples in this post are pretty simple relative to how much you can do with decorators. They can give so much power and elegance to your program. In general, decorators are ideal for extending the behavior of functions that we don't want to modify. Fora great list of useful decorators I suggest you check out the Python
Decorator Library
More reading resources
Here is a list of other resources worth checking out:- What
is a decorator?
- Decorators
I: Introduction to Python Decorators
- Python
Decorators II: Decorator Arguments
- Python
Decorators III: A Decorator-Based Build System
- Guide
to: Learning Python Decorators by Matt Harrison
Phew!
That was an introduction to the concept of decorators in Python. I hope that you found this post helpful, if you have any suggestions or questions please do share them in the comments. Happy coding!
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