I'm doing it like:

def set_property(property,value):  
def get_property(property):  


object.property = value  
value = object.property

What's the pythonic way to use getters and setters?


9 Answers 9


Try this: Python Property

The sample code is:

class C(object):
    def __init__(self):
        self._x = None

    def x(self):
        """I'm the 'x' property."""
        print("getter of x called")
        return self._x

    def x(self, value):
        print("setter of x called")
        self._x = value

    def x(self):
        print("deleter of x called")
        del self._x

c = C()
c.x = 'foo'  # setter called
foo = c.x    # getter called
del c.x      # deleter called
  • 6
    Is the setter for x called in the initializer when instantiating _x?
    – Casey
    Commented Jul 3, 2019 at 15:12
  • 19
    @Casey: No. References to ._x (which isn't a property, just a plain attribute) bypass the property wrapping. Only references to .x go through the property. Commented Jul 19, 2019 at 10:52
  • mypy expect those two functions to be together (no other functions inside x and its setter) Commented Feb 17, 2021 at 16:01
  • 13
    This is Pythonic if you actually need to perform some action/manipulation in the getter or setter other than just retrieving a private property. For this simple case, even though it is considered best practice to use getters/setters in other languages, in Python just create a public property. Simple, Zen, and to the point
    – Mason3k
    Commented Mar 20, 2021 at 16:23

What's the pythonic way to use getters and setters?

The "Pythonic" way is not to use "getters" and "setters", but to use plain attributes, like the question demonstrates, and del for deleting (but the names are changed to protect the innocent... builtins):

value = 'something'

obj.attribute = value  
value = obj.attribute
del obj.attribute

If later, you want to modify the setting and getting, you can do so without having to alter user code, by using the property decorator:

class Obj:
    """property demo"""
    @property            # first decorate the getter method
    def attribute(self): # This getter method name is *the* name
        return self._attribute
    @attribute.setter    # the property decorates with `.setter` now
    def attribute(self, value):   # name, e.g. "attribute", is the same
        self._attribute = value   # the "value" name isn't special
    @attribute.deleter     # decorate with `.deleter`
    def attribute(self):   # again, the method name is the same
        del self._attribute

(Each decorator usage copies and updates the prior property object, so note that you should use the same name for each set, get, and delete function/method.)

After defining the above, the original setting, getting, and deleting code is the same:

obj = Obj()
obj.attribute = value  
the_value = obj.attribute
del obj.attribute

You should avoid this:

def set_property(property,value):  
def get_property(property):  

Firstly, the above doesn't work, because you don't provide an argument for the instance that the property would be set to (usually self), which would be:

class Obj:

    def set_property(self, property, value): # don't do this
    def get_property(self, property):        # don't do this either

Secondly, this duplicates the purpose of two special methods, __setattr__ and __getattr__.

Thirdly, we also have the setattr and getattr builtin functions.

setattr(object, 'property_name', value)
getattr(object, 'property_name', default_value)  # default is optional

The @property decorator is for creating getters and setters.

For example, we could modify the setting behavior to place restrictions the value being set:

class Protective(object):

    def protected_value(self):
        return self._protected_value

    def protected_value(self, value):
        if acceptable(value): # e.g. type or range check
            self._protected_value = value

In general, we want to avoid using property and just use direct attributes.

This is what is expected by users of Python. Following the rule of least-surprise, you should try to give your users what they expect unless you have a very compelling reason to the contrary.


For example, say we needed our object's protected attribute to be an integer between 0 and 100 inclusive, and prevent its deletion, with appropriate messages to inform the user of its proper usage:

class Protective(object):
    """protected property demo"""
    def __init__(self, start_protected_value=0):
        self.protected_value = start_protected_value
    def protected_value(self):
        return self._protected_value
    def protected_value(self, value):
        if value != int(value):
            raise TypeError("protected_value must be an integer")
        if 0 <= value <= 100:
            self._protected_value = int(value)
            raise ValueError("protected_value must be " +
                             "between 0 and 100 inclusive")
    def protected_value(self):
        raise AttributeError("do not delete, protected_value can be set to 0")

(Note that __init__ refers to self.protected_value but the property methods refer to self._protected_value. This is so that __init__ uses the property through the public API, ensuring it is "protected".)

And usage:

>>> p1 = Protective(3)
>>> p1.protected_value
>>> p1 = Protective(5.0)
>>> p1.protected_value
>>> p2 = Protective(-5)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "<stdin>", line 3, in __init__
  File "<stdin>", line 15, in protected_value
ValueError: protectected_value must be between 0 and 100 inclusive
>>> p1.protected_value = 7.3
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "<stdin>", line 17, in protected_value
TypeError: protected_value must be an integer
>>> p1.protected_value = 101
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "<stdin>", line 15, in protected_value
ValueError: protectected_value must be between 0 and 100 inclusive
>>> del p1.protected_value
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "<stdin>", line 18, in protected_value
AttributeError: do not delete, protected_value can be set to 0

Do the names matter?

Yes they do. .setter and .deleter make copies of the original property. This allows subclasses to properly modify behavior without altering the behavior in the parent.

class Obj:
    """property demo"""
    def get_only(self):
        return self._attribute
    def get_or_set(self, value):
        self._attribute = value
    def get_set_or_delete(self):
        del self._attribute

Now for this to work, you have to use the respective names:

obj = Obj()
# obj.get_only = 'value' # would error
obj.get_or_set = 'value'  
obj.get_set_or_delete = 'new value'
the_value = obj.get_only
del obj.get_set_or_delete
# del obj.get_or_set # would error

I'm not sure where this would be useful, but the use-case is if you want a get, set, and/or delete-only property. Probably best to stick to semantically same property having the same name.


Start with simple attributes.

If you later need functionality around the setting, getting, and deleting, you can add it with the property decorator.

Avoid functions named set_... and get_... - that's what properties are for.

  • 12
    In your demo, the __init__ method refers to self.protected_value but the getter and setters refer to self._protected_value. Could you please explain how this works? I tested your code and it works as is - so this is not a typo. Commented Jul 28, 2018 at 0:36
  • 3
    @codeforester I was hoping to respond in my answer earlier, but until I can, this comment should suffice. I hope you can see that it uses the property through the public api, ensuring it is "protected". It wouldn't make sense to "protect" it with a property and then use the non-public api instead in the __init__ would it?
    – Aaron Hall
    Commented Aug 1, 2018 at 19:37
  • 5
    Yes, @AaronHall got it now. I didn't realize self.protected_value = start_protected_value is actually calling the setter function; I thought it was an assignment. Commented Aug 1, 2018 at 20:42
  • 4
    imho this should be the accepted answer, if I understood correctly python takes just the opposite point compared to eg java. Instead of making everything private by default and writing some extra code when it is needed publicly in python you can make everything public and add privacy later on Commented Aug 29, 2018 at 10:27
  • 4
    @XValidated PEP 8 says: "For simple public data attributes, it is best to expose just the attribute name, without complicated accessor/mutator methods. Keep in mind that Python provides an easy path to future enhancement, should you find that a simple data attribute needs to grow functional behavior. In that case, use properties to hide functional implementation behind simple data attribute access syntax."
    – wjandrea
    Commented Mar 29, 2021 at 17:45
In [1]: class test(object):
    def __init__(self):
        self.pants = 'pants'
    def p(self):
        return self.pants
    def p(self, value):
        self.pants = value * 2
In [2]: t = test()
In [3]: t.p
Out[3]: 'pants'
In [4]: t.p = 10
In [5]: t.p
Out[5]: 20

Using @property and @attribute.setter helps you to not only use the "pythonic" way but also to check the validity of attributes both while creating the object and when altering it.

class Person(object):
    def __init__(self, p_name=None):
        self.name = p_name

    def name(self):
        return self._name

    def name(self, new_name):
        if type(new_name) == str: #type checking for name property
            self._name = new_name
            raise Exception("Invalid value for name")

By this, you actually 'hide' _name attribute from client developers and also perform checks on name property type. Note that by following this approach even during the initiation the setter gets called. So:

p = Person(12)

Will lead to:

Exception: Invalid value for name


>>>p = person('Mike')
>>>p.name = 'George'
>>>p.name = 2.3 # Causes an exception
  • I think self.name should read self._name and p = person('Mike') should read p = Person('Mike'). Edit-queue is full... Cheers!
    – lcnittl
    Commented Mar 9, 2021 at 23:27
  • If we change self.name to self._name in the __init__ method we will lose validation upon object instantiation. With that Person(12) can be created (although cannot be updated to have another number as a name afterwards). Commented Jun 7, 2021 at 23:47

This is an old question but the topic is very important and always current. In case anyone wants to go beyond simple getters/setters i have wrote an article about superpowered properties in python with support for slots, observability and reduced boilerplate code.

from objects import properties, self_properties

class Car:
    with properties(locals(), 'meta') as meta:

        def brand(self) -> str:

        def max_speed(self) -> float:
            """Maximum car speed"""

        def speed(self) -> float:
            """Speed of the car"""
            return 0  # Default stopped

        def on(self) -> bool:
            """Engine state"""
            return False

    def __init__(self, brand: str, max_speed: float = 200):
        self_properties(self, locals())

    def _on_off_listener(self, prop, old, on):
        if on:
            print(f"{self.brand} Turned on, Runnnnnn")
            self._speed = 0
            print(f"{self.brand} Turned off.")

    def _on_acceleration(self, prop, old, speed):
        if self.on:
            if speed > self.max_speed:
                print(f"{self.brand} {speed}km/h Bang! Engine exploded!")
                self.on = False
                print(f"{self.brand} New speed: {speed}km/h")
            print(f"{self.brand} Car is off, no speed change")

This class can be used like this:

mycar = Car('Ford')

# Car is turned off
for speed in range(0, 300, 50):
    mycar.speed = speed

# Car is turned on
mycar.on = True
for speed in range(0, 350, 50):
    mycar.speed = speed

This code will produce the following output:

Ford Car is off, no speed change
Ford Car is off, no speed change
Ford Car is off, no speed change
Ford Car is off, no speed change
Ford Car is off, no speed change
Ford Car is off, no speed change
Ford Turned on, Runnnnnn
Ford New speed: 0km/h
Ford New speed: 50km/h
Ford New speed: 100km/h
Ford New speed: 150km/h
Ford New speed: 200km/h
Ford 250km/h Bang! Engine exploded!
Ford Turned off.
Ford Car is off, no speed change

More info about how and why here: https://mnesarco.github.io/blog/2020/07/23/python-metaprogramming-properties-on-steroids

  • what's the recommended way to get objects?
    – user66081
    Commented Oct 9, 2020 at 18:24
  • @user66081 the code is in the article. You can copy/paste it. It is a pretty small script.
    – mnesarco
    Commented Feb 1, 2021 at 12:52

Properties are pretty useful since you can use them with assignment but then can include validation as well. You can see this code where you use the decorator @property and also @<property_name>.setter to create the methods:

# Python program displaying the use of @property 
class AgeSet:
    def __init__(self):
        self._age = 0

    # using property decorator a getter function
    def age(self):
        print("getter method called")
        return self._age

    # a setter function
    def age(self, a):
        if(a < 18):
            raise ValueError("Sorry your age is below eligibility criteria")
        print("setter method called")
        self._age = a

pkj = AgeSet()

pkj.age = int(input("set the age using setter: "))


There are more details in this post I wrote about this as well: https://pythonhowtoprogram.com/how-to-create-getter-setter-class-properties-in-python-3/


You can use accessors/mutators (i.e. @attr.setter and @property) or not, but the most important thing is to be consistent!

If you're using @property to simply access an attribute, e.g.

class myClass:
    def __init__(a):
        self._a = a

    def a(self):
        return self._a

use it to access every* attribute! It would be a bad practice to access some attributes using @property and leave some other properties public (i.e. name without an underscore) without an accessor, e.g. do not do

class myClass:
    def __init__(a, b):
        self.a = a
        self.b = b

    def a(self):
        return self.a

Note that self.b does not have an explicit accessor here even though it's public.

Similarly with setters (or mutators), feel free to use @attribute.setter but be consistent! When you do e.g.

class myClass:
    def __init__(a, b):
        self.a = a
        self.b = b 

    def a(self, value):
        return self.a = value

It's hard for me to guess your intention. On one hand you're saying that both a and b are public (no leading underscore in their names) so I should theoretically be allowed to access/mutate (get/set) both. But then you specify an explicit mutator only for a, which tells me that maybe I should not be able to set b. Since you've provided an explicit mutator I am not sure if the lack of explicit accessor (@property) means I should not be able to access either of those variables or you were simply being frugal in using @property.

*The exception is when you explicitly want to make some variables accessible or mutable but not both or you want to perform some additional logic when accessing or mutating an attribute. This is when I am personally using @property and @attribute.setter (otherwise no explicit acessors/mutators for public attributes).

Lastly, PEP8 and Google Style Guide suggestions:

PEP8, Designing for Inheritance says:

For simple public data attributes, it is best to expose just the attribute name, without complicated accessor/mutator methods. Keep in mind that Python provides an easy path to future enhancement, should you find that a simple data attribute needs to grow functional behavior. In that case, use properties to hide functional implementation behind simple data attribute access syntax.

On the other hand, according to Google Style Guide Python Language Rules/Properties the recommendation is to:

Use properties in new code to access or set data where you would normally have used simple, lightweight accessor or setter methods. Properties should be created with the @property decorator.

The pros of this approach:

Readability is increased by eliminating explicit get and set method calls for simple attribute access. Allows calculations to be lazy. Considered the Pythonic way to maintain the interface of a class. In terms of performance, allowing properties bypasses needing trivial accessor methods when a direct variable access is reasonable. This also allows accessor methods to be added in the future without breaking the interface.

and cons:

Must inherit from object in Python 2. Can hide side-effects much like operator overloading. Can be confusing for subclasses.

  • 3
    I strongly disagree. If I have 15 attributes on my object, and I want one to be computed with @property, making the rest also use @property seems like a poor decision.
    – Quelklef
    Commented Jan 13, 2020 at 17:15
  • Agree but only if there is something specific about this particular attribute that you need @property for (e.g. executing some special logic before returning an attribute). Otherwise why would you decorate one attribute with @propery and not others? Commented Jan 13, 2020 at 18:51
  • @Quelklef see the sidenote in the post (marked with asterisk). Commented Jan 13, 2020 at 19:00
  • Well... If you're not doing one of the things mentioned by the sidenote, then you shouldn't be using @property to begin with, right? If your getter is return this._x and your setter is this._x = new_x, then using @property at all is kinda silly.
    – Quelklef
    Commented Jan 13, 2020 at 23:39
  • 1
    Hmm, perhaps. I personally would say it's not fine---it's entirely superfluous. But I can see where you're coming from. I guess I just read your post as saying that "the most important thing when using @property is being consistent."
    – Quelklef
    Commented Jan 14, 2020 at 1:12

You can use the magic methods __getattribute__ and __setattr__.

class MyClass:
    def __init__(self, attrvalue):
        self.myattr = attrvalue
    def __getattribute__(self, attr):
        if attr == "myattr":
            #Getter for myattr
    def __setattr__(self, attr):
        if attr == "myattr":
            #Setter for myattr

Be aware that __getattr__ and __getattribute__ are not the same. __getattr__ is only invoked when the attribute is not found.

class ChangingPassword(object):
    def __init__(self, username, password):
        """use _ for change to read only type(protected)."""
        self.username = username
        self._password = password

    def username(self):
        return self.username

    def password(self):
        return self._password

    def password(self, new_password: int):
        if isinstance(new_password, int):
            if self._password != new_password:
                self._password = new_password
                raise ValueError('Enter different value!')

user01 = ChangingPassword('Herment', 1321)
user01.password = 6301
  • 2
    Your answer could be improved with additional supporting information. Please edit to add further details, such as citations or documentation, so that others can confirm that your answer is correct. You can find more information on how to write good answers in the help center. Commented Aug 25, 2023 at 1:50
  • The username method is absolutely unnecessary as it is going to be masked by the username instance variable that is created when __init__ is run. Commented Jun 18 at 9:35
  • You may verify the claim in my previous comment by calling user01.username(). It will report TypeError: 'str' object is not callable. Unlike in other languages, a Python method may not have the same name as an instance variable. Therefore, including this method definition in the code is misguiding and confusing. That's why I down voted this answer. Commented Jun 18 at 10:02

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