Is there a way to declare a constant in Python? In Java we can create constant values in this manner:

public static final String CONST_NAME = "Name";

What is the equivalent of the above Java constant declaration in Python?

  • 8
    actually the way to make read-only variables is possible via python's property function/decorator. the answer of inv is an example of a custom usage of that. property is more general-use than that, though, a good analysis of how it works is on Shalabh Chaturvedi's Python Attributes and Methods.
    – n611x007
    Aug 13 '14 at 11:40
  • 28
    IMHO, enforcing constancy is "not pythonic". In Python 2.7 you can even write True=False, and then (2+2==4)==True returns False. Sep 6 '14 at 0:39
  • 8
    As other answers suggests there is no way or no need to declare constants. But you may read this PEP about conventions. e.g. THIS_IS_A_CONSTANT Oct 5 '14 at 5:33
  • 44
    @osa: You can't do that in python 3 - SyntaxError: can't assign to keyword. This seems like a Good Thing.
    – naught101
    Jan 27 '15 at 3:59
  • 6
    Surprised this hasn't been mentioned until now, but Enums would seem like a good way to define enumerated constants.
    – cs95
    Jun 9 '19 at 19:20

41 Answers 41


No there is not. You cannot declare a variable or value as constant in Python. Just don't change it.

If you are in a class, the equivalent would be:

class Foo(object):
    CONST_NAME = "Name"

if not, it is just


But you might want to have a look at the code snippet Constants in Python by Alex Martelli.

As of Python 3.8, there's a typing.Final variable annotation that will tell static type checkers (like mypy) that your variable shouldn't be reassigned. This is the closest equivalent to Java's final. However, it does not actually prevent reassignment:

from typing import Final

a: Final = 1

# Executes fine, but mypy will report an error if you run mypy on this:
a = 2
  • 14
    "Just don't change it." Really? Just is sarcasm, it isn't?
    – 0zkr PM
    Aug 2 at 21:25
  • In emacs mypy does not give any notation for :Final reassignments. Should I make any configuration setup for it?
    – alper
    Aug 11 at 10:23
  • 1
    I wonder why the concept of constants even exists. Everything changes. So should variables.
    – user37222
    Aug 11 at 21:18
  • 6
    @user37222 try reading code where anything can change. Intentions matter, and the more code expresses them the better.
    – Bob Stein
    Aug 13 at 18:13
  • Seems my sarcasm didn't work
    – user37222
    Aug 13 at 19:56

There's no const keyword as in other languages, however it is possible to create a Property that has a "getter function" to read the data, but no "setter function" to re-write the data. This essentially protects the identifier from being changed.

Here is an alternative implementation using class property:

Note that the code is far from easy for a reader wondering about constants. See explanation below

def constant(f):
    def fset(self, value):
        raise TypeError
    def fget(self):
        return f()
    return property(fget, fset)

class _Const(object):
    def FOO():
        return 0xBAADFACE
    def BAR():
        return 0xDEADBEEF

CONST = _Const()


##Traceback (most recent call last):
##    ...
##    CONST.FOO = 0
##TypeError: None

Code Explanation:

  1. Define a function constant that takes an expression, and uses it to construct a "getter" - a function that solely returns the value of the expression.
  2. The setter function raises a TypeError so it's read-only
  3. Use the constant function we just created as a decoration to quickly define read-only properties.

And in some other more old-fashioned way:

(The code is quite tricky, more explanations below)

class _Const(object):
    def FOO():
        def fset(self, value):
            raise TypeError
        def fget(self):
            return 0xBAADFACE
        return property(**locals())

CONST = _Const()


##Traceback (most recent call last):
##    ...
##    CONST.FOO = 0
##TypeError: None

Note that the @apply decorator seems to be deprecated.

  1. To define the identifier FOO, firs define two functions (fset, fget - the names are at my choice).
  2. Then use the built-in property function to construct an object that can be "set" or "get".
  3. Note hat the property function's first two parameters are named fset and fget.
  4. Use the fact that we chose these very names for our own getter & setter and create a keyword-dictionary using the ** (double asterisk) applied to all the local definitions of that scope to pass parameters to the property function

In Python instead of language enforcing something, people use naming conventions e.g __method for private methods and using _method for protected methods.

So in same manner you can simply declare the constant as all caps e.g.


If you want that this constant never changes, you can hook into attribute access and do tricks, but a simpler approach is to declare a function

    return "one"

Only problem is everywhere you will have to do MY_CONSTANT(), but again MY_CONSTANT = "one" is the correct way in python(usually).

You can also use namedtuple to create constants:

>>> from collections import namedtuple
>>> Constants = namedtuple('Constants', ['pi', 'e'])
>>> constants = Constants(3.14, 2.718)
>>> constants.pi
>>> constants.pi = 3
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
AttributeError: can't set attribute
  • Using def MY_CONSTANT(): return "one" doesn't prevent the method reference from being reassigned, right? Isn't this is exactly how duck typing works?
    – Josh Gust
    Aug 31 at 19:58

I've recently found a very succinct update to this which automatically raises meaningful error messages and prevents access via __dict__:

class CONST(object):
    __slots__ = ()
    FOO = 1234


# ----------

print(CONST.FOO)    # 1234

CONST.FOO = 4321              # AttributeError: 'CONST' object attribute 'FOO' is read-only
CONST.__dict__['FOO'] = 4321  # AttributeError: 'CONST' object has no attribute '__dict__'
CONST.BAR = 5678              # AttributeError: 'CONST' object has no attribute 'BAR'

We define over ourselves as to make ourselves an instance and then use slots to ensure that no additional attributes can be added. This also removes the __dict__ access route. Of course, the whole object can still be redefined.

Edit - Original solution

I'm probably missing a trick here, but this seems to work for me:

class CONST(object):
    FOO = 1234

    def __setattr__(self, *_):



print CONST.FOO    # 1234

CONST.FOO = 4321
CONST.BAR = 5678

print CONST.FOO    # Still 1234!
print CONST.BAR    # Oops AttributeError

Creating the instance allows the magic __setattr__ method to kick in and intercept attempts to set the FOO variable. You could throw an exception here if you wanted to. Instantiating the instance over the class name prevents access directly via the class.

It's a total pain for one value, but you could attach lots to your CONST object. Having an upper class, class name also seems a bit grotty, but I think it's quite succinct overall.


Python doesn't have constants.

Perhaps the easiest alternative is to define a function for it:

    return 42

MY_CONSTANT() now has all the functionality of a constant (plus some annoying braces).

  • 2
    I just wanted to add this suggestion but fortunately I scrolled down to the low-rated answers. I hope it will be further upvoted and I fully agree that it has all the functionality of a constant and it is very simple and straightforward. Looking at the amount of boilerplate code in all the sophisticated solutions I find the braces relatively unannoying.
    – yaccob
    Oct 21 '17 at 20:50
  • 1
    this is the simplest answer, although it should be noted it has some overhead and will not stop idiots modifying the return value. It will just prevent the code further down the line changing the source
    – MrMesees
    May 10 '19 at 7:53
  • @MrMesees modifying the return value? Do you mean editing the source? But from this you're not protected even in C++, where constants (like constexpr) are real hard constants.
    – Ruslan
    May 1 '20 at 14:45
  • 1
    @Ruslan what I meant was that as python has no constexpr, it would not stop the value being edited after it is returned to an outer context. Nothing has been done to 42 to enforce frozen state in this example.
    – MrMesees
    May 2 '20 at 14:03
  • It is easy in this case to set new value for MY_CONSTANT, like MY_CONSTANT = 43
    – Prokhozhii
    Sep 1 at 11:50

Properties are one way to create constants. You can do it by declaring a getter property, but ignoring the setter. For example:

class MyFinalProperty(object):

    def name(self):
        return "John"

You can have a look at an article I've written to find more ways to use Python properties.

  • Under valued solution. I just implemented this after finding this page (not this answer) and circled back to add it if not already. I wanted to underscore the usefulness of this answer.
    – Marc
    Mar 22 '19 at 2:23

In addition to the two top answers (just use variables with UPPERCASE names, or use properties to make the values read-only), I want to mention that it's possible to use metaclasses in order to implement named constants. I provide a very simple solution using metaclasses at GitHub which may be helpful if you want the values to be more informative about their type/name:

>>> from named_constants import Constants
>>> class Colors(Constants):
...     black = 0
...     red = 1
...     white = 15
>>> c = Colors.black
>>> c == 0
>>> c
>>> c.name()
>>> Colors(0) is c

This is slightly more advanced Python, but still very easy to use and handy. (The module has some more features, including constants being read-only, see its README.)

There are similar solutions floating around in various repositories, but to the best of my knowledge they either lack one of the fundamental features that I would expect from constants (like being constant, or being of arbitrary type), or they have esoteric features added that make them less generally applicable. But YMMV, I would be grateful for feedback. :-)


Edit: Added sample code for Python 3

Note: this other answer looks like it provides a much more complete implementation similar to the following (with more features).

First, make a metaclass:

class MetaConst(type):
    def __getattr__(cls, key):
        return cls[key]

    def __setattr__(cls, key, value):
        raise TypeError

This prevents statics properties from being changed. Then make another class that uses that metaclass:

class Const(object):
    __metaclass__ = MetaConst

    def __getattr__(self, name):
        return self[name]

    def __setattr__(self, name, value):
        raise TypeError

Or, if you're using Python 3:

class Const(object, metaclass=MetaConst):
    def __getattr__(self, name):
        return self[name]

    def __setattr__(self, name, value):
        raise TypeError

This should prevent instance props from being changed. To use it, inherit:

class MyConst(Const):
    A = 1
    B = 2

Now the props, accessed directly or via an instance, should be constant:

# 1
my_const = MyConst()
# 1

MyConst.A = 'changed'
# TypeError
my_const.A = 'changed'
# TypeError

Here's an example of above in action. Here's another example for Python 3.


PEP 591 has the 'final' qualifier. Enforcement is down to the type checker.

So you can do:

MY_CONSTANT: Final = 12407

Note: Final keyword is only applicable for Python 3.8 version


You can use a namedtuple as a workaround to effectively create a constant that works the same way as a static final variable in Java (a Java "constant"). As workarounds go, it's sort of elegant. (A more elegant approach would be to simply improve the Python language --- what sort of language lets you redefine math.pi? -- but I digress.)

(As I write this, I realize another answer to this question mentioned namedtuple, but I'll continue here because I'll show a syntax that more closely parallels what you'd expect in Java, as there is no need to create a named type as namedtuple forces you to do.)

Following your example, you'll remember that in Java we must define the constant inside some class; because you didn't mention a class name, let's call it Foo. Here's the Java class:

public class Foo {
  public static final String CONST_NAME = "Name";

Here's the equivalent Python.

from collections import namedtuple
Foo = namedtuple('_Foo', 'CONST_NAME')('Name')

The key point I want to add here is that you don't need a separate Foo type (an "anonymous named tuple" would be nice, even though that sounds like an oxymoron), so we name our namedtuple _Foo so that hopefully it won't escape to importing modules.

The second point here is that we immediately create an instance of the nametuple, calling it Foo; there's no need to do this in a separate step (unless you want to). Now you can do what you can do in Java:


But you can't assign to it:

>>> Foo.CONST_NAME = 'bar'
AttributeError: can't set attribute

Acknowledgement: I thought I invented the namedtuple approach, but then I see that someone else gave a similar (although less compact) answer. Then I also noticed What are "named tuples" in Python?, which points out that sys.version_info is now a namedtuple, so perhaps the Python standard library already came up with this idea much earlier.

Note that unfortunately (this still being Python), you can erase the entire Foo assignment altogether:

>>> Foo = 'bar'


But at least we're preventing the Foo.CONST_NAME value from being changed, and that's better than nothing. Good luck.


Here is an implementation of a "Constants" class, which creates instances with read-only (constant) attributes. E.g. can use Nums.PI to get a value that has been initialized as 3.14159, and Nums.PI = 22 raises an exception.

# ---------- Constants.py ----------
class Constants(object):
    Create objects with read-only (constant) attributes.
        Nums = Constants(ONE=1, PI=3.14159, DefaultWidth=100.0)
        print 10 + Nums.PI
        print '----- Following line is deliberate ValueError -----'
        Nums.PI = 22

    def __init__(self, *args, **kwargs):
        self._d = dict(*args, **kwargs)

    def __iter__(self):
        return iter(self._d)

    def __len__(self):
        return len(self._d)

    # NOTE: This is only called if self lacks the attribute.
    # So it does not interfere with get of 'self._d', etc.
    def __getattr__(self, name):
        return self._d[name]

    # ASSUMES '_..' attribute is OK to set. Need this to initialize 'self._d', etc.
    #If use as keys, they won't be constant.
    def __setattr__(self, name, value):
        if (name[0] == '_'):
            super(Constants, self).__setattr__(name, value)
            raise ValueError("setattr while locked", self)

if (__name__ == "__main__"):
    # Usage example.
    Nums = Constants(ONE=1, PI=3.14159, DefaultWidth=100.0)
    print 10 + Nums.PI
    print '----- Following line is deliberate ValueError -----'
    Nums.PI = 22

Thanks to @MikeGraham 's FrozenDict, which I used as a starting point. Changed, so instead of Nums['ONE'] the usage syntax is Nums.ONE.

And thanks to @Raufio's answer, for idea to override __ setattr __.

Or for an implementation with more functionality, see @Hans_meine 's named_constants at GitHub

  • 3
    Python is a language of consenting adults. There is no protection against something like this. Nums._d['PI'] = 22 The language itself doesn't provide any way to mark things as non-mutables, I believe.
    – Ajay M
    Jan 6 '16 at 21:27

A tuple technically qualifies as a constant, as a tuple will raise an error if you try to change one of its values. If you want to declare a tuple with one value, then place a comma after its only value, like this:

my_tuple = (0 """Or any other value""",)

To check this variable's value, use something similar to this:

if my_tuple[0] == 0:
    #Code goes here

If you attempt to change this value, an error will be raised.


I would make a class that overrides the __setattr__ method of the base object class and wrap my constants with that, note that I'm using python 2.7:

class const(object):
    def __init__(self, val):
        super(const, self).__setattr__("value", val)
    def __setattr__(self, name, val):
        raise ValueError("Trying to change a constant value", self)

To wrap a string:

>>> constObj = const("Try to change me")
>>> constObj.value
'Try to change me'
>>> constObj.value = "Changed"
Traceback (most recent call last):
ValueError: Trying to change a constant value
>>> constObj2 = const(" or not")
>>> mutableObj = constObj.value + constObj2.value
>>> mutableObj #just a string
'Try to change me or not'

It's pretty simple, but if you want to use your constants the same as you would a non-constant object (without using constObj.value), it will be a bit more intensive. It's possible that this could cause problems, so it might be best to keep the .value to show and know that you are doing operations with constants (maybe not the most 'pythonic' way though).

  • +1 for interesting approach. Though not as clean as answers that had already been provided. And even the simplest earlier suggested solution def ONE(): return 1 is easier to use ONE() than this answer ONE.value. Dec 10 '13 at 21:57

Unfortunately the Python has no constants so yet and it is shame. ES6 already added support constants to JavaScript (https://developer.mozilla.org/en/docs/Web/JavaScript/Reference/Statements/const) since it is a very useful thing in any programming language. As answered in other answers in Python community use the convention - user uppercase variable as constants, but it does not protect against arbitrary errors in code. If you like, you may be found useful a single-file solution as next (see docstrings how use it).

file constants.py

import collections

__all__ = ('const', )

class Constant(object):
    Implementation strict constants in Python 3.

    A constant can be set up, but can not be changed or deleted.
    Value of constant may any immutable type, as well as list or set.
    Besides if value of a constant is list or set, it will be converted in an immutable type as next:
        list -> tuple
        set -> frozenset
    Dict as value of a constant has no support.

    >>> const = Constant()
    >>> del const.temp
    Traceback (most recent call last):
    NameError: name 'temp' is not defined
    >>> const.temp = 1
    >>> const.temp = 88
    Traceback (most recent call last):
    TypeError: Constanst can not be changed
    >>> del const.temp
    Traceback (most recent call last):
    TypeError: Constanst can not be deleted
    >>> const.I = ['a', 1, 1.2]
    >>> print(const.I)
    ('a', 1, 1.2)
    >>> const.F = {1.2}
    >>> print(const.F)
    >>> const.D = dict()
    Traceback (most recent call last):
    TypeError: dict can not be used as constant
    >>> del const.UNDEFINED
    Traceback (most recent call last):
    NameError: name 'UNDEFINED' is not defined
    >>> const()
    {'I': ('a', 1, 1.2), 'temp': 1, 'F': frozenset([1.2])}

    def __setattr__(self, name, value):
        """Declaration a constant with value. If mutable - it will be converted to immutable, if possible.
        If the constant already exists, then made prevent againt change it."""

        if name in self.__dict__:
            raise TypeError('Constanst can not be changed')

        if not isinstance(value, collections.Hashable):
            if isinstance(value, list):
                value = tuple(value)
            elif isinstance(value, set):
                value = frozenset(value)
            elif isinstance(value, dict):
                raise TypeError('dict can not be used as constant')
                raise ValueError('Muttable or custom type is not supported')
        self.__dict__[name] = value

    def __delattr__(self, name):
        """Deny against deleting a declared constant."""

        if name in self.__dict__:
            raise TypeError('Constanst can not be deleted')
        raise NameError("name '%s' is not defined" % name)

    def __call__(self):
        """Return all constans."""

        return self.__dict__

const = Constant()

if __name__ == '__main__':
    import doctest

If this is not enough, see full testcase for it.

import decimal
import uuid
import datetime
import unittest

from ..constants import Constant

class TestConstant(unittest.TestCase):
    Test for implementation constants in the Python

    def setUp(self):

        self.const = Constant()

    def tearDown(self):

        del self.const

    def test_create_constant_with_different_variants_of_name(self):

        self.const.CONSTANT = 1
        self.assertEqual(self.const.CONSTANT, 1)
        self.const.Constant = 2
        self.assertEqual(self.const.Constant, 2)
        self.const.ConStAnT = 3
        self.assertEqual(self.const.ConStAnT, 3)
        self.const.constant = 4
        self.assertEqual(self.const.constant, 4)
        self.const.co_ns_ta_nt = 5
        self.assertEqual(self.const.co_ns_ta_nt, 5)
        self.const.constant1111 = 6
        self.assertEqual(self.const.constant1111, 6)

    def test_create_and_change_integer_constant(self):

        self.const.INT = 1234
        self.assertEqual(self.const.INT, 1234)
        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.INT = .211

    def test_create_and_change_float_constant(self):

        self.const.FLOAT = .1234
        self.assertEqual(self.const.FLOAT, .1234)
        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.FLOAT = .211

    def test_create_and_change_list_constant_but_saved_as_tuple(self):

        self.const.LIST = [1, .2, None, True, datetime.date.today(), [], {}]
        self.assertEqual(self.const.LIST, (1, .2, None, True, datetime.date.today(), [], {}))

        self.assertTrue(isinstance(self.const.LIST, tuple))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.LIST = .211

    def test_create_and_change_none_constant(self):

        self.const.NONE = None
        self.assertEqual(self.const.NONE, None)
        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.NONE = .211

    def test_create_and_change_boolean_constant(self):

        self.const.BOOLEAN = True
        self.assertEqual(self.const.BOOLEAN, True)
        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.BOOLEAN = False

    def test_create_and_change_string_constant(self):

        self.const.STRING = "Text"
        self.assertEqual(self.const.STRING, "Text")

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.STRING += '...'

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.STRING = 'TEst1'

    def test_create_dict_constant(self):

        with self.assertRaisesRegexp(TypeError, 'dict can not be used as constant'):
            self.const.DICT = {}

    def test_create_and_change_tuple_constant(self):

        self.const.TUPLE = (1, .2, None, True, datetime.date.today(), [], {})
        self.assertEqual(self.const.TUPLE, (1, .2, None, True, datetime.date.today(), [], {}))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.TUPLE = 'TEst1'

    def test_create_and_change_set_constant(self):

        self.const.SET = {1, .2, None, True, datetime.date.today()}
        self.assertEqual(self.const.SET, {1, .2, None, True, datetime.date.today()})

        self.assertTrue(isinstance(self.const.SET, frozenset))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.SET = 3212

    def test_create_and_change_frozenset_constant(self):

        self.const.FROZENSET = frozenset({1, .2, None, True, datetime.date.today()})
        self.assertEqual(self.const.FROZENSET, frozenset({1, .2, None, True, datetime.date.today()}))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.FROZENSET = True

    def test_create_and_change_date_constant(self):

        self.const.DATE = datetime.date(1111, 11, 11)
        self.assertEqual(self.const.DATE, datetime.date(1111, 11, 11))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.DATE = True

    def test_create_and_change_datetime_constant(self):

        self.const.DATETIME = datetime.datetime(2000, 10, 10, 10, 10)
        self.assertEqual(self.const.DATETIME, datetime.datetime(2000, 10, 10, 10, 10))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.DATETIME = None

    def test_create_and_change_decimal_constant(self):

        self.const.DECIMAL = decimal.Decimal(13123.12312312321)
        self.assertEqual(self.const.DECIMAL, decimal.Decimal(13123.12312312321))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.DECIMAL = None

    def test_create_and_change_timedelta_constant(self):

        self.const.TIMEDELTA = datetime.timedelta(days=45)
        self.assertEqual(self.const.TIMEDELTA, datetime.timedelta(days=45))

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.TIMEDELTA = 1

    def test_create_and_change_uuid_constant(self):

        value = uuid.uuid4()
        self.const.UUID = value
        self.assertEqual(self.const.UUID, value)

        with self.assertRaisesRegexp(TypeError, 'Constanst can not be changed'):
            self.const.UUID = []

    def test_try_delete_defined_const(self):

        self.const.VERSION = '0.0.1'
        with self.assertRaisesRegexp(TypeError, 'Constanst can not be deleted'):
            del self.const.VERSION

    def test_try_delete_undefined_const(self):

        with self.assertRaisesRegexp(NameError, "name 'UNDEFINED' is not defined"):
            del self.const.UNDEFINED

    def test_get_all_defined_constants(self):

        self.assertDictEqual(self.const(), {})

        self.const.A = 1
        self.assertDictEqual(self.const(), {'A': 1})

        self.const.B = "Text"
        self.assertDictEqual(self.const(), {'A': 1, 'B': "Text"})

Advantages: 1. Access to all constants for whole project 2. Strict control for values of constants

Lacks: 1. Not support for custom types and the type 'dict'


  1. Tested with Python3.4 and Python3.5 (I am use the 'tox' for it)

  2. Testing environment:


$ uname -a
Linux wlysenko-Aspire 3.13.0-37-generic #64-Ubuntu SMP Mon Sep 22 21:28:38 UTC 2014 x86_64 x86_64 x86_64 GNU/Linux
  • You could improve this slightly by automatically converting dictionaries to named tuples Mar 8 '20 at 18:45

We can create a descriptor object.

class Constant:
  def __init__(self,value=None):
    self.value = value
  def __get__(self,instance,owner):
    return self.value
  def __set__(self,instance,value):
    raise ValueError("You can't change a constant")

1) If we wanted to work with constants at the instance level then:

class A:
  NULL = Constant()
  NUM = Constant(0xFF)

class B:
  NAME = Constant('bar')
  LISTA = Constant([0,1,'INFINITY'])

>>> obj=A()
>>> print(obj.NUM)  #=> 255
>>> obj.NUM =100

Traceback (most recent call last):
File "<stdin>", line 1, in <module>
ValueError: You can't change a constant

2) if we wanted to create constants only at the class level, we could use a metaclass that serves as a container for our constants (our descriptor objects); all the classes that descend will inherit our constants (our descriptor objects) without any risk that can be modified.

# metaclass of my class Foo
class FooMeta(type): pass

# class Foo
class Foo(metaclass=FooMeta): pass

# I create constants in my metaclass
FooMeta.NUM = Constant(0xff)
FooMeta.NAME = Constant('FOO')

>>> Foo.NUM   #=> 255
>>> Foo.NAME  #=> 'FOO'
>>> Foo.NUM = 0 #=> ValueError: You can't change a constant

If I create a subclass of Foo, this class will inherit the constant without the possibility of modifying them

class Bar(Foo): pass

>>> Bar.NUM  #=> 255
>>> Bar.NUM = 0  #=> ValueError: You can't change a constant
  • Upvoting this because this answer actually addresses the "static" component of the original question and provides a neat way to declare class-based based constants using a metaclass, rather than instance-level ones as in the other answers. Makes much more sense to me. Mar 30 at 20:26

The Pythonic way of declaring "constants" is basically a module level variable:

RED = 1
BLUE = 3

And then write your classes or functions. Since constants are almost always integers, and they are also immutable in Python, you have a very little chance of altering it.

Unless, of course, if you explicitly set RED = 2.

  • 23
    Yes, but blocking the ability to "explicitly set RED = 2" is the entire benefit (in other languages) of being able to declare a variable name to be "constant"! Dec 10 '13 at 21:44
  • 6
    Would benefit would you get from blocking that? The most useful thing about const is usually compiler optimizations which isn't really a thing in Python. Want something to be constant? Just don't change it. If you're worrying about someone else changing it, you could just put it outside of their scope, or just realize that, if someone is changing it, that's their problem and they need to deal with it, not you.
    – Kevin
    Mar 8 '14 at 4:43
  • @Kevin: "Would benefit would you get...", the benefit of static to have a single storage for the value for all instances of a class? Unless there is a possibility to declare a static/class variable indeed.
    – mins
    Jul 19 '17 at 23:22
  • 8
    The root issue is that some may see it as a value that is a source of truth, unable to be changed, and use it as the source of truth throughout their code instead of introducing magic values (which I see a lot of in Python) - and others may see it as something they're allowed to change at will. When someone changes a global variable, and you can't tell where it got changed, and the application crashes because RED="blue" instead of "red", you're introducing a totally unnecessary problem that has already been solved so simply and is universally understood.
    – Dagrooms
    Oct 30 '17 at 18:46
  • 1
    "Would benefit would you get from blocking that?" That's the pythonic way of not answering languages oddities: You are supposed to never make mistakes, so why adding constraints? Why adding brackets around blocks like in other languages? You just need to never remove a tab by mistake. That's what good programmers do. If you're not able, then you are not a good programmer, and you should use Java. An obvious advantage of having constants is your code checker will be able to tell you when you're trying to assign a value to a constant (code checker are used by bad programmers).
    – mins
    Feb 16 at 13:32
from enum import Enum
class StringConsts(str,Enum):

print(f'Truth is  {StringConsts.ONE=="one"}') #Truth is True
StringConsts.ONE="one" #Error: Cannot reassign

This mixin of Enum and str gives you the power of not having to reimplement setattr (through Enum) and comparison to other str objects (through str).

This might deprecate http://code.activestate.com/recipes/65207-constants-in-python/?in=user-97991 completely.

  • Note that there is already an accepted answer to this question. Please edit your answer to ensure that it improves upon other answers already present in this question.
    – hongsy
    Jan 27 '20 at 16:40
  • 2
    The other answers either reimplement set_attr, or have the drawback of an accidental assignment anywhere in the codebase. No other answer mentions Enum, let alone a mixin of Enum and str.
    – yoni keren
    Jan 27 '20 at 18:35
  • 1
    this is the best answer by far. real constants, no custom class, concise syntax. Some answers use properties which is nice enough but does not work for all cases. For example if you want to have int values that you can bitwise or, with properties you get an error. With enums you just have to use the IntFlag variant to get it to work.
    – acapola
    Mar 28 '20 at 23:08

There is a cleaner way to do this with namedtuple:

from collections import namedtuple

def make_consts(name, **kwargs):
    return namedtuple(name, kwargs.keys())(**kwargs)

Usage Example

CONSTS = make_consts("baz1",

With this exactly approach you can namespace your constants.

  • For everyone who's reading this, please, keep in mind that, if you set a mutable object as one of these constants, anyone can alter its internal value. for example, lets bar=[1, 2, 3], then, you could do as follows: CONSTS.bar[1] = 'a' and it won't be rejected. So be careful about this. Feb 27 '20 at 16:16
  • Instead of this hacky method, which I made just for fun, I recommend using Python's property decorator instead. Feb 27 '20 at 16:20

Here it is a collection of idioms that I created as an attempt to improve some of the already available answers.

I know the use of constant is not pythonic, and you should not do this at home!

However, Python is such a dynamic language! This forum shows how it is possible the creation of constructs that looks and feels like constants. This answer has as the primary purpose to explore what can be expressed by the language.

Please do not be too harsh with me :-).

For more details I wrote a accompaniment blog about these idioms.

In this post, I will call a constant variable to a constant reference to values (immutable or otherwise). Moreover, I say that a variable has a frozen value when it references a mutable object that a client-code cannot update its value(s).

A space of constants (SpaceConstants)

This idiom creates what looks like a namespace of constant variables (a.k.a. SpaceConstants). It is a modification of a code snippet by Alex Martelli to avoid the use of module objects. In particular, this modification uses what I call a class factory because within SpaceConstants function, a class called SpaceConstants is defined, and an instance of it is returned.

I explored the use of class factory to implement a policy-based design look-alike in Python in stackoverflow and also in a blogpost.

def SpaceConstants():
    def setattr(self, name, value):
        if hasattr(self, name):
            raise AttributeError(
                "Cannot reassign members"
        self.__dict__[name] = value
    cls = type('SpaceConstants', (), {
        '__setattr__': setattr
    return cls()

sc = SpaceConstants()

print(sc.x) # raise "AttributeError: 'SpaceConstants' object has no attribute 'x'"
sc.x = 2 # bind attribute x
print(sc.x) # print "2"
sc.x = 3 # raise "AttributeError: Cannot reassign members"
sc.y = {'name': 'y', 'value': 2} # bind attribute y
print(sc.y) # print "{'name': 'y', 'value': 2}"
sc.y['name'] = 'yprime' # mutable object can be changed
print(sc.y) # print "{'name': 'yprime', 'value': 2}"
sc.y = {} # raise "AttributeError: Cannot reassign members"

A space of frozen values (SpaceFrozenValues)

This next idiom is a modification of the SpaceConstants in where referenced mutable objects are frozen. This implementation exploits what I call shared closure between setattr and getattr functions. The value of the mutable object is copied and referenced by variable cache define inside of the function shared closure. It forms what I call a closure protected copy of a mutable object.

You must be careful in using this idiom because getattr return the value of cache by doing a deep copy. This operation could have a significant performance impact on large objects!

from copy import deepcopy

def SpaceFrozenValues():
    cache = {}
    def setattr(self, name, value):
        nonlocal cache
        if name in cache:
            raise AttributeError(
                "Cannot reassign members"
        cache[name] = deepcopy(value)
    def getattr(self, name):
        nonlocal cache
        if name not in cache:
            raise AttributeError(
                "Object has no attribute '{}'".format(name)
        return deepcopy(cache[name])
    cls = type('SpaceFrozenValues', (),{
        '__getattr__': getattr,
        '__setattr__': setattr
    return cls()

fv = SpaceFrozenValues()
print(fv.x) # AttributeError: Object has no attribute 'x'
fv.x = 2 # bind attribute x
print(fv.x) # print "2"
fv.x = 3 # raise "AttributeError: Cannot reassign members"
fv.y = {'name': 'y', 'value': 2} # bind attribute y
print(fv.y) # print "{'name': 'y', 'value': 2}"
fv.y['name'] = 'yprime' # you can try to change mutable objects
print(fv.y) # print "{'name': 'y', 'value': 2}"
fv.y = {} # raise "AttributeError: Cannot reassign members"

A constant space (ConstantSpace)

This idiom is an immutable namespace of constant variables or ConstantSpace. It is a combination of awesomely simple Jon Betts' answer in stackoverflow with a class factory.

def ConstantSpace(**args):
    args['__slots__'] = ()
    cls = type('ConstantSpace', (), args)
    return cls()

cs = ConstantSpace(
    x = 2,
    y = {'name': 'y', 'value': 2}

print(cs.x) # print "2"
cs.x = 3 # raise "AttributeError: 'ConstantSpace' object attribute 'x' is read-only"
print(cs.y) # print "{'name': 'y', 'value': 2}"
cs.y['name'] = 'yprime' # mutable object can be changed
print(cs.y) # print "{'name': 'yprime', 'value': 2}"
cs.y = {} # raise "AttributeError: 'ConstantSpace' object attribute 'x' is read-only"
cs.z = 3 # raise "AttributeError: 'ConstantSpace' object has no attribute 'z'"

A frozen space (FrozenSpace)

This idiom is an immutable namespace of frozen variables or FrozenSpace. It is derived from the previous pattern by making each variable a protected property by closure of the generated FrozenSpace class.

from copy import deepcopy

def FreezeProperty(value):
    cache = deepcopy(value)
    return property(
        lambda self: deepcopy(cache)

def FrozenSpace(**args):
    args = {k: FreezeProperty(v) for k, v in args.items()}
    args['__slots__'] = ()
    cls = type('FrozenSpace', (), args)
    return cls()

fs = FrozenSpace(
    x = 2,
    y = {'name': 'y', 'value': 2}

print(fs.x) # print "2"
fs.x = 3 # raise "AttributeError: 'FrozenSpace' object attribute 'x' is read-only"
print(fs.y) # print "{'name': 'y', 'value': 2}"
fs.y['name'] = 'yprime' # try to change mutable object
print(fs.y) # print "{'name': 'y', 'value': 2}"
fs.y = {} # raise "AttributeError: 'FrozenSpace' object attribute 'x' is read-only"
fs.z = 3 # raise "AttributeError: 'FrozenSpace' object has no attribute 'z'"

Python dictionaries are mutable, so they don't seem like a good way to declare constants:

>>> constants = {"foo":1, "bar":2}
>>> print constants
{'foo': 1, 'bar': 2}
>>> constants["bar"] = 3
>>> print constants
{'foo': 1, 'bar': 3}

Here's a trick if you want constants and don't care their values:

Just define empty classes.


class RED: 
class BLUE: 

In python, a constant is simply a variable with a name in all capitals, with words separated by the underscore character,



The value is mutable, as in you can change it. But given the rules for the name tell you is a constant, why would you? I mean, it is your program after all!

This is the approach taken throughout python. There is no private keyword for the same reason. Prefix the name with an underscore and you know it is intended to be private. Code can break the rule....just as a programmer could remove the private keyword anyway.

Python could have added a const keyword... but a programmer could remove keyword and then change the constant if they want to, but why do that? If you want to break the rule, you could change the rule anyway. But why bother to break the rule if the name makes the intention clear?

Maybe there is some unit test where it makes sense to apply a change to value? To see what happens for an 8 day week even though in the real world the number of days in the week cannot be changed. If the language stopped you making an exception if there is just this one case you need to break the rule...you would then have to stop declaring it as a constant, even though it still is a constant in the application, and there is just this one test case that sees what happens if it is changed.

The all upper case name tells you it is intended to be a constant. That is what is important. Not a language forcing constraints on code you have the power to change anyway.

That is the philosophy of python.


There's no perfect way to do this. As I understand it most programmers will just capitalize the identifier, so PI = 3.142 can be readily understood to be a constant.

On the otherhand, if you want something that actually acts like a constant, I'm not sure you'll find it. With anything you do there will always be some way of editing the "constant" so it won't really be a constant. Here's a very simple, dirty example:

def define(name, value):
  if (name + str(id(name))) not in globals():
    globals()[name + str(id(name))] = value

def constant(name):
  return globals()[name + str(id(name))]



This looks like it will make a PHP-style constant.

In reality all it takes for someone to change the value is this:

globals()["PI"+str(id("PI"))] = 3.1415

This is the same for all the other solutions you'll find on here - even the clever ones that make a class and redefine the set attribute method - there will always be a way around them. That's just how Python is.

My recommendation is to just avoid all the hassle and just capitalize your identifiers. It wouldn't really be a proper constant but then again nothing would.


Maybe pconst library will help you (github).

$ pip install pconst

from pconst import const
const.APPLE_PRICE = 100
const.APPLE_PRICE = 200

[Out] Constant value of "APPLE_PRICE" is not editable.


I am trying different ways to create a real constant in Python and perhaps I found the pretty solution.


Create container for constants

>>> DAYS = Constants(
...     MON=0,
...     TUE=1,
...     WED=2,
...     THU=3,
...     FRI=4,
...     SAT=5,
...     SUN=6
... )   

Get value from container

>>> DAYS['MON']

Represent with pure python data structures

>>> list(DAYS)
['WED', 'SUN', 'FRI', 'THU', 'MON', 'TUE', 'SAT']
>>> dict(DAYS)
{'WED': 2, 'SUN': 6, 'FRI': 4, 'THU': 3, 'MON': 0, 'TUE': 1, 'SAT': 5}

All constants are immutable

>>> DAYS.MON = 7
AttributeError: Immutable attribute

>>> del DAYS.MON 
AttributeError: Immutable attribute

Autocomplete only for constants

>>> dir(DAYS)
['FRI', 'MON', 'SAT', 'SUN', 'THU', 'TUE', 'WED']

Sorting like list.sort

>>> DAYS.sort(key=lambda (k, v): v, reverse=True)
>>> list(DAYS)
['SUN', 'SAT', 'FRI', 'THU', 'WED', 'TUE', 'MON']

Copability with python2 and python3

Simple container for constants

from collections import OrderedDict
from copy import deepcopy

class Constants(object):
    """Container of constant"""

    __slots__ = ('__dict__')

    def __init__(self, **kwargs):

        if list(filter(lambda x: not x.isupper(), kwargs)):
            raise AttributeError('Constant name should be uppercase.')

        super(Constants, self).__setattr__(
            OrderedDict(map(lambda x: (x[0], deepcopy(x[1])), kwargs.items()))

    def sort(self, key=None, reverse=False):
        super(Constants, self).__setattr__(
            OrderedDict(sorted(self.__dict__.items(), key=key, reverse=reverse))

    def __getitem__(self, name):
        return self.__dict__[name]

    def __len__(self):
        return  len(self.__dict__)

    def __iter__(self):
        for name in self.__dict__:
            yield name

    def keys(self):
        return list(self)

    def __str__(self):
        return str(list(self))

    def __repr__(self):
        return '<%s: %s>' % (self.__class__.__name__, str(self.__dict__))

    def __dir__(self):
        return list(self)

    def __setattr__(self, name, value):
        raise AttributeError("Immutable attribute")

    def __delattr__(*_):
        raise AttributeError("Immutable attribute")


You can use StringVar or IntVar, etc, your constant is const_val

val = 'Stackoverflow'
const_val = StringVar(val)
const.trace('w', reverse)

def reverse(*args):

You can do it with collections.namedtuple and itertools:

import collections
import itertools
def Constants(Name, *Args, **Kwargs):
  t = collections.namedtuple(Name, itertools.chain(Args, Kwargs.keys()))
  return t(*itertools.chain(Args, Kwargs.values()))

>>> myConstants = Constants('MyConstants', 'One', 'Two', Three = 'Four')
>>> print myConstants.One
>>> print myConstants.Two
>>> print myConstants.Three
>>> myConstants.One = 'Two'
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
AttributeError: can't set attribute

(This paragraph was meant to be a comment on those answers here and there, which mentioned namedtuple, but it is getting too long to be fit into a comment, so, here it goes.)

The namedtuple approach mentioned above is definitely innovative. For the sake of completeness, though, at the end of the NamedTuple section of its official documentation, it reads:

enumerated constants can be implemented with named tuples, but it is simpler and more efficient to use a simple class declaration:

class Status:
    open, pending, closed = range(3)

In other words, the official documentation kind of prefers to use a practical way, rather than actually implementing the read-only behavior. I guess it becomes yet another example of Zen of Python:

Simple is better than complex.

practicality beats purity.


In Python, constants do not exist, but you can indicate that a variable is a constant and must not be changed by adding CONST_ to the start of the variable name and stating that it is a constant in a comment:

myVariable = 0
CONST_daysInWeek = 7    # This is a constant - do not change its value.   
CONSTANT_daysInMonth = 30 # This is also a constant - do not change this value.

Alternatively, you may create a function that acts like a constant:

def CONST_daysInWeek():
    return 7;

All of the answers given are essentially of two types:

  1. Create some sort of object for which you can create attributes which cannot be changed once defined.
  2. Use a convention (like writing constants in all UPPERCASE or, for Python 3.8, use the final qualifier to indicate that you intend one or more names to be a constant.

They can be summarized as saying "you cannot do what you ask using Python".

However, there is actually a way to create a module with true constants. The code to do so is rather involved, and I will only give an outline of what is needed to do as it is already available under an open source license.

  1. Use an import hook to enable the creation of a custom module. The versatile code I use for this is found here.
  2. Create a special dict which allows adding items that conform to your chosen pattern (for example, names in all UPPERCASE) only once and prevent such names to have their values changed. For this, you will need to define your own methods such as __setitem__, __delitem__, etc. The code for such a dict (such as found in this file, which is over 250 lines) is approximately 100 lines long.
  3. The dict for a normal Python module cannot be modified. So, when creating the module, you need to execute the code in your special dict first, and then use its content to update the module's dict.
  4. To prevent modifications of the values of the contants from outside of the module (i.e. monkeypatching), you can replace the __class__ of the module by a custom one with the __setattr__ and __delattr__ method redefined.

The documentation about this example can be found here. It probably should be updated to reflect the number of answers given to this question.

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