staticmethod does not receive implicit parameters, suitable for tool functions; classmethod receives the class as the first parameter, suitable for factory methods. ① Staticmethod is similar to ordinary functions and does not depend on instances or classes; ② classmethod can access the class state and be used to create instances; ③ Select whether the class or instance needs to be accessed and whether it needs to be used as a factory method.
In Python, both staticmethod
and classmethod
are methods defined in classes, but their uses and behavior are significantly different. Simply put:

-
staticmethod
is similar to ordinary functions, but is placed in a class without relying on instances or the class itself; - The first parameter received by
classmethod
is the class (usuallycls
) which is suitable for use in factory methods or class-related operations.
The following is a detailed description of the differences and application of the two from several common usage scenarios.

What is staticmethod?
staticmethod
is a static method that neither automatically passes into an instance ( self
) nor a class ( cls
). You can understand it as a "normal function placed in a class".
class MathUtils: @staticmethod def add(a, b): return ab
Call method:

MathUtils.add(3, 5) # Normally call m = MathUtils() m.add(2, 4) # can also be called through instance
Applicable scenarios : When you have some logic related to a class but do not need to access a class or instance, you can use
staticmethod
. For example, tool functions, helper functions, etc.
What is classmethod used for?
The first parameter of classmethod
is the class itself (usually written as cls
), and Python will automatically pass this parameter for you. This makes it very suitable for operations that require access/modify class state.
class Person: def __init__(self, name): self.name = name @classmethod def from_full_name(cls, full_name): first, last = full_name.split(' ') return cls(f"{first} {last}")
Call method:
p1 = Person("Alice") p2 = Person.from_full_name("John Doe") # classmethod was called
Applicable scenarios :
- Create multiple constructors (factory method)
- Modify class attributes or return class-related information
- The situation where you hope that the subclass can correctly refer to its own type after inheritance
staticmethod vs classmethod: Key differences
characteristic | staticmethod | classmethod |
---|---|---|
Automatic parameter transfer | ? No implicit parameters are passed | ?The first parameter is class ( cls ) |
Whether the class status can be accessed | ? No | ? Yes |
Can it be used as a factory method | ? Not recommended | ? Recommended |
Is it affected by inheritance | ? Not affected | ? The subclass itself is passed when the subclass is called |
For example, if you write a method to create an object, but want it to return the corresponding instance type based on which class the caller is, you must use classmethod
.
Recommendations and precautions for use
- If your method does not need to access the state of an instance or class, use
staticmethod
. - If you need to access the class itself, or want to implement a factory method, give priority to
classmethod
. - Don't abuse both for the sake of "looking neat", it's more important to keep your intentions clear.
- Note the naming specification:
cls
is a conventional class parameter name, do not write it intoklass
or other strange spellings.
Basically that's it. These two decorators are not complicated, but are easy to confuse their uses. The key is to see if the method needs to access the class or instance, and whether it needs to be used as a factory method.
The above is the detailed content of Python static method vs class method. For more information, please follow other related articles on the PHP Chinese website!

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