


Understanding Python Class Inheritance
In Python, classes can inherit from other classes, which grants them access to the parents' attributes and methods. However, one peculiarity that often arises is why classes are declared to inherit from the object class.
Why Inherit from object (Python 2.x vs. Python 3.x)
In Python 2.x, class declarations without an explicit parent class are known as "classic" classes. These classes do not inherit from object and have a number of limitations compared to "new" style classes, which explicitly inherit from object:
- Lack of descriptor support: Features like classmethod, staticmethod, and property decorators are not available in classic classes.
- Limited instance creation: The __new__ method, which allows for customization of instance creation, is unavailable in classic classes.
- Ambiguous method resolution order: The order in which parent classes are searched for methods can be unpredictable in classic classes.
- Limited access to super calls: Super calls, which invoke methods from parent classes, are not supported in classic classes.
In Python 3.x, the distinction between classic and new style classes is eliminated. All classes are considered new style classes and implicitly inherit from object without the need for explicit declaration.
Should You Inherit from object in Python 3?
While inheriting from object is optional in Python 3, it does not provide any benefits or drawbacks. However, for compatibility reasons, it is recommended to inherit from object when writing code that may need to run in both Python 2.x and Python 3.x.
The above is the detailed content of Why Inherit from `object` in Python: A Class Inheritance Question. For more information, please follow other related articles on the PHP Chinese website!

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