


`type()` vs. `isinstance()` in Python: When Should I Use Which?
Differences Between type() and isinstance()
In Python, there are two ways to check the type of an object: type() and isinstance(). While both functions serve the same purpose, they differ in their behavior and approach.
type()
The type() function returns the class of the object passed to it. It checks for exact type equality, meaning that if an object is a subclass of a specified type, the type() function will not return the parent class.
class MyDerivedClass(BaseClass): pass if type(MyDerivedClass()) is BaseClass: print("True") # This will print False
isinstance()
The isinstance() function checks whether an object is an instance of a specified class or subclass. Unlike type(), it recursively checks the entire class hierarchy, including inherited classes.
class MyDerivedClass(BaseClass): pass if isinstance(MyDerivedClass(), BaseClass): print("True") # This will print True
Implications for Usage
The main difference between type() and isinstance() lies in their approach to class inheritance. type() only checks for exact type equality, while isinstance() considers the entire class hierarchy. This distinction is important when dealing with inheritance and polymorphism.
Generally, it is preferred to use isinstance() when checking for types, as it caters to inheritance. However, there may be specific situations where exact type equality is required, in which case type() should be used.
Alternatives to Type Checking
In many cases, it is preferable to avoid explicit type checking and instead rely on "duck typing," which checks if an object has the required attributes or methods to perform a specific task.
if hasattr(obj, "method_name"): ...
Duck typing is more flexible and idiomatic in Python, as it allows for seamless substitution of objects with different types but similar interfaces.
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