Custom exceptions are used in Python to improve code clarity and maintenance. When you need to distinguish between different error types, such as handling format errors in user input modules, network request failures, etc., custom exceptions can make it easier for callers to identify and catch specific errors, classify errors, and add additional information (such as error codes). When defining, you need to create a new class that inherits Exception, such as class InvalidInputError(Exception): pass, and you can add specific information to the __init__ method. Best practices include: 1. Reasonably design hierarchical structures, such as establishing the base class MyLibraryError for NetworkError and FileError inheritance; 2. Avoid overuse and create only if the error needs to be processed separately; 3. The document explains the exceptions thrown by the API; 4. Avoid empty exception classes, it is recommended to add __init__ to pass information. The capture and handling methods are consistent with other exceptions and can be handled uniformly for specific exceptions or base classes. Rationally using custom exceptions can improve code structure and debugging efficiency, but abuse should be avoided.
In Python, custom exceptions are not necessary, but when writing large programs or libraries, it can make your code clearer and easier to maintain. Using built-in Exception
can certainly solve the problem, but when you need to distinguish different error types, custom exceptions come in handy.

Why use custom exceptions?
Although Python has rich built-in exception types, they are often not specific enough. For example, if you write a module that handles user input, if the input format is incorrect, it is OK to throw ValueError
. However, if this module also uses Exception
or RuntimeError
if the network request failed, configuration file reading failed, etc., then it will be very troublesome to troubleshoot problems later.

By defining your own exception class, you can:
- Make it easier for callers to identify and catch specific errors
- Classify errors and improve the clarity of code structure
- Add extra information to the error (such as an error code)
How to define a custom exception?
In Python, custom exceptions are actually a new class that inherits Exception
class. For example:

class InvalidInputError(Exception): pass
This is already a custom exception available. You can use it like this:
def process_input(value): if not isinstance(value, str): raise InvalidInputError("Input must be a string")
Of course, you can also let it carry more information:
class ConfigLoadError(Exception): def __init__(self, filename, reason): self.filename = filename self.reason = reason super().__init__(f"Cannot load configuration file {filename}: {reason}")
In this way, when catching exceptions, different processing can be done according to specific attributes.
Best practices for custom exceptions
The hierarchy should be reasonable : if you have multiple related error types, you can create a base class and then let other exceptions inherit it. For example:
class MyLibraryError(Exception): pass class NetworkError(MyLibraryError): pass class FileError(MyLibraryError): pass
In this way, the caller can only catch
MyLibraryError
without having to care about which error it is.Don't overuse : Not every error requires a new class. It is only worth creating if the error needs to be processed separately.
The document explains exception behavior : especially for the API provided to the outside world, you must write clearly what exceptions will be thrown, otherwise it will be difficult for users to deal with.
Avoid empty exception class : Although you can only write
pass
, it is best to add the__init__
method to facilitate passing in error messages or context.
How to catch and handle custom exceptions?
Like other exceptions, just use try-except
:
try: process_input(123) except InvalidInputError as e: print(f"Enter error: {e}")
If you have a set of custom exceptions that are inherited from the same base class, they can also be handled uniformly:
try: load_config("config.yaml") except MyLibraryError as e: print(f"A library level error occurred: {e}")
Basically that's it. Custom exceptions are not complicated by themselves, but using them well will make the code more organized and easier to debug. The key is to design a reasonable exception structure based on actual needs, rather than abuse for the sake of "advancedness".
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