Python's Alternatives to Switch Statements
In other編程語(yǔ)言, developers often rely on switch or case statements to return different values based on input values. However, Python lacks an explicit switch statement. This article explores various Python solutions to address this need.
Introducing Python 3.10's Match-Case Statement
Python 3.10 introduced the powerful match-case statement, which mimics a "switch" construct. It allows for matching various patterns against a given value and returning corresponding values. For instance:
Leveraging Dictionaries for Versions Prior to Python 3.10
If you need to support Python versions prior to 3.10, dictionaries can provide a flexible alternative:
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