This article brings you a detailed introduction to the if statement in python. It has certain reference value. Friends in need can refer to it. I hope it will be helpful to you.
input() gets the string. bool: Only empty values are False, any characters are True
elif
If it is a multi-condition branch, different conditions will execute differently, use The format of elif
is as follows:
if 条件1 执行代码1 elif 条件2 执行代码2 elif 条件3 执行代码3 ....... else 以上条件都不满足执行代码
can be regarded as a code block from if to elif to else and the indented code below it.
if nested
- elif, multiple conditions, each condition is level
-
The nesting of if is progressive . When meets the condition , add another branch
Syntax format:
if 条件1: if 条件2: 执行 else 不满足条件2: 执行 else 不满足条件1: 执行
pycharm Tips: Select multiple lines and press Tab to add indentation in front of each line, and then press Shift Tab to cancel the indentation
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