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Изворен канал @pythonotes · Post #172 · 26 окт.

Метод строки isidentifier() поможет узнать, подходит ли данная строка в качестве имени объекта. Вполне может заменить самостоятельно придуманную регулярку. >>> 'some_name'.isidentifier() True Обычное имя переменной >>> '私は手紙です'.isidentifier() True Юникод в качестве имени тоже доступен >>> '1_name'.isidentifier() False Имя не может начинаться с цифры >>> '੬_name'.isidentifier() False Включая все цифры юникода >>> 'some name'.isidentifier() False Пробелы недопустимы #basic

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@githubtrending · Post #15523 · 25.02.2026 г., 12:30

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