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Изворен канал @pythonotes · Post #104 · 19 јун.

Ещё немного про base64. Собрал пример со встроенной в код картинкой. Это иконка для окна на PySide2. Файл кодирован в base64 и просто сохранён в переменной. Для использования этих данных даже не пришлось сохранять их в новый файл. Иконка создаётся на лету с помощью метода QPixmap.loadFromData() ... raw_data = base64.decodebytes(ico_encoded) ico = QPixmap() ico.loadFromData(raw_data, "PNG") ... 🌎 Полный пример смотрите в gists. #libs#tricks#qt

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@githubtrending · Post #14693 · 10.05.2025 г., 12:00

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