PyCharm allows spaces before Python file names, but caution is recommended as doing so may cause problems with command line scripts, version control, or third-party libraries.
PyCharm Does PyCharm allow spaces before the file name when creating a new Python file?
Answer: Yes
Details:
PyCharm is a popular Python development environment that allows You include spaces before the filename when creating a new Python file. This is because Windows and other operating systems allow spaces before file names.
However, using spaces can cause problems in some cases. For example:
- Command line script: Some command line tools may not parse file names with spaces correctly.
- Version Control: Some version control systems may treat file names with spaces as different files.
- Third-party libraries: Some third-party libraries may not handle file names with spaces correctly.
To avoid these problems, it is best to avoid using spaces before Python file names. However, if you need to use spaces in file names in some cases, PyCharm allows you to do so, but caution is recommended.
The above is the detailed content of Can pycharm's new python file have spaces?. For more information, please follow other related articles on the PHP Chinese website!

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