


Understanding Invocation Differences in Python Code Execution with -m
The Python interpreter provides the -m option, which allows you to execute library modules as scripts within the __main__ module. This approach differs from running scripts directly without the -m option, leading to certain distinctions and implications.
Practical Differences
When using -m, Python manages packages differently. If you attempt to execute a package without -m, the interpreter will treat it as a regular script. In contrast, with -m, packages can be imported and relative imports will correctly consider the package as the starting point.
For example, consider the following code in a.py:
<code class="py">if __name__ == "__main__": print(__package__) print(__name__)</code>
Running python a.py results in:
None __main__
Whereas, using python -m a yields:
"" __main__
Here, the __package__ variable is empty in the first case because the file is executed as a script. With -m, __package__ is set to an empty string since the module is not within a package.
Explanation of package and name
For __package__:
- For scripts run without -m, __package__ is set to None as they cannot be packages.
- For modules run with -m that are within packages, __package__ is set to the name of the package.
For __name__:
- It references the main module created when running scripts.
- For packages run with -m, it refers to the global namespace stored in sys.modules['__main__']. The main module in a package is executed when running the package with -m.
Implications for Package Execution
Running a package as a script with -m requires a __main__.py module within the package. This module acts as the entry point when Python executes the package using the -m switch.
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