


How Can I Execute Python Scripts From Anywhere Without Changing Directories?
Using PYTHONPATH to Execute Python Scripts
You may have encountered an issue where you cannot execute a Python script from the command line without changing directories to its location. This can lead to confusion, as the PYTHONPATH environment variable is designed to set the search path for importing Python modules.
PYTHONPATH Limitations
Contrary to what you might expect, PYTHONPATH does not facilitate the execution of Python scripts. Instead, it is used exclusively for importing modules during program execution. Modules are separate files that contain Python code and can be reused across multiple programs. By specifying PYTHONPATH, you instruct the Python interpreter to search for modules in the specified directories. This eliminates the need to manually specify the module's location within your program.
Program Execution and PATH
To execute Python scripts directly from the command line, you need to modify the PATH environment variable. PATH defines the list of directories where the shell searches for executable files. To add your Python script directory to PATH, use the following command:
<code class="Bash">export PATH=$PATH:/path/to/python/script/directory</code>
Shebang and File Permissions
To run the Python script as a program, you must also add a shebang line to the beginning of the script file. A shebang line specifies the interpreter to be used when executing the file. For Python scripts, use the following shebang line:
#!/usr/bin/env python
Finally, ensure that the script file has execution permissions. You can grant execution permissions using the following command:
<code class="Bash">chmod +x /path/to/python/script.py</code>
With these steps complete, you should be able to execute your Python script from any directory by simply typing its name in the command line.
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