


How Do I Add Custom Directories to PYTHONPATH on Windows to Access My Modules?
Adding Directories to PYTHONPATH in Windows for Module Accessibility
Windows users frequently encounter challenges when attempting to access modules and packages stored in custom directories. To enable seamless integration with the Python interpreter, it is crucial to modify the PYTHONPATH variable. Here's a comprehensive guide to add the necessary directories:
- Identify the Directory: Determine the location of the directory that hosts the desired modules/packages. In this case, it is C:My_Projects.
-
Modify Windows Path Variable: Open the Windows Control Panel and navigate to "System and Security." Under "System," click "Advanced System Settings." In the "Environment Variables" section, select the "Path" variable under "System Variables."
- Edit the "Path" variable and append a semicolon (;) followed by C:My_Projects.
- Alternatively, create a new system variable named "PYTHONPATH" and set its value to C:My_Projects.
- Set the PYTHONPATH Variable: Open a command prompt or terminal. Enter the following command to set the PYTHONPATH variable:
set PYTHONPATH=C:\My_Projects
- Test the Changes: After making the modifications, verify if the issue is resolved. In the example provided, try importing the "coltrane" module using the following command:
import coltrane
If the module loads successfully, the PYTHONPATH changes were implemented correctly.
-
Troubleshooting:
- Ensure that the directory path is correct.
- Check if both "PYTHONPATH" and "Path" variables are set correctly.
- Restart the command prompt or terminal to ensure changes take effect.
The above is the detailed content of How Do I Add Custom Directories to PYTHONPATH on Windows to Access My Modules?. For more information, please follow other related articles on the PHP Chinese website!

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