


How to Resolve the \'No Module Named _sqlite3\' Error in Django for Debian 5?
Error: "No module named _sqlite3" in Django and Python
When attempting to run a Django application on Debian 5, the error "No module named _sqlite3" may occur. This error indicates that the Python installation is missing a required SQLite wrapper module.
Possible Cause:
The default Debian Python 2.5 makefile may have omitted the inclusion of the appropriate shared object (.so) file.
Solution:
To resolve this issue, follow these steps:
- Install sqlite3 Development Package: Install the sqlite-devel or libsqlite3-dev package, which provides the necessary header files.
- Reconfigure and Recompile Python: Use the ./configure --enable-loadable-sqlite-extensions command to configure Python with SQLite extension support. Then, recompile Python with make and sudo make install.
Note:
The sudo make install command will set the compiled Python version as the system-wide standard. If you prefer to install alongside the existing Python, use sudo make altinstall instead.
After completing these steps, the Python installation should have the required SQLite wrapper modules. You should be able to run Django and Python without encountering the "No module named _sqlite3" error.
The above is the detailed content of How to Resolve the \'No Module Named _sqlite3\' Error in Django for Debian 5?. For more information, please follow other related articles on the PHP Chinese website!

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