Python Eggs: A Primer
In the Python ecosystem, eggs play a significant role in distributing code as packages. Similar to a Java's .jar file, an egg is essentially a .zip file with additional metadata files, providing portable bundles of Python code.
Purpose and Benefits of Eggs
Eggs encapsulate the code, resources, and metadata related to a specific Python project. The advantage of this format lies in its self-contained nature. Each project resides within a single directory or file, segregated from other code, simplifying distribution, uninstallation, and upgrades. Additionally, it allows multiple versions of a project to coexist, enabling individual programs to choose their preferred versions.
Internal Structure of Python Eggs
A Python egg is a collection of files and directories conforming to specific conventions:
- The egg metadata is stored in a special file named .egg-info.
- The actual code and resources are organized within a directory (e.g., lib or src).
- Optionally, scripts and data files can be included in other directories (e.g., scripts or data).
Creating Python Eggs
To create an egg, the following steps are typically involved:
- Gather the project's code, resources, and metadata.
- Use the setup.py script to define the project's metadata and dependencies.
- Run the python setup.py bdist_egg command to build the egg.
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