概要
This project enhances jQAssistant-generated Neo4j graphs by linking compiled Java/Kotlin artifacts to their original source code and then generating multi-level, context-aware summaries for every codebase component. It addresses the limitations of bytecode-only graphs by building source code structure and class hierarchy overlays, integrating semantic understanding crucial for AI. The resulting multi-layered knowledge graph provides a powerful foundation for advanced code analysis and interaction with AI agents, enabling deep insights into software architecture, behavior, and design.