Memory Engineering
Provides persistent memory and semantic code understanding capabilities for AI assistants.
소개
Empowers AI assistants with a sophisticated memory system that integrates persistent storage and deep semantic code understanding. This tool utilizes revolutionary code chunking that preserves complete functions and classes, enriched with context and pattern detection. Leveraging MongoDB Atlas Vector Search and Voyage AI embeddings, it enables highly effective semantic code search and provides a structured '7 Core Memories' framework for comprehensive project knowledge, enhancing AI's ability to reason and operate within complex codebases.
주요 기능
- Revolutionary Semantic Code Chunking with Context Awareness
- Integrated MongoDB Atlas Vector Search and Voyage AI Embeddings
- Advanced Semantic Code Search with Pattern Detection and Natural Language Queries
- 2 GitHub stars
- Incremental Codebase Sync and Context Preservation for Efficiency
- Seven Core Persistent Memory Categories for Project Knowledge
사용 사례
- Enable AI assistants to track project decisions, progress, and technical context over time
- Deeply understand code patterns and relationships across large and complex projects
- Semantically search codebases to find forgotten implementations or specific patterns