MCP-RAG
0
Orchestrates multi-agent AI workflows for business analysis by combining Model Context Protocol (MCP) with Retrieval-Augmented Generation (RAG).
소개
This project showcases a lightweight demonstration of combining Model Context Protocol (MCP) with Retrieval-Augmented Generation (RAG) to build sophisticated agentic AI systems. It is designed to orchestrate multiple specialized AI agents for tasks like business analysis, enabling context-aware information retrieval, automated statistical analysis, and modular integration of various LLM backends and tools through a natural language interface. This architecture promotes easy extensibility and allows non-technical users to query complex business data and knowledge bases effectively.
주요 기능
- MCP-Based Coordination for multiple specialized servers
- Integrated business analytics tools for statistical analysis
- RAG knowledge base for business terms, policies, and guidelines
- Modular design for easy extension and LLM backend swapping
- Natural language interface for intuitive querying
- 0 GitHub stars
사용 사례
- Analyze performance correlation between different business metrics like sales and expenses
- Build predictive models using linear regression for forecasting earnings
- Perform sales analysis, such as calculating average earnings for a specific quarter