How to Improve Quality of Multi-Agent Systems with Agent Bricks

How to Improve Quality of Multi-Agent Systems with Agent Bricks

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Multi-Agent Supervisor Bookworm – Orchestrates Bookstock Bot, Inventory Space, and Tavly MCP for broader queries.

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5 of 10

Multi-Agent Supervisor Bookworm – Orchestrates Bookstock Bot, Inventory Space, and Tavly MCP for broader queries.

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How to Improve Quality of Multi-Agent Systems with Agent Bricks

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  1. 1 Agent Bricks Overview – Build, evaluate, and deploy multi-agent systems on Databricks with natural language.
  2. 2 Architecture: Vibe-Coding Stack – Overview of the Novel Ideas multi-agent system:
  3. 3 AI Genie Inventory Space – Uses real-time inventory and sales data for bookstore assistance.
  4. 4 Knowledge Assistant Bookstock Bot – RAG chatbot for personalized book recommendations.
  5. 5 Multi-Agent Supervisor Bookworm – Orchestrates Bookstock Bot, Inventory Space, and Tavly MCP for broader queries.
  6. 6 Improving Quality – Use “Improve Quality” to label sessions, add expectations, and merge expert feedback.
  7. 7 Wrap-Up & Next Steps
  8. 8 Using the MCP Server – Routes general questions to Tavly MCP when not in references.
  9. 9 Evaluating Performance – Use “Experiment” for traces, “Scores” for custom evals, and “Evaluations” for metrics like correctness and relevance.
  10. 10 Conclusion – Build and evaluate a multi-agent system in minutes with natural language on Databricks.

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