Frameworks for Developing LLM Agents
Refine prompts, add RAG context, build feedback loops and orchestrate conversational memory with Spring Boot.
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What's inside
10 sections- 1 Table of Contents
- 2 Overview and Architecture
- 3 Module 1 — Refining Prompts to Improve Content and Format
- 4 Module 2 — RAG Techniques to Enrich Agent Context
- 5 Module 3 — Improving Performance via the Feedback Loop
- 6 Module 4 — Orchestration and Conversational Memory
- 7 Complete Architecture — Final Overview
- 8 Spring Boot Project Structure
- 9 RAG Documents Used in the Demo
- 10 Summary and Best Practices
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