Integrating Knowledge Bases for RAGs
How knowledge bases power RAG — from a basic pipeline to optimized, production-ready features.
GitHub Repository: Brianletort/KBs-For-RAGs
This course teaches how to transform enterprise documentation into queryable, AI-powered knowledge bases using LlamaIndex and Qdrant.
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What's inside
12 sections- 1 Table of Contents
- 2 Overview and Technology Stack
- 3 How Knowledge Bases Power RAG
- 4 Demo 1 — Basic RAG Pipeline (Clip 1)
- 5 Building and Integrating Knowledge Bases
- 6 Demo 2 — Baseline vs Optimized Comparison (Clip 2)
- 7 Optimization and Maintenance at Scale
- 8 Demo 3 — Production Features (Clip 3)
- 9 Three-Clip Comparison Table
- 10 Installation and Quick Start
- 11 Key Demonstrated Concepts
- 12 Additional Resources
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