Retrieval-augmented generation (RAG) and graphs are a game-changing duo for anyone who wants accurate, explainable, and context-aware GenAI responses.
Pre-trained large language models (LLMs) like ChatGPT are incredibly powerful, but their business applications are limited when used as a standalone tool. Why? Because they are rooted in general, publicly available data that can quickly become outdated.
By combining RAG and graphs, developers can enhance pre-trained LLMs with relevant, business-specific data from a vast knowledge base.
Once you understand how RAG and graphs work together, you’ll be ready to use RAG to its full potential.
Zachary Blumenfeld
Product Specialist