Grounding Our Chat Towards Data Science Results
In this tutorial, we learn how to ground our Retriever- Augmenter-Generator (RAG) results using LlamaIndex and citations. We start by setting up the necessary libraries and environment variables for our chatbot. Next, we define the parameters of our RAG chatbot, including the embedding model, vector database, and data abstractions. Finally, we implement citations via LlamaIndex's CitationQueryEngine module to ensure grounded results. This tutorial uses Zilliz Cloud as a fully managed and optimized version of Milvus for persisting data across multiple projects.
Company
Zilliz
Date published
Nov. 15, 2023
Author(s)
Yujian Tang
Word count
940
Language
English
Hacker News points
None found.