Build a Knowledge Based System with Vertex AI Vector Search, LangChain and Gemini
Offered By: Google Cloud via Coursera
Course Description
Overview
This is a self-paced lab that takes place in the Google Cloud console. In this lab, you use Vertex AI Vector Search to index documents and create a knowledge base. The knowledge base is utilized to retrieve relevant search results to supply with a query submitted to a large language model (LLM), in this case, Gemini, as context. This technique is known as retrieval augmentation generation (RAG).
Syllabus
- Build a Knowledge Based System with Vertex AI Vector Search, LangChain and Gemini
Taught by
Google Cloud Training
Related Courses
Learn Google Bard and GeminiUdemy Gemini and the Future of Generative AI Tools - Interview with Simon Tokumine
TensorFlow via YouTube Gemini and GPT Sales Agents with RAG - Comparison and Implementation
echohive via YouTube Building a Streamlit Interface for Unified Chat with Multiple LLMs
echohive via YouTube Gemini 1.5 Pro for Code - Building LLM Agents with CrewAI
Sam Witteveen via YouTube