Build AI-Supercharged RAG Apps with a Vector Database
Offered By: Linux Foundation via YouTube
Course Description
Overview
Explore the intersection of AI and databases in this hands-on tutorial focused on building AI-supercharged Retrieval Augmented Generation (RAG) applications using a vector database. Dive into the world of AI-native databases and discover how they empower developers to create powerful AI-driven tools. Learn to leverage vector indexes, implement vector and hybrid search techniques, and harness the potential of retrieval augmented generation. Gain practical experience working with an open-source stack, including embeddings, a vector database, and a language model. Master the art of enhancing search capabilities, integrating generative AI models, and improving their performance. Understand the concept of multi-tenancy in AI applications and its implementation. By the end of this 1 hour and 35 minute session, acquire the skills to infuse your applications with AI superpowers, enabling faster and more efficient AI-driven solutions for your business or customers.
Syllabus
Tutorial: Build AI-Supercharged RAG Apps with a Vector Database - JP Hwang, Weaviate
Taught by
Linux Foundation
Tags
Related Courses
Pinecone Vercel Starter Template and RAG - Live Code Review Part 2Pinecone via YouTube Will LLMs Kill Search? The Future of Information Retrieval
Aleksa Gordić - The AI Epiphany via YouTube RAG But Better: Rerankers with Cohere AI - Improving Retrieval Pipelines
James Briggs via YouTube Advanced RAG - Contextual Compressors and Filters - Lecture 4
Sam Witteveen via YouTube LangChain Multi-Query Retriever for RAG - Advanced Technique for Broader Vector Space Search
James Briggs via YouTube