Building a Q&A App with RAG, LangChain, and Open-Source LLMs - Step-by-Step Guide
Offered By: Code With Aarohi via YouTube
Course Description
Overview
Learn to build a powerful Q&A application using Retrieval-Augmented Generation (RAG), LangChain, and open-source Language Learning Models (LLMs) in this comprehensive step-by-step video guide. Discover the fundamentals of RAG and its role in enhancing Q&A systems, master the setup and utilization of LangChain for seamless component integration, and explore the implementation of open-source LLMs to create a robust and efficient question-answering system. Follow along with detailed instructions and code examples as you construct a sophisticated AI-powered application. Gain valuable insights into cutting-edge AI technology and its practical applications in natural language processing.
Syllabus
L-9 Build a Q&A App with RAG, LangChain, and Open-Source LLMs | Step-by-Step Guide
Taught by
Code With Aarohi
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