Build More Capable LLMs with Retrieval Augmented Generation
Offered By: Data Centric via YouTube
Course Description
Overview
Explore how retrieval-augmented generation enhances large language models' capabilities in this 57-minute video. Learn to overcome ChatGPT's limitations due to its 2021 training data cutoff by giving models access to a knowledge base and utilizing agents to answer questions based on facts. Discover how to build your first LLM-powered application, access a technical blog for in-depth information, and find the associated GitHub repository. Sign up for a comprehensive course, book a free consultation, and follow the presenter on Medium for more content. Engage with the video by commenting, liking, and subscribing to stay updated with the latest developments in LLM technology.
Syllabus
Build More Capable LLMs with Retrieval Augmented Generation
Taught by
Data Centric
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