LLM Projects - A Quick Tutorial on Multi-Agent Workflows with AutoGen
Offered By: Data Centric via YouTube
Course Description
Overview
Explore a quick guide to the AutoGen framework for handling multi-agent workflows in this 47-minute video. Learn how to use AutoGen to answer questions on the fly by tapping into Wikipedia for information, essentially implementing retrieval augmented generation (RAG) with a multi-agent approach. Dive into practical examples and code demonstrations to understand the implementation of multi-agent systems. Gain insights into function calling, LLM-app development, and multi-hop question answering. Access complementary resources including a detailed blog post, GitHub repository with code samples, and links to further learning materials. Follow along to enhance your skills in AI, Data Science, and Large Language Models, and discover how to leverage AutoGen for complex information retrieval and processing tasks.
Syllabus
LLM Projects - A Quick Tutorial on Multi-Agent Workflows with AutoGen
Taught by
Data Centric
Related Courses
Text, Textuality and Digital MediaIndian Institute of Technology Delhi via Swayam Can Wikipedia Help Offline Reinforcement Learning - Author Interview
Yannic Kilcher via YouTube Are Anonymity-Seekers Just like Everybody Else? An Analysis of Contributions to Wikipedia from Tor
IEEE via YouTube How a Ragtag Band Created Wikipedia
TED via YouTube Entbehrliches - Unterhaltsames Wissen aus der Wikipedia
media.ccc.de via YouTube