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🚀 Welcome to the Build Multi-Agent LLM Applications with AutoGen course! In this video, I'll explain the concept of Task Decomposition and also give a tutorial on the AutoBuild methodology. This methodology helps automatically create dynamic agents based on the task at hand. The resulting agents then interact with each other in a group setting to complete the task. 📺 Complete Playlist Link: https://www.youtube.com/playlist?list=PLlHeJrpDA0jXy_zgfzt2aUvQu3_VS5Yx_ 🔗 Exercise Files: https://github.com/shah-zeb-naveed/multi-agent-llm-apps-course 🎯 Intended Audience: This intermediate-level course is designed for data scientists, machine learning engineers, and software engineers aiming to expand their expertise into the LLM/Generative AI space 📝 Course Outline: • Environment Setup • Getting Started with AutoGen (Basic Concepts) • Large Language Model Agents • Agents with Human-in-the-Loop • Agents with Code Execution Capability • Agents with access to external tools like APIs and web scrapers • Agents in different Conversational Patterns (Sequential, Group, Nested Chats) • Agents with GPT-4 Turbto/DALL-E Image Generation Endpoints • Prompt Engineering Techniques (ReAct) with Agents • Retrieval Augmented Generation (RAG) using Chroma DB and LLM Agents • Task Decomposition (Build Automated LLM Agents) • Message Transformations for LLM Agents • Using Non-OpenAI/Open Source Models with LM Studio 🙌 Join me on this journey to explore the world of LLM Agents! ❤️ Please don't forget to SUBSCRIBE 🔔, LIKE 👍, COMMENT 💬, and SHARE 📤 to support the channel!
🚀 Welcome to the Build Multi-Agent LLM Applications with AutoGen!Are you excited about exploring the world of Generative AI? In this course, we'll learn how to create conversable and customizable AI agents powered by Large Language Models. This is a hands-on course with exercises in Python. We'll cover how to integrate external tools like APIs and web scrapers with agents. We'll cover advanced techniques like Retrieval Augmented Generation, Prompt Engineering (ReAct), and Task Decomposition. We'll also implement different conversational patterns like group chats and nested chats.📺 Complete Playlist Link: https://www.youtube.com/playlist?list=PLlHeJrpDA0jXy_zgfzt2aUvQu3_VS5Yx_🔗 Exercise Files: https://github.com/shah-zeb-naveed/multi-agent-llm-apps-course🎯 Intended Audience:This intermediate-level course is designed for data scientists, machine learning engineers, and software engineers aiming to expand their expertise into the LLM/Generative AI space.📝 Course Outline:• Environment Setup• Getting Started with AutoGen (Basic Concepts)• Large Language Model Agents• Agents with Human-in-the-Loop• Agents with Code Execution Capability• Agents with access to external tools like APIs and web scrapers• Agents in different Conversational Patterns (Sequential, Group, Nested Chats)• Agents with GPT-4 Turbto/DALL-E Image Generation Endpoints• Prompt Engineering Techniques (ReAct) with Agents• Retrieval Augmented Generation (RAG) using Chroma DB and LLM Agents• Task Decomposition (Build Automated LLM Agents)• Message Transformations for LLM Agents• Using Non-OpenAI/Open Source Models with LM Studio🙌 Join me on this journey to explore the world of LLM Agents!❤️ Please don't forget to SUBSCRIBE 🔔, LIKE 👍, COMMENT 💬, and SHARE 📤 to support the channel!