Research Team - Autogen
This notebook demonstrates the use of a multi-agent system for collaborative research using the AutoGen library. The system leverages multiple agents to interact and solve tasks collaboratively, focusing on efficient task execution and quality assurance.
Multi-agent systems can enhance collaborative research by distributing tasks among specialized agents. This approach aims to demonstrate how agents with distinct roles can work together to achieve complex objectives.
What you'll learn
- 1AutoGen Library: Facilitates the creation and management of multi-agent interactions.
- 2Agents: Include a human admin, AI developer, planner, executor, and quality assurance agent, each with specific responsibilities.
- 3Group Chat: Manages the conversation flow and context among agents.
About this tutorial
This hands-on Jupyter notebook is part of GenAI Agents, a free open-source repository by Nir Diamant covering ai agents techniques with runnable code examples and detailed explanations.
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