Autogen: A Basic Understanding
Last Updated on February 6, 2026 by Editorial Team
Author(s): Rashmi
Originally published on Towards AI.
Subtitle
AutoGen is Microsoft’s open-source framework for building multi-agent AI applications where multiple AI agents collaborate to solve complex tasks. It enables agents to have conversations with each other, share context, and work together autonomously to achieve goals.

This comprehensive guide covers how AutoGen allows for efficient multi-agent systems that collaborate in various tasks, detailing core concepts such as conversable agents, agent autonomy, and human oversight. The article highlights advantages like modularity and flexibility in agent behaviors, and discusses practical use cases ranging from quantitative analysis in finance to education. It furthermore provides insights into the system architecture and future enhancements like memory systems and integration with additional tools, offering best practices for deploying these systems successfully.
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