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Interactive Debugging and Steering of Multi-Agent AI Systems

3 March 2025
Will Epperson
Gagan Bansal
Victor C. Dibia
Adam Fourney
Jack Gerrits
Erkang Zhu
Saleema Amershi
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Abstract

Fully autonomous teams of LLM-powered AI agents are emerging that collaborate to perform complex tasks for users. What challenges do developers face when trying to build and debug these AI agent teams? In formative interviews with five AI agent developers, we identify core challenges: difficulty reviewing long agent conversations to localize errors, lack of support in current tools for interactive debugging, and the need for tool support to iterate on agent configuration. Based on these needs, we developed an interactive multi-agent debugging tool, AGDebugger, with a UI for browsing and sending messages, the ability to edit and reset prior agent messages, and an overview visualization for navigating complex message histories. In a two-part user study with 14 participants, we identify common user strategies for steering agents and highlight the importance of interactive message resets for debugging. Our studies deepen understanding of interfaces for debugging increasingly important agentic workflows.

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@article{epperson2025_2503.02068,
  title={ Interactive Debugging and Steering of Multi-Agent AI Systems },
  author={ Will Epperson and Gagan Bansal and Victor Dibia and Adam Fourney and Jack Gerrits and Erkang Zhu and Saleema Amershi },
  journal={arXiv preprint arXiv:2503.02068},
  year={ 2025 }
}
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