Nov 3, 2025
Table Top Agents
Luca De Leo
We present Tabletop Agents, an AI-powered framework that accelerates AI governance scenario exploration by orchestrating autonomous AI agents through structured tabletop exercises. Traditional policy wargaming takes years to iterate—RAND's cycles span 4 years for 43 exercises. AI capabilities advance faster than policy preparation can accommodate, creating a critical tempo mismatch. Tabletop Agents compresses preparation cycles from years to minutes while maintaining strategic fidelity. Our working prototype successfully orchestrates multi-agent, multi-turn scenarios where autonomous agents communicate via CLI, persist state in SQLite, and coordinate through turn-based phases. A 2-agent, 2-turn test scenario executed in 4:40 with 5 messages exchanged, demonstrating core orchestration mechanics. The framework enables researchers to run dozens of scenario variations per week instead of months between exercises, generating empirical data on AI governance strategic dynamics at scale. By automating the role-playing that traditionally requires extensive human coordination, we provide better data, faster iteration, and realistic practice during the critical pre-AGI window.
No reviews are available yet
Cite this work
@misc {
title={
(HckPrj) Table Top Agents
},
author={
Luca De Leo
},
date={
11/3/25
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


