Nov 2, 2025

AI Treaty Momentum Index (ATMI)

Oksana Kotelnikova, Sofiia Lobanova

We present the AI Treaty Momentum Index (ATMI), a lightweight forecasting model that estimates the near-term chance of a new international AI risk treaty or binding regulation. ATMI learns from past treaties in climate, nuclear, biosafety, and finance by encoding each case with mechanism classes—buckets of factors that help or hinder agreement (e.g., Policy window, Capability shock, Verification feasibility, Public salience, Epistemic shift, Geopolitical alignment). Each mechanism is scored from −5 (hurts) to +5 (helps) per case, and we map these mechanism profiles to outcomes (treaty vs. no treaty).

We use the fit in two modes: Nowcasting—apply today’s AI governance signals to produce a current chance with 80% intervals; Scenario-casting—stress-testing futures where scenarios fork from AI-2027 milestones to see how the odds shift.

Early findings: the largest marginal lifts come from Epistemic shift and Geopolitical alignment, followed by Public salience and Epistemic infrastructure.

As of Nov 2025, ATMI estimates a ~0.6% chance of a new treaty, suppressed by misaligned geopolitics, weak verification readiness, and negative epistemic/resource shifts.

We propose to follow this MVP and build a public “anti-doomsday” tool: a web dashboard that tracks each mechanism with live indicators, shows the ATMI curve over time, and flags actionable weakest links (the marginal mechanisms whose improvement most raises the chance of agreement).

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Cite this work

@misc {

title={

(HckPrj) AI Treaty Momentum Index (ATMI)

},

author={

Oksana Kotelnikova, Sofiia Lobanova

},

date={

11/2/25

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
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