Sep 15, 2025

Navigating Safety Measures for Nuclear Nonproliferation: AI-Enabled Early Warning Systems & Governance System For Detecting Nuclear Enrichment  

Ifeoma Ilechukwu, Marie-Louise Thurton, Victor Uchenna Jonah, Valmik Nahata and Saahir Vazirani

The Independent Atomic Energy Agency (IAEA) has always sought ways to create a balance between nuclearuse for peaceful purposes and the prevention of weapons proliferation. Yet challenges persist in the form ofclandestine uranium enrichment, covert plutonium processing and illicit trade in sensitive technologies.Recent advances in the integration of Artificial Intelligence into nuclear Command, Control andCommunication (NC3) systems and procedures could help reduce errors from being made in crisis scenarios,enhance situational awareness, improve surveillance and increase operational efficiency. However, theintroduction of AI systems would also amplify existing challenges and create room for adversarialmanipulation where proliferators intentionally feed misleading signals to evade detection systems and reducefacility footprints. This brief critically examines the vulnerabilities and limitations in existing safeguards,recent case studies such as Iran’s suspension of IAEA cooperation and a multimodal AI-enabled monitoringapproach for early detection of nuclear enrichment activities. It concludes with governance approaches toreduce nuclear related misuse and policy measures to align AI capabilities with non-proliferation norms.

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Cite this work

@misc {

title={

(HckPrj) Navigating Safety Measures for Nuclear Nonproliferation: AI-Enabled Early Warning Systems & Governance System For Detecting Nuclear Enrichment  

},

author={

Ifeoma Ilechukwu, Marie-Louise Thurton, Victor Uchenna Jonah, Valmik Nahata and Saahir Vazirani

},

date={

9/15/25

},

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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