The AI risk repository: A meta-review, database, and taxonomy of risks from artificial intelligence

Peter Slattery

Alexander K. Saeri

Emily A. C. Grundy

Jess Graham

Michael Noetel

Risto Uuk

James Dao

Soroush Pour

Stephen Casper

Neil Thompson

March 30, 2026
The risks posed by artificial intelligence (AI) concern academics, auditors, policymakers, AI companies, and the public. Researchers, policymakers, and technology companies discuss AI risks using inconsistent terminology—the same word may describe different problems, while different words describe identical concerns. This fragmentation impedes coordinated responses to AI challenges. We address this by creating the AI Risk Repository: a living database of 1,725 risks extracted from 74 existing taxonomies and frameworks. We organize these risks using two complementary classification systems. The Causal Taxonomy classifies risks by their origins: which entity causes them (human or AI), whether intentional, and when they occur (before or after deployment). The Domain Taxonomy classifies risks by their effects across seven areas, from discrimination and privacy violations to misinformation and weapons development. This shared reference enables more coordinated approaches to discussing, researching, auditing, and governing AI systems across sectors and jurisdictions.

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March 30, 2026
Peter Slattery, Alexander K. Saeri, Emily A.C. Grundy, Jess Graham, Michael Noetel, Risto Uuk, James Dao, Soroush Pour, Stephen Casper, Neil Thompson (). The AI risk repository: A meta-review, database, and taxonomy of risks from artificial intelligence. Published in ScienceDirect. Retrieved from https://www.sciencedirect.com/science/article/pii/S2666389926000267. Accessed .
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@article{,
  title     = { The AI risk repository: A meta-review, database, and taxonomy of risks from artificial intelligence },
  author    = { Peter Slattery, Alexander K. Saeri, Emily A.C. Grundy, Jess Graham, Michael Noetel, Risto Uuk, James Dao, Soroush Pour, Stephen Casper, Neil Thompson },
  journal   = { ScienceDirect },
  year      = {  },
  url       = { https://www.sciencedirect.com/science/article/pii/S2666389926000267 }
}
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