[2603.01508] The Sentience Readiness Index: Measuring National Preparedness for the Possibility of Artificial Sentience

[2603.01508] The Sentience Readiness Index: Measuring National Preparedness for the Possibility of Artificial Sentience

arXiv - AI 4 min read

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Abstract page for arXiv paper 2603.01508: The Sentience Readiness Index: Measuring National Preparedness for the Possibility of Artificial Sentience

Computer Science > Computers and Society arXiv:2603.01508 (cs) [Submitted on 2 Mar 2026] Title:The Sentience Readiness Index: Measuring National Preparedness for the Possibility of Artificial Sentience Authors:Tony Rost View a PDF of the paper titled The Sentience Readiness Index: Measuring National Preparedness for the Possibility of Artificial Sentience, by Tony Rost View PDF HTML (experimental) Abstract:The scientific study of consciousness has begun to generate testable predictions about artificial systems. A landmark collaborative assessment evaluated current AI architectures against six leading theories of consciousness and found that none currently qualifies as a strong candidate, but that future systems might. A precautionary approach to AI sentience, which holds that credible possibility of sentience warrants governance action even without proof, has gained philosophical and institutional traction. Yet existing AI readiness indices, including the Oxford Insights Government AI Readiness Index, the IMF AI Preparedness Index, and the Stanford AI Index, measure economic, technological, and governance preparedness without assessing whether societies are prepared for the possibility that AI systems might warrant moral consideration. This paper introduces the Sentience Readiness Index (SRI), a composite index measuring national-level preparedness across six weighted categories for 31 jurisdictions. The SRI was constructed following the OECD/JRC framework for composite in...

Originally published on March 03, 2026. Curated by AI News.

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