AI RESEARCH

Open-World Evaluations for Measuring Frontier AI Capabilities

arXiv CS.AI

ArXi:2605.20520v1 Announce Type: new Benchmark-based evaluation remains important for tracking frontier AI progress. But it can both overstate and understate deployed capability because it privileges tasks that can be precisely specified, automatically graded, easy to optimize for, and run with low budgets and short time horizons. We advocate for a complementary class of evaluations, which we term open-world evaluations: long-horizon, messy, real-world tasks assessed through small-sample qualitative analysis rather than benchmark-scale automation.