Modern science emerged from reasoning over repeatedly-observed planetary motions. We present Gravity-Bench-v1, an environment-based benchmark that challenges AI agents on tasks that parallel this historical development. Gravity-Bench-v1 evaluates agents on the discovery of physics concealed within a dynamic environment, using rigorous gravitational dynamics simulations. Gravity-Bench includes out-of-distribution cases, i.e. with physics that deviates from the real world, to evaluate true scientific generalization capabilities. Agents must plan to collect data within an experimental budget and must perform a dynamic form of data analysis and reasoning to solve tasks efficiently. Our benchmark admits an open-ended space of solutions. Reference solutions for each task are provided to calibrate AI performance against human expertise. Technically at an upper-undergraduate level, our benchmark proves challenging to baseline AI agents. Gravity-Bench-v1 and planned extensions should help map out AI progress towards scientific discovery capabilities.
Gravity-Bench-v1: A Benchmark on Gravitational Physics Discovery for Agents
Gravity-Bench-v1 evaluates AI agents' ability to discover physics through gravitational dynamics simulations, including out-of-distribution cases, requiring efficient data collection and analysis.
- Year
- 2025
- Venue
- arXiv 2025
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2501.18411v2ARXIV-DEFAULT
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