arXiv Open Access 2026

Solving Physics Olympiad via Reinforcement Learning on Physics Simulators

Mihir Prabhudesai Aryan Satpathy Yangmin Li Zheyang Qin Nikash Bhardwaj +4 lainnya
Lihat Sumber

Abstrak

We have witnessed remarkable advances in LLM reasoning capabilities with the advent of DeepSeek-R1. However, much of this progress has been fueled by the abundance of internet question-answer (QA) pairs, a major bottleneck going forward, since such data is limited in scale and concentrated mainly in domains like mathematics. In contrast, other sciences such as physics lack large-scale QA datasets to effectively train reasoning-capable models. In this work, we show that physics simulators can serve as a powerful alternative source of supervision for training LLMs for physical reasoning. We generate random scenes in physics engines, create synthetic question-answer pairs from simulated interactions, and train LLMs using reinforcement learning on this synthetic data. Our models exhibit zero-shot sim-to-real transfer to real-world physics benchmarks: for example, training solely on synthetic simulated data improves performance on IPhO (International Physics Olympiad) problems by 5-10 percentage points across model sizes. These results demonstrate that physics simulators can act as scalable data generators, enabling LLMs to acquire deep physical reasoning skills beyond the limitations of internet-scale QA data. Code available at: https://sim2reason.github.io/.

Penulis (9)

M

Mihir Prabhudesai

A

Aryan Satpathy

Y

Yangmin Li

Z

Zheyang Qin

N

Nikash Bhardwaj

A

Amir Zadeh

C

Chuan Li

K

Katerina Fragkiadaki

D

Deepak Pathak

Format Sitasi

Prabhudesai, M., Satpathy, A., Li, Y., Qin, Z., Bhardwaj, N., Zadeh, A. et al. (2026). Solving Physics Olympiad via Reinforcement Learning on Physics Simulators. https://arxiv.org/abs/2604.11805

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2026
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓