SwarmThinkers: Learning Physically Consistent Atomic KMC Transitions at Scale
SwarmThinkers: Learning Physically Consistent Atomic KMC Transitions at Scale
Can a scientific simulation system be physically consistent, interpretable by design, and scalable across regimes--all at once? Despite decades of progress, this trifecta remains elusive. Classical methods like Kinetic Monte Carlo ensure thermodynamic accuracy but scale poorly; learning-based methods offer efficiency but often sacrifice physical consistency and interpretability. We present SwarmThinkers, a reinforcement learning framework that recasts atomic-scale simulation as a physically grounded swarm intelligence system. Each diffusing particle is modeled as a local decision-making agent that selects transitions via a shared policy network trained under thermodynamic constraints. A reweighting mechanism fuses learned preferences with transition rates, preserving statistical fidelity while enabling interpretable, step-wise decision making. Training follows a centralized-training, decentralized-execution paradigm, allowing the policy to generalize across system sizes, concentrations, and temperatures without retraining. On a benchmark simulating radiation-induced Fe-Cu alloy precipitation, SwarmThinkers is the first system to achieve full-scale, physically consistent simulation on a single A100 GPU, previously attainable only via OpenKMC on a supercomputer. It delivers up to 4963x (3185x on average) faster computation with 485x lower memory usage. By treating particles as decision-makers, not passive samplers, SwarmThinkers marks a paradigm shift in scientific simulation--one that unifies physical consistency, interpretability, and scalability through agent-driven intelligence.
Qi Li、Kun Li、Haozhi Han、Honghui Shang、Xinfu He、Yunquan Zhang、Hong An、Ting Cao、Mao Yang
自然科学研究方法计算技术、计算机技术
Qi Li,Kun Li,Haozhi Han,Honghui Shang,Xinfu He,Yunquan Zhang,Hong An,Ting Cao,Mao Yang.SwarmThinkers: Learning Physically Consistent Atomic KMC Transitions at Scale[EB/OL].(2025-06-19)[2025-07-01].https://arxiv.org/abs/2505.20094.点此复制
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