AI RESEARCH

Physics-informed fine-tuning of foundation models for partial differential equations

arXiv CS.AI

ArXi:2603.15431v1 Announce Type: cross Foundation models for partial differential equations (PDEs) have emerged as powerful surrogates pre-trained on diverse physical systems, but adapting them to new downstream tasks remains challenging due to limited task-specific data and distribution shifts. While fine-tuning has proven transformative in natural language processing, best practices for adapting PDE foundation models remain underexplored. Although physics-informed