Towards Foundation Inference Models that Learn ODEs In-Context

Ordinary differential equations (ODEs) describe dynamical systems evolving deterministically in continuous time. Accurate data-driven modeling of systems as ODEs, a central problem across the natural sciences, remains challenging, especially if the data is sparse or noisy. We introduce FIM-ODE (Foundation Inference Model for ODEs), a pretrained neural model designed to estimate ODEs zero-shot (i.e., in context) from sparse and noisy observations. Trained on synthetic data, the model utilizes a flexible neural operator for robust ODE inference, even from corrupted data. We empirically verify that FIM-ODE provides accurate estimates, on par with a neural state-of-the-art method, and qualitatively compare the structure of their estimated vector fields.

  • Veröffentlicht in:
    AI in Science Summit 2025
  • Typ:
    Article
  • Autoren:
    Mauel, Maximilian; Hinz, Manuel; Seifner, Patrick; Berghaus, David; Sanchez, Ramses
  • Jahr:
    2025
  • Source:
    https://arxiv.org/abs/2510.12650

Informationen zur Zitierung

Mauel, Maximilian; Hinz, Manuel; Seifner, Patrick; Berghaus, David; Sanchez, Ramses: Towards Foundation Inference Models that Learn ODEs In-Context, AI in Science Summit 2025, 2025, November, https://arxiv.org/abs/2510.12650, Mauel.etal.2025a,