Christian Amend - MIA
Juan Sebastián Burbano Gallegos - MACS
Giacomo Cristinelli - MIA
Sven Dummer - MIA
Leonardo del Grande - MIA
source: http://www.malinc.se/math/trigonometry/geocentrismen.php - Heeringa - MIA
Lucas Jansen Klomp - MIA
Muhammad Hamza Khalid - MACS
Lavinia Lanting - MIA
Kaifang Liu - MACS
Xiangyi Meng - MACS
Floor van Maarschalkerwaart - MIA
Ben Minoque - MAST
Nida Mir - MIA / MDI-TNW
Hongliang Mu - MAST
Michiel Nikken - MAST
Philip Preussler - MAST
Patryk Rygiel - MIA
Hannah van Susteren - MIA
Johanna Tengler - MIA
Filippo Testa - MAST
Mei Vaish - MIA

Scientific Machine Learning (SciML)


Scientific Machine Learning (SciML) is an emerging area in computational science that investigates the synergistic integration of scientific computing and machine learning, with the goal of combining the strengths and compensating the weaknesses of both. In particular, SciML aims to (i) use numerical models for the improvement of established machine learning techniques, (ii) use data-driven machine learning techniques to assist numerical simulations, and (iii) create new efficient, reliable, and robust methodologies by employing aspects from both approaches. The SciML research in the MIA group focuses on:


  • Data-driven discovery of reduced-state dynamics through manifold learning;
  • Data-driven modeling using Gaussian processes and Bayesian neural networks;
  • Uncertainty quantification for physics-informed deep learning;
  • Physics-informed geometric deep learning;
  • Computational foundation of digital twin technologies; and
  • ……

People working on this subject within MCS are:

Staff:

PhD