Alexander Heinlein

prof_pic5.jpg

TU Delft

DIAM, Faculty of EEMCS

Numerical Analysis

Mekelweg 4, 2628 CD Delft

Room HB 03.290

Tel.: +31 (0)15 27 89135

Alexander Heinlein is assistant professor in the Numerical Analysis group of the Delft Institute of Applied Mathematics (DIAM), Faculty of Electrical Engineering, Mathematics & Computer Science (EEMCS), at the Delft University of Technology (TU Delft).

His main research areas are numerical methods for partial differential equations and scientific computing, in particular, solvers and discretizations based on domain decomposition and multiscale approaches. He is interested in high-performance computing (HPC) and solving challenging problems involving, e.g., complex geometries, highly heterogeneous coefficient functions, or the coupling of multiple physics. More recently, Alexander also started focusing on the combination of scientific computing and machine learning, a new research area also known as scientific machine learning (SciML). Generally, his work includes the development of new methods and their theoretical foundation as well as their implementation on current computer architectures (CPUs, GPUs) and application to real world problems.

news

Jan 31, 2026 Together with Rongliang Chen, Luca Franco Pavarino, and Xiao-Chuan Cai, I will co-organize the International Workshop on Numerical and Learning Methods for PDEs at the Tsinghua Sanya International Mathematics Forum (TSIMF) in Sanya, China, February 9-13, 2026.
Jan 31, 2026 I am looking forward to the SIAM Conference on Parallel Processing for Scientific Computing (PP26) (March 3–6, 2026, Berlin, Germany) and the HPSF Community Summit 2026 (February 25–27, 2026, Braunschweig, Germany), where I am serving on the organizing committee.
Jan 31, 2026 I will present a keynote at the European Seminar on Computing (ESCO 2026) in Pilsen, Czech Republic, June 1-4, 2026.

recent publications

  1. CMAME
    PACMANN: Point adaptive collocation method for artificial neural networks
    Coen Visser, Alexander Heinlein, and Bianca Giovanardi
    Computer Methods in Applied Mechanics and Engineering, 2026
  2. Sci Rep
    Mechanistic-driven graph neural network surrogates for pandemic response
    Agatha Schmidt, Henrik Zunker, Alexander Heinlein, and 1 more author
    Scientific Reports, Feb 2026
  3. AI&PDE
    Resolving Extreme Data Scarcity by Explicit Physics Integration: An Application to Groundwater Heat Transport
    Julia Pelzer, Corné Verburg, Alexander Heinlein, and 1 more author
    Mar 2026
    Accepted for poster presentation at AI&PDE
  4. ACM TOMS
    Trilinos: Enabling Scientific Computing Across Diverse Hardware Architectures at Scale
    Matthias MayrAlexander Heinlein, Christian Glusa, and 30 more authors
    Mar 2026
    Accepted for publication in ACM Transactions on Mathematical Software
  5. Springer LNCSE
    Sharpened PCG Iteration Bound for High-Contrast Heterogeneous Scalar Elliptic PDEs
    Philip Soliman, Filipe Cumaru, and Alexander Heinlein
    Oct 2026
    Accepted for publication in Springer Lecture Notes in Computational Science and Engineering
  6. Springer LNCSE
    Domain decomposition architectures and Gauss–Newton training for physics-informed neural networks
    Alexander Heinlein, and Taniya Kapoor
    Feb 2025
    Accepted for publication in the proceedings of the 28th International Conference on Domain Decomposition Methods (DD28)
  7. ETNA
    Monolithic and Block Overlapping Schwarz Preconditioners for the Incompressible Navier–Stokes Equations
    Alexander HeinleinAxel KlawonnJascha Knepper, and 1 more author
    Feb 2025
    Accepted for publication in Electronic Transactions on Numerical Analysis (ETNA)
  8. The Error of Deep Operator Networks Is the Sum of Its Parts: Branch-Trunk and Mode Error Decompositions
    Alexander Heinlein, and Johannes Taraz
    Feb 2026
    Submitted
  9. Are Deep Learning Based Hybrid PDE Solvers Reliable? Why Training Paradigms and Update Strategies Matter
    Yuhan Wu, Jan Willem Beek, Victorita Dolean, and 1 more author
    Feb 2026
    Submitted