Master-Seminar - Deep Learning in Physics (IN2107, IN0014)
| Time & place | Thursdays, 12:00-14:00 in room: MI 02.13.010 |
Begin:
| Begin: Thursday, April 16., 2026 Kick-Off: Monday, February 9., 2026 at 10:00 Online via BBB https://bbb.cit.tum.de/nil-djw-hjw
|
Content
Using deep learning methods for physical problems is a very quickly developing area of research. The research group of Prof. Thuerey has studied learning-based methods for Navier-Stokes problems and fluid flow applications in recent years, examples of which include learning latent-spaces for physical predictions, generative adversarial networks with temporal coherence, and the inference of Reynolds-averaged Navier-Stokes flows around airfoils. Beyond these physics-based deep learning works of the Thuerey group, this seminar will give an overview of recent developments in the field.
In this course, students will autonomously investigate recent research about machine learning techniques in the physical simulation area. Independent investigation for further reading, critical analysis, and evaluation of the topic are required.
References
- Thuerey group: List of Publications (including Physics-based Deep Learning works)
- Book: Bishop, Pattern Recognition and Machine Learning
- Book: Hastie et al., The Elements of Statistical Learning
- Online: Nielsen, Neural Networks and Deep Learning
- Online: Ruder, An Overview of Gradient Descent Optimization Algorithms