JFL PHOTOGRAPHY / STOCK.ADOBE.COM; BEARB.: ANKE HEINZELMANN
JFL PHOTOGRAPHY / STOCK.ADOBE.COM; BEARB.: ANKE HEINZELMANN

52. Heidelberger Physik Graduiertentage

2024-04-08 - 2024-04-12

list of Lectures

GEOMETRIC DEEP LEARNING

Jan Stühmer

Heidelberg Institute for Theoretical Studies
Nachmittags

This module provides students with both theoretical and practical insights into modern Deep Learning. In particular, we focus on a novel approach for understanding deep neural networks with mathematical tools from geometry and group theory. This enables a methodical approach to Deep Learning: starting from first principles of symmetry and invariance, we derive different network architectures for analyzing unstructured sets, grids, graphs, and manifolds.

Topics of the course include: group theory, graph neural networks, convolutional neural networks, applications of geometric deep learning in diverse fields such as geometry processing, molecular dynamics, social networks, game playing (computer Go), processing of text and speech, as well as applications in medicine.

Practical tutorials on Colab will provde hands-on experience with the technologies discussed during the lecture.

We ask participiants to bring their own laptop.