Geometric Deep Learning W23/24
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Description

Pre-requisites:
A solid background in differential geometry or geometric computing will be advantageous but is not required.
Students who haven't followed any related courses (Differential Geometry I, Scientific Visualization, ...) can follow the seminar but should be willing to invest more time.

Description:
Geometric deep learning is a broad and emerging research paradigm concerned with the derivation and study of neural network architectures that respect the invariances and symmetries in data.
Indeed, many real-world tasks come with essential pre-defined regularities arising from the underlying low-dimensionality and structure of the physical world.
Capturing these regularities via unified geometric principles has been shown to provide sizable empirical improvements.
Examples of such geometric architectures include graph neural networks as well as models conditioned on data that reside on curved manifolds where vector space operations are not naturally admissible.

The goal of this seminar will be to obtain in-depth knowledge about the core methodology in geometric deep learning as well as an overview of state-of-the-art methods.
Students will acquire practical skills in reading, presenting, explaining, and discussing scientific papers.
The seminar may be used as a preparation for an MSc thesis topic.


Literatur

Michael M. Bronstein, Joan Bruna, Taco Cohen, Petar Velickovic (2021) Geometric Deep Learning: Grids, Groups, Graphs, Geodesics, and Gauges. arXiv:2104.13478


Zusätzliche Informationen

 

Basic Course Info

Course No Course Type Hours
19246911 Seminar 2

Time Span 18.10.2023 - 14.02.2024
Instructors
Christoph Tycowicz

Study Regulation

0089c_MA120 2014, MSc Informatik (Mono), 120 LPs
0280c_MA120 2018, MSc Mathematik (Mono), 120 LP
0590b_MA120 2021, MSc Data Science, 120 LP

Geometric Deep Learning W23/24
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Main Events

Day Time Location Details
Wednesday 14-16 A6/SR 025/026 Seminarraum 2023-10-18 - 2024-02-14

Geometric Deep Learning W23/24
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Geometric Deep Learning W23/24
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