Tamara Drucks & Franka Bause
Start:
Ende:
Samstag 29.8. um 9:00 Uhr
Samstag, 29.8. um 16:00 Uhr
Unterrichtssprache: Englisch
Kursbeschreibung:
Graphs are everywhere and form the basis for many machine learning tasks such as content moderation or drug discovery. Unlike structured data such as images or sequences, graphs often have irregular structure and variable sizes, rendering traditional machine learning models ineffective. This workshop introduces graph machine learning and Graph Neural Networks (GNNs) from both a theoretical and practical perspective. Participants will learn how to model relational data as graphs and apply modern deep learning techniques using PyTorch Geometric. The course combines short lectures on key concepts with guided hands-on coding sessions. No prior experience with graph learning is required, but basic Python knowledge is expected.
Voraussetzungen:
Die Teilnehmenden sollten über grundlegende Python-Programmierkenntnisse verfügen. Vertrautheit mit Konzepten des maschinellen Lernens sowie ein grundlegendes mathematisches Verständnis sind ebenfalls von Vorteil, aber nicht zwingend erforderlich.
Biographie: Tamara Drucks
I am a PhD student in the Research Unit Machine Learning at TU Wien, where I currently focus on the expressive power of graph learning algorithms and their limitations.
Biographie: Franka Bause
I focus on graph learning and similarity measures for graphs, with the aim of improving efficiency, expressivity, and accuracy. I completed my doctorate with distinction in the Kriege group at University of Vienna, and am currently a Postdoc in the relational machine learning lab of Rebekka Burkholz at CISPA.
