Geometric Deep Learning


Grids, Groups, Graphs, Geodesics, and Gauges


Michael M. Bronstein, Joan Bruna, Taco Cohen, Petar Veličković


GDL Course (2021)

As part of the African Master’s in Machine Intelligence (AMMI 2021), we have delivered a course on Geometric Deep Learing (GDL100), which closely follows the contents of our GDL proto-book. We make all materials and artefacts from this course publicly available, as companion material for our proto-book, as well as a way to dive deeper into some of the contents for future iterations of the book.

All lecture recordings

Lecture 1: Introduction Michael M. Bronstein Recording Slides
Lecture 2: High-Dimensional Learning Joan Bruna Recording Slides
Lecture 3: Geometric Priors I Taco Cohen Recording Slides
Lecture 4: Geometric Priors II Joan Bruna Recording Slides
Lecture 5: Graphs & Sets I Petar Veličković Recording Slides
Lecture 6: Graphs & Sets II Petar Veličković Recording Slides
Lecture 7: Grids Joan Bruna Recording Slides
Lecture 8: Groups Taco Cohen Recording Slides
Lecture 9: Geodesics & Manifolds Michael M. Bronstein Recording Slides
Lecture 10: Gauges Taco Cohen Recording Slides
Lecture 11: Sequences & Time Warping Petar Veličković Recording Slides
Lecture 12: Conclusions Michael M. Bronstein Recording Slides
Tutorial 1: Graph Neural Networks Pim de Haan, Nikola Jovanović Recording Colab
Tutorial 2: Group Equivariant Neural Networks Gabriele Cesa Recording Colab
Seminar 1: Geometric Deep Learning and Reinforcement Learning Elise van der Pol Recording Slides
Seminar 2: Natural Graph Networks Pim de Haan Recording Slides (coming soon!)
Seminar 3: General E(2)-Equivariant Steerable CNNs Gabriele Cesa Recording Slides (coming soon!)
Seminar 4: Weisfeiler and Lehman go Topological: Message Passing Simplicial Networks Fabrizio Frasca Recording (coming soon!) Slides

AltStyle によって変換されたページ (->オリジナル) /