Content
| Lecture | Lecturer | Links | |
|---|---|---|---|
| w1 | 1. Introduction | Peter Bloem | playlist |
2. Backpropagation | Peter Bloem | playlist | |
3. Convolutions | Michel Cochez | playlist | |
| w2 | 3. Tools of the trade | Peter Bloem | playlist |
5. Sequences | Peter Bloem, David Romero | playlist | |
| w3 | 6. Latent Variable Models | Shujian Yu | |
7. Unsupervised representation learning | Shujian Yu | ||
| w4 | 8. Learning with graphs | Michael Cochez | playlist |
9. Transformers and self-attention | Peter Bloem | playlist | |
| w5 | 10. Reinforcement learning | Vincent Francois-Lavet | |
| w6 | 11. Diffusion models | Peter Bloem | playlist |
12. Generalization | Shujian Yu |
Last year’s content
| lecturer | videos | slides | ||
|---|---|---|---|---|
| week 1 | Introduction | Jakub Tomczak | A,B,C,D | |
| Backpropagation | Peter Bloem | A,B,C,D | ||
| Convolutional Neural Networks | Michael Cochez | A,B,C,D | ||
| week 2 | Sequential data | Peter Bloem | A,B,C,D,E* | |
| Tools of the trade | Peter Bloem | A,B,C,D | ||
| week 3 | Latent Variable Models (pPCA and VAE) | Jakub Tomczak | A,B,C | |
| GANs | Jakub Tomczak | A,B | ||
| week 4 | Learning with Graphs | Michael Cochez | playlist | |
| Transformers & self-attention | Peter Bloem | A,B,C | ||
| week 5 | Reinforcement learning | Emile van Krieken | A,B,C | |
| Reinforcement learning (extra) | Emile van Krieken | A,B,C | ||
| Autoregressive and Flow-based models | Jakub Tomczak | A,B,C |