Lectures program

Title Link References Day  
1. Course logistic slides   03.03.2025  
2. Introduction + History of AI slides Chap. 1 DL book    
3. Linear Algebra slides Chap. 2 DL book + MML book 04.03.2025  
4. Probability and Information theory slides Chap. 3 DL book + Chap1.2, 2.3 PRML book 05.03.2025  
5. Calculus slides Chap. 4 DL book 17.03.2025  
6. Machine Learning basics slides Chap. 5 DL book 18.03.2025  
7. 💻 Introduction to Python see material + notebook   19.03.2025  
8. Unsupervised Learning + k-Means slides Chap. 14 ESLII book 24.03.2025  
9. Hierachical clustering + DBSCAN slides Chap. 14 ESLII book 25.03.2025  
10. MLE + 💻 project see material + slides 26.03.2025    
11. PCA / ICA slides Chap. 14 ESLII + Chap 12 PRML 31.03.2025  
12. Manifold learning + Spectral clustering slides Chap. 14 ESLII 01.04.2025  
13. 💻 scikit-learn clustering notebook   02.04.2025  
14. Clustering evaluation slides Chap 14 ESLII 07.04.2025  
15. Supervised Learning + Linear Regression pt. 1 slides Chap 2.1 ESLII - Chap 3.1 PRML 08.04.2025  
16. Supervised Learning + Linear Regression pt. 2 slides Chap 2.1 ESLII - Chap 3.1 PRML 09.04.2025  
17. Model Selection + Regularization slides Chap 1.3, 3.2 PRML - Chap 3.4, 7 ESLII 14.04.2025  
18. 💻 scikit-learn clustering pt. II notebook   15.04.2025  
19. 💻 Principal Component Analysis notebook   16.04.2025  
20. Linear classification + kNN + LDA slides Chap 2.5.2, 4 PRML - Chap 2.3, 4 ESLII 28.04.2025  
21. SVM + Kernels slides Chap. 6, 7 PRML 29.04.2025  
22. Ensemble + Decision Trees + Random Forest slides Chap 8.7, 9.2, 10.2, 15 ESLII 30.04.2025  
23. Preprocessing + Feature selection + Testing slides   05.05.2025  
24. Feature interpretation + recap slides   06.05.2025  
25. 💻 scikit-learn classification + project notebook   07.05.2025  
26. Neural Networks Intro slides Chap 6 DL 13.05.2025  
27. Neural Networks Optimization slides Chap 6 DL 15.05.2025  
28. CNN slides Chap. 9 DL 19.05.2025  
29. RNN slides Chap 10 DL, 12.4 DL 20.05.2025  
30. Autoencoder + GAN slides   21.05.2025  
31. Large Language Models slides   26.05.2025  
32. Machine Learning and Neuroscience slides   27.05.2025  
33. 💻 Neural network intro + pytorch notebook      
🖥️ Machine learning project notebook data solution Chap 3 Izhikievich 14.01.2026  

Bonus track

| Title | Link | References | Day | | —————— | ————- | —————- | ————— | | 12. Gaussian Mixture Models + EM + HMM | slides | Chap. 13 + 9 PRML| | 10. 💻 Python algebra + numpy + data visualization | notebook | | | | 31. 💻 pytorch | notebook | | | | 32. Dataviz + Project | slides | | | | 32. Machine Learning and Neuroscience |slides | | | | 32. Project | | | |


This site uses Just the Docs, a documentation theme for Jekyll.