===== Labs and Seminars ===== Two types of tutorial classes will be proposed for the course: * practical labs in which we explain and discuss practical homework tasks. Students will implement selected methods discussed in the course and experiment with them. * seminars in which we discuss solutions of theoretical assignments (published a week before the class). Students are expected to work on them in advance. The solutions of the practical labs have to be submitted using the [[http://cw.felk.cvut.cz/upload/|upload system]] * Your task will be to program a solution of the assigned problems. You have to hand out your code and a report in PDF. The report has to contain only answers to the assignments (nothing else). * As a programming language you can use either Matlab or Python. * The deadline for submitting your solutions will be 4 weeks after the date of assignment. This is a hard deadline. * Please notice that you have to submit your code and your report (PDF). The homework will be assessed with zero points if any of the two is missing. ===== Lab/Seminar plan ===== ^Week ^Date ^Topic ^Teacher ^Materials ^Deadline/Notes ^ | 1 | 28. 9. | — National Holiday — || | no assignments| | 2 | 5. 10. | **Seminar** | BF| {{:courses:be4m33ssu:sem_intro_examples.pdf| }}| no assignments| | 3 | 12. 10. | **Seminar: lecture 1** | VF/JP | {{ :courses:be4m33ssu:seminar_1_ws23.pdf | }} | | 4 | 19. 10. | **Seminar: lecture 2 ** | VF/JP | {{ :courses:be4m33ssu:seminar_2_ws23.pdf | }} | | 5 | 26. 10. | **Seminar: lecture 3 ** | VF/JP | {{ :courses:be4m33ssu:seminar_3_ws23.pdf | }} | | 6 | 2. 11. | **Seminar: lecture 3,4** | VF/JP | {{ :courses:be4m33ssu:seminar_4_ws2023.pdf | }} | | | 7 | 9. 11. | **Lab: SO Perceptron** | VF/JP | {{ :courses:be4m33ssu:lab_so_perceptron_ws2023.pdf | }} | 7. 12. | | 8 | 16. 11. | **Seminar: Neural Networks** | JD/JP | {{ :courses:be4m33ssu:seminar_ann_w2023.pdf | }} | | 9 | 23. 11.| **Lab: Neural Networks** | JD/JP | {{ :courses:be4m33ssu:lab_backprop_ws2023.pdf | }} | 21. 12. | | 10 | 30. 11.| **Seminar: lecture 8** | BF/JP | {{ :courses:be4m33ssu:sem-glearn-mle-ws23.pdf | }} | | | 11 | 7. 12. | **Lab: EM algorithm** | BF/JP | {{ :courses:be4m33ssu:shape_em_binary.pdf | task}} {{ :courses:be4m33ssu:em_data.tgz | data}}| 09. 01. | | 12 | 14. 12. | **Seminar: lecture 9** | BF/JP | {{ :courses:be4m33ssu:sem-em-bayesian-ws23.pdf | }} | | 13 | 21. 12. | **Seminar: lecture 10,11** | BF/JP | {{ :courses:be4m33ssu:sem-hmm1-ws23.pdf | }}| | | 14 | 11. 1. | **Seminar: Ensembling** | JD/JP | {{ :courses:be4m33ssu:sem_ens_ws2023.pdf | }} | |