Attention! This is a new iteration of on-campus deeplearning course. For full course materials '2016, go to this branch
Lecture and seminar materials for each week are in ./week* folders
- HSE classes take place each wednesday, from 18-10 till 21-00, room 501
- Any technical issues, ideas, bugs in course materials, contribution ideas - add an issue
- More stuff TBA
- 6.09 - course started, week0 assignment published (see "syllabus")
- week0 ML recap & basic deep learning
- Lecture: Linear models, stochastic optimization, regularization
- Seminar: Linear classification, sgd, modifications
- HW due: 17.09.16, 23.59.
- Please get these libraries installed for the next seminar.
- Issue
- Linux Guidelines
- TODO guide for TF/pytorch
- One rule to rule them all
- Project rules
- Project examples
- Grading system
- Grading table
- Reducing lateness penalty
- Feedback form (anonymous)
Course materials and teaching performed by
- Fedor Ratnikov - lectures, seminars, hw checkups
- Oleg Vasilev - seminars, hw checkups, technical issue resolution
- Arseniy Ashukha - image captioning, sound processing, week7&9 lectures
- Dmitry Ulyanov - generative models, week8 lecture, week12 homework assignment
- Mikhail Khalman - variational autoencoders, lecture 12
- Vadim Lebedev - week0 & week6 homeworks