Links to the course material will be provided in the schedule below after each class. You may want to have a look at the previous edition of the course for reference.
The course schedule
Week | Monday | Wednesday | Friday |
---|---|---|---|
01 | Apr 13 No class |
Apr 15 No class |
Apr 17 No class |
02 | Apr 20 Dept. meeting - no class |
Apr 22 Introduction [slides, 8up] |
Apr 24 Math preliminaries [slides, 8up, notes] |
03 | Apr 27 Probability theory [slides, 8up, notes] |
Apr 29 Information theory [slides, 8up, notes] |
May 01 No class |
04 | May 04 Machine learning introduction [slides, 8up, notes] |
May 6 ML intro (contd.) |
May 8 Classification [slides, 8up, notes] |
05 | May 11 Classification (contd.) |
May 13 ML evaluation [slides, 8up, notes] |
May 15 lab [slides] |
06 | May 18 ML evaluation (contd.) |
May 20 ANN basics [slides, 8up, notes] |
May 22 lab |
07 | May 25 Unsupervised learning [slides, 8up, notes] |
May 27 Summary |
May 29 lab [slides] |
Jun 01 Sem. break |
Jun 03 Sem. break |
Jun 05 Sem. break |
|
08 | Jun 08 Sequence learning [slides, 8up, notes] |
Jun 10 Sequence learning |
Jun 12 lab |
09 | Jun 15 Recurrent and convolutional networks [slides, 8up, notes] |
Jun 17 Recurrent and convolutional networks |
Jun 19 lab |
10 | Jun 22 Language models [slides, 8up] |
Jun 24 Language models |
Jun 26 lab |
11 | Jun 29 Tokenization / segmentation [slides, 8up] |
Jul 01 POS tagging and morphology [slides, 8up] |
Jul 03 lab |
12 | Jul 6 Dense vector representations [slides, 8up] |
Jul 8 Text classification [slides, 8up] |
Jul 11 lab |
11 | Jul 13 Parsing I [slides, 8up] |
Jul 15 Parsing II |
Jul 17 lab |
14 | Jul 20 State of the art in NLP |
Jul 22 Exam preparation/discussion |
Jul 24 Exam [exam, data] |