Course structure
Our course is structured as follows. A more detailed version can be found on the home page.
Week | Topic | Lab | CW |
---|---|---|---|
2 | Machine Learning: The Big Picture | LAB | - |
3 | K Nearest Neighbours and Decision Trees | LAB | CW1 |
4 | Evalation of Machine Learning systems | LAB | CW1 |
5 | Neural Networks (Part 1) | LAB | CW1 |
6 | Neural Networks (Part 2) | LAB | CW2 |
7 | Unsupervised Learning: Clustering & Density Estimation | LAB | CW2 |
8 | Evolutionary Algorithms | LAB | CW2 |
The lab sessions will be held on Tuesdays 2-4pm. These will be held on site, with all the labs on Level 2 available for your use (Huxley 202/206/210/219/221/225). The teaching assistants will most likely be lingering in the main labs (Huxley 219/202/206).
The live discussion/Q&A sessions will be held on Thursdays 10-11am. These will be held fully remotely on Microsoft Teams.