New: filter modules by day and time, student links, custom courses →
This course introduces the fundamental concepts and methods in pattern recognition and machine learning. Topics covered include Introduction, Bayesian Inference, Linear Models, Mixture Models and EM Algorithm, Markov Models and Hidden Markov Models, Sampling, Markov chain Monte Carlo (MCMC), Neural Networks, Deep Learning (CNN, RNN), Kernel Methods, Applications, Decision Trees and Ensemble Learning, Model Selection and Feature Selection, and Clustering.
Pattern Recognition & Machine Learning
Unlocks
| Mon | Tue | Wed | Thu | Fri | |
|---|---|---|---|---|---|
| 930 | |||||
| 1000 | |||||
| 1030 | |||||
| 1100 | |||||
| 1130 | |||||
| 1200 | |||||
| 1230 | |||||
| 1300 | |||||
| 1330 | |||||
| 1400 | |||||
| 1430 | |||||
| 1500 | |||||
| 1530 | |||||
| 1600 | |||||
| 1630 | |||||
| 1700 | |||||
| 1730 | |||||
| 1800 |
EE0005
Introduction To Data Science & Artificial Intelligence
EE1003
Introduction To Materials For Electronics
EE1005
From Computational Thinking To Programming
EE1071
Introduction To Eee Laboratories
EE1102
Physics Foundation For Electrical & Electronic Engineering
EE2001
Circuit Analysis
EE2002
Analog Electronics
EE2003
Semiconductor Fundamentals
EE2005
Electrical Devices & Machines
| Mon | Tue | Wed | Thu | Fri | |
|---|---|---|---|---|---|
| 1030 | COMMON LEC (EELE) 1030-1220 Mon LT23 | ||||
| 1100 | |||||
| 1130 | |||||
| 1200 | |||||
| 1230 | |||||
| 1300 | |||||
| 1330 | COMMON LEC (EELE) 1330-1420 Tue LT29 | ||||
| 1400 |