SDSC8003 - Machine Learning | ||||||||
| ||||||||
* The offering term is subject to change without prior notice | ||||||||
Course Aims | ||||||||
This course focuses on machine learning models and their deployments. Topics include neural networks (principles, optimization, generalization) recent neural network models (convolutional, self-attention, transformers, generative adversarial networks) and system issues in machine learning(on-device machine learning federated learning). | ||||||||
Assessment (Indicative only, please check the detailed course information) | ||||||||
Continuous Assessment: 70% | ||||||||
Examination: 30% | ||||||||
Examination: Questions are designed to see how well the students have learned the basic concepts, fundamental theory, and applications of learning algorithms. | ||||||||
Examination Duration: 2 hours | ||||||||
Detailed Course Information | ||||||||
SDSC8003.pdf |