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SDSC8014 - Online Learning and Optimization

Offering Academic Unit
Department of Data Science
Credit Units
3
Course Duration
One Semester
Course Offering Term*:
Not offering in current academic year

* The offering term is subject to change without prior notice
 
Course Aims

This course covers the fundamentals and applications of online learning and optimization. Topics include online learning, online convex optimization, competitive analysis, regret analysis, online gradient descent, and online algorithms. Other selective topics include online optimization with prediction, robust optimization, online stochastic optimization, and online optimization with feedbacks. Applications in online learning and optimization in societal systems in the face of input uncertainty will be used to complement the theoretical developments. Students should know about convex optimization, linear algebra, and calculus.

Assessment (Indicative only, please check the detailed course information)

Continuous Assessment: 100%
Examination Duration: 0 hours
 
Detailed Course Information

SDSC8014.pdf

Useful Links

Department of Data Science