About this course
The course introduces the students into the field of artificial intelligence and gives the necessary basis for designing machine control algorithms. It advances the knowledge of state space search algorithms by including uncertainty in state transition. Students are introduced into reinforcement learning for solving problems when the state transitions are unknown, which also connects the artificial intelligence and cybernetics fields. Bayesian decision task introduces supervised learning. Learning from data is demonstrated on a linear classifier. Students practice the algoritms in computer labs.
Learning outcomes
The course introduces the students into the field of artificial intelligence and gives the necessary basis for designing machine control algorithms. It advances the knowledge of state space search algorithms by including uncertainty in state transition. Students are introduced into reinforcement learning for solving problems when the state transitions are unknown, which also connects the artificial intelligence and cybernetics fields. Bayesian decision task introduces supervised learning. Learning from data is demonstrated on a linear classifier. Students practice the algoritms in computer labs.
Course requirements
Basic knowledge of linear algebra and programming is assumed. Experience in Python and basics of probability is an advantage.
Resources
- Stuart J. Russel and Peter Norvig. Artificial Intelligence, a Modern Approach, 3rd edition, 2010
Activities
Lectures and lab-work
Additional information
- Coordinating facultyCzech Technical University in Prague
- Contact a coordinator
- CreditsECTS 6
- Contact hours per week4
- InstructorsMgr. Kostlivá Jana Ph.D., prof. Ing. Svoboda Tomáš Ph.D., Ing. Gama Filipe, Ing. Pošík Petr Ph.D., Dantu Swati, Ing. Šindler Pavel
- Mode of instructionHybrid
Offering(s)
Start date
17 February 2025
- Ends21 September 2025
- Term *Summer 2024/2025
- Instruction languageEnglish
Enrolment period closed