Reinforcement Learning
Syllabus, Master's level, 1RT745
- Code
- 1RT745
- Education cycle
- Second cycle
- Main field(s) of study and in-depth level
- Embedded Systems A1N, Technology A1N
- Grading system
- Fail (U), Pass (3), Pass with credit (4), Pass with distinction (5)
- Finalised by
- The Faculty Board of Science and Technology, 11 October 2023
- Responsible department
- Department of Information Technology
Entry requirements
120 credits including Probability and Statistics, Linear Algebra II, Single Variable Calculus, a second programming course. Proficiency in English equivalent to the Swedish upper secondary course English 6.
Learning outcomes
On completion of the course, the student shall be able to:
- Explain possibilities and limitations of reinforcement learning.
- Analyze relevant applications, decide if they can be formulated as a reinforcement learning problem, and in such case define it formally.
- Implement, use and evaluate central algorithms for reinforcement learning.
Content
This course gives a solid introduction to the modern tools used to devise, implement and analyse reinforcement learning algorithms. The course covers Markov decision processes, planning by dynamic programming, model-free prediction and control, the trade-off between exploration and exploitation, function approximations and policy gradient methods. It also introduces deep reinforcement learning. Applications discussed in the course include classical control problems such as the inverted pendulum, as well as robotics and computer games.
Instruction
Lectures, seminars, computer labs.
Assessment
Oral and written examination of assignments (2 credits), and a written exam (3 credits).
If there are special reasons for doing so, an examiner may make an exception from the method of assessment indicated and allow a student to be assessed by another method. An example of special reasons might be a certificate regarding special pedagogical support from the disability coordinator of the university.
Other directives
The course cannot be included in the same degree as 1RT747 Reinforcement Learning.