Learning outcomes / competences
Students are able to create concepts for intelligent robot-based automation solutions. In doing so, they are able to take into account current communication concepts as well as learning algorithms. This enables students to realise partially or fully autonomous, stationary and mobile robots from the application spectrum of service robotics to industrial robotics.
Contents
Introduction to
Machine Learning
Reinforcement learning
Optimal control
Probabilistic decision processes
Probabilistic perception
Fundamentals of probability theory
Search and planning
Teaching methods
Lecture, exercise, seminar-style teaching, small group exercises on robots, project work
Prerequisites for participation
None
Forms of examination
Module examination in the form of a written examination (120 min.), presentation, homework or an oral examination
The lecture materials can be found in the institute'sMoodle learning rooms.