| Detailed information | 
                                
                    
                      | Original study plan | Bachelor's programme Artificial Intelligence 2020W | 
                      
                    
                      | Objectives | Consolidation of content taught in the lecture through practical implementation | 
                      
                    
                      | Subject | Implementing and testing selected solution methods for k-armed Bandits
Implementing and testing selected  table-based solution methods for MDPs with discrete state spaces
Implementing and testing selected approximate solution methods for MDPs with continuous state spaces
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                      | Criteria for evaluation | Active participation
Positive completion of exercises
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                      | Methods | Thorough explanation of the used software
Verbal explanation of each new exercise, additional hints, programming tips, and practical examples
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                      | Language | English | 
                      
                    
                      | Study material | Richard S. Sutton and Andrew G. Barto. 2018. Introduction to Reinforcement Learning (2nd. edition). MIT Press, Cambridge, MA, USA. | 
                      
                    
                      | Changing subject? | No | 
                                        
                      | Corresponding lecture | in collaboration with 536MLPEREIV20: VL Reinforcement Learning (3 ECTS) equivalent to 536MLPEREIK19: KV Reinforcement Learning (4.5 ECTS)
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