| Course title | Data Science Seminar 2 | 
|---|---|
| Course code | KMA/DSS2 | 
| Organizational form of instruction | Seminar | 
| Level of course | Bachelor | 
| Year of study | not specified | 
| Semester | Summer | 
| Number of ECTS credits | 2 | 
| Language of instruction | Czech | 
| Status of course | Compulsory-optional | 
| Form of instruction | Face-to-face | 
| Work placements | This is not an internship | 
| Recommended optional programme components | None | 
| Lecturer(s) | 
|---|
        
  | 
| Course content | 
| 
        The seminar will deal with current trends in bayesian inference, machine learning, applied mathematics, Data Science, etc. The aim of the seminar is to provide a platfomr for the communication among students, academic staff and professionals from outside Academia
         | 
| Learning activities and teaching methods | 
| Monologic Lecture(Interpretation, Training), Dialogic Lecture (Discussion, Dialog, Brainstorming) | 
| Learning outcomes | 
| 
                
                To follow what is currently happening in the field of Data Science, if possible outside academia
                 Orientation in the world of Data Science  | 
        
| Prerequisites | 
| 
                
                
                Interest in the field of Data Science
                
                
                    
                        
                    
                    
                
                 | 
        
| Assessment methods and criteria | 
| 
                
                    
                        Student performance
                        
                        
                         Active participation at the seminar  | 
        
| Recommended literature | 
| 
         | 
| Study plans that include the course | 
| Faculty | Study plan (Version) | Category of Branch/Specialization | Recommended semester | |
|---|---|---|---|---|
| Faculty: Faculty of Science | Study plan (Version): Applied Mathematics - Specialization in Industrial Mathematics (2020) | Category: Mathematics courses | 3 | Recommended year of study:3, Recommended semester: Summer | 
| Faculty: Faculty of Science | Study plan (Version): Applied Mathematics - Specialization in Data Science (2020) | Category: Mathematics courses | 3 | Recommended year of study:3, Recommended semester: Summer | 
| Faculty: Faculty of Science | Study plan (Version): Applied Mathematics - Specialization in Business Mathematics (2021) | Category: Mathematics courses | 3 | Recommended year of study:3, Recommended semester: Summer |