|
Module Number ML-4502 |
Module Title Machine Learning Methods for Scientific Discovery |
Lecture Type(s) Seminar |
|---|---|---|
| ECTS | 3 | |
|
Work load - Contact time - Self study |
Workload:
90 h Class time:
30 h / 2 SWS Self study:
60 h |
|
| Duration | 1 Semester | |
| Frequency | Irregular | |
| Language of instruction | English | |
| Type of Exam | Oral presentation, written report |
|
| Content | In this seminar, we will discuss current and classical research papers which |
|
| Objectives | Students are able to read and reflect upon current research papers in this |
|
| Allocation of credits / grading |
Type of Class
Status
SWS
Credits
Type of Exam
Exam duration
Evaluation
Calculation
of Module (%)
Seminar
S
o
2
3.0
tp,
op
30
g
199
|
|
| Prerequisite for participation | There are no specific prerequisites. | |
| Lecturer / Other | Macke | |
| Literature | Will be announced in the first meeting / Basic knowledge probabilistic machine learning |
|
| Last offered | Wintersemester 2021 | |
| Planned for | Wintersemester 2025 | |
| Assigned Study Areas | INFO-INFO, MEDI-APPL, MEDI-INFO, MEDZ-SEM, ML-CS, ML-DIV | |