Research data in physics are growing more and more rich and complex, and novel tools such as AI-based analysis approaches promise huge advances in knowledge gain. Simultaneously, these developments pose substantial challenges to students and researchers, and require developing novel data analysis approaches, and data management solutions.
In this lecture, I will discuss various data analysis approaches found in physics, e.g. statistical analysis, nonlinear and multivariate fitting analysis, global analysis, generation and management of large datasets, annotation and F.A.I.R. readiness of research data, etc. The lecture will be accompanied by an exercise class with a hands-on programming course in Python, where examples from the lecture will be further deepened.
Topics include:
Course No | Course Type | Hours |
---|---|---|
20125301 | Vorlesung | 2 |
20125302 | Übung | 2 |
Time Span | 17.10.2023 - 13.02.2024 |
---|---|
Instructors |
Laurenz Rettig
|
0352c_MA120 | 2020, MSc Physik (Mono), 120 LP |
Day | Time | Location | Details |
---|---|---|---|
Tuesday | 16-18 | 1.3.48 Seminarraum T3 | 2023-10-17 - 2024-02-13 |
Day | Time | Location | Details |
---|---|---|---|
Tuesday | 14-16 | Online | Übung 01 |