053611 VU Mathematics of Data Science (2024W)
Continuous assessment of course work
Labels
Registration/Deregistration
Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).
- Registration is open from Fr 13.09.2024 09:00 to Fr 20.09.2024 09:00
- Deregistration possible until Mo 14.10.2024 23:59
Details
max. 25 participants
Language: English
Lecturers
Classes (iCal) - next class is marked with N
- Tuesday 01.10. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 08.10. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 15.10. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 22.10. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 29.10. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 05.11. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 12.11. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 19.11. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- N Tuesday 26.11. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 03.12. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 10.12. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 17.12. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 07.01. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 14.01. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 21.01. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
- Tuesday 28.01. 09:45 - 12:00 Seminarraum 18 Kolingasse 14-16, OG02
Information
Aims, contents and method of the course
This course establishes a mathematical basis required to understand tools and methods in data science. Since it is expected that the students in this course come from a broad range of academic backgrounds, the classes will be adapted to the prior knowledge of the students.In this course we will get to know the following topics in various degrees of depth: high-dimensionality and dimension reduction, principle components analysis, graphs and clustering, image and signal processing, Fourier analysis, sparsity and compressed sensing.
Assessment and permitted materials
Exercises during the semester and written or oral exam at the end of the semester.
Minimum requirements and assessment criteria
Basic knowledge of all mathematical concepts presented in the lecture.
Examination topics
Everything covered in the lectures.
Reading list
I provide lecture notes. In addition, there are
- Bishop: Pattern Recognition and Machine Learning
- Bandeira, Singer, Strohmer: Mathematics of Data Science, https://people.math.ethz.ch/~abandeira/BandeiraSingerStrohmer-MDS-draft.pdf
- Brunton, Kutz: Data-Driven Science and Engineering
- Shalev-Shwartz, Ben-David: Understanding Machine Learning
- Bishop: Pattern Recognition and Machine Learning
- Bandeira, Singer, Strohmer: Mathematics of Data Science, https://people.math.ethz.ch/~abandeira/BandeiraSingerStrohmer-MDS-draft.pdf
- Brunton, Kutz: Data-Driven Science and Engineering
- Shalev-Shwartz, Ben-David: Understanding Machine Learning
Association in the course directory
Modul: MDS
Last modified: Tu 01.10.2024 00:01