Course Contents
The course covers the following topics:
[list]
[*]Data Science Advanced Methods
[*]Data Management + Big data frameworks
[*]Statistical Learning
[list]
[*]Recommender Systems
[*]Deep Learning
[*]Unsupervised Learning
[*]Text data analysis
[/list]
[*]Final application project. Flexibility to choose from list of projects or come up with own project. Examples:
[list]
[*]Sound classification
[*]Heart rate analysis
[*]Activity recognition with acceleration data
[*]Hyperspectral data
[*]Image classification
[*]Health survey
[/list]
[/list]
Literature
Lecture notes and slides can be downloaded here:
[list]
[*]http://www.spg.tu-darmstadt.de
[*]Moodle platform
[/list]
Further reading:
[list]
[*]Wes McKinney: Python for Data Analysis, O’Reilly, 2017
[*]Christopher M. Bishop: Pattern Recognition and Machine Learning, 2011
[*]James, Witten, Hastie and Tibshirani, Introduction to Statistical Learning, Springer, 2017
[/list]
Preconditions
Data Science I (Lecture)
- Lehrende: Christian Debes
- Lehrende: Pertami Kunz