Modul
Machine Learning and Data Science [M-WIWI-105482]
Credits
9Recurrence
Jedes SemesterDuration
2 SemesterLanguage
German/EnglishLevel
3Version
1Responsible
Organisation
- KIT-Fakultät für Wirtschaftswissenschaften
Part of
Bricks
Identifier | Name | LP |
---|---|---|
T-WIWI-111028 | Introduction to Machine Learning | 4.5 |
T-WIWI-111029 | Introduction to Neural Networks and Genetic Algorithms | 4.5 |
Competence Certificate
The module examination is carried out in the form of partial examinations of the selected courses of the module, with which in total the minimum requirement of credit points is fulfilled. The kind of examination is described in detail for each course of this module.
Competence Goal
The student
- knows the main families of machine learning methods, their basic principles, assumptions and
restrictions. - can use these methods to solve data analysis problems, to support decision making or for process automation in companies and use the solutions interpreted and evaluated accordingly.
- can compare and evaluate the performance of solutions.
Prerequisites
None
Content
The module mainly focuses on methods from statistical learning (linear and logistic learning, regression, tree methods, SVMs, and shrinkage estimators) and from the field of neural and genetic procedures were presented. Furthermore, data transformations and -representations (e.g. dimension reduction, clustering, imputation in case of missing data) and visualization techniques and appropriate inference, diagnosis and validation techniques are presented.
Workload
Total effort for 9 credit points: approx. 270 hours. The allocation is based on the credit points of the courses of the module.