Modul
Stochastic Optimization [M-WIWI-103289]
Credits
9Recurrence
Jedes SemesterDuration
1 SemesterLanguage
German/EnglishLevel
4Version
10Responsible
Organisation
- KIT-Fakultät für Wirtschaftswissenschaften
Part of
Bricks
Identifier | Name | LP |
---|---|---|
T-WIWI-102715 | Operations Research in Supply Chain Management | 4.5 |
T-WIWI-111247 | Mathematics for High Dimensional Statistics | 4.5 |
T-WIWI-110162 | Optimization Models and Applications | 4.5 |
T-WIWI-102720 | Mixed Integer Programming II | 4.5 |
T-WIWI-102719 | Mixed Integer Programming I | 4.5 |
T-WIWI-106546 | Introduction to Stochastic Optimization | 4.5 |
T-WIWI-103124 | Multivariate Statistical Methods | 4.5 |
T-WIWI-112109 | Topics in Stochastic Optimization | 4.5 |
T-WIWI-106548 | Advanced Stochastic Optimization | 4.5 |
T-WIWI-106549 | Large-scale Optimization | 4.5 |
T-WIWI-111587 | Multicriteria Optimization | 4.5 |
T-WIWI-106545 | Optimization under Uncertainty | 4.5 |
T-WIWI-106545 | Optimization under Uncertainty | 5 |
T-WIWI-102723 | Graph Theory and Advanced Location Models | 4.5 |
Competence Certificate
The assessment is carried out as partial exams (according to § 4(2), 1 of the examination regulation) of the single courses of this module, whose sum of credits must meet the minimum requirement of credits of this module.
The assessment procedures are described for each course of the module seperately.
The overall grade of the module is the average of the grades for each course weighted by the credits and truncated after the first decimal.
Competence Goal
The student
- names and describes basic notions for advanced stochastic optimization methods, in particular, ways to algorithmically exploit the special model structures,
- knows the indispensable methods and models for quantitative analysis of stochastic optimization problems,
- models and classifies stochastic optimization problems and chooses the appropriate solution methods to solve also challenging stochastic optimization problems independently and, if necessary, with the aid of a computer,
- validates, illustrates and interprets the obtained solutions,
- identifies drawbacks of the solution methods and, if necessary, is able to makes suggestions to adapt them to practical problems.
Prerequisites
There is no compulsory course in the module.
Content
The module focuses on the modeling as well as the imparting of theoretical principles and solution methods for optimization problems with special structure, which occur for example in the stochastic optimization.
Recommendation
It is recommended to listen to the lecture "Introduction to Stochastic Optimization" before the lecture "Advanced Stochastic Optimization" is visited.
Workload
The total workload for this module is approximately 270 hours (9 credits). The allocation is made according to the credit points of the courses of the module. The total number of hours per course is determined by the amount of time spent attending the lectures and exercises, as well as the exam times and the time required to achieve the module's learning objectives for an average student for an average performance.