Duration:
1 Semester | Turnus of offer:
each winter semester | Credit points:
6 |
Course of studies, specific field and terms: - Master Computer Science 2019 (compulsory), Canonical Specialization Data Science and AI, Arbitrary semester
- Master Computer Science 2019 (compulsory), Canonical Specialization Bioinformatics and Systems Biology, Arbitrary semester
- Master Entrepreneurship in Digital Technologies 2020 (advanced module), technology field computer science, Arbitrary semester
- Master Computer Science 2019 (basic module), Theoretical computer science, 1st or 2nd semester
- Master Medical Informatics 2019 (optional subject), Theoretical computer science, 1st or 2nd semester
- Master IT-Security 2019 (compulsory), Theoretical computer science, 1st or 2nd semester
- Master Medical Informatics 2014 (basic module), computer science, 1st or 2nd semester
- Master Entrepreneurship in Digital Technologies 2014 (basic module), technology field computer science, 1st or 2nd semester
- Master Computer Science 2014 (optional subject), specialization field IT security and safety, 2nd or 3rd semester
- Master Computer Science 2014 (basic module), Theoretical computer science, 1st or 2nd semester
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Classes and lectures: - Algorithmics (lecture, 2 SWS)
- Algorithmics (exercise, 2 SWS)
| Workload: - 60 Hours in-classroom work
- 100 Hours private studies and exercises
- 20 Hours exam preparation
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Contents of teaching: | - complexity analysis of algorithmic problems
- discrete optimization problems, linear programming
- satisfiability and constraint satisfaction problems
- randomized algorithms
- approximation algorithms and heuristics
- algorithms for algebraic problems
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Qualification-goals/Competencies: - The students can model real problems in an algorithmic manner.
- They can apply basic algorithmic techniques with full command.
- They can analyze algorithms, in particular with respect to corrrectness and complexity.
- They can design efficient algorithms for complex problems.
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Grading through: |
Requires: |
Responsible for this module: Teachers: |
Literature: - Aho, Hopcroft, Ullman: Design and Analysis of Computer Algorithms - Addison Wesley, 1978
- Cormen, Leiserson, Rivest, Stein: Introduction to Algorithms - The MIT Press, 2009
- Mitzenmacher, Upfal: Probability and Computing - Cambridge University Press, 2005
- Kreher, Stinson: Combinatorial Algorithms - CRC Press, 1999
- Williamson, Shmoys: The Design of Approximation Algorithms - Cambridge University Press, 2011
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Language: - German and English skills required
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Notes:Admission requirements for taking the module: - None (the competencies of the modules listed under |
Letzte Änderung: 1.2.2022 |
für die Ukraine