Type of course: | Elective (1 of 2) |
Language of instruction: | English |
Erasmus Language of instruction: | English |
Name of lecturer: | Corina Rotar |
Seminar tutor: | Corina Rotar |
Form of education | Full-time |
Form of instruction: | Class |
Number of teaching hours per semester: | 48 |
Number of teaching hours per week: | 4 |
Semester: | Summer |
Form of receiving a credit for a course: | Grade |
Number of ECTS credits allocated | 6 |
• Develop the students' ability to design software that is dedicated for solving the difficult problems by exploiting evolutionary algorithms.
• Study of the algorithms that is based on natural paradigms.
• Skills for approaching the complex problems in terms of evolutionary algorithms.
• Analytical study of the advantages and disadvantages of traditional algorithms versus stochastic algorithms for optimization problems.
Imperative and Procedural Programming, Artificial Intelligence
Lecture, Cooperative learning, Discussion and survey, Team-based learning.
Implementation of an evolutionary algorithm to solve either an optimization or an NP-hard problem.
Final project (oral presentation) 100%
Goldberg D.E.,
Genetic Algorithms in Search, Optimization, and Machine Learning, Addison-Wesley Publishing Company, Inc.,
-,
1989,
-.
Dumitrescu D., Lazzerini B., Jain L.C., Dumitrescu A.,
Evolutionary Computation, CRC Press, Boca Raton London, New York, Washington D.C.,
-,
2000,
-.
Bäck T.,
Evolutionary Algorithms in Theory and Practice, Oxford University Press,
-,
1996,
-.
Rotar C.,
Modele naturale şi algoritmi evolutivi., Accent,
-,
2008,
-.