Models and algorithms in artificial intelligence tasks
Course: Applied Mathematics
Structural unit: Faculty of Computer Science and Cybernetics
Title
Models and algorithms in artificial intelligence tasks
Code
ДВС.3.03.03
Module type
Вибіркова дисципліна для ОП
Educational cycle
First
Year of study when the component is delivered
2023/2024
Semester/trimester when the component is delivered
5 Semester
Number of ECTS credits allocated
4
Learning outcomes
LO 8. Combine methods of mathematical and computer modeling with informal expert analysis procedures to find optimal solutions.
Form of study
Distance form
Prerequisites and co-requisites
Know control theory, and methods of mathematical modeling.
Be able to apply knowledge of control theory and mathematical modeling methods.
Possess elementary skills: solve problems in control theory and mathematical modeling methods.
Course content
Mastering the basic methods and means of solving artificial intelligence problems, regardless of their nature, as well as mastering skills and their use. The discipline has the following sections: neural networks of various types, mathematical models and algorithms in artificial intelligence tasks, and machine learning methods. The main task is to provide students with basic knowledge of the entire arsenal of methods and tools for key models and algorithms of artificial intelligence problems and to gain experience in working with neural networks and relevant software in solving applied problems. Uses concepts from the theory of machine learning, neural networks, mathematical analysis, and algebra.
Recommended or required reading and other learning resources/tools
1. Trushevskyi V.M., Shynkarenko H.A., Shcherbyna V.M. Metod skinchennykh elementiv i shtuchni neironni merezhi. Lviv: LNU imeni Ivana Franka, 2014. - 396 p.
2. Dovhiy S.O., Liashko S.I., Cherniy D.I. Alhorytmy metodu dyskretnykh osoblyvostei dlia obchysliuvalnykh tekhnolohii // Kybernetyka y systemnыi analyz. 2017, №6, pp.147-159.
3. Dovgiy S.A., Lifanov I.K., Cherniy D.I. Metod singulyarnikh integralnikh uravnenii i vichislitelnie tekhnologi. - K.: Izdatelstvo «Yuston» 2016, 380 p.
4. Hlybovets M.M., Oletskyi O.V. Systemy shtuchnoho intelektu. — K.: KM Akademiia, 2002. - 366 p.
5. Rudenko O. H., Bodianskyi Ye. V. Shtuchni neironni merezhi: Navchalnyi posibnyk. — Kharkiv: TOV "Kompaniia SMIT", 2006. — 404 p.
6. Subbotin S.O. Podannia y obrobka znan u systemakh shtuchnoho intelektu ta pidtrymky pryiniattia rishen. Zaporizhzhia: ZNTU, 2008. — 341 p.
Planned learning activities and teaching methods
Lectures, practical classes.
Assessment methods and criteria
Semester assessment:
1. Tests, current assessment: 80 points/48 points.
2. Current assessment, independent work: 20 points/12 points.
The credit is given based on the results of the student's work throughout the entire semester and does not include additional assessment measures for successful students.
Language of instruction
Ukrainian
Lecturers
This discipline is taught by the following teachers
Vasyl
Serhiiovych
Mostovyi
Complex systems modelling
Faculty of Computer Science and Cybernetics
Faculty of Computer Science and Cybernetics
Yaroslav
Pavlovych
Trotsenko
Complex systems modelling
Faculty of Computer Science and Cybernetics
Faculty of Computer Science and Cybernetics
Departments
The following departments are involved in teaching the above discipline
Complex systems modelling
Faculty of Computer Science and Cybernetics
Complex systems modelling
Faculty of Computer Science and Cybernetics