Fuzzy analysis
Course: Applied Mathematics
Structural unit: Faculty of Computer Science and Cybernetics
            Title
        
        
            Fuzzy analysis
        
    
            Code
        
        
            ДВС.2.06
        
    
            Module type 
        
        
            Вибіркова дисципліна для ОП
        
    
            Educational cycle
        
        
            First
        
    
            Year of study when the component is delivered
        
        
            2022/2023
        
    
            Semester/trimester when the component is delivered
        
        
            8 Semester
        
    
            Number of ECTS credits allocated
        
        
            5
        
    
            Learning outcomes
        
        
            LO 2. Be able to use basic principles and methods of mathematical, complex, and functional analysis, linear algebra and number theory, analytical geometry, and differential equations, including partial differential equations, probability theory, mathematical statistics and random processes, and numerical methods. LO 10. Be able to choose methods and algorithms rationally for solving optimization problems, operations research, optimal control and decision-making, and data analysis. PLO 24.2. Be able to apply professional knowledge, skills, and abilities in the field of applied mathematics and computer science for research of real processes of different natures.
        
    
            Form of study
        
        
            Full-time form
        
    
            Prerequisites and co-requisites
        
        
            1. Know basic concepts of mathematical analysis, linear algebra, discrete mathematics, differential equations, operations research, probability theory and mathematical statistics, and decision-making theory.
2. Be able to formulate and solve problems of linear programming, solve systems of linear algebraic equations with parameters, solve differential equations, investigate functions and functionals for extremum.
3. Possess the skills of building, analyzing, and applying mathematical models when solving applied problems.
        
    
            Course content
        
        
            Getting to know the research problems of solving problems of fuzzy mathematics; the necessary and sufficient conditions for solvability at the levels of goals, tasks, algorithms, and tools are given; solvability conditions for input, resource, and process under fuzzy conditions are determined. The course includes 2 content parts and 2 control papers. The discipline ends with an exam.
        
    
            Recommended or required reading and other learning resources/tools
        
        
            1. Voloshyn O.F., Mashchenko S.O. Modeli ta metody pryiniattia rishen: Navchalnyi posibnyk. – Kyiv: VPTs «Kyivskyi universytet», 2010. – 336 p.
3. Snytiuk V.Ye. Prohnozuvannia. Modeli. Metody. Alhorytmy: Navchalnyi posibnyk. – Kyiv: «Maklaut», 2008. – 364 p.
7. Voloshyn O., Laver V. Generalization of Distributing Methods for Fuzzy Problems // Intern. Journal «Information Theories & Applications», 2013, Vol.20, No. 4. – P. 303-310.
        
    
            Planned learning activities and teaching methods
        
        
            Lectures, seminar classes, independent work.
        
    
            Assessment methods and criteria
        
        
            Semester evaluation: The maximum number of points that can be obtained by a student is 60 points: Control worw No. 1: 20/12 points. Control work No. 2: 20/12 points. Oral answers: 20/12 points. Final evaluation (in the form of an exam): Maximum number of points that can be received by a student: 40 points. Form of conduct: written work. Types of tasks: 3 written tasks (2 theoretical questions and 1 practical task). The student receives an overall positive grade in the discipline if his grade for the exam is at least 24 (twenty-four) points. A student is admitted to the exam if during the semester he scores at least 36 points; and completes and passes 2 control works on time.
        
    
            Language of instruction
        
        
            Ukrainian
        
    Lecturers
This discipline is taught by the following teachers
                    Olexii
                    F.
                    Voloshyn
                
                
                    Complex systems modelling 
Faculty of Computer Science and Cybernetics
            Faculty of Computer Science and Cybernetics
                    Vasyl
                    Vasylovych
                    Begun
                
                
                    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