Operations research
Course objectives
The course gives an introduction on the basic tools for mathematical modeling and solving decision and optimization problems using quantitative methods. At the end of the course, students should be able to recognize such problems, build mathematical models for them, and solve them using a number of modeling techniques and solution algorithms, also by means of specific software tools. Expected learning outcomes (Dublin Descriptors): 1. Understand all basic mathematical aspects of solving linear, linear integer, and nonlinear convex optimization problems. Understand main modeling techniques in mathematical programming. 2. Be able to develop an optimization model from a decision problem with quantitative data. Be able to select and use suitable software to solve such model. 3. Be able to identify weaknesses of optimization models and limits of numerical solvers (students develop these abilities also during any practical test of the course when they practically solve relevant decision problems). 4. Be able to describe any aspect of a mathematical program and of the main algorithms for the solution of linear, linear integer, and nonlinear programs (students develop these abilities also during any practical test of the course when they practically solve relevant decision problems by working in groups). 5. Get mathematical basis to self-study solution techniques for complex mathematical programs such as nonconvex and multi-objective programming.
Program - Frequency - Exams
Course program
Prerequisites
Exam mode
Lesson mode
- Lesson code1002027
- Academic year2024/2025
- CourseInformation Engineering
- CurriculumGestionale
- Year2nd year
- Semester1st semester
- SSDMAT/09
- CFU6
- Subject areaAttività formative affini o integrative