CODE 106838 ACADEMIC YEAR 2024/2025 CREDITS 6 cfu anno 1 ECONOMICS AND DATA SCIENCE 11267 (LM-56) - GENOVA 6 cfu anno 2 MANAGEMENT FOR ENERGY AND ENVIRONMENTAL TRANSITION (MEET) 11427 (LM-77) - GENOVA SCIENTIFIC DISCIPLINARY SECTOR MAT/09 LANGUAGE English TEACHING LOCATION GENOVA SEMESTER 1° Semester TEACHING MATERIALS AULAWEB OVERVIEW Optimization is a discipline included in decision science and management science. In addition to the basic notions of this subject, the course provides an introduction to programming and software development. The programming language that will be used and explored is Python. The course provides students the most relevant Optimization methods, among the main techniques, Linear programming, Integer Linear Programming, heuristic, and meta-heuristic algorithms are presented. AIMS AND CONTENT LEARNING OUTCOMES The course provides students the basics of Optimization, which are most relevant to the operational planning of enterprises. The course aims to develop optimization models and provide mathematical programming methods, both exact and heuristic, for decision-makers. Students are also provided with the necessary knowledge to understand the structure of an optimization algorithm and to implement it with Python. By the end of the course, students will have the skills necessary to identify the methodological approach needed to address a problem and the ability to implement in Python that method to determine solutions. AIMS AND LEARNING OUTCOMES The course provides students an overview of the most important optimization methods, problem-solving skills will also be provided. The course is aimed at developing optimization models and providing methods for complex problems. The focus of the course is on algorithmic techniques aimed at a faster resolution of these types of complex problems. At the end of the course, students will be able to use the Python programming language to develop a basic optimization algorithm. Among the main Optimization techniques, students will acquire skills in Mathematical Programming, Heuristic, and Meta-heuristic algorithms to face relevant complex problems, as Optimal routes and connections problems, Decision problems with Boolean variables, Optimization problem defined on Graphs. PREREQUISITES Recommended: Algebra, Analytic geometry, Programming, TEACHING METHODS The course includes frontal lessons held in the computer classroom, to give students the opportunity to formulate, solve and analyze together with the teachers the proposed problems. If it is not possible to carry out activities in class, due to changes in health conditions, the teaching methods decided by the University will be adopted. For any updates, please refer to Aulaweb. SYLLABUS/CONTENT Consistent with the objectives previously illustrated in the course, the following topics are covered Introduction to programming. Logic programming. Programming languages. Python basic concepts: Getting Started, the first program: "hello world". Variables and Input. Conditional statements. Iteration statements. Functions Modules and Classes Strings, Lists, Dictionaries Use LP and ILP solvers in Python: Introduction to PL and PLI, Define decision variables, Create the objective function, Add constraints to the model, Analysis of the solutions. Data structure: Graph data structure Data manipulation and storage. Develop a parser. Test cases creation. Binary variables with Python. Algorithms and complexity classes (concepts): Exact, heuristic, meta-heuristic. Constructive Algorithms, Greedy Algorithms, selection function. Enhanced Greedy. Implementation of the proposed algorithms. Genetic Algorithms: Chromosome, population, crossover, mutation, selection function. Population diversity, speciation heuristic, and strong mutation. Memetic Algorithms. Implementation of a Genetic Algorithm RECOMMENDED READING/BIBLIOGRAPHY The following books, articles and link are suggested. Hillier, Lieberman, “Introduction to Operations Research”, McGraw Hill, 2016. Downey, A., et al. "Thinking python. 2.0". Green Tea Press Supplemental Material:, 2012. https://coin-or.github.io/pulp/index.html TEACHERS AND EXAM BOARD CARMINE CERRONE Ricevimento: To request a meeting with the professor, you can send an email expressing your preference for an in-person meeting or a meeting via Teams. Exam Board CARMINE CERRONE (President) DANIELA AMBROSINO ANNA FRANCA SCIOMACHEN LESSONS LESSONS START First Semester Class schedule The timetable for this course is available here: Portale EasyAcademy EXAMS EXAM DESCRIPTION The exam consists of a written test comprising short-answer questions, multiple-choice questions, and brief exercises. Students who achieve a minimum grade of 18/30 will pass the exam. ASSESSMENT METHODS Online tests and exercises during class. Exam schedule Data appello Orario Luogo Degree type Note 18/12/2024 11:00 GENOVA Scritto 14/01/2025 11:00 GENOVA Scritto 29/01/2025 11:00 GENOVA Scritto 28/05/2025 11:00 GENOVA Scritto 11/06/2025 11:00 GENOVA Scritto 08/07/2025 11:00 GENOVA Scritto 09/09/2025 11:00 GENOVA Scritto Agenda 2030 - Sustainable Development Goals Industry, innovation and infrastructure Responbile consumption and production Climate action OpenBadge PRO3 - Soft skills - Alfabetica avanzato 1 - A PRO3 - Soft skills - Personale avanzato 1 - A PRO3 - Soft skills - Imparare a imparare base 1 - A PRO3 - Soft skills - Creazione progettuale avanzato 1 - A