OPTIMIZATION
(obiettivi)
This graduated-level course introduces analytic tools and optimization methods that are suitable for large-scale problems arising in data science applications. The course presents both basic and advanced concepts of optimization and explores several algorithms that are efficient for network problems.
The student will acquire the ability to formulate, in mathematical terms, problems related to profit maximization and cost minimization, optimization of resources, and traffic network equilibria. The goals of the course are:
Knowledge and understanding: the aim of the course is to acquire advanced knowledge that allows students to study optimization problems and model techniques of large-scale decision-making problems. The students will be able to use algorithms for both linear and nonlinear programming problems. Applying knowledge and understanding: students will acquire knowledge useful to identify and model real-life decision-making problems. In addition, through real examples, the student will be able to implement correct solutions for complex problems. Making judgments: students will be able to choose and solve autonomously complex decision-making problems and to interpret the solutions. Communication skills: students will acquire base communication and reading skills using technical language. Learning skills: the course provides students with theoretical and practical methodologies and skills to deal with large-scale optimization problems.
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