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2026 ABRO Course on Advances in Operations Research

Data dell'evento: 
Domenica, 3 May, 2026 - 10:00 to Venerdì, 22 May, 2026 - 14:00
Luogo: 
B203
Contatto: 
piccialli@diag.uniroma1.it

We are pleased to announce the 2026 ABRO Course on Advances in Operations Research, held this May at DIAG Sapienza in Rome. This year’s program features three specialized modules led by international experts, focusing on cooperative games, numerical optimization, and mixed-integer nonlinear programming.

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General Information

Dates: May 2026.

Location: Room B203 DIAG Sapienza, Via Ariosto 25, Rome.

Format: All lectures will be held in person.

Credits: Each module provides 3 ECTS (10 hours total per module).

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Module 1 | Cooperative Games: Basic Concepts and Case Studies

Instructor: Prof. Marcello Sanguineti (University of Genova).

Dates: May 4 – May 6, 2026.

Focus: An exploration of strategic interactions among agents. Topics include representation, stability, and fairness, with a specific look at the interplay between Machine Learning and Cooperative Games.

Applications: Case studies covering movement analysis, public transportation networks, and network congestion (Braess’ paradox).

 

Session Date Time Topic
Lecture 1 04/05/2026 14:00 - 17:00

A brief introduction to game theory. The role of cooperation. Representation of games.

 

Lecture 2 05/05/2026 11:00 - 13:00

Stability and fairness. Cooperative games on graphs. Network centrality.

 

Lecture 3 05/05/2026 14:00 - 16:00

Case studies: movement analysis, nonverbal communication, and public transportation networks.

 

Lecture 4 06/05/2026 10:00 - 13:00

Case studies: network congestion and Braess’ paradox.

 


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Module 2 | Proximal Methods in Numerical Optimization

Instructor: Dr. Alberto De Marchi (University of the Bundeswehr Munich).

Dates: May 4 – May 7, 2026.

Focus: An introduction to proximal methods, a family of algorithms essential for modern large-scale optimization. The course covers proximal-gradient methods and convergence analysis in nonconvex settings.

Applications: Challenges in data science, image processing, machine learning, and robotics.

 

Session Date Time Topic
Lecture 1 04/05/2026 11:00 - 13:00

Part I: Motivation and Background. Proximal operator and applications in data science, robotics, and finance.

 

Lecture 2 05/05/2026 09:00 - 11:00

Part II: Proximal Point Methods. Minimization problems involving prox-friendly terms.

 

Lecture 3 06/05/2026 14:00 - 16:00

Proximal Gradient Methods. Structured problems with differentiable and prox-friendly terms.

 

Lecture 4 07/05/2026 10:00 - 13:00

Nonsmooth Problems with Constraints. Penalty and barrier methods.

 



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Module 3 | Mixed Integer Non Linear Optimization: Methods and Applications

Instructor: Dr. Claudia D’Ambrosio (CNRS and École Polytechnique).

Dates: May 20 – May 22, 2026.

Focus: A deep dive into Mixed Integer Non Linear Optimization (MINLO), one of the most general classes of optimization problems. Lectures will cover fundamentals and methods for both convex and nonconvex MINLO.

Applications: Practical examples from energy systems, finance, and air traffic management.

 

Session Date Time Topic
Lecture 1 20/05/2026 14:00 - 17:00

Refresher on mathematical optimization, linear programming, and MILP; introduction to MINLO.

 

Lecture 2 21/05/2026* 10:00 - 13:00

Convex MINLO and real-world applications.

 

Lecture 3 22/05/2026 09:30 - 13:30

Nonconvex MINLO: generic and tailored methods and real-world applications.

 

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[!NOTE] For more details or inquiries regarding specific modules, please contact the Veronica Piccialli Veronica.piccialli@uniroma1.it
 

gruppo di ricerca: 
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