Title: What AI can do for control and what control can do for AI

Abstract: In recent years, learning-based methods have demonstrated significant success in controlling complex systems. These techniques involve using learning-based tools to either derive mathematical models of a system for synthesizing controllers or directly learn the controller itself. However, applying learning-based methods in safety-critical systems poses challenges, as these components are often regarded as black-box systems without formal guarantees. In this presentation, I will explore the synergy between machine learning and control theory by addressing two key areas: firstly, how learning enhances symbolic control methods. Secondly, I will explore strategies for overcoming optimality and safety constraints in reinforcement learning algorithms through the application of control techniques.

Dates

March 15th, 2025

Abstract submission deadline

March 15th, 2025

Paper submission deadline

April 16th, 2025

Accept/Reject notification

May 21-23 ,2025

Netys Conference

Proceedings

Revised selected papers will be published as a post-proceedings in Springer's LNCS "Lecture Notes in Computer Science"

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