Zusammenfassung
Variational principles for evolutionary systems arise in many settings, both in those describing
the physical world and in man-made algorithms for data science and optimization tasks.
Variational principles are available for Hamiltonian systems
in classical mechanics, gradient flows for dissipative systems, as well as in time-incremental minimization techniques for more general
evolutionary problems. Additional challenges arise via the interplay of two or more functionals (e.g. a free energy and a dissipation potential), thus encompassing a large variety of applications in the modeling of materials and fluids, in biology, and in multi-agent systems.
Variational principles and associated evolutions are also at the core of the modern approaches to machine learning tasks, since many of them are posed as minimizing an objective functional that models the problem. The discrete and random nature of these problems and the need for accurate computation in high dimension present a set of challenges that require new mathematical insights.
Variational methods for evolution allow for the
usage of the rich toolbox provided by the calculus of
variations, metric-space geometry, partial differential equations, and other branches of applied analysis.
The variational methods for evolution have seen a rapid growth over
the last two decades. This workshop continued the
successful line of meetings (2011, 2014, 2017, and 2020), while evolving and
branching into new directions. We have brought together a wide scope of
mathematical researchers from
calculus of variations, partial differential equations, numerical analysis, and
stochastics, as well as researchers from data science and machine learning, to exchange ideas, foster interaction, develop new avenues, and generally bring these communities closer together.