Workshop
Machine Learning Multiscale Processes
Nikita Kazeev · Eleonore Vissol-Gaudin · Mengyi Chen · Isabelle Guyon · Bingjia Yang · Andrey Ustyuzhanin
Conference GHJ
Sat 26 Apr, 5:30 p.m. PDT
Some of the most exciting and impactful open scientific problems have computational complexity as the limiting factor to an in silico solution, e. g. high–temperature superconductivity and fusion power. Atoms behave according to the well–established laws of quantum mechanics, but as system size grows computations quickly become intractable. This workshop will gather for cross–pollination a diverse group of researchers belonging to difference scientific domains and machine learning approaches. The immediate outcome will be an exchange of ideas, datasets, and crystallized problem statements, all towards the ultimate goal of developing universal AI methods that would be able find efficient and accurate approximations of complex systems from low-level theory. If we solve scale transition, we solve science.
Live content is unavailable. Log in and register to view live content