AI RESEARCH

PINNs in More General Geometry

arXiv CS.LG

ArXi:2604.25020v1 Announce Type: cross Neural architectures trained with losses inspired by differential conditions are the basis for PINN models. Since many constructions in differential geometry may be framed as minimisation of a differential functional, these functionals can be coded as loss functions to align the AI loss-minimisation goal with that of solving the geometric problem. This contribution to the Recent Progress in Computational String Geometry