AI RESEARCH

Expanding the extreme-k dielectric materials space through physics-validated generative reasoning

arXiv CS.AI

ArXi:2604.21068v1 Announce Type: cross The most technologically consequential materials are often the rarest: they occupy narrow regions of chemical space, obey competing physical constraints, and appear only sparsely in existing databases. High-kappa dielectrics, high-Tc superconductors, and ferromagnetic insulators are to name a few. This scarcity fundamentally limits today's data-driven materials discovery, where machine-learning models excel at interpolation but struggle to generate genuinely new candidates. Here, we.