The quest for next-generation electronic materials frequently begins with an examination of the Fermi surface, a critical element that outlines a material's electronic structure.
The characteristics of the Fermi surface can change based on various factors, including the crystal structure, composition, and electronic band arrangement of the material.
By leveraging machine learning techniques, researchers aim to conduct faster and more reliable analyses of these surfaces, potentially accelerating the discovery of new spintronic materials.