A faster experiment to find and study topological materials Using machine learning and simple X-ray spectra, researchers can uncover compounds that might enable next-generation computer chips or quantum devices. October 26, 2022 Read full story →
Seeing an elusive magnetic effect through the lens of machine learning An MIT team incorporates AI to facilitate the detection of an intriguing materials phenomenon that can lead to electronics without energy dissipation. March 24, 2022 Read full story →
Fast-tracking the search for energy-efficient materials Doctoral candidate Nina Andrejević combines spectroscopy and machine learning techniques to identify novel and valuable properties in matter. January 30, 2022 Read full story →
A streamlined approach to determining thermal properties of crystalline solids and alloys MIT research team finds machine learning techniques offer big advantages over standard experimental and theoretical approaches. April 1, 2021 Read full story →
A cool advance in thermoelectric conversion A quantum effect in topological semimetals demonstrated by MIT researchers could allow for the utilization of an untapped energy source. December 11, 2020 Read full story →
Newly observed phenomenon could lead to new quantum devices Exotic states called Kohn anomalies could offer clues to why some materials have the electronic properties they do. June 12, 2020 Read full story →