Jan. 31, 2024, 3:46 p.m. | Jason B. Gibson Ajinkya C. Hire Philip M. Dee Oscar Barrera Benjamin Geisler Peter J. Hirschfeld Richa

cs.LG updates on arXiv.org arxiv.org

Integrating deep learning with the search for new electron-phonon superconductors represents a burgeoning field of research, where the primary challenge lies in the computational intensity of calculating the electron-phonon spectral function, $\alpha^2F(\omega)$, the essential ingredient of Midgal-Eliashberg theory of superconductivity. To overcome this challenge, we adopt a two-step approach. First, we compute $\alpha^2F(\omega)$ for 818 dynamically stable materials. We then train a deep-learning model to predict $\alpha^2F(\omega)$, using an unconventional training strategy to temper the model's overfitting, enhancing predictions. Specifically, …

alpha challenge computational cond-mat.mtrl-sci cond-mat.supr-con cs.lg deep learning discovery function intensity lies research search superconductor superconductors theory through

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