2023
DOI: 10.48550/arxiv.2301.05824
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Discovery of 2D materials using Transformer Network based Generative Design

Abstract: Two-dimensional (2D) materials have wide applications in superconductors, quantum, and topological materials. However, their rational design is not well established, and currently less than 6,000 experimentally synthesized 2D materials have been reported. Recently, deep learning, data-mining, and density functional theory (DFT)-based high-throughput calculations are widely performed to discover potential new materials for diverse applications. Here we propose a generative material design pipeline, namely mater… Show more

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“…An illustrative approach of this kind is present in figure 11 Dong et al in [183] propose a material transformer generator, a pipeline for 2D material discovery that integrates a transformer-based 2D material composition generator, two template-based crystal structure predictors, and a GNN potential-based structure relaxation algorithm.…”
Section: Generative Modelingmentioning
confidence: 99%
“…An illustrative approach of this kind is present in figure 11 Dong et al in [183] propose a material transformer generator, a pipeline for 2D material discovery that integrates a transformer-based 2D material composition generator, two template-based crystal structure predictors, and a GNN potential-based structure relaxation algorithm.…”
Section: Generative Modelingmentioning
confidence: 99%