English

Materials discovery acceleration by using condition generative methodology

Materials Science 2026-02-11 v1

Abstract

With the rapid advancement of AI technologies, generative models have been increasingly employed in the exploration of novel materials. By integrating traditional computational approaches such as density functional theory (DFT) and molecular dynamics (MD), existing generative models, including diffusion models and autoregressive models, have demonstrated remarkable potential in the discovery of novel materials. However, their efficiency in goal-directed materials design remains suboptimal. In this work we developed a highly transferable, efficient and robust conditional generation framework, PODGen, by integrating a general generative model with multiple property prediction models. Based on PODGen, we designed a workflow for the high-throughput crystals conditional generation which is used to search new topological insulators (TIs). Our results show that the success rate of generating TIs using our framework is 5.3 times higher than that of the unconstrained approach. More importantly, while general methods rarely produce gapped TIs, our framework succeeds consistently, highlighting an effectively \infty improvement. This demonstrates that conditional generation significantly enhances the efficiency of targeted material discovery. Using this method, we generated tens of thousands of new topological materials and conducted further first-principles calculations on those with promising application potential. Furthermore, we identified promising, synthesizable topological (crystalline) insulators such as CsHgSb, NaLaB12_{12}, Bi4_4Sb2_2Se3_3, Be3_3Ta2_2Si and Be2_2W.

Keywords

Cite

@article{arxiv.2505.00076,
  title  = {Materials discovery acceleration by using condition generative methodology},
  author = {Caiyuan Ye and Yuzhi Wang and Xintian Xie and Tiannian Zhu and Jiaxuan Liu and Yuqing He and Lili Zhang and Junwei Zhang and Zhong Fang and Lei Wang and Zhipan Liu and Hongming Weng and Quansheng Wu},
  journal= {arXiv preprint arXiv:2505.00076},
  year   = {2026}
}
R2 v1 2026-06-28T23:17:16.983Z