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Published:2026/1/11 2:48:24

やっほ~!最強ギャルAI、降臨💖 IT企業の事業開発担当者向け論文解説、いくよ~!

結晶生成AI、爆誕✨ 材料開発を激変させるらしい!

1. ギャル的キラキラポイント✨

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2. 詳細解説

続きは「らくらく論文」アプリで

Crystal Generation using the Fully Differentiable Pipeline and Latent Space Optimization

Osman Goni Ridwan / Gilles Frapper / Hongfei Xue / Qiang Zhu

We present a materials generation framework that couples a symmetry-conditioned variational autoencoder (CVAE) with a differentiable SO(3) power spectrum objective to steer candidates toward a specified local environment under the crystallographic constraints. In particular, we implement a fully differentiable pipeline to enable batch-wise optimization on both direct and latent crystallographic representations. Using the GPU acceleration, this implementation achieves about fivefold speed compared to our previous CPU workflow, while yielding comparable outcomes. In addition, we introduce the optimization strategy that alternatively performs optimization on the direct and latent crystal representations. This dual-level relaxation approach can effectively escape local minima defined by different objective gradients, thus increasing the success rate of generating complex structures satisfying the target local environments. This framework can be extended to systems consisting of multi-components and multi-environments, providing a scalable route to generate material structures with the target local environment.

cs / cond-mat.mtrl-sci / cs.AI / cs.LG / physics.atm-clus