WyckoffDiff - A Generative Diffusion Model for Crystal Symmetry

Kelvinius, Filip Ekström, Andersson, Oskar B., Parackal, Abhijith S., Qian, Dong, Armiento, Rickard, Lindsten, Fredrik

arXiv.org Artificial Intelligence 

Crystalline materials often exhibit a high level of symmetry. However, most generative models do not account for symmetry, but rather model each atom without any constraints on its position or element. We propose a generative model, Wyckoff Diffusion (WyckoffDiff), which generates symmetry-based descriptions of crystals. This is enabled by considering a crystal structure representation that encodes all symmetry, and we design a novel neural network architecture which enables using this representation inside a discrete generative model framework. In addition to respecting symmetry by construction, the discrete nature of our model enables fast generation. We additionally present a new metric, Fr\'echet Wrenformer Distance, which captures the symmetry aspects of the materials generated, and we benchmark WyckoffDiff against recently proposed generative models for crystal generation.