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We present a generative diffusion model specifically tailored to the discovery of surface structures. The generative model takes into account substrate registry and periodicity by including masked atoms and z-directional confinement. Using a rotational equivariant neural network architecture, we design a method that trains a denoiser-network for diffusion alongside a force-field for guided sampling of low-energy surface phases. An effective data-augmentation scheme for training the denoiser-network is proposed to scale generation far beyond training data sizes. We showcase the generative model by investigating silver-oxide phases on Ag (111) where we are able to rediscover the ``Ag₆ model'' of p (44) O/Ag (111) that took scientist years to uncover by means of human intuition.
Rønne et al. (Tue,) studied this question.