跨量子化学层次的一体化基础模型学习

Pavlo O., Dral, Yuxinxin, Chen
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引用次数: 0

摘要

机器学习(ML)潜力通常以单一量子化学(QC)水平为目标,而为多保真度学习开发的 ML 模型尚未证明能为基础模型提供可扩展的解决方案。在此,我们介绍基于多模态学习的一体化(AIO)ANI 模型架构,它可以学习任意数量的 QC 级别。我们的一体化学习方法为迁移学习提供了一种更通用、更易用的替代方案。我们用它来训练 AIO-ANI-UIP 基础模型,其泛化能力可与半经验 GFN2-xTB 和使用双 Zeta 基集的 DFT 有机分子相媲美。我们的研究表明,AIO-ANI 模型可以在从半经验到密度泛函理论再到耦合簇的不同 QC 水平上进行学习。我们还利用 AIO 模型设计了基于 Δ-learning 的基础模型 Δ-AIO-ANI,与 AIO-ANI-UIP 相比,其准确性和鲁棒性都有所提高。代码和基础模型可在 https://github.com/dralgroup/aio-ani 上获得;它们将被集成到通用的、可更新的人工智能增强 QM(UAIQM)库中,并在 MLatom 软件包中提供,以便在 XACS 云计算平台上在线使用(更新信息见 https://github.com/dralgroup/mlatom)。
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All-in-one foundational models learning across quantum chemical levels
Machine learning (ML) potentials typically target a single quantum chemical (QC) level while the ML models developed for multi-fidelity learning have not been shown to provide scalable solutions for foundational models. Here we introduce the all-in-one (AIO) ANI model architecture based on multimodal learning which can learn an arbitrary number of QC levels. Our all-in-one learning approach offers a more general and easier-to-use alternative to transfer learning. We use it to train the AIO-ANI-UIP foundational model with the generalization capability comparable to semi-empirical GFN2-xTB and DFT with a double-zeta basis set for organic molecules. We show that the AIO-ANI model can learn across different QC levels ranging from semi-empirical to density functional theory to coupled cluster. We also use AIO models to design the foundational model Δ-AIO-ANI based on Δ-learning with increased accuracy and robustness compared to AIO-ANI-UIP. The code and the foundational models are available at https://github.com/dralgroup/aio-ani; they will be integrated into the universal and updatable AI-enhanced QM (UAIQM) library and made available in the MLatom package so that they can be used online at the XACS cloud computing platform (see https://github.com/dralgroup/mlatom for updates).
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