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Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning

机译:通过转移学习以通用神经网络潜力接近耦合簇的准确性

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摘要

Computational modeling of chemical and biological systems at atomic resolution is a crucial tool in the chemist’s toolset. The use of computer simulations requires a balance between cost and accuracy: quantum-mechanical methods provide high accuracy but are computationally expensive and scale poorly to large systems, while classical force fields are cheap and scalable, but lack transferability to new systems. Machine learning can be used to achieve the best of both approaches. Here we train a general-purpose neural network potential (ANI-1ccx) that approaches CCSD(T)/CBS accuracy on benchmarks for reaction thermochemistry, isomerization, and drug-like molecular torsions. This is achieved by training a network to DFT data then using transfer learning techniques to retrain on a dataset of gold standard QM calculations (CCSD(T)/CBS) that optimally spans chemical space. The resulting potential is broadly applicable to materials science, biology, and chemistry, and billions of times faster than CCSD(T)/CBS calculations.
机译:化学家和生物系统在原子分辨率下的计算建模是化学家工具集中的重要工具。计算机模拟的使用要求在成本和精度之间取得平衡:量子力学方法提供了高精度,但计算量大,并且无法很好地应用于大型系统,而经典力场则便宜且可扩展,但缺乏向新系统的可移植性。机器学习可用于实现两种方法中的最佳方法。在这里,我们在反应热化学,异构化和类药物分子扭转的基准上训练了接近CCSD(T)/ CBS准确性的通用神经网络电势(ANI-1ccx)。这是通过将网络训练为DFT数据,然后使用转移学习技术在最佳地跨越化学空间的金标准QM计算(CCSD(T)/ CBS)数据集上进行再训练来实现的。由此产生的潜力广泛适用于材料科学,生物学和化学领域,比CCSD(T)/ CBS计算快数十亿倍。

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