F. Pellegrini, Ruggero Lot, Yusuf Shaidu, E. Küçükbenli
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引用次数: 1
摘要
我们发布了最新版本的PANNA 2.0 (Properties from Artificial Neural Network Architectures),这是一个基于局部原子描述符和多层感知器生成神经网络原子间势的代码。这个新版本的PANNA建立在一个新的后端上,具有改进的自定义和监控网络训练的工具,更好的图形处理单元支持,包括快速描述符计算器,外部代码的新插件,以及通过变分电荷平衡方案包含远程静电相互作用的新架构。我们概述了新代码的主要特性,并在常用的基准测试和更丰富的数据集上,将PANNA模型的准确性与最先进的模型进行了几个基准测试。
PANNA 2.0: Efficient neural network interatomic potentials and new architectures
We present the latest release of PANNA 2.0 (Properties from Artificial Neural Network Architectures), a code for the generation of neural network interatomic potentials based on local atomic descriptors and multilayer perceptrons. Built on a new back end, this new release of PANNA features improved tools for customizing and monitoring network training, better graphics processing unit support including a fast descriptor calculator, new plugins for external codes, and a new architecture for the inclusion of long-range electrostatic interactions through a variational charge equilibration scheme. We present an overview of the main features of the new code, and several benchmarks comparing the accuracy of PANNA models to the state of the art, on commonly used benchmarks as well as richer datasets.