Efficient modeling of ionic and electronic interactions by a resistive memory-based reservoir graph neural network.

IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Meng Xu, Shaocong Wang, Yangu He, Yi Li, Woyu Zhang, Ming Yang, Xiaojuan Qi, Zhongrui Wang, Ming Xu, Dashan Shang, Qi Liu, Xiangshui Miao, Ming Liu
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引用次数: 0

Abstract

Current quantum chemistry and materials science are dominated by first-principles methodologies such as density functional theory. However, these approaches face substantial computational costs as system scales up. In addition, the von Neumann bottleneck of digital computers imposes energy efficiency limitations. Here we propose a software-hardware co-design: the resistive memory-based reservoir graph neural network for efficient modeling of ionic and electronic interactions. Software-wise, the reservoir graph neural network is evaluated for computational tasks, including atomic force, Hamiltonian and wavefunction prediction, achieving comparable accuracy while reducing computational costs by approximately 104-, 106- and 103-fold, respectively, compared with traditional first-principles methods. Moreover, it reduces training costs by approximately 90% due to reservoir computing. Hardware-wise, validated on a 40-nm 256-kb in-memory computing macro, our co-design achieves improvements in area-normalized inference speed by approximately 2.5-, 2.5- and 2.7-fold, and inference energy efficiency by approximately 2.7, 1.9 and 4.4 times, compared with state-of-the-art digital hardware, respectively.

基于电阻记忆的储层图神经网络对离子和电子相互作用的有效建模。
当前的量子化学和材料科学主要是由第一性原理方法,如密度泛函理论。然而,随着系统规模的扩大,这些方法面临着大量的计算成本。此外,数字计算机的冯·诺伊曼瓶颈还限制了能源效率。在这里,我们提出了一种软硬件协同设计:基于电阻记忆的储层图神经网络,用于离子和电子相互作用的有效建模。在软件方面,油藏图神经网络可用于计算任务,包括原子力、哈密顿量和波函数预测,与传统的第一性原理方法相比,实现了相当的精度,同时将计算成本分别降低了约104倍、106倍和103倍。此外,由于储层计算,它减少了大约90%的培训成本。硬件方面,在40nm 256kb内存计算宏上进行了验证,与最先进的数字硬件相比,我们的协同设计分别将区域归一化推理速度提高了约2.5倍、2.5倍和2.7倍,并将推理能效提高了约2.7倍、1.9倍和4.4倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
11.70
自引率
0.00%
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