计算
计算机科学
解算器
计算科学
偏微分方程
数值分析
并行计算
算法
数学
数学分析
程序设计语言
作者
Dongyan Zhao,Yubo Wang,Jin Shao,Yanning Chen,Zhiwang Guo,Cheng Pan,Guangzhi Dong,Min Zhou,Fengxia Wu,Wenhe Wang,Keji Zhou,Xiaoyong Xue
出处
期刊:Micromachines
[MDPI AG]
日期:2022-05-02
卷期号:13 (5): 731-731
被引量:2
摘要
In recent years, compute-in-memory (CIM) has been extensively studied to improve the energy efficiency of computing by reducing data movement. At present, CIM is frequently used in data-intensive computing. Data-intensive computing applications, such as all kinds of neural networks (NNs) in machine learning (ML), are regarded as ‘soft’ computing tasks. The ‘soft’ computing tasks are computations that can tolerate low computing precision with little accuracy degradation. However, ‘hard’ tasks aimed at numerical computations require high-precision computing and are also accompanied by energy efficiency problems. Numerical computations exist in lots of applications, including partial differential equations (PDEs) and large-scale matrix multiplication. Therefore, it is necessary to study CIM for numerical computations. This article reviews the recent developments of CIM for numerical computations. The different kinds of numerical methods solving partial differential equations and the transformation of matrixes are deduced in detail. This paper also discusses the iterative computation of a large-scale matrix, which tremendously affects the efficiency of numerical computations. The working procedure of the ReRAM-based partial differential equation solver is emphatically introduced. Moreover, other PDEs solvers, and other research about CIM for numerical computations, are also summarized. Finally, prospects and the future of CIM for numerical computations with high accuracy are discussed.
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