电阻开关随机存取存储器(RRAM):存储器和计算的应用和需求

IF 51.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Daniele Ielmini, Giacomo Pedretti
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引用次数: 0

摘要

在信息时代,迫切需要新颖的硬件解决方案来有效地存储和处理越来越多的数据。在这种情况下,存储设备必须显著发展,以提供计算所需的必要位容量、性能和能源效率。特别是,新的计算范式已经出现,以最大限度地减少数据移动,这是已知的贡献最大的能源消耗的传统计算系统基于冯·诺伊曼架构。内存计算(IMC)提供了一种以最小的数据移动和出色的能源效率和性能在数据中进行计算的方法。为了实现这些目标,电阻开关随机存取存储器(RRAM)由于其出色的可伸缩性和非易失性存储而成为理想的选择。然而,现代人工智能(AI)模型的电路实现需要高度专业化的设备属性,需要仔细的RRAM设备工程。本文从材料、器件、电路和应用的角度阐述了RRAM的概念,重点关注了物理器件的特性以及存储和计算应用的要求。存储器的应用,如嵌入式非易失性存储器(eNVM)在新型微控制器单元(mcu)和存储类存储器(SCM),强调。IMC中的应用,如神经网络的硬件加速器、数据查询和代数函数,通过引用RRAM技术的演示来说明,证明了开发低功耗、可持续的人工智能所面临的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Resistive Switching Random-Access Memory (RRAM): Applications and Requirements for Memory and Computing

Resistive Switching Random-Access Memory (RRAM): Applications and Requirements for Memory and Computing
In the information age, novel hardware solutions are urgently needed to efficiently store and process increasing amounts of data. In this scenario, memory devices must evolve significantly to provide the necessary bit capacity, performance, and energy efficiency needed in computation. In particular, novel computing paradigms have emerged to minimize data movement, which is known to contribute the largest amount of energy consumption in conventional computing systems based on the von Neumann architecture. In-memory computing (IMC) provides a means to compute within data with minimum data movement and excellent energy efficiency and performance. To meet these goals, resistive-switching random-access memory (RRAM) appears to be an ideal candidate thanks to its excellent scalability and nonvolatile storage. However, circuit implementations of modern artificial intelligence (AI) models require highly specialized device properties that need careful RRAM device engineering. This work addresses the RRAM concept from materials, device, circuit, and application viewpoints, focusing on the physical device properties and the requirements for storage and computing applications. Memory applications, such as embedded nonvolatile memory (eNVM) in novel microcontroller units (MCUs) and storage class memory (SCM), are highlighted. Applications in IMC, such as hardware accelerators of neural networks, data query, and algebra functions, are illustrated by referring to the reported demonstrators with RRAM technology, evidencing the remaining challenges for the development of a low-power, sustainable AI.
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来源期刊
Chemical Reviews
Chemical Reviews 化学-化学综合
CiteScore
106.00
自引率
1.10%
发文量
278
审稿时长
4.3 months
期刊介绍: Chemical Reviews is a highly regarded and highest-ranked journal covering the general topic of chemistry. Its mission is to provide comprehensive, authoritative, critical, and readable reviews of important recent research in organic, inorganic, physical, analytical, theoretical, and biological chemistry. Since 1985, Chemical Reviews has also published periodic thematic issues that focus on a single theme or direction of emerging research.
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