Editorial: In-memory sensing and computing: New materials and devices meet new challenges

IF 4.1 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Changjin Wan, Zhongrui Wang, R. John
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引用次数: 0

Abstract

With the convergence of Artificial Intelligence (AI) and Internet of Things (IoT) redefining the way industries, business, and economies function, the demand for energyefficient and high-performance computing at the edge is exponentially increasing. Inspired by the low power and parallel processing capabilities of the biological brain, Neuromorphic Computing is an emerging computing paradigm that overcomes many limitations of the conventional computer architecture. Most importantly, by performing computations in-memory, Neuromorphic Computing overcomes the von Neuman bottleneck, thus improving the computational capability along with additional area and power savings. While several stand-alone neuromorphic chips have been developed with excellent energy efficiency for running specific AI algorithms, such digital systems still suffer when interfaced with edge sensors. This is because the sensory inputs are nonstructural, non-normalized, and fragmented, which incur large energy, time and wiring overheads on digital systems with separated sensing and processing units. This calls for in-memory sensing technologies, with fused sensing, memory, and processing capabilities, to unleash the full potential of highly sophisticated sensor and actuator systems used in bioelectronics and robotics. Despite its infancy, the concepts of in-memory sensing and computing has already made significant inroads in specialized areas like e-skin and bionic eye. However, these are majorly software implementations and the hardware challenges to complement these have not been addressed yet. To take full advantage of the bioinspired edge processing capabilities, there are still fundamental challenges at the hardware level (materials and devices) that need to be addressed. Therefore, “In-memory Sensing and Computing: New Materials and Devices meet New Challenges” was launched last year, initiating the discussions on the recent developments as well as perspectives. Researchers from multidisciplinary backgrounds, like microelectronics, materials, and computer science, and different regions have posted their opinions and/or original works pertinent to this OPEN ACCESS
编辑:内存传感和计算:新材料和设备面临新的挑战
随着人工智能(AI)和物联网(IoT)的融合重新定义了工业、商业和经济的运作方式,对边缘节能和高性能计算的需求呈指数级增长。受生物大脑的低功耗和并行处理能力的启发,神经形态计算是一种新兴的计算范式,它克服了传统计算机体系结构的许多限制。最重要的是,通过在内存中执行计算,神经形态计算克服了冯·诺伊曼瓶颈,从而提高了计算能力,并节省了额外的面积和功耗。虽然一些独立的神经形态芯片已经被开发出来,具有出色的能源效率,用于运行特定的人工智能算法,但这些数字系统在与边缘传感器接口时仍然受到影响。这是因为感官输入是非结构化的、非规范化的和碎片化的,这在具有分离的传感和处理单元的数字系统上产生了大量的能量、时间和布线开销。这需要内存传感技术,融合传感、存储和处理能力,以释放生物电子学和机器人中使用的高度复杂的传感器和执行器系统的全部潜力。尽管还处于起步阶段,内存传感和计算的概念已经在电子皮肤和仿生眼等专业领域取得了重大进展。然而,这些主要是软件实现,补充这些的硬件挑战尚未得到解决。为了充分利用生物启发的边缘处理能力,在硬件层面(材料和设备)仍然存在需要解决的基本挑战。因此,去年推出了“内存传感与计算:新材料和器件迎接新挑战”,开始讨论最近的发展和前景。来自多学科背景的研究人员,如微电子学、材料学和计算机科学,以及不同地区的研究人员发表了他们的意见和/或与此OPEN ACCESS相关的原创作品
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
Frontiers in Nanotechnology
Frontiers in Nanotechnology Engineering-Electrical and Electronic Engineering
CiteScore
7.10
自引率
0.00%
发文量
96
审稿时长
13 weeks
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