Prospects and challenges of electrochemical random-access memory for deep-learning accelerators

IF 12.2 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
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Abstract

The ever-expanding capabilities of machine learning are powered by exponentially growing complexity of deep neural network (DNN) models, requiring more energy and chip-area efficient hardware to carry out increasingly computational expensive model-inference and training tasks. Electrochemical random-access memories (ECRAMs) are developed specifically to implement efficient analog in-memory computing for these data-intensive workloads, showing some critical advantages over competing memory technologies mostly developed originally for digital electronics. ECRAMs possess the distinctive capability to switch between a very large number of memristive states with a high level of symmetry, small cycle-to-cycle variability, and low energy consumption; and they simultaneously exhibit good endurance, long data retention, fast switching speed up to nanoseconds, and verified scalability down to sub-50 nm regime, therefore holding great promise in realizing deep-learning accelerators when heterogeneously integrated with silicon-based peripheral circuits. In this review, we first examine challenges in constructing in-memory-computing accelerators and unique advantages of ECRAMs. We then critically assess the various ionic species, channel materials, and solid-state electrolytes employed in ECRAMs that influence device programming characteristics and performance metrics with their different memristive modulation and ionic transport mechanisms. Furthermore, ECRAM device engineering and integration schemes are discussed, within the context of their implementation in high-density pseudo-crossbar array microarchitectures for performing DNN inference and training with high parallelism. Finally, we offer our insights regarding major remaining obstacles and emerging opportunities of harnessing ECRAMs to realize deep-learning accelerators through material-device-circuit-architecture-algorithm co-design.

用于深度学习加速器的电化学随机存取存储器的前景与挑战
深度神经网络(DNN)模型的复杂性呈指数级增长,推动了机器学习能力的不断扩大,这就需要能耗和芯片面积更高效的硬件来执行计算成本越来越高的模型推理和训练任务。电化学随机存取存储器(ECRAM)是专为这些数据密集型工作负载实现高效模拟内存计算而开发的,与主要为数字电子产品开发的竞争性存储器技术相比,具有一些关键优势。ECRAM 具有在大量存储器状态之间切换的独特能力,且对称性高、周期间变化小、能耗低;同时,它们还具有良好的耐用性、较长的数据保留时间、高达纳秒的快速切换速度以及经过验证的低至 50 纳米以下的可扩展性,因此,当与硅基外围电路异构集成时,在实现深度学习加速器方面大有可为。在本综述中,我们首先探讨了构建内存计算加速器所面临的挑战以及 ECRAM 的独特优势。然后,我们严格评估了 ECRAM 中采用的各种离子种类、通道材料和固态电解质,它们通过不同的记忆调制和离子传输机制影响器件编程特性和性能指标。此外,我们还讨论了 ECRAM 器件工程和集成方案,以及它们在高密度伪交叉条阵微体系结构中的实施情况,以实现 DNN 的高并行性推理和训练。最后,我们就通过材料-器件-电路-架构-算法协同设计利用 ECRAM 实现深度学习加速器的主要剩余障碍和新兴机遇提出了自己的见解。
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来源期刊
Current Opinion in Solid State & Materials Science
Current Opinion in Solid State & Materials Science 工程技术-材料科学:综合
CiteScore
21.10
自引率
3.60%
发文量
41
审稿时长
47 days
期刊介绍: Title: Current Opinion in Solid State & Materials Science Journal Overview: Aims to provide a snapshot of the latest research and advances in materials science Publishes six issues per year, each containing reviews covering exciting and developing areas of materials science Each issue comprises 2-3 sections of reviews commissioned by international researchers who are experts in their fields Provides materials scientists with the opportunity to stay informed about current developments in their own and related areas of research Promotes cross-fertilization of ideas across an increasingly interdisciplinary field
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