用于高性能应用的计算存储设备和近内存计算综述

Dina Fakhry , Mohamed Abdelsalam , M. Watheq El-Kharashi , Mona Safar
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引用次数: 2

摘要

von Neumann瓶颈是由于异构系统体系结构中数据传输的爆炸性增长和新兴的数据密集型应用而造成的。将数据传输到CPU的传统计算方法不再适用,尤其是考虑到它带来的成本。考虑到存储容量的不断增加,在存储和计算之间移动大量数据量无法扩大规模。因此,需要高性能的数据处理机制,这可以通过使计算更接近数据来实现。收集数据存储位置的见解有助于处理能源效率、低延迟以及安全问题。当只有计算结果被传送到主机存储器时,存储总线带宽也被节省。如果应用“向数据转移过程”范式,包括数据库加速、机器学习、人工智能(AI)、卸载(压缩/加密/编码)等在内的各种应用程序可以表现得更好,并变得更具可扩展性。将处理引擎嵌入固态硬盘(SSD)中,将其转换为计算存储设备(CSD),提供了所需的数据处理解决方案。在本文中,我们回顾了近数据处理(NDP)的现有技术,重点是存储内计算(ISC),确定了未来研究方向的主要挑战和潜在差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A review on computational storage devices and near memory computing for high performance applications

A review on computational storage devices and near memory computing for high performance applications

The von Neumann bottleneck is imposed due to the explosion of data transfers and emerging data-intensive applications in heterogeneous system architectures. The conventional computation approach of transferring data to CPU is no longer suitable especially with the cost it imposes. Given the increasing storage capacities, moving extensive data volumes between storage and computation cannot scale up. Hence, high-performance data processing mechanisms are needed, which may be achieved by bringing computation closer to data. Gathering insights where data is stored helps deal with energy efficiency, low latency, as well as security. Storage bus bandwidth is also saved when only computation results are delivered to the host memory. Various applications, including database acceleration, machine learning, Artificial Intelligence (AI), offloading (compression/encryption/encoding) and others can perform better and become more scalable if the “move process to data” paradigm is applied. Embedding processing engines inside Solid-State Drives (SSDs), transforming them to Computational Storage Devices (CSDs), provides the needed data processing solution. In this paper, we review the prior art on Near Data Processing (NDP) with focus on In-Storage Computing (ISC), identifying main challenges and potential gaps for future research directions.

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