CIDAN-XE: Computing in DRAM with Artificial Neurons

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
G. Singh, Ankit Wagle, S. Khatri, S. Vrudhula
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引用次数: 1

Abstract

This paper presents a DRAM-based processing-in-memory (PIM) architecture, called CIDAN-XE. It contains a novel computing unit called the neuron processing element (NPE). Each NPE can perform a variety of operations that include logical, arithmetic, relational, and predicate operations on multi-bit operands. Furthermore, they can be reconfigured to switch operations during run-time without increasing the overall latency or power of the operation. Since NPEs consume a small area and can operate at very high frequencies, they can be integrated inside the DRAM without disrupting its organization or timing constraints. Simulation results on a set of operations such as AND, OR, XOR, addition, multiplication, etc., show that CIDAN-XE achieves an average throughput improvement of 72X/5.4X and energy efficiency improvement of 244X/29X over CPU/GPU. To further demonstrate the benefits of using CIDAN-XE, we implement several convolutional neural networks and show that CIDAN-XE can improve upon the throughput and energy efficiency over the latest PIM architectures.
CIDAN-XE:用人工神经元在DRAM中进行计算
本文提出了一种基于dram的内存处理(PIM)体系结构,称为CIDAN-XE。它包含一个叫做神经元处理单元(NPE)的新型计算单元。每个NPE都可以对多位操作数执行各种操作,包括逻辑、算术、关系和谓词操作。此外,可以重新配置它们以在运行时切换操作,而不会增加操作的总体延迟或功率。由于npe占用的面积很小,并且可以在非常高的频率下工作,因此它们可以集成在DRAM中,而不会破坏其组织或时间限制。对AND、OR、XOR、加法、乘法等运算的仿真结果表明,与CPU/GPU相比,CIDAN-XE的平均吞吐量提高了72X/5.4X,能效提高了244X/29X。为了进一步证明使用CIDAN-XE的好处,我们实现了几个卷积神经网络,并表明CIDAN-XE可以提高最新PIM架构的吞吐量和能源效率。
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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