TAM: A Computing in Memory based on Tandem Array within STT-MRAM for Energy-Efficient Analog MAC Operation

Jinkai Wang, Zhengkun Gu, Hongyu Wang, Zuolei Hao, Bojun Zhang, Weisheng Zhao, Yue Zhang
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Abstract

Computing in memory (CIM) has been demonstrated promising for energy efficient computing. However, the dramatic growth of the data scale in neural network processors has aroused a demand for CIM architecture of higher bit density, for which the spin transfer torque magnetic RAM (STT-MRAM) with high bit density and performance arises as an up-and-coming candidate solution. In this work, we propose an analog CIM scheme based on tandem array within STT-MRAM (TAM) to further improve energy efficiency while achieving high bit density. First, the resistance summation based analog MAC operation minimizes the effect of low tunnel magnetoresistance (TMR) by the serial magnetic tunnel junctions (MTJs) structure in the proposed tandem array with smaller area overhead. Moreover, a read scheme of resistive-to-binary is designed to achieve the MAC results accurately and reliably. Besides, the data-dependent error caused by MTJs in series has been eliminated with a proposed dynamic selection circuit. Simulation results of a 2Kb TAM architecture show 113.2 TOPS/W and 63.7 TOPS/W for 4-bit and 8-bit input/weight precision, respectively, and reduction by 39.3% for bit-cell area compared with existing array of MTJs in series.
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基于STT-MRAM串联阵列的内存计算节能模拟MAC操作
内存计算(CIM)已被证明是一种很有前途的节能计算方法。然而,神经网络处理器中数据规模的急剧增长引起了对更高比特密度的CIM架构的需求,具有高比特密度和高性能的自旋传递扭矩磁RAM (STT-MRAM)成为一个有前途的候选解决方案。在这项工作中,我们提出了一种基于STT-MRAM (TAM)内串联阵列的模拟CIM方案,以进一步提高能源效率,同时实现高比特密度。首先,基于电阻求和的模拟MAC操作可以最大限度地减少低隧道磁阻(TMR)的影响,这是由于所提出的串联阵列中的串联磁隧道结(MTJs)结构具有较小的面积开销。此外,设计了一种电阻-二进制的读取方案,以准确可靠地获得MAC结果。此外,提出了一种动态选择电路,消除了mtj串联产生的数据依赖误差。仿真结果表明,2Kb TAM结构的4位和8位输入/权重精度分别为113.2 TOPS/W和63.7 TOPS/W,位元面积比现有串联mtj阵列减少了39.3%。
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