A Novel Decoder Design for Logic Computation in SRAM: CiM-SRAM

Kanika Monga, Sahil Aggarwal, N. Chaturvedi, S. Gurunarayanan
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引用次数: 2

Abstract

Computing-in-Memory is an emerging paradigm that promises to accelerate data-intensive computation by eliminating the back and forth data movement between the memory and processor. SRAM is an ideal candidate for implementing computation in memory as it offers benefits such as high speed, low power consumption, and high endurance. One of the most extensively explored techniques utilized to realize computation within the SRAM is reading out the voltage at the bitline, which corresponds to a valid logic function output. It also requires activation of multiple wordlines corresponding to the location of the stored operands in the memory. However, conventional address decoders in SRAM selects only one address at a time. Hence, addressing this challenge, we propose to design a novel decoder which support enabling of multiple wordline in a 6T bitcell based CiM-SRAM (Computing-in-Memory based SRAM) array for performing logic computation.
一种新的SRAM逻辑计算解码器设计:CiM-SRAM
内存中计算是一种新兴的范式,它承诺通过消除内存和处理器之间来回的数据移动来加速数据密集型计算。SRAM是在内存中实现计算的理想选择,因为它具有高速、低功耗和高耐用性等优点。用于实现SRAM内计算的最广泛探索的技术之一是读出位线处的电压,这对应于有效的逻辑函数输出。它还需要激活与存储的操作数在内存中的位置相对应的多个字行。然而,SRAM中的传统地址解码器一次只选择一个地址。因此,为了解决这一挑战,我们建议设计一种新的解码器,支持在基于6T位元的CiM-SRAM(基于内存的计算SRAM)阵列中启用多个字行来执行逻辑计算。
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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