Dual Vt 7T SRAM Based In-Memory Compute Adder for Convolution Neural Network Applications

Biby Joseph, R. Kavitha
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引用次数: 1

Abstract

In artificial Intelligence (AI), frequent movement of data required between memory and computational block. Currently computing platforms suffer from memory wall. Inmemory computing (IMC) provides a solution, by moving memory and processing unit closer. In this article, we present, IMC using dual Vt 7T SRAM+2T cell along with less delay sense amplifier in UMC 65nm technology. To prove its efficiency basic Boolean operations and half adder is implemented. The proposed technique shows an improvement in speed by 43% and 61.95% for carry and sum respectively as compared with already IMC architectures, the early precharge of the sensing delay of sense amplifiers. The proposed half adder has an delay of 0.78ns and an average power dissipation of 36uW.
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基于双v7t SRAM的内存计算加法器在卷积神经网络中的应用
在人工智能(AI)中,需要在内存和计算块之间频繁地移动数据。当前的计算平台受到内存墙的困扰。内存计算(IMC)通过将内存和处理单元移动得更近,提供了一种解决方案。在本文中,我们提出了在UMC 65nm技术中使用双Vt 7T SRAM+2T单元以及较少延迟感测放大器的IMC。为了证明其有效性,实现了基本的布尔运算和半加法器。与现有的IMC结构相比,该技术的进位和求和速度分别提高了43%和61.95%,这是检测放大器感知延迟的早期预充。所提出的半加法器延迟为0.78ns,平均功耗为36w。
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