An energy-efficient 10T SRAM in-memory computing macro for artificial intelligence edge processor

Anil Kumar Rajput, Manisha Pattanaik, Gaurav Kaushal
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Abstract

In-Memory Computing (IMC) is emerging as a new paradigm to address the von-Neumann bottleneck (VNB) in data-intensive applications. In this paper, an energy-efficient 10T SRAM-based IMC macro architecture is proposed to perform logic, arithmetic, and In-memory Dot Product (IMDP) operations. The average write margin and read margins of the proposed 10T SRAM are improved by 40% and 2.5%, respectively, compared to the 9T SRAM. The write energy and leakage power of the proposed 10T SRAM are reduced by 89% and 83.8%, respectively, with aproximatelly similar read energy compared to 9T SRAM. Additionally, a 4 Kb SRAM array based on 10T SRAM is implemented in 180-nm SCL technology to analyze the operation and performance of the proposed IMC macro architecture. The proposed IMC architecture achieves an energy efficiency of 5.3 TOPS/W for 1-bit logic, 4.1 TOPS/W for 1-bit addition, and 3.1 TOPS/W for IMDP operations at 1.8 V and 60 MHz. The area efficiency of 65.2% is achieved for a 136 × 32 array of proposed IMC macro architecture. Further, the proposed IMC macro is also tested for accelerating the IMDP operation of neural networks by importing linearity variation analysis in Tensorflow for image classification on MNIST and CIFAR datasets. According to Monte-Carlo simulations, the IMDP operation has a standard deviation of 0.07 percent in accumulation, equating to a classification accuracy of 97.02% on the MNIST dataset and 88.39% on the CIFAR dataset.

一种用于人工智能边缘处理器的高效10T SRAM内存计算宏
内存计算(IMC)正作为一种新的范式出现,以解决数据密集型应用中的冯·诺依曼瓶颈(VNB)问题。本文提出了一种基于10T SRAM的节能IMC宏架构,用于执行逻辑、算术和内存点积(IMDP)操作。与9T SRAM相比,所提出的10T SRAM的平均写入裕度和读取裕度分别提高了40%和2.5%。与9T SRAM相比,所提出的10T SRAM的写入能量和漏功率分别降低了89%和83.8%,读取能量近似相似。此外,在180nm SCL技术中实现了一个基于10T SRAM的4Kb SRAM阵列,以分析所提出的IMC宏架构的操作和性能。所提出的IMC架构在1.8V和60MHz下实现了1位逻辑5.3TOPS/W、1位加法4.1TOPS/W和IMDP操作3.1TOPS/W的能效。对于所提出的IMC宏架构的136×32阵列,面积效率达到65.2%。此外,通过在MNIST和CIFAR数据集上引入Tensorflow中的线性变化分析进行图像分类,还测试了所提出的IMC宏以加速神经网络的IMDP操作。根据蒙特卡洛模拟,IMDP操作的累积标准偏差为0.07%,相当于MNIST数据集和CIFAR数据集的分类准确率分别为97.02%和88.39%。
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