计算机科学
静态随机存取存储器
边缘计算
边缘设备
云计算
GSM演进的增强数据速率
计算机体系结构
高效能源利用
人工智能应用
带宽(计算)
硬件加速
现场可编程门阵列
计算机硬件
嵌入式系统
计算机工程
人工智能
操作系统
电气工程
工程类
计算机网络
作者
Yu-Der Chih,Po-Hao Lee,Hidehiro Fujiwara,Yi-Chun Shih,Chia-Fu Lee,Rawan Naous,Yulin Chen,Chieh-Pu Lo,C.W. Lu,H. Mori,Wei-Chang Zhao,Dar Sun,Mahmut E. Sinangil,Yen-Huei Chen,Tan‐Li Chou,K. Akarvardar,Hung-Jen Liao,Yih Wang,Meng‐Fan Chang,Tsung-Yung Jonathan Chang
标识
DOI:10.1109/isscc42613.2021.9365766
摘要
From the cloud to edge devices, artificial intelligence (AI) and machine learning (ML) are widely used in many cognitive tasks, such as image classification and speech recognition. In recent years, research on hardware accelerators for AI edge devices has received more attention, mainly due to the advantages of AI at the edge: including privacy, low latency, and more reliable and effective use of network bandwidth. However, traditional computing architectures (such as CPUs, GPUs, FPGAs, and even existing AI accelerator ASICs) cannot meet the future needs of energy-constrained AI edge applications. This is because ML computing is data-centric, most of the energy in these architectures is consumed by memory accesses. In order to improve energy efficiency, both academia and industry are exploring a new computing architecture, namely compute in memory (CIM). CIM research is focused on a more analog approach with high-energy efficiency; however, lack of accuracy, due to a low SNR, is the main disadvantage; therefore, an analog approach may not be suitable for some applications that require high accuracy.
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