电阻随机存取存储器
材料科学
图层(电子)
计算机科学
CMOS芯片
晶体管
电子工程
光电子学
计算机硬件
嵌入式系统
计算机体系结构
纳米技术
电气工程
电压
工程类
作者
Ran An,Yijun Li,Jianshi Tang,Bin Gao,Yiwei Du,Jian Yao,Yuankun Li,Wen Sun,Han Zhao,Jiaming Li,Qi Qin,Qingtian Zhang,Song Qiu,Qingwen Li,Zhengcao Li,He Qian,Huaqiang Wu
标识
DOI:10.1109/iedm45625.2022.10019473
摘要
Here we present a hybrid computing-in-memory (CIM) architecture, named M3D-CCP, by monolithically 3D integration of Si CMOS logic layer, RRAM-based CIM layer and processing-near-memory (PNM) layer with CNT/IGZO-based complementary field-effect transistor (CFET). The Si-CMOS layer was fabricated using a standard 130 nm process and served as control logic. The CIM layer consisted of ITIR arrays with analog resistive random-access memory (RRAM) for matrix-vector multiplication (MVM) operations in neural networks. The CFET-based PNM layer was fabricated with carbon nanotube FET (CNT-FET) and InGaZn$\text{O}_{\text{x}}$ FET (IGZO-FET) for caching and processing data between layers of neural networks. Both the CIM and PNM layers were fabricated using a low-temperature ($\leq$300 °c) backend-of-the-line (BEOL) process. The structural integrity and proper function of each layer were verified. Furthermore, an image super-resolution task was implemented using the fabricated M3D-CCP chip, achieving GPU-equivalent performance on the DVI2K dataset with $149\times$ lower energy consumption. Our work demonstrates the feasibility and great potential of such hybrid CIM architecture for data-abundant applications such as artificial intelligence (AI) and high-performance computing (HPC).
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