横杆开关
巨量平行
计算机科学
可扩展性
多路复用
并行计算
并行处理
计算机硬件
作者
Cong Wang,Shi-Jun Liang,Chen‐yu Wang,Zai-Zheng Yang,Yingmeng Ge,Pan Chen,Xi Shen,WEI WEI,Yichen Zhao,Zaichen Zhang,Bin Cheng,Chuan Zhang,Feng Miao,Cong Wang,Shi-Jun Liang,Chen‐yu Wang,Zai-Zheng Yang,Yingmeng Ge,Pan Chen,Xi Shen
标识
DOI:10.1038/s41565-021-00943-y
摘要
The growth of connected intelligent devices in the Internet of Things has created a pressing need for real-time processing and understanding of large volumes of analogue data. The difficulty in boosting the computing speed renders digital computing unable to meet the demand for processing analogue information that is intrinsically continuous in magnitude and time. By utilizing a continuous data representation in a nanoscale crossbar array, parallel computing can be implemented for the direct processing of analogue information in real time. Here, we propose a scalable massively parallel computing scheme by exploiting a continuous-time data representation and frequency multiplexing in a nanoscale crossbar array. This computing scheme enables the parallel reading of stored data and the one-shot operation of matrix–matrix multiplications in the crossbar array. Furthermore, we achieve the one-shot recognition of 16 letter images based on two physically interconnected crossbar arrays and demonstrate that the processing and modulation of analogue information can be simultaneously performed in a memristive crossbar array. Continuous-time data representation and frequency multiplexing enable the implementation of a scalable massively parallel computing scheme in a nanoscale crossbar array for applications in intelligent edge devices.
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