横杆开关
神经形态工程学
计算机科学
可扩展性
记忆电阻器
冯·诺依曼建筑
计算机体系结构
瓶颈
人工神经网络
分布式计算
嵌入式系统
人工智能
电子工程
工程类
操作系统
数据库
电信
作者
Huihan Li,Shaocong Wang,Xumeng Zhang,Wei Wang,Rui Yang,Zhong Sun,Wanxiang Feng,Peng Lin,Zhongrui Wang,Linfeng Sun,Yugui Yao
标识
DOI:10.1002/aisy.202100017
摘要
The emergence of memristors with potential applications in data storage and artificial intelligence has attracted wide attentions. Memristors are assembled in crossbar arrays with data bits encoded by the resistance of individual cells. Despite the proposed high density and excellent scalability, the sneak‐path current causing cross interference impedes their practical applications. Therefore, developing novel architectures to mitigate sneak‐path current and improve efficiency, reliability, and stability may benefit next‐generation storage‐class memory (SCM). Moreover, conventional digital computers face the von‐Neumann bottleneck and the slowdown of transistors’ scaling, imposing a big challenge to hardware artificial intelligence. Memristive crossbar features colocation of memory and processing units, as well as superior scalability, making it a promising candidate for hardware accelerating machine learning and neuromorphic computing. Herein, first, crossbar architecture is introduced. Then, for storage, the origin of sneak‐path current is reviewed and techniques to mitigate this issue from the angle of materials and circuits are discussed. Computing wise, the applications of memristive crossbars in both machine learning and neuromorphic computing are surveyed, focusing on the structure of unit cells, the network topology, and the learning types. Finally, a perspective on future engineering and applications of memristive crossbars is discussed.
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