神经形态工程学
计算机科学
计算机硬件
炸薯条
高效能源利用
至强融核
电阻随机存取存储器
CMOS芯片
面子(社会学概念)
能源消耗
计算机体系结构
嵌入式系统
人工神经网络
人工智能
并行计算
电气工程
电信
光电子学
材料科学
工程类
社会学
电压
社会科学
作者
Peng Yao,Huaqiang Wu,Bin Gao,Sukru Burc Eryilmaz,Xueyao Huang,Wenqiang Zhang,Qingtian Zhang,Ning Deng,Luping Shi,H.-S. Philip Wong,He Qian
摘要
Abstract Conventional hardware platforms consume huge amount of energy for cognitive learning due to the data movement between the processor and the off-chip memory. Brain-inspired device technologies using analogue weight storage allow to complete cognitive tasks more efficiently. Here we present an analogue non-volatile resistive memory (an electronic synapse) with foundry friendly materials. The device shows bidirectional continuous weight modulation behaviour. Grey-scale face classification is experimentally demonstrated using an integrated 1024-cell array with parallel online training. The energy consumption within the analogue synapses for each iteration is 1,000 × (20 ×) lower compared to an implementation using Intel Xeon Phi processor with off-chip memory (with hypothetical on-chip digital resistive random access memory). The accuracy on test sets is close to the result using a central processing unit. These experimental results consolidate the feasibility of analogue synaptic array and pave the way toward building an energy efficient and large-scale neuromorphic system.
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