神经形态工程学
计算机科学
冯·诺依曼建筑
随机存取
瓶颈
内存处理
非常规计算
非易失性存储器
计算机体系结构
半导体存储器
布尔电路
计算
并行计算
理论计算机科学
计算机工程
逻辑门
嵌入式系统
分布式计算
计算机硬件
人工神经网络
人工智能
算法
搜索引擎
程序设计语言
情报检索
按示例查询
Web搜索查询
作者
Qiaofeng Ou,Bang-Shu Xiong,Lei Yu,Jing Wen,Lei Wang,Yi Tong
出处
期刊:Materials
[MDPI AG]
日期:2020-08-10
卷期号:13 (16): 3532-3532
被引量:41
摘要
Recent progress in the development of artificial intelligence technologies, aided by deep learning algorithms, has led to an unprecedented revolution in neuromorphic circuits, bringing us ever closer to brain-like computers. However, the vast majority of advanced algorithms still have to run on conventional computers. Thus, their capacities are limited by what is known as the von-Neumann bottleneck, where the central processing unit for data computation and the main memory for data storage are separated. Emerging forms of non-volatile random access memory, such as ferroelectric random access memory, phase-change random access memory, magnetic random access memory, and resistive random access memory, are widely considered to offer the best prospect of circumventing the von-Neumann bottleneck. This is due to their ability to merge storage and computational operations, such as Boolean logic. This paper reviews the most common kinds of non-volatile random access memory and their physical principles, together with their relative pros and cons when compared with conventional CMOS-based circuits (Complementary Metal Oxide Semiconductor). Their potential application to Boolean logic computation is then considered in terms of their working mechanism, circuit design and performance metrics. The paper concludes by envisaging the prospects offered by non-volatile devices for future brain-inspired and neuromorphic computation.
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