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Device Requirements and Technology-Driven Architecture Optimization for Analog Neurocomputing

机译:模拟神经计算的设备要求和技术驱动的体系结构优化

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Neurocomputers offer a massively parallel computing paradigm by mimicking the human brain. Their efficient use in statistical information processing has been proposed to overcome critical bottlenecks with traditional computing schemes for applications such as image and speech processing, and associative memory. However, large power consumption and high circuit complexity of CMOS-based implementations have precluded adoption of such systems, and have led researchers to explore the use of emerging technologies. Although they provide intriguing properties, previously proposed neurocomputing components based on emerging technologies have not offered a complete and practical solution to efficiently construct an entire system. In this paper we explore the generalized problem of co-optimization of technology and architecture for such systems, and develop a recipe for device requirements and target capabilities. We describe two plausible case study examples, each of which could potentially enable the implementation of an efficient and fully functional analog neurocomputing system.
机译:神经计算机通过模仿人的大脑来提供大规模并行计算范例。已经提出了它们在统计信息处理中的有效使用,以克服传统计算方案在诸如图像和语音处理以及关联存储器等应用中的关键瓶颈。但是,基于CMOS的实现方式的大功耗和高电路复杂性阻碍了此类系统的采用,并导致研究人员探索新兴技术的使用。尽管它们提供了有趣的特性,但是以前基于新兴技术提出的神经计算组件尚未提供有效构建整个系统的完整实用的解决方案。在本文中,我们探讨了针对此类系统的技术和体系结构共同优化的一般问题,并针对设备要求和目标功能制定了配方。我们描述了两个合理的案例研究示例,每个示例都可能潜在地实现有效且功能齐全的模拟神经计算系统。

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