三维纳米系统使嵌入式丰富数据计算:特别会议论文

William Hwang, M. Aly, Yash H. Malviya, Mingyu Gao, Tony F. Wu, C. Kozyrakis, H. Wong, S. Mitra
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引用次数: 11

摘要

世界对海量数据计算(海量结构化和非结构化数据被分析)的需求急剧增长。这些应用的计算需求,如深度学习,远远超过了当今系统的能力,特别是对于能量受限的嵌入式系统(例如,电池容量有限的移动系统)。这些需求不太可能仅通过晶体管或存储技术或集成电路(IC)架构的单独改进来满足。变革性纳米系统,利用新兴纳米技术的独特特性来创建新的集成电路架构,需要提供前所未有的功能,性能和能源效率。我们表明,特定领域的3D纳米系统的预计能源效率效益在1000倍的范围内(使用系统级能耗和执行时间的产品量化),而不是今天的特定领域的2D系统与片外DRAM。如此巨大的改进是在嵌入式系统中实现深度学习等新功能的关键。
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3D nanosystems enable embedded abundant-data computing: special session paper
The world's appetite for abundant-data computing, where a massive amount of structured and unstructured data is analyzed, has increased dramatically. The computational demands of these applications, such as deep learning, far exceed the capabilities of today's systems, especially for energy-constrained embedded systems (e.g., mobile systems with limited battery capacity). These demands are unlikely to be met by isolated improvements in transistor or memory technologies, or integrated circuit (IC) architectures alone. Transformative nanosystems, which leverage the unique properties of emerging nanotechnologies to create new IC architectures, are required to deliver unprecedented functionality, performance, and energy efficiency. We show that the projected energy efficiency benefits of domain-specific 3D nanosystems is in the range of 1,000x (quantified using the product of system-level energy consumption and execution time) over today's domain-specific 2D systems with off-chip DRAM. Such a drastic improvement is key to enabling new capabilities such as deep learning in embedded systems.
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