SoC FPAAs在新兴超低功耗机器学习中的潜力

IF 1.6 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
J. Hasler
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引用次数: 4

摘要

大规模现场可编程模拟阵列(FPAA)有潜力以极低的能量需求处理机器推理和学习应用,甚至在基于云的系统中,也有可能减轻这些过程的高成本。FPAA设备支持嵌入式机器学习,这是一种物理混合信号计算形式,可以在低功耗嵌入式平台(特别是边缘平台)上实现机器学习和推理。本讨论回顾了大规模现场可编程模拟阵列(FPAA)的当前功能,并考虑了这些SoC FPAA器件的未来潜力,包括使FPAA器件类似于FPGA器件的普遍使用的问题。今天的FPAA设备包括集成的模拟和数字结构,以及专门的处理器和基础设施,成为混合信号开发和模拟计算的平台。我们解决并表明,下一代FPAA可以处理当前和未来大型现场应用所需的10,000-10,000,000,000 PMAC的所需负载,其能量水平比当前技术预期的低几个数量级,从而激发了开发这些新一代FPAA设备的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Potential of SoC FPAAs for Emerging Ultra-Low-Power Machine Learning
Large-scale field-programmable analog arrays (FPAA) have the potential to handle machine inference and learning applications with significantly low energy requirements, potentially alleviating the high cost of these processes today, even in cloud-based systems. FPAA devices enable embedded machine learning, one form of physical mixed-signal computing, enabling machine learning and inference on low-power embedded platforms, particularly edge platforms. This discussion reviews the current capabilities of large-scale field-programmable analog arrays (FPAA), as well as considering the future potential of these SoC FPAA devices, including questions that enable ubiquitous use of FPAA devices similar to FPGA devices. Today’s FPAA devices include integrated analog and digital fabric, as well as specialized processors and infrastructure, becoming a platform of mixed-signal development and analog-enabled computing. We address and show that next-generation FPAAs can handle the required load of 10,000–10,000,000,000 PMAC, required for present and future large fielded applications, at orders of magnitude of lower energy levels than those expected by current technology, motivating the need to develop these new generations of FPAA devices.
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来源期刊
Journal of Low Power Electronics and Applications
Journal of Low Power Electronics and Applications Engineering-Electrical and Electronic Engineering
CiteScore
3.60
自引率
14.30%
发文量
57
审稿时长
11 weeks
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