计算机科学
云计算
光子学
边缘设备
推论
深度学习
GSM演进的增强数据速率
人工智能
带宽(计算)
边缘计算
物理
光电子学
电信
操作系统
作者
Alexander Sludds,Saumil Bandyopadhyay,Zaijun Chen,Zhizhen Zhong,Jared Cochrane,Liane Bernstein,Darius Bunandar,P. Ben Dixon,Scott A. Hamilton,Matthew Streshinsky,Ari Novack,Tom Baehr‐Jones,Michael Hochberg,Manya Ghobadi,Ryan Hamerly,Dirk Englund
出处
期刊:Science
[American Association for the Advancement of Science]
日期:2022-10-20
卷期号:378 (6617): 270-276
被引量:101
标识
DOI:10.1126/science.abq8271
摘要
Advanced machine learning models are currently impossible to run on edge devices such as smart sensors and unmanned aerial vehicles owing to constraints on power, processing, and memory. We introduce an approach to machine learning inference based on delocalized analog processing across networks. In this approach, named Netcast, cloud-based "smart transceivers" stream weight data to edge devices, enabling ultraefficient photonic inference. We demonstrate image recognition at ultralow optical energy of 40 attojoules per multiply (<1 photon per multiply) at 98.8% (93%) classification accuracy. We reproduce this performance in a Boston-area field trial over 86 kilometers of deployed optical fiber, wavelength multiplexed over 3 terahertz of optical bandwidth. Netcast allows milliwatt-class edge devices with minimal memory and processing to compute at teraFLOPS rates reserved for high-power (>100 watts) cloud computers.
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