走向泛在学习:设备上训练性能的第一个测量

Dongqi Cai, Qipeng Wang, Yuanqiang Liu, Yunxin Liu, Shangguang Wang, Mengwei Xu
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引用次数: 9

摘要

我们正在见证无处不在的学习的出现,每个设备(智能手机、可穿戴设备、物联网等)都可以单独或协作地从环境中学习。这种新模式是通过深度学习技术,或者更具体地说,设备上的培训实现的。考虑到它在机器学习社区的流行,不幸的是,对一个关键问题没有系统的理解:在商用终端设备上训练典型的深度模型需要多少成本?因此,本研究使用最先进的训练库、6部手机和5个经典神经网络对设备上的训练进行了全面的测量。我们的测量报告了训练时间、能耗、内存占用、硬件利用率和热动力学的指标,从而有助于揭示设备上训练性能的完整情况。从测量中得到的观察结果帮助我们找到了几个有希望的未来方向,以有效地实现泛在学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Ubiquitous Learning: A First Measurement of On-Device Training Performance
We are witnessing the emergence of ubiquitous learning, where each device (smartphones, wearables, IoTs, etc) can learn from their environments either alone or collaboratively. Such a new paradigm is enabled by deep learning techniques, or more specifically, on-device training. Given its popularity in the machine learning community, unfortunately, there are no systematic understandings of a critical question: how much cost does it take to train typical deep models on commodity end devices? Therefore, this work performs comprehensive measurements of on-device training with the state-of-the-art training library, 6 mobile phones, and 5 classical neural networks. Our measurements report metrics of training time, energy consumption, memory footprint, hardware utilization, and thermal dynamics, thus help reveal a complete landscape of the on-device training performance. The observations from the measurements help guide us to several promising future directions to efficiently enable ubiquitous learning.
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