A Survey of On-Device Machine Learning

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Internet of Things Pub Date : 2021-07-01 DOI:10.1145/3450494
Sauptik Dhar, Junyao Guo, Jiayi Liu, S. Tripathi, Unmesh Kurup, Mohak Shah
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引用次数: 30

Abstract

The predominant paradigm for using machine learning models on a device is to train a model in the cloud and perform inference using the trained model on the device. However, with increasing numbers of smart devices and improved hardware, there is interest in performing model training on the device. Given this surge in interest, a comprehensive survey of the field from a device-agnostic perspective sets the stage for both understanding the state of the art and for identifying open challenges and future avenues of research. However, on-device learning is an expansive field with connections to a large number of related topics in AI and machine learning (including online learning, model adaptation, one/few-shot learning, etc.). Hence, covering such a large number of topics in a single survey is impractical. This survey finds a middle ground by reformulating the problem of on-device learning as resource constrained learning where the resources are compute and memory. This reformulation allows tools, techniques, and algorithms from a wide variety of research areas to be compared equitably. In addition to summarizing the state of the art, the survey also identifies a number of challenges and next steps for both the algorithmic and theoretical aspects of on-device learning.
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设备上机器学习的调查
在设备上使用机器学习模型的主要范例是在云中训练模型,并使用设备上的训练模型执行推理。然而,随着智能设备数量的增加和硬件的改进,人们对在设备上进行模型训练很感兴趣。鉴于这种兴趣激增,从设备不可知论的角度对该领域进行全面调查,为理解技术现状、确定开放的挑战和未来的研究途径奠定了基础。然而,设备上学习是一个广阔的领域,与人工智能和机器学习中的大量相关主题(包括在线学习、模型自适应、一次/几次学习等)有联系。因此,在一次调查中涵盖如此多的主题是不切实际的。这项调查通过将设备上学习的问题重新表述为资源约束学习,其中资源是计算和内存,从而找到了一个中间立场。这种重新表述允许来自各种研究领域的工具、技术和算法进行公平比较。除了总结目前的现状外,该调查还指出了设备上学习在算法和理论方面面临的一些挑战和下一步。
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CiteScore
5.20
自引率
3.70%
发文量
0
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