Bringing AI to edge : from deep learning's perspective
Edge computing and artificial intelligence (AI), especially deep learning for nowadays, are gradually intersecting to build a novel system, called edge intelligence. However, the development of edge intelligence systems encounters some challenges, and one of these challenges is the \textit{comput...
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sg-ntu-dr.10356-1558092022-03-22T05:24:17Z Bringing AI to edge : from deep learning's perspective Liu, Di Kong, Hao Luo, Xiangzhong Liu, Weichen Subramaniam, Ravi School of Computer Science and Engineering HP-NTU Digital Manufacturing Corporate Lab Computer Science - Learning Computer Science - Artificial Intelligence Deep Learning Model Optimization Edge computing and artificial intelligence (AI), especially deep learning for nowadays, are gradually intersecting to build a novel system, called edge intelligence. However, the development of edge intelligence systems encounters some challenges, and one of these challenges is the \textit{computational gap} between computation-intensive deep learning algorithms and less-capable edge systems. Due to the computational gap, many edge intelligence systems cannot meet the expected performance requirements. To bridge the gap, a plethora of deep learning techniques and optimization methods are proposed in the past years: light-weight deep learning models, network compression, and efficient neural architecture search. Although some reviews or surveys have partially covered this large body of literature, we lack a systematic and comprehensive review to discuss all aspects of these deep learning techniques which are critical for edge intelligence implementation. As various and diverse methods which are applicable to edge systems are proposed intensively, a holistic review would enable edge computing engineers and community to know the state-of-the-art deep learning techniques which are instrumental for edge intelligence and to facilitate the development of edge intelligence systems. This paper surveys the representative and latest deep learning techniques that are useful for edge intelligence systems, including hand-crafted models, model compression, hardware-aware neural architecture search and adaptive deep learning models. Finally, based on observations and simple experiments we conducted, we discuss some future directions. Submitted/Accepted version 2022-03-22T05:24:17Z 2022-03-22T05:24:17Z 2022 Journal Article Liu, D., Kong, H., Luo, X., Liu, W. & Subramaniam, R. (2022). Bringing AI to edge : from deep learning's perspective. Neurocomputing, 485, 297-320. https://dx.doi.org/10.1016/j.neucom.2021.04.141 0925-2312 https://hdl.handle.net/10356/155809 10.1016/j.neucom.2021.04.141 2-s2.0-85122959846 485 297 320 en Neurocomputing © 2021 Elsevier B.V.. All rights reserved. This paper was published in Neurocomputing and is made available with permission of Elsevier B.V. application/pdf |
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Computer Science - Learning Computer Science - Artificial Intelligence Deep Learning Model Optimization Liu, Di Kong, Hao Luo, Xiangzhong Liu, Weichen Subramaniam, Ravi Bringing AI to edge : from deep learning's perspective |
description |
Edge computing and artificial intelligence (AI), especially deep learning for
nowadays, are gradually intersecting to build a novel system, called edge
intelligence. However, the development of edge intelligence systems encounters
some challenges, and one of these challenges is the \textit{computational gap}
between computation-intensive deep learning algorithms and less-capable edge
systems. Due to the computational gap, many edge intelligence systems cannot
meet the expected performance requirements. To bridge the gap, a plethora of
deep learning techniques and optimization methods are proposed in the past
years: light-weight deep learning models, network compression, and efficient
neural architecture search. Although some reviews or surveys have partially
covered this large body of literature, we lack a systematic and comprehensive
review to discuss all aspects of these deep learning techniques which are
critical for edge intelligence implementation. As various and diverse methods
which are applicable to edge systems are proposed intensively, a holistic
review would enable edge computing engineers and community to know the
state-of-the-art deep learning techniques which are instrumental for edge
intelligence and to facilitate the development of edge intelligence systems.
This paper surveys the representative and latest deep learning techniques that
are useful for edge intelligence systems, including hand-crafted models, model
compression, hardware-aware neural architecture search and adaptive deep
learning models. Finally, based on observations and simple experiments we
conducted, we discuss some future directions. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Liu, Di Kong, Hao Luo, Xiangzhong Liu, Weichen Subramaniam, Ravi |
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Article |
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Liu, Di Kong, Hao Luo, Xiangzhong Liu, Weichen Subramaniam, Ravi |
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Liu, Di |
title |
Bringing AI to edge : from deep learning's perspective |
title_short |
Bringing AI to edge : from deep learning's perspective |
title_full |
Bringing AI to edge : from deep learning's perspective |
title_fullStr |
Bringing AI to edge : from deep learning's perspective |
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Bringing AI to edge : from deep learning's perspective |
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bringing ai to edge : from deep learning's perspective |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/155809 |
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1728433409619918848 |