Edge AI:一项调查

Raghubir Singh , Sukhpal Singh Gill
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引用次数: 29

摘要

边缘人工智能(AI)是人工智能在现实世界设备中的应用。边缘人工智能是指在网络边缘的用户附近进行人工智能计算的实践,而不是像云服务提供商的数据中心那样的集中位置。随着人工智能效率的最新创新、物联网(IoT)设备的普及以及边缘计算的兴起,边缘人工智能的潜力现在已经被释放出来。本研究对与边缘计算或边缘人工智能相关的人工智能方法和功能进行了全面分析。此外,对边缘计算及其范式进行了详细的调查,包括向边缘人工智能的过渡,以探索为实现边缘计算而提出的每种变体的背景。此外,我们讨论了在边缘设备上部署人工智能算法和模型的边缘人工智能方法,这些设备通常是位于网络边缘的资源受限设备。我们还介绍了各种现代物联网应用中使用的技术,包括自动驾驶汽车、智能家居、工业自动化、医疗保健和监控。此外,还讨论了利用针对资源受限环境优化的机器学习算法。最后,对边缘计算和边缘人工智能领域的重要开放挑战和潜在研究方向进行了识别和研究。我们希望这篇文章将成为未来蓝图的共同目标,将团结重要的利益相关者,并促进加速边缘人工智能领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Edge AI: A survey

Edge AI: A survey

Artificial Intelligence (AI) at the edge is the utilization of AI in real-world devices. Edge AI refers to the practice of doing AI computations near the users at the network's edge, instead of centralised location like a cloud service provider's data centre. With the latest innovations in AI efficiency, the proliferation of Internet of Things (IoT) devices, and the rise of edge computing, the potential of edge AI has now been unlocked. This study provides a thorough analysis of AI approaches and capabilities as they pertain to edge computing, or Edge AI. Further, a detailed survey of edge computing and its paradigms including transition to Edge AI is presented to explore the background of each variant proposed for implementing Edge Computing. Furthermore, we discussed the Edge AI approach to deploying AI algorithms and models on edge devices, which are typically resource-constrained devices located at the edge of the network. We also presented the technology used in various modern IoT applications, including autonomous vehicles, smart homes, industrial automation, healthcare, and surveillance. Moreover, the discussion of leveraging machine learning algorithms optimized for resource-constrained environments is presented. Finally, important open challenges and potential research directions in the field of edge computing and edge AI have been identified and investigated. We hope that this article will serve as a common goal for a future blueprint that will unite important stakeholders and facilitates to accelerate development in the field of Edge AI.

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CiteScore
13.80
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