A Survey on Edge Intelligence and Lightweight Machine Learning Support for Future Applications and Services

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Journal of Data and Information Quality Pub Date : 2023-01-25 DOI:10.1145/3581759
Kyle Hoffpauir, Jacob Simmons, Nikolas Schmidt, Rachitha Pittala, Isaac Briggs, Shanmukha Makani, Y. Jararweh
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Abstract

As the number of devices connected to the Internet has grown larger, so too has the intensity of the tasks that these devices need to perform. Modern networks are more frequently working to perform computationally intensive tasks on low-power devices and low-end hardware. Current architectures and platforms tend towards centralized and resource-rich cloud computing approaches to address these deficits. However, edge computing presents a much more viable and flexible alternative. Edge computing refers to a distributed and decentralized network architecture in which demanding tasks such as image recognition, smart city services, and high-intensity data processing tasks can be distributed over a number of integrated network devices. In this article, we provide a comprehensive survey for emerging edge intelligence applications, lightweight machine learning algorithms, and their support for future applications and services. We start by analyzing the rise of cloud computing, discuss its weak points, and identify situations in which edge computing provides advantages over traditional cloud computing architectures. We then divulge details of the survey: the first section identifies opportunities and domains for edge computing growth, the second identifies algorithms and approaches that can be used to enhance edge intelligence implementations, and the third specifically analyzes situations in which edge intelligence can be enhanced using any of the aforementioned algorithms or approaches. In this third section, lightweight machine learning approaches are detailed. A more in-depth analysis and discussion of future developments follows. The primary discourse of this article is in service of an effort to ensure that appropriate approaches are applied adequately to artificial intelligence implementations in edge systems, mainly, the lightweight machine learning approaches.
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面向未来应用和服务的边缘智能和轻量级机器学习支持调查
随着连接到互联网的设备数量越来越多,这些设备需要执行的任务的强度也越来越大。现代网络更频繁地在低功耗设备和低端硬件上执行计算密集型任务。当前的架构和平台倾向于采用集中式和资源丰富的云计算方法来解决这些缺陷。然而,边缘计算提供了一个更加可行和灵活的替代方案。边缘计算是指一种分布式、去中心化的网络架构,将图像识别、智慧城市服务、高强度数据处理等要求较高的任务分布在多个集成的网络设备上。在本文中,我们对新兴的边缘智能应用、轻量级机器学习算法及其对未来应用和服务的支持进行了全面的调查。我们首先分析云计算的兴起,讨论其弱点,并确定边缘计算比传统云计算架构提供优势的情况。然后,我们透露了调查的细节:第一部分确定了边缘计算增长的机会和领域,第二部分确定了可用于增强边缘智能实现的算法和方法,第三部分具体分析了可以使用上述任何算法或方法增强边缘智能的情况。在第三部分中,详细介绍了轻量级机器学习方法。接下来将对未来的发展进行更深入的分析和讨论。本文的主要论述是为了确保适当的方法充分应用于边缘系统中的人工智能实现,主要是轻量级机器学习方法。
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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