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An overview of next-generation architectures for machine learning: Roadmap, opportunities and challenges in the IoT era

机译:下一代机器学习架构概述:物联网时代的路线图,机遇与挑战

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The number of connected Internet of Things (IoT) devices are expected to reach over 20 billion by 2020. These range from basic sensor nodes that log and report the data to the ones that are capable of processing the incoming information and taking an action accordingly. Machine learning, and in particular deep learning, is the de facto processing paradigm for intelligently processing these immense volumes of data. However, the resource inhibited environment of IoT devices, owing to their limited energy budget and low compute capabilities, render them a challenging platform for deployment of desired data analytics. This paper provides an overview of the current and emerging trends in designing highly efficient, reliable, secure and scalable machine learning architectures for such devices. The paper highlights the focal challenges and obstacles being faced by the community in achieving its desired goals. The paper further presents a roadmap that can help in addressing the highlighted challenges and thereby designing scalable, high-performance, and energy efficient architectures for performing machine learning on the edge.
机译:到2020年,物联网(IoT)设备的数量预计将超过200亿。范围从记录和报告数据的基本传感器节点到能够处理传入信息并采取相应措施的传感器节点。机器学习,尤其是深度学习,是智能处理这些海量数据的事实上的处理范例。但是,由于物联网设备的能源预算有限和计算能力较低,因此资源受限的环境使它们成为部署所需数据分析的具有挑战性的平台。本文概述了为此类设备设计高效,可靠,安全和可扩展的机器学习体系结构的当前和新兴趋势。本文强调了社区在实现其预期目标方面面临的主要挑战和障碍。本文进一步提出了路线图,可以帮助解决突出的挑战,从而设计可扩展的,高性能和高能效的体系结构,以在边缘执行机器学习。

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