A Cross-Layer Optimization Framework for Distributed Computing in IoT Networks

Bodong Shang, Shiya Liu, Sidi Lu, Y. Yi, Weisong Shi, Lingjia Liu
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引用次数: 3

Abstract

In Internet-of-Thing (IoT) networks, enormous low-power IoT devices execute latency-sensitive yet computationintensive machine learning tasks. However, the energy is usually scarce for IoT devices, especially for some without battery and relying on solar power or other renewables forms. In this paper, we introduce a cross-layer optimization framework for distributed computing among low-power IoT devices. Specifically, a programming layer design for distributed IoT networks is presented by addressing the problems of application partition, task scheduling, and communication overhead mitigation. Furthermore, the associated federated learning and local differential privacy schemes are developed in the communication layer to enable distributed machine learning with privacy preservation. In addition, we illustrate a three-dimensional network architecture with various network components to facilitate efficient and reliable information exchange among IoT devices. Moreover, a model quantization design for IoT devices is illustrated to reduce the cost of information exchange. Finally, a parallel and scalable neuromorphic computing system for IoT devices is established to achieve energy-efficient distributed computing platforms in the hardware layer. Based on the introduced cross-layer optimization framework, IoT devices can execute their machine learning tasks in an energy-efficient way while guaranteeing data privacy and reducing communication costs.
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面向物联网分布式计算的跨层优化框架
在物联网(IoT)网络中,巨大的低功耗物联网设备执行延迟敏感但计算密集型的机器学习任务。然而,对于物联网设备来说,能源通常是稀缺的,尤其是那些没有电池、依赖太阳能或其他可再生能源的设备。在本文中,我们引入了一个跨层优化框架,用于低功耗物联网设备之间的分布式计算。具体而言,通过解决应用程序分区、任务调度和通信开销缓解等问题,提出了分布式物联网网络的编程层设计。此外,在通信层开发了相关的联邦学习和本地差分隐私方案,以实现具有隐私保护的分布式机器学习。此外,我们展示了一个具有各种网络组件的三维网络架构,以促进物联网设备之间高效可靠的信息交换。此外,为了降低信息交换的成本,提出了一种物联网设备的模型量化设计。最后,建立了面向物联网设备的并行可扩展神经形态计算系统,在硬件层实现高能效的分布式计算平台。基于引入的跨层优化框架,物联网设备可以以节能的方式执行机器学习任务,同时保证数据隐私并降低通信成本。
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