负载感知边缘卸载的深度神经网络动态分区

Hongzhou Liu, Wenli Zheng, Li Li, Minyi Guo
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引用次数: 2

摘要

新兴的边缘计算技术通过将延迟敏感和计算密集型的计算任务(如深度神经网络推理)从用户端设备卸载到边缘服务器以快速执行,从而为其提供支持。边缘服务器上日益增加的卸载任务逐渐面临着网络资源和计算资源的竞争。现有的卸载方法通常将深度神经网络划分在数据传输量较小的地方以节省网络资源,但很少考虑边缘服务器上计算资源不足所带来的问题。本文设计了一个深度神经网络卸载系统LoADPart。LoADPart可以动态联合分析边缘服务器的可用网络带宽和计算负载,并采用轻量级算法对深度神经网络分区进行合理决策,最大限度地减少端到端推理延迟。我们为MindSpore实现了LoADPart,这是一个支持边缘人工智能的深度学习框架,并在6个深度神经网络的实验中将其与最先进的解决方案进行了比较。结果表明,在服务器计算负载变化的情况下,LoADPart可将端到端延迟平均降低14.2%,在某些特定情况下可降低32.3%。
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LoADPart: Load-Aware Dynamic Partition of Deep Neural Networks for Edge Offloading
The emerging edge computing technique provides support for the computation tasks that are delay-sensitive and compute-intensive, such as deep neural network inference, by offloading them from a user-end device to an edge server for fast execution. The increasing offloaded tasks on an edge server are gradually facing the contention of both the network and computation resources. The existing offloading approaches often partition the deep neural network at a place where the amount of data transmission is small to save network resource, but rarely consider the problem caused by computation resource shortage on the edge server. In this paper, we design LoADPart, a deep neural network offloading system. LoADPart can dynamically and jointly analyze both the available network bandwidth and the computation load of the edge server, and make proper decisions of deep neural network partition with a light-weighted algorithm, to minimize the end-to-end inference latency. We implement LoADPart for MindSpore, a deep learning framework supporting edge AI, and compare it with state-of-the-art solutions in the experiments on 6 deep neural networks. The results show that under the variation of server computation load, LoADPart can reduce the end-to-end latency by 14.2% on average and up to 32.3% in some specific cases.
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