Scission: Performance-driven and Context-aware Cloud-Edge Distribution of Deep Neural Networks

Luke Lockhart, P. Harvey, Pierre Imai, P. Willis, B. Varghese
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引用次数: 19

Abstract

Partitioning and distributing deep neural networks (DNNs) across end-devices, edge resources and the cloud has a potential twofold advantage: preserving privacy of the input data, and reducing the ingress bandwidth demand beyond the edge. However, for a given DNN, identifying the optimal partition configuration for distributing the DNN that maximizes performance is a significant challenge. This is because the combination of potential target hardware resources that maximizes performance and the sequence of layers of the DNN that should be distributed across the target resources needs to be determined, while accounting for user-defined objectives/constraints for partitioning. This paper presents Scission, a tool for automated benchmarking of DNNs on a given set of target device, edge and cloud resources for determining optimal partitions that maximize DNN performance. The decision-making approach is context-aware by capitalizing on hardware capabilities of the target resources, their locality, the characteristics of DNN layers, and the network condition. Experimental studies are carried out on 18 DNNs. The decisions made by Scission cannot be manually made by a human given the complexity and the number of dimensions affecting the search space. The benchmarking overheads of Scission allow for responding to operational changes periodically rather than in real-time. Scission is available for public download 1.
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深度神经网络的性能驱动和上下文感知云边缘分布
跨终端设备、边缘资源和云划分和分布深度神经网络(dnn)具有潜在的双重优势:保护输入数据的隐私,并减少边缘之外的入口带宽需求。然而,对于给定的DNN,确定分配DNN的最佳分区配置以使性能最大化是一个重大挑战。这是因为需要确定最大化性能的潜在目标硬件资源的组合以及应该分布在目标资源上的DNN层的顺序,同时考虑到用户定义的分区目标/约束。本文介绍了scision,这是一个在给定的目标设备、边缘和云资源集上自动对DNN进行基准测试的工具,用于确定最大化DNN性能的最佳分区。决策方法是上下文感知的,通过利用目标资源的硬件能力、它们的位置、DNN层的特征和网络条件。对18个深度神经网络进行了实验研究。考虑到影响搜索空间的维度的复杂性和数量,由scision做出的决策不能由人工手动做出。scision的基准测试开销允许定期响应操作更改,而不是实时响应。scision可供公众下载1。
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