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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >On-Edge Multi-Task Transfer Learning: Model and Practice With Data-Driven Task Allocation
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On-Edge Multi-Task Transfer Learning: Model and Practice With Data-Driven Task Allocation

机译:在边缘多任务传输学习:使用数据驱动任务分配模型和实践

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摘要

On edge devices, data scarcity occurs as a common problem where transfer learning serves as a widely-suggested remedy. Nevertheless, transfer learning imposes heavy computation burden to the resource-constrained edge devices. Existing task allocation works usually assume all submitted tasks are equally important, leading to inefficient resource allocation at a task level when directly applied in Multi-task Transfer Learning (MTL). To address these issues, we first reveal that it is crucial to measure the impact of tasks on overall decision performance improvement and quantify task importance. We then show that task allocation with task importance for MTL (TATIM) is a variant of NP-complete Knapsack problem, where the complicated computation to solve this problem needs to be conducted repeatedly under varying contexts. To solve TATIM with high computational efficiency, we propose a Data-driven Cooperative Task Allocation (DCTA) approach. Finally, we evaluate the performance of DCTA by not only a trace-driven simulation, but also a new comprehensive real-world AIOps case study which bridges model and practice via a new architecture and main components design within AIOps system. Extensive experiments show that our DCTA reduces 3.24 times of processing time, and saves 48.4 percent energy consumption compared with the state-of-the-art when solving TATIM.
机译:在边缘设备上,数据稀缺作为传输学习作为广泛建议的补救措施的常见问题发生。然而,转移学习对资源受限的边缘设备施加了沉重的计算负担。现有任务分配工作通常假设所有提交的任务都同样重要,导致在多任务传输学习(MTL)中的任务级别的资源级别效率低下。为了解决这些问题,我们首先揭示衡量任务对整体决策绩效改进和量化的影响至关重要<斜体XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>任务重要性。然后,我们显示任务分配与MTL(TATIM)的任务重要性是NP完整背包问题的变体,其中要解决该问题的复杂计算需要在不同的上下文下重复进行。要以高计算效率解决TATIM,我们提出了一种数据驱动的协作任务分配(DCTA)方法。最后,我们不仅通过追踪追踪模拟评估DCTA的性能,也是一种新的综合现实世界Aiops案例研究,它通过AIOPS系统内的新架构和主要组件设计桥接模型和实践。广泛的实验表明,我们的DCTA减少了3.24倍的处理时间,并在解决塔蒂时节省了48.4%的能耗。

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  • 作者单位

    National Engineering Research Center for Big Data Technology and System Key Laboratory of Services Computing Technology and System Ministry of Education School of Computer Science and Technology Huazhong University of Science and Technology Wuhan Hubei China;

    Edge Cloud Innovation Lab Technical Innovation Department Cloud BU Huawei Technologies Co. Ltd. Shenzhen China;

    Department of Computing Hong Kong Polytechnic University Kowloon Hong Kong;

    Department of Computing Hong Kong Polytechnic University Kowloon Hong Kong;

    National Engineering Research Center for Big Data Technology and System Key Laboratory of Services Computing Technology and System Ministry of Education School of Computer Science and Technology Huazhong University of Science and Technology Wuhan Hubei China;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    Task analysis; Resource management; Image edge detection; Data models; Machine learning; Performance evaluation; Computational modeling;

    机译:任务分析;资源管理;图像边缘检测;数据模型;机器学习;性能评估;计算建模;

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