基于边缘计算的数据流分析多目标强化学习

A. Veith, Felipe Rodrigo de Souza, M. Assunção, L. Lefèvre, J. Anjos
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引用次数: 12

摘要

通过分布式流处理(DSP)及时处理海量数据的需求越来越大。DSP应用程序通常结构为有向图,其顶点是在传入数据上执行转换的算子,边缘表示算子之间的数据流。为了探索几乎无限的资源,DSP应用程序传统上部署在云上。边缘计算已经成为执行部分DSP应用程序的合适范例,通过从云中卸载某些操作并将其放置在数据生成的位置附近,从而最大限度地减少处理数据事件所需的总时间(即端到端延迟)。操作员重新配置包括通过将操作员重新分配到给定目标性能指标的不同设备来改变初始位置。在这项工作中,我们将操作员重新配置建模为一个强化学习(RL)问题,并定义了一个多目标奖励,考虑了操作员重新配置、基础设施和应用程序改进的指标。实验结果表明,仅最小化端到端处理延迟的重构算法可以对广域网流量和通信成本产生重大影响。结果还表明,当重新配置操作员时,强化学习算法比最先进的方法提供的初始放置性能提高了50%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Objective Reinforcement Learning for Reconfiguring Data Stream Analytics on Edge Computing
There is increasing demand for handling massive amounts of data in a timely manner via Distributed Stream Processing (DSP). A DSP application is often structured as a directed graph whose vertices are operators that perform transformations over the incoming data and edges representing the data streams between operators. DSP applications are traditionally deployed on the Cloud in order to explore the virtually unlimited number of resources. Edge computing has emerged as a suitable paradigm for executing parts of DSP applications by offloading certain operators from the Cloud and placing them close to where the data is generated, hence minimising the overall time required to process data events (i.e., the end-to-end latency). The operator reconfiguration consists of changing the initial placement by reassigning operators to different devices given target performance metrics. In this work, we model the operator reconfiguration as a Reinforcement Learning (RL) problem and define a multi-objective reward considering metrics regarding operator reconfiguration, and infrastructure and application improvement. Experimental results show that reconfiguration algorithms that minimise only end-to-end processing latency can have a substantial impact on WAN traffic and communication cost. The results also demonstrate that when reconfiguring operators, RL algorithms improve by over 50% the performance of the initial placement provided by state-of-the-art approaches.
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