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Poster: Configuration Management for Internet Services at the Edge: A Data-Driven Approach

机译:海报:边缘上网服务的配置管理:数据驱动方法

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Internet services are increasingly pushed from the remote cloud to the edge sites close to data sources to offer fast response time and low energy footprint. However, software deployed at edge sites must be updated frequently. Performing updates as soon as they are available consumes a large amount of energy. Configuration management tools that install software updates and manage allowed staleness can inflate energy demands, especially when updates interrupt idle periods at the edge site and block processors from entering power-saving modes. Our research studies configuration management policies, their effect on energy footprint and strategies to optimize them. We have observed that policies yielding low energy footprint differ from site to site and over time. We propose a data-driven approach that uses data collected at each edge site to predict an energy-efficient policy and also guards against worst-case performance if data-driven predictions error occurs. We use a novel randomwalk approach to manage data-driven policies that yield a low footprint for a representative trace of updates observed at an edge site. We are setting up 4 edge service benchmarks powered by AI inference to create realistic software update traces.
机译:互联网服务越来越多地从远程云推向靠近数据源的边缘站点,以提供快速响应时间和低能量占地面积。但是,必须经常更新在边站部署的软件。尽快执行更新消耗大量能量。配置管理工具安装软件更新和管理允许的速度可以膨胀能源需求,尤其是在更新边缘站点的中断空闲时段和块处理器进入省电模式时。我们的研究研究了配置管理政策,它们对优化优化的策略影响。我们已经观察到产生低能量足迹的政策与现场和随着时间的推移不同。我们提出了一种数据驱动方法,该方法使用在每个边站点上收集的数据来预测节能策略,并且如果发生数据驱动的预测错误,则会针对最坏情况性能进行防范。我们使用一种新颖的AquaryWalk方法来管理数据驱动的策略,以便在Edge站点观察到的代表性更新的代表性轨迹的低占用策略。我们正在设置由AI推理提供支持的4 Edge服务基准,以创建现实的软件更新迹线。

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