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Self-Adaptive Data Processing to Improve SLOs for Dynamic IoT Workloads

机译:自适应数据处理,以改进动态物联网工作负载的SLOS

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Internet of Things (IoT) covers scenarios of cyber-physical interaction of smart devices with humans and the environment and, such as applications in smart city, smart manufacturing, predictive maintenance, and smart home. Traditional scenarios are quite static in the sense that the amount of supported end nodes, as well as the frequency and volume of observations transmitted, does not change much over time. The paper addresses the challenge of adapting the capacity of the data processing part of IoT pipeline in response to dynamic workloads for centralized IoT scenarios where the quality of user experience matters, e.g., interactivity and media streaming as well as the predictive maintenance for multiple moving vehicles, centralized analytics for wearable devices and smartphones. The self-adaptation mechanism for data processing IoT infrastructure deployed in the cloud is horizontal autoscaling. In this paper we propose augmentations to the computation schemes of data processing component's desired replicas count from the previous work; these augmentations aim to repurpose original sets of metrics to tackle the task of SLO violations minimization for dynamic workloads instead of minimizing the cost of deployment in terms of instance seconds. The cornerstone proposed augmentation that underpins all the other ones is the adaptation of the desired replicas computation scheme to each scaling direction (scale-in and scale-out) separately. All the proposed augmentations were implemented in the standalone self-adaptive agent acting alongside Kubernetes' HPA such that limitations of timely acquisition of the monitoring data for scaling are mitigated. Evaluation and comparison with the previous work show improvement in service level achieved, e.g., latency SLO violations were reduced from 2.87% to 1.70% in case of the forecasted message queue length-based replicas count computation used both for scale-in and scale-out, but at the same time higher cost of the scaled data processor deployment is observed.
机译:事物互联网(物联网)涵盖了智能设备与人类和环境的网络物理交互的场景,以及智能城市,智能制造,预测维护和智能家居的应用。传统的情景在受到支持的结束节点的数量以及传输的观测频率和观测的频率和频率的情况下是非常静态的。本文讨论了响应于集中式IOT场景的动态工作负载来调整物流工作负载的数据处理部分的数据处理部分的容量,其中用户经历的质量事项,例如交互和媒体流以及多个移动车辆的预测性维护,可穿戴设备和智能手机的集中分析。云中部署的数据处理IOT基础结构的自适应机制是水平自动播放。在本文中,我们提出了从上一个工作的数据处理组件所需的副本计数的计算方案的增强;这些增强旨在能够重新定位原始度量标准集,以解决动态工作负载最小化SLO违规的任务,而不是在实例秒表中最小化部署成本。基石建议的增强符合其它其他的基座是分别地将所需的副本计算方案(分级和缩放)的适应。所有拟议的增强都在独立的自适应代理人中实施了Kubernetes的HPA,因此减轻了及时收购监测数据进行缩放的限制。与以前的工作的评估和比较显示实现的服务水平,例如,在基于消息队列的基于消息队列长度的副本计算的情况下,延迟SLO违规的延迟违规减少到1.70%。 ,但同时观察到缩放数据处理器部署的更高成本。

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