Hierarchical Auto-Scaling Policies for Data Stream Processing on Heterogeneous Resources

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Gabriele Russo Russo, V. Cardellini, F. Lo Presti
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引用次数: 0

Abstract

Data Stream Processing (DSP) applications analyze data flows in near real-time by means of operators, which process and transform incoming data. Operators handle high data rates running parallel replicas across multiple processors and hosts. To guarantee consistent performance without wasting resources in face of variable workloads, auto-scaling techniques have been studied to adapt operator parallelism at run-time. However, most the effort has been spent under the assumption of homogeneous computing infrastructures, neglecting the complexity of modern environments. We consider the problem of deciding both how many operator replicas should be executed and which types of computing nodes should be acquired. We devise heterogeneity-aware policies by means of a two-layered hierarchy of controllers. While application-level components steer the adaptation process for whole applications, aiming to guarantee user-specified requirements, lower-layer components control auto-scaling of single operators. We tackle the fundamental challenge of performance and workload uncertainty, exploiting Bayesian optimization and reinforcement learning to devise policies. The evaluation shows that our approach is able to meet users’ requirements in terms of response time and adaptation overhead, while minimizing the cost due to resource usage, outperforming state-of-the-art baselines. We also demonstrate how partial model information is exploited to reduce training time for learning-based controllers.
异构资源数据流处理的分层自动伸缩策略
数据流处理(DSP)应用程序通过操作员近乎实时地分析数据流,操作员处理和转换传入数据。运营商处理跨多个处理器和主机运行并行复制副本的高数据速率。为了在面对可变工作负载时保证一致的性能而不浪费资源,已经研究了自动伸缩技术来适应运行时的运算符并行性。然而,大多数工作都是在同质计算基础设施的假设下进行的,忽略了现代环境的复杂性。我们考虑了决定应该执行多少操作员副本以及应该获取哪些类型的计算节点的问题。我们通过控制器的两层层次结构来设计异构感知策略。应用程序级组件指导整个应用程序的自适应过程,旨在保证用户指定的要求,而较低层组件控制单个操作员的自动缩放。我们利用贝叶斯优化和强化学习来制定策略,以应对性能和工作负载不确定性的根本挑战。评估表明,我们的方法能够满足用户在响应时间和适应开销方面的要求,同时最大限度地降低资源使用成本,优于最先进的基线。我们还演示了如何利用部分模型信息来减少基于学习的控制器的训练时间。
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来源期刊
ACM Transactions on Autonomous and Adaptive Systems
ACM Transactions on Autonomous and Adaptive Systems 工程技术-计算机:理论方法
CiteScore
4.80
自引率
7.40%
发文量
9
审稿时长
>12 weeks
期刊介绍: TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community -- and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community - and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. Contributions are expected to be based on sound and innovative theoretical models, algorithms, engineering and programming techniques, infrastructures and systems, or technological and application experiences.
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