{"title":"面向数据分析的具有干扰和异构意识的布局的协调扩展","authors":"Achilleas Tzenetopoulos, Dimosthenis Masouros, Sotirios Xydis, Dimitrios Soudris","doi":"10.1007/s10766-024-00771-2","DOIUrl":null,"url":null,"abstract":"<p>Today, there is an ever-increasing number of workloads pushed and executed on the Cloud. Data center operators and Cloud providers have embraced application co-location and multi-tenancy as first-class system design concerns to effectively serve and manage these huge computational demands. In addition, the continuous advancements in the computers’ hardware technology have made it possible to seamlessly leverage heterogeneous pools of physical machines in data center environments. Even though current modern Cloud schedulers and orchestrators adopt application-aware policies to achieve automation of time-consuming management tasks at scale, e.g., resource provisioning, they still rely on coarse-grained system metrics, such as CPU and/or memory utilization to place incoming applications, thus, not considering (1) interference effects that are provoked by co-located tasks, and (2) the impact on performance caused by the diversity of heterogeneous systems’ characteristics. The lack of such knowledge in existing state-of-the-art orchestration solutions results in their inability to perform efficient allocations, which negatively impacts the overall latency distribution delivered by the infrastructure. In this paper, to alleviate this inefficiency, we present a machine learning (ML) based Cloud orchestration extension that takes into account both resource interference and heterogeneity. The framework adequately schedules data-analytics applications on a pool of heterogeneous resources. We evaluate our proposed solution on different application mixes and co-location scenarios. We show that the proposed framework improves the tail latency of the distribution of the deployed applications by up to 3.6x compared to the state-of-the-art Kubernetes scheduler.</p>","PeriodicalId":14313,"journal":{"name":"International Journal of Parallel Programming","volume":"65 1","pages":""},"PeriodicalIF":0.9000,"publicationDate":"2024-05-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Orchestration Extensions for Interference- and Heterogeneity-Aware Placement for Data-Analytics\",\"authors\":\"Achilleas Tzenetopoulos, Dimosthenis Masouros, Sotirios Xydis, Dimitrios Soudris\",\"doi\":\"10.1007/s10766-024-00771-2\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Today, there is an ever-increasing number of workloads pushed and executed on the Cloud. 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引用次数: 0
摘要
如今,在云上推送和执行的工作负载越来越多。数据中心运营商和云计算提供商已将应用程序共同定位和多租户作为系统设计的首要考虑因素,以便有效地服务和管理这些巨大的计算需求。此外,计算机硬件技术的不断进步使得在数据中心环境中无缝利用异构物理机池成为可能。尽管当前的现代云调度器和协调器采用了应用感知策略,以实现耗时的大规模管理任务(如资源调配)的自动化,但它们仍然依赖于粗粒度的系统指标,如 CPU 和/或内存利用率,来调配传入的应用,因此没有考虑到:(1)共用位置的任务所产生的干扰效应;(2)异构系统特性的多样性对性能的影响。现有的先进协调解决方案缺乏这方面的知识,因此无法进行有效的分配,这对基础设施提供的整体延迟分布产生了负面影响。在本文中,为了缓解这种低效率问题,我们提出了一种基于机器学习(ML)的云协调扩展,它将资源干扰和异构性都考虑在内。该框架能在异构资源池上充分调度数据分析应用。我们在不同的应用组合和共同定位场景中评估了我们提出的解决方案。结果表明,与最先进的 Kubernetes 调度器相比,拟议框架可将已部署应用的尾部延迟提高 3.6 倍。
Orchestration Extensions for Interference- and Heterogeneity-Aware Placement for Data-Analytics
Today, there is an ever-increasing number of workloads pushed and executed on the Cloud. Data center operators and Cloud providers have embraced application co-location and multi-tenancy as first-class system design concerns to effectively serve and manage these huge computational demands. In addition, the continuous advancements in the computers’ hardware technology have made it possible to seamlessly leverage heterogeneous pools of physical machines in data center environments. Even though current modern Cloud schedulers and orchestrators adopt application-aware policies to achieve automation of time-consuming management tasks at scale, e.g., resource provisioning, they still rely on coarse-grained system metrics, such as CPU and/or memory utilization to place incoming applications, thus, not considering (1) interference effects that are provoked by co-located tasks, and (2) the impact on performance caused by the diversity of heterogeneous systems’ characteristics. The lack of such knowledge in existing state-of-the-art orchestration solutions results in their inability to perform efficient allocations, which negatively impacts the overall latency distribution delivered by the infrastructure. In this paper, to alleviate this inefficiency, we present a machine learning (ML) based Cloud orchestration extension that takes into account both resource interference and heterogeneity. The framework adequately schedules data-analytics applications on a pool of heterogeneous resources. We evaluate our proposed solution on different application mixes and co-location scenarios. We show that the proposed framework improves the tail latency of the distribution of the deployed applications by up to 3.6x compared to the state-of-the-art Kubernetes scheduler.
期刊介绍:
International Journal of Parallel Programming is a forum for the publication of peer-reviewed, high-quality original papers in the computer and information sciences, focusing specifically on programming aspects of parallel computing systems. Such systems are characterized by the coexistence over time of multiple coordinated activities. The journal publishes both original research and survey papers. Fields of interest include: linguistic foundations, conceptual frameworks, high-level languages, evaluation methods, implementation techniques, programming support systems, pragmatic considerations, architectural characteristics, software engineering aspects, advances in parallel algorithms, performance studies, and application studies.