首页> 外文期刊>Journal of Cloud Computing: Advances, Systems and Applications >DRMaestro: orchestrating disaggregated resources on virtualized data-centers
【24h】

DRMaestro: orchestrating disaggregated resources on virtualized data-centers

机译:DRMAESTRO:在虚拟化数据中心上策划分类资源

获取原文
           

摘要

Modern applications demand resources at an unprecedented level. In this sense, data-centers are required to scale efficiently to cope with such demand. Resource disaggregation has the potential to improve resource-efficiency by allowing the deployment of workloads in more flexible ways. Therefore, the industry is shifting towards disaggregated architectures, which enables new ways to structure hardware resources in data centers. However, determining the best performing resource provisioning is a complicated task. The optimality of resource allocation in a disaggregated data center depends on its topology and the workload collocation. This paper presents DRMaestro , a framework to orchestrate disaggregated resources transparently from the applications. DRMaestro uses a novel flow-network model to determine the optimal placement in multiple phases while employing best-efforts on preventing workload performance interference. We first evaluate the impact of disaggregation regarding the additional network requirements under higher network load. The results show that for some applications the impact is minimal, but other ones can suffer up to 80% slowdown in the data transfer part. After that, we evaluate DRMaestro via a real prototype on Kubernetes and a trace-driven simulation. The results show that DRMaestro can reduce the total job makespan with a speedup of up to ≈1.20x and decrease the QoS violation up to ≈2.64x comparing with another orchestrator that does not support resource disaggregation.
机译:现代应用需求处于前所未有的水平资源。从这个意义上讲,数据中心需要有效地扩展以应对这种需求。资源分解具有通过更灵活的方式部署工作负载来提高资源效率。因此,该行业正在转向分类的架构,这使得新的方法能够在数据中心中构建硬件资源。但是,确定最佳执行资源配置是一个复杂的任务。分解数据中心中资源分配的最优性取决于其拓扑和工作负载搭配。本文介绍了DRMAESTRO,该框架是从应用程序中透明地编制分类资源的框架。 Drmaestro使用新的流量网络模型来确定多个阶段的最佳位置,同时采用最佳努力防止工作负载性能干扰。我们首先评估分解对较高网络负荷下额外网络需求的影响。结果表明,对于某些应用,影响最小,但其他人可以在数据传输部分中遭受高达80%的放缓。之后,我们通过Kubernetes上的真正原型和跟踪驱动模拟来评估DRMAESTRO。结果表明,DRMAESTRO可以减少高速≈1.20倍的加速,并将QoS违规与不支持资源分类的另一个令人震惊的QoS违规减少。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号