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Accelerating Batch Analytics with Residual Resources from Interactive Clouds

机译:利用来自Interactive Cloud的剩余资源加速批次分析

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The popularity of cloud-based interactive computing services (e.g., virtual desktops) brings new management challenges. Each interactive user leaves abundant but fluctuating residual resources while being intolerant to latency, precluding the use of aggressive VM consolidation. In this paper, we present the Resource Harvester for Interactive Clouds (RHIC), an autonomous management framework that harnesses dynamic residual resources aggressively without slowing the harvested interactive services. RHIC builds ad-hoc clusters for running throughput-oriented 'background' workloads using a hybrid of residual and dedicated resources. These hybrid clusters offer significant gains over normal dedicated clusters: 20-40% cost and 20-29% energy savings in our test bed. For a given background job, RHIC intelligently discovers and maintains the ideal cluster size and composition, to meet user-specified goals such as cost/energy minimization or deadlines. RHIC employs black-box workload performance modeling, requiring only system-level metrics and incorporating techniques to improve modeling accuracy with bursty and heterogeneous residual resources. We demonstrate the effectiveness and adaptivity of our RHIC prototype with two parallel data analytics frameworks, Hadoop and HBase. Our results show that RHIC finds near-ideal cluster sizes and compositions across a wide range of workload/goal combinations.
机译:基于云的交互式计算服务(例如虚拟桌面)的普及带来了新的管理挑战。每个交互式用户都会留下大量但不断波动的剩余资源,同时又不耐延迟,从而无法使用积极的VM整合。在本文中,我们介绍了交互式云资源收集器(RHIC),这是一个自主管理框架,可主动利用动态剩余资源而不会减慢所收集的交互式服务。 RHIC使用剩余资源和专用资源的混合来构建临时集群,以运行面向吞吐量的“后台”工作负载。与普通专用集群相比,这些混合集群具有显着优势:在我们的测试台上,成本降低了20-40%,能源节省了20-29%。对于给定的后台工作,RHIC会智能地发现并保持理想的群集大小和组成,以满足用户指定的目标,例如成本/能耗最小化或截止日期。 RHIC采用黑匣子式工作负载性能建模,仅需要系统级指标,并结合了使用突发性和异构残余资源来提高建模精度的技术。我们通过两个并行的数据分析框架Hadoop和HBase演示了RHIC原型的有效性和适应性。我们的结果表明,RHIC在广泛的工作量/目标组合中发现了近乎理想的集群规模和组成。

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