An Approach for Modeling and Ranking Node-Level Stragglers in Cloud Datacenters

Xue Ouyang, P. Garraghan, Changjian Wang, P. Townend, Jie Xu
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引用次数: 12

Abstract

The ability of servers to effectively execute tasks within Cloud datacenters varies due to heterogeneous CPU and memory capacities, resource contention situations, network configurations and operational age. Unexpectedly slow server nodes (node-level stragglers) result in assigned tasks becoming task-level stragglers, which dramatically impede parallel job execution. However, it is currently unknown how slow nodes directly correlate to task straggler manifestation. To address this knowledge gap, we propose a method for node performance modeling and ranking in Cloud datacenters based on analyzing parallel job execution tracelog data. By using a production Cloud system as a case study, we demonstrate how node execution performance is driven by temporal changes in node operation as opposed to node hardware capacity. Different sample sets have been filtered in order to evaluate the generality of our framework, and the analytic results demonstrate that node abilities of executing parallel tasks tend to follow a 3-parameter-loglogistic distribution. Further statistical attribute values such as confidence interval, quantile value, extreme case possibility, etc. can also be used for ranking and identifying potential straggler nodes within the cluster. We exploit a graph-based algorithm for partitioning server nodes into five levels, with 0.83% of node-level stragglers identified. Our work lays the foundation towards enhancing scheduling algorithms by avoiding slow nodes, reducing task straggler occurrence, and improving parallel job performance.
云数据中心节点级掉队者建模与排序方法
服务器在云数据中心内有效执行任务的能力因不同的CPU和内存容量、资源争用情况、网络配置和操作年龄而异。异常缓慢的服务器节点(节点级掉队者)会导致分配的任务成为任务级掉队者,从而极大地阻碍并行作业的执行。然而,目前尚不清楚慢节点与任务离散的直接关系。为了解决这一知识差距,我们提出了一种基于分析并行作业执行跟踪记录数据的云数据中心节点性能建模和排名方法。通过使用生产云系统作为案例研究,我们演示了节点执行性能是如何由节点操作的时间变化(而不是节点硬件容量)驱动的。为了评估框架的通用性,对不同的样本集进行了过滤,分析结果表明,节点执行并行任务的能力倾向于遵循3参数逻辑分布。进一步的统计属性值,如置信区间、分位数值、极端情况可能性等,也可以用于对集群内潜在的掉队节点进行排序和识别。我们利用基于图的算法将服务器节点划分为五个级别,识别出0.83%的节点级掉队者。我们的工作为改进调度算法奠定了基础,避免慢节点,减少任务离散的发生,提高并行作业性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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