Tails in the cloud: a survey and taxonomy of straggler management within large-scale cloud data centres

被引:0
作者
Sukhpal Singh Gill
Xue Ouyang
Peter Garraghan
机构
[1] Queen Mary University of London,School of Electronic Engineering and Computer Science
[2] National University of Defense Technology,School of Electronic Sciences
[3] Lancaster University,School of Computing and Communications
来源
The Journal of Supercomputing | 2020年 / 76卷
关键词
Computing; Stragglers; Cloud computing; Straggler management; Distributed systems; Cloud data centres;
D O I
暂无
中图分类号
学科分类号
摘要
Cloud computing systems are splitting compute- and data-intensive jobs into smaller tasks to execute them in a parallel manner using clusters to improve execution time. However, such systems at increasing scale are exposed to stragglers, whereby abnormally slow running tasks executing within a job substantially affect job performance completion. Such stragglers are a direct threat towards attaining fast execution of data-intensive jobs within cloud computing. Researchers have proposed an assortment of different mechanisms, frameworks, and management techniques to detect and mitigate stragglers both proactively and reactively. In this paper, we present a comprehensive review of straggler management techniques within large-scale cloud data centres. We provide a detailed taxonomy of straggler causes, as well as proposed management and mitigation techniques based on straggler characteristics and properties. From this systematic review, we outline several outstanding challenges and potential directions of possible future work for straggler research.
引用
收藏
页码:10050 / 10089
页数:39
相关论文
共 125 条
[1]  
Zaharia M(2016)Apache spark: a unified engine for big data processing Commun ACM 59 56-65
[2]  
Xin RS(2019)RADAR: self-configuring and self-healing in resource management for enhancing quality of cloud services Concurr Comput Pract Exp 31 e4834-80
[3]  
Wendell P(2013)The tail at scale Commun ACM 56 74-14
[4]  
Das T(2017)Effective straggler mitigation: which clones should attack and when? ACM SIGMETRICS Perform Eval Rev 45 12-600
[5]  
Armbrust M(2014)Efficient task replication for fast response times in parallel computation ACM SIGMETRICS Perform Eval Rev 42 599-198
[6]  
Dave A(2013)Effective straggler mitigation: attack of the clones NSDI 13 185-11
[7]  
Meng X(2008)Improving MapReduce performance in heterogeneous environments Osdi 8 7-129
[8]  
Gill SS(2015)Using straggler replication to reduce latency in large-scale parallel computing ACM SIGMETRICS Perform Eval Rev 43 7-41977
[9]  
Chana I(2019)Holistic resource management for sustainable and reliable cloud computing: an innovative solution to global challenge J Syst Softw 155 104-2268
[10]  
Singh M(2018)BigRoots: an effective approach for root-cause analysis of stragglers in big data system IEEE Access 6 41966-842