Probability distribution based resource management for multitenant cloud clusters

[1]  Herodotos Herodotou,et al.  Profiling, what-if analysis, and cost-based optimization of MapReduce programs , 2011, Proc. VLDB Endow..

[2]  Li Zhang,et al.  MRONLINE: MapReduce online performance tuning , 2014, HPDC '14.

[3]  Thomas J. Hacker,et al.  Adaptive Resource Management for Analyzing Video Streams from Globally Distributed Network Cameras , 2018 .

[4]  Christina Delimitrou,et al.  Quasar: resource-efficient and QoS-aware cluster management , 2014, ASPLOS.

[5]  Lin Cai,et al.  mrMoulder: A recommendation-based adaptive parameter tuning approach for big data processing platform , 2019, Future Gener. Comput. Syst..

[6]  Zhengping Qian,et al.  Pado: A Data Processing Engine for Harnessing Transient Resources in Datacenters , 2017, EuroSys.

[7]  Liang Dong,et al.  Starfish: A Self-tuning System for Big Data Analytics , 2011, CIDR.

[8]  Zhen Xiao,et al.  Dynamic Resource Allocation Using Virtual Machines for Cloud Computing Environment , 2013, IEEE Transactions on Parallel and Distributed Systems.

[9]  Daniel Sánchez,et al.  Ubik: efficient cache sharing with strict qos for latency-critical workloads , 2014, ASPLOS.

[10]  Boon Thau Loo,et al.  Automated profiling and resource management of pig programs for meeting service level objectives , 2012, ICAC '12.

[11]  Palden Lama,et al.  AROMA: automated resource allocation and configuration of mapreduce environment in the cloud , 2012, ICAC '12.

[12]  Maozhen Li,et al.  Optimizing hadoop parameter settings with gene expression programming guided PSO , 2016 .

[13]  Christina Delimitrou,et al.  Paragon: QoS-aware scheduling for heterogeneous datacenters , 2013, ASPLOS '13.

[14]  Herodotos Herodotou,et al.  MapReduce programming and cost-based optimization? , 2011, Proc. VLDB Endow..

[15]  Maozhen Li,et al.  Optimizing hadoop parameter settings with gene expression programming guided PSO , 2017, Concurr. Comput. Pract. Exp..

[16]  Mattan Erez,et al.  Dirigent: Enforcing QoS for Latency-Critical Tasks on Shared Multicore Systems , 2016, ASPLOS.

[17]  Ricardo Bianchini,et al.  Resource Central: Understanding and Predicting Workloads for Improved Resource Management in Large Cloud Platforms , 2017, SOSP.

[18]  Christoforos E. Kozyrakis,et al.  Heracles: Improving resource efficiency at scale , 2015, 2015 ACM/IEEE 42nd Annual International Symposium on Computer Architecture (ISCA).