[1]Shi Heng-liang.Task scheduling of cloud computing[D].Nanjing:Nanjing University of Science and Technology,2012.(in Chinese)
[2]Wieczorek M, Hoheisel A, Prodan R. Towards a general model of the multi-criteria workflow scheduling on the grid[J]. Future Generation Computer Systems,2009,25(3):237-256.
[3]Ma Dan. Inter task dependency based parallel job scheduling algorithm[D]. Wuhan:Huazhong University of Science and Technology,2007.(in Chinese)
[4]Liang Qing-zhong. Multi-objective task scheduling algorithm based on hybrid cloud platform[D]. Wuhan:China University of Geosciences,2015.(in Chinese)
[5]Chen H,Wang F Z. Spark on entropy: A reliable & efficient scheduler for low-latency parallel jobs in heterogeneous cloud[C]∥Proc of IEEE International Workshop on Cloud-based Networks and Applications(CloudNA 2015), 2015:708-713.
[6]Tang S,Lee B S,He B. Fair resource allocation for data-intensive computing in the cloud[J]. IEEE Transactions on Services Computing,2016,99(1):1-1.
[7]Chen H, Wang F, Na H. A cost-efficient and reliable resource allocation model based on cellular automaton entropy for cloud project scheduling[J]. International Journal of Advanced Computer Science & Applications,2013,4(4):7-14.
[8]Feng Lin. Implementation of memory optimization in cluster computing engine Spark[D]. Beijing:Tsinghua University,2013.(in Chinese)
[9]Marcel K,Erickson J. Cloudera impala: Real time queries in apache hadoop,for real[EB/OL].[2012-11-13].http://blog.cloudera.com/blog/2012/10/cloudera-impala-real-time-queries-in-apachehadoop-for-real.
[10]Topcuoglu H,Hariri S,Wu M Y. Performance-effective and low-complexity task scheduling for heterogeneous computing[J]. IEEE Transactions on Parallel & Distributed Systems,2002,13(3):260-274.
[11]Chua L O. Local activity is the origin of complexity[J]. International Journal of Bifurcation & Chaos,2011,15(11):3435-3456.
[12]Botón-Fernández M, Castrillo F P, Vega-Rodríguez M A. Nature-inspired algorithms applied to an efficient and self-adaptive resources selection model for grid applications[C]∥Proc of the 1st International Conference on Theory and Practice of Natural Computing, 2012:84-96.
[13]Trilles S,Schade S,scar Belmonte,et al. Real-time anomaly detection from environmental data streams[M]∥Lecture Notes in Geoinformation and Cartography. Switzerland:Springer International Publishing, 2015:125-144.
附中文参考文献:
[1]史恒亮. 云计算任务调度研究[D]. 南京:南京理工大学,2012.
[3]马丹. 任务间相互依赖的并行作业调度算法研究[D]. 武汉:华中科技大学,2007.
[4]梁庆中. 混合云平台上多目标任务调度算法研究[D]. 武汉:中国地质大学,2015.
[8]冯琳. 集群计算引擎Spark中的内存优化研究与实现[D].北京:清华大学,2013. |