References
- Bai L , Cheng X , Liang J , et al . An optimization model for clustering categorical data streams with drifting concepts. IEEE Trans Knowl Data Eng. 2016;28(11):2871–2883.10.1109/TKDE.2016.2594068
- Guo Qing , Yang Hai-xia , Liu Yong-tai . Simulation of Parallel Scheduling for Complex Database under Cloud Computing Environment. Comput Simul. 2015;32(6):360–363.
- Wang H , Wang J . An effective image representation method using Kernel classification. IEEE, International Conference on TOOLS with Artificial Intelligence IEEE. 2014;853–858.
- Tong D , Julong LAN , Yuxiang H , et al . A reconfigurable data plane supporting the evolution of network functions. Trans Electron. 2016;44(7):1721–1727.
- Han M , Lu Q . Design of network resource scheduling platform based on adaptive fault-tolerant mechanism. Mod Electron Technol. 2016;39(10):61–64.
- Diallo L , Hashim AHA , Olanrewaju RF , et al. Two objectives big data task scheduling using swarm intelligence in cloud computing. Indian J Sci Technol. 2016;9(28):53–57.
- Zhang Z , Dongliang P , Tao F , et al . Resource scheduling method of space-based early warning system based on G A-PS. O Inf Control. 2016;45(2):199–203.
- Qinrong C , Shunlai L , Xibin L . A hybrid optimized resource scheduling algorithm for cloud computing. Comput Sci. 2016;37(6):15–23.
- Tani HG , Chaker EA . Smarter round robin scheduling algorithm for cloud computing and big data. Int Colloq Sci Technol Strategic Intell. 2016;26-35.
- Song F , Hong W , Yanwu Z . Wireless HART network node variable rate resource scheduling algorithm implementation. Electron Technol Appl. 2016;42(3):95–97.
- Nita MC , Pop F , Voicu C , et al . MOMTH: multi-objective scheduling algorithm of many tasks in Hadoop. Cluster Comput. 2015;18(3):1011–1024.10.1007/s10586-015-0454-8
- Wang Z , Su X . Dynamically hierarchical resource-allocation algorithm in cloud computing environment. J Supercomput. 2015;71(7):2748–2766.10.1007/s11227-015-1416-x
- Li Z , Ge J , Yang H , et al . A security and cost aware scheduling algorithm for heterogeneous tasks of scientific workflow in clouds. Future Gener Comput Syst. 2016;65:140–152.10.1016/j.future.2015.12.014
- Hanani A , Rahmani AM , Sahafi A . A multi-parameter scheduling method of dynamic workloads for big data calculation in cloud computing. J Supercomput. 2017;1–27.
- Zhang Q , Chen Z . A weighted kernel possibilistic c-means algorithm based on cloud computing for clustering big data. Int J Commun Syst. 2015;27(9):1378–1391.
- Zhang S , Wang H , Huang W . Two-stage plant species recognition by local mean clustering and weighted sparse representation classification. Cluster Comput. 2017;1–9.
- Zhan ZH , Liu XF , Gong YJ , et al . Cloud computing resource scheduling and a survey of its evolutionary approaches. ACM Comput Surv. 2015;47(4):63–67.
- Zhang G , Huang Q , Zhu A , et al . Enabling point pattern analysis on spatial big data using cloud computing: optimizing and accelerating Ripley’s function. Int J Geog Inf Sci. 2016;30(11):1–23.
- Sun D , Zhang G , Yang S , et al . Re-stream: real-time and energy-efficient resource scheduling in big data stream computing environments. Inf Sci. 2015;319:92–112.10.1016/j.ins.2015.03.027
- Shin J , Jo M , Lee J , et al . Strategic management of cloud computing services: focusing on consumer adoption behavior. IEEE Trans Eng Manage. 2014;61(3):419–427.10.1109/TEM.2013.2295829
- Ling L , Fen QIU . A classification optimization scheduling method of massive data under cloud environment. Comput Simul. 2016;33(5):315–317.