Computer Science ›› 2018, Vol. 45 ›› Issue (5): 295-299.doi: 10.11896/j.issn.1002-137X.2018.05.051

Previous Articles     Next Articles

Evaluation Method of Big Data Service Resources Based on Cloud Computing

YANG Xiao-lan, QIAN Cheng and ZHU Fu-xi   

  • Online:2018-05-15 Published:2018-07-25

Abstract: With the introduction of cloud computing technology in the field of big data services,the traditional QoS-based weighted evaluation methods can not evaluate the validity and accuracy of cloud computing service resources dynamically due to the large number of cloud service resources which need to be mobilized and their complex topological structures.In order to solve this problem,this paper proposed a screening weighted evaluation method based on game optimization scheduling.This method introduces user’s QoE evaluation index,fully considers the service and delay cha-racteristics of dynamic scheduling,and gets the Nash equilibrium point of weighted evaluation parameters through the game of multiple indexes.The simulation results show that the proposed evaluation method can accurately evaluate the validity and accuracy of cloud computing service resource scheduling and is suitable for the expansion of big data service business.

Key words: Game optimization,Weighted evaluation,Cloud computing,Resource scheduling

[1] YANG C,HUANG Q,LI Z,et al.Big Data and cloud computing:innovation opportunities and challenges[J].International Journal of Digital Earth,2017,10(1):13-53.
[2] MANJUNATH R,AKSHATHA A,BALAJI S.Reverse engi-neering in Big Data using Cloud computing and Open Stack virtual machine[C]∥International Conference on Applied and Theoretical Computing and Communication Technology.IEEE,2017:848-853.
[3] LI J,HUANG L,ZHOU Y,et al.Computation Partitioning for Mobile Cloud Computing in a Big Data Environment[J].IEEE Transactions on Industrial Informatics,2017,13(4):2009-2018.
[4] ZHOU C,JIANG H,CHEN Y,et al.User interest acquisition by adding home and work related contexts on mobile big data analysis[C]∥2016 IEEE Conference on Computer Communications Workshops(INFOCOM WKSHPS).IEEE,2016:201-206.
[5] OTHMAN M,MADANI S A,KHAN S U.A survey of mobile cloud computing application models[J].IEEE Communications Surveys & Tutorials,2014,16(1):393-413.
[6] YANG C,HUANG Q,LI Z,et al.Big Data and cloud computing:innovation opportunities and challenges[J].International Journal of Digital Earth,2017,10(1):13-53.
[7] ENCK W,GILBERT P,HAN S,et al.TaintDroid:an information-flow tracking system for realtime privacy monitoring on smartphones[J].ACM Transactions on Computer Systems(TOCS),2014,32(2):1-29.
[8] ZHANG Y,REN S,LIU Y,et al.A big data analytics architecture for cleaner manufacturing and maintenance processes of complex products[J].Journal of Cleaner Production,2017,142(2):626-641.
[9] CHANG R M,KAUFFMAN R J,KWON Y O.Understanding the paradigm shift to computational social science in the pre-sence of big data[J].Decision Support Systems,2014,63(3):67-80.
[10] KLAUSER F R,ALBRECHTSLUND A.From self-tracking to smart urban infrastructures:Towards an interdisciplinary research agenda on Big Data[J].Surveillance & Society,2014,12(2):273-286.
[11] SIVARAJAH U,KAMAL M M,IRANI Z,et al.Critical analysis of Big Data challenges and analytical methods[J].Journal of Business Research,2017,70(C):263-286.
[12] HAKIRI A,GOKHALE A,BERTHOU P,et al.Software-de-fined networking:Challenges and research opportunities for future internet[J].Computer Networks,2014,75:453-471.
[13] QIAO S J,HAN N,ZHANG K F,et al.Algorithm for detecting overlapping communities from complex network big data[J].Journal of Software,2017,8(3):631-647.(in Chinese) 乔少杰,韩楠,张凯峰,等.复杂网络大数据中重叠社区检测算法[J].软件学报,2017,28(3):631-647.
[14] SONG J,SUN Z Z,MAO K M,et al.Research advance on mapreduce based big data processing platforms and algorithms[J].Journal of Software,2017,8(3):514-543.(in Chinese) 宋杰,孙宗哲,毛克明,等.MapReduce大数据处理平台与算法研究进展[J].软件学报,2017,28(3):514-543.
[15] ZHAI J H,ZHANG M Y,WANG T T,et al.K-Nearest neighbor algorithm based on hash technology and MapRecuce[J].Computer Science,2017,4(7):210-214.(in Chinese) 翟俊海,张明阳,王婷婷,等.基于哈希技术和MapReduce的大数据集K-近邻算法[J].计算机科学,2017,44(7):210-214.
[16] ZHAO J B,LIU Y X,SONG L B,et al.Application of Big Data Processing and Monitoring Technologies in Landslide Monitoring and Waring System[J].Journal of Chongqing University of Technology(Natural Science),2018,2(2):182-190.(in Chinese) 赵久彬,刘元雪,宋林波,等.大数据关键技术在滑坡监测预警系统中的应用[J].重庆理工大学学报(自然科学),2018,32(2):182-190.

No related articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!