A survey on Approaches Used for Efficient Workload Management in Geo-Distributed Data Centres

  • Authors

    • D Ramya
    • J Deepa
    • P N.Karthikayan
    2018-09-01
    https://doi.org/10.14419/ijet.v7i3.34.18924
  • Cloud Computing, Data Centers, Virtual Machine, Virtualization.
  • A geographically distributed Data center assures Globalization of data and also security for the organizations. The principles for Disaster recovery is also taken into consideration. The above aspects drive business opportunities to companies that own many sites and Cloud Infrastructures with multiple owners.  The data centers store very critical and confidential documents that multiple organizations share in the cloud infrastructure. Previously different servers with different Operating systems and software applications were used. As it was difficult to maintain, Servers are consolidated which allows sharing of resources at low of cost maintenance [7]. The availability of documents should be increased and down time should be reduced. Thus workload management becomes a challenging among the data centers distributed geographically. In this paper we focus on different approaches used for workload management in Geo-distributed data centers. The algorithms used and also the challenges involved in different approaches are discussed

     

  • References

    1. [1] Various green datacenters. http://www.ecobusinesslinks.com/.

      [2] A. Beloglazov, J. Abawajy, and R. Buyya, “Energy-aware resource allocation heuristics for efficient management of data centers for cloud computing,†Future Generation Computer Systems, vol. 28, no. 5, pp. 755–768, 2012.

      [3] F. Kong and X. Liu, “A survey on green-energy-aware power management for datacenters,†ACM Comput. Surv., vol. 47, no. 2, pp. 30:1–30:38, Nov. 2014.

      [4] Z. Liu, Y. Chen, C. Bash, A. Wierman, D. Gmach, Z. Wang, M. Marwah, and C. Hyser. “Renewable and cooling aware workload management for sustainable data centersâ€. In Proc. ACM SIGMETRICS, 2012.

      [5] S. Ren and Y. He. Coca: Online distributed resource management for cost minimization and carbon neutrality in data centers. In Proc. SC, 2013.

      [6] Z. Liu, Y. Chen, C. Bash, A. Wierman, D. Gmach, Z. Wang, M. Marwah, and C. Hyser. Renewable and cooling aware workload management for sustainable data centers. In Proc. ACM SIGMETRICS, 2012.

      [7] C. Li, R. Zhou, and T. Li. Enabling distributed generation powered sustainable high-performance data center. In Proc. IEEE HPCA, 2013.

      [8] D. Gmach, J. Rolia, C. Bash, Y. Chen, T. Christian, A. Shah, R. Sharma, and Z. Wang. Capacity planning and power management to exploit sustainable energy. In Proc. IEEE CNSM, 2010.

      [9] A. Forestiero, C. Mastroianni, M. Meo, G. Papuzzo, and M. Sheikhalishahi, “Hierarchical approach for green workload management in distributed data centers,†in 20th International European Conference on Parallel and Distributed Computing, Euro-Par 2014, ser. LNCS, vol.8805. Porto, Portugal: Springer, August 2014, pp. 323–334.

      [10] XU, H., FENG, C., AND LI, B. Temperature aware workload management in geo-distributed datacenters. Tech. rep., University of Toronto.

  • Downloads

  • How to Cite

    Ramya, D., Deepa, J., & N.Karthikayan, P. (2018). A survey on Approaches Used for Efficient Workload Management in Geo-Distributed Data Centres. International Journal of Engineering & Technology, 7(3.34), 141-144. https://doi.org/10.14419/ijet.v7i3.34.18924