Iaas: Qos based Automated User Requirement Identification for Optimal Resource Allocation in Multi Cloud

  • Authors

    • K S.Guruprakash
    • Syed Fiaz.A.S
    • S Sankar
    2018-09-01
    https://doi.org/10.14419/ijet.v7i3.34.18966
  • Cloud Resource allocation, Cloud Service Recommendation, Optimal Resource package allocation, Cloud Compitting, Cloud Infrastructure
  • Resource allocation and optimization is one of the important characteristics in cloud computing environment. An vital goal of any cloud service provider is to allocate cost effective and optimized resource packages to the consumers that meet the QOS (Quality of Service) requirements.  Though the various set of cloud resources are available, selecting an appropriate resource to the consumers based on their requirements is a tedious task for any providers. Many researchers have already discussed different algorithms for finding the optimal resources to the consumers. However there is a challenge in selecting exact resources that meet QoS Parameters such as performance, availability, reliability and so on. This paper proposes an effective method for optimal resource allocation in multi cloud environment.  This approach takes an input, set of QOS parameter value for each user and select the suitable package that matches the QOS value. This paper provides an effective resource allocation solution to IaaS (Infrastructure as a Service) provider based on consumers usage patterns.
  • References

    1. [1] Y. Sun, J. White, S.Eade, and D.C. Schmidt, “ROAR: A QoS-oriented modeling framework for automated cloud resource allocation

      [2] and optimizationâ€,Journal of Systems and Software, 116, 146-161, 2016.

      [3] N.Ferry, A. Rossini, F.Chauvel, B. Morin, “A Solberg Towards model-driven pro- visioning, deployment, monitoring, and adaptation

      [4] of multi-cloud systems,In: Pro- ceedings of the IEEE 6th International Conference on Cloud Computing. 887–894, 2013.

      [5] Yu Sun, Jules White, Sean Eade “A Model-Based System to Automate Cloud Resource Allocation and Optimizationâ€, International Conference on Model Driven Engineering Languages and Systems, pp 18-34 , 2014.

      [6] X. Wang, B. Zhou, andW. Li, “Model-based load testing of web applicationsâ€,J. Chin. Inst. Eng. 36 (1), 74–86, 2013.

      [7] D. Draheim, J. Grundy, J. Hosking, C.Lutteroth, andG. Weber, “Realistic load test- ing of web applicationsâ€, In: Proceedings of the

      [8] IEEE 10th European Conference on Software Maintenance and Reengineering, CSMR. IEEE, 11, 2006

      [9] S. Marrone, andR. Nardone, “Automatic resource allocation for high availability cloud servicesâ€,Procedia Computer Science, 52,

      [10] 980-987, 2015.

      [11] P. Gupta, andS.P. Ghrera, “Power and Fault Aware Reliable Resource Allocation for Cloud Infrastructureâ€,Procedia Computer Science. 78, 457-463, 2016.

      [12] F. Bahrpeyma, H.Haghighi, andA. Zakerolhosseini, “An adaptive RL based approach for dynamic resource provisioning in Cloud virtualized data centersâ€,Computing, 97(12), 1209-1234, 2015.

      1. Foster, Y. Zhao, I. Raicu, S. Lu,“Cloud computing and grid computing 360-degree comparedâ€,In: Grid computing environments workshop (GCE’08). 1–10, 2008.

      [13] M. Armbrust, A. Fox, R. Griffith, A.D. Joseph, R.H. Katz, A.Konwinski, G. Lee, D.A. Patterson, A.Rabkin, I.Stoica, and M. Zaharia,“Above the clouds: A berkeley view of cloud computingâ€, 2009.

      [14] H. Hayes, “Cloud computingâ€, Commun ACM. 51, 9–11, 2008.

      [15] C. Li, “Optimal resource provisioning for cloud computing environmentâ€, The Journal of Supercomputing. 62(2), 989-1022, 2016

      [16] K.S.Guruprakash, Sy.Siva Sathya “Log based Automated SMI Parameter Identification and Resource recommendations in cloud†Indian Journal of Science and Technology, Vol 9(30), DOI: 10.17485/ijst/2016/v9i30/99011, August 2016

      C. Madhumathi, andG. Ganapathy, “Requirement Intensity Based Resource Provisioning For E-Learning In Multi-Cloud To Avoid Vendor Lock-Insâ€,ARPN Journal of Engineering and Applied Sciences, Vol.11, No17, 2016.
  • Downloads

  • How to Cite

    S.Guruprakash, K., Fiaz.A.S, S., & Sankar, S. (2018). Iaas: Qos based Automated User Requirement Identification for Optimal Resource Allocation in Multi Cloud. International Journal of Engineering & Technology, 7(3.34), 210-212. https://doi.org/10.14419/ijet.v7i3.34.18966