RHEA: resource hypervisor and efficient allocator in cloud

  • Authors

    • G Soniya Priyatharsini
    • N Malarvizhi
    2018-02-05
    https://doi.org/10.14419/ijet.v7i1.7.9381
  • Cloud Resource Management, Virtualization Hypervisor, Allocation of Resources in Cloud.
  • Abstract

    In this modern world, people are not ready to waste their time in waiting for long duration. That’s why cloud computing is such an enormous number of fans that it can be rented and also pay per use. The cloud service provider is concern about the data owner’s satisfaction in cloud usage. The main area they concentrate will be the security of the owner’s data and the resource allocation as per the request. This paper explains how the resources are efficiently allocated and scheduled to the clients. It follows four steps; firstly it identifies the active PMs. Next it defragments the identified machines. Then it balances the load along with the threshold feature to enhance the usage of the resource utilization. Finally it allocates the efficient Virtual Machines (VM) to the data owner as per the request. This is done using cloudsim along with java.

  • References

    1. [1] Puneet Himthani,†Efficient Technique for Allocation of Processing Elements to Virtual Machines in Cloud Environmentâ€, International Journal of Computer Science and Network Security (IJCSNS), VOL.16 No.8, August 2017.

      [2] R.Madhumathi and R.Radha Krishnan,†Priority queue scheduling approach for resource allocation in cloudâ€, Asian journal of Information technology, 15(3):472-480, ISSN1682, 2017.

      [3] Nitishchandra Vyas, Prof. Amit Chauhan,†A survey on virtual machine migration techniques in cloud computingâ€, Innovation in Engineering & Management (IJAIEM) or International journal of application, Issue 5, Volume 5, May 2016.

      [4] G. Naga Srikanth, Dr. G. Naga Satish, R. Krishnam Raju Indukuri, Dr. P. Suresh Varma,†A novel Scheduling Model for resource allocation in cloud computingâ€, International Journal of Advanced Research in Computer Science and Software Engineering, Volume 6, Issue 7,July 2016.

      [5] Mohammad firoj mithani, Shrisha rao,†Improving resource allocation in multi tier cloud systemsâ€, IEEE International conference on systems conference, 19-22 March 2012, pp 1-6.

      [6] Hong Xu, Baochun Li, “Anchor: An versatile and efficient framework for resource management in the cloudsâ€, IEEE Transcations on parallel and distributed systems, Vol 24,No 6, June 2013, pp 1066-1076.

      [7] Sheng Di, Cho-Li Wang, “Error –Tolerant resource allocation and payment minimization for cloud systemâ€, IEEE Transactions on parallel and distributed systems, Vol .24, No 6, June 2013, pp 1097-1106.

      [8] Ping Guo, Ling-ling Bu,†The Hierarchical resource management modal based on cloud computingâ€, IEEE symposium on Electrical and Electronics Engineering(EEESYM),24-27, June 2012, pp 471-474.

      [9] Mayank Mishra, Anwesha Das, Purushottam Kulkarni, Anirudha Sahoo, “Dynamic resource management using virtual machine migrationsâ€, IEEE Communications Magazine, Vol 50, Issue 9, September 2012. https://doi.org/10.1109/MCOM.2012.6295709.

      [10] Abirami S.P, Shalini Ramanathan†Linear scheduling strategy for resource allocation in cloud environmentâ€, International journal on cloud computing and architecture, vol 2, No 1, February.

      [11] Christopher Clark, Keir Fraser, Steven hand, Jacob Gorm Hanseny, Eric July, Christian Limpach, Ian Pratt, Andrew warfield,†Live migration on virtual machinesâ€, 2nd Symposium on Networked systems design and implementation (NSDI), May 2005.

      [12] Shikharesh Mujumdar, “Resource management on cloud: Handling uncertainities in parameters and policiesâ€, CSI Communications, edi pp 16-19.2011.

      [13] Nilabja Roy, Abhisheik Dubey and Aniruddha Gokhale, “Efficient autoscaling in the cloud using predictive models for workload forecastingâ€, Volume 3, January 2012,

      [14] Soramichi Akiyama, Takahiro Hirofuchi, Ryoushi Takano, Shinichi Honiden, ‘Miyakodori: A memory reusing mechanism for dynamic VM consolidation†Fifth International conference on cloud computing, IEEE 2012.

      [15] Visu, P., S. Koteeswaran and J. Janet, Artificial bee colony based energy aware and energy efficient routing protocol. J. Comput. Sci., 8(2): 227-231.2012.

      [16] D.T. Pham, A. Ghanbarzadeh, E. Koç, S. Otri , S. Rahim , M. Zaidi,†The Bees Algorithm – A Novel Tool for Complex Optimisation Problems†Manufacturing Engineering Centre, Cardiff University, UK, 2005.

      [17] Shahla Shoghian, Maryam Kouzehgar,†A Comparison among Wolf Pack Search and Four other Optimization Algorithmsâ€, International Scholarly and Scientific Research & Innovation, World Academy of Science, Engineering and Technology, Vol: 6, 2012.

      [18] Zhang Yu1 and Xiaomei Yang,†Full Glowworm Swarm Optimization Algorithm for Whole-Set Orders Scheduling in Single Machineâ€, The Scientific World Journal, Volume 2013, Article ID 652061.

  • Downloads

  • How to Cite

    Priyatharsini, G. S., & Malarvizhi, N. (2018). RHEA: resource hypervisor and efficient allocator in cloud. International Journal of Engineering & Technology, 7(1.7), 21-26. https://doi.org/10.14419/ijet.v7i1.7.9381

    Received date: 2018-02-04

    Accepted date: 2018-02-04

    Published date: 2018-02-05