ADVANCED MEMORY VIRTUALIZATION TECHNIQUE FOR EFFICIENT ACCESS OF DATA RESOURCES IN CLOUD ENVIRONMENT

Main Article Content

SARABU V BALAMURALIDHAR, Dr.V.BALAJI

Abstract

Operating in cloud setting and accessing its services is fascinating task. It’s one amongst trendy technological areas to figure upon it for development of nation and increase economy rate. The paper deals with up desktop cloud computing services with the assistance of technique referred to as Memory Virtualization. Since virtualization is economical to extent measurability of typical desktop-as-a-service and create it appropriate for Wide space Network (WAN’s) environments. Desktop-as-a-Service (DaaS) in cloud computing means user will access its own desktop services also as services of alternative desktops settled on remote servers. Memory virtualization not solely works with memory board however it conjointly maps physical memory directions to actual machine memory. The directions keep in machine memory square measure checked with incoming user shopper requests. Similar matched queries can lead to generation of information mistreatment one amongst recovery techniques referred to as Shadow Paging Technique. Information is made and keep in remote cloud setting wherever user will access the info to perform their tasks. The planned systematic model for accessing desktop services is shown in following paper by mistreatment memory virtualization technique. A comparison is additionally created between para virtualization technique and memory virtualization technique that offers resolution in favour of memory virtualization technique.

Article Details

Section

Articles

How to Cite

ADVANCED MEMORY VIRTUALIZATION TECHNIQUE FOR EFFICIENT ACCESS OF DATA RESOURCES IN CLOUD ENVIRONMENT. (2018). International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 1(3), 623-629. https://doi.org/10.15662/IJRPETM.2018.0103003

References

[1]. Quiroz A, Kim H, Parashar M, Gnanasambandam N, Sharma N, 2009, “Towards workload provisioning for enterprise grids and clouds”, IEEE/ACM international conference on grid computing. pp 50-57.

[2]. Soramichi Akiyama, Takahiro Hirofuchi, Ryousei Takano, Shinichi Honiden, 2012, “MiyakoDori: A Memory Reusing Mechanism for Dynamic VM Consolidation”, Fifth International Conference on Cloud Computing, IEEE 2012.

[3]. Abirami S.P., Shalini Ramanathan, 2012 “Linear Scheduling Strategy for Resource allocation in CloudEnvironment”,International Journal on Cloud Computing and Architecture vol.2, No.1, February. [4]. Christopher Clark, Keir Fraser, Steven Hand, Jacob Gorm Hanseny, Eric July, Christian Limpach, Ian Pratt, Andrew Warfield, 2005, “Live Migration of Virtual Machines”, 2nd Symposium on Networked Systems Design and Implementation (NSDI), May

[5]. Lien Deboosere , Bert Vankeirsbilck ,Pieter Simoens , Filip DeTurck , Bart Dhoedt and Piet Demeester, “Efficient resource management for virtual desktop cloud computing”, Springer2012

[6]. Gartner’s 2008 Data Center Conference Instant Polling Results:Virtualization Summary – March 2, 2009

[7]. L. Wu, S. K. Garg, and R. Buyya. SLA-based resource allocation for software as a service provider (SaaS) in cloud computing environments. In C Grid 2011, 11th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, Newport Beach,

CA, USA, May 2011

[8]. Rao Mikkilineni, Vijay Sarathy "Cloud Computing and Lessons from the Past", Proceedings of IEEE WETICE 2009, First International Workshop on Collaboration & Cloud Computing, June 2009

[9]. V. Krishna Reddy, B. Thirumal Rao, Dr. L.S.S. Reddy, P.Sai Kiran “Research Issues in Cloud Computing “ Global Journal of Computer Science and Technology, Volume 11,Issue 11, July 2011

[10]. Dan Sullivan, “The Definitive Guide to Cloud Computing”, Realtime Publishers`