Journal Press India®

Study on Cloud Computing Resource Allocation Strategies

Vol 1 , Issue 3 , July - September 2013 | Pages: 20-28 | Research Paper  

https://doi.org/10.51976/ijari.131303

| | |


Author Details ( * ) denotes Corresponding author

1. Mahendra Singh Sagar, Department of Computer Science & Engineering, NIT Hamirpur, India
2. * Babita Singh, Department of Computer Science & Engineering, Alfalah School of Engineering & Technology, Dhauj Faridabad, Haryana, India (Mailbabita17@gmail.com)
3. Waseem Ahmad, Department of Computer Science & Engineering, Alfalah School of Engineering & Technology, Dhauj Faridabad, Haryana, India

Cloud computing is offering utility-oriented IT services to users worldwide. Based on pay-as-you-go model, it enables hosting of pervasive applications from consumer, scientific, and business domains. It is a revolution of traditional data centre's and offers subscription-based access to infrastructure, platforms, and applications that are popularly referred to as Infrastructure, Platform and Software as a Service. Numerous IT vendors are promising to offer computation, storage, and application hosting services and to provide coverage in several continents. These vendors required a huge amount of energy for contributing to high dynamic cost along with a drawback of environment pollution. Therefore, current scenario needs Green computing to save energy and reduce dynamic costs too. Because of increasing demand of high speed computation and data storages, distributed computing system has beckon a lot of contemplation. Resource allocation plays an indispensable role in distributed system where clients have service level agreements. Due to these IT Vendors total profit depends on these Service level agreements.

Keywords

Cloud Computing; Virtual Machine; Resource Allocation Strategy etc

  1. Maximizing Profit in Cloud Computing System via Resource Allocation Hadi Goudarzi and Massoud Pedram ,University of Southern California, Los Angeles, CA 90089 .
  2. Anshul Rai, Ranjita Bhagwan Saikat Guha, "Generalized Resource Allocation for the Cloud", Microsoft Research India
  3. Ioannis Kitsos,Antonis Papaioannou, Nikos Tsikoudis and Kostas Magoutis, " Adapting Data-Intensive Workloads to Generic Allocation Policies in Cloud Infrastructures", Institute of Computer Science (ICS) Foundation for Research and Technology Hellas (FORTH) Heraklion GR-70013, Greece
  4. V. Vinothina, Dr. R. Sridaran, Dr. Padmavathi Ganapathi, " A Survey on Resource Allocation Strategies in Cloud Computing", (IJACSA) International Journal of Advanced Computer Science and Applications, 3(6) 2012
  5. Ronak Patel, Sanjay Patel”, Survey on Resource Allocation Strategies in Cloud Computing", International Journal of Engineering Research & Technology (IJERT) 2(2), February- 2013, ISSN: 2278-0181.
  6. V. Vinothina, Dr. R. Shridaran, and Dr. Padmavathi Ganpathi, "A survey on resource allocation strategies in cloud computing", International Journal of Advanced Computer Science and Applications, 3(6):97--104, 2012.
  7. http://apmdigest.com/best-practices-to-resolve-resource-contention-in-the-cloud
  8. http://www.intel.com/support/netport/sb/cs-015182.htm3
  9. Patricia Takako Endo et al. "Resource allocation for distributed cloud", Concept and Research challenges (IEEE, 2011), pp.42-46.
  10. http://www.systemsarchitecture.co.uk/server/
  11. A. Singh, M. Korupolu and D. Mohapatra, "Server-storage virtualization: Integration and Load balancing in data centers". In Proc.2008 ACM/IEEE conference on supercomputing (SC’08) pages 1-12, IEEE Press 2008.
  12. Shikharesh Majumdar: "Resource Management on cloud: Handling uncertainties in Parameters and Policies" (CSI communications, 2011, edn) pp.16-19.
  13. Jiyani et al.: Adaptive resource allocation for preemptable jobs in cloud systems (IEEE, 2010), pp.31-36.
  14. Jose Orlando Melendez & Shikharesh Majumdar, "Matchmaking with Limited knowledge of Resources on Clouds and Grids".
  15. Shikharesh Majumdar, "Resource Management on cloud: Handling uncertainties in Parameters and Policies" (CSI communications, 2011, edn) pp.16-19.
  16. Dongwan Shin and HakanAkkan, "Domain- based virtualized resource management in cloud computing"
  17. Kuo-Chan Huang & Kuan-Po Lai, "Processor Allocation policies for Reducing Resource fragmentation in Multi cluster Grid and Cloud Environments",(IEEE, 2010), pp.971-976.
  18. P. Ruth, J. Rhee, D. Xu, R. Kennell and S. Goasguen, “Autonomic Adaptation of virtual computational environments in a multi-domain infrastructure”, IEEE International conference on Autonomic Computing, 2006, pp.5-14.
  19. M. Altino, Sampaio & G. Jorge Barbosa, "Dynamic Power- and Failure-Aware Cloud Resources Allocation for Sets of Independent Tasks", IEEE International Conference on Cloud Engineering, 2013.
  20. O. Niehorster, A. Brinkmann, G. Fels, J. Kruger, and J. Simon, “Enforcing SLAs in Scientific Clouds,” Proc. 2010 IEEE International Conference on Cluster Computing (CLUSTER), pp. 178-187, doi: 10.1109/CLUSTER.2010.42
  21. Rerngvit Yanggratoke, Fetahi Wuhib and Rolf Stadler, "Gossip-based resource allocation for green computing in Large Cloud" 7th International conference on network and service management, Paris, France, 24-28 October, 2011.
  22. Fetahi Wuhib and Rolf Stadler, "Distributed monitoring and resource management for Large cloud environments", (IEEE, 2011), pp.970-975
  23. Paul Marshall, Kate Keahey & Tim Freeman: Elastic Site (IEEE, 2010), pp.43-52.
  24. P. Ruth, J. Rhee, D. Xu, R. Kennell and S. Goasguen, “Autonomic Adaptation of virtual computational environments in a multi-domain infrastructure”, IEEE International conference on Autonomic Computing, 2006,pp.5-14
  25. Yang wt.al, "A profile based approach to Just in time scalability for cloud applications", IEEE international conference on cloud computing, 2009, pp 9-16.
  26. Hien et al.," Automatic virtual resource management for service hosting platforms", cloud’09, pp 1-8.
  27. Dusit Niyato, Zhu Kun and Ping Wang, "Cooperative Virtual Machine Management for Multi-Organization Cloud Computing Environment
  28. Andrzej Kochut et al., "Desktop Workload Study with Implications for Desktop Cloud Resource Optimization", 978-1-4244-6534-7/10 2010 IEEE.
  29. D. Gmach, J.Rolia and L.cherkasova, "Satisfying service level objectives in a self-managing resource pool, In Proc", Third IEEE international conference on self-adaptive and self organizing system.(SASO’09) pages 243-253.IEEE Press 2009
  30. X. Zhu et al. "Integrated capacity and workload management for the next generation data center", in proc.5thinternational conference on Automatic computing (ICAC’08), pages 172-181, IEEE Press 2008
  31. T. Wood et al., "Black Box and gray box strategies for virtual machine migration", In Proc 4th USENIX Symposium on Networked Systems Design and Implementation (NSDI 07),pages 229-242.
  32. Hadi Goudaezi and Massoud Pedram, Multidimensional SLA-based Resource Allocation for Multi-tier Cloud Computing Systems IEEE 4thInternational conference on Cloud computing 2011, pp.324-331
  33. Hien Nguyen et al., "SLA-aware Virtual Resource Management for Cloud Infrastructures", IEEE Ninth International Conference on Computer and Information Technology 2009, pp.357-362.
  34. Weisong Hu et al., "Multiple Job Optimization in Map Reduce for Heterogeneous Workloads", IEEE Sixth International Conference on Semantics, Knowledge and Grids 2010,pp.135-140.
  35. Xiaoyi Lu, Jian Lin, Li Zha and Zhiwei Xu, "Vega Ling Cloud: A Resource Single Leasing Point System to Support Heterogeneous Application Modes on Shared Infrastructure", (IEEE, 2011), pp.99-106.
  36. Wei-Yu Lin et al., "Dynamic Auction Mechanism for Cloud Resource Allocation", IEEE/ACM 10th International Conference on Cluster, Cloud and Grid Computing, pp.591-592, 2010
  37. Tram Truong Huu & John Montagnat, "Virtual Resource Allocations distribution on a cloud infrastructure" (IEEE, 2010), pp.612-617.
  38. Waheed Iqbal, Matthew N. Dailey, "Imran Ali and Paul Janecek & David Carrera, "Adaptive Resource Allocation for Back-end Mash up Applications on a heterogeneous private cloud".
  39. David Irwin, Prashant Shenoy, Emmanuel Cecchet and Michael Zink, "Resource Management in Data-Intensive Clouds, Opportunities and Challenges", This work is supported in part by NSF under grant number CNS-0834243.
  40. Pencheng Xiong, Yun Chi, Shenghuo Zhu, Hyun Jin Moon, Calton Pu & Hakan Hacigumus, "Intelligent Management Of Virtualized Resources for Database Systems in Cloud Environment", (IEEE,2011),pp.87-98.
  41. I. Popovici et al,”Profitable services in an uncertain world”, in proceedings of the conference on supercomputing CSC2005
  42. Y. C Lee et.al,”Project driven service request scheduling in clouds”, In proceedings of the international symposium on cluster & Grid Computing.(CC Grid 2010), Melbourne, Australia.
  43. Linlin Wu, Saurabh Kumar Garg and Raj kumar Buyya, "SLA –based Resource Allocation for SaaS Provides in Cloud Computing Environments" (IEEE, 2011), pp.195-204 .
  44. Richard T.B. Ma, Dah Ming Chiu and John C.S.Lui, Vishal Misra and Dan Rubenstein, "On Resource Management for Cloud users :a Generalized Kelly Mechanism Approach'
Abstract Views: 1
PDF Views: 655

Advanced Search

News/Events

Indira School of Bus...

Indira School of Mangement Studies PGDM, Pune Organizing Internatio...

Indira Institute of ...

Indira Institute of Management, Pune Organizing International Confe...

D. Y. Patil Internat...

D. Y. Patil International University, Akurdi-Pune Organizing Nation...

ISBM College of Engi...

ISBM College of Engineering, Pune Organizing International Conferen...

Periyar Maniammai In...

Department of Commerce Periyar Maniammai Institute of Science &...

Institute of Managem...

Vivekanand Education Society's Institute of Management Studies ...

Institute of Managem...

Deccan Education Society Institute of Management Development and Re...

S.B. Patil Institute...

Pimpri Chinchwad Education Trust's S.B. Patil Institute of Mana...

D. Y. Patil IMCAM, A...

D. Y. Patil Institute of Master of Computer Applications & Managem...

Vignana Jyothi Insti...

Vignana Jyothi Institute of Management International Conference on ...

By continuing to use this website, you consent to the use of cookies in accordance with our Cookie Policy.