Cloud computing has offered services related to utility aligned IT services. Reducing the schedule length is considered as one of the significant QoS need of the cloud provider for the satisfaction of budget constraints of an application. Task scheduling in a parallel environment is one of the NP problems, which deals with the optimal assignment of a task. To deal with the favorable assignment of some task, task scheduling is considered as one of the NP problem. In this research work the jobs are distributed in a centralized environment. In Centralized environment every job request is forwarded to a central server. The central server passed the jobs to sub servers that are present with in the area of request. This has been performed by using distance formula. In our research work we reduce the energy consumption by each sub-server and it is possible by using formation of feedback queue. Job scheduling has been optimized on the basis of priority by using genetic algorithm Fuzzy logic also used for classification of the jobs to decide which job has been allotted to the system. Metrics namely, SLR, CCR (Computation Cost Ratio) and Energy consumption are used for the evaluation of the proposed work. All the simulations will be carried out in Cloud sim environment.
F.A.Alvi, B.S.Choudary, N.Jaferry (2012),”Review on cloud computing security issues & challenges”, IAEJS, Vol.2.
C.N. Höfer and G. Karagiannis (2011), “Cloud computing services: taxonomy and comparison”, Internet Serv.
Leena Khanna (2013), “Cloud Computing: Security Issues And Description Of Encryption Based Algorithms To Overcome Them”, International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 3, Issue 3.
A.Padmapriya (2013), Cloud Computing: Security Challenges & Encryption Practices”,International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 3, Issue 3.
K.S.Suresh(2012), “Security Issues and Security Algorithms in Cloud Computing”, International Journal of Advanced Research in Computer Science and Software Engineering.
D. Kishore Kumar (2012), “Cloud Computing: An Analysis of Its Challenges & Security Issues International Journal of Computer Science and Network (IJCSN) Vol. 1, Issue 5.
Vahid Ashktorab, Seyed Reza Taghizadeh (2012), “Security Threats and Countermeasures in Cloud Computing”, International Journal of Application or Innovation in Engineering & Management (IJAIEM).
Farhad Soleimanian Gharehchopogh (2013), “Mobile Cloud Computing: Security Challenges for Threats Reduction”, International Journal of Scientific & Engineering Research, Vol. 4, Issue 3.
D. Kliazovich and P. Bouvry. (2010), “Green Cloud: A Packet-level Simulator of Energy-aware Cloud Computing Data Centers”, Proceeding of the IEEE Global Telecommunications Conference (GLOBECOM), Miami, FL.
C. Belady. (2006), “How to Minimize Data Centre Utility Bills”, US.
B. Priya, E. S. Pilli and R. C. Joshi. (2013), “A Survey on Energy and Power Consumption Models for Greener Cloud”, Proceeding of the IEEE 3rd International Advance Computing Conference (IACC), Ghaziabad.
F. Satoh, H. Yanagisawa, H. Takahashi and T. Kushida. (2013), “Total Energy Management system for Cloud Computing”, Proceedings of the IEEE International Conference of the Cloud Engineering (IC2E), Redwood City, CA.
T. Vinh T. Duy, Y. Sato and Y. Inoguchi. (2010), “Performance Evaluation of a Green Scheduling Algorithm for Energy Savings in Cloud Computing”, Proceedings of the IEEE International Symposium of the Parallel & Distributed Processing, Workshops and Phd Forum (IPDPSW), Atlanta, GA.
A. Jain, M. Mishra, S. Kumar Peddoju and N. Jain. (2013), “Energy Efficient Computing-Green Cloud Computing”, Proceedings of the International Conference of the Energy Efficient Technologies for Sustainability (ICEETS), Nagercoil.
D. Cavdar and F. Alagoz, (Eds.). (2012), “A Survey of Research on Greening Data Centers”, Proceedings of the IEEE Global Communications Conference (GLOBECOM); Anaheim, CA.
H. Aydin, R. G. Melhem, D. Mossé, and P. Mejía-Alvarez. (2004), “Power-Aware Scheduling for Periodic Real-Time Task”, IEEE Transactions on Computers, Vo.53, pp. 584-600.
Ajit Singh, Priyanka Goyal, SahilBatra. (2012), An Optimized Round Robin Scheduling Algorithm for CPU Scheduling”, (IJCSE) International Journal on Computer Science and Engineering Vol. 02, No. 07, pp. 2383-2385.
NeetuGoel, Dr. R.B. Garg. (2012), “A Comparative Study of CPU Scheduling Algorithms,” International Journal of Graphics & Image Processing, Vol.2.
Mururgesan S. (2008), “Harnessing Green IT: Principles and Practices”, IEEE’s IT Pro, pp. 24-33.
Murtazaev A. and Sangyoon O. (2011), “Sercon: Server Consolidation Algorithm using Live Migration of Virtual Machines for Green Computing”, IETE Technical Review, Vol-28, Issue-3, pp. 212-231.
Krikke J. (2008), “Recycling e-waste” The sky is the limit”, IEEE’s IT Pro, pp.50-55.
Hedman J. and Henningsson S. (2011), “Three Strategies for Green IT”, IEEE’s IT Pro, pp. 54-57.
Epstein M. and Roy M. (2001), “Sustainability in Action: Identifying and measuring the key performance drivers”, Long Range Planning Journal, Vol-34, pp. 585-604.
Ellison D. (2010) , “Addressing Adaptation in the EU Policy Framework”, Springer, E.C.H. (ed.)
Chauhan N. and Saxena A. (2013), “A Green Software Development Lifecycle for Cloud Computing”, IEEE’s IT Pro, pp. 28-34
Elkington J. (1997) , “Cannibals with forks: The triple Bottom Line of 21st century business”, New Society Publishers, UK.
Mandeep Kaur, Manish Mahajan (2013), “using encryption algorithms to enhance the data security in cloud computing, International journal of communication and computer technologies.
Sara Qaisar and KausarFiaz Khawaja (2012),“Cloud Computing: Network/Security Threats and Countermeasures”, IJCRB, Vol. 3, No. 9.
B. Aljaber, T. Jacobs, K. Nadiminti, and R. Buyya (2007), “Multimedia on global grids: A case study in distributed ray tracing,” Malays. J. Comput. Sci., vol. 20, no. 1, pp. 1–11.
J. Nieh and S. J. Yang (2000), “Measuring the multimedia performance of server based computing,” in Proc. 10th Int. Workshop on Network and Operating System Support for Digital Audio and Video, pp. 55–64.
CLOUDSIM, Computation cost ratio (CCR), Genetic algorithm (GA), SLR, energy consumption, Fuzzy logic.