2(1), (2023):43-52. DOI: https://doi.org/10.46632/jdaai/2/1/8
S. Sree Priya, T. Rajendran
Utilizing cloud resources become promising in encroachment of internet technology, countenancing everyone to use resources for little or no cost. It will be very important to have task scheduling for sharing resources in cloud environment. To maintain effective resource usage, cloud technology equally divides workload among shareable resources when it receives task requests. Machine learning and metaheuristic algorithms afford dynamic component for equitable task distribution in cloud paradigm. The current state-of-art unsupervised models-based load balancing arbitrarily selects centroid locations and struggles to achieve incorrect task requests. Using an optimization technique that takes inspiration from behavioral science, study aims to build well-balanced clustering model-based task scheduling system. In order to efficiently schedule tasks among virtual servers in cloud environment, this proposed work styles aids of perspicacious fuzzy and Grass Hopper algorithms. The results showed that PFC-GOD upsurges cloud resources usage while lowering make-span, execution time, and high balance load scheduling.
Singh and I. Chana, “Consistency verification and quality assurance(CVQA) traceability framework for SaaS”, 2013 3rd IEEE, International Advance Computing Conference (IACC), Ghaziabad, pp.1-6, 2013.
Kim, J. Cho and E. Seo, “Energy-credit scheduler: An energy aware virtual machine scheduler for cloud systems”, Future Generation Computer Systems, vol. 32, pp. 128-137, 2014.
Chen, J. Grundy, J.-G. Schneider, Y. Yang and Q. He, “Automated analysis of performance and energy consumption for cloud applications”, In Proceedings of 5th ACM/SPEC international conference on Performance engineering, ACM, pp. 39-50, 2014. https://doi.org/10.1145/2568088.2568093.
Li X. and Zheng M., “An Energy-Saving Load Balancing Method in Cloud Data Centers”, In: Frontier and Future Development of Information Technology in Medicine and Education. Lecture Notes in Electrical Engineering, vol. 269. Springer, Dordrecht. https://doi.org/10.1007/978-94-007-7618-0_35.
Tilak, S., and Patil, D., “A survey of various scheduling algorithms in cloud environment”, International Journal of Engineering Inventions, vol. 1, no. 2, 36-39, 2012.
Rantonen, Tapio Frantti, and Kauko Leivisk, “Fuzzy expert system for load balancing in symmetric multiprocessor systems “, Expert Systems with Applications Journal, Vol. 37, Issue 12, pp. 8711-8720, December 2010.
Pradeep and T. P. Jacob, “Comparative analysis of scheduling and load balancing algorithms in cloud environment”, In: Proc. Of International Conf. on Control, Instrumentation, Communication and Computational Technologies, pp. 526-531, 2016.
Kiruthiga and S. Mary Vennila, “Robust Resource Scheduling With Optimized Load Balancing Using Grasshopper Behavior Empowered Intuitionistic Fuzzy Clustering in Cloud Paradigm”, International Journal of Computer Networks and Applications (IJCNA), Volume 7, Issue 5, September – October (2020), ISSN: 2395-0455, Pgs.137-145, DOI: 10.22247/ijcna/2020/203851.
Raju, J. Amudhavel, M. Pavithra, S. Anuja and B. Abinaya, “A heuristic fault tolerant MapReduce framework for minimizing makespan in Hybrid Cloud Environment,” International Conference on Green Computing Communication and Electrical Engineering (ICGCCEE), Coimbatore, pp. 1-4, 2014. doi: 10.1109/ICGCCEE.2014.6922462.
Ge, Y., & Wei, G., “GA-based task scheduler for cloud computing systems”, International Conference on Web Information Systems and Mining, WISM 2010), Sanya, vol. 2, pp. 181-186, IEEE, 2010. doi: 10.1109/WISM.2010.87.
Naveen Durai, R. Subha and Anandakumar Haldorai , “Hybrid Invasive Weed Improved Grasshopper Optimization Algorithm for Cloud Load Balancing”, Intelligent Automation & Soft Computing, DOI:10.32604/iasc.2022.026020,January 2020.
Jang, S. H., Kim, T. Y., Kim, J. K., and Lee, J. S. “The study of genetic algorithm-based task scheduling for cloud computing”, International Journal of Control and Automation, vol. 5, no. 4, pp.157-162, 2012.
Guo Q, “Task scheduling based on ant colony optimization in cloud environment”, In AIP Conference Proceedings, vol. 1834, no. 1, p.040039, 2017.
Zuo, L., Shu, L., Dong, S., Zhu, C., and Hara, T.,” A multi-objective optimization scheduling method based on ant colony algorithm in cloud computing”, pp. 2687-2699, 2015. doi:10.1109/ACCESS.2015.2508940.
Srinivasa Rao Gampaa , Kiran Jasthia , Preetham Golib , D. Dasc , R.C. Bansald, “Grasshopper optimization algorithm based two stage fuzzy multiobjective approach for optimum sizing and placement of distributed generations, shunt capacitors and electric vehicle charging stations”, Journal of Energy Storage, https://doi.org/10.1016/j.est.2019.101117, November 2019.
Liu, A. Abraham, A.E. Hassanien, “Scheduling Jobs on computational grids using fuzzy particle swarm optimization algorithm”, Future Generation Computer Systems, 2009.
Srinivasa Rao, B. Raveendra Babu, “DE Based Job Scheduling in Grid Environments”, Journal of Computer Networks, vol. 1, no. 2, pp.28-31, 2013.
Juan, W., Fei, L., and Aidong, C., “An Improved PSO based Task Scheduling Algorithm for Cloud Storage System”, Advances in Information Sciences and Service Sciences, vol. 4, no. 18, pp. 465-471, 2012.
Krishnasamy K.,” Task Scheduling Algorithm Based on Hybrid Particle Swarm Optimization In Cloud Computing Environment”, Journal of Theoretical and Applied Information Technology, vol. 55, no.1 , pp. 33-38, 2013.
Alkayal, E. S., Jennings, N. R., and Abulkhair, M. F.,”Efficient task scheduling multi-objective particle swarm optimization in cloud computing”, In 2016 IEEE 41st Conference on Local Computer Networks Workshops (LCN Workshops). pp. 17-24, IEEE, 2016.doi:10.1109/LCN.2016.024
Rao, R. V., Savsani, V. J., Vakharia, D. P, “Teaching–learning-based optimization: novel method for constrained mechanical design optimization problems”, Computer-Aided Design, vol. 43, no. 3, pp. 303-315, 2011.
Dipesh Pradhan, Feroz Zahid, “Data Center Clustering for Geographically Distributed Cloud Deployments, Primate Life Histories, Sex Roles, and Adaptability”, pp. 1030-1040, 2018. doi: 10.1007/978-3-030-15035-8_101.
Amer Al-Rahayfeh , Saleh Atiewi , Abdullah Abuhussein, MuderAlmiani,”Novel Approach to Task Scheduling and LoadBalancing Using Dominant Sequence Clustering and Mean Shift Clustering Algorithms”, Future Internet, vol. 11,no. 109 , pp 1-15, 2019.
Malinen M.I., FräntiP. , “Balanced K-Means for Clustering. In: FräntiP., Brown G., Loog M., Escolano F., Pelillo M. (eds) Structural,Syntactic, and Statistical Pattern Recognition”, Lecture Notes in Computer Science, vol 8621. Springer, Berlin, Heidelberg, 2014.
Geetha Megharaj, Dr. Mohan G. Kabadi, Rajani, Deepa M, “FCM-LB:Fuzzy C Means Cluster Based Load Balancing in Cloud”, International Journal of Innovative Research in Science, Engineering and Technology, vol. 7, Special Issue 6, 2018.
Atanassov K, “Intuitionistic fuzzy logics as tools for evaluation of data mining processes”, Knowl-Based Syst, vol. 80, pp. 122–130, 2015. doi: 10.1016/j.knosys.2015.01.015.
Zeshui Xu, and Junjie Wu,”Intuitionistic fuzzy C-means clustering algorithms”, Journal of Systems Engineering and Electronics, vol. 21, no. 4, pp.580–590, 2010. doi: 10.3969/j.issn.1004-4132.2010.04.009.
Shahrzad Saremi, Seyedali Mirjalili, Andrew Lewis, “Grasshopper Optimization Algorithm: Theory and application”, Advances in Engineering Software, vol. 105, pp. 30-47, 2017.
S. Sree Priya, T. Rajendran, “Perspicacious Fuzzy Clustering Franchised by Grasshopper Optimization Dexterity for Robust Resource Scheduling with Effective Load Balancing in Cloud Precedent”, REST Journal on Data Analytics and Artificial Intelligence, 2(1), (2023):43-52.