Refine your search
Collections
Co-Authors
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Lathigara, Amit M.
- Resource Scheduling and Evaluation of Heuristics with Resource Reservation in Cloud Computing
Abstract Views :129 |
PDF Views:0
Authors
Affiliations
1 School of Engineering RK University, Rajkot, Gujarat, IN
2 Marwadi University, Rajkot, IN
1 School of Engineering RK University, Rajkot, Gujarat, IN
2 Marwadi University, Rajkot, IN
Source
International Journal of Advanced Networking and Applications, Vol 9, No 3 (2017), Pagination: 3451-3454Abstract
The "cloud" is a combination of various hardware and software that work jointly to bring many aspects of computing to the users as an online service. Some uniqueness of Cloud Computing is pay-per-use, elastic capacity, misapprehension of unlimited resources, self-service interface, virtualized resources etc. Various applications running on cloud environment would expect better Quality of Service (QoS) from Cloud environment. Improvement in Quality of Service (QoS) is possible through better job scheduling and reservation of resources in advance for execution of jobs. In this paper effects of Reservation Rate and Time Factor on the performance parameters like Resource Utilization, Waiting Time, Minimum Execution Time and Success Rate of Reserved jobs have been studied for various job scheduling algorithms and their performance have been calculated in resource reservation environment in Cloud.Keywords
Cloud Computing, Max-Mix, Min-Min Resource Reservation, Priority Scheduling.References
- Tracy D. Braun, Howard Jay Siegel, Noah Beck, A Comparison of Eleven Static Heuristics for Mapping a Class of Independent Tasks onto Heterogeneous Distributed Computing Systems. Journal of Parallel and Distributed computing 61.6, pp. 810-837 (2001).
- Izakian, H., Abraham, A., Snasel, V., Comparison of Heuristics for Scheduling Independent Tasks on Heterogeneous Distributed Environments. Computational Sciences and Optimization, 2009. CSO 2009. International Joint Conference on, Volume 1, 10.1109/CSO.2009.487, pp. 8 – 12 (2009).
- Reddy, K., Hemant Kumar Roy, Diptendu Shina, A hierarchical load balancing algorithm for efficient job scheduling in a computational grid testbed. Recent Advances in Information Technology (RAIT), 2012 1st International Conference on, pp. 363 – 368 (2012).
- J.-K. Kim, et al., Dynamically Mapping Tasks with Priorities and Multiple Deadlines in A Heterogeneous Environment. J. Parallel Distrib. Comput., vol. 67, pp. 154–169 (2007).
- R. Buyya, D. Abramson, and J. Giddy, Nimrod/G: An architecture for a resource management and scheduling system in a global computational grid. in Proc. 4th Int. Conf. High-Perform. Comput. AsiaPacific Region, vol. 1, pp. 283–289 (2000).
- Casanova, H., Legrand, A., Zagorodnov, D., Berman, F., Heuristics for scheduling parameter sweep applications in grid environments. Heterogeneous Computing Workshop, 2000. (HCW 2000) Proceedings. 9th , pp. 349 – 363 (2000).
- H. Topcuoglu, S. Hariri, and M.-Y.Wu, Performance-effective and low complexity task scheduling for heterogeneous computing. IEEE Trans. Parallel Distrib. Syst., vol. 13, no. 3, pp. 260–274 (Mar. 2002).
- Krunal Vaghela, Dr. Rama Krishna Challa and Amit Lathigara, Comparison of Heuristics for Scheduling Independent Tasks with Advance Resource Reservation in Grid Environment. IEEE Sponsored Third International Conference On Computation Of Power, Energy, Information And Communication, April 2014 , Page(s): 1014 – 1020, (2014).
- Chengpeng Wu ,Junfeng Yao , Songjie, Cloud computing and its key techniques. Electronic and Mechanical Engineering and Information Technology (EMEIT), 2011 International Conference on , vol no. 1, pp.320-324, 12-14 (Aug. 2011)(IEEE).
- Qicao, Zhi-Bo Wei , Wen- Mao Gong, An Optimized Algorithm for task Scheduling Based on Activity Based Costing in Cloud computing. Bioinformatics and Biomedical Engineering, pp 1-3, (11-13 june 2009) (IEEE).
- Shamsollah Ghanbaria & Mohamed Othmana, A Priority based Job Scheduling Algorithm. in Cloud Computing, Procedia Engineering 50, PP. 778 – 785 (2012).
- Ankur Bhardwaj, Comparative Study of Scheduling Algorithms in Operating System. International Journal of Computers and Distributed Systems, Vol. No.3, Issue I, (April-May 2013).
- Job Scheduling Heuristics and Simulation Tools in Cloud Computing Environment:A Survey
Abstract Views :168 |
PDF Views:0
Authors
Affiliations
1 School of Engineering, RK University, Rajkot, Gujarat, IN
2 Marwadi University, Rajkot, IN
1 School of Engineering, RK University, Rajkot, Gujarat, IN
2 Marwadi University, Rajkot, IN
Source
International Journal of Advanced Networking and Applications, Vol 10, No 2 (2018), Pagination: 3782-3787Abstract
Cloud computing is the extension of distributed computing, grid computing and parallel processing. Cloud Computing Environments provides an efficient way to host, process and analyze large amount of data on remote machines. Apart from this, it also provides various Infrastructure Services (IAAS), Software Services (SAAS) and Platform Services (PAAS) for hosting purpose. Various job scheduling heuristics are proposed over the time for efficient execution of various jobs in Cloud environment. Efficient scheduling of jobs is key factor on performance enhancement of Scheduling Heuristics. Various performance parameters like completion time, waiting time, success rate, resource utilization etc. are used to measure performance of various heuristics. These parameters are also used to measure Quality of Service (QoS) that these heuristics provides to bunch of jobs. Here a detailed survey of various job scheduling heuristics and various simulation tools which are used for simulation of these heuristics is presented. Main objective of this survey paper is to present a detailed survey of various job scheduling heuristics available and different simulation tools available to simulate these heuristics in Cloud environment. A detailed comparative analysis is present for various job scheduling heuristics available and different simulation tools.Keywords
Cloud Computing, Scheduling Heuristics, Quality of Service (QoS), Cloud Simulators.References
- Sujit Tilak, Prof. Dipti Patil, A Survey of Various Scheduling Algorithms in Cloud Environment.
- International Journal of Engineering Inventions, vol. 1(2), pp. 36-39 (2012).
- Dhanmeet Singh Kalra., Mohit Pal Singh Birdi, Differentiating Algorithms of Cloud Task Scheduling Based on various Parameters. IOSR Journal of Computer Engineering, Volume 17(6), pp. 35 – 38 (2015).
- XiaoShan He,Xianhe Sun and Gergor von Laszewski. QoS guided Min-Min heuristic for grid task scheduling. Journal of Computer Science and Technology, vol. 18(4), p.442-451 (2003).
- Dong. F, Luo. J, Gao. L and Ge. L, "A Grid Task Scheduling Algorithm Based on QoS Priority Grouping," In the Proceedings of the Fifth International Conference on Grid and Cooperative Computing (GCC’06), IEEE, 2006.
- M.Singh and P.K.Suri; ―QPSMax-Min<>Min-Min : A QoS Based Predictive Max-Min, Min-Min Switcher Algorithm for Job Scheduling, in a Grid, International Technology Journal, vol. 7(8), pp.
- -1181 (2008).
- Saeed Parsa and Reza Entezari-Maleki, RASA: A New Task Scheduling Algorithm in Grid Environment, World Applied Sciences Journal vol. 7 (Special Issue of Computer & IT): pp. 152-160 (2009).
- Huifang Li, Siyuan Ge, Lu Zhang “A QoS-based Scheduling Algorithm for Instance-intensive Workflows in Cloud Environment”26th Chinese Control and Decision Conference (CCDC) 978-14799-3708-0/14 IEEE 2014.
- Hilda Lawrance, Dr. Salaja Silas, Efficient Qos Based Resource Scheduling Using PAPRIKA Method for Cloud Computing. International Journal of Engineering Science and TechNology (IJEST) vol.
- (3) (2013).
- Cui Lin, Shiyong Lu,” Scheduling Scientific Work flows Elastically for Cloud Computing” in IEEE 4th International Conference on Cloud Computing, (2011).
- Meng Xu, Lizhen Cui, Haiyang Wang, Yanbing Bi, “A Multiple QoS Constrained Scheduling Strategy of Multiple Workflows for Cloud Computing”, in 2009 IEEE International Symposium on Parallel and Distributed Processing.
- Y. Yang, K. Liu, J. Chen, X. Liu, D. Yuan and H. Jin, An Algorithm in SwinDeW-C for Scheduling Transaction-Intensive Cost-Constrained Cloud Workflows, Proc. of 4th IEEE International Conference on e-Science, 374-375, Indianapolis, USA, December 2008.
- C. Lin, S.Lu, “Scheduling Scientific Workflow Elasticity for Cloud Computing”, IEEE 4th International Conference on Cloud Computing, pp. 246-247, (2011).
- Hongbo Yu, Yihua Lan*, Xingang Zhang, Zhidu Liu, Chao Yin, Lindong Li” Job Scheduling Algorithm In Cloud Environment” International Conference on Computational and Information Sciences IEEE, (2013).
- Xiaonian Wu, Mengqing Deng, Runlian Zhang, Bing Zeng, Shengyuan Zhou. A task scheduling algorithm based on QoS-driven in Cloud Computing. Information Technology and Quantitative Management(ITQM2013)., pp.11621169 (2013).
- Kapil Kumar, Abhinav Hans, Ashish Sharma, Navdeep Singh, Towards the Various Cloud Computing Scheduling Concerns: A Review, International Conference on Innovative Applications of Computational Intelligence on Power, Energy and Controls with their Impact on Humanity (CIPECH14) 28 & 29 November (2014).
- Wenjuan Li, Qifei Zhang, Jiyi Wu1, Jing Li, Haili Zhao Trust-based and QoS Demand Clustering Analysis Customizable Cloud Workflow Scheduling Strategies IEEE International Conference on Cluster Computing Workshops, (2012).
- Mr. Manjunatha S, Mr. Bhanu Prakash and Mr. Balakrishna H M. A Detailed Survey on various Cloud computing Simulators. International Journal of Engineering Research, vol. 5(4), p.790-791 (2016).
- Praveen Kumar, Anjandeep Kaur Rai. An Overview and Survey of Various Cloud Simulation Tools.
- Journal of Global Research in Computer Science, vol. 5(1), (2014).