ijaers social
facebook
twitter
Blogger
google plus

International Journal of Civil, Mechanical and Energy Science

ijcmes google ijcmes academia ijcmes rootindexing ijcmes reddit ijcmes IIFS ijcmes research bib ijaers digg ijcmes tumblr ijcmes plurk ijcmes I2OR ijcmes ASI ijcmes slideshare ijcmes open jgate ijcmes exactseek ijcmes Scrub the web ijcmes entireweb ijcmes speech counts ijcmes bibsonomy

Comparative Analysis on Heuristics Based Scheduling Algorithms in Grid Computing( Vol-2,Issue-3,May 2016 )

Author(s):

Monika Punia, Vikrant Gulati

Keywords:

Grid Computing, Scheduling, CPU Loads, Artificial bee.

Abstract:

The grid computing deals powerful and dynamic structure, with the several resources, disseminated CPU loads, along with the amount of idle memory continually changing. This paper presents relative study of numerous well-known grid computing based scheduling methods by taking into account the execution environment as well as metrics used like easy computing, environment and metrics used with the goal to determine the efficiency of each existing raising technique. This study has revealed that the Ant colony optimization scheduling has fairly significant results over the offered techniques. However due to decelerating growing rate it also become logjam of the optimistic scheduling.

Cite This Article:
Show All (MLA | APA | Chicago | Harvard | IEEE | Bibtex)
Paper Statistics:
  • Total View : 683
  • Downloads : 8
  • Page No: 32-36
Share:
References:

[1] Lee, Yun-Han, Seiven Leu, and Ruay-Shiung Chang. "Improving job scheduling algorithms in a grid environment." Future generation computer systems 27.8 (2011): 991-998.
[2] Souri, Alireza, and Nima Jafari Navimipour. "Behavioral modeling and formal verification of a resource discovery approach in Grid computing." Expert Systems with Applications 41.8 (2014): 3831-3849.
[3] Chang, Ruay-Shiung, Chih-Yuan Lin, and Chun-Fu Lin. "An adaptive scoring job scheduling algorithm for grid computing." Information Sciences 207 (2012): 79-89.
[4] Taheri, Javid, et al. "Hopfield neural network for simultaneous job scheduling and data replication in grids." Future Generation Computer Systems 29.8 (2013): 1885-1900.
[5] Kim, Sung-Soo, et al. "Optimal job scheduling in grid computing using efficient binary artificial bee colony optimization." Soft Computing 17.5 (2013): 867-882.
[6] Karaboga, Dervis, et al. "A comprehensive survey: artificial bee colony (ABC) algorithm and applications." Artificial Intelligence Review 42.1 (2014): 21-57.
[7] Korytkowski, Przemysław, Szymon Rymaszewski, and Tomasz Wiśniewski. "Ant colony optimization for job shop scheduling using multi-attribute dispatching rules." The International Journal of Advanced Manufacturing Technology 67.1-4 (2013): 231-241.
[8] Pooranian, Zahra, et al. "An efficient meta-heuristic algorithm for grid computing." Journal of Combinatorial Optimization 30.3 (2015): 413-434.
[9] Dev, S. Gokul, and R. Lalith Kumar. "User Deadline Based Job Scheduling in Grid Computing." International Journal of Computer Science and Network Security (IJCSNS) 15.3 (2015): 62.
[10] Darmawan, Irfan, Yoga Priyana, and Ian Joseph. "Grid computing process improvement through computing resource scheduling using genetic algorithm and Tabu Search integration." Telecommunication Systems, Services, and Applications (TSSA), 2012 7th International Conference on. IEEE, 2012.
[11] Ravula, Anusha, and Byrav Ramamurthy. "A tabu search approach for joint scheduling of resources in a lambda grid network." Global Telecommunications Conference (GLOBECOM 2010), 2010 IEEE. IEEE, 201
[12] Velik, Rosemarie, and Pascal Nicolay. "Energy management in storage-augmented, grid-connected prosumer buildings and neighborhoods using a modified simulated annealing optimization." Computers & Operations Research 66 (2016): 248-257.
[13] Dai, Min, et al. "Energy-efficient scheduling for a flexible flow shop using an improved genetic-simulated annealing algorithm." Robotics and Computer-Integrated Manufacturing 29.5 (2013): 418-429.
[14] Ansari, Abdollah, and Azuraliza Abu Bakar. "A Comparative Study of Three Artificial Intelligence Techniques: Genetic Algorithm, Neural Network, and Fuzzy Logic, on Scheduling Problem." Artificial Intelligence with Applications in Engineering and Technology (ICAIET), 2014 4th International Conference on. IEEE, 2014.
[15] Yi, Pan, Hui Ding, and Byrav Ramamurthy. "A tabu search based heuristic for optimized joint resource allocation and task scheduling in grid/clouds."Advanced Networks and Telecommunications Systems (ANTS), 2013 IEEE International Conference on. IEEE, 2013.