REVIEW ON TASK SCHEDULING IN UBIQUITOUS CLOUDS
PDF

How to Cite

Kumar, Dinesh. 2019. “REVIEW ON TASK SCHEDULING IN UBIQUITOUS CLOUDS”. Journal of ISMAC 1 (1): 72-80. https://doi.org/10.36548/jismac.2019.1.006.

Keywords

— Ubiquitous Clouds
— Task scheduling
— Optimization methods
— guaranteed servicing and Optimized performance
Published: 30-06-2019

Abstract

The cloud being a prominent area for research, is ubiquitous as it serves the client needs irrespective of time and place. It has become the most preferred network due to its guaranteed service rendering and cost effectiveness. The increase in the capability of the cloud services has increased the number of users to adapt to cloud. The increase in the adaption towards cloud in turn results with insufficiency in the proper and the simultaneous allocation of the resources according to the requisitions. So the task scheduling and resource allocation for the cloud becomes essential. As the conventional methods of task scheduling arrive to a local optima solution that are less-effective, the paper surveys the meta-heuristic optimization based task scheduling and the resource allocation for the ubiquitous cloud environment, that arrives to an more optimal solution at a faster rate and at ease. The paper presents the survey of the optimization techniques of task scheduling available for the cloud and the discussion of the improvement of the performance metrics in terms of make-span, throughput, cost, latency and successful service provisioning compared to the other conventional methods.

References

  1. Pop, Florin, and Maria Potop-Butucaru. "ARMCO: Advanced topics in resource management for ubiquitous cloud computing: An adaptive approach." (2016): 79-81.
  2. Luo, Liang, Wenjun Wu, Dichen Di, Fei Zhang, Yizhou Yan, and Yaokuan Mao. "A resource scheduling algorithm of cloud computing based on energy efficient optimization methods." In 2012 International Green Computing Conference (IGCC), pp. 1-6. IEEE, 2012.
  3. Salehan, Alireza, Hossein Deldari, and Saeid Abrishami. "Performance Evaluation of Two New Lightweight Real-Time Scheduling Mechanisms for Ubiquitous and Mobile Computing Environments." Arabian Journal for Science and Engineering44, no. 4 (2019): 3083-3099.
  4. Kumar, Sunil, and Mala Kalra. "A Hybrid Approach for Energy-Efficient Task Scheduling in Cloud." In Proceedings of 2nd International Conference on Communication, Computing and Networking, pp. 1011-1019. Springer, Singapore, 2019.
  5. Lakshmi, Adepu Sree, N. Subhash Chandra, and M. BalRaju. "Optimized Capacity Scheduler for MapReduce Applications in Cloud Environments." In Data Management, Analytics and Innovation, pp. 157-169. Springer, Singapore, 2019.
  6. Mapetu, Jean Pepe Buanga, Zhen Chen, and Lingfu Kong. "Low-time complexity and low-cost binary particle swarm optimization algorithm for task scheduling and load balancing in cloud computing." Applied Intelligence (2019): 1-23.
  7. Pop, Florin, Alexandru Iosup, and Radu Prodan. "HPS-HDS: high performance scheduling for heterogeneous distributed systems." (2018): 242-244.
  8. Muhammed, Thaha, Rashid Mehmood, Aiiad Albeshri, and Iyad Katib. "UbeHealth: a personalized ubiquitous cloud and edge-enabled networked healthcare system for smart cities." IEEE Access 6 (2018): 32258-32285.
  9. Chen, You-Shyang, Chienwen Wu, Heng-Hsing Chu, Chien-Ku Lin, and Huan-Ming Chuang. "Analysis of performance measures in cloud-based ubiquitous SaaS CRM project systems." The Journal of Supercomputing 74, no. 3 (2018): 1132-1156.
  10. Cai, Wei, Yuanfang Chi, Conghui Zhou, Chaojie Zhu, and Victor CM Leung. "UBCGaming: Ubiquitous Cloud Gaming System." IEEE Systems Journal 12, no. 3 (2018): 2483-2494.
  11. Juarez, Fredy, Jorge Ejarque, and Rosa M. Badia. "Dynamic energy-aware scheduling for parallel task-based application in cloud computing." Future Generation Computer Systems 78 (2018): 257-271.
  12. Lin, Weiwei, Weiqi Wang, Wentai Wu, Xiongwen Pang, Bo Liu, and Ying Zhang. "A heuristic task scheduling algorithm based on server power efficiency model in cloud environments." Sustainable Computing: Informatics and Systems 20 (2018): 56-65. (scheduling impacts over processing time and energy consumption)
  13. Peng, Hua, Wu-Shao Wen, Ming-Lang Tseng, and Ling-Ling Li. "Joint optimization method for task scheduling time and energy consumption in mobile cloud computing environment." Applied Soft Computing 80 (2019): 534-545.
  14. Abdullahi, Mohammed, Md Asri Ngadi, Salihu Idi Dishing, and Barroon Isma'eel Ahmad. "An efficient symbiotic organism’s search algorithm with chaotic optimization strategy for multi-objective task scheduling problems in cloud computing environment." Journal of Network and Computer Applications133 (2019): 60-74.
  15. Rekha, P. M., and M. Dakshayini. "Efficient task allocation approach using genetic algorithm for cloud environment." Cluster Computing (2019): 1-11.
  16. Alkayal, Entisar S., Nicholas R. Jennings, and Maysoon F. Abulkhair. "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.
  17. Zuo, Liyun, Lei Shu, Shoubin Dong, Chunsheng Zhu, and Takahiro Hara. "A multi-objective optimization scheduling method based on the ant colony algorithm in cloud computing." Ieee Access 3 (2015): 2687-2699.
  18. Dai, Yangyang, Yuansheng Lou, and Xin Lu. "A task scheduling algorithm based on genetic algorithm and ant colony optimization algorithm with multi-QoS constraints in cloud computing." In 2015 7th International Conference on Intelligent Human-Machine Systems and Cybernetics, vol. 2, pp. 428-431. IEEE, 2015.
  19. Raj, Bibhav, Pratyush Ranjan, Naela Rizvi, Prashant Pranav, and Sanchita Paul. "Improvised Bat Algorithm for Load Balancing-Based Task Scheduling." In Progress in Intelligent Computing Techniques: Theory, Practice, and Applications, pp. 521-530. Springer, Singapore, 2018.
  20. Agrawal, Mayur, Rishabh Bansal, Ankur Choudhary, and Arun Prakash Agrawal. "Hetrogenous Computing Task Scheduling Using Improved Harmony Search Optimization." In 2018 International Conference on Advances in Computing, Communication Control and Networking (ICACCCN), pp. 11-15. IEEE, 2018.
  21. Kılıç, Haydar, and Uğur Yüzgeç. "Improved antlion optimization algorithm via tournament selection and its application to parallel machine scheduling." Computers & Industrial Engineering 132 (2019): 166-186.
  22. Vishrutha, T., and P. Chitra. "Efficient Task Allocation Using Intelligent Bacterial Foraging Optimization (IBFO) Algorithm in Cloud." In 2019 1st International Conference on Innovations in Information and Communication Technology (ICIICT), pp. 1-5. IEEE, 2019.