The Significance and Diversity of Task Scheduling Methods in Cloud Computing Platforms

Authors

  • Arvind Kumar Singh Research Scholar, Department of Computer Science, Maharishi University of Information Technology, Lucknow
  • Hitendra Singh Assistant Professor, school of engineering and technology, Maharishi University of Information Technology, Lucknow
  • Manish Varsney Prof. School of Engineering & Technology, Maharishi University of Information Technology,

Keywords:

Cloud computing, scheduling, task, virtual machine

Abstract

Cloud Computing has arisen as quite possibly the main new computing procedures in the undertaking. A blend of advances and cycles has prompted an insurgency in the manner that computing is created and conveyed to end client. Cloud Computing traces all the way back to 1950 for example the enormous scope centralized servers were made accessible to huge undertakings. Basically, the cloud architecture is built with the combined perspective of cloud provider, user, and the broker. Scheduling is the most important task in any working framework, and it is controlled by the CPU. This is due to the fact that resources are not stored in a particularly designated manner, but rather in a strictly handy manner in order to ensure maximum skills. Cloud computing is a relatively new technology that allows users to access computer infrastructure and other services on a demand basis. Various types of task schedulers have been developed to make use of the vast amount of cloud-based resources users can access while also improving the management of data centers. We can say that cloud computing has transformed IT by allowing users and consumers to access services via the Internet. These services range from hardware to software, saving money on both the expense of setting up physical resources and the cost of obtaining the appropriate software licenses. The task scheduling problem is one of the most important and prominent challenges facing the cloud computing system.

Downloads

Download data is not yet available.

References

Kratzke, Nane, and Peter-Christian Quint. "Understanding cloud-native applications after 10 years of cloud computing-A systematic mapping study." Journal of Systems and Software126 (2017): 1-16.

Yousafzai, Abdullah, et al. "Cloud resource allocation schemes: review, taxonomy, and opportunities." Knowledge and Information Systems 50.2 (2017): 347-381.

Shah, Manan D., and Harshad B. Prajapati. "Reallocation and allocation of virtual machines in cloud computing." arXiv preprint arXiv: 1304.3978 (2013).

Masdari, Mohammad, et al. "A Survey of PSO-based scheduling algorithms in cloud computing." Journal of Network and Systems Management 25.1 (2017): 122-158.

Deka, Rup Kumar, Dhruba Kumar Bhattacharyya, and Jugal Kumar Kalita. "DDoS Attacks: Tools, Mitigation Approaches, and Probable Impact on Private Cloud Environment." arXiv preprint arXiv: 1710.08628 (2017).

Pandey, Asmita. "Virtual machine performance measurement." Recent Advances in Engineering and Computational Sciences (RAECS), IEEE, 2014:1-3.

García-Valls, Marisol, Tommaso Cucinotta, and Chenyang Lu. "Challenges in real-time virtualization and predictable cloud computing." Journal of Systems Architecture 60.9 (2014): 726-740.

Gill, Sukhpal Singh, et al. "CHOPPER: an intelligent QoS-aware autonomic resource management approach for cloud computing." Cluster Computing (2017): 1-39.

Sahal, Radhya, Mohamed H. Khafagy, and Fatma A. Omara. "A Survey on SLA Management for Cloud Computing and Cloud-Hosted Big Data Analytic Applications." International Journal of Database Theory and Application 9.4 (2016): 107-118.

Singh, Sukhpal, and Inderveer Chana. "QRSF: QoS-aware resource scheduling framework in cloud computing." The Journal of Supercomputing 71.1 (2015): 241-292.

Buyya, Rajkumar, Rajiv Ranjan, and Rodrigo N. Calheiros. "Intercloud: Utilityoriented federation of cloud computing environments for scaling of application services." International Conference on Algorithms and Architectures for Parallel Processing. Springer, Berlin, Heidelberg, 2010: 13-31.

Kaur, Er Amanpreet, Bikrampal Kaur, and Dheerendra Singh. "CHALLENGES TO TASK AND WORKFLOW SCHEDULING IN CLOUD ENVIRONMENT." International Journal 8.8 (2017): 412-415.

Narayan, Vipul, et al. "A Comprehensive Review of Various Approach for Medical Image Segmentation and Disease Prediction." Wireless Personal Communications 132.3 (2023): 1819-1848.

Mall, Pawan Kumar, et al. "Rank Based Two Stage Semi-Supervised Deep Learning Model for X-Ray Images Classification: AN APPROACH TOWARD TAGGING UNLABELED MEDICAL DATASET." Journal of Scientific & Industrial Research (JSIR) 82.08 (2023): 818-830.

Narayan, Vipul, et al. "Severity of Lumpy Disease detection based on Deep Learning Technique." 2023 International Conference on Disruptive Technologies (ICDT). IEEE, 2023.

Saxena, Aditya, et al. "Comparative Analysis Of AI Regression And Classification Models For Predicting House Damages İn Nepal: Proposed Architectures And Techniques." Journal of Pharmaceutical Negative Results (2022): 6203-6215.

Kumar, Vaibhav, et al. "A Machine Learning Approach For Predicting Onset And Progression"“Towards Early Detection Of Chronic Diseases “." Journal of Pharmaceutical Negative Results (2022): 6195-6202.

Chaturvedi, Pooja, Ajai Kumar Daniel, and Vipul Narayan. "Coverage Prediction for Target Coverage in WSN Using Machine Learning Approaches." (2021).

Chaturvedi, Pooja, A. K. Daniel, and Vipul Narayan. "A Novel Heuristic for Maximizing Lifetime of Target Coverage in Wireless Sensor Networks." Advanced Wireless Communication and Sensor Networks. Chapman and Hall/CRC 227-242.

Downloads

Published

02.02.2024

How to Cite

Singh, A. K. ., Singh, H. ., & Varsney, M. . (2024). The Significance and Diversity of Task Scheduling Methods in Cloud Computing Platforms. International Journal of Intelligent Systems and Applications in Engineering, 12(14s), 644 –. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/4727

Issue

Section

Research Article