Task scheduling plays a major role in cloud computing that creates a direct impact on performance issues and reduces the system load. In this paper, a novel task scheduling algorithm has proposed for the optimization of multi-objective problem in the cloud environment. It addresses a model to define the demand of resources by a job. It gives a relationship between the resources and costs within a project. The scheduling of multi-objective problem is optimized with the use of ant colony optimization algorithm. The evaluation of the cost and performance of the task has two major constraints considered as makespan and budget’s cost. The two considered constraints will make the algorithm to achieve the optimal result within time and enhance the quality of performance of the system considered. This method is very powerful than other methods with single objectives considered such as makespan, utilization of resources, violation of deadline rate and cost.
CITATION STYLE
Myneni, M. B., & Sirivella, S. A. (2021). A Multi-objective Optimization Scheduling Algorithm in Cloud Computing. In Lecture Notes in Networks and Systems (Vol. 127, pp. 57–65). Springer. https://doi.org/10.1007/978-981-15-4218-3_6
Mendeley helps you to discover research relevant for your work.