4.6 Article

A gradient-based optimization approach for task scheduling problem in cloud computing

出版社

SPRINGER
DOI: 10.1007/s10586-022-03580-9

关键词

Task scheduling; Cloud computing; Virtual machines; Gradient-based optimization; Makespan

资金

  1. National Natural Science Foundation of China [62006096]
  2. Natural Science Foundation of Fujian Province of China [2020J01699, 2020J01700, 2020J05146]
  3. Scientific Research Project of Middle-aged and Young Teachers in Fujian Province [JAT190320, JAT200244]
  4. National Foundation Cultivation Program of Jimei University [ZP2022007]
  5. Innovation Strategy Research Project of Fujian Provincial Department of Science and Technology [2020R0066]

向作者/读者索取更多资源

This paper proposes a task scheduling method based on gradient-based optimization, which converts real vector values to integer values to solve the task scheduling problem in cloud computing systems. Experimental results show that this method has better convergence speed and accuracy in searching for optimal solutions compared to current heuristic algorithms, especially in the presence of large-scale tasks.
Task scheduling in cloud computing is a key component that affects the resource usage and operating costs of the system. In order to promote the efficiency of task executions in the cloud system, many heuristic algorithms and their variants have been used to optimize scheduling. Since makespan is the vital metric of cloud computing system, most of the relevant research focuses on improving this performance. The gradient-based optimization (GBO) has a faster convergence rate, and can avoid prematurely falling into the local optimum. In this work, we propose a task scheduling based on the GBO in the cloud to improve the makespan performance. Since the GBO is proposed for continuous optimization, rounding-off method is used to convert the real vector value of the GBO to the nearest integer value, thereby representing the solution of the task scheduling problem. To evaluate the performance of the proposed GBO-based scheduling method, two experimental cases are performed. The results of the two experimental cases show that compared with current heuristic algorithms, the GBO has better convergence speed and accuracy in searching for the optimal task scheduling solution, especially in the presence of large-scale tasks.

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