Scheduling Real-Time Parallel Applications in Cloud to Minimize Energy Consumption
Document Type
Article
Publication Date
1-1-2022
Abstract
Cloud computing has become an important paradigm in which scalable resources such as CPU, memory, disk and IO devices can be provided to users to remotely process their applications. In a cloud computing platform, energy consumption accounts for a significant cost portion. This article thus aims to present an energy-efficient scheduling algorithm for processing a user application with a real-time requirement. This problem is formulated as a non-linear mixed integer programming problem. We start with providing an optimal closed-form solution to its relaxation problem that aims to minimize the energy consumption without considering real-time requirements. To meet real-time requirements, we propose how to adjust task placement and resource allocation by making a good tradeoff between energy consumption and task execution time. Lastly, we find two equivalent optimal resource allocation strategies once task placement has been done. We then propose to adjust the start time of task execution such that an application's completion time can be further shortened. Experimental results on two real-case enchmarks and extensive synthetic applications demonstrate that our proposed method finds a schedule that generally has 30 and 20 percent less energy consumption than enhancement heterogeneous earliest finish time (E-HEFT) and genetic algorithm, respectively. Besides, the proposed method has a higher rate to successfully find a feasible schedule than them, and its computation time is close to E-HEFT's, but far less than the genetic algorithm's.
Identifier
85076029251 (Scopus)
Publication Title
IEEE Transactions on Cloud Computing
External Full Text Location
https://doi.org/10.1109/TCC.2019.2956498
e-ISSN
21687161
First Page
662
Last Page
674
Issue
1
Volume
10
Recommended Citation
Hu, Biao; Cao, Zhengcai; and Zhou, Mengchu, "Scheduling Real-Time Parallel Applications in Cloud to Minimize Energy Consumption" (2022). Faculty Publications. 3487.
https://digitalcommons.njit.edu/fac_pubs/3487