Title of article :
A Task Scheduling Strategy in Edge-Cloud Collaborative Scenario Based on Deadline
Author/Authors :
Wang, Shudong College of Computer Science and Technology - China University of Petroleum, China , Li, Yanqing College of Computer Science and Technology - China University of Petroleum, China , Pang, Shanchen College of Computer Science and Technology - China University of Petroleum, China , Lu,Qinghua Data61, Eveleigh, NSW, Australia , Wang,Shuyu College of Computer Science and Engineering - Shandong University of Science and Technology, China
Pages :
9
From page :
1
To page :
9
Abstract :
Task scheduling plays a critical role in the performance of the edge-cloud collaborative. Whether the task is executed in the cloud and how it is scheduled in the cloud is an important issue. On the basis of satisfying the delay, this paper will schedule tasks on edge devices or cloud and present a task scheduling algorithm for tasks that need to be transferred to the cloud based on the catastrophic genetic algorithm (CGA) to achieve global optimum. The algorithm quantifies the total task completion time and the penalty factor as a fitness function. By improving the roulette selection strategy, optimizing mutation and crossover operator, and introducing cataclysm strategy, the search scope is expanded. Furthermore, the premature problem of the evolutionary algorithm is effectively alleviated. The experimental results show that the algorithm can address the optimal local issue while significantly shortening the task completion time on the basis of satisfying tasks delays.
Keywords :
Scheduling Strategy , Edge-Cloud , Collaborative Scenario , Deadline
Journal title :
Scientific Programming
Serial Year :
2020
Full Text URL :
Record number :
2611117
Link To Document :
بازگشت