Title
Statistical-Based Heuristic for Scheduling of Independent Tasks in Cloud Computing.
Abstract
Cloud computing is an emerging and innovative technology that is used for solving large-scale complex problems. It considers as an extension to distributed and parallel computing. Additionally, it enables sharing, organizing and aggregation of computational machines to satisfy the user demands. One of the main goals of the task scheduling is to minimize the makespan (i.e. the overall processing time) and maximize the machine utilization. This paper addresses the problem of how to schedule many independent tasks when using different machines. It introduces two batch mode heuristics algorithms for scheduling independent task in the computational cloud environment, high mean absolute deviation first heuristic and QoS Guided Sufferage-HMADF heuristic. Besides, the paper presented other existing batch mode heuristics such as, Min-Min, Max-Min and Sufferage. The four heuristic modes are simulated and the experimental results are discussed using two performance measures, makespan and machine resource utilization.
Year
Venue
Field
2018
IJCNIS
Heuristic,Job shop scheduling,Scheduling (computing),Computer science,Quality of service,Absolute deviation,Heuristics,Batch processing,Distributed computing,Cloud computing
DocType
Volume
Issue
Journal
10
2
Citations 
PageRank 
References 
0
0.34
0
Authors
2
Name
Order
Citations
PageRank
Ahmad Alqerem1152.68
Ala Hamarsheh201.69