Title :
Dynamic Resource Provisioning and Scheduling with Deadline Constraint in Elastic Cloud
Author :
Guan Le ; Ke Xu ; Junde Song
Author_Institution :
PCN & CAD Center, Beijing Univ. of Posts & Telecommun., Beijing, China
Abstract :
Cloud computing is the promising key technology to build future architecture of massive IT systems and one of key benefits of cloud computing is to provide its customers with elastic resources according to the fluctuation of request workloads. In this paper, we propose adaptive resource management policy to handle requests of deadline-bound application with elastic cloud. Adaptive resource management architecture has been proposed, and we divide resource management into two parts, resource provision and job scheduling. We design analytical provision model for adaptive provision based on queuing theory, by introducing a key metric named average interval time. Three job scheduling policies are raised to dequeue appropriate jobs to execute, First-Come-First-Service (FCFS), Shortest Job First (SJF) and Nearest Deadline First (NDF), for different preference toward execution order. Simulation evaluation has been set up with realistic grid workload, and results show that our provisioning model gives elastic resource provisioning for dynamic workload and FCFS achieves better performance compared with other scheduling policies.
Keywords :
cloud computing; queueing theory; resource allocation; scheduling; FCFS scheduling policy; IT system; NDF scheduling policy; SJF scheduling policy; adaptive resource management policy; analytical provision model; average interval time metric; cloud computing; deadline constraint; deadline-bound application; dynamic resource provisioning; dynamic resource scheduling; elastic cloud; execution order; first-come-first-service scheduling policy; grid workload; information technology; job scheduling; nearest deadline first scheduling policy; queuing theory; shortest job first scheduling policy; Adaptation models; Analytical models; Cloud computing; Computational modeling; Dynamic scheduling; Processor scheduling; Resource management; cloud computing; elastic; job scheduling; queue theory; resource provision;
Conference_Titel :
Service Sciences (ICSS), 2013 International Conference on
Conference_Location :
Shenzhen
Print_ISBN :
978-1-4673-6258-0
DOI :
10.1109/ICSS.2013.18