Title of article :
A Heuristic Task Scheduling Algorithm for Heterogeneous Virtual Clusters
Author/Authors :
Lin, Weiwei School of Computer Science and Engineering - South China University of Technology, Guangdong, China , Wu,Wentai School of Computer Science and Engineering - South China University of Technology, Guangdong, China , Wang,James Z. School of Computing - Clemson University, USA
Abstract :
Cloud computing provides on-demand computing and storage services with high performance and high scalability. However, the rising energy consumption of cloud data centers has become a prominent problem. In this paper, we first introduce an energy-aware framework for task scheduling in virtual clusters. The framework consists of a task resource requirements prediction module, an energy estimate module, and a scheduler with a task buffer. Secondly, based on this framework, we propose a virtual machine power efficiency-aware greedy scheduling algorithm (VPEGS). As a heuristic algorithm, VPEGS estimates task energy by considering factors including task resource demands, VM power efficiency, and server workload before scheduling tasks in a greedy manner. We simulated a heterogeneous VM cluster and conducted experiment to evaluate the effectiveness of VPEGS. Simulation results show that VPEGS effectively reduced total energy consumption by more than 20% without producing large scheduling overheads. With the similar heuristic ideology, it outperformed Min-Min and RASA with respect to energy saving by about 29% and 28%, respectively.
Keywords :
Scheduling Algorithm , Cloud computing , storage services , VPEGS , energy consumption
Journal title :
Scientific Programming