Title :
A workload prediction-based multi-VM provisioning mechanism in cloud computing
Author :
Shengming Li ; Ying Wang ; Xuesong Qiu ; Deyuan Wang ; Lijun Wang
Author_Institution :
State Key Laboratory of Networking and Switching Technology, Beijing University of Posts and Telecommunications, China
Abstract :
With the emerging of cloud computing, more and more enterprise organizations begin to migrate their applications to IaaS, which is a more flexible and cheaper alternative to traditional infrastructures. IaaS providers usually offer customers with resources in the form of VM and charge them in a time-based billing model. Meanwhile customers are allowed to dynamically apply for VM resources. However, highly dynamic workload makes customers difficultly determine how much capacity to provision. Furthermore, it is also a great challenge for customers to determine how to choose a VM provisioning scheme to match workload at a low cost. In this paper, we propose a workload prediction-based multi-VM provisioning mechanism to overcome these challenges, which contains an ARIMA workload predictor with dynamic error compensation (ARIMA-DEC) and a time-based billing aware multi-VM provisioning algorithm (TBAMP). The experimental results show that ARIMA-DEC predictor can obviously reduce SLA default rate and TBAMP algorithm can effectively save rental cost comparing to the existing algorithms.
Keywords :
IaaS; cloud computing; multi-VM provisioning; workload prediction;
Conference_Titel :
Network Operations and Management Symposium (APNOMS), 2013 15th Asia-Pacific
Conference_Location :
Hiroshima, Japan