Kewei Sun, Jie Qiu, et al.
NOMS 2008
Large data centers usually host many different services on a shared computing infrastructure, for which on-demand resource management is necessary to maximize providers' revenues by meeting service quality targets at least operational cost. This paper presents a novel architecture of autonomic resource management framework based on virtualized Service-Oriented Computing (SOC) environment. A non-linear continuous optimization problem is defined for adaptive resource allocation and a model-based approach is adopted to solve this problem. Different from traditional approaches, the analytic model we established provides probabilistic performance guarantees and considers non-steady-state behavior assisted by admission control. Results of prototype experiments demonstrate that the performance of multiple services has been greatly improved by taking advantage of fine-grained resource sharing, while incurring much lower resource usage cost. Also, differentiated service qualities could be provided to different client classes through our dynamic resource allocation scheme. ©2008 IEEE.
Kewei Sun, Jie Qiu, et al.
NOMS 2008
Bikram Sengupta, Nilanjan Banerjee, et al.
NOMS 2008
Zhenghua Fu, Hao Yang
NOMS 2008
Wei Wang, Hao Wang, et al.
NOMS 2008