DEPAS: a decentralized probabilistic algorithm for auto-scaling

被引:0
作者
Nicolò M. Calcavecchia
Bogdan A. Caprarescu
Elisabetta Di Nitto
Daniel J. Dubois
Dana Petcu
机构
[1] Politecnico di Milano,Dipartimento di Elettronica e Informazione
[2] West University of Timisoara,IeAT, Faculty of Mathematics and Computer Science
来源
Computing | 2012年 / 94卷
关键词
Auto-scaling; Cloud computing; Self-organization; 68M14; 68W15; 68M20;
D O I
暂无
中图分类号
学科分类号
摘要
The dynamic provisioning of virtualized resources offered by cloud computing infrastructures allows applications deployed in a cloud environment to automatically increase and decrease the amount of used resources. This capability is called auto-scaling and its main purpose is to automatically adjust the scale of the system that is running the application to satisfy the varying workload with minimum resource utilization. The need for auto-scaling is particularly important during workload peaks, in which applications may need to scale up to extremely large-scale systems. Both the research community and the main cloud providers have already developed auto-scaling solutions. However, most research solutions are centralized and not suitable for managing large-scale systems, moreover cloud providers’ solutions are bound to the limitations of a specific provider in terms of resource prices, availability, reliability, and connectivity. In this paper we propose DEPAS, a decentralized probabilistic auto-scaling algorithm integrated into a P2P architecture that is cloud provider independent, thus allowing the auto-scaling of services over multiple cloud infrastructures at the same time. Our experiments (simulations and real deployments), which are based on real service traces, show that our approach is capable of: (i) keeping the overall utilization of all the instantiated cloud resources in a target range, (ii) maintaining service response times close to the ones obtained using optimal centralized auto-scaling approaches.
引用
收藏
页码:701 / 730
页数:29
相关论文
共 43 条
[1]  
Adam C(2006)A middleware design for large-scale clusters offering multiple services IEEE Trans Netw Service Manag 3 1-12
[2]  
Stadler R(2010)Joint admission control and resource allocation in virtualized servers J Parallel Distrib Comput 70 344-362
[3]  
Almeida J(2010)A view of cloud computing Commun ACM 53 50-58
[4]  
Almeida V(2004)Rainbow: architecture-based self-adaptation with reusable infrastructure Computer 37 46-54
[5]  
Ardagna D(2012)Feedback-based optimization of a private cloud Future Generation Comput Syst 28 104-111
[6]  
Cunha I(2011)Adaptive resource provisioning for read intensive multi-tier applications in the cloud Future Generation Comput Syst 27 871-879
[7]  
Francalanci C(2007)Gossip-based peer sampling ACM Trans Comput Syst 25 1-36
[8]  
Trubian M(2009)Sky computing Internet Comput IEEE 13 43-51
[9]  
Armbrust M(2003)The vision of autonomic computing Computer 36 41-50
[10]  
Fox A(undefined)undefined undefined undefined undefined-undefined