Loading [MathJax]/extensions/MathZoom.js
ControCity: An Autonomous Approach for Controlling Elasticity Using Buffer Management in Cloud Computing Environment | IEEE Journals & Magazine | IEEE Xplore

ControCity: An Autonomous Approach for Controlling Elasticity Using Buffer Management in Cloud Computing Environment


The proposed ControCity framework, is for controlling elasticity in a cloud platform. It includes two major components named the buffer manager and elasticity manager. Th...

Abstract:

Cloud computing has been one of the most popular distributed computing paradigms. Elasticity is a crucial feature that distinguishes cloud computing from other distribute...Show More
Topic: Mobile Edge Computing and Mobile Cloud Computing: Addressing Heterogeneity and Energy Issues of Compute and Network Resources

Abstract:

Cloud computing has been one of the most popular distributed computing paradigms. Elasticity is a crucial feature that distinguishes cloud computing from other distributed computing models. It considers the resource provisioning and allocation processes can be implemented automatically and dynamically. Elasticity feature allows cloud platforms to handle different loads efficiently without disrupting the normal behavior of the application. Therefore, providing a resource elasticity analytical model can play a significant role in cloud resource management. This paper presents Controlling Elasticity (ControCity) framework for controlling resources elasticity through using “buffer management ” and “elasticity management ”. In the proposed framework, there are two essential components called buffer manager and elasticity manager in the application layer and middleware layer, respectively. The buffer management controls the input queue of the user's request and the elasticity management controls the elasticity of the cloud platform using learning automata technique. In the application layer, applications are received by cloud applications and, then, placed in the control of the buffer. Buffer manager controls the queue of requests, and elasticity manager of the middleware layer using the learning automata provides a solution for controlling the elasticity of the cloud platform. The experimental results indicate that the ControCity reduces the response time by up to 3.7%, and increases the resource utilization and elasticity by up to 8.4% and 5.4%, respectively, compared with the other approaches.
Topic: Mobile Edge Computing and Mobile Cloud Computing: Addressing Heterogeneity and Energy Issues of Compute and Network Resources
The proposed ControCity framework, is for controlling elasticity in a cloud platform. It includes two major components named the buffer manager and elasticity manager. Th...
Published in: IEEE Access ( Volume: 7)
Page(s): 106912 - 106924
Date of Publication: 01 August 2019
Electronic ISSN: 2169-3536

References

References is not available for this document.