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Research on Cloud Computing Resources Provisioning Based on Reinforcement Learning

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  • Zhiping Peng
  • Delong Cui
  • Jinglong Zuo
  • Weiwei Lin

Abstract

As one of the core issues for cloud computing, resource management adopts virtualization technology to shield the underlying resource heterogeneity and complexity which makes the massive distributed resources form a unified giant resource pool. It can achieve efficient resource provisioning by using the rational implementing resource management methods and techniques. Therefore, how to manage cloud computing resources effectively becomes a challenging research topic. By analyzing the executing progress of a user job in the cloud computing environment, we proposed a novel resource provisioning scheme based on the reinforcement learning and queuing theory in this study. With the introduction of the concepts of Segmentation Service Level Agreement (SSLA) and Utilization Unit Time Cost (UUTC), we viewed the resource provisioning problem in cloud computing as a sequential decision issue, and then we designed a novel optimization object function and employed reinforcement learning to solve it. Experiment results not only demonstrated the effectiveness of the proposed scheme, but also proved to outperform the common methods of resource utilization rate in terms of SLA collision avoidance and user costs.

Suggested Citation

  • Zhiping Peng & Delong Cui & Jinglong Zuo & Weiwei Lin, 2015. "Research on Cloud Computing Resources Provisioning Based on Reinforcement Learning," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-12, September.
  • Handle: RePEc:hin:jnlmpe:916418
    DOI: 10.1155/2015/916418
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