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Virtual Machine Allocation Strategy Based on Statistical Machine Learning

Author

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  • Bo Han
  • Rongli Zhang
  • Zaoli Yang

Abstract

At present, big data cloud computing has been widely used in many enterprises, and it serves tens of millions of users. One of the core technologies of big data cloud service is computer virtualization technology. The reasonable allocation of virtual machines on available hosts is of great significance to the performance optimization of cloud computing. We know that with the continuous development of information technology and the increasing number of computer users, different virtualization technologies and the increasing number of virtual machines in the network make the effective allocation of virtualization resources more and more difficult. In order to solve and optimize this problem, we propose a virtual machine allocation algorithm based on statistical machine learning. According to the resource requirements of each virtual machine in cloud service, the corresponding comprehensive performance analysis model is established, and the reasonable virtual machine allocation algorithm description of the host in the resource pool is realized according to the virtualization technology type or mode provided by the model. Experiments show that this method has the advantages of overall performance, load balancing, and supporting different types of virtualization.

Suggested Citation

  • Bo Han & Rongli Zhang & Zaoli Yang, 2022. "Virtual Machine Allocation Strategy Based on Statistical Machine Learning," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-6, July.
  • Handle: RePEc:hin:jnlmpe:8190296
    DOI: 10.1155/2022/8190296
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