Cloud Computing Resource Prediction Model Based on Time Convolutional Network

Author:

Feng Xin1ORCID,Gao Haibo1ORCID,Zhang Cheng1ORCID

Affiliation:

1. College of Information and Electrical Engineering, Hunan International Economics University, ChangSha, Hunan, China

Abstract

With the continuous progress and development of modern science and technology, the research on cloud computing-related fields is constantly conducting more in-depth exploration. During the real-life use of cloud computing operations, as the number of tenants continues to increase, the resource usage load capacity of the relevant platform has also undergone tremendous changes. In order to enable the tenants to complete higher-level optimization of the relevant performance and indicators during the actual work of the platform, this article explains how to perform related network resource models on the premise of cloud computing operation management. The researchers used this cloud computing network operation forecasting system as the basic point of view for experimental research and explained and summarized all relevant research results and specific instructions on multivariable load sequences in detail. The multivariable load sequence is embedded in the dimension of the phase space in the calculation process, and the generalization operation from single variable to multivariable can be carried out. However, every time the expansion calculation is performed, the selection criteria available for the researcher to calculate will be reduced, making the result a reconstructed phase space with uncertainty. Therefore, in order to ensure the accuracy of the data of the research experiment results, the researchers must simplify the model, focus on further discussing the correlation between multivariable load sequences in the mechanism, and reduce the number of data calculations in the process. The redundant information generated can select more reasonable data information as input variables in the research process.

Funder

Hunan Provincial Department of Education Scientific Research Outstanding Youth Project

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

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