Secure Cloud Auditability for Virtual Machines by Adaptive Characterization Using Machine Learning Methods

Q1 Engineering
Shesagiri Taminana, Lalitha Bhaskari, Arwa A. Mashat, D. Pamučar, Haritha Akkineni
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引用次数: 0

Abstract

With the Present days increasing demand for the higher performance with the application developers have started considering cloud computing and cloud-based data centres as one of the prime options for hosting the application. Number of parallel research outcomes have for making a data centre secure, the data centre infrastructure must go through the auditing process. During the auditing process, auditors can access VMs, applications and data deployed on the virtual machines. The downside of the data in the VMs can be highly sensitive and during the process of audits, it is highly complex to permits based on the requests and can increase the total time taken to complete the tasks. Henceforth, the demand for the selective and adaptive auditing is the need of the current research. However, these outcomes are criticised for higher time complexity and less accuracy. Thus, this work proposes a predictive method for analysing the characteristics of the VM applications and the characteristics from the auditors and finally granting the access to the virtual machine by building a predictive regression model. The proposed algorithm demonstrates 50% of less time complexity to the other parallel research for making the cloud-based application development industry a safer and faster place.
使用机器学习方法通过自适应表征确保虚拟机的云可听性
随着当今对更高性能的需求不断增加,应用程序开发人员已经开始考虑将云计算和基于云的数据中心作为托管应用程序的主要选择之一。为了确保数据中心的安全,数据中心基础设施必须经过审计程序,因此有许多平行的研究结果。在审核过程中,审核人员可以访问部署在虚拟机上的虚拟机、应用程序和数据。虚拟机中数据的缺点可能非常敏感,在审计过程中,根据请求进行许可非常复杂,并且可能会增加完成任务所需的总时间。因此,对选择性和适应性审计的需求是当前研究的需要。然而,这些结果被批评为更高的时间复杂性和更低的准确性。因此,这项工作提出了一种预测方法,用于分析虚拟机应用程序的特性和来自审计员的特性,并通过建立预测回归模型最终授予对虚拟机的访问权限。所提出的算法与其他并行研究相比,时间复杂性降低了50%,使基于云的应用程序开发行业成为一个更安全、更快的地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.90
自引率
0.00%
发文量
25
审稿时长
15 weeks
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