An Architecture for Security and Protection of Big Data

F. A. S. Abad, H. Hamidi
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引用次数: 10

Abstract

The issue of online privacy and security is a challenging subject, as it concerns the privacy of data that are increasingly more accessible via the internet. In other words, people who intend to access the private information of other users can do so more efficiently over the internet. This study is an attempt to address the privacy issue of distributed big data in the context of cloud computing. One of the cases where data privacy is of great importance is the authentication and protection of ownership data. In this paper, this privacy issue is analyzed by Petri net modeling. What today’s organizations need for their clouds are integrated comprehensive solutions that can deliver security intelligence. Advanced security intelligence solutions can close security gaps by using labor-saving automation to analyze millions of events occurring within the cloud, and discover system vulnerabilities through the normalization and correlation of these events. Using the proposed method, a model of security, including control of user access to databases of big data with RMS, the multiplicity and the virtual machine to prevent internal threats, deleting data, insecure or incomplete data protection and control of a third-party can be provided to improve the operation according to the rules of Petri net modeling and simulation.
大数据安全与保护体系结构
在线隐私和安全问题是一个具有挑战性的主题,因为它涉及到越来越多的通过互联网访问的数据的隐私。换句话说,想要访问其他用户的私人信息的人可以通过互联网更有效地做到这一点。本研究试图解决云计算背景下分布式大数据的隐私问题。数据隐私非常重要的情况之一是所有权数据的身份验证和保护。本文采用Petri网模型对这一隐私问题进行了分析。当今的组织需要的是能够提供安全智能的集成综合解决方案。高级安全智能解决方案可以通过使用节省人力的自动化来分析云中发生的数百万个事件,并通过这些事件的规范化和相关性发现系统漏洞,从而缩小安全漏洞。利用所提出的方法,可以根据Petri网建模和仿真的规则,提供一个安全模型,包括使用RMS控制大数据的用户访问数据库、多重性和虚拟机来防止内部威胁、删除数据、第三方不安全或不完整的数据保护和控制,以改进操作。
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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CiteScore
3.10
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0.00%
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