用于自动异常检测的云计算数字取证框架

Alecsandru Patrascu, M. Velciu, V. Patriciu
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引用次数: 6

摘要

云计算是当今数字环境中使用的最重要的范例之一,因为它们为用户提供了诸如虚拟机租用、数字信息备份、访问存储数据的便利性等诸多好处。随着这些技术使用量的增加,我们需要在数据中心级别详细了解计算节点之间的信息流。更确切地说,在哪个服务器上处理数据,如何在物理或虚拟级别上操作和存储数据。为了全面了解正在发生的事情,我们需要有一个集中的系统,可以收集有关数据中心状态的数据,并将它们与已知的异常和其他使用模式相关联,以便在发生安全漏洞时采取相应的行动。在本文中,我们提出了一种监视存在于数据中心级别的正在运行的虚拟机的新方法。我们将讨论架构,以及我们如何使用收集的信息来训练我们的自动异常机器学习模块。我们还介绍了一些实现细节和实验装置的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud computing digital forensics framework for automated anomalies detection
Cloud Computing is one of the most important paradigms used in today's digital environment because they offer to the user benefits such as virtual machine renting, digital information backup, ease of access to stored data and many other. Together with the increased usage of these technologies, at the datacenter level we need to know in detail the information flux between the computing nodes. More exactly, on which server the data is processed, how it is manipulated and stored at the physical or virtual level. To have a full picture of what it is going on we need to have a centralized system that can collect data regarding about the datacenters status and correlate them with known anomalies and other usage patterns and in case of a security breach to act accordingly. In this paper we present a new way to monitor running virtual machines existing at a datacenter level. We will talk about the architecture, and how we use the information collected to train our automated anomalies machine learning modules. We also present some implementation details and results taken from the experimental setup.
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