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Detecting Malware Attack on Cloud using Deep Learning Vector Quantization

机译:使用深度学习矢量量化检测对云的恶意软件攻击

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In recent times cloud services are used widely and due to which there are so many attacks on the cloud devices. One of the major attacks is DDos (distributed denial-of-service) -attack which mainly targeted the Memcached which is a caching system developed for speeding the websites and the networks through Memcached’s database. The DDoS attack tries to destroy the database by creating a flood of internet traffic at the targeted server end. Attackers send the spoofing applications to the vulnerable UDP Memcached server which even manipulate the legitimate identity of the sender. In this work, we have proposed a vector quantization approach based on a supervised deep learning approach to detect the Memcached attack performed by the use of malicious firmware on different types of Cloud attached devices. This vector quantization approach detects the DDoas attack performed by malicious firmware on the different types of cloud devices and this also classifies the applications which are vulnerable to attack based on cloud-The Hackbeased services. The result computed during the testing shows the 98.2 % as legally positive and 0.034% as falsely negative.
机译:近年来,云服务被广泛使用,因此,对云设备的攻击如此之多。主要攻击之一是DDos(分布式拒绝服务)攻击,主要针对Memcached,Memcached是一种缓存系统,旨在通过Memcached的数据库加快网站和网络的访问速度。 DDoS攻击试图通过在目标服务器端创建大量互联网流量来破坏数据库。攻击者将欺骗性应用程序发送到易受攻击的UDP Memcached服务器,该服务器甚至操纵发送者的合法身份。在这项工作中,我们提出了一种基于监督型深度学习方法的矢量量化方法,以检测在不同类型的云连接设备上使用恶意固件执行的Memcached攻击。这种矢量量化方法可以检测到由恶意固件在不同类型的云设备上执行的DDoas攻击,并且还可以基于Cloud- Hackbeased服务对容易受到攻击的应用程序进行分类。测试期间计算出的结果显示98.2%为合法阳性,而0.034%为假阴性。

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