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Cloud Based Malware Detection Technique

机译:基于云的恶意软件检测技术

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摘要

Security is one of the major concerns in cloud computing now-a-days. Malicious code deployment is the main cause of threat in today's cloud paradigm. Antivirus software unable to detect many modern malware threats which causes serious impacts in basic cloud operations. This paper counsels a new model for malware detection on cloud architecture. This model enables identification of malicious and unwanted software by amalgamation of multiple detection engines. This paper follows DNA sequence detection process, symbolic detection process, and behavioural detection process to detect various threats. The proposed approach (PMDM) can be deployed on a VMM which remains fully transparent to guest VM and to cloud users. However, PMDM prevents the malicious code running in one VM (infected VM) to spread into another noninfected VM with help of hosted VMM. After detecting malicious code by PMDM technique, it warns the other guest VMs about it. In this paper, a prototype of PMDM is partially implemented on one popular open-source cloud architecture-Eucalyptus.
机译:安全是现在云计算的主要问题之一 - 天天。恶意代码部署是当今云范例中威胁的主要原因。防病毒软件无法检测到许多现代恶意软件威胁,这会导致基本云运行中的严重影响。本文为云架构进行了一个新模型的恶意软件检测模型。该模型通过扫描多个检测引擎,可以通过扫描来识别恶意和不需要的软件。本文遵循DNA序列检测过程,符号检测过程和行为检测过程来检测各种威胁。所提出的方法(PMDM)可以部署在VMM上,该VMM对Guest VM和云用户保持完全透明。但是,PMDM可防止在一个VM(受感染的VM)中运行的恶意代码在托管VMM的帮助下传播到另一个无感染的VM。通过PMDM技术检测恶意代码后,它会警告其它访客VM。在本文中,PMDM的原型在一个流行的开源云架构 - 桉树上部分地实现。

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