首页> 外文会议>IFIP-TC 6/TC 11 international conference on communications and multimedia security >Dynamic Parameter Reconnaissance for Stealthy DoS Attack within Cloud Systems
【24h】

Dynamic Parameter Reconnaissance for Stealthy DoS Attack within Cloud Systems

机译:云系统中隐藏DOS攻击的动态参数侦察

获取原文

摘要

Public IaaS cloud environments are vulnerable to misbehaving applications and virtual machines. Moreover, cloud service availability, reliability, and ultimately reputation is specifically at risk from Denial of Service forms as it is based on resource over-commitment. In this paper, we describe a stealthy randomised probing strategy to learn thresholds used in the process of taking migration decisions in the cloud (i.e. reverse engineering of migration algorithms). These discovered thresholds are used to design a more efficient, harder to detect, and robust cloud DoS attack family. A sequence of tests is designed to extract and reveal these thresholds; these are performed by coordinating stealthily increased resource consumption among attackers whilst observing cloud management reactions to the increased demand. We can learn the required parameters by repeating the tests, observing the cloud reactions, and analysing the observations statistically. Revealing these hidden parameters is a security breach by itself; furthermore, they can be used to design a hard-to-detect DoS attack by stressing the host resources using a precise amount of workload to trigger migration. We design a formal model for migration decision processes, create a dynamic algorithm to extract the required hidden parameters, and demonstrate the utility with a specimen DoS attack.
机译:公共IAAS云环境易受行为不端的应用程序和虚拟机。此外,云服务可用性,可靠性和最终声誉专门从拒绝服务形式的风险,因为它基于资源过度承诺。在本文中,我们描述了一个隐秘的随机探测策略,用于学习在云中迁移决策过程中使用的阈值(即迁移算法的逆向工程)。这些发现的阈值用于设计更高效,更难检测和强大的云DOS攻击家庭。一系列测试旨在提取和揭示这些阈值;这些是通过协调攻击者之间的资源消耗来进行,同时观察到云管理对需求增加的反应。我们可以通过重复测试,观察云反应并统计分析观察来学习所需的参数。揭示这些隐藏参数本身是安全突发的;此外,它们可用于通过使用精确的工作负载强调主机资源来设计难以检测的DOS攻击以触发迁移。我们设计一个正式的迁移决策过程模型,创建一个动态算法来提取所需的隐藏参数,并用标本DOS攻击演示实用程序。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号