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SDBF: Smart DNS brute-forcer

机译:SDBF:智能DNS蛮力

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摘要

The structure of the domain name is highly relevant for providing insights into the management, organization and operation of a given enterprise. Security assessment and network penetration testing are using information sourced from the DNS service in order to map the network, perform reconnaissance tasks, identify services and target individual hosts. Tracking the domain names used by popular Botnets is another major application that needs to undercover their underlying DNS structure. Current approaches for this purpose are limited to simplistic brute force scanning or reverse DNS, but these are unreliable. Brute force attacks depend of a huge list of known words and thus, will not work against unknown names, while reverse DNS is not always setup or properly configured. In this paper, we address the issue of fast and efficient generation of DNS names and describe practical experiences against real world large scale DNS names. Our approach is based on techniques derived from natural language modeling and leverage Markov Chain Models in order to build the first DNS scanner (SDBF) that is leveraging both, training and advanced language modeling approaches.
机译:域名的结构与提供对特定企业的管理,组织和运营的见解非常相关。安全评估和网络渗透测试使用来自DNS服务的信息来映射网络,执行侦察任务,识别服务并以单个主机为目标。跟踪流行的僵尸网络使用的域名是另一个主要应用程序,需要了解其基础DNS结构。当前用于此目的的方法仅限于简单的暴力扫描或反向DNS,但这些方法不可靠。蛮力攻击取决于大量已知单词,因此不会针对未知名称起作用,而反向DNS并非始终设置或正确配置。在本文中,我们解决了快速高效地生成DNS名称的问题,并描述了针对现实世界中大规模DNS名称的实践经验。我们的方法基于自然语言建模衍生的技术,并利用马尔可夫链模型来构建首个同时利用培训和高级语言建模方法的DNS扫描器(SDBF)。

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