智能,自动红队模拟

A. Applebaum, Doug Miller, Blake E. Strom, Chris Korban, Ross Wolf
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引用次数: 60

摘要

红队通过主动探测网络的弱点和漏洞,在评估网络安全性方面发挥着关键作用。与渗透测试不同——渗透测试通常侧重于利用漏洞——红队通过模拟真正的对手来评估网络的整个状态,包括他们的技术、战术、程序和目标。不幸的是,部署红队是令人望而却步的:成本、可重复性和专业知识都使得始终如一地使用红队测试变得困难。我们试图通过创建一个自动化红队模拟的框架来解决这个问题,重点关注红队在妥协后所做的事情——即,在边界被突破之后。在这里,我们的程序就像一个自动化的智能红队,积极地在目标网络中移动,以测试弱点并训练防御者。在其核心,我们的框架使用了一个自动计划器,用于在面对红队场景中的大量不确定性时准确地推断未来的计划。我们的解决方案是定制开发的,基于网络环境和对手档案的逻辑编码,使用经典规划,马尔可夫决策过程和蒙特卡罗模拟的技术。在本文中,我们报告了我们的框架的发展,重点是我们的规划系统。我们已经通过自定义模拟成功地验证了我们的计划器与其他技术的对比。我们的工具本身已经成功地用于识别漏洞,目前用于训练防御蓝队。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent, automated red team emulation
Red teams play a critical part in assessing the security of a network by actively probing it for weakness and vulnerabilities. Unlike penetration testing - which is typically focused on exploiting vulnerabilities - red teams assess the entire state of a network by emulating real adversaries, including their techniques, tactics, procedures, and goals. Unfortunately, deploying red teams is prohibitive: cost, repeatability, and expertise all make it difficult to consistently employ red team tests. We seek to solve this problem by creating a framework for automated red team emulation, focused on what the red team does post-compromise - i.e., after the perimeter has been breached. Here, our program acts as an automated and intelligent red team, actively moving through the target network to test for weaknesses and train defenders. At its core, our framework uses an automated planner designed to accurately reason about future plans in the face of the vast amount of uncertainty in red teaming scenarios. Our solution is custom-developed, built on a logical encoding of the cyber environment and adversary profiles, using techniques from classical planning, Markov decision processes, and Monte Carlo simulations. In this paper, we report on the development of our framework, focusing on our planning system. We have successfully validated our planner against other techniques via a custom simulation. Our tool itself has successfully been deployed to identify vulnerabilities and is currently used to train defending blue teams.
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