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Automated Post-Breach Penetration Testing through Reinforcement Learning

机译:通过强化学习进行自动化的突破后渗透测试

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Predicting cyber attacks to networks is ever present challenges in the security domain. Rapid growth of Artificial Intelligence (AI) has made this even more challenging as machine learning algorithms are now used to attack such systems while defense systems continue to protect them with traditional approaches. Penetration testing (pentest) has long been one way to prevent security breaches by mimicking black hat hackers to expose possible exploits and vulnerabilities. Using trained machine learning agents to automate this process is an important research area that still needs to be explored. The objective of this paper is to apply machine learning in the post-exploitation phase of penetration testing to assess the vulnerability of the system and hence, contribute to the automation process of penetration testing. We train the agent using reinforcement learning by providing an appropriate environment to explore a compromised network and find sensitive files. By utilizing several different network environments during training, we hope to generalize our agent as much as possible, allowing for more widespread application. Extended research may include training our agent for further lateral exploration and exploitation in the system.
机译:预测对网络的网络攻击一直是安全领域中的挑战。人工智能(AI)的快速发展使这一挑战变得更加艰巨,因为如今机器学习算法已被用于攻击此类系统,而防御系统则继续使用传统方法来保护它们。渗透测试(最底层)一直是通过模仿黑帽黑客来暴露可能的漏洞和漏洞来防止安全漏洞的一种方法。使用训练有素的机器学习代理来自动化此过程是一个重要的研究领域,仍然需要探索。本文的目的是将机器学习应用于渗透测试的开发后阶段,以评估系统的脆弱性,从而为渗透测试的自动化过程做出贡献。我们通过提供适当的环境来探索受感染的网络并查找敏感文件,从而通过强化学习来训练代理。通过在培训过程中利用几种不同的网络环境,我们希望尽可能地推广我们的代理,以实现更广泛的应用。扩展的研究可能包括培训我们的代理商以进行系统中的进一步侧向勘探和开发。

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