Off the beaten path: machine learning for offensive security

Konrad Rieck
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引用次数: 2

Abstract

Machine learning has been widely used for defensive security. Numerous approaches have been devised that make use of learning techniques for detecting attacks and malicious software. By contrast, only very few research has studied how machine learning can be applied for offensive security. In this talk, we will explore this research direction and show how learning methods can be used for discovering vulnerabilities in software, finding information leaks in protected data, or supporting network reconnaissance. We discuss advantages and challenges of learning for offensive security as well as identify directions for future research.
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另类:用于攻击性安全的机器学习
机器学习已被广泛用于防御安全。已经设计了许多方法,利用学习技术来检测攻击和恶意软件。相比之下,只有很少的研究研究了如何将机器学习应用于攻击性安全。在这次演讲中,我们将探讨这一研究方向,并展示如何使用学习方法来发现软件中的漏洞,发现受保护数据中的信息泄漏,或支持网络侦察。我们讨论了进攻安全学习的优势和挑战,并确定了未来研究的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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