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WAF-A-MoLE: An adversarial tool for assessing ML-based WAFs

机译:WAF-A-MOLE:用于评估基于ML的WAF的对抗工具

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Web Application Firewalls (WAFs) are plug-and-play security gateways that promise to enhance the security of a (potentially vulnerable) system with minimal cost and configuration. In recent years, machine learning-based WAFs are catching up with traditional, signature-based ones. They are competitive because they do not require predefined rules; instead, they infer their rules through a learning process. In this paper, we present WAF-A-MoLE, a WAF breaching tool. It uses guided mutational-based fuzzing to generate adversarial examples. The main applications include WAF(i)penetration testing,(ii)benchmarking and(iii)hardening.
机译:Web应用程序防火墙(WAFS)是即插即用的安全网关,其承诺以提高具有最小成本和配置的(潜在易受攻击)系统的安全性。近年来,基于机器的基于机器的WAFS正在追赶传统,签名的基础。它们具有竞争力,因为它们不需要预定义规则;相反,他们通过学习过程推断他们的规则。在本文中,我们呈现WAF-A-MORE,WAF违规工具。它使用基于引导的突变的模糊来产生对抗性示例。主要应用包括WAF(i)渗透测试,(ii)基准测试和(iii)硬化。

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