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# Shannon AI: Achieving 96% Success on the hint-free XBOW Benchmark
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# Achieving 96% Success on the hint-free XBOW Benchmark
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Shannon Lite, our open-source AI pentester, achieved a **96% success rate (100/104 exploits)** on a systematically cleaned, hint-free version of the XBOW security benchmark. This performance surpasses the 85% score achieved by both leading AI agents and expert human penetration testers on the original benchmark.
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Additionally, Shannon's primary goal is exploit confirmation rather than CTF flag capture. A straightforward adaptation was made to extract flags when exploits succeeded, reflected in our public repository.
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**Performance note:** Current runtime averages 1.5 hours for the full benchmark suite. API costs range from $16-50 depending on target complexity.
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---
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**Data sources:**
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1. [XBOW vs Humans](https://xbow.com/blog/xbow-vs-humans)
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2. [Cyber-AutoAgent Performance Analysis](https://medium.com/data-science-collective/from-single-agent-to-meta-agent-building-the-leading-open-source-autonomous-cyber-agent-e1b704f81707)
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3. [Building the Leading Open Source Pentesting Agent](https://medium.com/data-science-collective/building-the-leading-open-source-pentesting-agent-architecture-lessons-from-xbow-benchmark-f6874f932ca4)
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---
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*Built with ❤️ by the Keygraph team*
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