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AICrypto: Evaluating Cryptography Capabilities of Large Language Models

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arxiv 2507.09580 v6 pith:EP5H4BYN submitted 2025-07-13 cs.CR

AICrypto: Evaluating Cryptography Capabilities of Large Language Models

classification cs.CR
keywords cryptographyhumanllmsmodelsaicryptoanalysisbenchmarkcapabilities
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We build \textbf{AICrypto}, a comprehensive benchmark designed to evaluate the cryptography capabilities of large language models (LLMs). The benchmark comprises 135 multiple-choice questions, 150 capture-the-flag challenges, and 30 proof problems, covering a broad range of skills from knowledge memorization to vulnerability exploitation and formal reasoning. All tasks are carefully reviewed or constructed by cryptography experts to improve correctness and rigor. For each proof problem, we provide detailed scoring rubrics and reference solutions that enable automated grading, achieving high correlation with human expert evaluations. We introduce strong human expert performance baselines for comparison across all task types. Our evaluation of 17 leading LLMs reveals that state-of-the-art models match or even surpass human experts in memorizing cryptographic concepts, exploiting common vulnerabilities, and routine proofs. However, our analysis reveals that they still lack a deep understanding of abstract mathematical concepts and struggle with tasks that require multi-step reasoning and dynamic analysis. We hope this work could provide insights for future research on LLMs in cryptographic applications. Our code and dataset are available at https://github.com/wangyu-ovo/aicrypto-agent.

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