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SkillAttack: Automated Red Teaming of Agent Skills through Attack Path Refinement

About

LLM-based agent systems increasingly rely on agent skills sourced from open registries to extend their capabilities, yet the openness of such ecosystems makes skills difficult to thoroughly vet. Existing attacks rely on injecting malicious instructions into skills, making them easily detectable by static auditing. However, non-malicious skills may also harbor latent vulnerabilities that an attacker can exploit solely through adversarial prompting, without modifying the skill itself. We introduce SkillAttack, a red-teaming framework that dynamically verifies skill vulnerability exploitability through adversarial prompting. SkillAttack combines vulnerability analysis, surface-parallel attack generation, and feedback-driven exploit refinement into a closed-loop search that progressively converges toward successful exploitation. Experiments across 10 LLMs on 71 adversarial and 100 real-world skills show that SkillAttack outperforms all baselines by a wide margin (ASR 0.73--0.93 on adversarial skills, up to 0.26 on real-world skills), revealing that even well-intended skills pose serious security risks under realistic agent interactions.

Zenghao Duan, Yuxin Tian, Zhiyi Yin, Liang Pang, Jingcheng Deng, Zihao Wei, Shicheng Xu, Yuyao Ge, Xueqi Cheng• 2026

Related benchmarks

TaskDatasetResultRank
Attack Success Rate EvaluationSKILL-INJECT Obvious
ASR93
30
Attack Success Rate EvaluationSKILL-INJECT Contextual
Attack Success Rate (ASR)56
30
Attack Success Rate EvaluationHot100
ASR26
20
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