Zhifan Luo (Zhejiang University), Shuo Shao (Zhejiang University), Su Zhang (Huawei Technology), Lijing Zhou (Huawei Technology), Yuke Hu (Zhejiang University), Chenxu Zhao (Zhejiang University), Zhihao Liu (Zhejiang University), Zhan Qin (Zhejiang University)

The Key-Value (KV) cache, which stores intermediate attention computations (Key and Value pairs) to avoid redundant calculations, is a fundamental mechanism for accelerating Large Language Model (LLM) inference. However, this efficiency optimization introduces significant yet underexplored privacy risks. This paper provides the first comprehensive analysis of these vulnerabilities, demonstrating that an attacker can reconstruct sensitive user inputs directly from the KV-cache. We design and implement three distinct attack vectors: a direct Inversion Attack, a more broadly applicable and potent Collision Attack, and a semantic-based Injection Attack. These methods demonstrate the practicality and severity of KV-cache privacy leakage issues. To mitigate this, we propose KV-Cloak, a novel, lightweight, and efficient defense mechanism. KV-Cloak uses a reversible matrix-based obfuscation scheme, combined with operator fusion, to secure the KV-cache. Our extensive experiments show that KV-Cloak effectively thwarts all proposed attacks, reducing reconstruction quality to random noise. Crucially, it achieves this robust security with virtually no degradation in model accuracy and minimal performance overhead, offering a practical solution for trustworthy LLM deployment.

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PhyFuzz: Detecting Sensor Vulnerabilities with Physical Signal Fuzzing

Zhicong Zheng (Zhejiang University), Jinghui Wu (Zhejiang University), Shilin Xiao (Zhejiang University), Yanze Ren (Zhejiang University), Chen Yan (Zhejiang University), Xiaoyu Ji (Zhejiang University), Wenyuan Xu (Zhejiang University)

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Cascading and Proxy Membership Inference Attacks

Yuntao Du (Purdue University), Jiacheng Li (Purdue University), Yuetian Chen (Purdue University), Kaiyuan Zhang (Purdue University), Zhizhen Yuan (Purdue University), Hanshen Xiao (Purdue University), Bruno Ribeiro (Purdue University), Ninghui Li (Purdue University)

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Incident Response Planning Using a Lightweight Large Language Model...

Kim Hammar (University of Melbourne), Tansu Alpcan (University of Melbourne), Emil Lupu (Imperial College London)

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