Ruiyi Zhang (CISPA Helmholtz Center for Information Security and Google), Albert Cheu (Google), Adria Gascon (Google), Daniel Moghimi (Google), Phillipp Schoppmann (Google), Michael Schwarz (CISPA Helmholtz Center for Information Security), Octavian Suciu (Google)

Confidential virtual machines (CVMs) based on trusted execution environments (TEEs) enable new privacy-preserving solutions. Yet, they leave side-channel leakage outside their threat model, shifting the responsibility of mitigating such attacks to developers. However, mitigations are either not generic or too slow for practical use, and developers currently lack a systematic, efficient way to measure and compare leakage across real-world deployments.

In this paper, we present SNPeek, an open-source toolkit that offers configurable side-channel tracing primitives on production AMD SEV-SNP hardware and couples them with statistical and machine-learning-based analysis pipelines for automated leakage estimation. We apply SNPeek to three representative workloads that are deployed on CVMs to enhance user privacy—private information retrieval, private heavy hitters, and Wasm user-defined functions—and uncover previously unnoticed leaks, including a covert channel that exfiltrated data at 497 kbit/s. The results show that SNPeek pinpoints vulnerabilities and guides low-overhead mitigations based on oblivious memory and differential privacy, giving practitioners a practical path to deploy CVMs with meaningful confidentiality guarantees.

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Efficiently Detecting DBMS Bugs through Bottom-up Syntax-based SQL Generation

Yu Liang (The Pennsylvania State University), Peng Liu (The Pennsylvania State University)

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FidelityGPT: Correcting Decompilation Distortions with Retrieval Augmented Generation

Zhiping Zhou (Tianjin University), Xiaohong Li (Tianjin University), Ruitao Feng (Southern Cross University), Yao Zhang (Tianjin University), Yuekang Li (University of New South Wales), Wenbu Feng (Tianjin University), Yunqian Wang (Tianjin University), Yuqing Li (Tianjin University)

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HELIOS: Hierarchical Graph Abstraction for Structure-Aware LLM Decompilation

Yonatan Gizachew Achamyeleh (University of California, Irvine), Harsh Thomare (University of California, Irvine), Mohammad Abdullah Al Faruque (University of California, Irvine)

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