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CVE-2026-34760 - vLLM: Downmix Implementation Differences as Attack Vectors Against Audio AI Models

CVE ID :CVE-2026-34760
Published : April 2, 2026, 8:16 p.m. | 50 minutes ago
Description :vLLM is an inference and serving engine for large language models (LLMs). From version 0.5.5 to before version 0.18.0, Librosa defaults to using numpy.mean for mono downmixing (to_mono), while the international standard ITU-R BS.775-4 specifies a weighted downmixing algorithm. This discrepancy results in inconsistency between audio heard by humans (e.g., through headphones/regular speakers) and audio processed by AI models (Which infra via Librosa, such as vllm, transformer). This issue has been patched in version 0.18.0.
Severity: 5.9 | MEDIUM
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