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CVE-2025-46722

Опубликовано: 29 мая 2025
Источник: nvd
CVSS3: 4.2
EPSS Низкий

Описание

vLLM is an inference and serving engine for large language models (LLMs). In versions starting from 0.7.0 to before 0.9.0, in the file vllm/multimodal/hasher.py, the MultiModalHasher class has a security and data integrity issue in its image hashing method. Currently, it serializes PIL.Image.Image objects using only obj.tobytes(), which returns only the raw pixel data, without including metadata such as the image’s shape (width, height, mode). As a result, two images of different sizes (e.g., 30x100 and 100x30) with the same pixel byte sequence could generate the same hash value. This may lead to hash collisions, incorrect cache hits, and even data leakage or security risks. This issue has been patched in version 0.9.0.

EPSS

Процентиль: 30%
0.00108
Низкий

4.2 Medium

CVSS3

Дефекты

CWE-1023

Связанные уязвимости

CVSS3: 4.2
redhat
3 месяца назад

vLLM is an inference and serving engine for large language models (LLMs). In versions starting from 0.7.0 to before 0.9.0, in the file vllm/multimodal/hasher.py, the MultiModalHasher class has a security and data integrity issue in its image hashing method. Currently, it serializes PIL.Image.Image objects using only obj.tobytes(), which returns only the raw pixel data, without including metadata such as the image’s shape (width, height, mode). As a result, two images of different sizes (e.g., 30x100 and 100x30) with the same pixel byte sequence could generate the same hash value. This may lead to hash collisions, incorrect cache hits, and even data leakage or security risks. This issue has been patched in version 0.9.0.

CVSS3: 4.2
debian
3 месяца назад

vLLM is an inference and serving engine for large language models (LLM ...

CVSS3: 4.2
github
3 месяца назад

vLLM has a Weakness in MultiModalHasher Image Hashing Implementation

EPSS

Процентиль: 30%
0.00108
Низкий

4.2 Medium

CVSS3

Дефекты

CWE-1023