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Description

Open Neural Network Exchange (ONNX) is an open standard for machine learning interoperability. In versions up to and including 1.20.1, a security control bypass exists in onnx.hub.load() due to improper logic in the repository trust verification mechanism. While the function is designed to warn users when loading models from non-official sources, the use of the silent=True parameter completely suppresses all security warnings and confirmation prompts. This vulnerability transforms a standard model-loading function into a vector for Zero-Interaction Supply-Chain Attacks. When chained with file-system vulnerabilities, an attacker can silently exfiltrate sensitive files (SSH keys, cloud credentials) from the victim's machine the moment the model is loaded. As of time of publication, no known patched versions are available.

PUBLISHED Reserved 2026-02-27 | Published 2026-03-18 | Updated 2026-03-18 | Assigner GitHub_M




HIGH: 8.6CVSS:3.1/AV:N/AC:L/PR:N/UI:N/S:C/C:H/I:N/A:N

Problem types

CWE-345: Insufficient Verification of Data Authenticity

CWE-494: Download of Code Without Integrity Check

CWE-693: Protection Mechanism Failure

Product status

<= 1.20.1
affected

References

github.com/ZeroXJacks/CVEs/blob/main/2026/CVE-2026-28500.md exploit

github.com/onnx/onnx/security/advisories/GHSA-hqmj-h5c6-369m

github.com/ZeroXJacks/CVEs/blob/main/2026/CVE-2026-28500.md

cve.org (CVE-2026-28500)

nvd.nist.gov (CVE-2026-28500)

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