CVE-2024-27133 (GCVE-0-2024-27133)

Vulnerability from cvelistv5 – Published: 2024-02-23 22:00 – Updated: 2024-08-22 18:01
VLAI?
Title
Insufficient sanitization in MLflow leads to XSS when running a recipe that uses an untrusted dataset.
Summary
Insufficient sanitization in MLflow leads to XSS when running a recipe that uses an untrusted dataset. This issue leads to a client-side RCE when running the recipe in Jupyter Notebook. The vulnerability stems from lack of sanitization over dataset table fields.
CWE
  • CWE-79 - Improper Neutralization of Input During Web Page Generation ('Cross-site Scripting')
Assigner
Impacted products
Vendor Product Version
Affected: 0 , ≤ 2.9.2 (python)
Show details on NVD website

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