CVE-2025-15379 (GCVE-0-2025-15379)
Vulnerability from cvelistv5
Published
2026-03-30 07:16
Modified
2026-03-31 13:50
Severity ?
CWE
  • CWE-77 - Improper Neutralization of Special Elements used in a Command ('Command Injection')
Summary
A command injection vulnerability exists in MLflow's model serving container initialization code, specifically in the `_install_model_dependencies_to_env()` function. When deploying a model with `env_manager=LOCAL`, MLflow reads dependency specifications from the model artifact's `python_env.yaml` file and directly interpolates them into a shell command without sanitization. This allows an attacker to supply a malicious model artifact and achieve arbitrary command execution on systems that deploy the model. The vulnerability affects versions 3.8.0 and is fixed in version 3.8.2.
Impacted products
Vendor Product Version
mlflow mlflow/mlflow Version: unspecified   < 3.8.2
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Show details on NVD website


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