Description
sagemaker-python-sdk is a library for training and deploying machine learning models on Amazon SageMaker. The sagemaker.base_deserializers.NumpyDeserializer module before v2.218.0 allows potentially unsafe deserialization when untrusted data is passed as pickled object arrays. This consequently may allow an unprivileged third party to cause remote code execution, denial of service, affecting both confidentiality and integrity. Users are advised to upgrade to version 2.218.0. Users unable to upgrade should not pass pickled numpy object arrays which originated from an untrusted source, or that could have been tampered with. Only pass pickled numpy object arrays from trusted sources.
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Remediation
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Tracking
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Advisories
| Source | ID | Title |
|---|---|---|
EUVD |
EUVD-2024-1835 | sagemaker-python-sdk is a library for training and deploying machine learning models on Amazon SageMaker. The sagemaker.base_deserializers.NumpyDeserializer module before v2.218.0 allows potentially unsafe deserialization when untrusted data is passed as pickled object arrays. This consequently may allow an unprivileged third party to cause remote code execution, denial of service, affecting both confidentiality and integrity. Users are advised to upgrade to version 2.218.0. Users unable to upgrade should not pass pickled numpy object arrays which originated from an untrusted source, or that could have been tampered with. Only pass pickled numpy object arrays from trusted sources. |
Github GHSA |
GHSA-wjvx-jhpj-r54r | sagemaker-python-sdk vulnerable to Deserialization of Untrusted Data |
References
History
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Subscriptions
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Status: PUBLISHED
Assigner: GitHub_M
Published:
Updated: 2024-08-02T02:42:59.895Z
Reserved: 2024-04-30T06:56:33.381Z
Link: CVE-2024-34072
Updated: 2024-08-02T02:42:59.895Z
Status : Deferred
Published: 2024-05-03T11:15:22.260
Modified: 2026-04-15T00:35:42.020
Link: CVE-2024-34072
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OpenCVE Enrichment
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Weaknesses
EUVD
Github GHSA