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Vulnerabilities

CVE-2024-2928

HIGH

A Local File Inclusion (LFI) vulnerability was identified in mlflow/mlflow, specifically in version 2.9.2, which was fixed in version 2.11.3. This vulnerability arises from the application's failure to properly validate URI fragments for directory traversal sequences such as '../'. An attacker can exploit this flaw by manipulating the fragment part of the URI to read arbitrary files on the local file system, including sensitive files like '/etc/passwd'. The vulnerability is a bypass to a previous patch that only addressed similar manipulation within the URI's query string, highlighting the need for comprehensive validation of all parts of a URI to prevent LFI attacks.

Published Jun 06, 2024

CVE-2024-0520

CRITICAL

A vulnerability in mlflow/mlflow version 8.2.1 allows for remote code execution due to improper neutralization of special elements used in an OS command ('Command Injection') within the `mlflow.data.http_dataset_source.py` module. Specifically, when loading a dataset from a source URL with an HTTP scheme, the filename extracted from the `Content-Disposition` header or the URL path is used to generate the final file path without proper sanitization. This flaw enables an attacker to control the file path fully by utilizing path traversal or absolute path techniques, such as '../../tmp/poc.txt' or '/tmp/poc.txt', leading to arbitrary file write. Exploiting this vulnerability could allow a malicious user to execute commands on the vulnerable machine, potentially gaining access to data and model information. The issue is fixed in version 2.9.0.

Published Jun 06, 2024

CVE-2024-3099

MEDIUM

A vulnerability in mlflow/mlflow version 2.11.1 allows attackers to create multiple models with the same name by exploiting URL encoding. This flaw can lead to Denial of Service (DoS) as an authenticated user might not be able to use the intended model, as it will open a different model each time. Additionally, an attacker can exploit this vulnerability to perform data model poisoning by creating a model with the same name, potentially causing an authenticated user to become a victim by using the poisoned model. The issue stems from inadequate validation of model names, allowing for the creation of models with URL-encoded names that are treated as distinct from their URL-decoded counterparts.

Published Jun 06, 2024

CVE-2024-37061

HIGH

Remote Code Execution can occur in versions of the MLflow platform running version 1.11.0 or newer, enabling a maliciously crafted MLproject to execute arbitrary code on an end user’s system when run.

Published Jun 04, 2024

CVE-2024-37060

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 1.27.0 or newer, enabling a maliciously crafted Recipe to execute arbitrary code on an end user’s system when run.

Published Jun 04, 2024

CVE-2024-37059

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 0.5.0 or newer, enabling a maliciously uploaded PyTorch model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37058

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 2.5.0 or newer, enabling a maliciously uploaded Langchain AgentExecutor model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37057

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 2.0.0rc0 or newer, enabling a maliciously uploaded Tensorflow model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37056

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 1.23.0 or newer, enabling a maliciously uploaded LightGBM scikit-learn model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37055

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 1.24.0 or newer, enabling a maliciously uploaded pmdarima model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37054

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 0.9.0 or newer, enabling a maliciously uploaded PyFunc model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37053

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 1.1.0 or newer, enabling a maliciously uploaded scikit-learn model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-37052

HIGH

Deserialization of untrusted data can occur in versions of the MLflow platform running version 1.1.0 or newer, enabling a maliciously uploaded scikit-learn model to run arbitrary code on an end user’s system when interacted with.

Published Jun 04, 2024

CVE-2024-4263

MEDIUM

A broken access control vulnerability exists in mlflow/mlflow versions before 2.10.1, where low privilege users with only EDIT permissions on an experiment can delete any artifacts. This issue arises due to the lack of proper validation for DELETE requests by users with EDIT permissions, allowing them to perform unauthorized deletions of artifacts. The vulnerability specifically affects the handling of artifact deletions within the application, as demonstrated by the ability of a low privilege user to delete a directory inside an artifact using a DELETE request, despite the official documentation stating that users with EDIT permission can only read and update artifacts, not delete them.

Published May 16, 2024

CVE-2024-3848

HIGH

A path traversal vulnerability exists in mlflow/mlflow version 2.11.0, identified as a bypass for the previously addressed CVE-2023-6909. The vulnerability arises from the application's handling of artifact URLs, where a '#' character can be used to insert a path into the fragment, effectively skipping validation. This allows an attacker to construct a URL that, when processed, ignores the protocol scheme and uses the provided path for filesystem access. As a result, an attacker can read arbitrary files, including sensitive information such as SSH and cloud keys, by exploiting the way the application converts the URL into a filesystem path. The issue stems from insufficient validation of the fragment portion of the URL, leading to arbitrary file read through path traversal.

Published May 16, 2024

CVE-2024-3573

CRITICAL

mlflow/mlflow is vulnerable to Local File Inclusion (LFI) due to improper parsing of URIs, allowing attackers to bypass checks and read arbitrary files on the system. The issue arises from the 'is_local_uri' function's failure to properly handle URIs with empty or 'file' schemes, leading to the misclassification of URIs as non-local. Attackers can exploit this by crafting malicious model versions with specially crafted 'source' parameters, enabling the reading of sensitive files within at least two directory levels from the server's root.

Published Apr 16, 2024

CVE-2024-1558

HIGH

A path traversal vulnerability exists in the `_create_model_version()` function within `server/handlers.py` of the mlflow/mlflow repository, due to improper validation of the `source` parameter. Attackers can exploit this vulnerability by crafting a `source` parameter that bypasses the `_validate_non_local_source_contains_relative_paths(source)` function's checks, allowing for arbitrary file read access on the server. The issue arises from the handling of unquoted URL characters and the subsequent misuse of the original `source` value for model version creation, leading to the exposure of sensitive files when interacting with the `/model-versions/get-artifact` handler.

Published Apr 16, 2024

CVE-2024-1594

HIGH

A path traversal vulnerability exists in the mlflow/mlflow repository, specifically within the handling of the `artifact_location` parameter when creating an experiment. Attackers can exploit this vulnerability by using a fragment component `#` in the artifact location URI to read arbitrary files on the server in the context of the server's process. This issue is similar to CVE-2023-6909 but utilizes a different component of the URI to achieve the same effect.

Published Apr 16, 2024

CVE-2024-1593

HIGH

A path traversal vulnerability exists in the mlflow/mlflow repository due to improper handling of URL parameters. By smuggling path traversal sequences using the ';' character in URLs, attackers can manipulate the 'params' portion of the URL to gain unauthorized access to files or directories. This vulnerability allows for arbitrary data smuggling into the 'params' part of the URL, enabling attacks similar to those described in previous reports but utilizing the ';' character for parameter smuggling. Successful exploitation could lead to unauthorized information disclosure or server compromise.

Published Apr 16, 2024

CVE-2024-1483

HIGH

A path traversal vulnerability exists in mlflow/mlflow version 2.9.2, allowing attackers to access arbitrary files on the server. By crafting a series of HTTP POST requests with specially crafted 'artifact_location' and 'source' parameters, using a local URI with '#' instead of '?', an attacker can traverse the server's directory structure. The issue occurs due to insufficient validation of user-supplied input in the server's handlers.

Published Apr 16, 2024

CVE-2024-1560

HIGH

A path traversal vulnerability exists in the mlflow/mlflow repository, specifically within the artifact deletion functionality. Attackers can bypass path validation by exploiting the double decoding process in the `_delete_artifact_mlflow_artifacts` handler and `local_file_uri_to_path` function, allowing for the deletion of arbitrary directories on the server's filesystem. This vulnerability is due to an extra unquote operation in the `delete_artifacts` function of `local_artifact_repo.py`, which fails to properly sanitize user-supplied paths. The issue is present up to version 2.9.2, despite attempts to fix a similar issue in CVE-2023-6831.

Published Apr 16, 2024

CVE-2023-6977

CRITICAL

This vulnerability enables malicious users to read sensitive files on the server.

Published Dec 20, 2023

CVE-2023-6976

HIGH

This vulnerability is capable of writing arbitrary files into arbitrary locations on the remote filesystem in the context of the server process.

Published Dec 20, 2023

CVE-2023-6975

CRITICAL

A malicious user could use this issue to get command execution on the vulnerable machine and get access to data & models information.

Published Dec 20, 2023

CVE-2023-6974

HIGH

A malicious user could use this issue to access internal HTTP(s) servers and in the worst case (ie: aws instance) it could be abuse to get a remote code execution on the victim machine.

Published Dec 20, 2023

CVE-2023-6940

CRITICAL

with only one user interaction(download a malicious config), attackers can gain full command execution on the victim system.

Published Dec 19, 2023

CVE-2023-6909

HIGH

Path Traversal: '\..\filename' in GitHub repository mlflow/mlflow prior to 2.9.2.

Published Dec 18, 2023

CVE-2023-6831

HIGH

Path Traversal: '\..\filename' in GitHub repository mlflow/mlflow prior to 2.9.2.

Published Dec 15, 2023

CVE-2023-6753

CRITICAL

Path Traversal in GitHub repository mlflow/mlflow prior to 2.9.2.

Published Dec 13, 2023

CVE-2023-6709

CRITICAL

Improper Neutralization of Special Elements Used in a Template Engine in GitHub repository mlflow/mlflow prior to 2.9.2.

Published Dec 12, 2023

CVE-2023-6568

MEDIUM

A reflected Cross-Site Scripting (XSS) vulnerability exists in the mlflow/mlflow repository, specifically within the handling of the Content-Type header in POST requests. An attacker can inject malicious JavaScript code into the Content-Type header, which is then improperly reflected back to the user without adequate sanitization or escaping, leading to arbitrary JavaScript execution in the context of the victim's browser. The vulnerability is present in the mlflow/server/auth/__init__.py file, where the user-supplied Content-Type header is directly injected into a Python formatted string and returned to the user, facilitating the XSS attack.

Published Dec 07, 2023

CVE-2023-6014

CRITICAL

An attacker is able to arbitrarily create an account in MLflow bypassing any authentication requirment.

Published Nov 16, 2023

CVE-2023-6015

CRITICAL

MLflow allowed arbitrary files to be PUT onto the server.

Published Nov 16, 2023

CVE-2023-6018

CRITICAL

An attacker can overwrite any file on the server hosting MLflow without any authentication.

Published Nov 16, 2023

CVE-2023-4033

HIGH

OS Command Injection in GitHub repository mlflow/mlflow prior to 2.6.0.

Published Aug 01, 2023

CVE-2023-3765

CRITICAL

Absolute Path Traversal in GitHub repository mlflow/mlflow prior to 2.5.0.

Published Jul 19, 2023

CVE-2023-2780

CRITICAL

Path Traversal: '\..\filename' in GitHub repository mlflow/mlflow prior to 2.3.1.

Published May 17, 2023

CVE-2023-2356

CRITICAL

Relative Path Traversal in GitHub repository mlflow/mlflow prior to 2.3.1.

Published Apr 28, 2023

CVE-2023-1177

CRITICAL

Path Traversal: '\..\filename' in GitHub repository mlflow/mlflow prior to 2.2.1.

Published Mar 24, 2023

CVE-2023-1176

MEDIUM

Absolute Path Traversal in GitHub repository mlflow/mlflow prior to 2.2.2.

Published Mar 24, 2023

CVE-2022-0736

HIGH

Insecure Temporary File in GitHub repository mlflow/mlflow prior to 1.23.1.

Published Feb 23, 2022