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CVE-2026-42440— Apache OpenNLP 安全漏洞

AI 预测 7.5 利用难度: 较易 EPSS 0.48% · P38

可能的 ATT&CK 技术 1AI

T1496 · Resource Hijacking

影响版本矩阵 2

厂商产品版本范围状态
Apache Software FoundationApache OpenNLP< 2.5.9affected
3.0< 3.0.0-M3affected
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一、 漏洞 CVE-2026-42440 基础信息

漏洞信息

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Vulnerability Title
Apache OpenNLP: OOM DoS via Unbounded Array Allocation in AbstractModelReader
来源: 美国国家漏洞数据库 NVD
Vulnerability Description
OOM Denial of Service via Unbounded Array Allocation in Apache OpenNLP AbstractModelReader  Versions Affected:  before 2.5.9 before 3.0.0-M3  Description: The AbstractModelReader methods getOutcomes(), getOutcomePatterns(), and getPredicates() each read a 32-bit signed integer count field from a binary model stream and pass that value directly to an array allocation (new String[numOutcomes], new int[numOCTypes][], new String[NUM_PREDS]) without validating that the value is non-negative or within a reasonable bound. The count is therefore fully attacker-controlled when the model file originates from an untrusted source. A crafted .bin model file in which any of these count fields is set to Integer.MAX_VALUE (or any value large enough to exhaust the available heap) triggers an OutOfMemoryError at the array allocation itself, before the corresponding label or pattern data is consumed from the stream. The error occurs very early in deserialization: for a GIS model, getOutcomes() is reached after only the model-type string, the correction constant, and the correction parameter have been read; so the attacker pays no meaningful size cost to weaponize a payload, and a single small file can crash a JVM that loads it. Any code path that deserializes a .bin model is affected, including direct use of GenericModelReader and any higher-level component that delegates to it during model load. The practical impact is denial of service against processes that load model files from untrusted or semi-trusted origins.   Mitigation: * 2.x users should upgrade to 2.5.9. * 3.x users should upgrade to 3.0.0-M3. Note: The fix introduces an upper bound on each of the three count fields, checked before array allocation; counts that are negative or exceed the bound cause an IllegalArgumentException to be thrown and the read to fail fast with no large allocation. The default bound is 10,000,000, which is well above the entry counts of legitimate OpenNLP models but far below any value that would threaten heap exhaustion. Deployments that legitimately need to load models with more entries than the default can raise the limit at JVM startup by setting the OPENNLP_MAX_ENTRIES system property to the desired positive integer (e.g. -DOPENNLP_MAX_ENTRIES=50000000); invalid or non-positive values fall back to the default. Users who cannot upgrade immediately should treat all .bin model files as untrusted input unless their provenance is verified, and should avoid loading models supplied by end users or fetched from third-party repositories without integrity checks.
来源: 美国国家漏洞数据库 NVD
CVSS Information
N/A
来源: 美国国家漏洞数据库 NVD
Vulnerability Type
未经控制的内存分配
来源: 美国国家漏洞数据库 NVD
Vulnerability Title
Apache OpenNLP 安全漏洞
来源: 中国国家信息安全漏洞库 CNNVD
Vulnerability Description
Apache OpenNLP是Apache基金会的一个自然语言处理工具库。 Apache OpenNLP存在安全漏洞,该漏洞源于AbstractModelReader未验证数组分配中的计数是否为非负或合理范围,可能导致特制模型文件触发OutOfMemoryError。以下版本受到影响:2.5.9之前版本和3.0.0-M3之前版本。
来源: 中国国家信息安全漏洞库 CNNVD
CVSS Information
N/A
来源: 中国国家信息安全漏洞库 CNNVD
Vulnerability Type
N/A
来源: 中国国家信息安全漏洞库 CNNVD

受影响产品

厂商产品影响版本CPE订阅
Apache Software FoundationApache OpenNLP 0 ~ 2.5.9 -

二、漏洞 CVE-2026-42440 的公开POC

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三、漏洞 CVE-2026-42440 的情报信息

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CVE-2026-42440 邮件列表归档 (1)

同批安全公告 · Apache Software Foundation · 2026-05-04 · 共 17 条

CVE-2026-428109.9 CRITICALApache Polaris 输入验证错误漏洞
CVE-2026-428119.9 CRITICALApache Polaris 输入验证错误漏洞
CVE-2026-428099.9 CRITICALApache Polaris 输入验证错误漏洞
CVE-2026-428129.9 CRITICALApache Polaris 输入验证错误漏洞
CVE-2026-40682Apache OpenNLP 代码问题漏洞
CVE-2026-42027Apache OpenNLP 安全漏洞
CVE-2026-40563Apache Atlas 代码注入漏洞
CVE-2026-29169Apache HTTP Server 代码问题漏洞
CVE-2026-23918Apache HTTP Server 资源管理错误漏洞
CVE-2026-33006Apache HTTP Server 安全漏洞
CVE-2026-33007Apache HTTP Server 代码问题漏洞
CVE-2026-33523Apache HTTP Server 安全漏洞
CVE-2026-33857Apache HTTP Server 缓冲区错误漏洞
CVE-2026-34032Apache HTTP Server 缓冲区错误漏洞
CVE-2026-34059Apache HTTP Server 安全漏洞
CVE-2026-24072Apache HTTP Server 安全漏洞

IV. Related Vulnerabilities

V. Comments for CVE-2026-42440

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