Attack Type

Data Extraction

Data extraction attacks target the information processed or memorised by AI/ML systems. They take three main forms. First, training-data extraction: large language models can memorise verbatim spans of their training corpus, and an attacker who crafts the right prompts can pull back PII, API keys, or copyrighted text — a result demonstrated against GPT-2 by Carlini et al. and reproduced against several production models. Second, model extraction: by repeatedly querying a hosted model and observing outputs, an attacker can reconstruct enough behaviour to clone proprietary fine-tunes. Third, system-prompt and conversation leakage: indirect prompt injection or insecure logging can leak the application's instructions and other users' conversations. Multi-tenant inference platforms (vLLM, Triton, hosted APIs) and RAG systems are particularly exposed. Defenses: output filtering, differential privacy in training, rate limits, and strict tenant isolation.

903
Total CVEs
46
Pages
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Current
Severity CVE CVSS
CRITICAL CVE-2024-0964 9.4
MEDIUM CVE-2024-2206 6.5
HIGH CVE-2024-1728 7.5
UNKNOWN CVE-2024-1183 -
UNKNOWN CVE-2024-1561 -
HIGH CVE-2024-34510 7.5
CRITICAL CVE-2024-4253 9.1
UNKNOWN CVE-2024-4254 -
HIGH CVE-2024-4325 8.6
HIGH CVE-2024-4941 7.5
CRITICAL CVE-2024-3234 9.8
HIGH CVE-2024-47084 8.3
MEDIUM CVE-2024-47164 6.5
MEDIUM CVE-2024-47165 5.4
MEDIUM CVE-2024-47166 5.3
CRITICAL CVE-2024-47167 9.8
HIGH CVE-2024-47868 7.5
LOW CVE-2024-47869 3.7
HIGH CVE-2024-47870 8.1
CRITICAL CVE-2024-47871 9.1

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