MLASTG ATLAS Coverage Statistics Auto-generated from docs/ATLAS-Mapping/2-atlas-navigator-layer.json. Generated: 2026-06-26 ⚠️ Do not edit manually — run python tools/generate_coverage_stats.py to regenerate.
This page provides a quantitative summary of MLASTG's coverage of the MITRE ATLAS framework, derived automatically from the Navigator JSON data file.
Aggregate Metrics Metric Value Total ATLAS techniques mapped 28 Full coverage (score ≥ 80%) 19 (67%) Partial coverage (0 < score < 80%) 9 (32%) No coverage (score = 0) 0 (0%) Weighted coverage score 83.9%
Coverage by ATLAS Tactic Tactic Techniques Full Partial None Avg Score Reconnaissance (TA0001) 2 1 1 0 75% Initial Access (TA0002) 1 0 1 0 50% Resource Development (TA0003) 2 2 0 0 100% Execution (TA0005) 12 8 4 0 83% Persistence (TA0006) 2 2 0 0 100% Evasion (TA0008) 1 1 0 0 100% Collection (TA0010) 7 5 2 0 86% Impact (TA0040) 1 0 1 0 50% Total 28 19 9 0 83.9%
Technique-Level Detail Full Coverage Techniques (Score ≥ 80%) ATLAS ID Technique Score MLASVS Controls MLASTG Tests AML.T0000 ML Attack Staging 100% PIPELINE-001 — AML.T0001 Search for Tainted ML Data 100% DATA-001 — AML.T0003 Compromise ML Supply Chain 100% SUPPLY-001, SUPPLY-002 — AML.T0043 ML Model Inversion Attack 100% MODEL-003 — AML.T0010 Exploit ML Model 100% MODEL-001, MODEL-002 — AML.T0015 Evade ML Model 100% MODEL-001, MODEL-002 — AML.T0012 Backdoor ML Model 100% MODEL-004, MODEL-005 — AML.T0024.002 Extract ML Model 100% MODEL-002, MODEL-003 — AML.T0014 Invert ML Model 100% MODEL-003 — AML.T0020 Poison Training Data 100% DATA-001, DATA-002 — AML.T0035 Erode ML Model Integrity 100% MODEL-004, MODEL-005 — AML.T0029 ML Model Extraction 100% MODEL-002 — AML.T0043 Exploit Adversarial ML Vulnerability 100% MODEL-001 — AML.T0051 LLM Prompt Injection 100% LLM-001, LLM-004 — AML.T0057 LLM Output Handling 100% LLM-002 — AML.T0054 LLM Jailbreak 100% LLM-005 — AML.T0056 ML Model Behavioral Manipulation 100% MODEL-004, INFRA-012, INFRA-018 — AML.T0058 ML Model Inversion Attack 100% MODEL-003 — AML.T0059 Backdoor ML Model 100% MODEL-004, DATA-001 —
Partial Coverage Techniques (Score < 80%) ATLAS ID Technique Score MLASVS Controls Gap AML.T0002 Obtain ML Model from Public Source 50% SUPPLY-002 Identified in Gap Analysis AML.T0005 Exploit ML Model for Initial Access 50% MODEL-001 Identified in Gap Analysis AML.T0018 Poison Training Data 50% DATA-001, DATA-002 Identified in Gap Analysis AML.T0021 Clean Training Data 50% DATA-002 Identified in Gap Analysis AML.T0031 Exfiltration via ML Inference 50% LLM-002 Identified in Gap Analysis AML.T0024.002 Denial of ML Service 50% LLM-010 Identified in Gap Analysis AML.T0040 Establish Adversarial ML Infrastructure 50% INFRA-001 Identified in Gap Analysis AML.T0053 LLM Plugin Compromise 50% LLM-006, LLM-007 Identified in Gap Analysis AML.T0057 ML Model Data Exfiltration 50% MODEL-003 Identified in Gap Analysis
Cross-Framework Alignment Framework MLASTG Coverage Notes MITRE ATLAS 83.9% weighted 19/28 techniques full; 9 partial OWASP LLM Top 10 10/10 Complete coverage OWASP ML Top 10 10/10 Complete coverage NIST AI RMF All 4 functions Govern, Map, Measure, Manage EU AI Act GOV controls mapped High-risk categories addressed ISO/IEC 42001 Partial AI Management System alignment
Regenerating This Page # Auto-generate from Navigator JSON
python tools/generate_coverage_stats.py
# Dry-run (print to stdout)
python tools/generate_coverage_stats.py --dry-run
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mkdocs build
References June 28, 2026 June 28, 2026