AI-Powered Investigation
ai-powered-investigationcapabilityPath: /knowledge-base/capabilities/ai-powered-investigation/
E698Entity ID (EID)
Page Recorddatabase.json — merged from MDX frontmatter + Entity YAML + computed metrics at build time
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"path": "/knowledge-base/capabilities/ai-powered-investigation/",
"filePath": "knowledge-base/capabilities/ai-powered-investigation.mdx",
"title": "AI-Powered Investigation",
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"lastUpdated": "2026-03-13",
"dateCreated": "2026-02-20",
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"description": "AI systems can synthesize vast volumes of public data — social media, corporate filings, court records, satellite imagery — to conduct investigative work at a scale and speed previously impossible. A 2023 ETH Zurich study showed GPT-4 inferred personal attributes from Reddit posts with 85% accuracy, while Bellingcat-style OSINT investigations that once required teams of analysts can increasingly be automated. This dual-use capability enables both anti-corruption journalism and mass privacy erosion.",
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{
"id": "deanonymization",
"title": "AI-Powered Deanonymization",
"path": "/knowledge-base/risks/deanonymization/",
"similarity": 19
},
{
"id": "ai-investigation-risks",
"title": "AI-Powered Investigation Risks",
"path": "/knowledge-base/risks/ai-investigation-risks/",
"similarity": 18
},
{
"id": "ai-accountability",
"title": "AI for Accountability and Anti-Corruption",
"path": "/knowledge-base/responses/ai-accountability/",
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{
"id": "surveillance",
"title": "Mass Surveillance",
"path": "/knowledge-base/risks/surveillance/",
"similarity": 17
},
{
"id": "deepfakes-authentication-crisis",
"title": "Deepfakes Authentication Crisis Model",
"path": "/knowledge-base/models/deepfakes-authentication-crisis/",
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}
]
},
"changeHistory": [
{
"date": "2026-02-16",
"branch": "claude/review-pr-followup-sv4RY",
"title": "PR follow-up review and fixes",
"summary": "Reviewed last 5 days of PRs (Feb 11-16) for remaining work. Fixed three issues: corrected quality metrics on ea-shareholder-diversification-anthropic (was 3/100, now 60/100), added cross-reference notes between four overlapping AI investigation pages (ai-investigation-risks, ai-powered-investigation, deanonymization, ai-accountability), and updated Anthropic Investors TODOs with research findings on matching program and Tallinn holdings plus refreshed secondary market prices to Feb 2026.",
"pr": 169
},
{
"date": "2026-02-15",
"branch": "claude/ai-investigation-coverage-hJ6Nf",
"title": "AI investigation coverage pages",
"summary": "Created three new wiki pages covering AI-powered investigation/OSINT, AI deanonymization risks, and AI for accountability/anti-corruption. Added corresponding entity definitions (E698, E699, E700) with cross-links. Fixed crux pipeline's Claude Code subprocess spawning to unset CLAUDECODE env var.",
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}
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}External Links
No external links
Backlinks (3)
| id | title | type | relationship |
|---|---|---|---|
| ai-accountability | AI for Accountability and Anti-Corruption | approach | — |
| deanonymization | AI-Powered Deanonymization | risk | — |
| ai-investigation-risks | AI-Powered Investigation Risks | risk | — |