Wiki Generation Architecture: Multi-Agent Multi-Pass Design
wiki-generation-architectureinternalPath: /internal/wiki-generation-architecture/
E766Entity ID (EID)
Page Recorddatabase.json — merged from MDX frontmatter + Entity YAML + computed metrics at build time
{
"id": "wiki-generation-architecture",
"numericId": "E766",
"path": "/internal/wiki-generation-architecture/",
"filePath": "internal/wiki-generation-architecture.mdx",
"title": "Wiki Generation Architecture: Multi-Agent Multi-Pass Design",
"quality": 55,
"readerImportance": 75,
"researchImportance": null,
"tacticalValue": null,
"contentFormat": "article",
"tractability": null,
"neglectedness": null,
"uncertainty": null,
"causalLevel": null,
"lastUpdated": "2026-03-13",
"dateCreated": "2026-02-16",
"llmSummary": "Architecture proposal for next-generation wiki page generation. Analyzes current single-pipeline limitations, surveys state-of-the-art (Stanford STORM, GraphRAG, CrewAI, Self-Refine), and proposes a multi-agent multi-pass architecture with 8 specialist agents, 12+ composable passes, knowledge graph-driven linking, and dynamic computation embedding. Includes concrete implementation plan, composable module architecture, and academic foundations drawing on proposition-level retrieval (Dense X Retrieval), FActScore verification, nanopublications, and argumentation frameworks.",
"description": "Architecture proposal for scalable, high-quality wiki page generation using specialist agents, multi-pass refinement, knowledge graph integration, and dynamic computation",
"ratings": {
"novelty": 7,
"rigor": 6,
"actionability": 8,
"completeness": 7
},
"category": "internal",
"subcategory": "architecture",
"clusters": [
"ai-safety"
],
"metrics": {
"wordCount": 5040,
"tableCount": 11,
"diagramCount": 6,
"internalLinks": 2,
"externalLinks": 11,
"footnoteCount": 0,
"bulletRatio": 0.24,
"sectionCount": 65,
"hasOverview": false,
"structuralScore": 13
},
"suggestedQuality": 87,
"updateFrequency": null,
"evergreen": false,
"wordCount": 5040,
"unconvertedLinks": [],
"unconvertedLinkCount": 0,
"convertedLinkCount": 0,
"backlinkCount": 0,
"hallucinationRisk": {
"level": "medium",
"score": 55,
"factors": [
"no-citations"
]
},
"entityType": "internal",
"redundancy": {
"maxSimilarity": 15,
"similarPages": [
{
"id": "scalable-oversight",
"title": "Scalable Oversight",
"path": "/knowledge-base/responses/scalable-oversight/",
"similarity": 15
},
{
"id": "architecture",
"title": "System Architecture",
"path": "/internal/architecture/",
"similarity": 15
},
{
"id": "knowledge-graph-ontology",
"title": "Knowledge Graph Ontology: Design & Implementation Status",
"path": "/internal/knowledge-graph-ontology/",
"similarity": 15
},
{
"id": "agentic-ai",
"title": "Agentic AI",
"path": "/knowledge-base/capabilities/agentic-ai/",
"similarity": 14
},
{
"id": "language-models",
"title": "Large Language Models",
"path": "/knowledge-base/capabilities/language-models/",
"similarity": 14
}
]
},
"changeHistory": [
{
"date": "2026-02-17",
"branch": "claude/wiki-generation-architecture-0J97Q",
"title": "Route internal pages through /wiki/E<id>",
"summary": "Migrated internal pages from `/internal/` to `/wiki/E<id>` URLs so they render with full wiki infrastructure (breadcrumbs, metadata, quality indicators, sidebar). Internal MDX pages now redirect from `/internal/slug` to `/wiki/E<id>`, while React dashboard pages (suggested-pages, updates, page-changes, etc.) remain at `/internal/`. Follow-up review: cleaned up dead code, hid wiki-specific UI on internal pages, fixed breadcrumbs, updated all bare-text `/internal/` references.",
"pr": 182
},
{
"date": "2026-02-16",
"branch": "claude/wiki-generation-architecture-DYIaD",
"title": "Wiki generation architecture research & proposal",
"summary": "Researched state-of-the-art approaches to scalable wiki generation (Stanford STORM, Microsoft GraphRAG, CrewAI, Self-Refine, SemanticCite, Anthropic multi-agent systems, KARMA) and wrote a comprehensive architecture proposal for multi-agent, multi-pass wiki page generation. The proposal covers 8 specialist agents, 12+ composable passes, knowledge graph-driven content planning, dynamic computation embedding, and iterative refinement loops.",
"pr": 173
}
],
"coverage": {
"passing": 3,
"total": 13,
"targets": {
"tables": 20,
"diagrams": 2,
"internalLinks": 40,
"externalLinks": 25,
"footnotes": 15,
"references": 15
},
"actuals": {
"tables": 11,
"diagrams": 6,
"internalLinks": 2,
"externalLinks": 11,
"footnotes": 0,
"references": 0,
"quotesWithQuotes": 0,
"quotesTotal": 0,
"accuracyChecked": 0,
"accuracyTotal": 0
},
"items": {
"llmSummary": "green",
"schedule": "red",
"entity": "red",
"editHistory": "green",
"overview": "red",
"tables": "amber",
"diagrams": "green",
"internalLinks": "amber",
"externalLinks": "amber",
"footnotes": "red",
"references": "red",
"quotes": "red",
"accuracy": "red"
},
"editHistoryCount": 2,
"ratingsString": "N:7 R:6 A:8 C:7"
},
"readerRank": 125,
"recommendedScore": 169.33
}External Links
No external links
Backlinks (0)
No backlinks