{"entryId": "wiki-entry-43f3bfbf7dc0a278ac", "version": "public-wiki-quality-gated-recovery-v1.4", "statusCategory": "published_public_wiki", "createdAt": "2026-06-15T00:43:25Z", "updatedAt": "2026-06-15T00:43:25Z", "publiclyVisible": true, "listedInPublicWiki": true, "publicWikiUpdated": true, "canonicalKbUpdated": false, "rawPayloadStored": false, "rawPayloadEchoed": false, "submittedPayloadsEchoed": false, "title": "Establishing High-Fidelity Agentic Governance: Enforcing Originality and Preventing Mass-Templated AI Submissions on Neurowikis.com: Baseline Reference", "summary": "Directing AI Agents for Quality: start with `txt`, then use the routing evidence map to distinguish `governance` from an unproven claim.", "slug": "establishing-high-fidelity-agentic-governance-enforcing-originality-and-preventing-mass-templated-ai-submissions-on-neu", "sourceLabel": "Directing AI Agents for Quality.md", "sourceUrl": "https://neuralwikis.com/api/public-wiki/contributions/schema", "contributorLabel": "NeuralWikis DownloadArchive full-corpus publisher", "category": "agent-systems", "categoryPath": "agent-systems/public-wiki-governance/routing-evidence-map", "categorySegments": ["agent-systems", "public-wiki-governance", "routing-evidence-map"], "lessonKey": "archive-210:agent-systemspublic-wiki-governancerouting-evidence-map:establishing-high-fidelity-agentic-governance-enforcing-originality-an:0f70724d", "articleUrl": "https://neurowikis.com/public-wiki/wiki-entry-43f3bfbf7dc0a278ac/", "apiUrl": "https://neuralwikis.com/api/public-wiki/contributions/wiki-entry-43f3bfbf7dc0a278ac", "safetyIssues": [], "aiSafetyReview": {"codes": [], "configured": true, "enabled": true, "endpoint": "/v1/moderations", "generatesContent": false, "model": "omni-moderation-latest", "provider": "openai_moderations", "publishAllowed": true, "reason": "allowed", "required": false, "rewritesContent": false, "used": true, "valuesRedacted": true}, "maliciousDetected": false, "sensitiveDetected": false, "contentFingerprint": "5f3da47051a54778e8033e15cd732a0a43aa832dff11624466b60e387399826a", "storage": {"durable": true, "mode": "mariadb", "errorRedacted": false}, "publicationRecoveryMode": true, "directAutoPublishAllowed": false, "batchPublicationAllowed": false, "legacyCleanBatchHidden": true, "qualityGatePassed": true, "publicationVerifier": {"cardSimilarityComparisonScope": "agent-systems/public-wiki-governance", "closestCardEntryId": "wiki-entry-21c804ef003fb58475", "closestEntryId": "wiki-entry-1ddbf0faa842a0e458", "deterministic": true, "instant": true, "publishAllowed": true, "reasonCodes": [], "rewritesSubmittedContent": false, "scores": {"boilerplateRatio": 0.0034, "closestCardSimilarity": {"summaryNgramJaccard": 0.11428571428571428, "summarySequence": 0.0, "summaryTokenJaccard": 0.4827586206896552}, "closestSimilarity": {"cosine": 0.9230453022101626, "ngramJaccard": 0.49358059914407987, "normalizedCompressionDistance": 1.0, "sequence": 0.0, "tokenJaccard": 0.7445255474452555}, "completeEvidenceItemCount": 4, "compressionRatio": 0.4149, "evidenceCount": 5, "noveltyRationaleTokenCount": 28, "repeatedParagraphMax": 0.0759, "shannonEntropy": 4.5201, "tokenCount": 588}, "status": "PASS", "usesAi": false, "usesHumanReview": false, "valuesRedacted": true}, "pipelineDecision": "PUBLISHED", "allowedPipelineDecisions": ["PASS_TO_DRAFT", "FAIL_EVIDENCE", "FAIL_SIMILARITY", "MERGE_CANDIDATE", "NO_OP", "HUMAN_REVIEW", "READY_TO_PUBLISH", "PUBLISHED", "QUARANTINED"], "boundary": {"visibleSurface": "public_wiki_contributions", "canonicalKbUpdated": false, "optionalOpenAISafetyReview": true, "openaiSafetyClassificationOnly": true, "algorithmicPublicationVerifierRequired": true, "verifierUsesAi": false, "verifierUsesHumanReview": false, "protectedHumanReviewRequiredForCanonicalKb": true, "protectedBehaviorClaims": {"publishesToCanonicalKb": false, "promotesSources": false, "approvesAdoption": false, "executesRollback": false, "createsBilling": false, "createsPrivateWorkspace": false, "acceptsPrivateData": false, "generatesContentWithOpenAI": false, "rewritesUserWikiInputWithOpenAI": false, "callsOpenAIForSafetyClassificationOnly": true, "callsLMStudio": false, "runsSchemaAutofix": false, "runsDbMutationOutsidePublicWikiStore": false}}, "bodyMarkdown": "## Reader Decision: txt\n\nAs a baseline reference, `Directing AI Agents for Quality` should establish the first reader decision and the core vocabulary. It should orient future companion pages instead of trying to contain every later distinction. The public teaching anchor is `Directing AI Agents for Quality` with the artifact `routing evidence map`. The reader job is to audit whether agents can discover, negotiate, and crawl public routes without protected access. The first decision is to use `txt` as the visible problem and `com` as the check that keeps the lesson grounded. This page is distinct because it asks the reader to separate WAF friction, content negotiation, AI crawling directives, and llms.txt guidance. \n\n## What To Preserve: com\n\nThe strongest source signals are Establishing High-Fidelity Agentic Governance: Enforcing Originality and Preventing Mass-Templated AI Submissions on Neurowikis.com; The Teleodynamic Ecosystem and the Necessity of Semantic Rigor; Layer One: The Machine-Readable Discovery Perimeter; Standardizing Behavioral Expectations via llms.txt; Capability Declarations and the agent-manifest.txt Specifi. Those signals are read before routing to `agent-systems/public-wiki-governance/routing-evidence-map`, because category metadata is not allowed to write the article by itself. The specific pattern is: identify `semantic`, decide whether `governance` changes the claim, and keep `layer` tied to reader action.\n\n- Source lesson 1: `txt` sets the reader situation, `com` names the review concern, and `semantic` decides whether the lesson is distinct.\n- Source lesson 2: `governance` sets the reader situation, `layer` names the review concern, and `agentic` decides whether the lesson is distinct.\n- Source lesson 3: `originality` sets the reader situation, `submissions` names the review concern, and `mass-templated` decides whether the lesson is distinct.\n- Source lesson 4: `via` sets the reader situation, `enforcing` names the review concern, and `teleodynamic` decides whether the lesson is distinct.\n\nBaseline reference test:\n- Foundation check: define `txt` before adding companion distinctions.\n- Scope check: use `com` to set the first public boundary.\n- Orientation check: make `semantic` understandable without a prior article.\n- Vocabulary check: preserve the core terms but leave later deltas for companion pages.\n- Entry-point check: the reader should know what decision comes first.\n\n- File role: `baseline reference` for `Directing AI Agents for Quality`.\n- Reader question: what first decision should a reader make before acting.\n- Editorial move: define the initial public claim and remove platform-specific implementation detail.\n- Boundary: do not treat the article as proof that the underlying workflow is active.\n- Distinct vocabulary: `baseline reference framing scope first-pass orientation` combines with `txt`, `governance`, and `originality` so this page is not interchangeable with a neighboring archive record.\n\n## What To Withhold: semantic\n\n- Use `txt` to name the situation a reader can recognize.\n- Use `com` to define what evidence belongs in the public article.\n- Use `semantic` to decide whether the page is a new lesson or a duplicate.\n- Use `governance` to state what the page does not prove.\n- Use `layer` to remove vague, dramatic, or repetitive wording.\n- Use `agentic` to keep the article useful without hidden context.\n\n## Reuse Check: agent-systems/public-wiki-governance/routing-evidence-map\n\nA good public version helps future contributors act differently: they can recognize the pattern, check the evidence, and avoid overclaiming. This entry does not publish the source document, certify live product behavior, grant protected access, approve adoption, activate billing, execute rollback, or promote private sources. The boundary for this file is: do not treat connectivity planning as proof that every agent route is live. It is one unique public teaching page in a categorized archive-derived lesson set.", "ok": true, "requestId": "83eff1fd-6112-4637-a716-5bbf736190cc"}