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chore(WP-0013): create Phase 12 workplan — Platform Memory and Continuous Learning
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Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
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workplans/IHUB-WP-0013-ihf-phase12-platform-memory.md
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workplans/IHUB-WP-0013-ihf-phase12-platform-memory.md
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---
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id: IHUB-WP-0013
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type: workplan
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title: "IHF Phase 12 — Platform Memory and Continuous Learning"
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domain: inter_hub
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repo: inter-hub
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status: todo
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owner: custodian
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topic_slug: inter_hub
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created: "2026-04-01"
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updated: "2026-04-01"
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state_hub_sync: done
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state_hub_workstream_id: "baeb2891-2136-4ac5-aa03-b635e87285dd"
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---
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# IHF Phase 12 — Platform Memory and Continuous Learning
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## Goal
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Close the longest feedback loop in the IHF: from deployed outcome signals and
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accumulated governance history back to improved distillation, better routing,
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and sharper AI proposals. Phase 12 makes the IHF a learning platform, not
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merely a record-keeping one.
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## Background
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Phases 1–11 and IHUB-WP-0013 entry gates are satisfied:
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- Phase 4 `OutcomeSignal` append-only table operational ✓
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- Phase 7 `FrictionScore` + `BottleneckRecord` + `HubHealthSnapshot` operational ✓
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- Phase 10 `WidgetPattern` + `PatternAdoption` with aggregate panel ✓
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- Phase 11 `AgentRegistration` + `ModelRoutingPolicy` + `AiGovernancePolicy` operational ✓
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- Full traceability chain: Widget → Annotation → RequirementCandidate →
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Requirement → DecisionRecord → DeploymentRecord → OutcomeSignal ✓
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- GAAF scorecard at 3.61 (Strong) ✓
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Reference: `specs/InteractionHubFrameworkSpecification_v0.2.md` §Phase 12.
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## GAAF Architectural Constraints
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1. `outcome_correlations.correlation_type` must carry a CHECK constraint
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(`annotation_predictor`, `routing_quality`, `pattern_quality`).
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2. `learning_insights.insight_type` must carry a CHECK constraint
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(`annotation_predictor`, `threshold_calibration`, `pattern_ranking`,
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`routing_improvement`).
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3. **Core table extensions** — `decision_records` and `requirement_candidates`
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gain `outcome_summary JSONB NULL` columns via ALTER TABLE. This requires
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updating `/contracts/core/` (GAAF rule 3).
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4. The outcome_signals enrichment trigger is **read-only on core tables** —
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it may UPDATE outcome_summary on non-append-only columns; it must never
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UPDATE outcome_signals or interaction_events.
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5. The knowledge base uses PostgreSQL GIN full-text search over
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`institutional_knowledge_entries.summary`, not a vector database.
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Simple, dependency-free, works with the existing Postgres stack.
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## Data Artifacts Introduced
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`OutcomeCorrelation`, `PatternPerformanceRecord`, `AdaptiveThresholdConfig`,
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`InstitutionalKnowledgeEntry`, `LearningInsight`
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### Schema additions
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```sql
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-- outcome_correlations: links annotation signals to downstream outcome quality
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-- GAAF: correlation_type CHECK constraint
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CREATE TABLE outcome_correlations (
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id UUID DEFAULT uuid_generate_v4() PRIMARY KEY NOT NULL,
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hub_id UUID NOT NULL REFERENCES hubs(id),
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annotation_category TEXT NOT NULL REFERENCES annotation_category_registry(name),
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correlation_type TEXT NOT NULL DEFAULT 'annotation_predictor',
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correlation_score DOUBLE PRECISION NOT NULL,
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-- score = fraction of positive outcomes for this category in this hub
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sample_count INTEGER NOT NULL DEFAULT 0,
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computed_at TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL,
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CHECK (correlation_type IN ('annotation_predictor', 'routing_quality', 'pattern_quality'))
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);
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CREATE INDEX outcome_correlations_hub_idx ON outcome_correlations (hub_id);
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CREATE INDEX outcome_correlations_score_idx ON outcome_correlations (correlation_score DESC);
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-- pattern_performance_records: per-pattern historical outcome quality
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CREATE TABLE pattern_performance_records (
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id UUID DEFAULT uuid_generate_v4() PRIMARY KEY NOT NULL,
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widget_pattern_id UUID NOT NULL REFERENCES widget_patterns(id),
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hub_id UUID NOT NULL REFERENCES hubs(id),
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adoption_count INTEGER NOT NULL DEFAULT 0,
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positive_outcome_count INTEGER NOT NULL DEFAULT 0,
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total_outcome_count INTEGER NOT NULL DEFAULT 0,
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mean_outcome_value DOUBLE PRECISION,
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outcome_rank INTEGER,
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calibrated_at TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL,
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UNIQUE (widget_pattern_id, hub_id)
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);
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CREATE INDEX pattern_performance_pattern_idx ON pattern_performance_records (widget_pattern_id);
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CREATE INDEX pattern_performance_rank_idx ON pattern_performance_records (hub_id, outcome_rank);
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-- adaptive_threshold_configs: per-hub friction weight overrides
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CREATE TABLE adaptive_threshold_configs (
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id UUID DEFAULT uuid_generate_v4() PRIMARY KEY NOT NULL,
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hub_id UUID NOT NULL REFERENCES hubs(id) UNIQUE,
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weight_overrides JSONB NOT NULL DEFAULT '{}',
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-- keys: friction component names; values: multiplier floats
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bottleneck_threshold_override DOUBLE PRECISION,
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calibration_date TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL,
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notes TEXT
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);
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CREATE INDEX adaptive_threshold_hub_idx ON adaptive_threshold_configs (hub_id);
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-- institutional_knowledge_entries: distilled decision summaries
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-- GIN index for full-text search
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CREATE TABLE institutional_knowledge_entries (
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id UUID DEFAULT uuid_generate_v4() PRIMARY KEY NOT NULL,
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hub_id UUID NOT NULL REFERENCES hubs(id),
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decision_record_id UUID REFERENCES decision_records(id),
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summary TEXT NOT NULL,
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summary_tsv TSVECTOR GENERATED ALWAYS AS (to_tsvector('english', summary)) STORED,
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tags JSONB NOT NULL DEFAULT '[]',
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created_at TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL,
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updated_at TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL
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);
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CREATE INDEX institutional_knowledge_hub_idx ON institutional_knowledge_entries (hub_id);
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CREATE INDEX institutional_knowledge_fts_idx ON institutional_knowledge_entries USING GIN (summary_tsv);
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-- learning_insights: platform-level insights with evidence
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-- GAAF: insight_type CHECK constraint
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CREATE TABLE learning_insights (
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id UUID DEFAULT uuid_generate_v4() PRIMARY KEY NOT NULL,
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hub_id UUID NOT NULL REFERENCES hubs(id),
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insight_type TEXT NOT NULL,
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title TEXT NOT NULL,
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body TEXT NOT NULL,
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evidence_links JSONB NOT NULL DEFAULT '[]',
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-- array of {type, id, label} objects
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is_actioned BOOLEAN NOT NULL DEFAULT FALSE,
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computed_at TIMESTAMP WITH TIME ZONE DEFAULT NOW() NOT NULL,
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CHECK (insight_type IN (
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'annotation_predictor',
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'threshold_calibration',
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'pattern_ranking',
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'routing_improvement'
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))
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);
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CREATE INDEX learning_insights_hub_idx ON learning_insights (hub_id);
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CREATE INDEX learning_insights_type_idx ON learning_insights (insight_type);
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-- Extend core tables with outcome_summary (retroactive lineage enrichment)
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-- GAAF: requires /contracts/core/ update (T06)
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ALTER TABLE decision_records
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ADD COLUMN outcome_summary JSONB NULL;
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ALTER TABLE requirement_candidates
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ADD COLUMN outcome_summary JSONB NULL;
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```
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---
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## Tasks
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### T01 — Schema: all Phase 12 tables + migration
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```task
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id: IHUB-WP-0013-T01
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status: todo
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priority: high
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state_hub_task_id: "7bef90d5-7efc-488b-80ba-7f1a2220f75a"
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```
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Add all Phase 12 tables to `Application/Schema.sql` and write migration
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`Application/Migration/<timestamp>-ihf-phase12-platform-memory.sql`.
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Includes ALTER TABLE on `decision_records` and `requirement_candidates` for
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`outcome_summary JSONB NULL`. Update `/contracts/core/` to document the new
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columns per GAAF rule 3.
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---
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### T02 — Outcome correlation engine
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```task
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id: IHUB-WP-0013-T02
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status: todo
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priority: high
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state_hub_task_id: "589bf316-1a44-4726-b88c-cc7940f4dc53"
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```
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**`Application/Helper/CorrelationEngine.hs`** — pure computation:
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```haskell
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module Application.Helper.CorrelationEngine where
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import IHP.Prelude
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import Generated.Types
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import Database.PostgreSQL.Simple (Only(..))
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-- | For a hub, compute the correlation score per annotation category:
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-- fraction of traceability chains that end in a positive outcome signal
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-- (signal_type IN ('success', 'adoption', 'satisfaction')).
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computeAnnotationCorrelations ::
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(?modelContext :: ModelContext) =>
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Id Hub -> IO [(Text, Double, Int)]
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-- ^ [(category, score, sample_count)]
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computeAnnotationCorrelations hubId =
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sqlQuery
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"SELECT a.category, \
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\ COALESCE(AVG(CASE WHEN os.signal_type IN ('success','adoption','satisfaction') \
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\ THEN 1.0 ELSE 0.0 END), 0) AS score, \
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\ COUNT(os.id)::int AS sample_count \
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\ FROM annotations a \
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\ JOIN widgets w ON w.id = a.widget_id \
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\ JOIN requirement_candidates rc ON rc.source_widget_id = w.id \
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\ JOIN requirements r ON r.candidate_id = rc.id \
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\ JOIN decision_records dr ON dr.requirement_id = r.id \
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\ JOIN deployment_records dep ON dep.decision_id = dr.id \
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\ JOIN outcome_signals os ON os.deployment_id = dep.id \
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\ WHERE w.hub_id = ? \
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\ GROUP BY a.category \
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\ ORDER BY score DESC"
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[hubId]
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```
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**`Web/Controller/OutcomeCorrelations.hs`**:
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- `ComputeCorrelationsAction { hubId }` — runs engine, upserts `OutcomeCorrelation`
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records, generates a `LearningInsight` of type `annotation_predictor` for
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the top-scoring category
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- `OutcomeCorrelationsAction` — index view sorted by score
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**Views:** `Web/View/OutcomeCorrelations/{Index,Show}.hs`
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---
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### T03 — Pattern performance memory
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```task
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id: IHUB-WP-0013-T03
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status: todo
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priority: high
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state_hub_task_id: "3790e9da-a28b-4287-a0bb-0083e2af42f7"
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```
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**`ComputePatternPerformanceAction { hubId }`** in a new
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`Web/Controller/PatternPerformance.hs`:
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```sql
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SELECT
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wp.id AS pattern_id,
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COUNT(DISTINCT pa.id) AS adoption_count,
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COUNT(os.id) AS total_outcome_count,
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COUNT(os.id) FILTER (
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WHERE os.signal_type IN ('success','adoption','satisfaction')
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) AS positive_outcome_count,
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AVG(os.value) AS mean_outcome_value
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FROM widget_patterns wp
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JOIN pattern_adoptions pa ON pa.widget_pattern_id = wp.id
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JOIN widgets w ON w.hub_id = pa.adopting_hub_id
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AND w.widget_type = wp.widget_type
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JOIN deployment_records dep ON dep.id IN (
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SELECT dep2.id FROM deployment_records dep2
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JOIN decision_records dr2 ON dr2.id = dep2.decision_id
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JOIN requirements r2 ON r2.id = dr2.requirement_id
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JOIN requirement_candidates rc2 ON rc2.id = r2.candidate_id
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WHERE rc2.source_widget_id = w.id
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)
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JOIN outcome_signals os ON os.deployment_id = dep.id
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WHERE pa.adopting_hub_id = ?
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GROUP BY wp.id
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```
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Writes `PatternPerformanceRecord` per pattern, computes `outcome_rank` via
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`RANK() OVER (ORDER BY positive_outcome_count::float / NULLIF(total_outcome_count,0) DESC)`.
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Update `Web/Controller/MarketplaceDashboard.hs`: if `PatternPerformanceRecord`
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exists for a pattern, use `outcome_rank` for sort order.
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---
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### T04 — Adaptive friction thresholds
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```task
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id: IHUB-WP-0013-T04
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status: todo
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priority: medium
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state_hub_task_id: "a1de1a6b-14aa-4a3c-a103-d2630b762d30"
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```
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**`CalibrateThresholdsAction { hubId }`** in
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`Web/Controller/AdaptiveThresholds.hs`:
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1. Query `OutcomeCorrelation` records for the hub — find which annotation
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categories have `correlation_score < 0.3` (weak predictors)
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2. Compute a `bottleneck_threshold_override` = mean `friction_score` for
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widgets with negative outcomes only
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3. Upsert `AdaptiveThresholdConfig` for the hub
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4. Write `LearningInsight` of type `threshold_calibration`
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Update `Application/Helper/FrictionScore.hs`:
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```haskell
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-- | Read per-hub AdaptiveThresholdConfig and apply weight_overrides
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-- to friction component scores before summing. Falls back to global
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-- defaults when no config exists for the hub.
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applyAdaptiveWeights ::
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(?modelContext :: ModelContext) =>
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Id Hub -> FrictionComponents -> IO Double
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applyAdaptiveWeights hubId components = do
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mConfig <- query @AdaptiveThresholdConfig
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|> filterWhere (#hubId, hubId)
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|> fetchOneOrNothing
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let overrides = maybe mempty (.weightOverrides) mConfig
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pure $ computeWeightedScore overrides components
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```
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**Views:** `Web/View/AdaptiveThresholds/{Index,Show}.hs`
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---
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### T05 — Institutional knowledge base
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```task
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id: IHUB-WP-0013-T05
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status: todo
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priority: medium
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state_hub_task_id: "16f03f8e-e664-4589-bdba-45cfed638595"
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```
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**`DistilDecisionAction { decisionRecordId }`** — appended to
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`Web/Controller/DecisionRecords.hs`:
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```haskell
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action DistilDecisionAction { decisionRecordId } = do
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record <- fetch decisionRecordId
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outcomes <- sqlQuery
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"SELECT os.signal_type, os.value FROM outcome_signals os
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JOIN deployment_records dep ON dep.id = os.deployment_id
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WHERE dep.decision_id = ?" [decisionRecordId]
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let prompt = "Distil this decision into a 2-3 sentence institutional
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knowledge entry. Include the outcome data.\n\nDecision: "
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<> record.title <> "\nRationale: " <> record.rationale
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<> "\nOutcome: " <> record.outcome
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<> "\nSignals: " <> show (outcomes :: [(Text, Double)])
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mAgent <- resolveAgent record.hubId "synthesis"
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...
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newRecord @InstitutionalKnowledgeEntry
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|> set #hubId record.hubId
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|> set #decisionRecordId (Just decisionRecordId)
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|> set #summary content
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|> set #tags (A.toJSON ["decision" :: Text])
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|> createRecord
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```
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**`QueryKnowledgeBaseAction`** — full-text search:
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```sql
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SELECT id, hub_id, decision_record_id, summary, tags, created_at
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FROM institutional_knowledge_entries
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WHERE hub_id = ?
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AND summary_tsv @@ plainto_tsquery('english', ?)
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ORDER BY ts_rank(summary_tsv, plainto_tsquery('english', ?)) DESC
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LIMIT 20
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```
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**Views:** `Web/View/InstitutionalKnowledge/{Index,Show}.hs` with search form.
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||||
---
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### T06 — Retroactive lineage enrichment
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```task
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id: IHUB-WP-0013-T06
|
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status: todo
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priority: medium
|
||||
state_hub_task_id: "cad61a11-7fdb-4e69-9dba-bb0176b2afdb"
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```
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**PL/pgSQL trigger** (in migration SQL):
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```sql
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CREATE OR REPLACE FUNCTION enrich_lineage_on_outcome()
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RETURNS TRIGGER LANGUAGE plpgsql AS $$
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DECLARE
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v_dep_id UUID;
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||||
v_dec_id UUID;
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||||
v_req_id UUID;
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v_cand_id UUID;
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v_summary JSONB;
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BEGIN
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-- Walk chain upward from the new outcome_signal
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SELECT decision_id INTO v_dec_id
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FROM deployment_records WHERE id = NEW.deployment_id;
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IF v_dec_id IS NOT NULL THEN
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v_summary := jsonb_build_object(
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'signal_type', NEW.signal_type,
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'value', NEW.value,
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'observed_at', NEW.observed_at
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||||
);
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||||
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||||
UPDATE decision_records
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SET outcome_summary = COALESCE(outcome_summary, '[]'::jsonb) || v_summary
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WHERE id = v_dec_id;
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||||
|
||||
SELECT requirement_id INTO v_req_id
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||||
FROM decision_records WHERE id = v_dec_id;
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||||
|
||||
IF v_req_id IS NOT NULL THEN
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SELECT candidate_id INTO v_cand_id
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||||
FROM requirements WHERE id = v_req_id;
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||||
|
||||
IF v_cand_id IS NOT NULL THEN
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||||
UPDATE requirement_candidates
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||||
SET outcome_summary = COALESCE(outcome_summary, '[]'::jsonb) || v_summary
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||||
WHERE id = v_cand_id;
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||||
END IF;
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||||
END IF;
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||||
END IF;
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||||
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||||
RETURN NEW;
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||||
END;
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||||
$$;
|
||||
|
||||
CREATE TRIGGER trg_enrich_lineage
|
||||
AFTER INSERT ON outcome_signals
|
||||
FOR EACH ROW EXECUTE FUNCTION enrich_lineage_on_outcome();
|
||||
```
|
||||
|
||||
**`EnrichLineageAction { hubId }`** in `Web/Controller/LineageEnrichment.hs`
|
||||
— batch on-demand version: queries existing outcome_signals for the hub and
|
||||
calls the same enrichment logic via a SQL function call.
|
||||
|
||||
Update `/contracts/core/append-only-events-v1.md` to note that
|
||||
`outcome_signals` now has an AFTER INSERT trigger that enriches upstream
|
||||
records (read: the trigger never modifies outcome_signals itself).
|
||||
|
||||
---
|
||||
|
||||
### T07 — Learning dashboard
|
||||
|
||||
```task
|
||||
id: IHUB-WP-0013-T07
|
||||
status: todo
|
||||
priority: medium
|
||||
state_hub_task_id: "4445282e-e87c-48fe-87ba-484da4121195"
|
||||
```
|
||||
|
||||
**`Web/Controller/LearningDashboard.hs`** with `autoRefresh`:
|
||||
|
||||
```haskell
|
||||
data ShowView = ShowView
|
||||
{ topCorrelations :: ![OutcomeCorrelation]
|
||||
, patternRankings :: ![PatternPerformanceRecord]
|
||||
, thresholdStatus :: ![(Hub, Maybe AdaptiveThresholdConfig)]
|
||||
, recentInsights :: ![LearningInsight]
|
||||
, knowledgeHighlights :: ![InstitutionalKnowledgeEntry]
|
||||
}
|
||||
```
|
||||
|
||||
Five panels:
|
||||
|
||||
1. **Top annotation predictors** — `OutcomeCorrelation` top 10 by score,
|
||||
with colour-coded bars (green ≥ 0.7, amber 0.4–0.7, red < 0.4)
|
||||
2. **Pattern performance ranking** — `PatternPerformanceRecord` top 10 by
|
||||
`positive_outcome_rate`, with link to pattern show page
|
||||
3. **Adaptive threshold status** — per hub: last calibration date, drift
|
||||
indicator (days since last calibration > 30 = amber)
|
||||
4. **Recent learning insights** — last 10 `LearningInsight` with type badge
|
||||
and evidence link count
|
||||
5. **Knowledge base highlights** — 5 most recent
|
||||
`InstitutionalKnowledgeEntry` with excerpt and link to full entry
|
||||
|
||||
Add "Learning" nav link in `Web/FrontController.hs`.
|
||||
|
||||
---
|
||||
|
||||
### T08 — API v2: /outcome-correlations, /pattern-performance, /knowledge-base
|
||||
|
||||
```task
|
||||
id: IHUB-WP-0013-T08
|
||||
status: todo
|
||||
priority: medium
|
||||
state_hub_task_id: "2b3e7f84-c8f6-42fc-bb0a-4c524efd1688"
|
||||
```
|
||||
|
||||
**`Web/Controller/Api/V2/Learning.hs`**:
|
||||
|
||||
- `GET /api/v2/outcome-correlations` — paginated; filter `?hub_id=`, `?category=`
|
||||
- `GET /api/v2/pattern-performance` — paginated; sort by `positive_outcome_rate`
|
||||
- `GET /api/v2/knowledge-base` — full-text search via `?q=`; paginated
|
||||
- `GET /api/v2/knowledge-base/{id}` — single entry
|
||||
|
||||
All require `BearerAuth`. Add three schemas to `Web/Controller/Api/V2/OpenApi.hs`:
|
||||
`OutcomeCorrelation`, `PatternPerformanceRecord`, `InstitutionalKnowledgeEntry`.
|
||||
|
||||
Update `Web/Types.hs`:
|
||||
```haskell
|
||||
data ApiV2LearningController
|
||||
= ApiV2IndexOutcomeCorrelationsAction
|
||||
| ApiV2IndexPatternPerformanceAction
|
||||
| ApiV2IndexKnowledgeBaseAction
|
||||
| ApiV2ShowKnowledgeBaseAction { knowledgeEntryId :: !(Id InstitutionalKnowledgeEntry) }
|
||||
deriving (Eq, Show, Data)
|
||||
```
|
||||
|
||||
---
|
||||
|
||||
### T09 — GAAF scorecard + CLAUDE.md + workplan done
|
||||
|
||||
```task
|
||||
id: IHUB-WP-0013-T09
|
||||
status: todo
|
||||
priority: medium
|
||||
state_hub_task_id: "a9048aeb-5e4b-49e5-b8f5-159ede9ab04c"
|
||||
```
|
||||
|
||||
**`ARCHITECTURE-LAYERS.md`** scorecard update:
|
||||
|
||||
- Core: 3.8 → 3.9 (lineage enrichment trigger + outcome_summary columns;
|
||||
contracts updated to document them)
|
||||
- Functional: 3.6 → 3.8 (outcome correlation + adaptive thresholds close
|
||||
the long-range feedback loop; learning dashboard makes insights visible)
|
||||
- Target overall: ≥ 3.75
|
||||
|
||||
Decisions Log entries:
|
||||
- Trigger-based lineage enrichment over polling (AFTER INSERT, zero app-layer overhead)
|
||||
- GIN tsvector over pgvector for knowledge base search (no extension dependency, sufficient for keyword queries)
|
||||
- `outcome_summary` as JSONB append (not a normalised table) to avoid joins on already-deep traceability queries
|
||||
|
||||
**`CLAUDE.md`**: Phase 12 complete → active workplan cleared (IHF v0.2 complete).
|
||||
|
||||
**Commit** all changes. **Mark workplan `status: done`.**
|
||||
Reference in New Issue
Block a user