01 / 08
A continuously learning agency intelligence platform with three differentiated layers: Causal AI, Temporal Knowledge Graph, and Cross-Client Pattern Learning.
02 / 08
AI-forward agency intelligence with causal validation and cross-client learning
The "WHY" - Proving causation, not just correlation
The "WHAT" - Zep/Graphiti bitemporal pattern
The "HOW" - Network effect moat
Poetry's moat is NOT any single AI capability but the integration of three layers that competitors struggle to replicate: Causal AI (the "why"), Temporal Knowledge Graph (the "what"), and Cross-Client Learning (the "how").
03 / 08
8 signal categories with real-time to quarterly capture frequencies
04 / 08
DoWhy/EconML causal inference + 67% faster anomaly detection
Daily 6AM trigger → Parallel n8n collection (GA4, News, Media, Competitive) → Anomaly detection → Slack alerts
signal-aggregation.bpmn
Severity routing (Critical: 1h, High: 4h SLA) → Causal analysis → Human-in-loop investigation → Resolution
anomaly-response.bpmn
McKinsey Finding: 40% of ad spend is wasted without causal validation. Poetry's integration of DoWhy/EconML with the MMM Allocator provides "Validated ROI" badges on recommendations.
05 / 08
Privacy-safe aggregate patterns creating a network effect moat
06 / 08
Privacy-safe aggregate learning with k-anonymity guarantees
Never shared, never exposed, stays in client scope
Only aggregate metrics, stripped of identifiers
Insights from 100+ patterns benefit all clients
07 / 08
Knowledge Graph schemas, CortexOne functions, and BPMN workflows
signals-intelligence.cyphertemporal-memory.cyphercausal-validation.cyphercross-client-patterns.cypher
Location: packages/knowledge-base/poetry/schema/
Location: cortexone-functions/
signal-aggregation.bpmnanomaly-response.bpmn
Location: packages/bpmn/poetry/processes/
Google Analytics 4 → Knowledge Base
News/RSS → Competitive intelligence
Anomaly alerts → Slack notifications
Location: packages/n8n/workflows/
08 / 08
What makes Poetry Intelligence System a competitive moat
DoWhy/EconML integration proves causation, not just correlation. 40% of ad spend identified as wasted without causal validation.
Zep/Graphiti-style bitemporal knowledge graph enables point-in-time queries and 18.5% accuracy improvement.
Cross-client learning with privacy guarantees creates value that increases with each new client.
k-anonymity (min 5 clients), differential privacy, and aggregate-only patterns ensure client data protection.
The "WHY"
Validates causation
The "WHAT"
Bitemporal context
The "HOW"
Network effect moat
Schemas: packages/knowledge-base/poetry/schema/ | Functions: cortexone-functions/ | n8n: packages/n8n/workflows/