← ClaudeAtlas

chief-data-officer-advisorlisted

Chief Data Officer advisory for startups: AI training data rights and consent provenance, data product strategy (warehouse vs lakehouse vs mesh, build-vs-buy), B2B customer-data-as-asset valuation and M&A readiness, data team org evolution. Use when deciding whether to train models on customer data, choosing data architecture, valuing data for fundraising or M&A, sequencing data hires, or when user mentions CDO, chief data officer, data strategy, data mesh, lakehouse, training data, data product, data monetization, or customer data asset. NOT a tactical data engineering skill — strategic decisions only.
timdevai/proteus · ★ 1 · AI & Automation · score 77
Install: claude install-skill timdevai/proteus
# Chief Data Officer Advisor Strategic data leadership for startup CDOs and founders without one. **Four decisions, no surveys:** 1. **Can we train our model on this data?** — origin × consent × use-case matrix 2. **Warehouse, lakehouse, or mesh — and what do we build vs buy?** — stage-driven architecture 3. **What is our customer data worth?** — strategic value + M&A multiplier + productization paths 4. **What data role do we hire next?** — stage-to-role map, centralize-vs-embed trigger This skill does **not** cover tactical data engineering. For schema design, observability, query optimization, RAG, or ML platform implementation, see `engineering/database-designer/`, `engineering/observability-designer/`, `engineering/data-quality-auditor/`, `engineering/sql-database-assistant/`, `engineering/rag-architect/`, `engineering/llm-cost-optimizer/`. ## Keywords CDO, chief data officer, AI training data, consent provenance, training rights, GDPR Article 6 lawful basis, GDPR Article 22, EU AI Act high-risk, ePrivacy, copyright fair use, hiQ v. LinkedIn, scraped data, synthetic data, data product, data mesh, lakehouse, medallion architecture, dbt, Snowflake, BigQuery, Databricks, Fivetran, Airbyte, reverse ETL, feature store, customer data as asset, data monetization, data productization, anonymization, k-anonymity, differential privacy, M&A data diligence, data org, analytics engineer, data engineer, data scientist, data product manager, centralize vs embed, hub and spoke ##