7+ years in data engineering/analytics engineering with ownership of production pipelines and BI at scale Demonstrated success owning and stabilizing production data platforms and critical pipelines Strong grasp of modern data platforms (e.g., Snowflake) Strong grasp of orchestration (Airflow) Strong grasp of transformation frameworks (dbt or equivalent) Competence with data integration (ELT/ETL) Competence with APIs Competence with cloud storage Competence with SQL performance tuning Practical data reliability experience: observability, lineage, testing, and change management Operates effectively in ambiguous, partially documented environments; creates order quickly through documentation and standards Prior ownership of core operations and reliability for business-critical pipelines with defined SLOs and incident response Demonstrated client-facing experience (consulting/agency or internal platform teams with cross-functional stakeholders) Outstanding written/verbal communication (executive briefings, workshops, decision memos) Basic scripting ability in Python (preferred) Practical Generative AI experience (preferred) Working knowledge of LLM behavior (preferred) Comfort with vector search (preferred) Evaluation & safety basics (preferred) MLOps for LLMs (preferred) Python scripting for data/LLM utilities and service integration (preferred) Familiarity with BI tools (Power BI/Tableau) and semantic layer design (preferred) Exposure to streaming, reverse ETL, and basic MDM/reference data management (preferred) Security & governance awareness (preferred)