Analytics Engineer — Data Warehouse

Together AI Together AI · Data AI · San Francisco, CA · Engineering

Staff Analytics Engineer role focused on building and maintaining the data warehouse transformation layer using dbt and Airflow. The role involves dimensional modeling, data quality, governance, and stakeholder management, with a focus on financial and billing data. The company is an AI infrastructure and platform company.

What you'd actually do

  1. Own and evolve the dbt transformation layer: design, implement, test, document, and maintain modular dbt projects that cover billing, product usage, financial data, and operational metrics.
  2. Build analytics-ready dimensional models following Kimball methodology: star schemas, conformed dimensions, fact tables with the right grain, and SCD Type 2 for slowly changing entities.
  3. Author and maintain Airflow DAGs (Astronomer-managed) that orchestrate dbt runs, data quality checks, and downstream dependencies reliably.
  4. Implement data quality checks at every layer: freshness, null/uniqueness tests, referential integrity, distribution drift, and business-rule assertions.
  5. Be the analytical partner to Finance, GTM, Product, and Engineering — translate business questions into durable data models, not one-off queries.

Skills

Required

  • Expert SQL
  • dbt
  • Airflow / Astronomer
  • Dimensional modeling
  • Stakeholder management
  • Strong written communication

Nice to have

  • Experience with financial data or billing data
  • Experience with PII handling, data masking, access-tier modeling, or compliance work (SOC 2, ISO 27001, GDPR, CCPA)
  • Familiarity with lakehouse patterns
  • Python for data tooling
  • Experience with Hex, Metabase, or similar notebook/BI tooling
  • Prior experience in a high-growth AI/ML infrastructure or platform company