Finance Analytics Engineer

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

This role is for a Finance Analytics Engineer who will own the data layer for the Finance team, building models, pipelines, and reporting infrastructure. Responsibilities include owning the dbt transformation layer, orchestrating runs with Airflow, delivering dashboards, partnering with finance teams, setting data quality standards, and building a data foundation to support AI automation. Requires 5+ years of experience in analytics engineering or data engineering, with expertise in SQL, dbt, Snowflake, and Airflow, and strong dimensional modeling fundamentals.

What you'd actually do

  1. Own and evolve the dbt transformation layer for Finance: design, build, test, document, and maintain models covering billing, financial performance, compute unit economics, and operational metrics
  2. Author and maintain Airflow DAGs (Astronomer-managed) that orchestrate Finance dbt runs, data quality checks, and downstream dependencies reliably
  3. Deliver dashboards and reporting in Hex for the executive team covering financial performance, utilization, and key operating metrics
  4. Partner with Strategic Finance, FP&A, and Accounting teams on the data infrastructure behind forecasting, cost modeling, and other financial analyses
  5. Set data quality standards across Finance data products and own incident response when Finance-critical pipelines break
  6. Build the data foundation – clean, well-structured, documented, and reliably maintained – that enables Finance team to self-serve data analysis and supports AI automation and agentic workflows

Skills

Required

  • 5+ years in an analytics engineering or data engineering role
  • Expert SQL
  • production-grade dbt experience
  • Hands-on experience with Snowflake and Airflow in production
  • Solid dimensional modeling fundamentals
  • Strong dashboarding skills
  • Clear communicator
  • High comfort with ambiguity

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 (Iceberg, Delta, Hudi) and hybrid warehouse/lake architectures
  • 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

What the JD emphasized

  • own the data layer that Finance runs on — building from scratch
  • own and evolve the dbt transformation layer
  • own incident response
  • build the data foundation