Skip to content

Analytics Engineer

Pivotal Health LogoPivotal Health

Salary

$160,000 - $180,000

Location

Santa Monica, CA; New York, NY; San Francisco, CA

Posted

Today

We're hiring a Data Engineer to sit at the intersection of our analytics and engineering teams. You'll be responsible for making Pivotal's product data accessible, reliable, and ready for analysis, connecting data sources to our warehouse, building clean transformation pipelines, and ensuring our analysts have what they need to drive business decisions.

This is not a traditional software engineering role and it's not a pure analyst role either. You'll bring a strong technical foundation and apply it in service of business outcomes: faster reporting, better data access, and more reliable pipelines that the team can actually trust.

If you enjoy building the infrastructure that makes great analysis possible and care about the business impact of your work, this role is for you.

What You’ll Do

  • Own the pipeline from product database to analytics warehouse: Take full ownership of extracting data from our PostgreSQL product database and loading it into BigQuery. Design and maintain the ETL processes that make this happen reliably, with the right structure for downstream analytics use.

  • Bring in new data sources: Expand our analytics footprint by integrating new data sources, including third-party tools like Salesforce, into our warehouse. You'll partner with our DevOps team to establish the right service accounts, permissions, and connection patterns to do this securely and correctly.

  • Build and maintain analytics-ready tables: Use dbt to design, build, and manage the transformation layer that turns raw data into clean, well-structured tables. You'll have real ownership over what the data looks like: what gets modeled, how it's shaped, and what makes it most useful for reporting.

  • Support reporting and business insights: Work alongside our analysts to support the reporting layer, ensuring data is fresh, accurate, and structured in a way that makes building dashboards and reports in Tableau, Power BI, or Metabase reliable and efficient.

  • Be the bridge between analytics and engineering: Attend engineering team meetings to stay ahead of product changes that could affect analytics. Serve as the connective tissue between both teams, translating data needs into technical solutions and keeping everyone aligned.

Who You Are

  • Strong SQL skills with hands-on experience in modern cloud data warehouses: BigQuery, Snowflake, or Redshift

  • Proficient with dbt for managing SQL transformations. You understand how to write clean, maintainable, well-documented models

  • Comfortable with Python at a working level, enough to build and automate data workflows without needing to be a full software engineer

  • Experience with at least one BI or reporting tool (Tableau, Power BI, Metabase, or similar)

  • You think in business outcomes: your resume reflects the impact your work had, not just the tools you used

  • Self-directed and comfortable with ambiguity: you can identify what needs to be done and execute without heavy guidance

  • Collaborative by nature: you know how to work across teams with different levels of technical depth

  • Startup or high-growth company experience: you're used to environments where ownership is real and speed matters

Extra Credit If You Have

  • Hands-on experience with BigQuery specifically

  • Experience connecting BI tools to a cloud warehouse (e.g., Power BI to BigQuery)

  • Experience with Salesforce data or CRM integrations

  • Background in FinTech, HealthTech, or other data-rich industries