About the job
About Our Team
Join the Finance Data team within our CFO organization, where we are dedicated to creating innovative internal data products that enhance analytics capabilities and streamline operations across various business units. Our team is the go-to source for technical expertise on impactful, scalable projects, specializing in financial and transactional data that underpins our daily financial activities.
Your Role
As an Analytics Engineer, you will lay the groundwork for scaling analytics across our organization while promoting best practices in data management as we grow. We are committed to shaping the future of our Finance team.
You will collaborate closely with key stakeholders within Finance and across other business units to identify challenges and develop sustainable solutions. Additionally, you will lead projects that create significant business value and foster a robust data culture among Finance teams.
We are in search of an experienced engineer with a solid background in managing the entire data stack in high-volume transaction environments, specifically overseeing critical ETL pipelines utilized by non-technical teams. As a versatile problem-solver, you will engage in various Finance domains (e.g., Tax datamart, ERP migration, Procurement automation). The ideal candidate thrives in dynamic settings, adapts swiftly to changing requirements, and confidently navigates through ambiguity. Note that this role does not involve training ML models, nor does it focus on ‘product analytics’.
This position is based in San Francisco, CA, operating under a hybrid work model of three days in the office each week. We also offer relocation assistance for new hires.
Key Responsibilities:
Assess the data requirements of Finance teams, including Revenue, Tax, Procurement, Compute & Infrastructure Accounting, and Strategic Finance, translating these needs into actionable technical specifications.
Drive the development of data products and tools that empower stakeholders with self-service capabilities, enabling scalable analytics throughout the organization.
Lead the dimensional design process—defining, owning, and maintaining business-facing data marts.

