Senior Analytics Engineer (f/m/d)
Earlybird Venture Capital
About Earlybird
More information on www.earlybird.com, LinkedIn, and X.
This role exists because EagleEye needs a dedicated owner of the semantic + scoring layer and make data available to our internal users — true to Earlybird’s roll-up-sleeves ethos and ambition to back Europe’s next tech leaders.
At Earlybird, your projects, responsibilities, and tasks will likely include:
- Build semantic SQL models (Founder, Startup, Funding, Markets) that translate raw data into investor-ready insights.
- Own scoring and prioritization frameworks for stealth-founder detection; version and deploy via SQLMesh.
- Deliver reliable BigQuery→Postgres batch workflows (no realtime), with clear SLAs, monitoring, and runbooks.
- Enable investor workflows by surfacing dashboards, signals, and lists that guide outreach and decisions.
- Embed a shared language across teams—glossary, canonical terms, and entity-resolution rules.
- Harden quality with SQLMesh tests/validations; keep models auditable, reproducible, and safe to change.
What we hope you bring to the role:
- You write SQL daily and ship maintainable models in BigQuery and Postgres.
- You’ve delivered analytical data products (dashboards/signals/scoring) that changed decisions.
- You operate safe batch workflows (design, schedule, monitor, troubleshoot) and explain trade-offs clearly.
- You communicate simply, document well, and collaborate with non-engineers.
- Experience with SQLMesh/dbt, backtesting simple scoring models, or light ML.
- Familiarity with venture data or investor workflows.