Full Stack Engineer
Credo HealthThis is an early engineering hire on our Platform team (5–7 people), reporting to me. You'll work the full stack, shape our architecture, and ship to real users every week. High ownership, lots of surface area, frequent collaboration with our ML team.
Stack: Python/Django, Postgres, Vue, Temporal (for our patient-ingestion pipeline and long-running workflows), Google Cloud, and a mix of AI models (mostly Gemini + OpenAI). No prior Temporal experience needed, just enthusiasm for it.
How we work: strong code-review and pairing culture, serious about testing, async-first with a single daily sync, and we've fully integrated plan/spec-based AI tooling into our workflow (Claude, Cursor, CodeRabbit, Copilot — your choice).
Looking for 3–5+ yrs full-stack experience, solid Python + a backend framework, comfort with relational DBs, a modern JS framework, real testing chops, and someone who thrives with ambiguity and owns problems end to end. Healthcare/FHIR/HL7 and AI-feature experience are nice-to-haves, not requirements. Must be in/near NYC for the weekly in-person day.
Apply here: https://app.dover.com/apply/Credo%20Health/0cc80a85-2953-40c...
Happy to answer questions in the thread!
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