Founding Data Engineer

Lotus Health AISan Francisco, CA
3d$180,000 - $220,000Onsite

About The Position

Lotus Health is a groundbreaking primary care app that integrates your medical records, AI, and real doctors to provide free, personalized healthcare and prescriptions. Our team includes ex-founders and engineers who have built and scaled consumer apps to millions of users, generating over $100M in annual revenue. Lotus is backed by Kleiner Perkins, and clinicians at Harvard and Stanford. We’re looking for a founding Data Engineer to help design, simplify, and scale Lotus’s health data infrastructure from the ground up. You’ll work closely with the founding team to unify fragmented data systems, improve data correctness and traceability, and deliver fast, accurate, and explainable information to our AI and clinician agents.Your work will directly impact how medical knowledge is surfaced, validated, and applied in real-world care. This is a rare opportunity to join early, shape the core data foundation, and help define the future of accessible, intelligent healthcare.

Requirements

  • Strong proficiency in Python and SQL
  • Proven experience with system refactors, schema migrations, and data infrastructure simplification
  • Familiarity with PostgreSQL (including JSONB and vector types) and AWS
  • Experience building scalable systems (10K+ users)
  • Comfort working across the stack, from schema design to production debugging
  • Curiosity, pragmatism, and a willingness to deeply understand complex data flows

Nice To Haves

  • Experience with FastAPI, SQLAlchemy, DuckDB, Temporal, ClickHouse, Valkey, or similar systems
  • Knowledge of logging/monitoring stacks (Sentry, Langfuse) and containerized deployments (Docker, ECS)
  • Experience simplifying multi-layered data systems where architectural issues cascade through storage, logging, and application layers
  • Strong intuition for designing systems that balance correctness, observability, and performance

Responsibilities

  • Improve knowledge bases so that citations resolve to original data and searches are fast, relevant, and prioritize tier-one medical information. Continuously enhance retrieval accuracy and data lineage tracking.
  • Rebuild data pipelines to eliminate stale data, support clinician and patient corrections, and ensure full traceability. Design models that sync cleanly with health data partners and credentialing authorities.
  • Build monitoring and analytics for background jobs to monitor failure rates and identify partner vs. internal issues. Streamline tracing, logging, and auditing to reduce redundancy while maintaining compliance-grade visibility.
  • Enable seamless data migration between Lotus deployments with proper cache handling and deletion workflows. Safeguard integrity and privacy during transfers.

Benefits

  • Join a team redefining how healthcare data is understood and acted upon.
  • You’ll work with a world-class group of engineers, clinicians, and AI researchers to build something with lasting impact — accessible, free primary care for everyone.
  • As the first Data Engineer on a small, exceptional team you’ll have the autonomy to build the foundation and see your work directly influence patient care at scale.
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