FamilyWell Health is an AI-enabled mental health start-up focused on addressing the women’s mental health crisis through integrated care solutions. The Senior Analytics Engineer will be responsible for managing the end-to-end data stack, including data ingestion, warehousing, and business intelligence, while ensuring compliance and data governance across various operational teams.
Responsibilities:
- Platform ownership
- Maintain a warehouse (Snowflake) and connect it to source systems (EMR, RCM, patient engagement, scheduling, support tools)
- Implement ELT (currently using Meltano) (plus custom connectors when needed) and orchestration (dbt Cloud/CI)
- Own company data strategy, detailed architecture and design of replica, warehouse, and BI tool
- Build curated marts and a governed semantic layer in dbt; define durable metrics (e.g., Time-to-Care, referral funnels, cancellations, provider capacity, cohort outcomes)
- Add data quality tests (dbt tests/Great Expectations), lineage, and alerts; resolve root causes quickly
- Administer BI tool (currently Sigma), define roles/permissions, and ship high-leverage dashboards
- Drive stakeholder discovery; translate questions into metrics, dashboards, and data contracts
- Train teams on self-serve best practices and documentation
- Implement HIPAA-aligned controls: RBAC/ABAC, column-level masking/tokenization, audit logging, data retention, and least-privilege access
- Monitor performance, freshness, and cost (warehouse, ELT, BI); optimize with SLAs for priority datasets
Requirements:
- 4–7+ years in analytics engineering / data engineering / BI engineering, including end-to-end ownership of ELT→BI
- Proficiency with: advanced SQL, dbt (or comparable transformation tooling), a cloud data warehouse (Snowflake preferred; BigQuery/Redshift/Databricks acceptable), and a BI platform (Sigma preferred; Looker/Tableau/Power BI acceptable)
- Git-based CI/CD, Terraform, Docker
- Strong Python skills for light transformations and connector development; experience with an EL/ingestion framework (Meltano preferred; Airbyte, Singer SDK, Fivetran, or Stitch acceptable) and an orchestrator (Airflow, Prefect, Dagster, or similar)
- Experience designing semantic layers (LookML, Metrics Layer, dbt semantic models)
- Experience integrating healthcare data (EMR/RCM/claim/eligibility/scheduling/patient engagement); working knowledge of HL7/FHIR and healthcare data quirks (encounters, payers, CPT/ICD, denials)
- HIPAA/PHI practices (de-identification, RBAC, audit logs) and vendor BAA familiarity
- Strong stakeholder skills: requirements gathering, translating KPIs, and documentation
- Data reliability tooling (Great Expectations/Monte Carlo/Elementary)
- Background with CRM/support tools (Salesforce/HubSpot/Zendesk) and marketing/scheduling data