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SmarterDx, founded in 2020 in New York, New York, is a health technology company focused on clinical AI solutions that enhance hospital revenue integrity and ca
Senior Data Engineer
Location
United States
Posted
121 days ago
Salary
$200K - $220K / year
Seniority
Senior
Job Description
Senior Data Engineer
SmarterDx
• Design, develop, and maintain dbt data models that support our healthcare analytics products. • Integrate and transform customer data to conform to our data specifications and pipelines. • Design and execute initiatives that improve data platform and pipeline automation and resilience. • Participate in a rotation of engineers that diagnose, triage, and solve production data issues. • Apply industry standards and best practices to data testing, observability, and platform stability.
Job Requirements
- 5+ years of data engineering development experience with a focus on cloud-based data pipelines and infrastructure.
- Expertise with data modeling in SQL, using tools such as dbt, Informatica, Apache Spark
- Expertise in relational and columnar databases.
- Experience implementing GitHub CI/CD.
- Experience implementing scalable, event-driven architectures using AWS managed services.
- Experience with data orchestration (Airflow, Dagster, etc).
- Excellent communication and team collaboration skills.
- Bachelor’s or Master’s in Computer Science, Engineering, or a related field, or equivalent experience.
Benefits
- Medical, Dental & Vision – Comprehensive plans with leading insurance providers, covering 75% of your premiums, depending on the plan.
- Paid Parental Leave – Generous paid leave to support families through birth or adoption: Up to 12 weeks for parents.
- Remote-First Team – Work from anywhere in the U.S.
- Unlimited PTO & 10 Holidays – So you can relax and recharge.
- 401(k) with Traditional & Roth Options – Tax-advantaged retirement savings through Fidelity with a 4% match.
- Minimal Bureaucracy – A fast-moving, high-impact environment where you can focus on what matters.
- Incredible Teammates! – Work alongside smart, supportive, and mission-driven colleagues.
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