Sr. Data Engineer (Data Platforms)
ExternalPrepare for this interview
EliteAI-generated questions, company research, and talking points tailored to this role
About the role
Cedar's Data & Integration Platforms organization builds the data infrastructure, pipelines and tooling that power our products, analytics, and financial operations. We are looking for a Senior Data Engineer to help evolve our data ecosystem from homegrown ETL scripts to a modern, scalable stack built on tools like dbt, Airflow and Snowflake. You will design and own critical data pipelines (e.g., client billing, product analytics, and platform data services), improve data quality and observability, and help define patterns and standards for how Cedar builds and operates data products. This is a high-impact individual contributor role with significant autonomy, technical ownership, and cross-functional exposure.
Responsibilities
- Design, build, and own scalable ELT/ETL pipelines that power core use cases including client billing, financial reporting, product analytics and data services for downstream teams (Finance, Data Science, Commercial Analytics, Product).
- Modernize legacy data flows by migrating SQL- and Liquibase-based transformations into dbt, with robust testing, documentation and data contracts.
- Improve reliability and observability of our data platform by implementing best practices in testing, monitoring, alerting and runbook-driven operations for pipelines orchestrated via Airflow (and/or similar tools).
- Model data for usability and performance in Snowflake and other systems, applying dimensional and domain-driven design patterns where appropriate (e.g., for analytics core models and financial engineering services).
- Partner closely with product, finance, analytics and integrations teams to understand requirements, define interfaces, and ensure data is accurate, well-documented, and delivered in the right form and cadence for consumers.
- Contribute to Cedar's data platform vision by helping decouple data infrastructure from data services, establishing standards for governance, metadata, and access, and piloting tools like OpenMetadata and data quality frameworks.
- Provide technical mentorship to other engineers, upleveling our data engineering practices in areas like code quality, reviews, architecture, and operational excellence.
- Balance short-term delivery with long-term architecture , making pragmatic trade-offs while moving us toward a clear "North Star" data platform that supports emerging use cases like AI/ML, personalization and experimentation.
- About You
- 5+ years of hands-on data engineering (or closely related software engineering) experience , including ownership of production data pipelines and systems at scale.
- Strong SQL and Python proficiency , with experience building data transformations, utilities and tooling (e.g., dbt models, Airflow DAGs, internal libraries).
- Deep experience with modern data stack tools , including several of: Snowflake (or similar cloud data warehouse), dbt, Airflow/Dagster (or similar orchestrator).
- Proven track record designing and operating reliable pipelines , including testing strategies (unit/integration/dbt tests), monitoring, alerting, and incident/root-cause analysis for data issues.
- Experience with data modeling and schema design for analytics, reporting and operational use cases (e.g., dimensional models, entity-centric designs, or medallion-style architectures).
- Familiarity with cloud platforms , ideally AWS (e.g., use of S3, IAM, containerized workloads, or related infrastructure supporting data workloads).
- Strong collaboration and communication skills , with the ability to translate ambiguous business problems into clear technical requirements and to work effectively with partners across engineering, product and business teams.
- High ownership and bias to action in complex, evolving environments-comfortable operating with partial information, making trade-offs explicit, and driving work to completion.
- Bonus Points
- Experience with metadata and data governance tools , such as OpenMetadata, DataHub or similar catalogs, and implementing data contracts or quality frameworks (e.g., Great Expectations, dbt tests).
- Exposure to streaming and event-driven data pipelines (e.g., Kafka, CDC tools) and integrating those into warehouse-centric architectures.
- Prior experience in healthcare, fintech, or other highly regulated domains , particularly with standards like HL7 or FHI
Benefits
Additional Information
Our healthcare system is the leading cause of personal bankruptcy in the U.S. Every year, over 50 million Americans suffer adverse financial consequences as a result of seeking care, from lower credit scores to garnished wages. The challenge is only getting worse, as high deductible health plans are the fastest growing plan design in the U.S. Cedar's mission is to leverage data science, smart product design and personalization to make healthcare more affordable and accessible. Today, healthcare providers still engage with its consumers in a "one-size-fits-all" approach; and Cedar is excited to leverage consumer best practices to deliver a superior experience.
Your Match
How well this role fits your profile.
Company Intel
What employees say
Worked at careportalinc? Share your experience