Job Closed
This listing is no longer active.
Connected care. Smarter care.
Senior Data Engineer
Location
United States
Posted
32 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Engineer
WellSky
• Create, develop, maintain, and leverage data pipelines, data models, reporting, and dashboards to solve business problems or assigned tasks in coordination with multiple teams. • Develop and maintain data solutions to enable new or existing solutions and BI development for the data warehouse and data visualization solutions. • Enhance and document workflows for complex data-related challenges by identifying patterns, trends, and anomalies in the data, and find ways to optimize data processing and storage to promote data quality through automation. • Develop understanding of different WellSky solutions and become a subject matter expertise in the healthcare domain. • Identify opportunities in code reviews and contribute to the development of best practices and coding standards. • Adhere to WellSky core values, ensure PHI data security, and adapt to changing BI technologies. • Leverage AI tools and platforms as an integral part of daily responsibilities to enhance decision-making, streamline workflows, and drive data-informed outcomes. • Perform other job duties as assigned.
Job Requirements
- Bachelor’s degree or relevant work experience
- 4-6 years of relevant work experience
- Strong SQL skills with hands-on experience developing and supporting data pipelines and data warehouse solutions
- Experience with SQL Server data integration and ETL development (including SSIS or equivalent)
- Experience with cloud-based data platforms and services, preferably within GCP environments
- Experience with Snowflake data warehouse development and management (preferred)
- Experience with DBT for ELT/ETL processes, data modeling, testing, and documentation (preferred)
- GCP expertise, especially with Cloud SQL, BigQuery, and DataStream (preferred)
- Experience with data replication tools such as HVR (or similar CDC/replication technologies) (preferred)
- Experience supporting BI/reporting environments such as Tableau through well-modeled, performant datasets (preferred)
- Healthcare industry experience (preferred)
Benefits
- Excellent medical with Rx, dental, and vision benefits
- Mental Health support through EAP
- Generous paid time off, plus 13 paid holidays
- 100% vested 401(K) retirement plans
- Educational assistance up to $2500 per year
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Design, develop, and deploy large scale data processing pipelines, both batch and streaming, using technologies such as Dataflow, Apache Beam, Spark, Akka, Pub/Sub. • Expertise with multiple data storage technologies such as Bigtable/HBase, BigQuery, Spanner, CloudSQL/Postgres. • Work with stakeholders to understand business problems, develop use-cases, and translate them into pragmatic and effective technical solutions. • Design and develop appropriate schema for data based on understanding of the domain problem. • Manage data lineage and ensure data security with appropriate tools and methodologies. • Collaborate with data scientists, architects, and other stakeholders to ensure alignment between technical and business strategy. • Continuously monitor, refine and report on the performance of data management systems. • Mentor junior data engineers, reviewing their outputs and directing their professional development.
• Be a data champion and seek to empower others to leverage the data to its full potential • Architect and own our data platform strategy, with a deep understanding of our complex data ecosystem • Lead the design and implementation of scalable data infrastructure that powers both internal and external products • Partner with Product to translate business requirements for data across the company into a technical roadmap and architecture for the platform • Create and maintain data engineering best practices and mentor teams in building robust, observable pipelines • Assemble large, complex data sets that meet functional / non-functional business requirements • Build the infrastructure required for optimal extraction, transformation, and loading of data from various data sources. • Work with Executive, Clinical, Data, and Design teams, to assist with data-related technical issues and support their data infrastructure needs • Create data tools for analytics and data scientist team members that assist them in building and optimizing our product into an innovative industry leader
• Integración y modelamiento de datos • Diseñar e implementar pipelines de ingesta y transformación de nuevas fuentes de datos (batch y/o near real-time). • Integrar fuentes internas y externas al modelo de Customer 360, asegurando consistencia con los contextos definidos. • Modelar y estructurar datos para su uso en APIs y analytics . • Construcción y mantenimiento de subproductos analíticos basados en contextos (ej: segmentaciones, features, modelos). • Habilitar datasets listos para consumo por equipos de negocio, analytics y data science. • Colaborar en la definición de nuevos casos de uso basados en datos de cliente. • Implementar controles de calidad, validaciones y monitoreo de pipelines. • Asegurar trazabilidad, documentación y buenas prácticas de data governance. • Optimizar pipelines para performance, costo y escalabilidad. • Trabajar de forma cercana con equipos de negocio, analytics, backend y producto. • Participar en el diseño de nuevos contextos y definición de requerimientos de datos. • Contribuir a la mejora continua de la arquitectura y estándares del equipo.
• Collaborate with a global team of data engineers, fostering coordination across time zones and driving operational excellence. • Architect and oversee large-scale data ingestion and transformation pipelines using Airflow, DBT, Python, Kafka streaming, and Snowflake. • Design and implement real-time and batch ingestion frameworks integrating data from various business systems and APIs. • Manage data integration and transformation from enterprise systems such as Salesforce (SFDC), NetSuite, Workday, and other core business applications. • Drive data quality, observability and reliability across pipelines through monitoring, alerting, and proactive issue resolution. • Collaborate with data science and product teams to support AI assistance bot integration, AI/ML workflows, and product telemetry analytics. • Ensure engineering excellence by aligning data practices with DevOps principles, CI/CD automation, and robust data governance standards. • Oversee multiple projects simultaneously, managing priorities, and delivery timelines in a dynamic, high-velocity environment. • Communicate effectively with business and technical stakeholders to align data engineering initiatives with strategic organizational goals.




