Emory University is a leading research university that fosters excellence and attracts world-class talent. They are seeking a Data Engineer II who will contribute to the development of the Unified Data Platform, working closely with cross-functional teams to design and deliver scalable data solutions that support research and clinical insights.
Responsibilities:
- Collaborate as a core member of cross-functional teams including Business Analysts, Project Managers, Data Analysts, and Architects to deliver high-quality solutions within scope and timeline
- Work directly with researchers and stakeholders to gather, analyze, and translate requirements into technical solutions
- Design, develop, and maintain scalable data pipelines, ETL/ELT processes, and data integration workflows across multiple systems
- Build and optimize data solutions that integrate data from disparate sources, ensuring data quality, integrity, and consistency
- Evaluate emerging technologies and develop proof-of-concepts to support innovation and continuous improvement
- Apply biomedical informatics standards, methodologies, and principles to research data solutions
- Ensure adherence to HIPAA and institutional data governance policies and standards
- Develop and maintain metadata, data standards, and data governance processes for complex datasets
- Create and maintain clear technical documentation, including data pipelines, workflows, and system designs
- Communicate technical concepts effectively to both technical and non-technical stakeholders
- Partner with data and system architects and demonstrate an understanding of data modeling concepts and best practices
- Manage workload effectively and provide timely updates on task progress and deliverables
- Works as a positive team member of a project that may consist of Business Analysts, Project Managers, Information Architects, Data Analysts, and/or Database Administrators to deliver quality applications and components within scope, on time, and within budget
- Manages workload effectively and report status of tasks in a timely manner
- Works directly with researchers to document, analyze, and translate their needs into technical designs and informatics solutions
- Participates in the evaluation of emerging technologies and develops proof-of-concepts
- Contributes to technical teams
- Follows standard operational procedures and HIPAA regulations
- Develops strategies for managing complex data sets through maintaining data standards and metadata
- Applies biomedical informatics technical standards, methodologies, and principles to research-specific program needs, objectives, and outcomes
- Develops complex reports, data pipelines, and ETL processes from disparate systems and ensures their accuracy
- Gathers user requirements and creates technical documentation
- Performs other related duties as required
Requirements:
- A bachelor's degree in a related field and three years of related experience, OR an equivalent combination of education, training, and experience
- Strong experience designing and maintaining data pipelines and ETL/ELT processes
- Proficiency in Python, SQL, and Apache Spark (PySpark)
- Experience with modern data platforms such as Azure Fabric (preferred), Azure Synapse Serverless, or Databricks
- Ability to work with large, complex, and distributed datasets
- Solid understanding of data modeling concepts and best practices
- Familiarity with data governance, metadata management, and data quality frameworks
- Knowledge of HIPAA and healthcare data compliance standards
- Experience with CI/CD practices and proficiency with version control systems like Git
- Familiarity with data pipeline orchestration and monitoring tools Like Airflow, Azure Data Factory or similar frameworks
- Understanding of biomedical informatics methodologies is a plus
- Strong analytical, problem-solving, and critical-thinking abilities
- Excellent communication and collaboration skills across diverse teams
- Ability to adapt quickly to new technologies and evolving data environments
- Exposure to FHIR, OMOP, or similar healthcare data models (nice-to-have)