|
This role is designed as a hybrid.
Primary Responsibilities:
• Data Pipeline Optimization: Design, develop, and optimize data pipelines and workflows to ensure seamless data flow and accessibility across the organization.
• ETL Processes: Lead ETL processes on large, complex data sets that meet business requirements, ensuring integration with existing platforms.
• Process Improvements: Identify and implement internal process improvements, including infrastructure redesign for scalability, optimized data delivery, and automation of manual processes.
• Unified Data Source: Contribute to the development of a single source of truth for data and analytics customers and recommend tools and technology for modernizing data systems and processes.
• Modern Data Stack: Outline and implement a modern data stack to handle, clean, process, and store organizational data.
• End-User Engagement: Design engagement layers for data science, quality, and analytics teams to support their needs.
• Technological Advances: Stay informed about advances in cloud data structures, including data warehouses, data streams, and data lakes, and collaborate with peers to implement cutting-edge solutions.
• Technical Change Management: Facilitate processes to maintain systems providing production-ready data.
• ETL Evaluation: Develop processes for evaluating and auditing ETL loads and extracts, setting relevant KPIs, and directing team improvements.
• Data Standards: Set up data standards, classifications, mappings, cross-referencing, and metadata to support data architecture.
• Data Governance Advocacy: Actively promote data governance best practices across the organization by collaborating with stakeholders to ensure adherence to data policies and standards.
• Team Management: Provide mentorship to team members, fostering development and collaboration among engineering roles.
Incumbent Must Possess:
• Knowledge of SQL and relational databases.
• Experience with ETL tools and techniques, managing large and complex data sets to meet business requirements.
• Knowledge of data management principles, including data modeling, data warehousing, and metadata management.
• Familiarity with cloud platforms and services related to data storage and processing, especially Microsoft Azure Cloud.
• Ability to support engineers’ development in data warehouse development and programming skills.
• Experience collaborating with IT partners to deploy production-level analytic solutions.
• Domain knowledge in healthcare data engineering and business functions, particularly in administrative and clinical operations.
• Healthcare domain experience preferred.
This position does not provide patient care.
|