Healthcare Enterprise Data Warehousing Security & Analytics Engineering Architect
Job Summary:Our client is seeking a Healthcare Enterprise Data Warehousing Security & Analytics Engineering Architect to lead the architecture, engineering, and optimization of a mission-critical data foundation. Built on Databricks and Azure, this platform enables scalable analytics that directly power care delivery for vulnerable seniors.This is a unique opportunity for a true hands-on technical leader not just a people manager. As the Subject Matter Expert (SME) in Databricks, Azure Data Services, and DevSecOps, you will build a compliant, AI-enabled lakehouse from the ground up. You will blend high-level data architecture and CI/CD rigor with healthcare compliance expertise to scale a modern, secure data platform while mentoring a high-performing, innovation-driven engineering team.Key Responsibilities:Team Leadership: Lead, mentor, and develop a high-performing team of data engineers, fostering a culture of collaboration, innovation, and continuous improvement.Architecture & Design: Architect and manage scalable data warehouse and lakehouse solutions on Databricks and Azure, ensuring maximum security and healthcare regulatory compliance.AI & Innovation: Evaluate and implement AI/Machine Learning technologies within the environment to optimize data processes and accelerate advanced analytics.DevSecOps Integration: Implement DevSecOps principles, integrating security, compliance, and automation into every stage of the development lifecycle.Pipeline Automation: Develop and manage CI/CD pipelines to enable automated testing, deployment, and environment consistency across all data workflows.Data Governance: Oversee data modeling, integration, and quality frameworks to ensure accuracy, consistency, and organizational trust in analytic data sets.Cross-Functional Collaboration: Partner with Analytics, IT, and business stakeholders to deliver data solutions that align with clinical and operational needs.Must-Have Technical Skills:Enterprise-Scale Databricks: Proven expertise in architecting and implementing Databricks solutions (not just usage), including Delta Lake, Apache Spark, and MLflow.Production Pipelines: Hands-on experience building complex, production-grade data pipelines using Spark and Delta Lake.Azure Infrastructure: Deep experience deploying analytics infrastructure on Microsoft Azure (e.g., Data Factory, Azure SQL, Azure Storage, Synapse).Security & Compliance: Demonstrated experience implementing DevSecOps frameworks and secure data operations within a regulated industry (Healthcare experience strongly preferred).Automation Tools: Strong proficiency in CI/CD, Infrastructure-as-Code, and automation platforms like GitHub Actions or Azure DevOps.Professional Experience:Education: Bachelor's or Master's degree in Computer Science, Information Systems, Data Engineering, or a related technical field.Data Engineering Tenure: Progressive experience in data engineering or data warehouse architecture.Technical Leadership: Prior experience in a technical leadership role (e.g., Lead Engineer, Architect, or Engineering Manager) with hands-on architectural ownership.Supervisory Experience: Current of direct people management experience, including performance management and team development.