The Engineer, Data is responsible for designing, building, and operating modern cloud-native data platforms, lake house architectures, data pipelines, and enterprise data products that enable analytics, artificial intelligence (AI), machine learning (ML), automation, and operational decision-making across the organization. Operating within an Azure-first, Databricks-centric environment, the Data Engineer develops scalable data solutions utilizing Azure Data Lake Storage Gen2, Azure Databricks, Delta Lake, Unity Catalog, Azure Data Factory, Synapse Analytics, APIs, event-driven integrations, and modern DataOps practices. The role supports the organization's transition from traditional SQL-based architectures to cloud-native lake house platforms that provide trusted, governed, reusable, and AI-ready data assets.
The Engineer, Data collaborates closely with Data Architects, Data Scientists, Analytics teams, DevOps Engineers, Cloud Engineers, Software Engineers, and business stakeholders to design canonical data models, implement data quality frameworks, establish data governance controls, develop automated data pipelines, and operationalize data products supporting reporting, analytics, machine learning, intelligent automation, robotic process automation (RPA), and enterprise AI initiatives. This role is responsible for ensuring data platforms are scalable, secure, compliant, observable, and aligned with regulatory requirements including HIPAA, HITRUST, SOC 2, and enterprise cybersecurity standards.
How do I make an impact on my team?
What our team expects from you?
What can you expect from Archimedes?
Software Powered by iCIMS
www.icims.com