Azure Data Architect

Dublin
2 months ago
Applications closed

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Data Architect required to lead the development of our clients enterprise data platform infrastructure and engineering frameworks.
You’ll be a key technical leader, shaping our Azure-based data ecosystem, driving AI enablement, and ensuring scalable, secure, and high-performance data solutions across the organisation.
Role and Responsibilities:

  • Lead design and implementation of enterprise data architecture (Azure, Databricks, Data Lake, Data Factory).
  • Enable AI/ML workflows and MLOps integration.
  • Define engineering standards, governance frameworks, and architectural blueprints.
  • Ensure compliance with GDPR and security standards.
  • Mentor data engineers and analysts in best practices.
    To apply you should have the following skills & experience:
  • Proven experience architecting data platforms on Microsoft Azure (Databricks, Data Lake Storage Gen2, Azure Data Factory).
  • Strong knowledge of Lakehouse architecture, Delta Lake, PySpark, SQL.
  • Experience with AI/ML workflows, data governance, ETL/ELT design, metadata management.
  • Familiarity with Power BI, Azure DevOps, GitHub, CI/CD pipelines.
  • Certifications in Azure Architecture and Databricks preferred.
    Interviews: end of January for a February 2026 start

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