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Data Architect

Lorien
London
21 hours ago
Create job alert

Data Architect (Azure)

6 Month Contract

UK Based

Via Umbrella

Our UK leading life and pensions client are looking for a Data Architect to joun their team on an initial 6 month contract.

Key Responsibilities

  • Data Architecture & Design
    • Define and maintain enterprise data architecture standards, models, and frameworks.
    • Design data solutions leveraging Azure services such as Azure Data Lake, Azure SQL Database, Azure Synapse Analytics, Azure Data Factory, and Azure Databricks.
  • Data Integration & ETL
    • Develop and optimize data pipelines for ingestion, transformation, and storage using Azure Data Factory and Databricks.
  • Governance & Security
    • Implement data governance, security, and compliance practices aligned with financial services regulations (e.g., GDPR, PCI DSS).
  • Performance & Scalability
    • Ensure data solutions are optimized for performance and scalability across large datasets.
  • Collaboration
    • Work closely with data engineers, analysts, and business stakeholders to deliver robust data platforms.
  • Innovation
    • Stay current with emerging Azure technologies and best practices in data architecture.

Required Skills & Experience

  • Technical Expertise
    • Extensive experience with Az...

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