Senior Data Architect

DWP Digital
Warrington
2 months ago
Applications closed

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Job Description

Senior Data Architect

Pay up to £83,917, plus 28.97% employer pension contributions, hybrid working, flexible hours, and great work life balance.

DWP. Digital with Purpose.

We are looking for a Senior Data Architect to join our community of tech experts in DWP Digital.

We're using fresh ideas and leading-edge tech to build and maintain digital solutions that will be used by nearly every person in the UK, every day and at key moments in their lives.

DWP is the UK's largest government department. We help people into work, and make payments worth over £195bn a year to support and empower millions of people.

The scale of what we do is extraordinary, and our purpose is unique. We'd love you to join us.

What skills, knowledge and experience will you need?

  • Data Architecture Design & Standards - Demonstrates expertise in data architecture design and modelling techniques, patterns, tools, and standards, including event-based architecture and pub-sub/data streaming approaches.
  • Technical Governance & Communication - Experienced in presenting data architecture designs to technical governance forums, ensuring alignment with organisational standards and strategic objectives.
  • Data Management & Governance - Skilled in data modelling, master data management (MDM), metadata management, and data governance to ...

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