Data Architect

Henderson Scott
London
5 days ago
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Data Architect - Government - London (Hybrid) - inside IR35

We are working with a Government client who is looking for a Data Architect on an ongoing Transformation Programme.

Due to the nature and urgency of the role, candidates who hold active DV clearance would be preferred but we will also consider candidates with SC clearance who are eligible for DV clearance.

As Data Architect, you'll be instrumental in designing and developing robust data models that are aligned with the strategic objectives defined by senior data leaders. You'll also provide critical insights for data policy compliance, guiding the management and archiving of data assets.

  • Translate complex data requirements between technical and non-technical stakeholders seamlessly.
  • Conduct thorough data profiling and source system analysis to ensure data integrity.
  • Ensure the quality assurance of data solutions, identifying opportunities for innovation with the latest tools.
  • Develop and refine data models using frameworks and tools like UML, TOGAF, and erwin.
  • Establish data standards focusing on a specific component, adopting best practices.
  • Engage with metadata repositories to solve intricate challenges with tools like MS Purview.
  • Design solutions for distinct business challenges, working closely with diverse data teams.

About you:

  • Expertise in Microsoft data ...

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