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Senior Data Architect - HM Land Registry - SEO

Manchester Digital
Manchester
2 weeks ago
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Overview

Senior Data Architect - HM Land Registry - SEO

Location: Plymouth, South West England, PL6 5WS

Join to apply for the Senior Data Architect - HM Land Registry - SEO role at Manchester Digital.

About The Job

Job summary

It is an exciting time for HM Land Registry (HMLR) as we continue on a major transformation programme. HMLR's ambition is to become the world’s leading land registry for speed, simplicity and an open approach to data. HM Land Registry's existing software systems and services form part of the critical national infrastructure, safeguarding land and property ownership valued at £7 trillion. This enables over £1 trillion worth of personal and commercial lending to be secured against property across England and Wales. We are now looking for three Senior Data Architects to join our Data and Register Integrity directorate.

The post holder will lead the delivery of data designs, models and artefacts that describe HMLR data architecture, stay up to date with data policy and standards, and contribute to wider activities that define future roadmaps. The role involves data governance, leadership on data architecture, and collaboration with technical and non-technical colleagues to ensure data is managed properly and meets the organisation’s needs.

For more information about the role and the Architecture profession, a Hiring Manager Q&A session will be held via Teams on Tuesday 16th of September at 12:30pm. Registration details will be provided.

Responsibilities

The role supports data management including data governance and provides leadership on HMLR’s Data Architecture. A Senior Data Architect will lead the delivery of the organisation’s vision for data through data design, collaborating with stakeholders to ensure data is managed properly and meets the organisation’s needs. The post holder will deliver data designs, models and artefacts, understand relevant strategies, and contribute to wider activities that define future roadmaps.

Check the attached Candidate Pack for more information about the role and full job description.

Person specification

To be successful, you will have experience mentoring data professionals, helping to build capability and supporting development of individuals and teams. You will have experience of undertaking data impact assessments and assuring compliance with data policies and standards. You will be comfortable with change, able to multi-task and prioritise projects, and respond quickly to changing circumstances.

Qualifications / Requirements
  • Experience of mentoring data professionals and building capability within teams
  • Experience with data impact assessments and policy/standards compliance
  • Ability to manage multiple priorities and adapt to changing circumstances
Employment details
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Engineering and Information Technology
  • Industries: Technology, Information and Internet

Note: This description focuses on the Senior Data Architect role and excludes additional job postings or site-specific notices.


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