Data Architect

Laboratory of Excellence in Mobility
Bishop Auckland
2 days ago
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Overview

closing date: Sunday 29 March 2026 salary: £82,269 per annum location: Bishop Auckland, Hybrid, Seaham

Are you ready to be part of something extraordinary? Here at believe housing, we are entering into one of the most exciting chapters in our story — a bold and ambitious period of transformation that will reshape how we think, work and create exceptional value and experiences for our customers and colleagues. We’re looking for people who want to be at the heart of that change. This transformation will see us embrace new technologies, reimagine our services and unlock the potential across every part of the business. If you thrive in fast-moving environments, love solving real problems and want to help build something brilliant for our customers this is your moment.

We are looking for a Data Architect to join our team.

We believe in life without barriers. If you think you’d be great in the role, we want to hear from you. We’re interested in your skills, experience and personal values and we’re committed to being a supportive and inclusive employer.

A flexible approach that works for you

We’re a family-friendly organisation, and we encourage everyone to work the believe way; keeping things simple, focusing on what matters and removing unnecessary tasks. Your working arrangements will be flexible, based on the needs of the role, our customers and your preferences (agreed with your manager). Our offices are in Seaham and Bishop Auckland, and this role will require an on-site presence for part of the week.

About The Role

As a Data Architect, you will have overall responsibility for data strategy setting the vision for the organisation’s use of data, designing enterprise-level data architectures that ensure data is accurate, secure, accessible, and fit for purpose across a complex systems landscape.

Your Responsibilities Will Include
  • Lead the development of data and AI strategies, ensuring they incorporate robust data governance and effective operational data management processes, while maintaining full compliance with legal and regulatory requirements.
  • Design enterprise data architecture solutions, including data warehouses, data lakes and fabric architectures, ensuring alignment with organisational strategy and industry data standards.
  • Act as the organisations subject matter expert for data and AI technologies, architecture, and methods.
  • Build and maintain key relationships with internal and external stakeholders, influencing the development of data capabilities across the organisation, and shaping strategic decision making relating to data architecture.
  • Promote the effective use of data and upskilling colleagues in the responsible and effective use of data.
  • Embed strong design practices and promote technical excellence across teams and disciplines.
  • Communicate complex data concepts in a clear and compelling manner to both technical and non-technical audiences, enabling executive level understanding and decision making.
Whats on offer?

Our people are our greatest strength, and we’re committed to helping you grow, stay curious, and thrive. At believe housing, we’ve created a supportive, inclusive culture where ideas are welcomed and development is encouraged. Our customers are at the heart of everything we do, and we know that great experiences start with empowered colleagues. That’s why we offer a comprehensive range of benefits designed to support your wellbeing, motivate you, and help you do your best work.

  • Up to 33 days annual leave, plus four volunteering days
  • A competitive pension scheme
  • Access to our healthcare scheme
  • Flexible working that supports your wellbeing
  • A positive, inclusive culture where growth and development are genuinely encouraged

Apply now

If you share our values and believe you can bring something special to this role, we’d love to hear from you.

We are a Disability Confident Employer. If you need any adjustments or support throughout the recruitment process, please let us know.

Early applications are encouraged, as we may close the vacancy early if we receive a high volume of interest.

Closing date: 11:59pm on Sunday, 29 March 2026

Applications must be submitted via our website.

Interview date: Tuesday, 14 April 2026.

Early applications are encouraged; we reserve the right to close the position if we receive a high volume of applications.

Interested?

If you believe that you demonstrate our values and can bring something special to this role, then we’re looking forward to hearing from you.


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