Data Architect

Sanderson Recruitment
Burton-on-Trent
1 week ago
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Data Architect
2 year FTC - Hybrid - Burton on Trent
£75,000
We're seeking a visionary Data Architect to join our client's dynamic and high-performing architecture team. This is your chance to be at the forefront of transformative Data & AI initiatives that span multiple business domains and drive enterprise-wide innovation. Hybrid working with 2 days in the office
Reporting to the Lead Data Architect, you'll be instrumental in shaping and executing the organisation's Data & AI strategy . You'll collaborate across IT and business functions to design scalable, future-ready data architecture that supports major transformation programmes.
Key Responsibilities:
Lead the design and delivery of Data & AI architecture across strategic change programmes
Align solutions with enterprise principles, standards, and methodologies to support a data-driven culture
Build and maintain architecture assets that meet governance, regulatory, and performance requirements
Translate business needs into data requirements and provisioning strategies for consistency and usability
Collaborate with Data Stewards, Analysts, and SMEs to define and ratify reference data and hierarchies
Ensure data definitions and models are aligned and embedded across transformation initiatives
About You
You're a strategic thinker with a passion for data. You've delivered robust, scalable architecture in complex environments and thrive on influencing enterprise-wide decisions. You're confident with governance, modelling, and driving innovation through data.
Why You'll Love This Role
Hybrid working - Enjoy flexibility with 2-3 days on-site at e Burton-on-Trent
High-impact work - Your expertise will directly shape business transformation
Cutting-edge initiatives - Be part of pioneering Data & AI programmes with real visibility
Reasonable Adjustments:
Respect and equality are core values to us. We are proud of the diverse and inclusive community we have built, and we welcome applications from people of all backgrounds and perspectives. Our success is driven by our people, united by the spirit of partnership to deliver the best resourcing solutions for our clients.
If you need any help or adjustments during the recruitment process for any reason , please let us know when you apply or talk to the recruiters directly so we can support you.

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