Data Architect

TechNET IT Recruitment Ltd
Cambridge
1 month ago
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Technet has partnered with an academic institution and global leader in publishing and assessment to appoint a Data Architect. This is an exciting opportunity to join an organisation undergoing a significant digital transformation, where data and AI are at the heart of its future strategy.

In this role, you will be responsible for shaping and implementing a coherent, scalable data framework that enables smarter, data-driven decision making. You’ll work with colleagues across the business to design solutions that bring structure, efficiency, and long-term value. From introducing modern approaches such as data mesh and data products, to defining architectural roadmaps and standards, you’ll ensure the organisation can make the most of its data assets. Collaboration will be central to your work, as you engage with engineers, analysts, and other architects to deliver reliable, future-ready solutions.

About you

We’re looking for someone who brings:

  • Proven experience in Data Architecture, Data Engineering, or a similar discipline (3+ years).
  • Strong knowledge of enterprise/information architecture frameworks (e.g., TOGAF, Zachman).
  • Understanding of data mesh concepts, data products, and data contracts.
  • Experience with data modelling, integration, and management.
  • Awareness of cloud data platforms such as Azure, AWS, or GCP.
  • The ability to translate complex requirements into practical, scalable solutions.
  • Excellent communication and stakeholder engagement skills.
  • A collaborative, knowledge-sharing approach and commitment to continuous learning.
What we offer
  • 28 days of annual leave plus bank holidays
  • Private medical cover and permanent health insurance
  • Life assurance (up to 4x annual salary)

We are an equal opportunities employer and welcome applications from all qualified candidates.


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