Data Architect

Connells
Milton Keynes
3 months ago
Applications closed

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We are seeking an experienced Data Architect to join our Group Technology team in Milton Keynes. You will help realise the value of the immense Connells Group dataset for the benefit of customers, colleagues and the overall business. You will use your expertise to define, evolve and communicate the existing enterprise data architecture, to democratise safe access to data to help engineering teams create personal, relevant and timely customer experiences. The data architecture will also support colleagues in accessing data, getting insights and providing next best actions for faster and aligned decision making, both tactically and strategically but always aligned to customer and business outcomes.

We offer a hybrid working arrangement with 2 days per week in our office in Milton Keynes.

Key Responsibilities:

  • Enterprise Data Architecture Ownership: Define and maintain the organisations data architecture strategy across cloud and on-premises environments. Ensure alignment with business goals, scalability, and futureproofing of data platforms.
  • Cloud and Hybrid Integration Design: Lead the design and implementation of data solutions that integrate Azure cloud-native services with legacy SQL Server systems and third-party APIs and data feeds.
  • Data Modelling and Standards: Develop and enforce data modelli...

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