Principal Data Architect - MS Partner - London - £110,000

Tenth Revolution Group
London
3 days ago
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Principal Data Architect - MS Partner - London - £110,000

Requirement for a Principal Data Architect to join an MS Partner with client in not for profit as they grow their data practice.

You will come with experience working across the Azure data stack (ideally with modern tools like MS Fabric) coupled with a background in the Dynamics/Dataverse world helping clients make the most of their data through innovative solutions. As a Principal, you will have the ability to command a room when discussing POC's and Presales proposals.

Key Responsibilities and Skills Required:- Deep understanding of Azure technologies and their applications.- Proficiency in Microsoft Fabric.- Experience with Azure cloud services and deployment.- Familiarity with Microsoft Power Platforms and Dynamics 365.- Strong problem-solving skills and the ability to design scalable solutions.

This opportunity is ideal for those who thrive in an inclusive environment and seek to influence the future of data architecture.

Salary on offer is up to £110,000. Expect to be on site around 1 day per week in Central London.

If you are a forward-thinking architect ready to take the next step in your career, we invite you to apply for this role. Your expertise can make a significant difference.

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