Azure Data Architect (Railway/ Transportation)

London
1 day ago
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Your new company

Working on a renowned railway project

Your new role

We are looking for a Data Architect/ Data Modeller to support the design, optimisation, and assurance of the data architecture across 2 key system programmes = Power Apps, and .NET.

What you'll need to succeed

Advanced expertise in Azure/ Azure SQL, including design, performance tuning, and security.
Strong experience with Azure Blob Storage and associated security/configuration patterns.
Have supported implementations of Data Models to support full implementation with live datasets.
Proven track record designing data solutions for Power Apps and .NET applications.
Strong understanding of Azure architecture, identity, monitoring, and governance.
Ability to produce high‑quality architectural documentation.
Excellent communication skills and experience working with cross-functional delivery teams.
What you'll get in return
Flexible working options available.

What you need to do now
If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now.

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