Data Engineer

Cognitive Group | Part of the Focus Cloud Group
Nottingham
1 month ago
Applications closed

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Data Consultant / Data Engineer - Microsoft Gold Partner


We're currently working closely with a leading Data Consultancy who are also a Microsoft Gold Partner. They're looking to hire a Data Consultant in their Consulting Division. This is a very client facing role as you'll be responsible for gathering client requirements through both interviews and workshops and translating these into clear business insights.


You will be responsible for designing and delivering innovative data solutions that support smarter decision-making. You will work closely with clients to understand their needs, architect data-driven solutions, and implement scalable analytics platforms.


As well as this, the role will involve gathering business requirements, developing data models, and ensuring analytics solutions align with both technical and commercial objectives.


Technical Requirements:

  • Experience with Microsoft Azure Data Services (Microsoft Fabric, Databricks, Synapse Analytics and Azure Data Factory).
  • Strong Python and SQL skills.


Please note that Sponsorship isn't available for this role.

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