Senior Data Engineer

iO Associates
Milton Keynes
4 days ago
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iO Associates are working with an established Technology company who are on the lookout for an experienced Data Engineer to join them on a permanent basis

They are a digital marketing company that specialize in performance marketing and affiliate platforms. They have also created an advanced AI/ML data platform that integrates into Casino and Sports betting brands. It is a search and comparison engine that can help users to make better choices and informed decisions.

As the Senior Data Engineer, you will play a pivotal role in architecting scalable data solutions, driving engineering best practices, and collaborating across multi-disciplinary teams to deliver impactful insights.

To be successful, you will have:

  • Deep expertise in the Microsoft Azure Stack and modern data architecture patterns
  • Experience with data & analytics platforms (e.g. MS Fabric).
  • Strong proficiency in SQL, Python, and data orchestration tools (e.g. Azure Data Factory).
  • Experience with data visualisation tools, ideally Power BI, and delivering data models that support self-service analytics.

They're big on expertise, not hierarchy, so you'll be trusted with more responsibility while supported by everyone around you. You'll be encouraged to grow at every career stage in the direction that interests you with amazing support and training plus a tailored career progression plan

Please apply using the link or get in touch on / email me on r.long @ ioassociates.co.uk


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