Remote-Ready Data Engineer for Azure & Power BI

Tenth Revolution Group
Cambridge
1 week ago
Create job alert

A leading Microsoft partner in the UK is seeking a Data Engineer to join their team in Cambridge, where you'll build innovative data solutions using Azure technologies. You'll work collaboratively to design data pipelines and models, contributing to impactful projects in a flexible, supportive environment. This role offers a competitive salary up to £55,000 plus benefits that include a performance-related bonus and opportunities for professional development. Enjoy true flexibility and a culture focused on growth and inclusion.
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