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Senior Data Engineer - Microsoft Fabric

Peaple Talent
Edinburgh
5 months ago
Applications closed

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Senior Data Engineer Fabric | Edinburgh | £60,000 - £75,000 🧵


Peaple Talent have partnered with a specialist data consultancy delivering services across data engineering, data strategy, data migration, BI & analytics. As a trusted Microsoft Partner, my client are leaders in the industry, with a diverse portfolio of clients and projects.


Due to exciting growth plans we are now looking for a Senior Data Consultant, specialising in Microsoft Fabric.


We are looking for:

  • Demonstratable data engineering/BI skills, with a focus on having delivered in Microsoft Azure
  • Strong experience designing and delivering data solutions in Fabric, Azure Databricks or Azure Synapse
  • Proficient with SQL and Python
  • Great communication skills, effectively participating with Senior Stakeholders


Nice to haves:

  • Azure Data Engineering certifications
  • Microsoft Fabric certifications


What's in it for you:

📍Location: London or Manchester or Edinburgh

💻Remote working: Occasional office visits each month

💰Salary: £60,000-£75,000 DOE

🤝Collaborative culture and great team support

📈Vast L&D opportunities both internally and externally

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