Azure Data Engineer (Microsoft Fabric)

Interact Consulting
Milton Keynes
5 days ago
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Were looking for a skilled Azure Data Engineer with hands-on experience in Microsoft Fabric to join our growing data team. If youre passionate about building scalable, modern data platforms in Microsoft Azure, wed love to hear from you.

What Youll Do

  • Design, build, and maintain scalable data pipelines using Azure services
  • Develop and optimize solutions in Microsoft Fabric (Data Factory, Lakehouse, Warehousing)
  • Implement ETL/ELT processes using tools such as Azure Data Factory
  • Work with large datasets in Azure Synapse Analytics and Azure Data Lake Storage
  • Collaborate with analysts and stakeholders to deliver high-quality, reliable data solutions
  • Ensure data governance, security, and performance best practices

What Were Looking For

  • Strong experience with Azure data services
  • Proven experience with Microsoft Fabric
  • Proficiency in SQL and Python
  • Experience designing data models and working with large-scale datasets
  • Understanding of CI/CD and DevOps practices

Excellent problem-solving and communication skills

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