Senior Data Engineer

DATAHEAD
Birmingham
1 week ago
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Senior Azure Data Engineer – Remote – £90,000-£100,000


Looking for a role where you canlead innovative data engineering projectswhile working with the latestAzure technologies? Join an ambitious data consultancy and play a key role indesigning, building, and optimising cloud-based data solutions.


What You’ll Be Doing:

  • Leading the design and implementation of scalabledata pipelinesusingAzure Databricks, Data Factory, and Synapse Analytics.
  • DevelopingETL frameworksand ensuring data integrity across complex architectures.
  • Working closely withstakeholders, architects, and engineersto deliver high-performance data solutions.
  • OptimisingSpark-based data processingand implementing best practices forcloud data platforms.
  • Mentoringjunior engineersand driving technical excellence across projects.

What We’re Looking For:

  • 6+ years of experiencein data engineering, with a strong focus onAzure cloud services.
  • Expert-level skills inDatabricks, Spark, SQL, and Python.
  • Strong understanding ofETL development, data warehousing, and cloud-native architectures.
  • Experience withCI/CD, Infrastructure as Code (Terraform, ARM), and DevOps best practices.
  • Ability to engage withclients and stakeholders, translating business needs into technical solutions.

What’s on Offer?

  • Salary:£90,000 - £100,000.
  • Remote working.
  • A leadership role with opportunities to shape the company'sdata strategy and technical direction.
  • A chance to work onhigh-impact, enterprise-level projectswith cutting-edge tech.


If you’re aseasoned Azure Data Engineerlooking to take the lead oninnovative cloud projects, apply now!

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