Azure Data Engineer

Cloud People
Liverpool
9 months ago
Applications closed

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Azure Data Engineer/Consultant – Up to £75K + Bonus

Location:Remote (UK-based, with very occasional travel)

Salary:Up to £75,000 + bonus


Company & role

Join one of the UK’s most advanced Microsoft partners, specialising in Azure-led Data & AI solutions. This consultancy is known for transforming data into tangible value through innovative platforms and strategic data services. With a collaborative team of experts, they deliver impactful solutions across enterprise clients, leveraging the very latest in Microsoft technology.


Why This Role Stands Out

  • Play a key role in shaping Azure data strategies for enterprise clients
  • Join a pioneering team adopting Fabric, Synapse, and Databricks in production
  • Be part of a community of thought leaders, with the opportunity to share ideas and influence outcomes
  • Home-based flexibility with a focus on work-life balance


Key Responsibilities

  • Design and deliver robust Azure data solutions across strategy, ETL, analytics, and AI
  • Lead client workshops and translate business needs into technical design
  • Build scalable, secure, high-performance data platforms using the latest Azure services
  • Champion modern architecture patterns, including Medallion Architecture for structured, efficient data lake design
  • Work closely with Architects and Consultants on end-to-end solutions
  • Stay up to date on Microsoft innovations and contribute to knowledge sharing


Ideal Experience

  • Proven track record delivering data solutions in the Azure ecosystem
  • Deep expertise across the Azure Data Platform (Fabric, Synapse, Databricks, Data Lake, Data Factory, Purview, etc.)
  • Strong data pipeline and ETL skills, including data modelling and transformation
  • Experience implementing Medallion Architecture (Bronze, Silver, Gold layers) in lakehouse or Databricks environments
  • Familiarity with DevOps, CI/CD, and agile delivery
  • Azure Data Engineer, Fabric Engineer, or related certifications—or motivation to earn them


What’s In It for You?

  • Up to £75K base salary plus performance bonus
  • Fully remote role with minimal travel expectations
  • Access to cutting-edge tech and enterprise-scale projects
  • Structured learning and career development paths
  • Work with one of the UK’s most respected Azure specialists

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