Senior Azure Data Engineer

Areti Group | B Corp
Liverpool
3 months ago
Applications closed

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Senior Data Engineer

Senior Azure Data Engineer


Remote Working


£85,000 + Benefits


We’re looking for a Senior Azure Data Engineer to help design and deliver modern, scalable data solutions for enterprise customers. You’ll work hands‑on across cloud‑native architectures, building high-quality data products and helping organisations make better decisions through clean, reliable, well-structured data.


In this role, you’ll partner with stakeholders to understand business needs, develop robust data pipelines and platforms, and enable customers to truly unlock the value of their data investments. This is a great opportunity to contribute to standards, influence best practice, and shape real delivery outcomes.


How your day will look :

  • Collaborate with customers to capture requirements and design data solutions that drive measurable outcomes.
  • Improve the way organisations create, govern, and manage their key data assets.
  • Build cloud-native data products using modern Azure services and engineering patterns.
  • Design and implement data lake architectures that connect, transform, and leverage internal and external data.
  • Support full delivery cycles, from prototyping and testing through to deployment and launch.
  • Produce technical documentation to support data platform design and long-term operation.
  • Help refine and evolve engineering principles, development standards, and best practice.

Skills & Experience :

  • Hands‑on experience with Azure data services such as Data Factory, Databricks, Data Lake, Azure SQL, Synapse, Data Catalog, and Purview.
  • Strong Python and SQL skills for transformation and pipeline development.
  • Solid understanding of Azure data storage / warehouse technologies including SQL MI and Synapse.
  • Familiar with DevOps ways of working, including CI / CD and IaC (e.g., Bicep, Terraform ).
  • Experienced working in Agile teams, using Azure DevOps for collaboration and delivery.

Desirable :

  • Experience with Azure tooling for infrastructure provisioning and monitoring (e.g., Terraform, ARM, Policy, Monitor, Log Analytics).

Why Join?

  • Play a key role in designing and delivering high-impact Azure data solutions.
  • A collaborative culture that values innovation, technical excellence, and professional growth.
  • Opportunity to influence engineering direction, tooling, and best practice.
  • Competitive salary and benefits package.

If you’re a Senior Azure Data Engineer passionate about delivering modern cloud‑first data platforms, we’d love to hear from you.


🌳🌳🌳 Areti Group – Climate positive tech recruitment 🌳🌳🌳


We’re on a mission to put people and the planet before profit, leaving the world in a better place than we found it.


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