Data Engineer

Gerrard White
Peterborough
3 weeks ago
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Data Engineer

This role is largely remote with the occasional across sites when required

We are seeking an experienced Data Engineer who is skilled in all toolsets in data platforms including Azure SQL, data lake, databricks and data factory, and specialised in building high performance, highly scalable and cost-effective data solution within time and budget.

You will be responsible for building data product to the specification, and need good knowledge in multiple business data (Strata, Kingfisher, CDL classic, OGI, Marketing, Wholesale, TM1, MISL etc) as well as data exchange to internal and external systems.

Key Accountabilities & Responsibilities:

  • Develop, maintain, and document high-quality data products using Databricks, ensuring code is performant and written to a high standard
  • Collaborate closely with business analysts and stakeholders to translate business requirements into technical solutions
  • Monitor, troubleshoot, and resolve data issues to ensure reliability and performance
  • Support team delivery to ensure projects are completed on time
  • Work with modern development lifecycle tools and practices, including test automation and Continuous Delivery
  • Communicate complex technical concepts clearly to non-technical audiences
  • Act as a positive, approachable technical lead and support other team members
  • M...

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