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Data Engineer

identifi Global Resources
Cheshire West and Chester
1 week ago
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Data Engineer

Hybrid (2 – 3 days per month in the office)

Greater Manchester

£38,000 - £40,000 DOE


Only candidates within a commutable distance of Greater Manchester will be considered.


About the Role

Our legal client is seeking a Data Engineer to join their Data Team to design, build, and maintain an Azure-based data environment.


Within this role you will architect and manage the data ecosystem, develop pipelines, oversee the data lake and enable high-performance reporting through Power BI.


You’ll collaborate with Stakeholders to deliver the data roadmap, ensure a single source of truth, and help define a robust data strategy.


This is a great opportunity to bring fresh ideas and shape the future of data within a growing organisation.


Key Responsibilities

  • Work with the Head of Department to prioritise and deliver data requirements into the data lake.
  • Build, schedule, and manage data pipelines from operational systems into Azure.
  • Maintain both production and development environments, ensuring robustness and scalability.
  • Design and document processes for data ingestion, transformation, and reporting.
  • Partner with BI Analysts to optimise Power BI reporting performance.
  • Develop data re-engineering processes (e.g. customer satisfaction and scoring models).
  • Implement proactive monitoring systems to track and alert on data process performance.
  • Keep abreast of developments in Data Strategy, Azure, and Power BI to identify opportunities for innovation.


Skills & Experience

  • Strong / Proven experience with Azure.
  • Strong SQL knowledge.
  • Familiarity with Git/DevOps Repos.
  • Strong problem-solving ability.

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