Data Engineer

DHU Healthcare
Derby
3 days ago
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Data Engineer

Location: Derby

Salary: £ 47,440 Per annum

Hours: 37.5 Hours a week

Contract: Permanent

As a member of the DHU Digital team, you will work within the professional and highly motivated Data Services team to deliver reliable and high-quality reporting to support the operational and clinical teams within the business.

This role focuses on data ingestion, transformation, optimisation and automation, ensuring that high-quality datasets are available for consumption by Reporting Analysts, Reporting Business Partners and the wider business.

You will play a key role in onboarding new services, modernising data pipelines and improving performance, resilience and maintainability across DHU's data estate.

General Duties:

  • Design, build and maintain ETL/ELT pipelines to ingest, transform and store data from multiple source systems
  • Support the onboarding of new services, systems and datasets into the DHU data environment
  • Identify opportunities to automate repetitive or manual data processes
  • Work closely with the Lead Data Engineer to align solutions with architectural standards and technical direction
  • Provide SQL, ETL and data-engineering expertise to Reporting Analysts and Reporting Business Partners
  • Co...

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