Data Engineer

Harnham
West Midlands
2 weeks ago
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An opportunity to join a growing data function and take ownership of data engineering in a business that is scaling rapidly. You will work in a supportive, family-friendly culture where your work has a direct impact on every team, and where stability, collaboration, and autonomy are genuinely valued.


THE COMPANY

They are a long-established manufacturer within the healthcare sector, supplying specialist products used across the NHS and international markets. The organisation is growing quickly, expanding its digital presence, and increasing its analytics maturity. With a strong reputation, modern office space, and a culture that prioritises trust and development, they offer the chance to build long-lasting relationships across the business while influencing key data capabilities.


THE ROLE

As a Data Engineer, you can expect to be involved in the following:



  • Maintain and develop core data pipelines across Azure.
  • Manage nightly data transfers from a legacy system into Azure SQL.
  • Build and support integrations for CRM data, NHS datasets, Google Analytics, and international reporting feeds.
  • Carry out web scraping using Python and Selenium to support product and patient insight work.
  • Improve data architecture and help remove duplicated datasets.
  • Create and maintain APIs and new pipelines as the business scales.

SKILLS AND EXPERIENCE

The successful Data Engineer will have the following skills and experience:



  • Strong commercial experience with Azure, Python, and SQL.
  • Proven ability to build and maintain data pipelines.
  • Experience working with APIs and integrating multiple data sources.
  • Confidence working with legacy systems and non‑modernised environments.
  • Knowledge of web scraping techniques.
  • Experience with Tableau, Apache, or digital analytics tools is beneficial but not essential.

BENEFITS

The successful Data Engineer will receive the following benefits:



  • Salary between £40,000 - £50,000 - depending on experience.
  • Hybrid working - 3 days a week in office.

HOW TO APPLY

Please register your interest by sending your resume to Majid Latif via the Apply link on this page.


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