Data Engineer

Harnham - Data & Analytics Recruitment
Birmingham
3 days ago
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Data Engineer

Hybrid: Birmingham

Salary: £45000 to £50000.

This is an exciting opportunity to step into a hands on Data Engineer role within an analytics team that is growing in both scope and influence. You will play a key part in stabilising and evolving a broad data environment while supporting a business that is increasing its digital footprint and analytical maturity.

The Company

They are an established manufacturer in the healthcare space with a strong reputation for product quality, research, and customer care. The organisation is scaling quickly, expanding internationally, and investing in data as a core enabler for decision making. The culture is collaborative and people focused, with a close knit feel, modern office space, and regular exposure to senior leadership. Their analytics function partners with sales, marketing, operations, and quality teams to provide insight across the business.

The Role

* Maintain and enhance core data pipelines across Azure.

* Manage nightly data ingestion from legacy operational systems into Azure SQL.

* Build and maintain integrations for CRM, NHS datasets, Google Analytics, and distributor reporting.

* Conduct web scraping using Python to support customer and market insight.

* Improve data architecture, addressing duplicated, inconsistent, or ad hoc datasets.

* Support analysts by en...

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