Senior Data Engineer

Harnham - Data & Analytics Recruitment
Stockport
2 days ago
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SENIOR DATA ENGINEER

UP TO £90,000 + BENEFITS

Remote (UK based)

As a Senior Data Engineer, youll take ownership of the data ingestion layer, working with complex and sometimes messy healthcare data sources. Youll play a key role in shaping how data is collected, transformed, and made available across the organisation.

This is a hands-on role suited to someone who enjoys autonomy, ambiguity, and rolling up their sleeves.

THE COMPANY:

Were partnering with a fast-growing digital health provider operating in the mental health and neurodiversity space. The business is mission-driven, highly regulated, and expanding its services across healthcare and corporate wellbeing.

This is a rare opportunity to join at a pivotal stage, helping to build a modern data platform from scratch in a small, trusted team where your work will have immediate impact.

THE ROLE:

A Senior Data Engineer will need to:

  • Build and maintain Python-based batch ingestion pipelines from a variety of healthcare systems
  • Work extensively with Databricks on AWS
  • Contribute to data modelling and transformations using dbt
  • Collaborate with analysts and stakeholders to support reporting and insights (PowerBI)
  • Help establish best practices around data quality, governance, and reliability in a regulated environment

THE BENEFITS:

You will receive a salary, dependent on experience. Salary is up to £90,000 On top of the salary there are some fantastic extra benefits.

HOW TO APPLY

Please register your interest by sending your CV to Molly Bird via the apply link on this page.

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