Senior Data Engineer

Addition
Altrincham
2 days ago
Create job alert

This organisation builds and manages critical healthcare infrastructure used by communities across the UK. As data becomes central to decision‑making and innovation, they’re investing heavily in modern platforms and AI‑led solutions. This role sits at the heart of that transformation.


Role Overview:

  • Location: Altrincham
  • Package: £75,000 + benefits (Strong pension / 25 days annual leave / discretionary bonus scheme etc)
  • Industry: Healthcare / Property / Real Estate

What You’ll Be Doing:

  • Designing and delivering scalable, real‑time and batch data pipelines across multiple source systems
  • Owning and evolving a high‑performance data warehouse that supports analytics, reporting and AI use cases
  • Building clear, insightful Power BI dashboards used by senior stakeholders
  • Developing ETL/ELT processes using Azure‑native tools including Data Factory, Functions and Logic Apps
  • Working hands‑on with Python and SQL to transform, enrich and analyse large datasets
  • Creating AI‑driven solutions using OpenAI APIs, including intelligent automation and post‑sales call auditing
  • Partnering with analysts, product leaders and data specialists to align data architecture with business goals
  • Monitoring pipeline health, performance and data quality across the platform
  • Embedding best practice around data governance, security and compliance

Main Skills Needed:

  • Strong background in data engineering or data architecture (around 7–8 years’ experience)
  • Proven experience building and maintaining complex ETL/ELT pipelines
  • Advanced Python and SQL skills
  • Solid hands‑on experience with Azure data services (Data Factory, Synapse, Data Lake, Functions, Logic Apps)
  • Power BI data modelling and dashboard development expertise
  • Practical experience using OpenAI APIs or similar AI/ML services
  • Deep understanding of data warehousing concepts and architectures
  • Confident communicator with strong analytical and problem‑solving skills

What’s in It for You:

  • A senior, influential role shaping how data and AI are used across the business
  • Exposure to meaningful projects that support healthcare services nationwide
  • The chance to work with modern Azure tooling and emerging AI technologies
  • A collaborative, close‑knit environment where your impact is visible
  • Hybrid working and a supportive, forward‑thinking culture

Call to Action:

Careers move fast. Let’s make sure yours is heading the right way.


We are an equal opportunity employer and value diversity at our company. We do not discriminate on the basis of race, religion, colour, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.


By applying you are confirming you are happy to be added to the Addition Solutions mailing list regarding future suitable positions. You can opt out of this at any time simply by contacting one of our consultants.


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