Data Engineer

SF Technology Solutions
Wolverhampton
2 days ago
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We are seeking experienced Data Engineers to join a large-scale, long-term public sector data transformation programme.


This role sits within a well-established partnership delivering secure, enterprise-grade data solutions at scale. You’ll play a key role in modernising services through robust data acquisition, integration, and platform engineering.


This is an opportunity to work on meaningful, high-impact systems in a complex and secure environment.


The Role

You will design, build and operate secure, scalable data integration solutions across batch and near-real-time environments.


Working in cross-functional Agile teams, you’ll collaborate with product owners, analysts and stakeholders to ensure data platforms meet performance, security and cost requirements.


Key responsibilities include:

  • Designing and implementing secure, high-performance data integration solutions
  • Building and optimising data pipelines (ingestion, transformation, curation)
  • Implementing monitoring, alerting and service reliability standards
  • Supporting live services and incident resolutionAligning engineering decisions with non-functional requirements (performance, security, cost)
  • Mentoring colleagues and contributing to engineering best practice

Experience Required

  • Strong SQL and hands-on data modelling experience
  • Experience with ETL/ELT tooling (e.g. Talend, Pentaho DI, Informatica, AWS Glue, SAS or similar)
  • Experience with enterprise data platforms (Oracle, Cloudera or similar)
  • Cloud platform exposure (ideally AWS)
  • Programming/scripting skills (Python, Bash or similar)
  • Solid understanding of data integration, orchestration and version control
  • Strong stakeholder engagement and consultancy skills

Security Clearance

Eligibility for Security Check (SC) clearance is required.


Applicants must have resided continuously in the UK for the last 5 years.


Why Consider This Opportunity?

  • Work on nationally significant, enterprise-scale data systems
  • Join a mature, collaborative engineering environment
  • Clear progression pathways and technical development
  • Strong focus on wellbeing and professional growth


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