Data Engineer

Elevate Technology Group Ltd
Rugby
3 weeks ago
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Role: Data Engineer
Salary: £45,000 - £50,000 Plus Hybrid Working, 38 Days Holiday, Generous Pension Scheme, Healthcare
Location: Rugby, Warwickshire
A progressive public sector organisation, is embarking on an exciting digital transformation journey. They're looking for a Data Engineer ready to join the team and make a real impact moving forward.
About the opportunity
This is a brilliant chance to develop your career while delivering meaningful change. You'll lead a small technical team, working closely with senior leadership to drive efficiency and innovation.
The role combines hands-on technical work with emerging leadership responsibilities, perfect for someone who's proven themselves technically and is ready to take the next step into team management and strategic delivery.
You'll be at the heart of an ambitious programme using AI and automated workflows to transform how services are delivered, generating measurable cost savings and productivity gains.
What you'll be doing:

  • Coordinate a technical team focused on data and automation
  • Design and deliver automation and data engineering solutions
  • Build data pipelines, ETL processes and develop RPA workflows
  • Drive efficiency programmes, tracking and demonstrating impact
  • Work with stakeholders to identify opportunities for smarter working
  • Translate technical concepts into clear recommendations for decision-makers
    Essential Skills:
  • Experience in automation tooling (RPA, Power Automate, APIs) and/or data engineering (ETL, SQL, Python, data pipelines)
  • Experience with data platforms (Azure, AWS, Power BI, Tableau or similar)
  • Ability to deliver technical solutions that generate measurable results
  • Strong communication skills with non-technical audiences
    Desirable:
  • Experience with AI/ML tools or cloud platforms
  • Team leadership, coaching or mentoring experience
    Why this role?
    If you're looking to move from purely technical work into a role where you can shape strategy, lead a team this could be perfect. You'll gain leadership experience, work on cutting-edge automation and AI projects, and help drive real change.
    Keywords: Data Engineer, Automation Engineer, RPA, ETL, Python, SQL, Power BI, Team Leader, Data Pipeline, Power Automate, Azure, AWS, API Integration, Business Intelligence, Public Sector, Local Government, Digital Transformation, Technical Lead, Process Automation, Midlands

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