Data Engineer

Ignite Digital Talent
Reading
3 weeks ago
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About the Role

We are looking for a Data Engineer / Analyst to join our growing data team. This is a fantastic opportunity to work on cutting‑edge Azure data solutions, helping to shape and deliver high‑quality, scalable data platforms that drive real business insights.

What You’ll Be Doing
  • Designing, building, and maintaining ETL pipelines using Azure Data Factory, SSIS, and SQL Server
  • Developing and optimising stored procedures and queries for data transformation and integration
  • Building and maintaining data warehouse solutions and dimensional data models
  • Supporting data integration projects and ensuring data quality, accuracy, and consistency
  • Delivering insights through Power BI dashboards and reports
  • Using Python and PowerShell for automation and data manipulation
  • Collaborating with business stakeholders to translate requirements into technical data solutions
What We’re Looking For
  • Strong experience with SQL Server (T‑SQL, stored procedures, optimisation)
  • Hands‑on expertise with Azure Data Factory (ADF) and SSIS
  • Solid understanding of data warehousing and dimensional modelling
  • Proven experience building ETL/data integration solutions
  • Exposure to Power BI, Python, and PowerShell is highly desirable
  • Financial services or insurance experience is desirable but not essential
  • Excellent problem‑solving skills with a proactive, can‑do attitude
  • Strong communication skills and ability to work closely with stakeholders
Why Join Us?
  • Flexible hybrid working - only 1–2 days per month required in the Reading office
  • Opportunity to work with modern Azure data technologies
  • A collaborative, supportive team culture where your ideas are valued
  • Clear pathways for career progression and development
  • Competitive salary and benefits package including 10% bonus, private medical & generous pension
How to Apply

If you’re a Data Engineer or Data Analyst with strong SQL, ADF, and SSIS experience, we’d love to hear from you!

Equal Opportunities

We are committed to building a diverse and inclusive workplace. All qualified applicants will receive consideration for employment without regard to race, gender, age, disability, or other protected characteristics.


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