Data Engineer - Power BI

Chapman Tate Associates
Wolverhampton
1 week ago
Create job alert

Turn complex data into clarity. Build insight that drives decisions.

We’re looking for a Data Engineer who loves shaping data into meaningful stories. This role sits at the intersection of stakeholders, systems, and strategy—where strong modelling, clean visuals, and secure data really matter.

You’ll be trusted to own analytics end-to-end: from understanding business questions, through to designing scalable Power BI solutions that leaders actually use.

What You’ll Be Doing:
  • Partnering with teams across the business to translate requirements into robust, well-documented analytics solutions
  • Designing and delivering Power BI dashboards, forecasting models, and deep-dive analysis that influence commercial outcomes
  • Building and optimising data models that support accurate, high-performing reporting
  • Working with large, varied datasets using SQL and Power BI, ensuring insights are reliable and easy to consume
  • Tracking and interpreting KPIs across sales, marketing, product, and customer performance
  • Automating reporting workflows to reduce manual effort and improve consistency
  • Maintaining strong standards around data quality, validation, access control, and security
  • Supporting junior analysts and contributing to best practices in data governance and analytics delivery
What Their Looking For:
  • Hands‑on experience building and maintaining data pipelines (ETL/ELT), including Power Automate
  • Strong Power BI expertise, including DAX, data modeling, and performance optimisation
  • Advanced SQL (MySQL) skills for complex querying and data transformation
  • A sharp eye for data visualisation and the ability to tell a clear story with numbers
  • Confidence presenting insights to non‑technical stakeholders
  • Understanding of data governance, security, and compliance principles
  • VB Script experience is a bonus, not a requirement

Apply Today

If you’re motivated to build impactful data solutions and drive analytics innovation, we’d love to hear from you.

Apply now or get in touch for a confidential discussion.


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