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Data Engineer

TXP
Birmingham
4 weeks ago
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Data EngineerHybrid (West Midlands)PermanentCompetitive Salary + BenefitsAre you passionate about building scalable data solutions and working with cutting-edge technologies like Microsoft Fabric, Azure, and Power BI? TXP is looking for a talented Data Engineer to join our growing team and help shape the future of data-driven decision-making.

We are TXP. We help businesses and organisations move forward, at pace and at scale. We believe in the transformative power of combining technology and people. By providing consulting expertise, development services and resourcing, we work closely with organisations to solve their most complex business problems.

Our work transforms organisations - and we take that responsibility seriously. We focus on success, pursue excellence and take ownership of everything we do.

But achieving that level of performance requires an inclusive and supportive working environment. We believe in the power of technology and people, and we help everyone here to succeed. At TXP, you can multiply your potential.

What You'll Be Doing

  • Designing, developing, and maintaining robust data pipelines.
  • Building and optimising infrastructure for scalable data solutions.
  • Integrating data from diverse sources across the business.
  • Ensuring data integrity, security, and complianc...

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