Senior Data Engineer

Investigo
Gloucester
2 months ago
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Location: Hybrid - Gloucester 2 days a week

We’re partnering with a forward-thinking organisation undergoing significant transformation and continued investment across its data and technology landscape. They are now seeking a Lead Data Engineerto play a key role in shaping, delivering, and optimising their Azure-based data platform.

This position blends hands-on technical leadership with light people management, where you’ll line manage up to four data professionals,with a strong focus on mentoring, coaching, and technical guidance rather than formal management overhead.

Key responsibilities include:

  • Leading the design and delivery of scalable, high-quality data pipelines using Azure Data Services, DBT and Terraform
  • Driving CI/CD automation and Infrastructure as Code practices using Terraform and Azure DevOps
  • Ensuring secure, compliant, and high-impact data products aligned to business needs
  • Collaborating closely with engineering, analytics, and wider stakeholders
  • Providing day-to-day technical leadership, mentoring, and coaching to a small team of up to four data engineers and analysts

If you’re interested in finding out more, please apply or reachout to me at:


#J-18808-Ljbffr

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