Lead Data Engineer – Azure/DBT/Snowflake – Gloucester/Flexible

Investigo
Gloucester
4 days ago
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Based in Gloucester 2 days per week, the rest from home – own transport required due to office rural location


55k – 65k per annum plus discretionary bonus on offer


Lead Data Engineer required for an organisation progressing through exciting change, transformation & investment in its systems & people. Within the role, you will play a key role in the oversight and optimisation of robust data pipelines, utilising Azure Data Services, DBT & Snowflake. You will also be responsible for the oversight and mentorship of a small team of data specialists.



  • Lead the delivery of high-quality and compliance data products across the Azure & Snowflake platforms
  • Drive the automation and deployment of CI/CD and infrastructure as a code, leveraging Azure DevOps and Terraform
  • Collaborate with internal teams to deliver scalable, secure & high impact data solutions
  • Mentor and oversee a team of data specialists (engineers & analysts)

If you’re interested in finding out more, please apply and your application will be reviewed by Ian Tittley at Investigo!


Seniority Level

Mid-Senior level


Employment type

Full-time


Job function

Information Technology


Industries

Technology, Information and Media


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