Senior Data Engineer – Azure - Birmingham/Flexible

Investigo
Birmingham
6 months ago
Applications closed

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Overview

This range is provided by Investigo. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

Up to 62k per annum plus excellent benefits and flexibility

1 day a week in the Birmingham office expected, the rest from home

Senior Data Engineer with Azure experience required for an organisation that is progressing through an exciting period of growth & transformation, where you will play a key role in developing and maintaining data systems within the organisation, empowering users to create quality data to serve growing business needs.

Within the role you will lead in the design and development of robust data pipelines across batch (and streaming environments). Ideally you will have experience working with Azure, SQL and data modelling techniques.

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


Responsibilities
  • Lead in the design and development of robust data pipelines across batch (and streaming) environments.
  • Develop and maintain data systems to empower users and meet growing business needs.

Qualifications
  • Experience with Azure, SQL and data modelling techniques.

Employment type
  • Full-time

Seniority level
  • Mid-Senior level


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