Azure Data Engineer

Harnham
Burton upon Trent
2 months ago
Applications closed

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Role: Azure Data Engineer

HYBRID WORKING: 1-2 Days in Burton upon Trent

Salary: £55,000 - £66,000 (dependent on experience)

Insight into the Company:

This market leading hospitality company are looking to bring in an Azure Data Engineer, to sit in support their Data Science team.

The ideal candidate will have used ADF extensively and have expertise with Azure tools. The project you would be involved in will focus on bringing the data in source systems onto Azure Data Lake, in addition to liaising with Data Scientists with their ML and AI work (no experience needed but would be great to have).

Role and Responsibilities:

  1. You will design, build and upgrade data pipelines
  2. You will work in CI/CD and with Software/ DevOps teams in the organisation
  3. You will have expertise in azure – from collecting, to transforming to loading!

Skills and Experience:

  1. Essential to have experience with:
  2. 3 years experience
  3. Azure and ADF
  4. SQL
  5. Python
  6. Regular stakeholder management
  7. Data warehouse management
  8. Desirable to have experience with:
  9. AI and ML knowledge
  10. GTA / GTM

Interview Process:

  1. There are 2 stages to the process:
  2. Introductory conversation to get to know you
  3. Technical task

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