Data Engineer

TRIA
Birmingham
6 days ago
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Data Engineer

Azure / SQL

Salary - Up to £45,000

Offices Available: Birmingham / Manchester / Liverpool / Leeds / Sheffield

Hybrid


This role will see you joining a growing Data Engineering function as a Data Engineer with a Global organisation within the Construction Consultancy industry. The organisation hasa really modern cloud estate, having recently migrated to Azure and implemented Dynamics365

T

his data team is a small but very well-established team who are integral to the running of the business. Joining as a Data Engineer in the team who will be exposed to new technology and training from day one. You will immediately be exposed to multiple types of data, Power BI and Azure Synapse, then down the line AI and machine learning. This is an exciting opportunity to embed yourself in a thriving function and organisation and really grown and excel your career.


Experience required:

  • Experience working within a modern cloud Data Engineering function
  • Understanding of full lifecycle, from concept to design/development and maintaining data warehouse
  • Cloud experience – Azure
  • SQL/Azure SQL
  • Analytical mindset


Desirable (Not Required)

  • Azure Synapse
  • Previous experience in a DevOps environment


Please apply directly with an up-to-date copy of your CV, we will be in touch to provide further information!

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