Data Engineer - Outside IR35

Paradigm Tech
Sheffield
8 months ago
Applications closed

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Data Engineer | Data Migration | ETL | Azure Cloud | Boomi | Data Warehousing | Outside IR35 | £400p/d


I am currently working with one of the most established digital agencies in the country operating for over 20 years with some fantastic clients and projects, this role in particular is for a large scale Data Warehousing project upgrading a legacy system and helping to overhaul and modernise the clients systems.


They need 2-3 Data Engineers to join a large team to help deliver this project, you will need a strong Azure background, knowledge of updating legacy systems and experience managing and organising large amounts of data.


Key Skills

  • Assess and create an architectural blueprint of their Data Warehouse
  • Strong ETL skills ideally experience with Boomi
  • In-depth knowledge of Azure cloud
  • BI validation reporting and user acceptance testing
  • Experience of Data Migration projects from legacy systems


If you think you match the core skills of the role please get in touch for more information on the role.

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