Data Engineer- DV cleared

Searchability
London
1 year ago
Applications closed

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DATA ENGINEER - DV CLEARED

BRAND NEW PERMANENT OPPORTUNITY AVAILABLE WITHIN A LEADING COMPANY FOR A DATA ENGINEER WITH DV CLEARANCE

  • Permanent opportunity for a data engineer/ data scientist with DV clearance.
  • Industry leading consultancy supporting mission critical government projects.
  • Salary up to £68,000 plus benefits.
  • London based in an easily accessible location.
  • To apply please call or email

WHO ARE WE?

We are recruiting Data Engineers at various levels with AI/ Machine Learning experience to work with an industry leading consultancy supporting mission critical Government projects with office locations in and around London. Our teams are what leads us forward and we are therefore looking for the best talent to join us as we continue to bring the best to the table. Due to the nature of these clients, you must hold DV clearance to work on Defence and National Security projects.

WE NEED THE DATA ENGINEER TO HAVE….

  • DV Security Clearance
  • Experience in Data Engineering/Data Science
  • Experience with data engineering tools for AI and reporting
  • Experience Architecting scalable solutions for multiple teams
  • Ability to develop data modelling and governance strategies
  • Hands-on experience with distributed computing, ETL, data pipelines, and automated workflows
  • Experience opt...

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