Contract Palantir Foundry Data Engineer - DV Cleared

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London
1 day ago
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CONTRACT PALANTIR DATA ENGINEER - eDV CLEARED

NEW CONTRACT OPPORTUNITY AVAILABLE WITHIN A HIGHLY SECURE DELIVERY PROGRAMME FOR A DV CLEARED PALANTIR FOUNDRY DATA ENGINEER.

  • Contract opportunity for a Palantir Data Engineer to support cutting-edge National Security projects
  • £600 - £750 per day
  • Enhaced DV clearance is essential for high-side IT access
  • Based full-time onsite in London
  • Initial 12-month contract, with strong potential for long-term extension
  • To apply, please email:

WHO WE ARE?

We are growing our customer delivery team off the back of major success in the secure consultancy space. As part of a key programme of work, we are looking to build an additional Palantir Data Engineering team to help deliver mission-impacting solutions within a fast-paced, secure environment.

WE NEED THE PALANTIR DATA ENGINEER TO HAVE…

  • Proven experience building and deploying applications using Palantir Foundry
  • Strong software/data engineering background - Computer Science, Physics, Maths, Data Science.
  • Proficiency in Python and JavaScript/TypeScript
  • Experience solving technical problems involving cloud, infrastructure, data pipelines, or full-stack apps
  • Ability to design and manage Ontologies and build applications using Foundry tools like Workshop
  • Stro...

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