Principal Data Science and Machine Learning Researcher

Searchability NS&D
Gloucester
1 month ago
Applications closed

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Job Description

  • Up to £80k DoE plus package
  • Gloucester location – circa 3 days on site
  • Active SC and eDV eligibility required
  • Senior technical leadership role with strategic influence across multiple R&D programmes


ABOUT THE CLIENT:

Our client is a highly specialised technology organisation operating in a secure, mission-focused environment within the National Security sector. They operate a small, well-funded research group embedded in a rapidly expanding area of the business, with a strong focus on innovation and customer-driven R&D. As part of continued growth, they are seeking an experienced Principal Data Science & Machine Learning Researcher to provide leadership and strategic direction.


THE BENEFITS:

  • Tiered clearance bonus
  • Leadership role in a growing, well-funded R&D function
  • Opportunity to shape strategy and future research direction
  • Work on high-impact, technically challenging problems
  • Hybrid/flexible working dependent on project needs


THE PRINCIPAL DATA SCIENCE AND MACHINE LEARNING RESEARCHER ROLE:

In this role, you will act as a technical and strategic leader across multiple data science and machine learning research initiatives...

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