Senior Data Science and Machine Learning Researcher

Searchability NS&D
Manchester
3 days ago
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Job Description

  • Up to £65k DoE plus package
  • Manchester location – circa 3 days on site
  • Active SC and eDV eligibility required
  • High-impact R&D role with strong funding and long-term growth


ABOUT THE CLIENT

Our client is a highly specialised technology organisation operating in a secure, mission-focused environment within the National Security sector. Working as part of a small, well-funded research group within a growing area of the business, this team delivers innovative data science and machine learning solutions to complex customer problems.


THE BENEFITS:

  • Tiered clearance bonus
  • Funded R&D projects and internal seed investment
  • Clear technical growth and progression opportunities
  • Supportive, collaborative team environment
  • Hybrid/flexible working dependent on project needs


THE SENIOR DATA SCIENCE AND MACHINE LEARNING RESEARCHER ROLE:

As a Senior Data Science & Machine Learning Researcher, you will focus on research-led development, working across short exploratory tasks and longer-term R&D initiatives. You will help shape project direction, translate customer needs into technical solutions, and build innovative models and approaches that can be taken forward into delivery. This role suits someone comfortabl...

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