Data Scientist

IO Associates
London
1 month ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist (Government)




Salary: £45,000-£95,000 DOE + 15% Clearance Bonus

Closing Date: 13 February 2026

Requirements:

  • Active enhanced DV Clearance (essential)
  • Roles available from Junior through to Lead level
  • Fully on-site in Central London
  • Competitive salary + clearance bonus

We're hiring Junior, Senior, and Lead Data Scientists with an AI focus and enhanced DV Clearance to join a prestigious client delivering high-impact public sector projects.

Our client is a global leader in technology, engineering, and consulting, driving innovation across digital, cloud, and platform solutions. You'll benefit from strong career progression, continuous development opportunities, and an inclusive working environment.



What will you be doing?

You'll bring deep technical expertise across machine learning, GenAI, NLP, computer vision, and broader data science to design, build, and scale AI-driven solutions.

The role involves:

  • Working closely with customers to understand challenges and define data-driven solutions
  • Communicating complex technical concepts in a clear and compelling way
  • Leading and motivating Agile teams
  • Shaping proposals, contributing to bids, and supporting RFI/RFP processes
  • Delivering robust, production-read...

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