Data Scientist - Up to £170k

Oliver Bernard
London
9 months ago
Applications closed

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Data Scientist – GenAI

Up to £170k | Hybrid (2 days/week in London)


We're working with a global consultancy that’s hiring multipleData Scientistswith deep expertise inGenerative AI. An extremely rare opportunity to work alongside Europe's brightest minds, and contribute to some of the most forward thinking and innovative projects around.


You’ll be applying the latest in GenAI, building and deploying models usingLLMsand other advanced techniques. The role involves close collaboration with Engineering, Product, and Infrastructure teams to create scalable and production-ready AI solutions.


What they’re looking for:


  • Proven track record in top companies.
  • Strong hands-on experience inGenerative AIand Data Science
  • Solid proficiency inPythonand popularML libraries
  • Experience withcloud platforms(AWS, GCP, Azure)
  • MSc or PhD is a plus
  • Excellent communication and problem-solving skills
  • Experience in the consulting world is also a plus.


Requirements:

  • Must be UK-based
  • Unfortunately,visa sponsorship is not available


Salary:£100k to £170k, depending on experience

Location:Hybrid – 2 days/week in London office

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