Research Engineer

Dunbar Brown Group
London
1 month ago
Applications closed

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Dunbar Brown Group are delighted to be working again with an exclusive customer in legal tech who are looking to add a Research Engineer to their team in London.


The ideal candidate will have:

  • 5+ years experience in a Research Engineering/Data Science role.
  • Track record of working on complex solutions ideally using LLM's, ML and NLP.
  • Conducted new research into AI methodologies and techniques to innovate products.
  • Experience of leading and mentoring a team of data scientists.
  • Exposure to legal tech is advantageous.


This role will allow you to combine your technical expertise to apply data science to real life problems and create cutting-edge solutions into product offerings.


The role will be hybrid so suitable candidates need to be able to commute into London at least once a week.


The salary expectations for this role are £75-90,000 per annum DOE.

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