Machine Learning Research Engineer - NLP / LLM

RedTech Recruitment
Cambridge
1 month ago
Applications closed

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Job Description

Machine Learning Research Engineer - NLP / LLM


An incredible opportunity for a Machine Learning Research Engineer to work on researching and investigating new concepts for an industry-leading, machine-learning software company in Cambridge, UK. This unique opportunity is ideally suited to those with a Ph.D. relating to classic Machine Learning and Natural Language Processing and its application to an ever-advancing technical landscape. On a daily basis you will be working on the very cutting-edge of machine-learning including prototyping, building and implementing new approaches to AI problems.


Location: Cambridge – 3 days in office / 2 days remote


Salary: Highly competitive salary + comprehensive benefits


Requirements for Machine Learning Research Engineer

  • You will have a Ph.D from a world-leading University in a Computer Science, Physics, Maths or similar (we are very keen to hear from those with a Ph.D. directly related to NLP)
  • Experience weighted more towards classic machine learning than AI Engineering
  • Strong knowledge in LLMs, NLP and Machine Learning / AI
  • Excellent academics throughout including a minimum of a 2.1 degree from a leading university, AAB at A-Level
  • Published papers
  • Good understanding of softwar...

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