Senior LLM Engineer

Oliver Bernard
London
1 year ago
Applications closed

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Senior LLM Engineer - Up to £120,000 - Fully Remote (EU)


Salary Package:Paying Up to £120,000 + Equity


Working Arrangements:Fully Remote


Must have suitable Right To Work, No Sponsorship


The Company


A VC backed start-up specialising in conversational artificial intelligence (AI) are looking for a Senior Large Language Model (LLM) Engineer to join their small team.


The Role


You will be training open-source LLMs, should have previous experience with this


Strong academics are preferred, also value industry experience highly


Should be well-versed with Python


Key Skills

  • Open Source Exposure
  • Prompt Engineering
  • LLM Training
  • Building Datasets


Streamlined Interview Process!


Senior LLM Engineer - Up to £120,000 - Fully Remote (EU)

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