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Deep Learning Scientist – LLM’s, RAG

Wyatt Partners
City of London
4 days ago
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Innovative Tech firm developing unique LLM applications are hiring a Deep Learning Scientist.

The nature of your work will focus around autonomous agent development & interactions at scale.

Experience Required:

  • Python, with a solid software design experience.
  • Deep knowledge of machine learning, deep learning methodologies & transformers
  • Conversational AI technologies, like natural language understanding/generation, dialog systems, machine translation, and information retrieval.
  • Experience of developing information retrieval systems, Fine Tuning for RAG & Direct Preference optimisation
  • Experience of ML Ops environments & platforms

The more experience you have of adapting LLM’s for different domains the better (although this isn’t a must have) so someone who has worked in a consulting environment working across domains might be relevant.

If this sounds like you and you’d like to discuss further please get in touch, we are currently retained across 5 hires for our client.


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