Senior LLM Engineer

numi
London
6 months ago
Applications closed

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AI Start-Up - Senior LLM Engineer - £100-130k + equity


numi have partnered with a pioneering AI company revolutionising enterprise AI through cutting-edge Large Language Model applications.


We're hiring a Senior LLM Engineer to architect and deploy state-of-the-art conversational AI solutions across retail and supply chain domains. If you're an engineer excited about shaping the future of AI-powered business intelligence, then check out the role below


You will be...

  • Designing and developing RAG-powered solutions for enterprise-level applications
  • Creating conversational agents that can integrate with APIs and technical documentation
  • Optimising and deploying cutting-edge language models for specific business domains
  • Researching the latest NLP and conversational AI advancements


You'll need...

  • Strong Python skills with expertise in TensorFlow, PyTorch, and Transformers
  • 5+ years experience in machine learning engineering
  • Proven track record with RAG models and vector databases
  • Passion for solving complex problems with pragmatic AI solutions


Interested?Apply now or reach out to for further details!

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