Artificial Intelligence Engineer

Oliver Bernard
London
2 months ago
Applications closed

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Job Description

AI Engineer

London

Hybrid, 2 days a week


OB have partnered with a pioneering AI research company in London that are pushing the boundaries of applied machine learning. They're seeking a skilled AI Engineer to help drive the next wave of intelligent system development, from rapid research prototypes to production-grade features.


The Role

  • Develop and experiment with advanced techniques in context optimisation, model enhancement, and workflow automation, enabling everything from UI generation to code synthesis.
  • Run focused A/B tests, evaluations, and user-driven experiments to elevate generation accuracy, consistency, and overall performance.
  • Bridge research and production by transforming cutting-edge ideas into stable, scalable systems that deliver real impact.


What You'll Bring

  • Hands-on experience working with LLMs (open or closed source).
  • Strong programming skills in Python and JavaScript/TypeScript.
  • Background in applied ML, research engineering, or a closely related domain.


Apply below for more information.


AI Engineer | London | Hybrid

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