Machine Learning Engineer

Fruition IT
London
1 year ago
Applications closed

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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer - Satellite

Machine Learning Engineer

£70-90k + equity + healthcare

London Hybrid


Backed by one of the best VCs for AI globally, this AI start up is is on a steep growth trajectory. Join some of the best minds in the industry, at a company founded by hugely successful and experienced researchers and engineers.


You'll work alongside the Head of ML and ML team, focused on designing and building AI driven features/ products. This role encompasses research and POCs, through to developing production level code for resilient and high quality features.


You will have a strong influence on the direction of the core product offering, and will be at the forefront of a developing technology (Gen AI, AI Agents, RAG).



Role:


  • Develop multi modal AI agents that can scale
  • Fine tuning LLMs
  • Build evaluation systems
  • End to end ML, research through to production
  • Produce production level code
  • Steer AI product offering



Requirements:


  • Experience with Generative AI, RAG or AI Agents
  • Proven coding ability, able to produce production level code
  • Understanding and knowledge of latest advancements in Generative AI, RAG, AI Agents
  • Understanding of core ML fundamentals and concepts
  • Strong problem solving ability
  • Strong grasp of mathematical concepts



Desirable:


  • Academic research (projects, publications)
  • Strong academic background (eg PhD), although not essential if you have the relevent commercial experience
  • Fintech experience (not essential, as there's already a wealth of industry experience in the team)



Logistics:


  • Flexible working (most do 2-3 days per week in office)
  • Central London office
  • £70-90k + equity
  • Wealth creation opportunity
  • Founding team with a very long list of credentials


Apply now for all the details!



We are an equal opportunities employer and welcome applications from all suitably qualified persons regardless of their race, sex, disability, religion/belief, sexual orientation, or age.

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