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Lead Machine Learning Engineer

Oliver Bernard
London
10 months ago
Applications closed

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Lead Machine Learning Engineer - ML, LLM's, ML Models, Algorithms


New Machine Learning Engineer Role


I have and incredibly exciting new, Senior Machine Learning Engineer role with B2C scale-up client of mine who are currently growing across their Engineering, Product and Design teams.


You'll be joining the Engineering team as the sole ML Engineer, working on 2 main projects for the business, with no pre-defined tech stack therefore you'll be tasked with providing lots of technical guidance, input into the long-term strategy, and advice on what the best technologies to use are moving forward - there's a lot of greenfield work available!


Lead Machine Learning Engineer - ML, LLM's, ML Models, Algorithms


To be considered for the role, you must have prior experience working in B2C & Start-Up Environments as well as Ranking or Personalisation Systems.


This role is a hybrid role with 3-days a week required in their Central London offices - this is non-negotiable!


Salary is between £90k-£120k depending on skills and experience, along with an exceptional bonus and benefits package.


To be considered, you must be UK based and sadly sponsorship is unavailable.


Lead Machine Learning Engineer - ML, LLM's, ML Models, Algorithms

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