Machine Learning Engineer

Arcus Search
London
3 months 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

Role: Machine Learning Engineer

London: Central London - hybrid working

Salary: £125,000 + bonus + benefits

Industry: Technology Scale Up, circa 300 people


The role:


You will lead the design & development of robust Machine Learning models to solve complex problems. You will work alongside MLOps to help build the ML infrastructure for these models to be deployed, and then maintain & scale these efficiently.


You will continuously collaborate across internal stakeholders to ensure the models being built are improving customer experience, and business efficiency.


What we're looking for:

  • Experienced ML Engineer, working across LLM, Computer Vision, NLP, Deep Learning
  • Experience with deploying ML models into production
  • An understanding of emerging technologies - such as Retrieval-Augmented Generation (RAG) and Knowledge Graphs
  • A proactive mindset to identify problems and create areas for improvement
  • Degree in Computer Science, AI, Big Data, or equivalent


If interested, and the above applies to you, please apply below with your CV.

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