Staff Machine Learning Engineer

Harnham
Greater London
1 year ago
Applications closed

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Staff Machine Learning Engineer

Staff Machine Learning Engineer

Staff / VP, Machine Learning Engineer (UK)

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Machine Learning Engineer

Staff Machine Learning Engineer


Salary:£160,000 - £190,000 + 22% bonus, 10% pension, private healthcare

London -Flexible - Remote/Hybrid


This role is 100% hands on - with technical leadership and upskilling teams


Join and lead a dynamic team of ML Engineers working across the UK and US to drive innovative GenAI and Computer Vision projects alongside classical ML.


ROLE AND RESPONSIBILITIES


  • Lead a small team of 3-4, designing and building models across Computer Vision, LLMs, GenAI and NLP
  • Working with various multimodal data sets (audio, visual, text, image data)
  • Driving best practices, code reviews and coding when needed
  • You'll be advising the UK and US stakeholders on AI best practices and scoping out projects
  • Working alongside technical and non-technical stakeholders, creating insights and reports on key findings
  • Driving the latest innovative research in AI, building and deploying core projects in AWS and Databricks
  • Opportunity to grow and develop, building out a team


SKILLS AND EXPERIENCE


Required

  • MSc or PhD in STEM/AI related subject
  • 7+ years of ML Engineering/Software Engineering experience
  • Proficiency in Python
  • Hands-on experience in GenAI and Computer Vision is required
  • Experience working with large data sets and a large user base is essential
  • Excellent communication skills with proven experience working with stakeholders


Apply below!

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