Machine Learning Manager (Vision)

Understanding Recruitment
1 year ago
Applications closed

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ML Engineering Manager

Focus: Computer Vision & Greenfield Projects


The Opportunity Lead new ML initiatives from the ground up. Build and grow a team working on breakthrough computer vision projects.


Key Projects

  • Launch new CV product lines
  • Build foundational ML infrastructure
  • Define technical strategy
  • Scale ML operations


Leadership Focus

  • Build a high-performing ML team
  • Foster innovation culture
  • Drive technical excellence
  • Balance Delivery & Exploration


Technical Areas

  • Deep Learning & CV
  • ML infrastructure at scale
  • MLOps & Deployment
  • Research implementation


You Bring

  • ML team leadership experience - ideally management of 10+ people teams
  • Strong CV/Deep Learning background
  • Track record of shipping ML products
  • Technical mentorship skills


We Offer

  • Ground-floor opportunity
  • Shape technical direction
  • Remote-first culture
  • Competitive package
  • Learning budget


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