Engineering Manager AI/ML (Computer Vision Focus)

La Fosse
London
4 months ago
Applications closed

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Engineering Manager AI/ML (Computer Vision Focus)

  • Up to 120/130k + bonus + shares
  • Remote-first occasional travel to London
  • Innovating real-time AI in a world-class SportsTech environment


Im working with a pioneering company in the SportsTech industry thats scaling their AI capabilities and continuing to push the boundaries of real-time computer vision applications. As part of this growth, theyre looking for an Engineering Manager AI/ML to lead a talented team of 11 engineers in building next-gen Computer Vision and AI solutions.


This role is ideal for someone with strong leadership experience who enjoys guiding technical architecture and design but prefers to remain hands-off in coding. Youll play a critical part in shaping real-time AI systems while fostering engineering best practices and a strong, collaborative culture.



What youll be doing:

  • Lead and grow a team of 11 AI/ML engineers, primarily focused on computer vision.
  • Drive architectural decisions and technical direction across real-time AI systems.
  • Work closely with senior stakeholders to align engineering efforts with business goals.
  • Create a culture of high performance, mentorship, and continuous learning.
  • Own delivery processes and technical planning while staying high-level and strategic.
  • Ensure solutions are scalable, reliable, and well-architected for future growth.



What were looking for:

  • Proven experience managing high-performing engineering teams in AI/ML & Computer Vision.
  • Strong technical background with an emphasis on architecture and system design.
  • Preference for candidates with experience building real-time or low-latency systems not essential.
  • Ability to lead without being hands-on this role is more strategic and people-focused.
  • Excellent communication and stakeholder management skills.


If you're an engineering leader passionate about AI/ML and looking to build something impactful in a fast-paced environment, Id love to hear from you.


Engineering Manager AI/ML (Computer Vision Focus)

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