SVP AI and Computer Vision

Fortis Executive Search
London
2 months ago
Applications closed

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SVP of AI and Computer Vision

SVP, AI and Computer Vision

📍 Europe or US (Hybrid / Remote)


We’re partnering with a global technology leader building large-scale real-time tracking and vision systems that operate across data, video, and analytics platforms worldwide.

The business is investing heavily in next-generation computer vision infrastructure — using advanced imaging, real-time inference, and automation to transform how live data is captured, processed, and delivered.


As SVP, AI and Computer Vision, you’ll:

  • Lead global strategy and execution across computer vision, ML, and data engineering.
  • Scale world-class engineering and research teams across multiple regions.
  • Oversee the design, optimization, and deployment of real-time tracking and visual intelligence systems.
  • Collaborate with C-level stakeholders to translate technical innovation into commercial and product impact.


Essential requirements:

  • Proven background leading large computer vision or real-time data engineering teams.
  • Expertise in object tracking, image/video processing, or large-scale ML deployment.
  • Strong technical leadership and cross-functional delivery at global scale.
  • Experience turning advanced R&D into production-grade systems.


This is a high-visibility global leadership role, reporting directly to the executive board, with ownership of a critical innovation function driving the company’s next phase of growth.

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