Computer Vision Scientist

Darcie Talent
London
1 day ago
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We are seeking a PhD Computer Vision Scientist with deep expertise in object detection, tracking, or related visual perception tasks. You’ll join our world-class research team to design, implement, and optimize algorithms that advance the state of the art in dynamic scene understanding.


This role is ideal for a researcher who has already made significant contributions to the field, for example, through publications at top-tier venues such as CVPR, ICCV, or ECCV and is eager to apply that experience in a fast-paced, applied R&D environment.


Requirements

  • PhD in Computer Vision, Machine Learning, Robotics, or a related field.
  • Strong research background in object detection, tracking, segmentation, or visual understanding, VLM's, VLA's
  • Proven record of publications in CVPR, ICCV, ECCV, or comparable conferences.
  • Proficiency in Python and deep learning frameworks such as PyTorch or TensorFlow.
  • 1-3 years industry experience.


What We Offer

  • Competitive salary and equity package.
  • Access to high-performance computing infrastructure.
  • Opportunities for publication, collaboration, and attending top-tier conferences.
  • A collaborative, research-driven environment with a focus on innovation and impact.

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