Harnham | Lead computer vision engineer

Harnham
London
1 year ago
Applications closed

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PRINCIPAL COMPUTER VISION ENGINEER (3D Data)


Have you got the right qualifications and skills for this job Find out below, and hit apply to be considered.

HYBRID

UP TO £90,000

We are working with an exciting DeepTech startup who are looking to utlise AI and Computer Vision to drive their position within the industry.

ROLE:

  • Driving cutting-edge modelling on 3D Computer Vision projects (SLAM, Lidar)
  • Build data algorithms, structures and architectures that scale with large 3D datasets
  • Take the lead on actively identifying data, pipeline, and/or operational bottlenecks and implement bold and realistic ML/software solutions
  • Contribute to hiring, coaching and managing AI/Vision team members
  • Attend key conferences and stay on top of the latest research & Commercial

REQUIREMENTS:

  • PhD or MSc level education in STEM subjects.
  • 3D Computer Vision experience
  • Strong skills in Python, C/C++
  • Good communication skills

If this role looks of interest, please reach out to Joseph Gregory.

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