Senior SLAM Computer Vision Engineer

Harnham
London
1 year ago
Applications closed

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SLAM COMPUTER VISION ENGINEER

£80,000-£100,000

HYBRID


This is an exciting new opportunity for a Computer Vision Engineer (SLAM modelling) expert to join a DeepTech start-up!


Harnham is collaborating with an exciting company that has developed an advanced artificial intelligence platform to support construction and engineering projects.


ROLE:

  • Create and implement Machine Learning and Computer Vision models, using SLAM based tools and modelling systems
  • Working on Visual SLAM and LIDAR Slam
  • Working as part of a team of 4
  • Deploy models for production using their Cloud platform.
  • Work closely with cross-functional teams, including Engineering, Intelligence, and Product, to achieve project goals.
  • Apply your data science knowledge to enhance the current systems and architecture.
  • Stay actively informed about the most recent developments and advancements in data science and construction analysis.


REQUIREMENTS:

  • Hold a relevant degree, at the MSc or PhD level, in AI, Robotics or Computer Vision or relevant subjects
  • Candidates will have experience with Visual Slam
  • Demonstrate excellent understanding and extensive experience with Computer Vision models, particularly in the context of SLAM modelling (required)
  • Proficient in Python and or C++ with end to end deployment experience


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

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