Computer Vision and Machine Learning Engineer - / C++ / Python / Tensorflow / PyTorch / Image based 3D reconstruction

European Tech Recruit
Surrey
3 weeks ago
Applications closed

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Computer Vision and Machine Learning Researcher - / C++ / Python / Tensorflow / PyTorch / Publications

Computer Vision and Machine Learning Engineer - / C++ / Python / Tensorflow / PyTorch / Image based 3D reconstruction


  • Do you have a solid experience in Machine Learning and Computer Vision with programming experience in C++ and Python?
  • Experience developing with machine learning frameworks such as Tensorflow and/or Pytorch
  • Do you want to join a globally recognised mobile/tech development company?


We are seeking aComputer Vision and Machine Learning Engineerwith experience in image-based 3D reconstruction (Photogrammetry, Neural Radiance Fields (NERF) or Gaussian Splatting techniques) to join our client in the northwest Surrey/West London (1 hour from King's Cross) on a initial 6 month contract (PAYE) basis.


Please note- as this is a contract position, we can only consider applicants with full Right to Work in the UK and with a maximum of a 1 month notice period.


Required skills:

  • Masters or higher degree in Computer Science/Engineering, or related disciplines
  • Professional software development experience with C++ and Python
  • Experience developing with machine learning frameworks – Tensorflow/Pytorch
  • Expertise in image-based 3D reconstruction: Photogrammetry, Neural Radiance Fields (NERF) or Gaussian Splatting techniques.
  • Programming proficiency one or more of programming language and APIs like C++/Java/Python
  • Excellent communication, teamwork and a results-oriented attitude
  • Proficiency in problem-solving and debugging



Any of the following would be considered a plus:

  • Experience in Generative AI, including hands-on implementation of state-of-the-art models.
  • Computational photography, image inpainting and 3-D vision
  • Model optimization and knowledge distillation.
  • Experience in computer graphics and rendering: design and development of software such as OpenGL, OpenGL ES, Vulkan or DirectX
  • Experience in Android application development


If this sounds interesting and you'd like to learn more, click the link below to apply or email me with a copy of your resume on


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