Computer Vision internship - West London

microTECH Global Ltd
South West England
1 year ago
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I am looking for ML / Computer Vision interns to join my client in West London.

You will be joining an industry leading consumer technology brand working on cutting-edge AI projects.

Skills And Qualifications

Essential skills are:

Currently studying a PhD in Computer Science, Mathematics or a similar disceplin.

Expertise in image-based 3D reconstruction.

Strong programming skills in Deep Learning libraries like Pytorch and/or TensorFlow.

Programming proficiency one or more of programming language and APIs like C++/Java/Python.


Desirable skills include:

Experience in Generative AI

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



Contract Length: 6 Months
Hybrid: 2 days remote, 3 days on-site

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