Senior Machine Learning Engineer

Wyatt Partners
City of London
4 days ago
Applications closed

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Innovation team working on Autonomous Vehicle Control

Salary: £550 - £700 per day - 1 year minimum project

The Senior Machine Learning Engineer will join a Government backed innovation project around Autonomous Vehicle Control.

You will join a team of 10 people working in London, whilst also collaborating closely with a European based team.

A suitable candidate will likely have 2-3 years experience working in AI & deep learning API’s, with a focus on robotics/automation. It is not essential to have experience in Autonomous Vehicle Control.

Key Responsibilities and Requirements:

  • Experience of computer vision systems / Advanced visual perception. Neural Networks
  • Signal & Image Processing
  • Algorithmic knowledge of supervised/unsupervised machine learning systems and deep learning API/principles
  • Python/C++. OpenCV, Ubuntu/Debian

This is an urgent requirement to join a passionate innovation team working on next generation autonomous vehicle control. The project is minimum 1 year in length with a clear goal to reach, which if achieved will offer the Machine Learning Engineer considerable job satisfaction and career advancement.


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