Machine Learning Engineer - Oxford - £Competitive

Bond Williams
Oxford
1 day ago
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A Machine Learning Engineer is required to join a fast growing community of like-minded Engineers at the forefront of next generation manufacturing technology.

This is a fantastic opportunity for a Machine Learning Engineer to take on a role leveraging your technical and communication skills to influence critical engineering decisions and impact the scale up of manufacturing operations.

Machine Learning Engineer

Skills you will use:

  • Strong Mathematical / Statistics background
  • Coding in Python
  • Probabilistic modelling

You will learn:

  • To develop Machine Learning models for statistical process control
  • To model and predict performance of high tech manufacturing systems

The role offers challenging work, excellent opportunities for progression, equity plan and a strong base salary.

Bond Williams Professional Recruitment are an equal opportunity employer and operate as an Employment Business and Recruitment Agency


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