Machine Learning Engineer

Engineering & Technology - Germany 

You believe that food waste must be minimised? If you are passionate about machine learning and want to apply your knowledge to make a real impact this role is for you.

In your role as a Machine Learning Engineer you will be working on all parts of Kitro’s ML pipeline, on tasks ranging from data processing to model improvements and even AI infrastructure-related tasks. You will base your work on already existing data processing workflows and models. A high performing, robust and yet flexible ML pipeline is key for Kitro’s business and you will contribute to this solution with your expertise.

Your Job & Responsibilities

Responsibilities

  • Improve data processing workflows that process large amounts of images
  • Improve the robustness and performance of our ML pipeline
  • Manage the AI infrastructure, help to scale up our system
  • Train and evaluate models and bring them to production
  • Explore alternative approaches that could boost our ML Pipeline’s performance

Skills and Requirements

  • Experience with deep learning for computer vision
  • Proficient in Python
  • Experience with PyTorch
  • Experience with AWS’s Machine Learning services
  • Values working in a team, but can work on tasks independently
  • Used to remote work
  • Experience with segmentation models is a plus
  • Experience with embedding learning is a plus

What we offer you and who we are

  • Flexible working hours
  • Young and motivated team members
  • Get insight into a start-up
  • Work on many different aspects of the ML lifecycle

Your turn! How to apply

Please send your CV including references, degrees and a motivation letter. Send your application to talent@kitro.ch.

Next Steps

Please send your complete application directly via email to talent@kitro.ch. We will get back to you as soon as possible with the next steps.

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