Machine Learning Scientist

Robert Walters
London
1 year ago
Applications closed

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Our client is in the midst of a crucial growth phase, developing and scaling an innovative product related to battery testing. This product involves both hardware and software components for analysing batteries through acoustic signals. They are seeking a Machine Learning Specialist to guide their machine learning efforts and professionalise the work done by their existing team.

What you'll do:

As a Machine Learning Specialist, you will play a pivotal role in enhancing the infrastructure of our client's innovative product. Your primary responsibility will be to develop and professionalise machine learning models and pipelines for analysing data from the company's device used in battery testing. You will also guide the company's machine learning efforts, building on the work done by an existing junior engineer. Your expertise will be instrumental in creating models that can predict battery performance, manufacturing drifts, and provide actionable insights from acoustic signal data.

  • Develop and professionalise machine learning models and pipelines for analysing battery testing data.
  • Guide and enhance the company's machine learning efforts, building on work done by a junior engineer.
  • Work on creating models that can predict battery performance, manufacturing drifts, and provide actionable insights from acoustic signal data.
  • Lead machine learning projects and provide direction for future development.<...

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