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Junior Data Scientist

Robert Half
London
1 week ago
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AI Tech Start Up - Junior Data Scientist - Remote Based

London

£30,000 - £50,000

Robret Half have partnered with an early stage high potential AI focused Tech Start-Up who aree looking for a Junior Data Scientist to join their growing team and help develop advanced machine learning models that predict and prevent equipment failures in large-scale industrial operations. This is an exciting opportunity to apply data science to real-world engineering challenges, using rich, high-frequency data from complex machinery.

Their AI-driven predictive maintenance platform is built on years of operational data and designed to help clients reduce downtime, improve efficiency, and make data-backed maintenance decisions. Delivered via a secure, cloud-based SaaS model, it leverages cutting-edge technologies to bring innovation to heavy industry.

You'd join the business at a very early stage which is uniquely positioned for rapid growth!

What You'll Do

  • Build, validate, and monitor machine learning models for anomaly detection and failure prediction.
  • Analyze sensor data and operational logs to support predictive maintenance strategies.
  • Develop and maintain data pipelines using tools like Apache Airflow for ef...

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