Data Engineer - (Python, SQL, Machine Learning) - Robotics

Randstad Digital
London
2 weeks ago
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Data Engineer - (Python, SQL, Machine Learning, AI, Cloud Storage) - Robotics/AI

My global AI & Robotics client is looking for an experienced Data Engineer to join their data engineering team based in London.

This is a data engineering role so you are expecting to have in-depth technical knowledge of Python, SQL, Machine Learning, AI, Cloud Storage and managing large data sets.

A commercial background or a demonstrable strong interest in robotics & AI is highly preferred for this role.

Essential Skills

  • Bachelor's or Master's degree in Data Science, Computer Science, or a related field.
  • Experience in data engineering, data quality management, or a similar role.
  • Strong proficiency in Python, SQL, and data processing frameworks.
  • Knowledge of machine learning and its data requirements.
  • Attention to detail and a strong commitment to data integrity.
  • Excellent problem-solving skills and ability to work in a fast-paced environment.

Desirable Skills

  • Experience in robotics or a related field.
  • Familiarity with cloud-based data storage and processing solutions.<...

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