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source · wttj·req · jb_17b7ef9c60·listed 8h ago

Machine Learning Engineer

Kingfisher·London, England, United Kingdom·Hybrid·Full-time
Sourced listing · wttjNo salary disclosed
Posted
8 July 2026
via wttj
Type
Full-time
Arrangement
Hybrid
United Kingdom
Deadline
8 August 2026
closes in 30d
compensation · not disclosed
Salary not shared
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Summary

the pitch

Join Kingfisher, a leading retail group in Europe, as a Machine Learning Engineer. In this role, you will support the delivery and operationalization of advanced AI solutions, impacting millions of customers and colleagues. You will work as part of a high-performing engineering team, building scalable machine learning systems and collaborating with various teams to improve tools and processes. The position offers a hybrid work model, a competitive benefits package, and opportunities for career growth.

Role

posted by company

Join Kingfisher, a leading retail group in Europe, as a Machine Learning Engineer. In this role, you will support the delivery and operationalization of advanced AI solutions, impacting millions of customers and colleagues. You will work as part of a high-performing engineering team, building scalable machine learning systems and collaborating with various teams to improve tools and processes. The position offers a hybrid work model, a competitive benefits package, and opportunities for career growth.

Key responsibilities

  • Develop machine learning models and support their deployment into production, ensuring they are robust, efficient, and maintainable.
  • Contribute to the implementation and improvement of pipelines, tooling, and automation, applying good engineering standards and practices in model development.
  • Monitor performance and contribute to ongoing optimization of models, working collaboratively with colleagues to understand requirements and priorities.