Senior Staff Engineer (Waitrose Apps)

John Lewis & Partners
Bracknell
1 year ago
Applications closed

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About the role

Do you have the skills to fill this role Read the complete details below, and make your application today.Our Engineering practice includes 60+ teams, working on everything from Cloud Platforms to Mobile Apps, from E-Commerce functionality to Machine Learning.Our Engineers work collaboratively and share knowledge, and learning is extremely important to us. We support our Engineers to continuously improve their skills and keep abreast of the latest technologies.As a Senior Staff Engineer

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