Principal Engineer (Waitrose Supply Chain)

John Lewis & Partners Careers
Bracknell
1 year ago
Applications closed

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About the role

The Partnership is the UK's most successful omni-channel retailer which includes two of the UKs most loved department store and grocery brands with annual sales revenues in excess of £12B.

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.

Waitrose Supply Chain is responsible for ensuring the right stock is in the right place at the right time. In the fast moving environment of retail grocery, supply chain processes are time critical to ensure sales aren't lost to low availability or wastage.

The technology supporting our supply chain is a blend of commercially available third-party platforms, bespoke in-house systems, and legacy applications, all interconnected through complex integrations with each other and other areas of the business. These systems must not only be highly resilient but also adaptable, enabling us to enhance operational efficiency and respond to evolving business needs.

Find out more about being a Software Engineer in the Partnership, and the technology we use.

At a glance

  • Contract type - This position is a permanent contract.
  • Working patter...

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