Senior Cloud Engineer

John Lewis & Partners Careers
London
1 year ago
Applications closed

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About the role

At a glance:

  • Hybrid Working: We have opportunities at both our John Lewis Head Office in Pimlico, London and Waitrose Head Office in Bracknell, Berkshire.
  • We have a blended hybrid approach of working from our offices and a home/remote UK location. You are contracted to a Partnership office location. If you choose to work remotely you should be aware that from time to time, you will need to come into the office.
  • Expected Salary range: £57,600 - £92,400
  • Contract type: Permanent


What's the role about?

As the UK's most successful omni-channel retailer, ecommerce is a key part of our business - we run two of the busiest websites in the UK, driving a significant proportion of our sales.

Our engineering practice includes 60+ teams, working on everything from Cloud platforms to mobile apps, from ecommerce functionality to machine learning.

Have a quick glance of our Engineering best practices, see our engineers talk about their experience and opportunities to learn and grow; Check out our Tech stack, reach out to us if you have any questions. Visit -https://www.jlpjobs.com/engineering-jobs/.

Internally this role is known as Product Engineer (L6)

What you will be doing

This is an opportunity to work as a Senior Platform Engineer within a cross-functional Agile development team buildin...

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