Platform Engineer - Fully Remote - Up to £90,000

Saragossa
Leeds
1 year ago
Applications closed

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Want to join a scaling, rapidly growing company looking to provide new products to the market?


Does a chance for endless learning excite you? Want to have a role where autonomy is key?


With a strong commitment to people-first values, they foster a culture of growth, diversity, and inclusion, ensuring their teams are supported and rewarded for their contributions.


You will join a firm that has scaled from 3 to 15 within IT and that is constantly investing in new technology. This is an opportunity to be part of a high-impact engineering team working on scalable, data-driven applications.


You'll need to be an Azure expert with concrete exposure to CI/CD pipelines, Powershell/Bash scripting, and Azure DevOps.


You’ll work across integrations, transactions, and data science/AI squads, focusing on scalability, security, automation, and performance optimisation to ensure seamless delivery of cutting-edge solutions.


  • £90,000 + Bonus
  • Fully Remote (Quarterly Office Visits)


Technology is at the heart of this company, which has a commitment to investing in bleeding-edge tech.


No up-to-date CV is needed; we can work on this together.

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