Senior Data Engineer

SR2 | Socially Responsible Recruitment | Certified B Corporation
Manchester
1 month ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer

Senior Data Engineer | Snowflake & DBT | Salary £65,000 - £80,000 | Remote


Would you like to join a national organisation that helps thousands of people across the UK during their time of need?


They’re looking to add a Senior Data Engineer to their centralised Data team. These products impact thousands of users daily, so you’ll get to work on products that are in production and see the fruits of your labour.


Their stack is Snowflake, DBT and Azure, and a big focus for them is staying up to date with the latest developments in data engineering, so you’ll be working on cutting-edge tech. Currently, they are undergoing a greenfield migration from On-prem -> Snowflake so they need deep experience with Snowflake and DBT.


This is a fantastic opportunity to join a company that not only cares deeply about its customers but also invests heavily in technology. You’ll also benefit from working alongside some of the best technical leaders that I know!


What you’ll need


  • Strong commercial experience as a Data Engineer
  • Proven expertise in Snowflake and DBT
  • Any cloud experience is good, but Azure is desirable.
  • Ability to work effectively in a collaborative multifunctional team
  • High levels of curiosity and the desire to create solutions that solve the problems of users
  • Happy to come into the office in North Bristol once per month


If you want to join a company with over a century of history that’s still driving innovation and delivering positive impact to its customers, click apply below or drop me a line at

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