Data Engineer

Identify Solutions
Cardiff
10 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Want to use Data to positively impact young people’s lives?



If you love architecting/building data pipelines & want make your mark on a fast growth start-up, you may be interested in a Data Engineer role I have with a profitable challenger business transforming Finance for young people, with data at the heart of everything we do.



You’d lead the Data function, processing 30k requests monthly across 20k users. You’ll have autonomy on the roadmap, including:

  • Greenfield project to introduce real-time data streaming, ingesting user data every 15s
  • An industry-first initiative to move annual payments to a quarterly D2C subscription, saving users money
  • Broad career progression opportunity, as they expand into new sectors



Salary to £75k salary + Shares, 25 days holiday (rising to 30), Flexible hours, hybrid (1-2 days in Cardiff), 6% pension, healthcare + more!



What you'd bring:

  • Experience architecting & building data pipelines (ETL)
  • Strong Python & SQL skills
  • Knowledge of Storage / DWH solutions



Tech stack: Python, SQL, Matillion, Snowflake, Tableau, LLMs (GBT), AWS (no tech essentials outside Python!)



Would you like more info? Get in touch for an informal chat!

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