Data Engineer

La Fosse
Liverpool
1 month ago
Applications closed

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Data Engineer - £50k-£65k + bonus – Liverpool (1dpw)

La Fosse are recruiting a Data Engineer for a growing construction client.


Recently kicking off a big data maturity transformation, they are now looking to bring in an ambitious Data Engineer to help shape and guide their development as they migrate to the cloud, scale their data warehouse and help the business and clients get real value out of their data.


You will ideally be business-minded, with a couple years of engineering know-how behind you, with experience building out cloud and data platforms and now looking for the next step where you can play a more decisive role within a data team.


This is a real opportunity to grow your career in very down to earth and supportive team and business, and would suit someone with 2-4 years of experience.


Requirements

  • SQL and/or Python
  • ETL and orchestration
  • Knowledge of data warehousing solutions
  • An understanding of data governance

Please apply for full details.


No sponsorship is on offer unfortunately.


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