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Data Engineer - Snowflake

Peaple Talent
City of London
1 week ago
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❄️ Snowflake Data Engineer | Fully remote | Salary: £45,000-£65,000 ❄️


Peaple Talent have partnered with a leading Travel organisation who are one of the UK’s leading self-catering holiday businesses, offering unique properties through a family of well-known brands. With strong growth, a commitment to sustainability as a certified B Corp, and a focus on quality and community, this is a company where your work truly matters.


Due to exciting growth plans, we are now looking for a selection of Data Engineers to continue the expansion of their established Data team.


What we're looking for:

  • Number of years commercial experience in Data Engineering or relevant field
  • Strong programming experience Python
  • Working knowledge of Snowflake
  • Experience with cloud technologies ideally in AWS


What's in it for you:

💰Salary: £45,000-£65,000 (potential flex)

📍Location: Fully remote

💵£500 paid towards a holiday of your choice

📈Autonomous position with huge development opportunities

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