Senior Data Engineer at $100m Funded Social-Good Start-Up

Grey Matter Recruitment
London
8 months ago
Applications closed

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This is your chance to perform the job you love and make a difference in society whilst doing it! Help this one-of-a-kind Social Good platform change the world by owning the data engineering practice for the entire business.


The Company

  • $130M funding from over 40 VC investors
  • The platform has raised hundreds of millions of dollars for charities worldwide
  • One of Fast Company's most innovative companies in the world
  • Human-centric company focused on making a real-world positive impact
  • Stock options, Medical Insurance etc


The Role

  • In a flat structure reporting to the Director of Analytics, you will own the data engineering practice!
  • Develop the Data Build Tool, maintain models in Snowflake and ETL pipelines from multiple sources
  • Implement testing, documentation, and version control


Desired skills and experience

  • Extensive data engineering experience
  • SQL expert with extensive DBT and ETL experience
  • Solid communication skills

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