Data Engineer

Data Science Festival
London
3 weeks ago
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Data EngineerSalary: £70K – £80K

Location: London – Flexible working

Data Idols are working with a fast-growing, product-led tech company to hire a Data Engineer and help shape the data platform. You’ll take ownership of data pipelines, infrastructure, and architecture that underpin high stakes domains like payments, customer operations, and financial forecasting.

The Opportunity

In this position, you’ll take ownership of designing durable data pipelines and foundational models that serve multiple teams. You’ll collaborate closely with engineers, analysts, and product stakeholders to deliver scalable solutions that support both day-to-day operations and long-term strategy. This is a role where your technical decisions will directly influence how data drives business insights, product performance, and customer experience.

Skills and Experience

  • Strong Python
  • Experience working with GCP
  • SQL
  • Commercial experience working with dbt

If you are looking for a new challenge, then please submit your CV for initial screening and more details.

Data Engineer
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