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Senior Engineer, Data Engineering in London

Energy Jobline ZR
City of London
2 days ago
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Senior Data Engineer – London

Location: London | Salary: £80,000–£90,000 | Work arrangement: Hybrid (3 days in office)


What you’ll do

  • Design and maintain data pipelines that process and transform complex data.
  • Develop and optimise APIs for data access and integration.
  • Contribute to front‑end features in React to ensure seamless data flow.
  • Collaborate with engineers, designers, and product teams to ship new features quickly.
  • Take ownership of projects from idea to delivery and lead technical discussions.
  • Help shape future AI‑powered client features.

Who you are

  • 6+ years of proven experience in an engineering role, with a focus on data.
  • Confident working with SQL/NoSQL/PostgreSQL databases and data pipeline tools.
  • Strong expertise in programming such as Node.js.
  • Experience with cloud services like AWS or Google Cloud Platform.
  • Knowledge of data streaming technologies like Apache Kafka or AWS Kinesis.

What’s on offer

  • £80,000–£90,000 salary.
  • Three office days: Monday, Tuesday, Thursday (remote on Wednesday/Friday).
  • Flat structure with progression based on skill and project ownership.
  • Work with real data from some of the world’s biggest brands.

If you enjoy building end‑to‑end systems, working with interesting data, and shaping new products in a startup environment, this could be a strong fit.


Message me directly if interested at


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