Data Engineer

Oliver Bernard
City of London
2 weeks ago
Applications closed

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Job Description

Data Engineer


We’re growing our engineering team and are looking for talented Scala Data Engineers to help us design, build, and optimise high-performance data pipelines at the heart of our decision intelligence software platform.


What You’ll Do

  • Design and implement distributed data pipelines using Scala, Spark, and modern data processing frameworks
  • Work with large, complex, real-world datasets across multiple domains
  • Build clean, robust, production-grade code that scales to billions of records
  • Collaborate with product, analytics, and platform teams to bring new data features to life
  • Contribute to architectural decisions and help shape best practices in data engineering
  • Optimise performance, reliability, and data quality across our platform


What We’re Looking For

  • Strong experience with Scala (or JVM languages with a desire to specialise in Scala)
  • Solid understanding of distributed data processing (Spark, Flink, or similar)
  • Experience working with large datasets and complex data models
  • Knowledge of data engineering fundamentals: data modelling, pipelines, ETL/ELT, testing
  • Familiarity with cloud environments (AWS, GCP, or Azure) is a plus...

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