Data Engineer

Allbyn
London
5 days ago
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We are currently working with a leading, private equity-backed music rights investor that is seeking a Data Engineer to join their growing team. The data team builds, owns, and maintains proprietary data assets that support the full data lifecycle — from raw data ingestion to financial reporting and new deal pipelines. The team plays a critical role across the business.


Responsibilities:


  • Develop, maintain, and optimise robust ETL/ELT pipelines in Python
  • Collaborate with data teams to translate business requirements into scalable data solutions
  • Work cross-functionally to support analytics, reporting, and product development
  • Write clean, maintainable, and testable code with a strong emphasis on clarity and structure
  • Contribute ideas and insights to help evolve the client’s data platform for scale and efficiency


To be successful in this role, you will have:


  • A minimum of 2 years' of relevant experience
  • Proficiency in Python
  • Experience building ETL/ELT pipelines and ability to write clean, logical code.
  • A strong foundation in software engineering and data workflows
  • A proactive, curious mindset
  • A degree in Computer Science or a related field


Please reach out if you are interested in a confidential discussion.

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