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Data Engineer

Harnham
Leicester
1 week ago
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Data Engineer

Leicester (Hybrid – 2 days/week in-office)

£45,000–£50,000

Full-time | Permanent

The Opportunity

A leading UK-based retailer is seeking a data-driven problem solver to join as a Data Engineer.

This role is ideal for a data analyst with strong data engineering skills, who is eager to work on meaningful projects that impact product visibility and sales across multiple international partner platforms.

What You’ll Be Doing

  • Become the subject matter expert for all third-party product and sales data
  • Develop tools and dashboards to communicate key partner data
  • Handle and scope new data requirements from external partners
  • Investigate and resolve data issues (e.g., product availability errors)
  • Build and manage ETL pipelines and APIs to improve data delivery and accuracy
  • Contribute to the overall data strategy alongside BI and analytics colleagues

Tech You’ll Use

  • SQL
  • Python
  • Databricks

Experience with web scraping or similar techniques would be a bonus.

Interview Process

  1. Initial interview with the Data Manager
  2. Technical discussion/assessment (you’ll walk through your approach to data problem-solving and tooling)

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