Senior Data Engineer

Tria
City of London
4 days ago
Create job alert

Senior Data Engineer


London 2-3 days on-site


65,000 - 72,000 + 20% Bonus + Excellent Benefits


Our client is a leading global hospitality brand undergoing an exciting period of rapid growth and transformation. With significant investment in data and technology, they are building a world-class data platform to power decision-making across every area of the business - from supply chain and logistics to marketing, customer sales and in-store operations.


We are seeking an experienced Senior Data Engineer with deep expertise in Databricks to design, build, and optimize the clients data platform. This role will be pivotal in developing scalable data pipelines, enabling advanced analytics, and driving data quality and governance across the organisation.


You’ll work closely with data scientists, analysts, and business stakeholders to transform raw data into trusted, actionable insights that power critical business decisions.


Required Qualifications



  • 6+ years of experience in data engineering
  • 3+ years of hands‑on experience with Databricks
  • Strong working knowledge Azure
  • Strong knowledge of data modeling, ETL/ELT design, and data lakehouse concepts.

To apply for this role please email across your CV ASAP.


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