Senior Data Engineer

Tenth Revolution Group
Cheltenham
4 days ago
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Senior Data Engineer

Salary : Up to £75,000

I am working with a well-established financial services organisation that is undergoing a major transformation of its data and analytics capabilities. The data team plays a critical role in building scalable, cloud-first data solutions that provide actionable insights to support executive and operational decision-making. These insights underpin the organisation’s growth strategy across both domestic and international markets.

As a Senior Data Engineer, you will take an active role in shaping solution delivery against business requirements while contributing to the wider technical architecture and strategy. This is a hands‑on position where you will spend most of your time developing robust data solutions while also mentoring a small team of Data Engineers to ensure adherence to best practices and governance standards.

Responsibilities
  • Designing end‑to‑end data architecture aligned with modern best practices.
  • Building and managing ingestion pipelines using Databricks and related tools.
  • Developing PySpark / Spark SQL notebooks for complex transformations and cleansing.
  • Applying governance, security, and CI / CD best practices across cloud environments.
  • Leading technical discussions and producing professional documentation.
Qualifications
  • Hands‑on experience with Databricks including Unity Catalog.
  • Strong PySpark / Spark SQL skills for large‑scale transformations.
  • Experience integrating with diverse data sources such as APIs, cloud storage and databases.
  • Experience with the Azure cloud data platform.
Package & Role Details
  • Salary up to £75,000
  • Hybrid working model – one day per week in office
  • 25 days holiday plus bank holiday
  • Company pension scheme
  • Private healthcare
  • Exposure to cutting‑edge Databricks projects and enterprise‑scale data platforms

This is just a brief overview of the role. For the full details, simply apply with your CV and we’ll be in touch to discuss it further.


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