Senior Data Engineer

Gleeson Recruitment Group
Leicester
1 week ago
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Senior Data Engineer - Up to £65K

3 days per week onsite - Leicester or Nottingham office

Our client is seeking a Senior Data Engineer to join their growing data function and play a pivotal role in shaping their modern cloud data platform. This is an exciting opportunity to influence architecture, drive best practice, and deliver scalable, high-impact data solutions within a forward-thinking organisation.

The role will involve:

  • Designing, building, and optimising robust, scalable data pipelines

  • Developing and enhancing cloud-based data platforms

  • Collaborating with analytics and business teams to enable data-driven decision-making

  • Setting engineering standards and supporting the development of junior team members

The successful candidate will have:

  • Strong experience with cloud technologies (Azure, AWS, or Snowflake)

  • Hands-on expertise with Databricks is a bonus

  • Proven experience designing and maintaining modern data architectures

  • Strong SQL and Python skills

  • A proactive mindset and passion for building clean, reliable, and well-governed data solutions

This is a fantastic opportunity to join an organisation investing heavily in its data capability, where the Senior Data Engineer will have real influe...

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