Senior Data Engineer

Gleeson Recruitment Group
Leicester
3 weeks ago
Applications closed

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Job Description

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 influence and ownership.

Please apply asap if interested.

At Gleeson Recruitment Group, we embrace inclusivity and welcome applicants of all backgrounds, experiences, and abilities. We are proud to be a disability confident employer.By applying you will be registered as a candidate with Gleeson Recruitment Limited. Our Privacy Policy is available on our website and explains how we will use your data.

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