Data Engineer

Fruition Group
York
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer


Job Title: Data Engineer

Location: York, 4x per week

Salary: Up to £65,000

Why Apply?

This is an opportunity to step into a high-impact Data Engineer role within a growing organisation that is investing heavily in its data capabilities. You'll play a central role in shaping a modern, cloud-based data platform that underpins analytics, reporting, and data products across the business.

You will drive business value by designing, building, and maintaining a scalable, secure data platform. Delivering robust data pipelines and trusted datasets that support advanced analytics and reporting.

Key responsibilities include:

  • Designing, implementing, and maintaining cloud-based data pipelines and ETL processes
  • Building scalable data models to support analytics, reporting, and data products
  • Collaborating with stakeholders to translate data requirements into effective technical solutions
  • Ensuring data integrity, security, governance, and compliance across all data assets
  • Implementing data observability, monitoring, metadata, and lineage tracking
  • Developing and maintaining CI/CD pipelines for data engineering workloads
  • Troubleshooting and resolving data platform issues, minimising business impact
  • Driving continuous improvement in data engineering standards, performance, ...

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