Data Engineer

Tenth Revolution Group
Hertfordshire
2 weeks ago
Applications closed

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Location: Hybrid (2 days per week on-site)

About the Role

An exciting opportunity has arisen for an experienced Data Engineer with strong Talend Data Integration skills to join a growing data team undergoing major transformation. You will design, build, and maintain resilient, automated data pipelines that fuel reporting, analytics, and performance management across the organisation.

Working with modern AWS technologies (S3, Glue, Redshift, Spectrum), you'll help shape an open, data-driven culture and ensure high-quality, reliable data is available to stakeholders. This role is ideal for someone who enjoys solving complex data problems and building scalable, future-ready solutions.

Key Responsibilities

  • Build, enhance, and support ETL/ELT processes using Talend.
  • Develop scalable, automated data pipelines that deliver high-quality structured data.
  • Monitor pipeline performance and ensure data is secure, accurate, and available.
  • Work with architects, analytics teams, developers, and third-party partners.
  • Translate business requirements into reliable technical solutions.
  • Contribute to data standards, governance, and continuous process improvement.
  • Operate within Agile (Scrum) delivery practices including CI/CD principles.

Skills & Experience Require...

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