Data Engineer

ALTECH GROUP LTD
Liverpool
2 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

I’m supporting an organisation that’s undergoing a large scale digital transformation, and they’re looking for a Data Engineer who can help design and build the foundations of a modern data ecosystem. If you enjoy creating scalable, efficient pipelines and working closely with analysts and transformation teams, this is a great fit.

The Role

You’ll play a key part in shaping the organisation’s data infrastructure. The work spans architecture, engineering, data quality, governance and cross team collaboration. You’ll be involved in everything from ingesting and transforming data across core business systems to building reliable structures that enable analytics, reporting and operational insight.

This is a hands on engineering role with the freedom to influence how data is designed, governed and delivered across the business.

What you’ll be working on

  • Designing and implementing scalable pipelines to ingest, transform and store data from a range of enterprise systems such as CRM, ERP and procurement platforms.
  • Building and maintaining data lakes, warehouses and databases that support BI, analytics and operational reporting.
  • Ensuring data integrity, consistency and security through automated validation, monitoring and governance processes.
  • Working with compliance teams to align data workflows with GDPR and wider regulatory standards.
  • Part...

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