Data Engineer - Visualisation

Searchability NS&D
Telford
4 days ago
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  • Telford location - 2 days on site p/week
  • Active SC required
  • Up to £500/d inside ir35
  • 6-month duration
  • Experience required in SAS, Git, ETL tools, data virtualisation, Agile, DevOps tools

Role Opportunity

This project will merge the RSDD APIs, TXR002 and ADE, into a single central calculations service for all consumers. As both are functionally equivalent, consolidation will reduce complexity, simplify change management, and deliver cost efficiencies.

The role sits within a new Scrum team on the Minerva Platform, developing Ingestion and Risking capabilities within the SAS Platform, including IDP.

Key Responsibilities:

  • Design and deliver scalable data integration and transformation solutions using Pentaho, Denodo, Talend and SAS.
  • Build and maintain data pipelines and services to support BI and analytics platforms.
  • Work with cross-functional teams to define requirements and deliver robust technical solutions.
  • Promote Agile and Scrum practices, ensuring efficient sprint delivery and continuous improvement.
  • Implement DevOps principles, including CI/CD, automated testing and deployment.
  • Mentor junior engineers and encourage technical excellence.
  • Maintain high standards of data quality, governance and security.

Key Skills Required:

  • SAS 9.4 (DI) and SAS Viya 3.x ...

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