Data Engineer

Fruition Group
Nottingham
1 month ago
Applications closed

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Data Engineer
Remote with adhoc travel - Nottingham
Up to £60,000

Why apply?
Fruition are working with a leading player in its industry, committed to delivering data-driven insights that enhance business performance. With a strong focus on innovation, the company leverages cutting-edge technology to optimise operations and improve customer experiences.

You will play a key role in designing, developing, and maintaining the organisation's data infrastructure. You'll work closely with stakeholders across the business, including product managers, analysts, and software developers, to ensure seamless data integration and reporting capabilities.

This role will focus on building and optimising data pipelines, managing data warehousing, and ensuring high-quality data is available for business decision-making.

Responsibilities:

  • Data Pipeline Development: Design, build, and maintain ETL (Extract, Transform, Load) processes to enable efficient data ingestion and transformation.
  • Database Management: Support and optimise SQL databases, ensuring performance, reliability, and data integrity.
  • SQL Replication: Manage and maintain SQL replication to ensure data consistency across systems.
  • SSIS & Data Integration: Develop and maintain SQL Server Integration Services (SSIS) packages to support data workflows.

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