Data Engineer

Hays
Cambridge
1 day ago
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Your new company
You will be working for a large, well-known organisation who are a big player within their industry.
Your new role
Our client are seeking a talented Data Engineer to join their expanding data team. In this role, you'll support the development and ongoing enhancement of their data platforms, including their enterprise data warehouse.

  • Develop and refine advanced T-SQL queries, stored procedures, and database logic.
  • Design, build, and maintain scalable data pipelines and ETL processes that feed into the data warehouse and wider analytics platforms.
  • Play an active role in the growth, enhancement, and optimisation of the company's data warehouse, ensuring it remains accurate and aligned with business needs.
  • Support and maintain SSRS and Power BI reporting solutions that use warehouse and operational data.
  • Assist with SQL Server administration, including installation, configuration, patching, security, and performance tuning.
  • Monitor database and warehouse workloads, diagnosing and resolving performance or integrity issues.
  • Ensure strong standards around data quality, governance, modelling, and security across all datasets and warehouse layers.
  • Work closely with business stakeholders to translate requirements into well structured data models and reporting solutions.
  • Contribute to internal documentation, best prac...

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