Data Engineer

Intec Select
Leeds
1 week ago
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Data Engineer – Azure / C# / ETL – (£600 - £700 Per Day) – Outside IR35 – Remote


Overview:

An exciting opportunity has emerged with a well-established financial services organisation for a skilledData Engineerto join a greenfield project. This role focuses on building scalable data pipelines and cloud-based solutions using Microsoft Azure technologies.

You’ll work independently in a fully remote setup, supporting the design and implementation of modern data platforms using the latest Azure services.


Key Responsibilities:

  • Design and develop robust data pipelines and workflows using Azure Data Factory
  • Develop and manage ETL processes across various Azure components
  • Build and optimize Azure SQL databases and Function Apps for data transformation
  • Collaborate with developers using .NET / C# for data integration and automation tasks
  • Leverage Excel and Access VBA for legacy data manipulation and reporting as needed
  • Deliver high-quality, well-documented, and efficient solutions in a fast-paced environment


Essential Skills:

  • Proven experience with Azure ETL pipelines
  • Strong proficiency in Azure Data Factory, Azure SQL, and Azure Function Apps
  • Solid development skills in C# / .NET
  • Comfortable with Excel / Access VBA for ad hoc data tasks
  • Strong analytical and numerical skills
  • Ability to work independently in a remote environment


Contract Details:

  • 6-month contract (potential to extend)
  • £600 - £700 per day, Outside IR35
  • Fully remote

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