Data Engineer

McGregor Boyall Associates
London
1 month ago
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Data Engineer | Up to £30,000 | Hybrid - 3 days/week in Chiswick | Start ASAP


We're working with a major transport operator that's undergoing an exciting digital transformation - modernising its systems, optimising operations, and using data to drive smarter decision-making. As part of this, they're building a new Digital Solutions function and looking for a Data Engineer to help design, build, and manage a cloud-based data ecosystem.

?? Salary: Up to £30,000 (depending on experience)
?? Location: Chiswick - 3 days a week on-site
?? Start Date: ASAP

NO SPONSORSHIP AVAILABLE


The Role

As a Data Engineer, you'll play a key role in developing and maintaining data pipelines, automating workflows, and supporting analytics across the organisation. You'll collaborate closely with IT and digital teams to ensure seamless integration between systems and empower data-driven insight through platforms like Snowflake, Azure Data Factory, and Power BI.


Key Responsibilities

  • Build and maintain ETL/ELT pipelines using Azure Data Factory and Matillion ETL
  • Manage data ingestion, transformation, and storage in Snowflake
  • Develop A...

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