Data Engineer

Michael Page Technology
London
1 week ago
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We are seeking a Data Engineer who will be responsible for delivering secure, scalable, and reliable data pipelines, models, and reporting datasets that support business intelligence, analytics, and AI/ML workloads. This role is hands-on across Microsoft Fabric (including OneLake) and Snowflake, with a strong focus on ETL/ELT engineering, data modelling, performance optimisation, and data governance.

Client Details

The client is a well-established organisation within the financial services sector, operating in a professional, fast-paced, and data-driven environment. They are investing heavily in modern cloud technologies, advanced analytics, and scalable data platforms to support both internal operations and customer-focused insights.

Description

  • Deliver and enhance ETL/ELT pipelines across Microsoft Fabric and Snowflake
  • Configure and maintain ingestion from APIs, files, and other data feeds
  • Implement integration patterns between OneLake and Snowflake
  • Build and operate medallion architecture (bronze / silver / gold) layers
  • Define and maintain data models, schemas, and semantic layers
  • Optimise pipeline performance, query efficiency, and cloud cost
  • Troubleshoot and resolve data quality, reliability, and performance issues
  • Implement role-based access, secure data handling, and privacy-aware processing
  • Apply row-level ...

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