Fabric Data Engineer - Outside IR35 - Hybrid

Tenth Revolution Group
Gloucester
3 days ago
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Fabric Data Engineer - Outside IR35 - Hybrid

We are seeking a skilled Fabric Data Engineer to design, build, and optimize scalable data solutions using Microsoft Fabric. The ideal candidate will have strong expertise in modern data architecture, cloud-based analytics, and end-to-end data pipeline development. You will work closely with data analysts, data scientists, and business stakeholders to deliver high-quality, reliable, and secure data solutions that drive strategic decision-making.

Key Responsibilities

  • Design, develop, and maintain scalable data pipelines using Microsoft Fabric, including:

    • Data Factory for orchestration and ingestion

    • Lakehouse architecture for unified analytics

    • Warehouse for structured data modeling

  • Build and optimize data solutions leveraging Azure Data Factory, Azure Synapse Analytics, and Power BI.

  • Develop ETL/ELT processes to ingest, transform, and load data from various sources (APIs, databases, flat files, streaming sources).

  • Implement data modeling techniques (star schema, snowflake schema, medallion architecture).

  • Ensure data quality, governance, and security standards are met.

  • Monitor, troubleshoot, and optimize data workflows for performance and cost efficiency.

  • Collaborate with cross-functional team...

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