Fabric Data Engineer

Tenth Revolution Group
City of London
3 months ago
Applications closed

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Azure Data Engineer Microsoft Fabric

BI Developer - London - 65,000

Are you passionate about building scalable BI solutions and working with cutting‑edge data technologies? We are seeking a BI Developer to join a dynamic team and help shape the future of data analytics within a global organisation.

About the role
  • Design and develop BI solutions using Microsoft Fabric and related technologies.
  • Build and manage data pipelines leveraging Data Factory.
  • Develop semantic models in Power BI.
  • Collaborate with data architects, analysts, and stakeholders to deliver actionable insights.
  • Optimise data models for performance and reusability.
  • Support governance, security, and compliance best practices.
Key Responsibilities
  • Deliver scalable Azure‑based data platforms, including Data Warehouses and reporting tools.
  • Provide technical support and manage a modern technology stack (Azure Synapse, SSIS, SQL, Data Lake).
  • Assist with migration and reconciliation of data from legacy systems or acquisitions.
  • Act as a hands‑on Data Engineer across the full stack.
Requirements
  • Strong expertise in SQL, Power BI, and cloud platforms.
  • Experience with Microsoft Fabric.
  • Excellent communication skills to engage with technical and non‑technical teams.
Benefits
  • Work with cutting‑edge technologies in a modern data platform environment.
  • Be part of a collaborative team driving innovation and insight.
  • Competitive salary and benefits package.


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