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Fabric Data Engineer

Brentwood
1 week ago
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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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