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Business Intelligence Developer

Sanderson
City of London
6 days ago
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Outside IR35 Contract: BI Fabric Developer / Engineer


  • Location: 3 Days p/w Central London
  • Rate: £450 Outside IR35
  • Duration: 6 Months + Extensions


This role is responsible for migrating and developing modern data and analytics solutions using Microsoft Fabric and Azure technologies. The position supports enterprise-wide BI initiatives, delivering data models, pipelines, dashboards and reporting assets that enable data-driven decision-making.


Key Responsibilities


  • Lead and implement data migration into Microsoft Fabric for analytics and reporting use cases
  • Design and build data models from multiple sources to generate actionable insights
  • Maintain and optimise data warehouse platforms; identify and resolve issues
  • Develop data pipelines using Fabric Pipelines, Azure Data Factory, Notebooks and SSIS
  • Produce enterprise-grade Power BI dashboards and paginated reports
  • Translate business requirements into scalable technical BI solutions
  • Write advanced SQL for Fabric Lakehouse and Warehouse environments
  • Implement CI/CD processes using Azure DevOps for secure, reliable deployment


Technical Skills:


Strong expertise in:

  • Power BI and paginated reporting
  • SQL and data architecture
  • Dimensional modelling (star schema, snowflake, denormalised structures, SCD handling)
  • DAX, Visual Studio and data transformation logic
  • Azure Fabric, Azure Data Factory, Synapse, Data Lakes and Lakehouse/Warehouse technologies
  • ETL/ELT orchestration for structured and unstructured data


Proficiency in:

  • PySpark, T-SQL, Notebooks and advanced data manipulation
  • Performance monitoring and orchestration of Fabric solutions
  • Power BI semantic models and Fabric data modelling
  • DevOps deployment using ARM/Bicep templates
  • End-to-end delivery of enterprise BI/data warehouse solutions

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