Solution Architect

La Fosse Associates
London
1 month ago
Applications closed

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Solution Architect – Data & Analytics MS Fabric Specialist

Day Rate:£625-£675pd
IR35 Status:Outside
Duration:6 months
Travel:2 days a week in Central London

Key Responsibilities

  1. Lead the Enterprise Data and Analytics transformation, focusing on Microsoft Fabric solutions.
  2. Design and implement data architecture, governance, and security policies, ensuring scalability and performance.
  3. Develop high- and low-level solution designs.
  4. Oversee data integration and analytics workloads.
  5. Provide technical direction for stakeholders and partners.

Skills & Expertise

  1. Extensive experience with Microsoft Fabric, Power BI, Synapse Analytics, and Azure Data Services.
  2. Strong background in data warehousing, Medallion architecture, dimensional modelling, and AI-driven analytics.
  3. Hands-on expertise in DAX, T-SQL, Python, PowerShell, and data replication techniques.
  4. Excellent stakeholder management, solution architecture, and governance expertise.
  5. Proven ability to align technical solutions with strategic business goals.

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