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Business Intelligence Analyst

Sanderson
London
1 week ago
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Data Visualisation & Analytics Experience SpecialistOverview

We are seeking a highly skilled Data Visualisation & Analytics Experience Specialist to bridge the gap between data, design, and user experience. This role combines analytical capability with front-end development and UX skills to create intuitive, impactful interfaces for data-driven decision making. You will work closely with Business Analysts, Product Teams, Engineers, and Data Practitioners to turn complex outputs into accessible, engaging visual products.

Key ResponsibilitiesData Analysis & Insight Delivery

  • Collaborate with Business Analysts and Product Teams to identify high-impact business problems that can be solved through data analysis and visualisation, utilising tools such as Microsoft Fabric and Power BI.

  • Conduct exploratory data analysis (EDA) to uncover patterns, anomalies, and relationships in datasets, translating insights into clear visual stories and actionable recommendations for stakeholders.

  • Work with Data Analysts, Scientists, Engineers, and Business Analysts to understand the structure and purpose of their outputs and determine the most effective ways to visualise and communicate them.

Data Product Development

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