Lead Data Analyst - up to £70,000 + Benefits - Hybrid

Involved Solutions
Esher
1 week ago
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Lead Data Analyst Salary: Up to £70,000 + BenefitsLocation: Esher - Hybrid (4 days onsite, 1 day remote)Working Hours: Full time - PermanentA large well-established firm has recently implemented Microsoft Fabric and is now seeking a Lead Data Analyst to take ownership of the organisation's data and analytics capability.

This role will lead the development of the company's data platform, ensuring data is transformed into meaningful insights that support decision-making across the business. The Lead Data Analyst will work across the full data lifecycle, from ingestion and modelling through to reporting and visualisation, while also managing and mentoring another Data Analyst/Engineer.

The Lead Data Analyst position is ideal for someone who enjoys combining hands-on technical delivery with leadership responsibility, advising on data strategy while building scalable BI solutions.

Responsibilities for the Lead Data Analyst:

  • Own the organisation's data and BI capability following the implementation of Microsoft Fabric
  • Design and develop high-quality Power BI dashboards and reporting solutions
  • Develop and maintain data pipelines, integrations and data flows within Microsoft Fabric and Azure
  • Integrate data from third-party systems and internal platforms into the data lake environment
  • Build scalable data models ...

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