Data Analyst

Castle Howard Estate
York
1 week ago
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Job Purpose:

This is a critically important position with the remit to design and deliver reporting, data analysis and action-orientated insight to enable and influence informed decision making across the organisation.

Castle Howard is a world-renowned country house and estate of significant historical, cultural and ecological importance. As a Data Analyst you will partner with stakeholders from all areas of the business, including the Executive Chairperson and Chief Financial and Operating Officer. Your work will make a notable contribution towards delivering our purpose of preserving and nurturing Castle Howard for the benefit of current and future generations, the environment and local communities.

Duties & Responsibilities:

  • Collaborate with cross-functional teams to define and understand requirements for reporting and analysis from across the business.
  • Collect, organise and integrate large datasets from multiple sources, including databases and spreadsheets, whilst maintaining data accuracy, consistency and completeness.
  • Utilise Power BI to design, build and maintain insightful and user-friendly reports and dashboards.
  • Provide ad-hoc reporting and analysis to serve specific requests and needs of the business.
  • Where required, provide paper based paginated reports.
  • Pro-actively identify and act on opportunities to delive...

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