Interim Finance Data Analyst

EA First Compass House
London
6 days ago
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My client a private organisation that serves the education sector is seeking a Interim Finance Data Analyst to support financial management and performance analysis.


My client is a globally operating private organisation that serves the education sector by providing services that enhance the academic performance of students.


Responsibilities

  • Perform detailed transaction-level GL reconciliations for housing-related accounts
  • Collaborate with the Finance and Operations teams to resolve discrepancies and enhance data integrity
  • Support monthly housing cost reviews with accurate and timely reporting
  • Build and maintain dashboards and reports in Excel and Power BI to monitor housing costs, occupancy, as well as operational performance
  • Deliver insights and visualisations to highlight cost drivers and performance improvements
  • Analyse housing cost drivers to identify trends and cost-saving opportunities
  • Work with cross-functional teams (Finance, Operations, Procurement) to recommend efficiency improvements.
  • Business partner through insights and recommendations in a clear, visual, and actionable format for both technical and non-technical audiences

Qualifications

  • Demonstrable experience in data analytics or visualisation tools (e.g. Microsoft Power BI, SQL, or Google Data Analytics)
  • Advanced Excel (Pivot tables, Lookups, Power Query, SQL) and Power BI (data modelling, DAX, dashboard creation)
  • Track record in analysis and reconciliations
  • Understanding of general ledger accounting, journal entries, and cost allocations

An attractive daily rate, exclusively remote working for a 6 month contract.


EA First Ltd are acting as an Employment Business for this temporary vacancy.


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