Finance Data Analyst

The Royal Mint
Pontyclun
1 month ago
Applications closed

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Finance Data Analyst

The purpose of this role is to ensure accurate and timely reconciliation between the organisation’s precious metals leasing positions and its physical stock footprint. The role will focus on analysing large datasets, identifying and investigating reconciling differences, and working closely with multiple internal teams to maintain transparency and controls in precious metals stock reporting, and initiating improvements as necessary.

We are looking for people who have:

  • Experience in a data analysis, finance analyst or similar role with exposure to financial data, reconciliation or position reporting
  • Strong analytical capability with the ability to work with large, complex datasets from multiple systems
  • Solid understanding of core finance concepts
  • Advanced Excel skills with experience building and maintaining reconciliation models and reports.

Full job details can be found HERE


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