Finance Data Analyst...

Finspire Talent Limited
London
5 days ago
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Job Description

Finance Data Analyst - Retail/FMCG - Interim Location: Central LondonRate: £300 - 350 per dayHybrid: 2-3 days office-based About the Company Our client, a global retail business with a portfolio of well-known brands sold in over 100+ markets, is now looking for a Finance Data Analyst to come in and play a key role in supporting a financial data migration project while the company enters it next phase of growth. This role is heavily hands on and requires strong Excel capability, financial data awareness, and the ability to work accurately under pressure. You will play a key role in migrating, validating, and reconciling finance data into Vena Solutions, working closely with Finance and FP&A teams. Key Responsibilities

  • Extract, transform, and load financial data from legacy systems into Vena
  • Validate migrated data to ensure accuracy and completeness
  • Build, maintain, and troubleshoot Excel models to support reconciliation
  • Work closely with Finance and FP&A teams to investigate and resolve data issues
  • Document processes clearly and maintain strong audit trails throughout the migration

    Essential Skills and Experience - Finance Data Analyst

  • Strong Excel skills including advanced formulas, pivot tables, and data validation
  • Experience working with financial data such as P&L, cost centres, SKUs, and customer data
  • Comfortable handling large data sets with a high level of accuracy
  • Ability to learn new systems quickly and work independently to tight deadlines
  • Vena experience desirable but not essential
  • Strong attention to detail with a problem solving mindset
  • Previous involvement in finance data migration or system implementation projects
  • Experience supporting FP&A or finance reporting teams
  • Understanding of financial reporting structures and consolidation processes

    This role suits a finance focused data analyst or finance analyst who enjoys structured, detail heavy work and can deliver with minimal supervision. You do not need to be a systems expert, but you must be confident working with finance data and Excel in a fast-paced environment. If you're looking for a challenging and rewarding role in a global business as a Finance Data Analyst, we'd love to hear from you. To apply, please submit your CV for immediate consideration. #INDFT

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