Finance Data Analyst

SF Recruitment
Nottingham
3 weeks ago
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Finance Data Assistant - Finance - Temporary
Location: Nottingham, NG4 (Hybrid - Tues/Weds in office)
Salary: £26,000 per annum
Hours: 37.5 per week | Full-time
Start Date: February
Duration: 6 months

We're currently recruiting for a Finance Data Assistant to join a busy finance team on a key data improvement project. This is an excellent opportunity for someone with strong Excel skills and experience working with supplier or finance data who enjoys working with detail and accuracy.
This role will play a vital part in ensuring the accuracy and integrity of supplier information, supporting wider finance operations and process improvements.

Key Responsibilities

  • Carrying out data cleansing within Excel, ensuring supplier information is accurate and up to date
  • Contacting suppliers directly to confirm and verify key details
  • Inputting and maintaining data accurately within Excel-based systems
  • Identifying and resolving duplicate supplier records
  • Supporting the wider finance team with high-quality, reliable data
  • Contributing to ongoing process improvement and compliance standards
  • Assisting with reporting and data requests as required

    What We're Looking For
  • Previous experience within a finance, accounts, or data-focused role
  • Strong Excel and data management skills
  • High level of attention to detail and accuracy
  • Confident communicator, comfortable contacting suppliers by phone/email
  • Able to work independently while collaborating within a wider team
  • Ideally AAT part-qualified or equivalent experience
  • Experience in Accounts Payable or a shared services environment is an advantage

    The role:
  • £26,000 per annum
  • Hybrid working model (2 days per week in the Nottingham office)
  • Ongoing position to start in January
  • Opportunity to gain exposure within a large, structured finance environment
  • Supportive team and valuable project experience within data and finance

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