Payroll Data Analyst — iTrent Transition & Data Integrity

Eaton
Nottingham
1 day ago
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A leading recruitment agency is seeking a Payroll Analyst for a Nottingham-based project focusing on migrating to a new payroll system. The ideal candidate will audit payroll data, ensure accurate data entry, and maintain payroll records. Experience with iTrent payroll software and strong Excel skills are essential. This position requires immediate availability and commitment to a 3 month contract. Join a pivotal role in the transition process and support the payroll team effectively.
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