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Payroll Data Analyst

IFRS Foundation
London
5 days ago
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Job Purpose

Finance team: The role is to support the payroll team in managing and improving data quality, reconciliation and reporting during a period of high operational demand. The role is essential for ensuring accurate payroll reporting, supporting the rollout of a Global Payroll Provider and preparing for upcoming compliance requirements.

Status

Status: 6 month Fixed Term Contract

Reports to

Reports to: Global Payroll Manager

Works with

Works with: Finance Team

Principal Accountabilities
  • Data Cleansing & Validation – Clean, structure, and validate large payroll data to ensure accuracy and consistency (both for current operations and during the roll out of the Global Payroll provider). Identify and correct anomalies in payroll and accounting data. Collaborate with Payroll, HR and Finance teams to ensure data alignment, particularly within the HiBob platform.
  • Reconciliations – Perform regular reconciliations between payroll records and general ledger accounts. Investigate and resolve discrepancies in payroll transactions and accounting entries.
  • Budget & Variance Analysis, Reporting – Assist in preparing payroll-related budget forecasts. Analyse actual payroll costs against budgeted figures and explain variances. Provide monthly variance reports with actionable insights. Maintain year-to-date payroll reports and audit packs. Support audits and compliance checks with accurate data and documentation. Respond to ad hoc data requests from senior management and external auditors. Assist in preparing data and reports for the mandatory payrolling of Benefits in Kind (BiKs) starting April 2026. Process optimisation – Identify inefficiencies in workflows and streamline payroll processes.
  • UAT Testing – Global Payroll Project – Lead testing and reconciliation during parallel runs for the Global Payroll Provider rollout.
Skills And Attributes
  • Proven experience in data analysis within payroll or finance.
  • Strong Excel and data manipulation skills; experience with HiBob is a plus.
  • Familiarity with payroll systems, accounting principles, and compliance requirements.
  • Analytical mindset with attention to detail.
  • Ability to work collaboratively across departments.
  • Experience supporting audits and compliance processes is desirable.
  • Strong communication and documentation skills.
Essential – Qualifications and experience
  • Strong proficiency in Microsoft Excel, including advanced functions (e.g. pivot tables, lookups, data validation).
  • Experience working with large datasets and performing data cleansing, transformation and validation.
  • Solid understanding of payroll processes, accounting principles, and financial reconciliations.
  • Familiarity with HRIS and payroll systems (e.g. HiBob, Moorepay, Papaya, Justworks or similar platforms).
  • Demonstrated ability to produce clear, accurate and insightful reports for stakeholders.
  • Experience supporting audits and compliance reporting.
  • Strong analytical and problem-solving skills with high attention to detail.
  • Excellent communication and interpersonal skills, with the ability to collaborate across departments.
  • Ability to manage multiple priorities and meet deadlines in a fast-paced environment.
Preferred
  • Experience working within a global or multi-country payroll environment.
  • Experience participating in system implementations or UAT testing phases.
  • Ability to document processes and create user-friendly guides.

Application Closing Date: 22nd August 2025

Please note that while we have a closing date for this application, we reserve the right to interview candidates and potentially close the role early should we find a suitable candidate before the closing date.

About IFRS Foundation
Help shape the future of reporting for global financial markets. The IFRS Foundation is a public interest, not-for-profit organisation that sets corporate reporting standards for the capital markets globally. IFRS Accounting Standards are required for use by more than 140 countries whilst IFRS Sustainability Disclosure Standards are rapidly becoming the global baseline for sustainability disclosures worldwide. We are a highly diverse and inclusive organisation. Our 350+ staff come from more than 45+ countries and are united in supporting the mission of the Foundation to bring transparency, accountability and efficiency to capital markets worldwide. With offices in London, Frankfurt, Montreal, Tokyo, Beijing and San Francisco, the Foundation is a global standard-setter.

Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Information Technology
  • Industries
  • Accounting

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