HR Data Analyst

THE IDOLS GROUP LIMITED
City of London
19 hours ago
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HR Data Analyst



Salary: £70,000 - £75,000 pro-rata Location: London (Hybrid 1 day per week) - Fixed Term Contract - 6 months

We are currently looking for a HR Data Analyst to join a fast-paced, collaborative HR Operations team within a large and well-established organisation. This role reports directly into the Director of HR Operations and plays a critical role in ensuring the accuracy, consistency and governance of HR data across the business.

As a HR Data Specialist, you will be responsible for ensuring that employee data across key systems - including Workday and other HR platforms is accurate, reliable and audit-ready. Day-to-day, the HR Data Specialist will analyse HR datasets, identify inconsistencies, investigate root causes and implement improvements to ensure the organisation has a trusted foundation for reporting and HR analytics.

Working closely with HR Operations, Payroll and wider business stakeholders, the HR Data Integrity Specialist will act as the go-to person for data quality, helping the organisation build stronger data standards and more reliable reporting capabilities. This is a highly analytical and technical role that would suit someone who enjoys solving complex data problems and improving processes through better data governance.



The Opportunity

This role offers the chance to work within a large organisation where HR data is critical to operational decision-mak...

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