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HR Systems & Data Analyst — Hybrid, London

GlobalData UK Ltd
City of London
4 days ago
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A specialist information services firm in London seeks an HR Systems Analyst to improve HR efficiency and employee experience. This role involves managing core HR systems, ensuring data integrity, and supporting system users. Candidates must have cloud-based HRMS knowledge, particularly with Sage People, alongside strong analytical skills and stakeholder management. The position also offers benefits across various areas including health and finance.
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