People Analytics Manager

Harvey Nash
London
1 year ago
Applications closed

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Responsibilities

:Lead and managea four-person People Analytics team, delivering strategic HR reports using Power BI.Develop and implementstrategies to enhance HR reporting and data analysis.Collaboratewith HR and Finance teams to identify and improve processes.Drive technological advancementsto support and elevate the People Analytics function.Advocate for people analyticsacross the organization, promoting its value.Coach and mentorteam members to build their skills and capabilities.

Requirements:

Experienceleading a data analysis team in financial services.Expertisein Power BI and advanced Excel (Power Query, Power Pivot).Strongmunicationskills and a proactive approach to process improvement.Degree qualifiedwith a focus on data analysis (preferred).

People Analytics Manager

Job ID BBBH107453

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