HR Data Analyst

Hays Accounts and Finance
Birmingham
3 months ago
Applications closed

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Location: Birmingham (Hybrid - 2 days per week on-site)

Hays is proud to partner with a leading local council to recruit a talented Data Analyst with a passion for HR data. This role offers an exciting opportunity to work on strategic HR projects, delivering actionable insights that influence key decisions and drive organisational success. If you thrive on turning complex data into meaningful stories that shape workforce strategies

Key Responsibilities

Analyse large datasets, primarily using Excel
Develop and maintain dashboards in Power BI
Provide actionable insights to support cross-departmental decisions
Collaborate with stakeholders to understand requirements and deliver solutionsRequirements

Proven experience working with large datasets, ideally within HR projects
Advanced Excel skills
Strong proficiency in Power BI, including dashboard creation
Ability to think critically and challenge existing processesThis role offers a flexible hybrid working pattern, with two days per week required on-site. If you're a proactive analyst with a passion for data and innovation, please send your updated CV today!

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