HR Data Analyst

W6 Resources
Watford
2 months ago
Applications closed

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This range is provided by W6 Resources. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

Base salary up to £48,000/year

Position: HR Data Analyst (Business Objects & Power BI Expertise)

We are seeking an experiencedHR Data Analystto support the delivery and development of an end-client’sHR Analytics strategy, providing valuable insights that drive Business and HR priorities. This role focuses onHR Reporting, HR Analytics, and Value-Add Automation.

Key Requirements:

  • Advanced expertise in MS Office, particularlyExcel and Power BI
  • Business Objects – expert-level proficiency is non-negotiable
  • Experience withPower Automate and SQL(beneficial)
  • SuccessFactors platform knowledge preferredor experience with other HRIS systems
  • Strong analytical skills, attention to detail, and problem-solving capabilities
  • Proven ability to analyze complex data, build reports, and create filters
  • Excellent written and verbal communication skillswith strong stakeholder management at all levels
  • Ateam playerwho thrives in a collaborative and dynamic environment

Essential Skills & Experience (Non-Negotiable):

  • Business Objects and Power BI expertise
  • SuccessFactors platform knowledge preferredor prior HRIS experience

Other Details:

  • Hybrid working model– 2 days per week inHead Office (Watford)

If you have the required expertise and are looking for an exciting opportunity to make an impact, we’d love to hear from you!

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Analyst

Industries

Staffing and Recruiting

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