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Data Analyst

West End
1 year ago
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HR Data Analyst Wanted!

Role: HR Data Analyst
Location: Paddington
Contract: 6 months (Outside IR35)

Join my client, a leading organization in the packaging industry, dedicated to innovation and excellence.

Their dynamic team and leverage your expertise in Power BI, Excel, and workforce data to drive decision-making. This role involves extracting data from various platforms and analyzing key metrics such as salaries, job titles, data inspections/governance, position management, and reporting.

This is a hybrid role with 1 or 2 days working in the office which gives you a perfect work life balance.

What We're Looking For:

Proven experience in HR data analysis.
Strong skills in Power BI, Excel, and data visualization.
Stakeholder management and communication expertise.
Workday (HRIS) knowledge is a plus.

If you're ready to take your skills to the next level and make a difference in a dynamic environment, we want to hear from you! Apply now or send your CV to sharmistha. ghosal @ randstad .co .uk

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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