HR Data Analyst

Data Freelance Hub
London
6 days ago
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⭐ - Featured Role | Apply direct with Data Freelance Hub


This role is for an HR Data Analyst on a 12-month fixed‑term contract, offering £30,321.51 - £36,353.66 FTE. Key skills include HR analytics, advanced Excel, Power BI, and data accuracy. Hybrid working arrangement with 21-28 hours per week.


London, England, United Kingdom


What You’ll Do

We’re looking for an experienced HR Data Analyst to play a key role in shaping people‑related decision‑making across the organisation. Working closely with the HR team, you’ll turn complex people data into meaningful, actionable insights that inform strategy, improve processes and support a positive employee experience. You’ll lead on HR reporting, dashboards and analytics, helping leaders make evidence‑based decisions that drive engagement and performance. This is an excellent opportunity for someone who enjoys combining technical expertise with real organisational impact.


Key Responsibilities

  • Extract, clean and analyse HR data from core systems (including HRIS, recruitment and learning platforms)
  • Develop and maintain dashboards and automated reports covering key workforce metrics such as headcount, turnover, absence, ER cases and engagement
  • Produce regular and ad‑hoc reports, presenting insights clearly and visually for a range of stakeholders
  • Translate data into compelling narratives and actionable recommendations
  • Ensure data accuracy, integrity and GDPR compliance
  • Partner with HR colleagues to understand business needs and deliver effective analytics solutions
  • Support HR and People projects through data analysis, measurement and reporting
  • Continuously improve reporting tools and processes, working with IT/BI teams where needed

About You

You’ll be an analytical, solutions‑focused professional who is confident working with complex datasets and communicating insights clearly.


Key Strengths

  • Proven experience in HR analytics, business intelligence or data analysis
  • Advanced Excel skills and strong experience using Power BI (including DAX)
  • Experience designing dashboards and self‑service reports
  • Understanding of HR metrics and workforce analytics
  • Excellent attention to detail and commitment to data accuracy
  • Strong communication skills with the ability to tailor insights to different audiences
  • Ability to work independently, manage priorities and meet deadlines

Why Join Us?
Financial Benefits

  • Competitive salary
  • Up to 5% employer pension contribution
  • Fast expense reimbursement (within 10 days)

Work‑Life Balance

  • 25 days annual leave + your birthday off
  • Family‑friendly policies

Rewards & Perks

  • Long service recognition
  • Discounts at 4,000+ retailers via Blue Light Card

Health & Wellbeing

  • 24/7 GP access
  • Employee Assistance Programme

Career Development

  • Paid training and development
  • Accredited apprenticeships
  • Clear progression pathways

Ready to make a difference? Apply now and help us shape the future of HR at MSI UK.


Freelance data hiring powered by an engaged, trusted community — not a CV database.


85 Great Portland Street, London, England, W1W 7LT


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