Data Quality Lead

Victim Support
City of London
1 month ago
Applications closed

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We have an exciting opportunity for an experienced data & analytics professional to join the Performance team in London.

Are you ready to make a different in a values-driven organisation?

Can you transform varied data into meaningful insights & communicate effectively with diverse audiences to enhance organisational performance?

Do you excel at applying critical thinking to evaluate service delivery models and drive systemic change to improve outcomes?

If you are passionate about using data to tackle complex problems, improve systems and shape strategic decisions, we want to hear from you

What we offer

At Victim Support, we are committed to attracting and retaining the best talent. Our competitive rewards and benefits package includes:

  • Flexible Working Options: Including hybrid working.
  • Generous Annual Leave: 28 days plus Bank Holidays, increasing to 33 days plus Bank Holidays, with options to buy or sell annual leave.
  • Birthday Leave: An extra day off for your birthday.
  • Pension Plan: 5% employer contribution.
  • Enhanced Allowances: Enhanced sick pay, maternity, and paternity payments.
  • Exclusive Discounts: High Street, retail, holiday, gym, entertainment, and leisure discounts.
  • Financial Wellbeing: Access to our...

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