Data Governance SME

Premium Credit Limited
London
4 days ago
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Data Governance SME

Hybrid, London Location

Why work for us?

This is an exciting to for us as we develop our data capability to support our continued growth. We’re hiring a Data Governance SME to support the Data Architects with the implementation of Data Quality Management and governance through the design and delivery of a flexible, business value focussed governance framework.

We welcome your application if you have an advanced understanding of data governance principles and practices as well as experience with MDM initiatives. Read on to find out more….

  • Competitive salary in the region of £70000 to £75000
  • A workplace pension scheme
  • Hybrid working, with collaborative days in our Leatherhead office
  • 25 days annual leave (plus bank holidays), with options to purchase and sell up to 5 days holiday per year (pro rata)
  • Private health and dental cover
  • Support and investment in your personal development
  • 24/7 access to Employee Assistance Programme and Mental Health First Aiders

What we do

Premium Credit is the leading provider of insurance premium finance and a range of annually charged services, including tax, regulatory and accountancy fees, sports season tickets, memberships and school fees in the UK and Ireland. We are a multi award winning business...

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