Head of Data Strategy

YHA
Matlock
3 days ago
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Head of Data Strategy

Location: Finance and Performance Directorate

Permanent contract

Full time 37.5 hours per week

Hybrid role with home/office working in Matlock

£65,000 per annum

A fantastic opportunity has arisen to join our Finance and Performance Directorate as Head of Data Strategy.

The purpose of the role is to establish YHA's data strategy and architecture to support digital transformation and our long-term organisational transformation plans. Working closely with the Executive Director Resources & Transformation and Director of Finance & Performance, you'll build data governance frameworks, enable self-service analytics capabilities, and support the cultural shift toward data-driven decision making across YHA. You'll provide technical leadership for data transformation while building capability across the organisation.

Why work for YHA?

Join our team and enjoy a range of exclusive staff benefits that support your well-being and career growth:

  • 10 nights free hostel stays per year for you and up to 3 friends or family

  • Access to YHAs staff discount and cash ba...

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