Senior Data Analyst

Accent Housing
Bradford
3 months ago
Applications closed

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Senior Data Analyst

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Senior Data Analyst

Senior Data Analyst

Senior Data Analyst


A place to drive change

Location: Bradford or Peterborough, Hybrid with travel as required.
Salary: £46,022 per annum
Permanent, 35 hours per week, Monday Friday 9am to 5pm.

Were on a journey of transformation. Were finding new ways to achieve our purpose of providing families with affordable, sustainable and safe homes. Were innovating for our customers and to create a thriving workspace that supports everyone.

Were a team of passionate, dedicated people, working to drive change for the better. Were building something special here and we want driven, creative people to join us.

If youre looking for a career where you can be part of change, share your ideas and help us transform, theres never been a more exciting time to join us and shape our future.

About the role

Ready to turn data into decisions that shape the future?

At Accent, were on an exciting journey to transform how we understand and serve our customers. Were looking for a Senior Data Analyst who thrives on curiosity, stakeholder engagement, and delivering tangible value not just building dashboards, but driving real outcomes. Youll play a critical role in shaping Accents customer strategy and operational excellence. Your insights will directly influence service improvements and customer satisfaction. This isnt about reporting for reportings sake, its abou...

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