Senior Asset Data Analyst

Paradigm Housing Careers
High Wycombe
3 months ago
Applications closed

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SettleParadigm Housing is seeking a highly skilled Senior Asset and Data Analyst to join our Asset Performance team. This is a hybrid role, with at least 2 days at our our office in High Wycombe and the remainder at home/remote. Knowledge/experience of of Housing/ Property assets is preferred.

Are you looking to join a growing, values-led organisation with a clear social purpose?

At SettleParadigm, were proud to be the largest housing group in the region, managing over 27,000 homes across Buckinghamshire, Bedfordshire, and Hertfordshire.

Everything we do is about delivering excellent services, high quality homes, neighbourhoods we can be proud of and maximising number of new affordable homes we build. Through our merger weve brought together shared values, skills and ambition, so we can build more affordable homes and make an even bigger difference in the communities we serve

If you're ready to grow your career in a supportive, inclusive environment while helping to shape stronger communities, wed love to welcome you on our journey. Together, were building a better future.

About the Role/team:

This is a pivotal role in shaping our data led Housing Asset Strategy and delivering intelligent investment planning across our growing Housing portfolio.

As a senior member of the team, you will lead the development and testing of reports and ...

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