Data Quality & Performance Manager

Hexagon Housing Association
London
22 hours ago
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Hexagon is an innovative and responsive housing association working in partnership with a range of local authorities to meet housing needs across Southeast London. With a turnover of £40m, 120 staff and over 4,000 homes, Hexagon is continually improving the quality and range of our affordable homes and services.


We are seekingaData Quality & Performance Managerto joinour committedGovernance, Risk and Assuranceteam. Reporting to theHead of Governance, Risk & Assuranceyou willprovide data assurance across the full range of performance measures. You will alsodesignandmaintaina data assurance map,continuously improve the reliability ofdataandidentifytrends and insights thatinform decision-making. Our idealcandidatewill have:


  • A successfultrack recordin data analysis or business improvement.
  • Experience of systems thinkingand producing performance data.
  • A good understanding of research methods and statistical concepts
  • An awareness of the challenges facing housing associations and their residents
  • Excellent IT skills with ability to use a range of data analytical tools
  • Able to analyse and interpret complex data and provide cl...

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