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Asset & Data Analyst

Nottingham Community Housing Association Ltd
Nottingham
3 weeks ago
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Asset & Data Analyst

Clifton, Nottingham

£28,427 - £37,477 per annum

Join our friendly and supportive Asset Data Team within Property Services at NCHA. We have two exciting opportunities available—one full-time and one part-time—for detail-oriented individuals who want to make a difference in social housing and environmental sustainability.

About the role

This role is part of our Asset Data Team, which sits in our Property Services department. The team oversees stock condition survey programmes which helps us plan major repairs and long-term investment. The team also leads our work to make our properties more energy efficient, supporting NCHA’s goal to reach net zero carbon by 2050.

Key responsibilities include:

  • Manage stock condition and energy data to inform maintenance and retrofit planning

  • Produce reports and dashboards for strategic decision-making

  • Maintain core systems (e.g., SDS Stock Profiler) and support end users

  • Collaborate with internal teams and IT on system improvements

  • Support data collection for statutory and regulatory purposes

  • Develop training on job-specific software to users

    You’ll have an appropriate IT qualification or demonstrable experience in managing databases and analysing large volumes of data and translating this into well-presented documents to inform strategic and operational decisions. Data comes in many forms, from disparate sources, so although previous housing/property experience would be beneficial, it’s not essential – we’ll support your learning. The most important quality is the ability to harvest and understand information, to demonstrate good communication skills and be clear about the needs of your many internal customers. You will provide solutions to meet those needs.

    Working hours

    Monday to Friday. One full-time role (35 hours per week) and one part-time role (21 hours per week week) – to be discussed at interview.

    USEFUL TOP TIPS:

  1. All correspondence will be via your registered email address.

  2. View the full Role Profile in the document tab at the top of the page and refer to the Person Specification section of the Role Profile to complete your application – show us why you are suitable!

  3. For more information about NCHA, please refer to the attached ‘Helping Our Customers’– get a better idea of what we do across the organisation!

    To apply, Click the Apply Now button at the top of this page

    Please note that we are not currently offering visa sponsorship.

    All successful candidates may be required to take a work-related test prior to the interview.

    We may close this vacancy early should we receive sufficient interest.

    As an Equal Opportunities and Disability Confident Employer, NCHA welcomes applications from all suitably qualified candidates including those from Black, Asian and minority ethnic groups and disabled candidates. As part of our LGBT Allies Programme, we also welcome applications from members of the LGBT community and encourage inclusivity in the workplace

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