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Asset Data Analyst

Birmingham
10 months ago
Applications closed

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We are looking for an Asset Data Analyst to join an established housing association in the heart of Birmingham.

As an Asset Data Analyst you'll have experience in:

Using data analyst tools, such as: CRM systems, Excel and spreadsheets
Assessing the quality of property data
Monitoring the completion of works, ensuring these are up to date
A Compliance background, with knowledge of regulations
A housing background
Birmingham
Asset Data Analyst
Permanent
£35,000 - £37,000 annual salary
Agile working

Responsibilities of an Asset Data Analys include but are not subject to:

Organising comprehensive data on properties
Collaborating with maintenance teams to improve property conditions
Working with the Asset team to manage issues and ensure data is accurate and up to date with relevant legislations
What they are offering:

34 days annual leave
Flexible working
Health Cash Plan
Leisure schemes
Pension contribution
Opportunity to grow and learn
If you feel like you'd be a good fit for the role or know of anyone, please contact (url removed). Alternatively, you can apply to this role with your most up to date CV. We are looking forward to receiving your applications

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