Asset Data Analyst (Housing)

Manchester
11 months ago
Applications closed

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Key Responsibilities
The Asset Data Analyst will be responsible for providing accurate asset data and using it to plan major works to our homes, to ensure that Decent Homes and the company standards are maintained.
Ensure data is adapted to take account of statutory and regulatory requirements and this is shared across Property Services to drive investment decisions and service improvement.
Using a range of analytical tools to provide data on investment hotspots, poor performing stock and opportunities for resolution in the short, medium and long-term.

Required Experience
Detailed knowledge of housing, business planning and asset management systems such as Keystone, NEC or other stock condition \ asset data systems.
Knowledge in extraction of information from data management systems to review and cleanse data in an efficient way to enhance accuracy to better inform business decisions.
Advanced knowledge of Microsoft Excel, Power BI and SQL to analyse, manage and present data.
Ability to work with large amounts of data, owning data integrity and collection of data. Advanced MS Excel skills along with understanding of Database configuration.

In accordance with the Employment Agencies and Employment Businesses Regulations 2003, this position is advertised based upon DGH Recruitment Limited having first sought approval of its client to find candidates for this position.

DGH Recruitment Limited acts as both an Employment Agency and Employment Business

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