Senior Assets & Sustainability Manager

Chesterfield
1 month ago
Applications closed

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About the role of Senior Assets & Sustainability Manager

As the Senior Assets & Sustainability Manager, you'll be a key element in delivering data to assist in the development of bids for external funding, working alongside local councils to ensure more sustainable works can be put in place.

Responsibilities for Senior Assets & Sustainability Manager

Working with local councils to compile strategic plans and proposals on more sustainable solutions for the Social Housing sector.
Ensuring projects are kept within budget by collecting data from previous works.
Manage a team consisting of Lead Surveyor, Assets Data Analyst and Capital Contracts Manager to prepare project scoping documents.

Requirements for Senior Assets & Sustainability Manager

Previous experience in a similar role
Education to a degree level or equivalent
CIH/RICS/CIOB
Good understanding of Health and Safety

What we offer for Senior Assets & Sustainability Manager

Up to £55k
25 Days Holiday + 8 Bank Holiday
Generous pension scheme
Additional Benefits

If you want to hear more about this Senior Assets & Sustainability Manager role please apply with an up-to-date copy of your CV or contact Anna Phillipson in our Sheffield office on

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