Technical Building Data Analyst

Manchester
15 hours ago
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Technical Building Data Analyst

Manchester
Hybrid Working
Progression into Consultancy / Management / Project Delivery

A leading property consultancy is looking to appoint a Technical Building Data Analyst to join its growing team in Manchester.

This role offers an excellent opportunity for someone with a building surveying background who enjoys analysing property data, identifying trends, and supporting strategic asset decisions across large residential portfolios.

You will work closely with social housing clients, helping manage building information, planned maintenance programmes, compliance data, financial forecasting, and long-term asset performance.

Key requirements:



Level 6 qualification in residential surveying or similar

*

Strong understanding of building pathology

*

Ability to identify common property defects and analyse technical data

*

Strong Excel skills

*

Good working knowledge of Word

*

Understanding of energy efficiency and sustainability principles

*

Interest in data, systems, and technology

The role will involve:

*

Reviewing and analysing property and asset data

*

Supporting planned maintenance and capital works programmes

*

Working with housing asset management systems

*

Assisting with compliance and sustainability reporting

*

Supporting software testing and internal technical teams

What’s on offer:

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Clear progression into consultancy and management

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Support towards APC / professional development

*

Domestic Energy Assessor training

*

Hybrid working

*

Competitive salary and benefits package

This role would suit a Building Surveyor, Stock Condition Surveyor, Retrofit professional, or technically minded property candidate looking to move into a more analytical and long-term strategic position.

If you would like more information or wish to apply, please get in touch for a confidential discussion

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