Technical Building Data Analyst

Key Talent Solutions
Hatfield
1 day ago
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🚀 We’re Hiring: Technical Building Data Analysts


Are you passionate about buildings, data, and sustainability? We’re looking for Technical Building Data Analysts to join a growing team working on innovative housing asset management projects across the UK.


📍 Locations: Hatfield and Manchester (with hybrid opportunities available)

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🔍 The Role

In this role, you’ll work with large property datasets to support effective asset management and long-term planning for residential portfolios. Your work will include:

• Planned maintenance programming

• Property performance analysis

• Financial forecasting support

• Reviewing and analysing property data within asset management systems

• Collaborating with teams focused on stock condition, retrofit, and software development

• Testing new system features and supporting data improvements


📊 What We’re Looking For

Level 6 Diploma in Residential Surveying

• Strong knowledge of building pathology and common defects

• Excellent Excel skills (Word advantageous)

• Interest in data analysis and technology

• Understanding of energy efficiency and sustainability standards


🎯 What’s On Offer

• Support towards RICS progression and APC

Domestic Energy Assessor training

• Opportunity to develop data analytics expertise

Competitive salary

30 days holiday including bank holidays

5% matched pension contribution

Health and life insurance

• A collaborative team environment within a professional office setting

• Clear progression opportunities into consultancy, management, and project delivery


If you’re looking to combine building expertise with data-driven insight, we’d love to hear from you.


👉 Apply now or contact us to learn more.

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