Finvise
Finvise runs a hybrid model: a machine-learning valuation engine trained on 54 million-plus data points generates a value, reviewed and signed off by a RICS surveyor. The company reports the model lands within 10 percent of a human RICS valuation in 95 percent of cases (tested on 3,000-plus properties) and produces reports in roughly two seconds.
Best for: UK mortgage lenders and surveying teams needing fast, RICS-regulated property valuation reports
Last reviewed 6/2/26
- Property types
- residential
- Geography served
- United Kingdom
How Finvise uses AI[1][2]
Finvise runs a hybrid model: a machine-learning valuation engine trained on 54 million-plus data points generates a value, reviewed and signed off by a RICS surveyor. The company reports the model lands within 10 percent of a human RICS valuation in 95 percent of cases (tested on 3,000-plus properties) and produces reports in roughly two seconds.
- • ML valuation engine trained on 54 million-plus public and private data points
- • Vendor reports values within 10 percent of a human RICS valuation in 95 percent of cases (3,000-plus property test set)
- • Hybrid workflow: AI prediction reviewed and signed off by a RICS surveyor, with 1 million pound professional indemnity cover per report
- • Gatehouse Bank rollout cut valuation turnaround by up to 600 percent (vendor)
AI type: Machine-learning automated valuation model with human-in-the-loop RICS review
API: no MCP: no
Key numbers[1][2]
- • ML valuation engine trained on 54 million-plus data points
- • reports values within 10 percent of a human RICS valuation in 95 percent of cases across a 3,000-plus property test set
- • produces RICS Red Book compliant reports in roughly two seconds
- • every report backed by 1 million pound professional indemnity insurance and signed off by a qualified RICS surveyor
- • Gatehouse Bank three-month pilot cut valuation turnaround by up to 600 percent (vendor)
- • supports home purchase plans, buy-to-let and refinancing on residential properties valued up to 1 million pounds.
Credibility[4][3][5][2]
- Founders & team
- Co-founded by Max Boehnke (CEO), Dr Shuwei Liu (CTO) and Hayley Lemm (CPO); the company describes itself as the first AI-powered valuation firm in the UK to be regulated by the RICS.
- Customers
- UK lenders including Gatehouse Bank (Sharia-compliant lender) and Hope Capital.
- Investors
- Seed round (Jan 2024) led by Acrobator and Tiburon, with participation from Quartz Capital, Atlantis Ventures, Stellared and Savgroup; PitchBook reports approximately 906K USD raised.
Founded
2021
Headquarters
London, United Kingdom
Stage
Seed
Employees
11-50
Sources
- Finvise official site (products and AVM)
- Mortgage Solutions: Gatehouse Bank partners with Finvise
- PitchBook: Finvise company profile and funding
- Finvise About Us (founders, RICS regulation)
- Tracxn: Finvise company profile (founded year, employees, funding)
- Crunchbase: Finvise company profile and funding
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