Did you know that there is more to Houseprice.AI than values?

Do you want to improve your data analytics? Using AI and machine learning we can provide you with the tools to increase your profitability.
Our new  proprietary reports and benchmarks provide fast and objective comparative analyses between residential projects, from single family homes through to large scale developments.
The Insight module within our app,Horizon, distils billions of data points to help you identify emerging areas with steady home appreciation and high rental returns.
Our API delivers our proprietary data into your own applications and business processes and will give you a competitive edge over your competition.

We want to work alongside you and help you every step of the way, as little or as much as you require.

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Please contact us if you have questions about Houseprice.AI , our AI data analytics app, want access to our API, or would like to schedule a demo.

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Robert Marsden talks about the application of Houseprice.AI technology

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Artificial intelligence

Artificial intelligence is very much a buzz word right now and quite rightly so. However, to me what’s most important is the application of the technology.

How Houseprice.AI uses this technology

We provide a transparent and objective solution to help people to make some of the very large and important decisions. In the case of home owners probably the largest, most important decision they make in their lives. And, in the case of investors, clearly objective repeatable process is all important.

Why Houseprice.AI?

I have known the founders for many years. In the case of Eldred, over 20 years. He has a good track record of getting businesses off the launchpad, and in the case of Houseprice.AI, it really is in a peer group of one in Europe.

Providing an objective, repeatable and transparent methodology really is transformational in one of the largest asset classes in the world.

Robert Marsden is COO of Houseprice AI. Previously Investment Director with Fidelity Worldwide Investment, he is experienced in all the major asset classes and provides insight with a view to the perspective of users of pricing mortgage backed securities and RMBS style assets. During a 30 year career, he has been with Coal Pension Trustees Services, BlueCrest Capital Management, LLP, Mercer Investment Consulting, NCB and Lombard Odier.
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Eldred Buck talks about Data sets and AI

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How important are data sets

One of the intriguing facts about Houseprice.AI is the fact that our data sets are very vast and that means that we are able to accurately estimate the appraisal value of a property by virtue of these data sets and that means that for the 22.5 million properties in the UK we can arrive at a valuation in 10 seconds provided that we put the correct data in, most of which we actually have.

Who can makes use this data

The market place that we’re serving is everybody from home buyers though to, essentially, all the intermediaries involved in that process and all the professionals involved with the industry and sector. Bearing in mind that we have a residential market of 6.2 trillion pounds, in the order of 3 times the GDP of the country. It’s a very substantial market that we are looking to apply our technology to, and there are a myriad number of applications that come from being able to value property on an objective set of criteria which are universally applied across the geographies that we are involved in. Which in this case is England and Wales.

Why did you start Houseprice.AI

The reason that we started Houseprice.AI was in order to meet the need for objective information in the residential market. We saw that actually with the application of Machine Learning and the use of supervised learning sets as part of Artificial Intelligence that we would be able to provide consumers with a far better set of objective criteria in terms of valuing their property.

Eldred Buck is CEO and Co-Founder of Houseprice.AI Ltd and a Non Executive Director at Sequant Capital. He has over 25 years experience in capital markets and banking, specialising in quantitative models and derivatives trading across all major asset classes. Previously he founded Eiger Trading Advisors, a leading fintech company.
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Eldred Buck interview, RICS Modus magazine

Eldred has been featured in the October issue of the Royal Institute of Chartered Surveyors monthly publication, Modus.

The article came out on the 10th, so it is "fresh off the press". You can read it here, or click the link to download a pdf copy.


Example fallback content: This browser does not support PDFs. Please download the PDF to view it: Modus Article.

Eldred Buck is CEO and Co-Founder of Houseprice.AI Ltd and a Non Executive Director at Sequant Capital. He has over 25 years experience in capital markets and banking, specialising in quantitative models and derivatives trading across all major asset classes. Previously he founded Eiger Trading Advisors, a leading fintech company.



If you would like to know more information about Houseprice.AI , Horizon, or access to our proprietary API please feel free to contact us at info@houseprice.ai.


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Gio Miano talks about Insight

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Why Houseprice.AI created Insight

We created Houseprice Insight, which is part of our offering, and is essentially a way to allow our users to provide their customers with much more granularity, data analysis and insight on a specific area.

How does Insight help the user?

We created the ability for someone to show that they effectively know their area. For example, what’s going to happen if a new Waitrose down the street opens up, what’s going to happen if the school kids are doing better at school, what’s going to happen if the NHS push more money to improve their service in the area. How that is going to affect the value of the area has to affect the value of a property. And how you can actually extrapolate this to have a meaningful forecast.

The significance of using AI and Machine Learning

I think that the problem that we now have is because we value things based on the past, and what we want to do, is we want to try to extrapolate with the ability to do a meaningful prediction in the future. Which is not just drawing a straight line between points and know that is the future value.

What Insight can demonstrate

We want to understand why and what impact each single amenity has. The little park that they are planning to build and how that is going to affect the area, as a community project. Where is going to be the best place to open a park. Where is it going to affect the value of an area. How is it is going to affect the value of an area.

We are helping to create sustainable projects, that also have the minimum impact on peoples life, and also on their most important asset. Their house.

Giovanni Miano is Co-founder and CTO of Houseprice AI. Gio has been involved with HFT projects across the globe and is experienced in designing and implementing highly complex IT solutions. Previously he has served as technical consultant for several global firms such as BP, Trafigura, Morgan Stanley and Goldman Sachs.
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Introducing Houseprice.AI Data Analytics

Everything we do, we believe, challenges the status quo. We believe in thinking differently. Transparency, clarity and consistency are the cornerstones of our philosophy that drive the Houseprice.AI approach.

Our new report is designed to provide property professionals across the residential property spectrum with an innovative and accessible set of benchmarks and reporting templates.
Houseprice.AI’s proprietary reports and benchmarks provide fast and objective comparative analyses between residential projects, from single family homes through to large scale developments. This approach improves estimates of current and future sales prices, Gross Development Value (GDV) estimates as well as identifying risk with far greater precision.
The Houseprice.AI risk/reward index and Classification table further enhances residential real estate data knowledge and improve decision making and profitability.
Click here to see the example report. This is the kind of report you can create using our api. We can also produce this report, on as many areas as you wish, as part of the subscription to our app.

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Please contact us if you have questions about Houseprice.AI , our AI data analytics app, want access to our API, or would like to schedule a demo.

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Mad about Metrics

Houseprice.AI Value

We have introduced 5 different metrics to suit all of our property clients. As a company we are mad about metrics and passionate about using AI data analytics.
A core part of this is to interpret and predict the fairest and most accurate value.

We realise that each sector of the property market has different needs. As an example, an agent wants sales regression for an accurate appraisal, a consumer wants our fair value to protect their investment, whilst a vendor the guided listing price to get the the maximum return on the property.

We give you the tools to help you to make the right decisions for your property interests.

Current estimated value This value is what we call the fair price, property can go higher or lower but this is our AI deduced benchmark value based on over 40 drivers.

Range Includes variables relating to changes in factors such as, aspect, environmental factors, fittings and improvements.

Sales Regression Method used by traditional AVMs. Deriving a value by fitting a line between the recent sales of comparable properties factored for PSQM/PSQF .

Weighted Average A weighted average of sale prices over the past 6 months

Guided Listing price Recommended listing price based on analytics of time on the market and supply demand measures for the area.

Confidence level Statistical measure that is based on how many observations there are for the specific area/property type and deviation from the mean.

Adjusted Value
Gain more precision by adjusting property details and watch the value adjust instantly. The more details you are able to provide, the more precise our adjusted value will be.

Vivienne Brooks is the CCO of Houseprice.AI She has a long history as a Technical Software Support Guru, is a graphic artist and also has a strong background in Marketing.
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Impressionism for AI

Please contact us if you have questions about Houseprice.AI , Horizon, access to our API, or would like to schedule a demo.

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