Heading

1

What’s a Rich Text element?

The rich text element allows you to create and format headings, paragraphs, blockquotes, images, and video all in one place instead of having to add and format them individually. Just double-click and easily create content.

Static and dynamic content editing

A rich text element can be used with static or dynamic content. For static content, just drop it into any page and begin editing. For dynamic content, add a rich text field to any collection and then connect a rich text element to that field in the settings panel. Voila!

How to customize formatting for each rich text

Headings, paragraphs, blockquotes, figures, images, and figure captions can all be styled after a class is added to the rich text element using the "When inside of" nested selector system.

Resource

Predicting 74% of All Houses Sold In The United States Every Month

Predicting 74% of All Houses Sold In The United States Every Month
No items found.
DataFlik approached NineTwoThree to build a machine-learning model that generates prioritized lists of motivated sellers more accurately than a human.
Download it now.

Download "Predicting 74% of All Houses Sold in the US Every Month" to Learn

  • How machine learning predicts motivated sellers faster and more accurately.
  • The challenges of real estate lead generation and how AI solves them.
  • The role of PropTech in disrupting the real estate industry.
  • How NineTwoThree helped DataFlik build a successful ML model.
  • The impressive growth and ROI DataFlik achieved with AI-powered solutions.

Transforming Real Estate Prospecting with AI and Machine Learning

Industries like real estate, which are tasked with finding qualified clients in a crowded and ever-changing market, have a lot to gain from adopting machine learning and AI in real estate prospecting. With Real Estate Machine Learning, companies can achieve unparalleled real estate marketing efficiency. However, the large amount of real estate data for machine learning, which is necessary to create an effective machine learning model, can pose real estate data challenges, making it expensive, and most real estate companies don’t have the ML expertise needed to build an accurate and cost-effective model.

This is the challenge DataFlik aimed to solve when they approached NineTwoThree to build a machine learning model that generates prioritized lists of motivated sellers faster and more accurately than a human expert can, saving real estate wholesalers key time and money.

DataFlik was able to augment the capabilities of their lean in-house team with NineTwoThree’s ML expertise to overcome the challenges of developing machine learning models and build a truly impactful solution.

Real Estate Lead Generation Challenges

Real Estate Lead Generation Challenges


Real estate wholesalers looking to find new sellers typically grapple with real estate lead generation challenges. They spend a significant amount of time and money finding the contact information for potential sellers in specific real estate markets. This leads to the need for a motivated sellers list, which is vital for them.

The growth in PropTech is a significant factor in the real estate industry. While the real estate industry has traditionally been slow to adopt new technology, the last few years have witnessed significant digital disruption. 2022, in particular, saw the PropTech Investment 2022 reaching its highest, signaling PropTech growth trends.

Once they have an accurate list, agents send out hundreds to thousands of letters to find the right person that is willing or needs to sell their property. 

Unfortunately, traditional real estate prospecting and research involve human analysis of historical data to create very broad lists that result in very low conversion rates. Agents typically send out hundreds of mailers and only receive a few responses. Finding motivated sellers whose homes are not listed on the market yet is something of an art, and this method has a high expense but low return.

Growth in PropTech

While the real estate industry has traditionally been slow to adopt new technology, the last few years have witnessed significant digital disruption. 2022, in particular, saw the PropTech Investment 2022 reaching its highest, signaling propTech growth trends.

Growth in PropTech


PropTech startups are poised to capitalize on a massive industry that is finally embracing technology. 

The biggest trends in real estate and technology adoption are expected to be:

  • Automation: CRMs and real estate-based project management software platforms are already automating many of the day-to-day activities of real estate professionals. PropTech will continue to leverage automation to help find and analyze deals, buy and sell properties, and manage rentals.
  • Virtual Reality and Metaverse: COVID-19 forced many real estate agents to embrace technology to allow for virtual open houses and remote experiences. With the metaverse market expected to reach $824.53 billion by 2030, expect real estate to continue to embrace VR.
  • Big Data and AI: Researching and analyzing property investments, market opportunities, and new sellers used to take months. Companies like DataFlik are allowing real estate agents to gain vital insights from large volumes of data in minutes.

Introducing Machine Learning to Real Estate Prospecting

Machine Learning in PropTech is revolutionizing the way businesses operate. Predictive models for property sellers have become an essential tool for companies. DataFlik aimed to use these predictive models and leverage the Real Estate Machine Learning Proof of Concept to create a robust system.

DataFlik aimed to leverage machine learning to generate more accurate lists of potential sellers by creating models to predict properties that are more likely to sell. Instead of using human analysis of a small number of data points, ML would allow DataFlik to process a large amount of data using a model that could be continuously tuned to increase accuracy.

Even with professional prospecting and skip tracing services, mailing lists will often include houses with low chances of conversion, outdated listings, and other data that is inaccurate or untimely. 

DataFlik’s prospecting tool aimed to filter out these results, and use AI to predict houses that aren’t yet going on the market, are going into liquidation, and other potential opportunities that other real estate wholesalers would not be aware of. The end goal was to deliver a prediction model to provide real estate wholesalers with valuable insights into potential prospects before they are publicly listed.

DataFlik hit the market just as the real estate industry began to see greater adoption of technology. Last year saw the highest value of PropTech investment on record, with the US investing $61.1 in the first half of 2022 alone.

PropTech investment on record, with the US investing $61.1 in the first half of 2022 alone.

Real Estate Data Used for Machine Learning Model

Using real estate data points for ML is pivotal. For the DataFlik Machine Learning Model to be accurate, it had to consider a myriad of these data points ranging from financial stability to sports interests.

Creating an effective machine learning model for real estate prospecting requires a large amount of data. Producing fast results which such a large volume and breadth of data is complicated and technologically demanding. There are millions of properties in the US and each property has about 1,700 data points.

Data points relevant to DataFlik’s model included courthouse records, demographics, geographic insights, household interests, life events, purchase behaviors, sports interests, short-term loan shopping, financial stability, and more.

42 billions data points

The first challenge we ran into with DataFlik is that the real estate data needed to achieve the desired model is extremely expensive. In order to justify the purchase of this data we needed to prove that the proposed model would be capable of achieving its goal - before we could purchase the data needed to train the model.

Challenges of Developing Machine Learning Models

The challenge of justifying data expenses in machine learning projects is a common one.

a dimension research study

The sheer amount of data can be daunting as well. 72% of organizations report that production-level model confidence will require more than 100,000 labeled data items and 10% will require more than 10 million data items.

Since ML is so valuable for processing massive amounts of data, there are many common use cases where a company would be interested in building a model to process this data before investing in the cost of the data itself. Unfortunately, this is also why 33% of AI or ML projects stall during the proof of concept stage.

A “normal” machine learning project starts with setting goals based on guided data analysis sessions with experts to understand how a human expert would make predictions. The next stage involves cleaning and preparing all available data for modeling. 

We then create and evaluate several models based on the hypothesis made from meeting with the experts and coming up with the best-performing model. Then the top models are fine-tuned and re-trained until a high level of confidence is reached.

Building a Mini ML Model as Proof of Concept

“We got connected with NineTwoThree because we just needed to expand our team, but I didn't really have the resources to build the development team myself. Our team interacts with NineTwoThree every day so we’re very combined together at this point. If we didn’t have them, we wouldn’t be as far as we are now.” - Tyrus Garrett, Co-Founder & CEO at DataFlik

DataFlik came to NineTwoThree with the goal of building a model as proof of generating an effective motivated sellers mailing list - without developing the full model - to justify the purchase of such data. NineTwoThree created a “mini model” that served as a proof of concept and de-risked the expensive data purchase for DataFlik.

Creating this mini model started with interviewing a human expert in real estate prospecting to help identify the most powerful data points for producing a working baseline model. Traditional prospecting relies on human intuition and a much smaller set of data points to make predictions. This serves as a limited starting point for our baseline model.

Based on the data needed to make this ML model, we requested sample data sets directly from vendors and asked questions to ensure the data was valuable.

partner that using glue and spark by aws

Working with an AWS-certified partner can greatly speed up processing time and produce high-quality results quickly and efficiently compared to what could take data scientists months. 

Once the mini model proved the superior accuracy and efficiency of using machine learning DataFlik was able to justify investing in the 42 billion data points used to train the full model.

DataFlik’s ML-Powered Real Estate Solution

NineTwoThree created a model leveraging ML-Powered Real Estate Data, which brought a paradigm shift in how real estate wholesalers approached their potential sellers.

DataFlik’s ML-Powered Real Estate Solution

“The real estate market becomes more competitive and saturated every day, squeezing margins each year. DataFlik's product performs better each month with our proprietary algorithm driven by our AI and machine learning technology. The system continuously adapts to target the owners most likely to sell as the market changes in real-time.”

The Results At A Glance

DataFlik’s AI models have significantly outperformed competing seller lists and gives their clients a competitive advantage. DataFlik’s users see an average of 8 times better ROI versus other known lists. The growth of PropTech and AI in the real estate market allows agents and wholesalers to avoid spending unnecessary money chasing unqualified leads.

The Results At A Glance

In 2022, DataFlik’s achieved a growth rate of 634% in monthly recurring revenue. They plan to release several new products in the next year and grow their team considerably. With NineTwoThree’s help, DataFlik overcame the data challenges of training a machine learning model and and the lean startup is poised to expand into an exciting new phase of growth thanks to the success of their ML-powered real estate data.

achieved growth rate of 634%
“Carrying out the actual implementation of your visions is super hard to do for most non-technical founders. When I started working with NineTwoThree, they really helped optimize my visions to make them realities and they did it in a way that was very organized, scalable, and effective.” - Tyrus Garrett, Co-Founder & CEO at DataFlik
correctly predicted transactions Ohio
“Our goal as NineTwoThree is to give founders like Ty the tools they need to innovate,” said Andrew Amann, CEO, and Co-Founder at NineTwoThree. “We’re very pleased with the growth we were able to achieve with DataFlik and their team.”
correctly predicted transactions Florida

DataFlik has plans for new products and considerable growth in 2023. Visit DataFlik.com for more info on their plans to further disrupt the real estate industry and visit NineTwoThree.co for more insights on machine learning development.

correctly predicted transactions Los Angeles
If you like this, download the full resource here.
PDF This Page
Predicting 74% of All Houses Sold In The United States Every Month
View this Resource as a FlipBook For Free
Predicting 74% of All Houses Sold In The United States Every Month
Download Now For Free
contact us

Have a Project?
Talk to the
Founders Directly

It's free, what do you have to lose?