

Allstate has a rich history of innovation when it comes to analytics, dating back more than 80 years. In 1939, it led the way in reducing rates for safe drivers. Customers embraced this more personalized approach to insurance pricing, and its popularity set the industry on a new course.
Today, Allstate continues to serve as a leader in insurance—putting models at the heart of its business to drive what Chief Data and Analytics Officer Eric Huls calls a “step-change” in capabilities for the more than 16 million households Allstate serves.
“There are opportunities through data, analytics, and technology to create more consistent, positive interactions with our customers, and shift from simply making things right when bad things happen to finding ways to prevent those adverse events in the first place,” Huls explained.
Allstate uses data and analytics solutions to support claims processing, help deliver quotes, and predict thousands of decision-making actions across products, sales, operations, marketing, and claims.
Helping 17,000 adjusters resolve claims faster; that’s just one business outcome resulting from Allstate’s model-driven approach. Allstate relies on the Domino data science platform to facilitate end-to-end model management in an agile environment, accelerating research while ensuring regulatory compliance.
For Huls, productivity of the company’s analytics organization (known as D3—Data, Discovery and Decision Science) is vital to the company’s transformation. This team, which in recent years has grown to more than 300, works closely with each of the company’s business units and functions, surfacing opportunities to apply models to business objectives that improve customers’ experiences with Allstate.
“The less time and effort we have to spend relearning or recreating results, the more time we can spend creating additional value, and the more projects we can support,” explained Huls.
However, as research and development efforts blossomed, time-consuming processes threatened to slow Allstate’s progress. Certain software tools and infrastructure resources were not readily available to data scientists, causing a delay in projects. Such delays put new research into a holding pattern.
Without historical systems of record or version controls, at times it took months to recreate existing models or obtain answers to regulatory questions. What’s more, with work scattered across different file systems and no easy way to maintain version control, team members couldn’t easily build on past research as they developed new models.
Additionally, the team struggled when it came to testing ideas with business users and iterating quickly. It took substantial time and money to set up testing environments, limiting which ideas data scientists brought to end users.
During a short pilot, Allstate determined Domino’s data science platform addressed the needs described above. Two months into the pilot, the scope of projects running on Domino organically grew from three to 26, as data scientists migrated their work to Domino for the productivity benefits. The original three projects accumulated more than 5,500 hours of compute time, which equates to two and a half years of work.
Today, the team uses the Domino platform to reliably and securely develop, validate, deliver, and monitor new models for use cases like forecasting losses, uncovering new insights into claims, calculating customer lifetime value, and predicting potential customer churn.
Data scientists have seen benefits in three key areas:
For any insurer, managing claims is one of the most pressing areas to get right. Customers who have experienced an accident, storm damage, or other loss, are often already under a great deal of stress, and frustration can easily set in with any delay.
Allstate’s D3 team is developing models to help the company’s more than 17,000 claims adjusters gain new insight into each claim, better prioritize tasks, and tailor the process for their customers.
Testing models is crucial to ensuring end user adoption and optimizing model outputs. The team traditionally struggled with how to securely enable a test group of adjusters to access new app capabilities and provide their feedback. Now as data scientists develop new models, they can create a Shiny app in Domino using R and share it with targeted end users to gain immediate feedback from those who will ultimately use the model outputs.
“The testers in the field sign in through Domino and can play with the model to see if it would help them with their claims processing,” said Collins. “As they gave us feedback, we were able to roll that feedback into the app overnight. We got to test it really quickly and got to that learning a lot quicker.”
“We've had a large amount of growth over the last few years, and with Domino we can give new hires access to the tools they're using at universities or doing their own work on,” said Huls. “They’re able to get up to speed and begin adding value quickly.”