Taming Big Data with Cognitive Computing AI

Taming Big Data with Cognitive Computing AI

In the complex, diverse insurance industry, it can be hard to reconcile theory and practice. Adapting new processes, systems, and strategies is always challenging. However, with the arrival of new opportunities driven insurtech,  cultural transformation will go smoother. 

Insurance companies that are considering how to plug into the insurtech landscape should understand the various models within the innovation ecosystem. Carriers have to weigh their options carefully before choosing between incubators and accelerators, or venture capital and partnerships, when creating their best internal and external teams.  

The key elements disrupting the insurance industry include the Internet of Things (IoT), wearables, big data, artificial intelligence and on-demand insurance. Although well-established business models, processes and organizations are being forced to adapt, insurtech can be more collaborative than disruptive. 

It is no secret that the insurance industry is responding to changing market dynamics such as new regulations, legislation, and technology. With digital transformation, there are numerous ways technology can impact, improve and streamline current insurance processes. 

Cognitive Computing

Cognitive computing, a subset of AI, mimics human intelligence. It can be deployed to radically streamline industry processes. According to the 2016 IBM Institute for Business Value survey, 90 percent of insurance executives believe that cognitive technologies will have an impact on their revenue models. 

The ability of cognitive technologies to handle both structured and unstructured data in new ways will foster advanced models of business operations and processes. 

Insurance carriers can use this technology for improved customer self-service, call- center assistance, underwriting, claims management, and regulatory compliance.

Big Data

Unstructured data is rapidly growing every day. For instance, wearables can provide insurance companies with massive amounts of data that can yield insights about their markets. Social media also produces a flood of data.

In order to harvest this data intelligently, insurers need to adopt the right analytical solutions to analyze, clean and verify data to customize their offerings according to their clients’ individual needs. Predictive analytics evaluates the trends found in big data to determine risk, set premiums, quote individual and group insurance policies, and target their key markets more accurately.

Linking the Two 

Insurance organizations may have more data than they realize or know what to do with. Existing data is coming in from different core systems and new data is being captured with IoT devices like wearables and sensors. Cognitive computing is the link to organizing and optimizing this data for use. 

Whether it is used to predict risk and determine premiums, flag fraudulent claims or identify what products a customer is likely to buy, cognitive computing is the way to ensure these goals are achieved. By sorting these trends amongst reams of data, it becomes more manageable and ensures that a business’s IT objectives link back to business strategies.  

Over the years, systems will evolve through learning processes to a level of intelligence that can adequately support more complex business functions. Today, the biggest challenge facing most insurers is just getting started—and doing it the right way. Schedule a meeting with your executive team to examine risks, opportunities and insurtech synergies that can take your organization beyond the competition. 

Jan Kumorowicz

Manager, User Success at dbt Labs

5y

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