Insurance data analytics software development services

During 13 years of cooperating with insurance companies, DICEUS has turned custom insurance data analytics software development into its unquestionable forte. Our qualified and certified experts possess a wide array of skills in handling a versatile technology roster to build top-notch data analytics software for insurance organizations.  

Data analytics in insurance industry relates to the practice of collecting, storing, extraction, and processing relevant information of various kinds obtained from multiple sources. Given the vast amount of such dossiers and records in our digitalized world, the efficient handling of business and personal data can be implemented only via leveraging robust insurance data analytics software as a special kind of insurtech solutions. It will enable players in the domain to draw meaningful insights that can be utilized in optimizing their workflow and providing a higher level of customer satisfaction for their clientele. 

Benefits of custom insurance data analytics software

The implementation of a first-rate analytics solution and its integrations with other elements of an organization’s IT ecosystem usher in weighty boons for upgrading the major workflows of an insurance company.  

Customer insights and personalization

By collecting and properly analyzing demographic, behavioral, and other information about clientele, insurance companies form a 360-degree view of their customers. Having such individual profiles at their fingertips, they can personalize their marketing efforts and suggest individually tailored services, discounts, offers, etc. 

Enhanced operational efficiency

The outcome of data analysis allows insurance companies to streamline and facilitate their shop floor routine, identify and forestall risks, boost decision-making, and increase the productivity of employees.

Improved pricing strategy

In-depth product profitability analysis, conversion ratio, retention ratio, and other indices are keys to revising an insurance organization’s existing pricing policy and modifying its underperforming elements.

Claims processing automation

Data analytics software drastically accelerates the entire lifecycle of handling claims (from the notice of loss through damage assessment to payment processing), pinpoints suspicious claims, helps minimize fraud and prevents litigation.  

insurance data analytics dashboard

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insurance data analytics dashboard

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DICEUS approach to building data analytics for insurance

In numerous successful insurance data analytics projects DICEUS has delivered for insurance companies, we prioritized three mission-critical aspects of such an analytics platform. 

Raw data 

As it happens in any business intelligence initiative, big data analytics in insurance begins with accumulating unprocessed and unformatted data. Its analysis can’t be effective unless it is knocked into shape, which makes it eligible for further handling by analytical tools. That is why it should be cleaned, organized, and transformed before insurance analytics software comes into play.  

Algorithms 

These are the methods of discovering the best ways of turning raw data into insights insurance companies can employ for performance optimization. 

Visualization 

The efficiency of data analytics software for insurance agency or company is essentially conditioned by a straightforward and easy-to-understand representation of data processing results. Static, dynamic, and interactive visual features and tools enable personnel working with the solution to come to grips with complex qualitative and quantitative indices displayed in a comprehensible graphic form. 

Example dashboards 

Wealth management dashboard

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Customer data dashboard

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Reports dashboard

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Stock history executive dashboard

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Homerun auto-insights dashboard

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Insurtech dashboard

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About DICEUS

2011the year DICEUS was established
130projects delivered successfully
8offices around the world
GlobalDelivery Center in Poland
250full-time tech professionals
100IT services available

Our achievements

Google Cloud Certified
IBM Enterprise Design Thinking Practitioner
SMAC Accredited Certification
Inc. 5000 List 2019
ISO 9001:2015 Certified
CBAP IIBA Certified
iSQI Professional Certified
Interaction Design Foundation
Fastest Growing 500 Software Developers
Global B2B Leader in Business Services 2022
Global B2B Leader in Development & IT Services
Top B2B Companies 2021 by Clutch
Top B2B Companies 2020 by Clutch
Top 1000 Global Companies 2020 by Clutch
Top Custom Software Development Companies

Our partners

Microsoft partner Oracle partner Google Cloud Partner Fadata partner

Insurance data analytics pipeline 

A data analytics routine is established for each particular case depending on the customer’s needs. However, the typical procedure of setting up an efficient data analytics pipeline for an insurance company covers the following steps. 

Defining a goal First, you should understand the purpose and basic objectives of insurance data analysis. These are conventionally conditioned by the company’s current requirements, growth vision, and development roadmap.  
Determining data analytics types to employ in the process Determining data analytics types to employ in the process 
The type of analytics you will opt for depends on the nature of the data it will be leveraged to process. A more elaborate scrutiny may necessitate utilizing diagnostic, predictive, or prescriptive methods, but descriptive analysis will suffice for a simple overview of data. 
Outlining a plan for data mining You should have a clear vision of the sources you will obtain data from, the type of information you are going to look for, the assets you will need to accomplish the procedure (workforce, equipment, software, budget, etc.), and the time the process will take. 
Collecting the data This is when you start to accumulate data according to the devised plan. If you are pressed for time, you can buy the relevant data from agencies working in this niche. Otherwise, employ specialized software that can facilitate the process immensely.  
Cleaning the data When all the records are assembled and stored in one virtual venue, you should ensure their accuracy, integrity, compatibility, consistency, completeness, understandability, and relevance. You should check it for errors and duplicates and prepare the dossiers for further analysis.  
Evaluating the data The analysis properly starts with looking for connections between various facts and figures. The best way to do it is to apply mathematical instruments. You should figure out what the data can mean and how your conclusions can benefit the organization.  
Visualizing the data Making head or tail of the data under scrutiny is much easier when it is presented in the form of colorful charts, graphs, diagrams, etc. Wide employment of visualization tools will help you spot trends and identify patterns that otherwise can be hidden behind the multitude of disparate numbers.  
Summarizing findingsAs a rule, it is done via descriptive analysis of the data. It will not only allow you to pinpoint errors and inconsistencies that may have escaped detection earlier but also enable your insurance company to realize what methods and activities work well and what areas require improvement or even total overhauling of approaches.  

Client reviews

Elena Markova

Elena Markova

Board Member, UNIQA Ukraine
riskville

We were impressed by the depth of the UX analysis they did in terms of our customer’s research, buyer persona creation, user journey mapping, etc. All the information like research findings, for instance, was presented in a clear form (presentations, Miro boards, clear infographics) so it was quite easy to understand what we need to build and why.

Antoaneta Karagyozova

Antoaneta Karagyozova

CPSO, Fadata
fadata

We are happy with DICEUS’ software implementation services. The team’s workflow is highly effective and professional in all aspects of the engagement. All clearly understand what goals we’d like to reach and do their best to do that as efficiently as possible. Overall, the partnership has been successful.

Phil Reynolds

Phil Reynolds

CEO, BriteCore
britecore

The DICEUS team has consistently supported the BriteCore team for many years. Their engineers are well-educated and highly invested in the ongoing quality of the BriteCore platform with sustained relationships that extend over four years. We appreciate everything the DICEUS team brings to the table as a development partner.

Our case studies

FAQ

What are insurance data analytics software development services? 

IT vendors offer various services related to creating and implementing data analytics software for insurance agencies. Here belong the development of a standalone custom analytics solution or an embedded module from scratch, customization and integration of third-party analytics software with the existing infrastructure, migration of the analytics product, modernization of a legacy solution, etc. 

How does insurance data analytics software development work? 

It starts with the discovery phase when the vendor learns the project requirements, scope, budget, and timeframe. All these factors condition the choice of the underlying software architecture and data processing model (ETL, ELT, or ETLT). Then comes the implementation of the model during the development stage, testing the finished solution, and its deployment for further use. Solid vendors also include support and maintenance services in the deal. 

What are the benefits of using custom insurance data analytics software development services? 

By commissioning a bespoke insurance data analytics solution, you will obtain a unique product that will be honed to meet your organization’s requirements and dovetail into your company’s business goals. Leveraging it, you can step up your pipeline efficiency, improve your pricing strategy, obtain meaningful insights into customer behavior, and guarantee maximum customer satisfaction for your clientele. 

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