For effective AI, insurance needs to get its data house in order
A report from Autorek, a provider of AI solutions to the insurance industry has produced a report that describes operational drag in companies’ internal processes that not only affect overall efficiency but cause an impediment to the effective implementation of AI in insurance concerns. Insurance Operations & Financial Transformation 2026 [email wall] draws from a […] The post For effective AI, insurance needs to get its data house in order appeared first on AI News .
A report from Autorek, a provider of AI solutions to the insurance industry has produced a report that describes operational drag in companies’ internal processes that not only affect overall efficiency but cause an impediment to the effective implementation of AI in insurance concerns. Insurance Operations & Financial Transformation 2026 [email wall] draws from a survey of 250 managers in the sector from the UK and US. The survey’s responses paint a picture of connected bottlenecks that include slow settlement processes and data fragmentation. The report also covers the current state of AI deployment in the industry. Companies surveyed in the sector report persistent structural inefficiencies: 14% of operational budgets are spent correcting manual errors, 22% of those questioned said reconciliation complexity is a significant cause of cost increases, Around 22% of respondents link inefficiencies to governance and audit risks, Nearly half of firms operate settlement cycles in excess of 60 days. Transaction volumes are projected to rise by roughly 29% in the next two years means, the report claims, and OPEX burdens are likely to rise commensurately. The report attributes this to the combination of manual processing, disparate data systems, and the transactional complexity that’s the nature of modern insurance operations. The persistence of such processes, the authors state, is despite its previous publications’ findings being in the public domain for some time. There is a gap between respondents’ expectations of what AI might deliver and implementation of the technology on the ground. The headline figure is that 82% of firms in the sector expect AI to dominate the industry, yet only 14% of companies have fully-integrated AI in their operations. Six percent of companies report no use of AI at all. What are the barriers to AI in the insurance sector? The report identifies legacy system integration, fragmented data, and limited internal expertise as the main issues companies need to address to implement AI. The issue of fragmented data affects data governance frameworks, making the latter similarly piecemeal. The report’s authors cite complex data estates in many companies as the main reason that AI deployments are constrained in the sector. Firms surveyed managed an average of 17 data sources, and a majority cite this as an issue, one that’s compounded after mergers and acquisitions. The report’s authors imply AI will affect costs and scalability positively and could address some of the issues firms experience around manual error correction and mistakes in reconciliation processes. The report suggests decision-makers could target reconciliation processes for an initial proving ground for AI, given it’s a boundary-ed, rules-based domain where automation can yield fast positive results. Any form of automation, AI or deterministic, placed on a fragmented architecture and a fractured data layer may not scale well without a rise in costs. The report highlights the potential for AI in structuring fragmented data sources, and suggests cloud-based, as opposed to in-house AI platforms may be an answer in that respect. Structural issues The dichotomy between reconciliation processes (essentially structured workflows) and disparate data sources that need manual nurturing creates complexity that’s measurable in cost and cycle times. This is a situation that persists despite a broad awareness of the issues among those surveyed. The report asserts that such firms successful in addressing the issues at a structural level will widen the performance gap. Data standardisation and governance precede scalable automation, and eventually, automation will reduce reconciliation costs. AI could address the complexity of fragmented data and software layers that rules-based automation such as RPA (robotic process automation) may not be able to address economically. The rate at which firms can resolve the data fragmentation issue is dictated by legacy technology and the overheads of day-to-day operations. The extent to which AI deployment could translate into performance gains beyond cost reduction is unclear, but if cost reduction is positive outcome enough, then addressing the structural issues affecting the insurance sector would form a solid basis for AI-powered automation. (Image source: “Scattered pieces” by Cle0patra is licensed under CC BY-NC-SA 2.0.) Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and co-located with other leading technology events. Click here for more information. AI News is powered by TechForge Media . Explore other upcoming enterprise technology events and webinars here . The post For effective AI, insurance needs to get its data house in order appeared first on AI News .
Key takeaways
- Data fragmentation and operational inefficiency are significant barriers to AI adoption in the insurance sector.
- The discrepancy between expectations and AI implementation suggests a need for cultural and technical transformation in Brazilian insurers.
- The projected increase in transaction volumes requires companies to prepare for more agile and efficient operations.
Editorial analysis
The analysis of Autorek's report reveals a concerning scenario for the insurance sector, which may have significant implications for the development and adoption of artificial intelligence (AI) technologies in Brazil. The identification of operational inefficiencies, such as slow settlement processes and data fragmentation, highlights the urgent need for modernization of the technological infrastructures of insurers. In Brazil, where the insurance sector is still maturing compared to more developed markets, overcoming these barriers is crucial for the competitiveness of local companies.
Moreover, the discrepancy between expectations regarding AI and its actual implementation suggests a cultural and technical challenge that needs to be addressed. The lack of integration of legacy systems and the scarcity of internal expertise are obstacles that may be even more pronounced in the Brazilian market, where many companies still rely on manual processes and outdated systems. Digital transformation in the Brazilian insurance sector must therefore be accompanied by a conscious effort to empower teams and restructure data governance.
The projected 29% increase in transaction volumes over the next two years also raises questions about the scalability of operations. Brazilian insurers must prepare for this growth, not only by adopting AI but also by ensuring that their operations are sufficiently agile and efficient to handle this rising demand. What is observed is that AI adoption is not just a matter of technology but a comprehensive transformation involving processes, people, and organizational culture.
Finally, the current situation in the insurance sector can serve as a warning for other industries in Brazil considering AI adoption. The need for a solid and well-structured data foundation is a prerequisite for any successful AI implementation. Therefore, companies should prioritize data organization and governance before embarking on AI initiatives to avoid the same mistakes the insurance sector is currently facing.
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