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The Growth Playbook for Lean Agency Teams

See how 10 simple workflow improvements can accelerate quoting, eliminate re‑keying, and help your agency grow and protect your book of business.

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Growth is getting harder as margins tighten and agency workflows stay manual. This eBook lays out 10 practical ways to speed up quoting, reduce re-keying, cut costly errors, improve follow-up, and help your team write more business.

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ITL Partner: bolt

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ITL Partner: bolt

bolt is the leading distribution platform for P&C insurance, uniting distributors and insurers to transform the way insurance is bought and sold.

The result is the world's largest tech-enabled exchange of insurance products, including two-thirds of America's leading insurers, helping businesses of all kinds distribute insurance, expand market reach, and meet more of the insurance and protection needs of customers.

For more information, visit boltinsurance.com.   


Additional Resources

bolt Prevention Technology launches to help home insurers reduce water damage losses

New risk prevention solution available to carriers through the bolt platform to help customers prevent water damage to homes before it becomes a claim

Read More

bolt Prevention Technology Reduce water losses with proactive prevention

bolt Prevention Technology helps insurance carriers and MGAs reduce water-related losses by integrating real-time sensor data with policy administration and claims workflows.

Read More

The Future of Auto Claims – Part 2: Operationalizing Claims for the Autonomous Era

In Part 2, we move from understanding the drivers of AV claims transformation to focusing on execution - what insurers should do to build AV-ready capabilities across their teams, technology, and operations. 

car insurance

 

 

Sponsored by: ITL Partner: PwC


ITL Partner: PwC

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ITL Partner: PwC

At PwC, we help clients build trust and reinvent so they can turn complexity into competitive advantage. We’re a tech-forward, people-empowered network with more than 364,000 people in 136 countries and 137 territories. Across audit and assurance, tax and legal, deals and consulting, we help clients build, accelerate, and sustain momentum. Find out more at www.pwc.com

The Future of Auto Claims – Part 1: Liability, Data, and the Changing Role of Insurers

In Part 1, we explore the foundational shifts that autonomous vehicles (AVs) are bringing to the insurance industry - particularly how fault attribution, liability, and claims causality are being redefined by software-driven mobility.

auto claims

 

 

Sponsored by: ITL Partner: PwC


ITL Partner: PwC

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ITL Partner: PwC

At PwC, we help clients build trust and reinvent so they can turn complexity into competitive advantage. We’re a tech-forward, people-empowered network with more than 364,000 people in 136 countries and 137 territories. Across audit and assurance, tax and legal, deals and consulting, we help clients build, accelerate, and sustain momentum. Find out more at www.pwc.com

The Road Map for Embedded Insurance

Embedded insurance is not only cutting costs but expanding the market for life, homeowners, auto, cyber and gig economy insurers.

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With over 25 years of operational and advisory insurance experience, Yuri Poletto leads the Open and Embedded Insurance Observatory and co-leads the Cyber Insurance Frontier, member-led, executive communities focused on the evolution of insurance distribution, ecosystems, and cyber risk within regulated markets.

Both initiatives convene senior leaders from across the global value chain - including insurers, brokers, tech providers, and non-insurance brands - to shape forward-looking strategies. These communities host executive plenary sessions, workshops, strategic roundtables, and research initiatives across Europe, North America, and Asia, helping market leaders navigate complexity with better-informed strategic decisions.


Paul Carroll 

Travel insurance has long been a great example of how insurance can be embedded into another process, especially buying plane tickets, but embedded insurance is moving far beyond that. What are your favorite more recent examples?

Yuri Poletto

One of the most interesting and inspiring recent examples of embedded insurance involves a Brazilian fintech called NuBank. NuBank launched an embedded life insurance proposition and achieved remarkable sales. What's particularly interesting to me is that nearly 50% of the buyers of this life insurance were first-time insurance buyers.

This is a remarkable example of how embedded insurance is not only about seamless distribution and innovation but is effectively a way to grow the market, enlarge the pie, and reduce underinsurance—which is an issue in every part of the world.

They sold 2 million policies in just a few years, and, as I said, nearly half went to first-time buyers of life insurance. 

In hearing care, a global leader in this niche provides hearing aids and comprehensive auditory services. They have been a pioneer in the space, offering embedded insurance since 2014. Today, over 200,000 of their clients in Europe protect their hearing aids through these integrated policies, ensuring peace of mind for a critical and expensive medical device.

Embedded insurance is repositioning itself from a distribution efficiency model into a model that can create markets.

Paul Carroll

Where do you see embedded insurance breaking out in the next few years?

Yuri Poletto

I see several areas. Some of these opportunities are led by digitalization of markets. For example, home insurance and households is an area where we already see some activity, but we'll see much more thanks to the growth of proptech platforms. They see embedded insurance as a clear opportunity to gain additional margins.

Telcos, particularly in Europe, are increasing their commitment with embedded insurance. In this case, they’re driven by competition. They're suffering because of low-cost competitors, so it becomes fundamental for them to retain customers, and selling embedded insurance is probably the best way to increase their chances.

Similar dynamics apply to auto insurance. We know that car manufacturers and dealers basically don't gain margins from selling the cars, but they gain margins from services. Insurance, after-sales services, extended warranties, and maintenance are a fundamental part of this.

Another area for growth is the gig economy. Today, there are niche providers of embedded insurance for the gig economy. I think we'll see more in the future because the gig economy is huge. In the U.S., nearly 40% of workers are freelancers, and they don't have access to insurance for their freelance work.

Cyber, for me, is one of the largest opportunities for embedded insurance because attaching cybersecurity and cyber protection tools has proved to be the most effective way to sell cyber insurance. 

I think we'll see lots of evolution in embedded insurance and many areas of growth. 

Paul Carroll

Embedded insurance makes sense because it reaches people when they're already thinking about potential risks, but one significant concern is customer ownership. If a bank offers life insurance to its customers, who ultimately owns that customer relationship—the bank or the insurer? If it's the bank, doesn't that put the insurer at risk of being replaced at any time?

Yuri Poletto

It’s a critical question, Paul, and frankly, the one that keeps legal teams up at night during the implementation phase. In the U.S., the hurdle isn't just "who owns the customer" but "who holds the license." Because insurance is regulated at the state level, scaling a national embedded program across over 50 jurisdictions requires a sophisticated licensing strategy. Often, the answer lies in the MGA model. By using an MGA structure, the partners can clearly define customer ownership and data rights in the contract while ensuring that the entity facing the customer, whether it’s a tech platform or a bank, is operating within the strict boundaries of state licensing laws.

The relative strength of the partners is also important. Insurers are used to being the "big guy," but when they partner with a Big Tech firm or a major retailer, they are meeting an equal. The smart way to solve this is through modular compliance: building a tech stack that can handle different regulatory requirements state-by-state, so the insurer can remain the "manufacturer" while the distributor owns the "experience" without the insurer fearing they are becoming an interchangeable utility.

We see massive volumes of this working in Europe and Asia, and it's happening in North America, too. The compliant paths exist; it’s just a matter of designing the legal and licensing "plumbing" as carefully as we design the user interface.

It can be done.

Paul Carroll 

People generally don't like to buy insurance, so they would prefer to purchase one comprehensive policy to cover everything. However, with embedded insurance, consumers are being offered individual policies when purchasing specific items like expensive watches or jewelry. What is your view on the tension between these individual policies for specific purchases and the idea of an overarching policy that would cover everything?

Yuri Poletto

That's a good point. I see it this way: Embedded insurance isn't a replacement for traditional distribution, it’s an expansion of the market. It "enlarges the pie" by reaching customers exactly at the point of need, often during significant life milestones or transactions where insurance might otherwise be an afterthought.

For example, many SMEs are chronically underinsured because the traditional broker model often struggles to efficiently handle complex risks when premiums and commissions are low. Embedded solutions bridge that gap by automating the process within the software SMEs use to run their business.

Furthermore, in the home insurance market where the comprehensive policy model is the standard, we can now integrate coverage directly into the mortgage closing process, a home maintenance subscription, or the moment a tenant signs a lease. This context-driven approach makes protection a natural extension of the purchase rather than a separate, secondary chore. Even the most comprehensive homeowners or renters policies have blind spots, like coverage limits on high-value jewelry, specialized electronics, or specific liabilities related to remote work. Embedded insurance also serves as a vital complement here, filling the gaps that a "one-size-fits-all" policy misses.

Ultimately, it isn't a battle of "one policy versus many." It’s about utility. If a customer finds a bundled policy more convenient and in line with their needs, they’ll choose it. But when a frictionless, point-of-need offer provides targeted protection, that is where the market truly grows. In the end, the most frictionless customer experience will prevail.

Paul Carroll

Back-of-the-envelope calculations suggest embedded insurance can save 15% to 25% of the first year premium on policies like life insurance by engaging customers already active in another environment. What other numbers best demonstrate the effectiveness of embedded insurance?

Yuri Poletto

This is one of the big selling points of embedded insurance, the fact that the distribution chain is simpler, with fewer intermediaries, resulting in lower commissions and lower costs for end customers. Sometimes it's true, but other times it's not. Particularly in the past, before there was more attention around this issue, B2B2C affinity insurance was sometimes sold with commissions of 70% or 80%, which didn't make it any cheaper than insurance purchased through another channel.

I have seen significant savings in commercial lines in the U.K., for example, where embedded insurance sold through SaaS companies achieved savings of up to 40% in price. I don't have particular numbers for personal lines, but I can speak to commercial lines because I've worked directly with one of the members of the observatory in the U.K.

The theory and the model are sound—once you're dealing with a brand that already has a customer base and you manage to set up a commercial agreement that works well and is streamlined, you can definitely achieve significant savings. Obviously, if you charge huge commissions, you eat into all those savings.

But I see the market moving toward more transparent settings and lower commissions. We've also seen some cases where prices are reduced thanks to profit sharing with customers. 

Paul Carroll

Technology clearly has enabled embedded insurance. Is it now as good as it needs to be, or can we expect meaningful improvements as technology continues to advance?

Yuri Poletto 

Unlike in the past, the technology for embedded insurance is mostly available today. It's no longer niche and super expensive, but mainly commodity. So the issue is not so much the availability of technology but the fact that often organizations prefer to try to build the technology internally rather than using technology that has been developed by specialists. This is a bit of a blocker.

APIs, obviously, are the key kind of technology when we talk about integration of insurance in non-insurance flows. There are a lot of enabler companies that provide these kinds of insurance services. We are already seeing a consolidation from the vendor standpoint, and we probably will see more now that capital is no longer cheap, because many enablers rely on venture capital.

Paul Carroll

This is all super-insightful. Thanks, Yuri.


Insurance Thought Leadership

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Insurance Thought Leadership

Insurance Thought Leadership (ITL) delivers engaging, informative articles from our global network of thought leaders and decision makers. Their insights are transforming the insurance and risk management marketplace through knowledge sharing, big ideas on a wide variety of topics, and lessons learned through real-life applications of innovative technology.

We also connect our network of authors and readers in ways that help them uncover opportunities and that lead to innovation and strategic advantage.

Love Was in the Air; So Were AI-Based Scams

Valentine's Day highlighted the surge in romance scams, many drawing on AI capabilities that should have insurers worried. 

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ai on phone in hand

Valentine's Day brought a flurry of reports about devastating romance scams perpetrated by organized, remarkably patient cyber criminals. 

While insurance doesn't cover these individual scam victims, they dramatize what insurers are up against as criminals become more sophisticated and tap into AI's capabilities as they go after the companies that insurers do cover. 

It's a scary sight — and may get worse.

Fortune magazine told the tales of three women who have come forward to warn others as part of their efforts to combat romance scams. They described great patience by the scammers and careful wooing; one even invested $185,000 to fool his victim.

After meeting a man on a dating site, one of the women received numerous trinkets from him — then a $100,000 check. She worried the check was fake, but it was real, and she deposited it. He then began planning a birthday bash for her on a yacht and laid out $85,000 for deposits and various purchases. He texted her constantly — she counted 20,000 text messages, in all — and asked her to pray with him daily. Eventually, he suggested she withdraw her life savings and invest in a sure-thing crypto venture, which she did. She received email weekly reports, likely generated by AI, that showed thousands of dollars of gains each time — but those were fake. She lost $1 million in savings, as well as her condo.

Another woman felt she had bonded with a man and was preparing to meet him, when he asked her to help him log into his bank account while he was abroad. He supposedly needed to pay a translator as part of a deal that would net him a $10 million payment. When the woman logged into the bank account, she saw $700,000 in cash. The next day, both were locked out of the bank account, and he said he needed $20,000 for an additional payment. Reassured by his impressive bank account, she sent him the money. He pocketed it. 

The third woman was wooed by a man who not only seemed to care for her but for her six rescue dogs. When she'd talk with the scammer on the phone, if one made noise in the background, he'd ask, "Is that Duffy? Is that Trixie?" He gradually talked her out of her life savings, as well the life insurance payment she'd received when her husband died. She was left with so little money that she she couldn't repair her air conditioner, a decision that led to a fire that burned her house down and killed all her dogs. To escape, she had to flee the house in her underwear at five in the morning, in a neighborhood where she'd lived for 42 years. 

Vox describes AI as a "force multiplier" for these romance scams, which occur all year but pick up around Valentine's Day. Someone who might have been able to run a few scams at a time pre-AI can now operate 20 or more simultaneously.

"On the dark web," Vox says, "fraudsters can purchase romance scam toolkits complete with customer support, user reviews, and tiered pricing packages. These toolkits come with pre-built fake personas with AI-generated photosets, conversation scripts for each stage of the scam, and deepfake video tools, [Chris Nyhuis, the founder of cybersecurity firm Vigilant] told me. 'The skill barrier to entry is essentially gone.'"

Richard Graham, the practice lead for financial crime at Moody's, told me these scams are becoming more ambitious. 

"Five years ago, six years ago, [scammers] were just people online, trying to get your information, get a couple bucks and move on. Now... instead of asking you for money on day one, they're building rapport. They're spending a lot of time with you to better understand who you are.... sometimes over weeks, but usually months.... It's not just a $3,000 payment they want. They want everything."

Graham says it's hard to know just how many billions of dollars a year are lost to these scammers, because the vast majority of victims are too embarrassed to report the crimes. But he says a UN report found that some 235,000 people worldwide were working in professional organizations, largely in Southeast Asia, two or three years ago to perpetrate these romance scams, and he assumes the number has grown since then. 

He says AI helps these professionals develop better scripts to use as they groom their victims. It can also can help those who aren't native English speakers to smooth out any issues with their language skills. AI certainly helps gather information from social media sites as scammers try to learn as much as possible about their marks. AI also makes it easier and less expensive to cast a wide net of messages that could begin interactions with potential victims. While the techniques used to woo victims are referred to as "love bombing," the thieves refer to their goal with a crasser term: "pig butchering."

Graham says AI isn't being used much at the moment to generate deep fakes as part of romance scams — but only because they aren't needed just yet. 

"That actually has been a surprise to me. I would have thought at this point that deep fakes would have been a much bigger problem," he said. "They are a problem, but they haven't really scaled yet, because these other scams [based on dating sites, social media and text messages] have just been so low-effort and so successful."

That's not a happy thought for cybersecurity, in general: Thieves have enormously powerful tools at their disposal — but don't even have to use them much just yet because people are still so easy to fool.

The only solution is to escalate our vigilance as fast or faster than the thieves are escalating their capabilities. The stories of corporate victims aren't as dramatic as those of the poor women Fortune described, but the financial damage is orders of magnitude greater. 

Cheers,

Paul

P.S. Graham offered a pointer for anyone who thinks someone they know might be getting courted as part of a scam. He says thieves always want to get victims into a chat app as fast as possible. That way, they don't put at risk a social profile they've spent a great deal of time crafting and won't be caught in any safeguards set up by the social site. So you can simply ask whether the person you're concerned about has any chat apps on their phone. That question won't raise hackles in the way that a statement like, "I'm worried about you," would. If the person has a chat app, you can explore further and perhaps head off a financial catastrophe. 

Epic's AI Road Map Should Concern Insurers

Epic's Microsoft-OpenAI AI stack creates compounded risk for health insurers, which have zero leverage over pricing or governance.

An artist’s illustration of artificial intelligence (AI)

Epic Systems dominates healthcare IT—over 35% of U.S. hospital market share, trusted by most major health systems, and increasingly positioning itself in the insurance/payer space with Tapestry (health plan platform) and Payer Platform offerings. If you work in health insurance and haven't heard of Epic, believe me, you will.

Founded by Judy Faulkner in 1979, Epic built its reputation on customer obsession, deep integration, and never selling out to private equity or going public. For health insurers evaluating Epic's growing footprint in claims, care management, and member engagement, this trust matters. But Epic's AI strategy introduces a dependency chain that should concern any COO or CDO betting on long-term operational transformation.

Epic's AI road map runs almost entirely through Microsoft Azure and OpenAI. Ambient documentation, predictive analytics, revenue cycle automation, clinical decision support—all built on the Epic-Microsoft-OpenAI stack. This isn't a vendor partnership; it's architectural dependency. And Microsoft just confirmed how deep that dependency runs: in its latest earnings call, they reported that fully half of Azure's AI inference load runs on OpenAI models.

For Epic customers, this creates compounded risk. You're not just betting on Epic's execution—you trust Judy Faulkner, and rightly so. You're betting on Microsoft's sustained healthcare commitment and OpenAI's organizational stability.

Microsoft has tried and abandoned healthcare repeatedly: HealthVault (2007-2019), healthcare cloud initiatives that quietly deprioritized. Healthcare represents less than 5% of Microsoft's revenue. Their actual priorities: Azure infrastructure, Office/Copilot, Gaming, LinkedIn. If OpenAI's healthcare AI underperforms or faces regulatory barriers, what's Microsoft's incentive to double down versus pivot Azure AI resources to more profitable verticals?

The OpenAI dependency may be more concerning. Microsoft has invested $13 billion for 49% ownership of OpenAI's for-profit entity, but that doesn't buy control over strategic direction, safety culture, or talent retention. OpenAI's November 2023 board crisis—where the CEO was fired for trust issues, then reinstated via employee revolt within 96 hours—revealed governance dysfunction that never fully resolved. The safety-focused board members and researchers who prioritized responsible development over shipping speed have largely been sidelined or left to found competitors like Anthropic. What remains is a growth-at-all-costs culture increasingly optimized for investor returns. Two years ago, OpenAI laughed off the notion of ads. Last month, they started running ads.

For insurers deploying AI into prior authorization decisioning, claims adjudication, clinical documentation, and fraud detection, governance matters. This isn't consumer chatbot territory where failures mean embarrassing screenshots. This is financial exposure, regulatory risk, and potential patient harm. If OpenAI faces safety incidents, regulatory sanctions, or capability degradation, Epic's AI roadmap stalls and you bear the operational consequences with zero recourse.

Then there's pricing. OpenAI's current API costs are venture-subsidized loss leaders. Post-IPO pressure or when Microsoft demands ROI on their $13 billion investment, inference pricing will spike—potentially three to five times current rates. Epic will pass these costs through as "AI-enhanced module" increases. Your negotiating leverage? Approximately zero. You're a third-order customer with no direct relationship to the entity setting prices.

Microsoft's earnings revelation—that half their AI load runs on a single vendor with documented governance issues—should trigger every Epic customer's (or potential customer's) risk management protocols. Epic has consolidated AI strategy into Microsoft; Microsoft has consolidated its AI capabilities into OpenAI. Three single points of failure, any of which could spike pricing, degrade capabilities, or shift strategy in ways misaligned with your operational needs.

When Epic comes knocking, you can trust Judy Faulkner's execution. But Epic's AI future depends on Microsoft's healthcare commitment and OpenAI's organizational stability—neither of which has a reassuring track record. The health insurers negotiating on this dependency will maintain leverage. Those that don't may find themselves funding Microsoft and OpenAI's margin expansion while paying for the privilege.


Tom Bobrowski

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Tom Bobrowski

Tom Bobrowski is a management consultant and writer focused on operational and marketing excellence. 

He has served as senior partner, insurance, at Skan.AI; automation advisory leader at Coforge; and head of North America for the Digital Insurer.   

Rising Dog Bite Claims Drive Insurance Innovation

Soaring pet liability costs push property managers and insurers to adopt data-driven screening instead of blanket breed restrictions.

Two Dogs Resting Outdoors

At least 94 million families own a pet in the U.S., yet just one in 10 rental properties allow animal companions without restrictions. In the context of a housing affordability crisis that is driving more Americans to rent, many face the inevitable question of whether to choose convenient housing or their pets.

Property managers and insurers alike face continued uncertainty around pet-related liability in this scenario. Many are left with no choice but to fall back on blanket restrictions; when lacking documentation reigns, these stakeholders operate blind.

With the average dog-related insurance claim now hitting nearly $69,000, managers and insurers can no longer afford one-time approvals or all-encompassing measures; dog bite claims specifically have risen over 48% in the past decade.

Meanwhile, communities increasingly demand both pet-friendly environments and safe, fair and forward-looking processes from their insurers.

Nuance in underwriting

Risk models rest on flawed assumptions, policies may not match real-world conditions, and when claims do arise, they depend on interpretation more than on established facts. Pet risks get obscured, and are quietly shifted to insurance carriers.

A property, for example, allows for all dogs under 25 pounds, because managers assume they pose less risk than a 100-pound Rottweiler. A tenant then signs a lease, and with them comes a Chihuahua with a long history of aggression: it has bitten humans and, once, latched onto the upper lip of a neighboring Rottweiler.

The lease insurance policy does not capture such nuance. Months later, when the Chihuahua bites a visitor, an insurance agent is contacted, and the claim is evaluated: the insurer could interpret the situation as "small dog equals low risk," or not. Without consistent and accurate record-keeping, coverage might be disputed or delayed.

Alternatively, if a blanket ban is imposed, the Chihuahua will probably still be living in the property – out of sight, until a problem occurs.

Precedents attesting to the complexity have long been set. In California's landmark 1995 Donchin v. Guerrero case, Alpha Donchin and her Shih Tzu were attacked by two Rottweilers that escaped from a rental property four blocks away, leaving her with a broken hip. The property manager denied knowing the Rottweilers even existed in his property, yet they had escaped through a damaged fence, resulting in the court ruling liability; he knew, or should have known, about his tenant's dogs and their aggressive behavior.

Risk does not need to be unknown. New approaches, including standardized pet screening, continuing documentation and compliance, data-driven risk insights, proactive mitigation measures, and risk-based insurance policies can make liabilities quantifiable.

Solutions combining pet screening with dog bite insurance are new, but very much needed. Consistency in processes can be tracked – including everything from emotional support animal verification to vaccination monitoring and document management –, flexibility poses wins for all parties involved, fast screening offers convenience, and new revenue is generated through responsible pet ownership programs and curing manual screening costs.

Why is the insurance industry lagging?

One size does not fit all. Restrictions, including banning certain breeds, sizes, weights, behavioral requirements, or vaccinations are not born from previous negative experiences, but rather indirect sources of concern. Because of a lack of information, managers and insurers alike also tend to overestimate costs associated with pets.

Bottom line, there is no way to analyze risk without getting the complete picture. In looking at pet insurance, this industry golden rule rings even truer. For too long, rentals have relied on vague and outdated restrictions that leave tenants and managers in the dark; traditional safeguards like breed discrimination are not strong predictors of a pet's behavior.

Legislation is already catching up. Last year, a Florida County Council required owners of "dangerous" dogs, excluding specific breeds but including those who had severely injured other animals without provocation more than once, to carry at least $500,000 of liability insurance. But even here, terminology like "trained to attack" or "bred for fighting" are poorly defined.

Standard homeowner policies, however, continue to provide from $100,000 to $300,000 on average in liability coverage. To mitigate this gap, stakeholders have turned to exclusion rather than innovation: blanket bans from tenants or limitations in coverage, with some carriers refusing to write insurance for renters with animals. It is now time to catch up.

Measurable pet injury liability

Accurate pet screening must be combined with liability coverage to make dog bite risk quantifiable. Teams must have access to all-encompassing systems that help verify pets, track vaccinations and documentation, manage compliance and maintain consistent records.

For example, traditional policies recognize that multi-family properties face higher liability exposure than single-family homes because of their communal components: shared walls, common areas, multiple tenants, and manager responsibility for maintenance of spaces. Yet, cases like Donchin v. Guerrero demonstrated high risk also exists by merely living in residential areas, regardless of whether tenants rent apartments or single-family houses.

Vulnerability should be analyzed individually, proactively, and consistently: pets screened singly, risks minimized both before animal companions move in and during their tenancy, and liability coverage must reflect these nuances.

There is already evidence of managers setting up these good practice pillars by setting up pet meetings prior to lease signing, for instance, but these have proved futile in many cases; pet bite claims remain alarmingly high.

Expecting stakeholders to manually follow up with pet records, vaccination requirements, and bookkeep audit-ready documentation as data becomes more granular is also increasingly unrealistic.

This is where technology, in the form of AI-powered automation, centralized real-time insights, and integrated application programming interfaces (APIs), comes into play. Such a measured approach supports premium adjustments, deductibles or coverage caps, rather than relying on traditional – and often ineffective – pet bans.

Five pillars that guide technological adoption in pet-related insurance claims:

  • Centralization: Portals that integrate pet approvals and bundled dog bite coverage reduce breed bias, ensure compliance and reduce liability.
  • Customization: Managers can set their individual pet approval criteria that align with insurance policies.
  • Automation: Streamlining of resident onboarding processes reduces staff time spent on pet approvals.
  • Derisking: Minimize liability and discrimination risk with standardized and transparent processes and records.
  • Inclusivity: Objective scoring model that reduces bias and promotes transparency.

This change in paradigm offers more than the peace of mind for managers and insurers; it also supports community-building, the promotion of longer tenancies, and better communication.

In the end, pet bite liability and provisions to support all stakeholders involved have shown the real power insurers can leverage, for the benefit and betterment of communities.

The next step, then, will come from them, as processes are smoothed out through technologies, responsible parties assume the eagle-eyed view that is now required, and seize the opportunity to move from reactive to proactive.

New Strategy for Wealthy Families

As insurance capacity tightens, high-net-worth families are prioritizing predictability over premiums and demanding more strategic advisory support.

Brown Brick House Beside Trees

For high-net-worth (HNW) families, risk is no longer concentrated in property alone. In 2026, it extends across lifestyle choices, digital exposure and public visibility, often interacting in ways that amplify loss when something goes wrong.

At the same time, the insurance market itself has changed. Capacity remains constrained in many regions. Underwriting is more granular. Terms are tighter, and exceptions are fewer. The result is a new reality for affluent households: protection is no longer about optimizing premiums at renewal. We must help our clients make thoughtful decisions around what to insure, what to retain and where to invest in prevention — long before the market forces the issue.

That shift is already visible in client behavior. According to HUB's 2026 Outlook High-Net-Worth Survey, 25% of HNW respondents remain willing to assume more risk to save on premiums, down sharply from 39% just two years ago. The priority has moved from short-term savings to long-term predictability. For insurance professionals, this marks a fundamental change in the advisory role.

Risk Appetite and the Shift Toward Predictability

The risk clients are willing to assume is shifting from premiums alone to predictability. HNW families are asking, "What level of uncertainty am I willing to live with?"

That question shows up differently across exposure categories:

Property: Higher deductibles, wildfire exclusions and water sublimits are now common. Without documented resilience, such as defensible space, water detection, roof upgrades, households can find themselves carrying more risk. Thoughtful property decisions require advisors to stress-test deductibles and exclusions against real loss scenarios.

Cyber: Homeowner policy add-ons for cyber coverage often don't respond when a household faces a six-figure wire transfer fraud, crypto theft or AI-driven impersonation. A standalone family cyber policy, modeled after business coverage, can cover a fast-moving, high-severity claim.

Reputational and Social Risk: Visibility brings vulnerability. Social media incidents, harassment campaigns or AI-generated deepfakes can escalate quickly and trigger costs that an umbrella liability policy alone rarely covers. Reputational coverage allows families to cap potential fallout with PR response, crisis management or relocation.

Across all three areas, the pattern is consistent: risk appetite directly shapes policy structure and limits, while active risk prevention is critical to securing and sustaining coverage.

Advisory Roles Are Expanding

As underwriting becomes more data-driven, HNW clients expect their advisors to do more than just place coverage. They expect a more advisory approach to help identify and translate risk decisions into underwriting outcomes.

That starts with defining risk appetite clearly and operationally. Help your clients articulate what they are prepared to retain versus what risks they wish to mitigate or transfer, then ensure deductibles, limits and specialty programs reflect those choices.

It continues with identifying and managing risk as a continuing discipline. For HNW households, exposure rarely stays static. Changes in assets, lifestyle and visibility can materially alter loss potential, often faster than coverage is updated. Effective advisors anticipate these shifts and lead reassessments when risk changes.

Common trigger events include renovations, acquisitions, new drivers, increased travel or changes in digital presence. Independent risk reviews add credibility and help surface blind spots that increasingly matter to underwriters, such as:

  • Undisclosed property changes, including major renovations or added amenities that alter replacement values
  • Household complexity, such as staff, frequent guests or multiple residences, which can introduce additional liability exposure
  • Behavioral risk, including teen drivers or high-frequency overseas travel
  • Digital and reputational exposure, from online visibility and social media activity to crypto assets, wire transfer activity or public-facing roles

Most importantly, effective advisors turn prevention into leverage. Insurers increasingly expect proof of resilience before offering additional capacity or favorable terms. Documented mitigation gives underwriters something concrete to evaluate. When risk mitigation efforts are organized and communicated well, they strengthen negotiating power and reduce disruption at renewal.

A More Thoughtful Path Forward

In 2026, the advisor is called on to build a risk strategy that holds up under tighter underwriting and faster-moving loss scenarios. HNW families need advisors who can do more than simply respond to the market. They need partners who help them define risk appetite, identify emerging exposures and translate prevention into underwriting leverage. When risk decisions are careful and well-documented, they improve access, continuity and outcomes over time.

Hidden Insurance Costs in Healthcare

Treating frontline healthcare workers as unskilled labor masks their role as primary risk drivers in workers' comp and liability claims.

 A Person Holding a Stethoscope

In the insurance world, risk is often calculated by looking at the "big" variables: hospital infrastructure, surgeon track records, and cybersecurity protocols. However, there is a hidden, systemic risk currently being underpriced by many senior executives in the health, life, and workers' compensation sectors. It is the credentialing gap at the foundational level of care.

For an insurer, a "nursing assistant" or a "home caregiver" isn't just a staffing line item; they are the primary point of risk. They are the individuals most likely to be involved in a workplace injury claim or a professional liability event. Yet, the industry continues to treat this workforce as "unskilled," creating a dangerous disconnect between actual risk and risk management.

The Workers' Comp Crisis: The Cost of Improper Training

Healthcare workers consistently face some of the highest rates of non-fatal occupational injuries. According to the Bureau of Labor Statistics (BLS), nursing assistants are at a significantly higher risk for musculoskeletal disorders compared with almost any other profession.

From a workers' comp perspective, this is a controllable variable. High-quality nursing assistant courses that prioritize proper body mechanics and patient handling aren't just "educational"—they are loss-control measures. When an organization standardizes its frontline through industry-recognized certifications, they are effectively de-risking their human capital.

Professional Liability and the "Failure to Rescue"

In professional liability and medical malpractice, claims often stem from a "Failure to Rescue." While the primary physician is the one named in the suit, the failure often occurs in the hours between doctor visits, when a patient's deterioration goes unnoticed by an untrained assistant.

For a senior insurance executive, the math is simple:

1. Uncertified Staff = Delayed detection of adverse events.

2. Delayed Detection = Higher severity of claims.

3. Higher Severity = Catastrophic losses.

By providing incentives for policyholders to implement universal first aid training and certified clinical foundations across all support staff, insurers can drive down the frequency of "unseen" errors.

Long-Term Care (LTC) and the "Aging at Home" Hedge

The long-term care insurance market is currently struggling with the rising costs of facility-based care. The best "hedge" for an LTC insurer is to keep the policyholder at home for as long as possible. This requires a high-competency home care workforce.

If the home caregiver is trained to manage basic clinical needs and early-stage triage, the policyholder avoids the expensive ER visit that often leads to permanent facility placement. Investing in the "base" of the care pyramid is, quite literally, a strategy for protecting the solvency of LTC portfolios.

The Bottom Line for Executives

We cannot manage 21st-century healthcare risk with a 20th-century view of "unskilled" labor. Senior insurance executives must begin to view frontline healthcare training not as an HR function but as a loss-mitigation strategy. By professionalizing the foundational workforce, we move from reactive claims management to proactive risk reduction. In the end, the most profitable insurance portfolios will be those that recognize that the person holding the basin is also the person holding the risk.

2026: The Year AI Goes Operational in Insurance

Insurers are moving from AI pilots to production deployment, embedding technology into underwriting, claims, and customer service operations.

An artist's illustration of AI

2026 marks a pivotal moment for the insurance industry. After years of pilots and early implementations, insurers are entering the era of real AI performance.

In 2025, insurers built the foundation for responsible adoption through governance, proofs of concept, and hands-on experience in regulated workflows. These efforts prepared the industry to scale with structure, clarity, and confidence.

At Roots, this shift is already visible. In 2025, internal data showed a 68% increase in AI inquiries and more than 40% growth in deployed AI agents, signaling a clear move from experimentation to execution.

In 2026, AI becomes a trusted operational capability. Insurers that succeed will combine governance, cross-functional collaboration, and workforce enablement to deliver measurable results.

This is not about learning AI. It is about leading with it.

From Insurance AI Readiness into AI Reliance

In 2025, many insurers focused on exploration by testing use cases, establishing governance, and validating early pilots. While these efforts were not broadly scaled, they created clarity around where AI delivers value and how it can be integrated responsibly.

That foundation now supports a new level of maturity. In 2026, insurers will be moving from AI readiness to AI reliance, embedding AI into core operations such as submission triage, loss run processing, claims evaluation, and customer service.

Industry events like ITC Vegas highlighted this shift. The growing number of AI vendors reflected strong demand for efficiency and growth, but the message was clear: partner selection matters. For insurers not building AI internally, rigorous vendor validation is critical. The right partner must deliver measurable results, scale with the business, and align with governance and compliance expectations.

This trend was reinforced by the Roots 2025 State of AI Adoption in Insurance report. While over 90% reported exploring or testing AI, only 22% had fully deployed solutions in production. The gap between pilots and scale remains significant, and 2026 is when carriers will begin to close it.

What Separates Leaders from Learners

The difference between insurers still experimenting and those embedding AI across the enterprise is becoming clearer. It lies in how AI is organized, governed, and led.

  • Executive Ownership
    • Transformation starts with visible leadership commitment. Leading carriers establish AI steering committees with oversight from operations, risk, and technology leaders to ensure alignment with strategy, compliance, and long-term objectives.
  • Cross-Functional Governance
    • Effective governance goes beyond technical approval. It establishes clear standards for organizational AI use, including employee use of public models, to ensure transparency, oversight, and responsible adoption.
  • Workflow Fluency and Talent Integration
    • Successful deployment will start with clear workflows and measurable objectives. As retirements outpace new talent, leading insurers will redesign roles early to prioritize judgment, compliance, and strategic work, with human oversight central.
  • Measured Scaling
    • Scaling AI does not mean deploying everywhere at once. Successful insurers move proven pilots, such as loss run processing or FNOL triage, into production only after accuracy is validated and workflows are stable.

AI leadership in 2026 will be defined not by more pilots, but by the discipline to scale what works.

Culture Over Code: Insurance AI Lessons from 2025

In 2025, insurers learned that responsible AI adoption depends on trust, transparency, and governance, reinforced by education and continuous feedback.

  • Trust comes first: Models that lacked transparency struggled to gain adoption. Explainability, not speed, proved essential.
  • Governance builds confidence when employees understand and trust it: Clear, reinforced frameworks enable adoption rather than friction.
  • Human adoption drives ROI: Change management and AI literacy delivered faster adoption and better accuracy than technical deployment alone.

For insurers preparing to scale, these lessons show what to expand. AI adoption succeeds through culture, not technology.

Executive Insurance AI Priorities for 2026

The groundwork laid in 2025 now demands results. In 2026, the focus will shift from exploring AI's potential to proving consistent, responsible performance at scale.

  • Move from vision to execution by translating strategy into measurable outcomes across underwriting, claims, and service operations.
  • Expand governance beyond model development to include employee usage, data handling, and ethical oversight.
  • Prepare the workforce before deployment by clearly communicating change and redesigning roles to emphasize human judgment and relationships.
  • Prioritize adoption over tools. AI succeeds when employees trust it, which requires literacy, training, and structured feedback between people and AI agents.
  • Measure what matters, including accuracy, turnaround time, compliance, and customer experience. In AI deployments where organizations embedded KPIs, ROI was achieved within six to nine months.

AI leadership in 2026 is about scaling strategically, proving performance, protecting trust, and preparing people for what comes next.

The Year of Operational Intelligence

Insurers that succeed in 2026 will treat AI as infrastructure, not a tool, embedding it across the organization. AI will strengthen human judgment while improving speed, data quality, compliance, and customer experience.

2026 is the year AI shifts from pilots to production. Success will require clear performance measurement and alignment with transparency, explainability, and fairness expectations.

In 2026, carriers that align governance, workflows, outcomes, and people move from readiness to reliance by scaling confidently and leading with intelligence and integrity.


Diane Brassard

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Diane Brassard

Diane Brassard serves as head of education and advocacy at Roots

Before joining Roots, she held senior roles at WR Berkley and leadership roles at Colony Specialty (Argo Group). She spent over two decades at The Main Street America Group.