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The Blind Spot in AI-Driven Loss Prevention

Insurers deploy AI-driven tools to monitor and manage risks but lack systematic visibility into how well maintained the underlying assets are.

Futuristic

The commercial insurance industry is moving decisively toward prevention. Insurers are building AI-driven risk detection, deploying IoT sensors, expanding telematics, and investing heavily in predictive models. The shift from reactive claims management to proactive loss mitigation is real and accelerating.

But every insurer building this infrastructure has a critical blind spot. They can predict what's about to happen. They cannot see what's already true about the physical assets being protected. And more importantly, they lack the systematic tools to translate what they see into consistent operational action.

Consider what an AI risk model does. It ingests historical claims, property details, location risk, and weather patterns. It learns from what happened before and projects forward. Yet the current condition of the physical assets being protected remains invisible to most insurance partners. This gap creates operational risk that detection tools cannot address.

This is not a technology problem. It is a data architecture problem. And proactive loss mitigation cannot reach its full potential without resolving the problem.

The critical question is not whether insurers should invest in prevention. The question is whether their prevention infrastructure can see the complete picture of what they are trying to prevent, and more importantly, whether they have the systems in place to act on what they see. For most organizations, the answer is no on both counts. And that gap represents genuine competitive and operational risk.

What the Ecosystem Actually Sees

Over the past 18 months, insurers have deployed detection systems across their risk infrastructure. AI flags suspicious claims patterns in real time. IoT sensors predict equipment failures. Fleet telematics capture driving behavior and collision risk. Cyber risk platforms assess vulnerability across supply chains. Risk models increasingly incorporate climate data and weather prediction.

These investments reflect the industry's conviction that early detection reduces claims. Carriers combining AI modeling with proactive policyholder engagement demonstrate measurable improvement in both frequency and severity.

But one layer sits beneath all these systems and determines their effectiveness. That layer is the baseline operational condition of the physical assets being protected.

The evidence is immediate. More than half of U.S. commercial properties are over 40 years old. Deferred maintenance on aging infrastructure increases the likelihood that localized damage escalates into broader systemic losses. A foundation in poor condition amplifies structural risk during weather events. A parking lot with deferred maintenance creates slip-and-fall liability. Plumbing systems past their service life increase mold exposure. Fire alarm systems lacking routine testing create coverage gaps. This is the data that most powerfully predicts loss. Yet it remains fragmented, often tracked manually in spreadsheets or sticky notes at the property level if tracked at all, and crucially, not connected to the operational decisions that actually reduce risk.

The result is fragmented visibility with no systematic action. Insurers see behavioral risk through telematics and claims analysis. They see environmental risk through weather modeling. They do not see operational risk systematically, which is the baseline condition determining how much damage those other factors will cause. And even when property-level operational data exists, it is not connected to the loss control decisions, underwriting actions, and policyholder engagement that actually improve conditions.

The Research Confirms the Gap

Detection tools are most effective against acute risks that develop in real time. Weather events, for example. But many damaging claims develop across months or years as deferred maintenance converts latent conditions into active exposures. An insurer with sophisticated cyber detection still has exposure if firewall hardware is past its service life. A carrier with excellent telematics still has exposure if vehicles lack routine servicing. An insurer with perfect weather prediction still has exposure if the foundation being protected is already compromised.

Research quantifies this exposure. The American Society of Civil Engineers estimates that $9.1 trillion in investment is required across all infrastructure categories to reach a state of good repair, with a current funding gap of $3.7 trillion. This includes substantial deferred maintenance backlogs across federal buildings, municipal infrastructure, public schools, state universities, and public housing.

Verisk found that properties with poor roof condition sustain 50% more damage during severe weather. Public schools alone are facing an estimated $270 billion in needed infrastructure repairs, with the average school building nearly 50 years old and only 10% of education spending directed toward facility upkeep. Commercial auto claims severity increased 94% between 2015 and 2024, driven partly by advanced vehicle technology requiring specialized maintenance.

In commercial real estate, condition visibility directly affects underwriting outcomes. Two buildings in the same ZIP code can receive very different insurance terms depending on how seriously owners maintain critical systems like roofs, HVAC, parking surfaces, and electrical infrastructure. In each case, the gap between detection capability and actual loss is determined by operational condition. Without visibility into that condition, insurers cannot fully predict or prevent losses, regardless of how sophisticated their detection tools are.

From Visibility to Action to Measurement

The complete loss prevention infrastructure has three related dimensions.

First, the visibility layer:

Maintenance work order history such as what has been done, when, and by whom across every property. Equipment and asset condition scores like compressors running beyond service intervals, roofs past their rated lifespan, HVAC systems out of compliance. Compliance and inspection records like safety certifications, code inspections, regulatory documentation.

Together, this data answers the foundational question for underwriters and risk managers: What is the current operational state of the assets being insured?

Second, and critically, the action layer:

Visibility without action is static data. The solution requires systematic tools to translate operational insights into decision-making at three critical points. Loss control teams must be able to deliver risk-specific recommendations directly into maintenance workflows, not as a report reviewed quarterly, but as prioritized guidance integrated into daily operations. An asset owner needs to know not just that their roof is past rated lifespan, but that specific roof replacement is the highest-priority item to prevent weather damage and in what timeframe it should occur. Underwriters and pricing teams must integrate condition data into underwriting decisions and pricing models, adjusting rates based on observable maintenance behavior and current asset condition. Claims teams must establish feedback loops to measure whether maintenance interventions actually prevented losses or reduced severity.

Without this action layer, visibility becomes information without impact. With it, visibility becomes operational intelligence.

Third, the measurement layer:

The complete solution requires insurers to measure whether their loss prevention interventions actually worked. Which properties took recommended maintenance action? Did claims frequency or severity actually decline in those properties? What was the ROI? This feedback loop is what distinguishes insurers managing portfolios with data-driven insight from those managing individual properties without systematic measurement.

When an insurer combines condition data, IoT signals, behavioral data, environmental modeling, claims data, and the systematic tools to act on it all at scale, the result is genuinely predictive and preventive infrastructure. They see not just statistical risk but operational risk. The insurer identifies the specific properties where aging infrastructure, deferred work, and emerging environmental factors intersect. They deliver specific guidance into maintenance operations and measure results.

Building for Regulatory and Competitive Advantage

Insurance is shifting in one clear direction. From managing claims to managing risk. From indemnifying losses to preventing them. From annual renewals based on history to continuous engagement based on predictive modeling.

Condition intelligence is not a new strategic direction. It is the missing operational layer in the direction the industry is already committed to.

This distinction matters in 2026 for a specific reason. As regulatory focus on AI governance intensifies, insurers relying solely on opaque algorithmic predictions face increasing scrutiny. State regulators through the NAIC have adopted AI governance standards and are piloting evaluation tools to assess how insurers use and manage algorithmic systems. Insurers with transparent, explainable underwriting models backed by observable condition data will be better positioned to demonstrate governance maturity and operational capability at scale.

Beyond regulatory scrutiny, this operational discipline directly affects financial standing. Credit rating agencies increasingly evaluate deferred maintenance backlogs as a component of municipal and school district credit risk assessment. A large, undocumented, or growing deferred maintenance backlog signals fiscal management weakness and represents an unfunded liability. The insurer that has built longitudinal condition data and the operational partnerships required to act on it will have moved beyond competitive advantage into operational necessity. When loss margins compress and premium growth decelerates, managing loss at scale becomes essential to defending profitability. Insurers with visible, measurable infrastructure for operational condition, systematic action, and verified outcomes will have the advantage of scale. Those without it will struggle to keep pace.

Those who build this infrastructure will have both defensible competitive advantage and the operational discipline required to survive margin compression. The differentiation is not about speed to market or technology adoption. It is about building the observable, systematic, measurable infrastructure for loss prevention. That foundation matters now, and the gap between insurers who have it and those who do not will only widen.

Sources

Jon DeWald

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Jon DeWald

Jon DeWald is CEO and co-founder of HelixIntel, a shared platform connecting insurers with the maintenance teams they support. 

 DeWald spent over a decade building property services and equipment management companies before founding HelixIntel.

Report: U.S. States' Fiscal Outlook Is Stable

But Conning's latest State of the States report finds greater divergence as post-pandemic momentum fades and structural regional differences deepen.

Open atlas map of the states in the United States

Conning maintains a stable outlook for U.S. states in 2026, reflecting continued balance sheet strength and generally prudent fiscal management across, even as operating conditions become more challenging.

South Dakota rose 17 places to first overall, while Utah maintained its second place position. Tennessee took third place over North Carolina this year, while Texas moved up six places to fifth overall. These states benefit from sustained in-migration, competitive cost of living profiles, and comparatively strong balance sheets on the liability side, supporting greater fiscal flexibility. South Dakota additionally benefited from strong personal income, GDP, and house price index (HPI) growth.

Fundamentals continue to favor the Plains, Mountain West, and parts of the South, where our rankings benefit from population inflows, diversified economic growth, comparatively low cost structures, and strong balance sheets. Top states are outperforming due to a combination of disciplined fiscal management, resilient labor markets, and favorable demographic trends.

By contrast, performance is more mixed in the Northeast and parts of the West Coast, where higher costs, slower population growth, and other structural pressures weigh on relative rankings. The lowest‑ranked states are similarly clustered among those facing persistent demographic, economic, and fiscal constraints, including weak population trends, elevated cost burdens, and limited fiscal flexibility.

While year-to-year movement occurs, the bottom tier continues to reflect longer-term structural pressures or cyclical weakness. West Virginia fell three spots to 50th overall. Maryland (49th), California (48th), and Rhode Island (47th) each experienced declines of 27, 17, and 21 places, respectively. Louisiana improved modestly to 46th place, up four spots in this year's report.

Ranking movements were more pronounced in 2026 than in our 2025 report. A total of 23 states moved 10 or more positions year‑over‑year (YoY), compared with 21 last year, and 11 states saw a shift of more than 20 positions versus just six in the prior period, despite no changes to our methodology.

Our framework, updated last year, incorporates cost of living and catastrophe losses per capita to better capture affordability pressures and climate-related risks. The wider dispersion observed in 2026 reflects the fading of the post‑pandemic period of broadly strong performance, as revenue growth moderates, migration slows, and widening differences in cost structures and balance sheet positioning translate more directly into relative ranking outcomes.

For the full report from Conning, click here.


Karel Citroen

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Karel Citroen

Karel Citroen is a managing director of municipal research at Conning and currently serves on the Governmental Accounting Standards Advisory Council (GASAC), where he represents the insurance investment community. 

Prior to joining Conning in 2015, he was in municipal portfolio surveillance with MBIA and previously was a banking and securities lawyer for financial institutions in the Netherlands. 

Citroen earned a law degree from the University of Amsterdam, an MBA from Yale University, and an LL.M. in governance, compliance and risk management from the University of Connecticut. He is a member of the National Federation of Municipal Analysts.

An AI-Driven Jobs Apocalypse? Yeah, Maybe Not

Even as companies lay off tens of thousands of workers and cite AI-based efficiencies, it's becoming clear that fears of a jobs apocalypse have been overstated.

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Fired from Job

With major companies such as Meta and Amazon announcing huge layoffs that they tie to the efficiencies AI is making possible, you might be thinking that you, too, should be looking to cut head count. 

Maybe belay that thought, at least for the time being.

Many of the layoffs actually stem from a whole series of factors, even if companies choose to use AI as the blanket explanation. Meanwhile, economic data suggests that AI has not led to widespread job cuts, and companies are increasingly reporting great successes by using AI to make employees' jobs easier and to enhance customer service.

Insurance, as the ultimate digital industry, stands to benefit from generative AI's efficiencies as much as any, but let's look at what's realistic and what isn't.

Elon Musk said earlier this year that AI will take on so much work that in 10 to 20 years jobs will be optional. If you don't want to work, you can just sit at home and let the AI and the money it generates take care of you. But Musk says a lot of things, including that he would land humans on Mars by 2025 and have them start building a colony for 1 million people and that he would have 1 million fully autonomous robotaxis on the road in 2020. (The total currently stands at two or three dozen.) 

Meanwhile, OpenAI CEO Sam Altman has retracted his claim that generative AI will massively reduce the number of entry-level jobs, and Anthropic CEO Dario Amodei has withdrawn his prediction that AI would eliminate 50% of white-collar jobs. Amodei now says, “If you automate 90% of the job, then everyone does the 10% of the job. And the 10% kind of expands to be 100% of what people do and kind of 10-times their productivity.”

In "A Reality Check on the AI Jobs Hysteria," the MIT Technology Review reports that "there’s scant evidence that AI has yet had any large-scale impact on the US labor market. Analysis of the data gathered for the US Bureau of Labor Statistics (BLS) shows that the unemployment rate for the jobs potentially most affected by AI is actually lower than that for occupations less exposed to the technology. And, critically in the mind of economists, there are no signs that large numbers of people are shifting from jobs threatened by AI to supposedly safer ones, such as those involving mostly manual labor."

Why, then, are so many companies announcing job cuts related to efficiencies they're achieving with AI? In my experience, companies will always glom on to a convenient excuse when announcing bad news. Even a flimsy excuse is better than saying, "We screwed up." 

But many companies did screw up. Lots hired too freely as the economy rebounded post-COVID. Some are just poorly managed, because there are always companies that are poorly managed. 

An article in the New York Times, "Is AI Replacing Tech Workers or Providing an Excuse for Job Cuts?", provides any number of examples of companies using AI as a cover story for layoffs. Meta is my favorite. As a columnist in the Times put it, "From 2021 to 2026, [CEO Mark Zuckerberg] poured $80 billion into the Metaverse in the firm belief that we would all want to don headsets and hang out in a virtual world populated by legless avatars." That flop [predicted here, in 2021, I note immodestly] is why he's having to cut 10% of his work force — but he hopes to save a little face by citing AI.

None of this is to say generative AI isn't have a massive impact. It is. Legendary venture capitalist John Doerr recently told the Wall Street Journal that AI is "underhyped." Doerr, 74 years old, said AI is the biggest of all the tech tsunamis he's seen in his long career.

The gains are, at least as of now, showing up in improvements in efficiency and service — and even in new types of jobs. 

Box, which makes software for storing and managing data, created 13 new kinds of roles, with titles such as AI architect, AI solutions manager and AI platform leader. The New York Times reports: "With the proliferation of these positions, Box expects to have more than 3,000 employees by early next year, up from 2,900 at the start of this year."

Schneider Electric made its call centers and manufacturing facilities more productive, without eliminating workers. Costco, Delta and IBM did much the same.

Insurers are already seeing major opportunities for efficiencies in gathering documents and triaging cases for claims representatives and underwriters, and companies are moving toward AIs that provide recommendations and can act as agents, or at least produce drafts of communications and reports for humans to review. Insurers are seeing great opportunities for AI to handle routine inquiries from customers and to provide at least rudimentary service during off hours. And much more.

Insurers should continue to pursue all available opportunities and think big about what breakthroughs might be out there via AI but, at least for now, should focus on removing the burdens on employees and enhancing customer service and not on reducing head count.

Cheers,

Paul

P.S. After writing this commentary last night, I woke this morning to find that the New York Times had done a long analysis of all the promises Musk has made over the years and failed to meet, including the ones I mentioned about colonizing Mars and filling our streets with his robotaxis. They counted 602 goals he set and found he achieved them less than a fifth of the time.

P.P.S. Finally, here's a wild AI story from the You Can't Make This Stuff Up Department: "Book on Truth in the Age of A.I. Contains Quotes Made Up by A.I."

June 2026 ITL FOCUS: Internet of Things

ITL FOCUS is a monthly initiative featuring topics related to innovation in risk management and insurance.

Internet of Things

FROM THE EDITOR

Clever, lazy college students pioneered the Internet of Things all the way back in 1982, rigging a vending machine so they could monitor whether sodas were available and cold. Today, the IoT is saving lives and transforming the insurance industry.

The IoT has moved well beyond novelty gadgets and smart thermostats — it's now at the heart of a fundamental shift in how insurers think about their role. Rather than simply paying claims after tragedy strikes, forward-thinking carriers are embracing a Predict & Prevent model, using connected devices to stop losses before they ever happen.

No one embodies that shift more compellingly than Bob Marshall, co-founder of Whisker Labs and the creator of Ting — a small device that plugs into a wall socket and detects the electrical arcing that causes tens of thousands of home fires each year just in the U.S. What started as a deeply personal mission after his sister-in-law's house burned down in 2015 has grown into a partnership with nearly 40 carriers, with Tings now installed in approximately 1.4 million homes and counting.

But Marshall's story isn't just about a remarkable piece of technology. It's about what it actually takes to bring an IoT innovation to scale in a conservative, data-driven industry — the patience required to satisfy actuaries, the importance of aligning business model incentives across all parties, and why simplicity can make or break consumer adoption. He's candid about the headwinds and equally enlightening about what's working. 

Read the full interview to find out how Whisker Labs is racing to get Ting into tens of millions of homes — and what the journey reveals about the future of IoT in insurance.

 
 
An Interview

The IoT in Insurance: From Watching Coffee Pots to Preventing Fires

Paul Carroll

I’m often intrigued by how far back the roots of innovation go. For instance, we know that automobiles trace back to at least the 1770s, because the first auto accident was recorded in 1771; a Frenchman hooked a steam engine to a cart and crashed into a wall.

 As for the Internet of Things, our ITL Focus topic for this month: Some students at Carnegie Mellon rigged a vending machine in 1982 so they could monitor whether it had sodas available and whether they were cold. In 1993, students at the University of Cambridge pointed a camera at a coffee pot and got it to send a live feed to their computers so they could see if coffee was available without having to walk over to the coffee station. 

Those IoT examples say something about how clever students can be about being lazy, but I’m more interested in what they say about adoption curves. The IoT is avant garde these days, yet its roots trace back more than four decades. 

You’ve become the poster child for the Predict & Prevent model for insurers, based on your innovations with the IoT that led to the Ting sensor that plugs into a wall outlet and detects electrical problems. You’ve done the research and shown that you can prevent so many fires that dozens of major carriers are giving Ting to customers at no cost. But you still face headwinds. 

What can you tell us about the headwinds that IoT innovation faces and about how you’re overcoming them?

Bob Marshall

I would probably qualify the notion of headwinds or challenges. We're distributing roughly 50,000 Tings a month, and by many measures that would be considered extraordinarily successful.

We want to go faster—not just for business reasons but because we're trying to have an impact on homes, families, communities, and society. If we can get Ting into tens of millions of homes, we will be able to help prevent electrical fires, protect families and prevent loss at an even greater scale. Still, we’re approaching 1.4 million homes with Ting today.

read the full interview >
 

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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.

The IoT in Insurance: From Watching Coffee Pots to Preventing Fires

Bob Marshall, CEO of Whisker Labs and the poster child for Predict & Prevent, explains what it takes to bring an IoT-based innovation to a conservative, data-driven industry.

An Interview with Bob Marshall

Paul Carroll

I’m often intrigued by how far back the roots of innovation go. For instance, we know that automobiles trace back to at least the 1770s, because the first auto accident was recorded in 1771; a Frenchman hooked a steam engine to a cart and crashed into a wall. 

As for the Internet of Things, our ITL Focus topic for this month: Some students at Carnegie Mellon rigged a vending machine in 1982 so they could monitor whether it had sodas available and whether they were cold. In 1993, students at the University of Cambridge pointed a camera at a coffee pot and got it to send a live feed to their computers so they could see if coffee was available without having to walk over to the coffee station.

Those IoT examples say something about how clever students can be about being lazy, but I’m more interested in what they say about adoption curves. The IoT is avant garde these days, yet its roots trace back more than four decades.

You’ve become the poster child for the Predict & Prevent model for insurers, based on your innovations with the IoT that led to the Ting sensor that plugs into a wall outlet and detects electrical problems. You’ve done the research and shown that you can prevent so many fires that dozens of major carriers are giving Ting to customers at no cost. But you still face headwinds.

What can you tell us about the headwinds that IoT innovation faces and about how you’re overcoming them?

Bob Marshall

I would probably qualify the notion of headwinds or challenges. We're distributing roughly 50,000 Ting sensors a month, and by many measures that would be considered extraordinarily successful.

We want to go faster—not just for business reasons but because we're trying to have an impact on homes, families, communities, and society. If we can get Ting into tens of millions of homes, we will be able to help prevent electrical fires, protect families and prevent loss at an even greater scale. Still, we’re approaching 1.4 million homes with Ting today. 

What's driven the success, I would say, is the clarity of the mission. Customers worry about fire. They don't want their house and their family to ever have to deal with a fire. When we can communicate Ting’s value proposition to the homeowner, they adopt it enthusiastically.

The challenge when it comes to Ting is that it's a new category. It's a device and a service that nobody's ever had before. 

People recognize that you need multiple smoke detectors in your house, you've got to replace the batteries, and every 10 years you're supposed to replace the smoke detectors. But when we first describe Ting to a customer, it’s not something they know they need. So we have to build that awareness.

When we do a brand awareness survey of the U.S. population and ask if they're familiar with Ting, this thing that can prevent electrical fires in your home, less than 2% of people are going to say they're aware of it.

This year, we're going to make a pretty substantial investment to build brand awareness of Ting. When one of our carrier partners sends an email campaign to their homeowners asking them to get Ting, we want people to be more likely to say, "Oh yeah, I've heard of that, and I want it."  

Paul Carroll

Simplicity is a significant advantage for Whisker Labs. I’ve seen lots of innovations fail because companies assumed that the benefits they delivered were so great that consumers would be willing to jump through a few hoops. They almost never will. But when I got my Ting, I just plugged it into the wall and scanned a QR code to download the Ting app and enable notifications if you ever detect problems. Took me maybe a minute… and I’m technologically challenged.

Bob Marshall

100%. We've been focused on that from day one. The connected home and IoT became very significant about 15 years ago, but a lot of the early IoT sensors required too many devices, too many batteries, and the apps and UX were clunky. Anything that is not simple for the homeowner is not going to scale. It just won't.

If you go back 10 years or so, even if somebody signed up for an IoT device, only maybe 30% of people installed it. The economics were broken. Somebody paid for all that hardware to get shipped, and 70% of devices never got plugged in, so there's little loss prevention.

Batteries are an issue, too. If you power a device with a battery, you have to replace it after a few years. Are people going to remember to replace the battery? If they don't, the economics get all wrecked. We paid for getting hardware in, and the service has stopped.

By contrast, 85% to 90% of Ting sensors get installed, and there's no battery. The sensor will last 15 years or longer without needing anything to be replaced.

Paul Carroll

Where did you get the idea for Whisker Labs?

Bob Marshall

The impetus for the idea came from Earth Networks, where I was a cofounder. We were an IoT sensor company deploying weather and climate sensors, connecting them to the internet, and collecting massive amounts of data. We provided that data to NASA, NOAA, utilities, and insurance companies. We had a lightning detection network.

Then my sister-in-law's house burned down in 2015. They lost their entire house and a pet to an electrical fire. I didn't know anything about electrical fires at the time, but when you research them you learn they start from loose connections and damaged wires that arc and spark.

Lightning is essentially a big spark in the sky, and we had really sophisticated sensors that could measure every lightning strike on the planet. So I challenged our chief scientist, chief technology officer, and lead engineer: Why can't we take that global lightning detection technology, miniaturize it, and detect these tiny sparks that cause home fires?

We started work in 2016. It took us the better part of two years, incubated as a skunkworks project inside the old company. We incorporated Whisker Labs in September 2017 after we'd figured out a technical solution.

This is a life safety product, so it had to be completely proven. We did substantial testing in thousands and thousands of homes before we made Ting available to the public in early 2020.

Paul Carroll 

There’s a seminal book, “Crossing the Chasm,” by Geoffrey Moore, that is still much-read in Silicon Valley even though it came out in the early 1990s. It notes that lots of companies attract early adopters who are fans, maybe even fanatics, but never cross the chasm to a mass market. When you thought about crossing the chasm, did you target insurance companies, go direct to consumers, or do both?

Bob Marshall

Insurance only. There have been a couple of successes that took the direct-to-consumer approach—Nest and Ring—but then you've probably got 100 companies that failed. It takes too much money to market a new product to consumers and get the widespread adoption needed to make the business work.

So we elected to go insurance first, particularly given that fire is an important issue for carriers. It's a big loss category.

Obviously, carriers wouldn't deploy the Ting technology until they had seen full testing of it. So we deployed with a number of insurance companies. We went to employees. We went to agents. We deployed to their labs, and we did a couple years of extensive testing before our insurance carriers would offer it to their actual customers.

Paul Carroll

You've now commissioned research that demonstrates that the savings from fire prevention are significantly greater than the cost of deploying Ting. But in the early days, how did you move beyond test projects with insurance companies?

Bob Marshall

Insurance companies are obviously very conservative by nature, and actuaries understandably want comprehensive historical data before they're comfortable endorsing new technologies. So how do you get there? We were fortunate to have partnerships in place with people who believed in what we were trying to do and the mission. They were very much committed to the mindset of moving toward Predict & Prevent, and they were willing to make the investments to make that happen.

Now we've got ample data to document the performance of the technology. We know that customers love it. We know that customers stay with their insurance carriers longer when they're provided Ting. We cobrand the experience, and we know engagement is high. So we check all the boxes.

And the way we've structured our partnerships—I think this is super important—is something that wasn't done in the earliest days of IoT in insurance. Early on, the business models weren’t aligned. Companies selling prevention technology to insurance carriers were satisfied with selling the hardware. If you got an insurance carrier to buy 100,000 water sensors, that was a big win. The sellers didn't necessarily care whether customers plugged them in or not or prevented any loss.

Our partnership model is solely focused on the service, as opposed to the hardware. We only get paid if the sensors are plugged in and providing the service. It's on us and the partnership to make sure customers are plugging in Ting, it's staying online, it's preventing fires and doing good. 

It's critical to make sure the interests of all parties in our partnership are aligned.

Paul Carroll

How do you get from 1.3 million or 1.4 million homes to the tens of millions you want to reach?

Bob Marshall

We launched the product commercially in March 2020, which was terrible timing, as COVID shut everything down for a year or two, but progress is now pretty steady.

Nationwide is a good example. They were already at 80,000 homes and recently committed to putting Ting in 500,000. That's a sizable percentage of their home book. And that's because they know it works, they know it prevents losses, and their customers love it.

We’re working with almost 40 carriers today, and they probably cover 60 million to 70 million homes in the U.S. If we got every one of our insurance carriers to put Ting in just 25% of their book, that’s at least 15 million homes.

That's why we're investing in marketing to build brand awareness and make it easier for carriers to get their customers to adopt Ting. We're working on incentive programs to engage agents so it's not just the corporate part of the carrier motivated to get it out.

Paul Carroll

Thanks, Bob. I always feel better after we talk.

About Bob Marshall

Bob Marshall Headshot

Robert Marshall is the founder and CEO of Whisker Labs. Whisker Labs, a spinout of Earth Networks, delivers next-generation home energy intelligence technology to realize the full potential of the connected home.

In 1992, Marshall co-founded AWS Convergence Technologies, the company that would become Earth Networks, by pioneering the networking of weather sensors and cameras using the internet. By developing groundbreaking technology to find "signals" — valuable, meaningful intelligence — in big-data "noise," Marshall improves people's lives and protects their livelihoods. 

He has appeared on CNN, BBC World News and ABC Nightly News and has been quoted in major news outlets that include the New York Times, the Washington Post, Nature and Scientific American.


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.

AI Exposes Gaps in E&O Coverage

Autonomous AI systems are outpacing legacy tech E&O policies, exposing businesses to uninsured algorithmic accountability risks.

E&O Insurance

"AI will not replace humans, but humans who use AI will replace those who don't."

Whether or not you agree with that sentiment from Sam Altman, the implication is undeniable: Yet as businesses embrace AI, a precarious gap has opened between its capabilities and the insurance frameworks designed to protect organizations in light of this technology.

The Breakdown of Legacy Tech E&O

The P&C industry has long relied on tech E&O for risk mitigation when it comes to digital services. But these legacy policy forms were largely built for a software era where human error was the main culprit. There was a relatively clear trail of accountability, and a failure typically meant a system crash or a coding bug.

Today, we see autonomous agents making decisions that result in financial loss. Dynamic, self-learning algorithms are making questions of liability much more complex. New rules are being written seemingly in real time.

Take the Air Canada example – perhaps one of the highest-profile instances of AI E&O. Back in 2024, the airline's chatbot hallucinated a policy offering retroactive bereavement refunds. When the passenger tried to claim the refund, Air Canada refused, arguing that the chatbot was a separate legal entity, responsible for its own actions.

A Canadian tribunal rejected this defense, saying that a company is responsible for all information on its website – whether it is delivered by a web page, or an automated agent. "The AI said it" was not a legal defense.

There has been a distinct rise in grey-zone liabilities like this – risks that don't fit neatly into the buckets of a standard data breach or a traditional professional error. Consider issues such as algorithmic bias, data poisoning, and technology-driven discrimination. These risks often fall in the cracks between cyber exclusions and professional liability triggers.

For brokers and insured businesses, this gap creates dangerous exposure to a new class of litigation where policy language simply hasn't kept pace with technology.

Same Regulations, New Litigation

The idea of "cyber risk" itself is evolving thanks to the impact of AI. Where it was largely about data privacy in the past, businesses today also need to think about algorithmic accountability.

One of the most striking examples is how the Americans with Disabilities Act (ADA) is being used as a tool for technology litigation. For example, if an AI-driven hiring tool or a financial services algorithm inadvertently discriminates against a protected group, the resulting legal challenge can be seen as a violation of professional standards and statutory law.

Workday came up against this in 2025, facing a massive class-action lawsuit (Mobley v. Workday) that alleged its AI-based screening tools discriminated against applicants based on race, age, and disability.

This case showed that blaming a technical glitch isn't legally defensible. When technology begins to make decisions that affect human rights and equity, an error is ultimately a failure of governance – it's people that are ultimately liable.

Traditional E&O policies often focus on language such as "failure of technology to perform." This wording doesn't handle socially-driven technical failures.

From Risk Transfer to Integrated Resilience

For the P&C market to remain sustainable and relevant, we can't just be reactive. Digital innovation now happens so fast that by the time a claim is filed, the underlying technology has likely already iterated several times over. New technological uses for AI are emerging every day.

To meet this moment, the insurance industry must pivot to an integrated resilience framework – a ground-up re-engineering of policy language that addresses the reality of modern autonomous systems.

This requires a shift from simple risk transfer to a "predict, prevent, and insure" model. In this new framework, insurance can't be a static document sitting in a folder somewhere. It must include:

  • A complete digital risk package that integrates cyber coverage, threat protection, and 24/7 incident response directly into the Tech E&O form.
  • Insurer bundles that feature real-time threat intelligence and proactive monitoring.
  • Explicit language to avoid exclusions and bridge the gap left by grey-zone liabilities.

By implementing these changes, we can provide incentives for early incident reporting (through motivators like retention waivers for fast action) rather than penalizing it – which ultimately leads to incidents that spiral into larger liabilities. We can create an environment where insurers and businesses are working together to strengthen resilience; rebuilding trust and collaboration.

Restoring Confidence Through Insurance

The ultimate goal of insurance should be to provide businesses with the confidence to innovate. In the early days of digital transformation, that meant protecting against hardware and human failures. Today, it means giving businesses of all sizes – from startups to enterprises – the self-confidence to deploy AI and SaaS solutions without the fear that an unforeseen algorithmic bias or a sophisticated social engineering attack could derail operations.

Simplicity is key here. Both cybersecurity and insurance have a reputation for being unnecessarily opaque. As we face sophisticated AI-related risks, our industry's response shouldn't be to add more jargon and complex exclusions. Instead, we should strive for unambiguous coverage that recognizes how professional services and digital delivery are connected.

Protecting Innovation for the Future

The path forward requires our industry to embrace a more proactive stance. We must move beyond the data breach and embrace a model where insurance is an active participant in a company's security posture. This means not only helping them respond to and recover from incidents faster, but perhaps more importantly, helping them predict and prevent incidents in the first place.

Validation for this approach is growing. We're beginning to see the market move toward all-in-one protection models that combine insurance with active risk management platforms. These platforms provide the tools and training necessary to strengthen controls before an incident occurs.

But the gap between legacy and modern Tech E&O is still growing. We need insurers and coverage models to keep pace with the ever-changing AI landscape.

The AI-fueled gap in Tech E&O is a challenge, but it is also an opportunity to build a more sustainable P&C market. By evolving our products to match the sophistication of the tools our clients use, we can ensure that the digital economy remains a safe space for growth and innovation for everyone.


Vishal Kundi

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Vishal Kundi

Vishal Kundi is a co-founder and CEO of Boxx Insurance.  

He was previously chief sales officer at Arthur J. Gallagher and has lived and worked across the world, including in Dublin, London, Hong Kong, Santiago and Toronto.

AI Alone Cannot Close Insurance's Execution Gap

Volatile risk conditions demand faster decisions, yet many insurers cannot operationalize AI intelligence quickly enough to respond to market shifts.

Man sitting at a desk with an AI robot next to him pointing at a computer screen

Insurance has never lacked ambition when it comes to modernization. Most carriers recognize the pressures reshaping the industry. Risk is becoming more volatile, customers expect faster and more personalized experiences, and legacy operating models are making it harder to respond at the pace the market now demands. AI gives insurers an opportunity to close that gap by improving how decisions are made across the insurance journey. The challenge is to turn that intelligence into governed action fast enough to make a difference.

Across climate-exposed regions, carriers are reassessing where they write business, how they renew policies, and what levels of catastrophe exposure they can responsibly carry. In cyber insurance, threat vectors evolve faster than historical loss experience can reliably inform pricing and underwriting. Litigation trends, inflation, geopolitical disruption, supply chain instability, and specialty market complexity are all changing portfolio dynamics in ways that affect pricing adequacy, underwriting appetite, claims severity, capital allocation, and customer behavior at the same time.

In my opinion, the issue is no longer whether insurers recognize the need to adapt. The real challenge is whether their operating models can convert signals, models, rules, and human judgment into production decisions quickly enough to keep up with these changing conditions.

Risk is outrunning episodic decision cycles

Insurance operating models were largely built around periodic adjustment. Rate changes, underwriting rule updates, product modifications, compliance reviews, and distribution decisions often move through sequential processes. Those processes were rational in a market where risk signals developed more slowly and decision cycles could afford to be measured in months, but that environment is fading.

When market conditions shift faster than execution cycles, the consequences become real. Delayed rate action can weaken pricing discipline and expose margin before carriers fully see adverse selection building inside the book. Slow underwriting appetite changes create another form of exposure, especially when business continues to be written against assumptions that no longer reflect the carrier's strategy. Even customer signals lose value when they remain disconnected from pricing, product, and retention logic, leaving profitable relationships exposed.

Legacy systems are part of this tension, although they are not the villain. Policy administration systems, claims platforms, billing systems, and rating infrastructure remain essential systems of record. The problem is that many are being asked to support adaptive decision making work they were never designed to handle. Systems built to store, administer, and transact are now being pushed to sense, decide, govern, and adapt continuously.

The bottleneck is not the model

Boards and executive teams are investing in AI for good reasons. AI can accelerate analysis, automate repetitive tasks, improve modeling precision, and help teams process more complex data than traditional workflows allow. Working with customers, I see why that investment makes sense. The industry needs more speed, more precision, and better use of scarce expertise.

Yet many AI initiatives lose momentum once they move beyond experimentation. A pricing model can sharpen analytical precision without making the enterprise more adaptive if underwriting still moves through disconnected workflows, claims signals never reach product and portfolio decisions, and customer engagement tools improve outreach without connecting to the logic that determines risk, profitability, and retention.

The issue is not just model performance, but the ability to connect data, models, business rules, workflows, governance, and human oversight so AI can support real underwriting, pricing, claims, and customer decisions in production.

Insurance decisions carry financial, regulatory, and social consequences. They must be explainable, auditable, repeatable, and aligned with underwriting discipline and capital management. Horizontal AI tools can improve productivity, but insurance-grade decision making requires domain depth, governance, and operational context from the start.

Decision making needs an operating layer

Many insurers have made real progress inside individual functions, especially in pricing, underwriting, and claims. The problem is that local improvement does not automatically create enterprise agility. A stronger pricing model has limited strategic value if underwriting cannot act on the same intelligence, claims signals do not inform portfolio decisions, and customer engagement remains disconnected from risk and profitability. The deeper issue is not whether intelligence exists inside the business, but whether it can move across the business in time to change the outcome.

Insurers need governed decision making to work above and across existing systems. That layer should allow carriers to preserve operational stability while enabling intelligence to move across pricing, underwriting, claims, compliance, distribution, and customer engagement.

The aim is to reduce the distance between insight and action, giving carriers a more consistent way to test changes, understand likely impacts, govern approvals, deploy updates, and monitor outcomes as AI moves from experimentation to operational capability.

Governance makes speed deployable

Speed only strengthens resilience when it is matched by control. In insurance, faster decisions only create value when they remain explainable, auditable, and aligned with regulatory and business discipline.

This is where governance becomes a deployment advantage. Carriers that cannot explain how decisions are made will struggle to scale AI into production. Teams may trust a model in a pilot environment, but production use requires traceability, bias monitoring, approval workflows, performance monitoring, and clear human accountability.

That does not mean slowing the business down. It means building guardrails into the way intelligence operates. Pricing optimization, underwriting evaluation, portfolio steering, compliance validation, claims triage, and customer retention each require the right form of AI, the right level of automation, and the right degree of human involvement.

The New Operating Discipline for Insurance

Insurers need a new operating standard: one that connects intelligence across the policy lifecycle and gives carriers the speed, adaptability, and control to respond as conditions change.

The next phase of insurance transformation is as much about operating design as it is about AI. AI creates value when it is embedded deeply enough into the business to support faster, more disciplined, and more accountable decisions. That gives carriers a better way to recalibrate pricing, refine underwriting appetite, identify portfolio drift, support compliance, and respond to customer signals before opportunities or exposures have already moved.

AI capability alone will not close the insurance execution gap. The real advantage will belong to carriers that can make intelligence operational, connecting models, data, workflows, rules, and governance into decisions that keep protection available, profitable, and resilient.

What Happens Next in Iran — and What It Means for Insurers

We seem to be headed to a Gaza-like ceasefire, ostensibly restoring calm but leaving the underlying conflict unresolved. Many insurance lines will have to adapt.

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When allies of President Trump went on television over the weekend to say that a peace agreement between the U.S. and Iran was 95% complete, I was reminded of a truism among software developers in the 1990s: "The first 80% of a project takes 90% of the time, and the final 20% takes 90% of the time."

Comments on social media noted that even if negotiators had made it through 95% of the issues on their checklists, that progress meant that the U.S. and Iran still had to agree on what to do about Iran's stockpile of enriched uranium, about reopening the Strait of Hormuz and about U.S.-led economic sanctions against Iran. You know, the little stuff.

While there have been more reports today on potential progress, I'm ready to call it. Having covered an international mess or two in my time, I think the situation in Iran has all the markings of a long-term impasse. I'm convinced Iran will be an open wound for many years to come. The best we can hope for, I believe, is the sort of "ceasefire war" occurring in Gaza, where the fighting has officially been ended but the underlying conflict still festers.

Insurers need to prepare themselves. 

I'll still hold out hope that President Trump can achieve the kind of agreement with Iran he's been promising: reopening the Strait of Hormuz to any and all traffic, without tolls, while removing Iran's ability to ever build a nuclear weapon. But I no longer think any such resolution is likely. I don't even think a clean, lasting agreement is possible.

The clincher for me came this morning, when I read a column in the Washington Post by a former colleague of mine from the Wall Street Journal, Karen Elliott House, who is as plugged in to the Middle East as any journalist could possibly be. Karen won a Pulitzer Prize for her coverage of the Middle East in the 1980s and has stayed plugged in to the point that last year she published the definitive biography of Saudi Crown Prince Mohammed bin Salman. 

She wrote: "When the U.S. and Israel unleashed a blistering bombing campaign striking more than 10,000 Iranian targets, and Tehran’s response included attacks on Saudi oil installations and military bases, the Saudi air force initially struck back. But as President Donald Trump tolerated a ceasefire longer than the war itself, and repeatedly threatened to resume hostilities only to back off, the crown prince concluded that he must live with a hostile regime in Tehran. His focus now will be on placating Iran to protect Saudi."

If the Saudis have switched to appeasement — and I believe Karen implicitly — they leave Trump with almost no choice. Even if he felt he could ignore the need for congressional approval of a conflict lasting more than 60 days, under the War Powers Act, or could win approval from a Republican Congress increasingly nervous about an unpopular war as we head into the mid-term elections, Trump isn't going to resume hostilities without support from this major Middle Eastern ally. That means he's left having to negotiate with an extremist, theocratic regime that, by all accounts, thinks it has won the war.

Whatever deal ensues, Trump will surely claim a major victory, but Iran will remain volatile. Having shown the world that it can close the Strait of Hormuz, even while under attack by the world's greatest military power, Iran will keep shippers on edge, thus keep oil markets nervous. Iran will surely retain enough of a pathway to nuclear weapons that there will be the prospect of additional air strikes like the one the U.S. and Israel carried out on Iran last summer. If the U.S. eases economic sanctions, as Iran is demanding, Iran will surely funnel some of that money to its proxies throughout the Middle East as they try to destabilize Israel, Iraq, Lebanon, and Yemen. 

Because the Middle East is so unlikely to return to the conditions before the war, insurers should assume that conditions today will persist for at least many quarters and probably many years.

Shipping patterns will adjust to the higher risks in the Strait of Hormuz, and insurers will have to adjust to those new patterns. Global supply chains for all sorts of goods will change, keeping replacement parts for cars hard to get and limiting access to housing materials, so pressure on premiums will continue. 

Gasoline prices will drop somewhat but remain steep, keeping a lid on traffic and, thus, traffic accidents. People will fly less, in the face of increased air fares, reducing the demand for travel insurance. With gas prices driving inflation, interest rates are likely to stay elevated; the housing market is already a disaster, and sales will stay depressed, reducing opportunities for homeowners insurance companies to attract new customers. 

And so on. 

There will surely be secondary effects, too, though those are obviously harder to predict. The big question, for me, relates to the mid-term elections. With Trump's approval ratings already at record lows, and with Iran looking like a strategic error, the Republican party will almost certainly lose control of the House of Representatives and perhaps even the Senate. All those investigations that the Democrats have talked about wanting to launch into Trump administration actions could become reality next year. Democrats may be a bit cautious because some of the investigations they launched in the lead-up to the 2024 election backfired and let Trump generate support — or they may not. The federal government could pretty much shut down until the 2028 presidential election as Democrats and Republicans scream at each other. Meanwhile, issues that are important to the insurance industry, such as the fates of FEMA and the National Flood Insurance Plan, would be set aside.

My second biggest question relates to Taiwan. Might China decide that now is a good time to try to retake control of the island, with the U.S. looking weak and having used up so much of its weapons stockpile in Iran? What a catastrophe that would be for the whole global economy.

But now I'm getting really speculative. We'll have to wait and see how the secondary and tertiary effects unfold. For now, I really just wanted to note that I don't believe we'll have a clean resolution of the U.S.-Israel conflict with Iran and that we are likely going to be dealing with lingering effects for a long time.

Cheers,

Paul

 

Underwriting Needs Operating Models, Not Technology

Traditional insurers must rebuild their operating foundations before new technology can let them match the agility of MGAs and insurtechs.

Success

There's an urgent and slightly uncomfortable conversation happening across the insurance market right now. We talk a lot about growth, distribution, AI, data and digitization, but most of our operating models simply aren't built for the environment they're being asked to perform in.

This was the backdrop to Send’s recent INFUSE webinar, where we explored what it really means to move from a traditional, linear underwriting model to something fit for 2026. My view in one line: The challenge isn't innovation, it's whether our foundations can support it.

Brokers, MGAs and insurtechs are moving quickly. They're building smarter, more connected models, and in some cases, they're becoming more confident in their understanding of risk and pricing than the carriers behind them. Carriers haven't lost their edge, but there is a growing gap between what they have and what they can actually use. When your partners can ingest, process and act on data faster than you can, the balance starts to shift.

We're trying to make old models do new things

Many insurers are still running on legacy systems, fragmented data and manual workflows held together with spreadsheets. Trying to partner with more innovative businesses with that kit underneath you is a bit like putting Formula One parts onto the family car. In theory, it should make you faster. In reality, the underlying vehicle just isn't built for it.

What this is quietly doing to the data underneath doesn't get talked about enough. Carriers have always relied on their own book to set pricing, shape appetite and spot trends. As more of that book gets written by more advanced partners, the picture starts to erode. The partner is collecting richer, more granular data than the carrier ever did, but it doesn't plug neatly back into legacy systems. So, the carrier is left with two bad options: force new, unique data into systems that weren't designed for it, or hold underwriting discipline on a book they can only half see.

Meanwhile the boardroom conversation hasn't caught up. I still see leaders planning with the line, "we did well last year, so let's take that and add 10%," without really understanding how or why they got there. Managers are patting themselves on the back about the growth, while their underwriters are quietly wondering whether the wheels are about to come off. From the top floor it looks like a winning streak. From the underwriter's desk it looks like a book they can't quite see the edges of.

This isn't a technology problem. It's a trust problem.

Whenever the conversation turns to data, we default to the usual list of quality, consistency, standardization and validation. Those things matter, but for me the defining characteristic of good data is simpler. It's trust.

If an underwriter doesn't trust the data, they won't trust the outcome. And if they don't trust the outcome, they'll find a workaround. Spreadsheets sitting alongside core systems, manual overrides, parallel processes. Every one of those is a vote of no confidence in something that was meant to solve the problem.

We still talk about this as if it's a technology issue. It isn't. We know how to cleanse, enrich and validate data. The harder bit, and the one we keep ducking, is getting people to agree on what a data point actually means and how it should be used. That is where transformation programs stall. Not because the tools aren't good enough, but because the alignment isn't there.

Real change starts with asking better questions

We need to stop asking how to force people into the process and start asking why they're working around it. Those workarounds are telling us something. They point to gaps in trust, usability, clarity or alignment. If you don't understand the gap, no amount of new technology will close it in a lasting way.

You need the right driver, not just a better car

The firms moving fastest right now, particularly MGAs and newer entrants, don't just have better technology. They have a different mindset. They're entrepreneurial, closer to the customer, and they design their operating models around outcomes rather than internal constraints. They're still looking outwards.

You can give a business a Formula One car, but if the way it thinks and operates doesn't change, it won't deliver the performance you expect. Technology creates opportunities. It doesn't replace judgement, culture or customer understanding. You need both the right driver and the right vehicle. One without the other is either dangerous or going nowhere.

Looking ahead

I'm often asked where the market will be in three to five years. What I can say is that the organizations winning right now, in insurance and well beyond it, are the ones built around their customers. Netflix, Starling, Octopus Energy. They design around the customer first, and they run small, deliberate experiments so they can respond when things change. They don't bolt new technology onto broken processes and hope for the best.

Insurance isn't there yet. We know we're going to adopt better technology. The real question is whether we can build the operating models, data foundations and trust to actually use it. If we don't, we're just making the same car go a bit faster. And that won't be enough for what's coming next.


Emma Davies

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Emma Davies

Emma Davies is the founder of Waystone Consulting.

She brings 25 years of hands-on experience in financial services working for the likes of QBE, Chubb, RSA and AXA as an underwriter, portfolio manager and broker. 

A Practical Launch Framework for Insurance Startup Programs

Unclear roles and weak project discipline—not talent shortages—cause most insurance program launches to stall or fail.

Organization

If we could restart many insurance program launches we have worked on or observed over the last decade, we would not begin by hiring more people or buying more technology.

We would begin with a better operating structure.

Insurance startups, MGAs, carriers, wholesalers, and brokers often struggle to launch new programs because the work is not organized clearly. Strategy, underwriting, technology, compliance, vendor management, operations, testing, and distribution move at different speeds, and too often, no one owns the launch end-to-end.

The result is predictable. Decisions stall. Vendors wait for answers. Testing starts late. Carrier requirements are only partly translated into operations. Founders and executives get pulled into work that should sit elsewhere.

Most launch problems are caused not by a lack of talent but by unclear roles, weak project discipline, and too much execution work falling on senior leaders.

If we had to do it over again, we would start with a lean core team, add project management early, build operations alongside product, use technology selectively, and rely on flexible staffing before permanent headcount.

The Problem With Unstructured Launches

Launching an insurance program is complex. A new program has to align underwriting rules, rating, forms, state requirements, claims intake, billing, payments, document generation, reporting, compliance, and customer service. Every part depends on the others.

Without clear ownership, launch work gets spread across people who already have full-time jobs. Underwriting leaders support the new program while managing an existing book. Technology teams juggle configuration, integrations, and internal priorities. Operations teams are often pulled in after major product or system decisions are made.

Invisible delays then become visible problems. UAT credentials are not ready. Vendor tasks remain incomplete. Endorsements, cancellations, reinstatements, and payment processes are not fully documented or tested. Small gaps become launch issues, and senior leaders spend their time solving coordination problems instead of making strategic decisions.

Start With a Lean Core Team

A launch needs a lean core team, but that team should own strategy, not every task. In most cases, the right group includes the CEO or founder, an underwriting lead, a technology lead, and one or two strategic operators.

That team must understand both insurance and implementation. Modern programs depend on systems, data flows, APIs, rating engines, billing workflows, document production, claims processes, compliance controls, and reporting. Insurance knowledge alone is not enough, and technology knowledge without an insurance context is not enough, either.

The core team should own the product and underwriting strategy, carrier and capacity relationships, distribution, vendor selection, financial targets, launch priorities, and major issue resolution. It should not spend its time chasing vendor updates, forwarding credentials, or collecting test results.

Add Project Management Early

The most important execution role in many insurance launches is the project manager, and that role should be added at the beginning, not after the timeline slips.

A strong launch PM understands both insurance and technology and can translate across underwriting, operations, compliance, claims, billing, vendors, and distribution partners.

The PM builds the launch plan, tracks owners and deadlines, manages dependencies, runs status meetings, documents decisions, escalates blockers, coordinates UAT, and keeps vendors accountable. This is not a light administrative job.

Without a dedicated PM, coordination usually happens through side conversations, email threads, and status meetings that generate more noise than progress. The PM gives the launch one operating rhythm.

Build an Operations Function

Project management is not the same as operations design. A launch also needs someone responsible for process detail, usually a business analyst or operations lead.

That person handles workflow design, process documentation, user requirements, operational handoffs, exception handling, billing and payment procedures, cancellation and nonrenewal processes, customer service routines, and claims intake coordination. These may look secondary next to underwriting or technology, but they determine whether the program can function at real volume.

Too many MGAs focus on product and platform configuration first, then discover near launch that service workflows are incomplete. Policy issuance may work while endorsements, claims notices, and payment exceptions do not. Operations has to be a launch workstream from day one.

Use Technology to Reduce Manual Work

Technology should support the operating model, not complicate it. Project management tools should track owners, milestones, dependencies, defects, and decisions. Contract tools and shared repositories should reduce friction and make current materials easy to find.

AI and automation can help with work that is repeatable: drafting process documents, summarizing vendor calls, reviewing checklists for missing items, organizing compliance requirements, and creating first drafts of operational materials.

But every tool needs an owner and a defined workflow. If it does not reduce work, improve quality, or increase visibility, it is probably adding another layer to manage.

Avoid the Headcount Trap

One common startup mistake is hiring too much permanent staff before revenue supports it. A better approach is elastic staffing: use experienced fractional resources for launch coordination, UAT, claims setup, documentation, or LOB or state expansion. The advantages of the elastic staffing model are the ability to fractionalize many positions at once, move the risk to a trusted BPO partner, which then allows you to keep expanding (assuming success) or contract the positions (assuming product failure).

Put the Framework Into Practice

A disciplined launch still needs a written plan, a soft launch, and clear ownership. The lesson is simple: insurance launches need structure before scale. Build the operating model first. Then launch the product.


Nick Lamparelli

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Nick Lamparelli

Nick Lamparelli is the managing partner of Insurance Nerds and chief program officer for Latin International Reinsurance Group. 

He is also CEO of the Insurance Advocacy Forum of Florida.

Lamparelli is a three-decade insurance executive, starting as a local agent and evolving to middle market broker, wholesaler, underwriter and catastrophe insurance expert.


Peter Crowe

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Peter Crowe

Peter Crowe is president of Focus.

Previously, he was senior vice president of marketing, communications and investor relations, and executive vice president of business and product strategy at RE/MAX. He was also chief revenue officer at We Insure.

Crowe holds a bachelor of business administration degree from Indiana University and an MBA from the University of Denver, Daniels College of Business.