Informed i’s Weekly Business Insights
Extractive summaries and key takeaways from the articles carefully curated from TOP TEN BUSINESS MAGAZINES to promote informed business decision-making | Since 2017 | Week 437, covering January 23-31, 2026. | Archive

Forget Unsolved Problems—the Real Money Is in Fixing What’s Already Broken
By Bruce Eckfeldt | INC | January 29, 2026
3 key takeaways from the article
- Established industries are filled with processes that work, but are barely held together by manual labor, legacy systems, and decades of accumulated workarounds. These aren’t unsolved problems. They’re poorly solved problems. And AI gives entrepreneurs the ability to reimagine how entire industries operate rather than incrementally fixing broken foundations.
- According to the author he has spent three decades watching technology transform industries—first as a tech founder who scaled a software company onto the Inc. 500 list, and now as a coach helping companies navigate AI implementation. The pattern he is seeing today is different from anything before. The entrepreneurs creating the biggest opportunities aren’t trying to solve problems no one has solved. They’re looking at problems with messy, complicated solutions and rebuilding them from scratch using AI-first thinking. Here’s how they’re doing it. Approaching familiar industries with a beginner’s mind. Mapping current AI capabilities to real pain points. Anticipating where capabilities are heading. Finding the leverage points for entry. And iterating rapidly and compressing the startup phase.
- The entrepreneurs creating the biggest opportunities right now aren’t inventing new categories. They’re taking industries filled with friction, waste, and outdated assumptions and rebuilding them with AI at the core. That’s where the real leverage exists.
(Copyright lies with the publisher)
Topics: Startups, Entrepreneurship, Tech Entrepreneurs
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Established industries are filled with processes that work, but are barely held together by manual labor, legacy systems, and decades of accumulated workarounds. These aren’t unsolved problems. They’re poorly solved problems. And AI gives entrepreneurs the ability to reimagine how entire industries operate rather than incrementally fixing broken foundations.
According to the author he has spent three decades watching technology transform industries—first as a tech founder who scaled a software company onto the Inc. 500 list, and now as a coach helping companies navigate AI implementation. The pattern he is seeing today is different from anything before. The entrepreneurs creating the biggest opportunities aren’t trying to solve problems no one has solved. They’re looking at problems with messy, complicated solutions and rebuilding them from scratch using AI-first thinking. Here’s how they’re doing it.
Approach familiar industries with a beginner’s mind. The first step isn’t mapping AI capabilities. It’s forgetting everything you think you know about how an industry operates. Most people look at established industries and see fixed constraints. AI-first entrepreneurs look at the same industries and ask why those constraints exist in the first place. They question every assumption about how work gets done, who does it, and why processes evolved the way they did. A financial analysis firm assumes you need teams of analysts to review data and develop recommendations because that’s how it’s always worked. An AI-first entrepreneur asks whether the analysis itself could be automated, freeing humans to focus on higher-level advisory work. The beginner’s mind reveals opportunities that industry veterans can’t see because they’ve stopped questioning the fundamentals.
Map current AI capabilities to real pain points. Once you’ve identified the assumptions worth challenging, the next step is understanding what AI can actually do today—not in theory, but in production. Too many entrepreneurs either overestimate AI’s capabilities and build products that can’t deliver or underestimate them and miss obvious opportunities. The practical approach is mapping specific AI tools to specific industry pain points. Where does the current solution require expensive human judgment that AI can now replicate? Where does manual data processing create bottlenecks? Where do customers tolerate friction because they assume no better option exists? A commercial real estate firm might discover that AI can now analyze lease documents, market comparisons, and property data faster and more accurately than junior analysts, not replacing expertise but amplifying it.
Anticipate where capabilities are heading. Today’s AI capabilities matter, but tomorrow’s prospective capabilities create first-mover advantages. The entrepreneurs building the strongest positions are tracking AI developments six to 12 months ahead of general availability. They’re watching research announcements, beta programs, and emerging tools to understand what will soon become possible. This isn’t about speculation, it’s about positioning. When a new capability becomes accessible, the entrepreneur who anticipated it can move immediately, while competitors are still evaluating. The window between “technically possible” and “widely adopted” is where outsized opportunities exist.
Find the leverage points for entry. You can’t reimagine an entire industry overnight. The strategic question is where to start. AI-first entrepreneurs identify the segments where current solutions create the most friction, where customers are most underserved, or where incumbents are least likely to respond quickly. These entry points let you establish traction and credibility before expanding. A legal technology entrepreneur might start with contract review for mid-sized companies or a segment too small for major firms to prioritize but large enough to build a meaningful business. Once established, expansion into adjacent services becomes possible.
Iterate rapidly and compress the startup phase. The traditional startup playbook assumes months or years of development before meaningful market feedback. AI-first approaches compress this dramatically. Entrepreneurs can build functional prototypes in days, test them with real customers, and iterate based on actual usage rather than assumptions. This speed changes the risk calculus entirely. Instead of betting everything on a single product vision, you can run multiple experiments, learn what works, and refine your approach continuously. One entrepreneur I’m working with launched three different AI-powered service offerings in one month, learned which resonated with customers, and doubled down on the winner—a process that would have taken years using traditional approaches.
The entrepreneurs creating the biggest opportunities right now aren’t inventing new categories. They’re taking industries filled with friction, waste, and outdated assumptions and rebuilding them with AI at the core. That’s where the real leverage exists.
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