Last year, Wix acquired Base44, a solo-owned vibe-coded startup, for $80 million. That was something unheard of before the AI revolution began in late 2022. For most of the modern tech era, building a company meant assembling people before you had revenue. You hired engineers, a product lead, maybe a marketer, then raised money to keep everyone moving in the same direction long enough for the product to find a market. It was an often expensive and slow path, but at least it was predictable.
That’s changing today. Software that used to require teams of specialists can now be built by AI systems that work in parallel, handling research, design, engineering and deployment simultaneously. For founders, this means the traditional equation — raise capital to hire a team to build a product — has an alternative path: Directing AI systems to do the work faster and cheaper than hiring would allow.
But as the cost of building software falls and AI democratizes access to technical capabilities even for non-technical founders, the big question now is: What gives a company an edge when anyone can build and ship quickly?
The Prototype Trap
While AI is now helping anyone build products at scale, many of those products often hit a snag when they move from prototype into real-world scenarios. Alex Wu has been watching founders hit that same wall. As founder and CEO of Atoms AI, an AI platform that recently raised $31 million and helps turn ideas into businesses through one workflow, he sees a pattern in how people use AI tools to prototype and then struggle to ship anything real.
“A demo can ignore authorization, rollback, and persistent data at scale,” Wu says. “Production can’t.”
Most AI coding tools generate snippets — fragments of code that work in isolation — but fall apart when you need to manage users, handle payments, or keep a system running over time. The real problem here isn’t writing code, according to Wu. It’s building something that won’t collapse under the weight of authentication, error handling and data integrity.
Then there’s coordination. Traditional companies pass work between roles: Product defines requirements, engineering builds, QA tests and marketing launches. AI tools tend to optimize for one person at a time — the developer or the copywriter — so the friction just moves. Instead of waiting on people, you’re waiting on tools that don’t talk to each other.
What founders need, Wu argues, isn’t faster code generation. It’s an architecture that can actually survive contact with real users. In other words, the conversation around products built with AI needs to move from how they reduce production costs, in terms of human labor, to a more useful question about what they can realistically handle today.
Building An Enduring Architecture
While AI can now manage much of the execution layer — including structured market research, competitor analysis, SEO content at scale, code generation, debugging and more — Wu notes that humans still control the decisions that matter most.
Someone has to choose which problem is worth solving and why customers would pay for it. Someone has to decide whether to move fast and risk breaking things, or build slowly and lose the market. And someone has to read between the lines when data doesn’t tell a clear story.
Wu points to these judgment calls as the reason human oversight remains essential. “AI can execute,” he said, “but it can’t tell you if you’re building something people actually need, or if you’re about to create a compliance nightmare.” Building a product that truly works requires an enduring architecture where AI and humans work together, where, according to Wu, “AI runs the team and humans run the story.”
When Demos Truly Matter
If AI is changing what a company looks like, it also changes what founders should measure. Wu is blunt about what he considers useless signals. “We try to avoid vanity metrics like X lines of code generated or Y percent faster mockups,” he said.
Instead of counting lines of code or faster mockups, he looks at production readiness, time to first revenue, defect rates after launch and the cost of running another experiment once a product is live.
“Quality means the system can actually run, generate value and be maintained by a small team,” Wu said. “If it can’t, the demo doesn’t matter.”
This mirrors a broader shift in how infrastructure revolutions play out. When cloud computing normalized “infrastructure as code,” the advantage moved away from owning servers and toward designing resilient systems. AI appears to be pushing company building through that same transition.
What It Takes To Build Now
The definition of what it means to run a company is already shifting. OpenAI’s API costs have dropped roughly 90% in the past year, while open-source models like Llama and DeepSeek now run locally at minimal cost. Fortune recently reported that startups using AI development tools are reaching product-market fit with 60% less capital than they were a year ago.
But that drop in cost does not make company building effortless. It changes where effort matters. When execution becomes easier to access, advantage moves elsewhere: Choosing the right problem to solve, owning distribution channels AI cannot replicate and earning trust in how systems behave. This is where many companies will struggle. While AI agents accelerate output, they introduce new risks around security, reliability and accountability, which many organizations are still learning how to manage.
So, while AI is helping people build faster and redefining what a company looks like, it doesn’t automatically guarantee success. For companies around the world, whether powered entirely by AI or by traditional teams augmented by intelligent systems, the fundamentals still matter for business success: Clear decision-making, thoughtful risk management, and accountability when things go wrong.
As Wu noted, “the goal isn’t to make building effortless. It’s to make sure that as AI takes on more of the work, there’s still a clear line of responsibility for what gets built and how it behaves.”












