In markets like air travel, competing companies using sophisticated pricing algorithms will naturally converge on the same high price. Each AI optimizes against the others in real-time, leading to a de facto monopoly outcome for consumers, even without any illegal communication between the companies themselves.
Influencing $3 billion in Black Friday sales, AI shopping agents automate both product discovery and price hunting. This ushers in an era of "self-driving shopping" that forces radical price transparency on retailers, as AI can instantly find the absolute cheapest option online for any product.
After discovering the 'Winner's Curse' was causing them to overpay for oil leases, Arco engineers faced a problem: bidding less meant losing auctions. Instead of illegal collusion, they published a scientific paper on the phenomenon. This educated their competitors, reducing the likelihood of anyone overbidding and making the market more rational.
The AI industry is not a winner-take-all market. Instead, it's a dynamic "leapfrogging" race where competitors like OpenAI, Google, and Anthropic constantly surpass each other with new models. This prevents a single monopoly and encourages specialization, with different models excelling in areas like coding or current events.
Recent streaming price increases, which are vastly outpacing inflation, serve as the primary evidence that the market is already too consolidated. Further mergers would grant companies like Netflix unchecked pricing power, transferring wealth from consumers and labor directly to shareholders in an oligopolistic environment.
Agentic AI will evolve into a 'multi-agent ecosystem.' This means AI agents from different companies—like an airline and a hotel—will interact directly with each other to autonomously solve a customer's complex problem, freeing humans from multi-party coordination tasks.
Unlike the cloud market with high switching costs, LLM workloads can be moved between providers with a single line of code. This creates insane market dynamics where millions in spend can shift overnight based on model performance or cost, posing a huge risk to the LLM providers themselves.
Unlike traditional SaaS where high switching costs prevent price wars, the AI market faces a unique threat. The portability of prompts and reliance on interchangeable models could enable rapid commoditization. A price war could be "terrifying" and "brutal" for the entire ecosystem, posing a significant downside risk.
Conventional venture capital wisdom of 'winner-take-all' may not apply to AI applications. The market is expanding so rapidly that it can sustain multiple, fast-growing, highly valuable companies, each capturing a significant niche. For VCs, this means huge returns don't necessarily require backing a monopoly.
The AI value chain flows from hardware (NVIDIA) to apps, with LLM providers currently capturing most of the margin. The long-term viability of app-layer businesses depends on a competitive model layer. This competition drives down API costs, preventing model providers from having excessive pricing power and allowing apps to build sustainable businesses.
The push for AI-driven efficiency means many companies are past 'peak employee.' This creates a scenario analogous to a country with a declining population, where the total number of available seats is in permanent decline, making per-seat pricing a fundamentally flawed long-term business model.