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Beware of the genAI token trap
by David Linthicum · 2026-06-09 · via InfoWorld

Current token pricing is giving enterprises a false sense of comfort. For many cloud customers, today’s cheap AI will become tomorrow’s cost crisis.

Enterprises are moving aggressively into generative AI. On the surface, that seems like the right call. The technology is powerful, accessible, and increasingly embedded in how businesses build applications, automate processes, and support decision-making. A development team can connect an application to a large language model in days. A product team can add AI features in weeks. Business leaders see quick wins, faster innovation, and a path to modernizing nearly every part of the company.

These are the upsides everyone is talking about. The part we don’t discuss enough is the economic trap forming underneath all this convenience.

Most enterprises think of tokens as a technical billing detail. They are not. Tokens are the unit of economic dependency in generative AI. Every prompt, response, summarization, retrieval step, workflow action, and agent decision is measured and monetized through tokens. Tokens are not just part of the plumbing. They are the tollbooth between your enterprise and a provider’s intelligence platform. The more AI becomes central to your operations, the more power that tollbooth holds over your future costs.

Tokens are not just a pricing unit

A token is usually described as a chunk of text processed by a model. That is accurate enough for developers, but it misses the bigger issue for CIOs, architects, and corporate boards. In the enterprise, tokens are the mechanism by which AI capabilities are rented. They are the meter attached to the intelligence itself.

That distinction matters because token usage grows faster than most companies anticipate. A simple user prompt rarely remains simple in production systems. It can trigger retrieval from internal knowledge stores, multiple model calls, tool use, post-processing, policy checks, and agent loops. What appears to be a single transaction to the user may involve several layers of token consumption behind the scenes. As a result, enterprises often underestimate the true operating cost of AI-enabled systems, especially as those systems mature and spread across departments.

Today, those costs still feel manageable. In many cases, they feel surprisingly low. That is exactly why the trap is so dangerous.

The market is in a subsidy phase

Current token pricing is giving enterprises a false sense of comfort. Many remote LLM providers are aggressively competing for market share. They want developers building on their APIs. They want enterprise applications tightly coupled to their platforms. They want AI agents, copilots, workflows, and customer experiences to depend on their models. To make that happen, pricing remains highly attractive relative to the value delivered.

That does not mean the economics of generative AI are stable. It means the market is still being shaped by investor capital, strategic pricing, and growth expectations. Providers are racing to establish position, and enterprises are benefiting from that race. But no market stays in that phase forever. At some point, investors will expect durable profitability. At some point, weaker providers will disappear, consolidate, or retreat. At some point, the survivors will have more leverage and much less reason to price primarily for adoption.

That’s when the token trap closes.

Enterprises that build deep dependence on remote models during the subsidy phase may find that what seemed inexpensive at pilot scale becomes punishing at enterprise scale. The application that costs $1,000 per month today may cost 10 or 20 times that amount a few years from now, not only because usage has increased, but also because the market has repriced the dependency.

Easy to adopt, expensive to exit

Cloud computing followed a similar path, with many enterprises mistaking short-term convenience for long-term economics. In the early years, the case was compelling and largely accurate. Move faster, reduce friction, avoid capital spending, and scale with ease. Those benefits were real. Many organizations made architectural decisions that prioritized speed over leverage. They became dependent on managed services, provider-specific tools, and operating models that were easy to adopt but expensive to unwind.

Years later, many enterprises discovered that their cloud bills were much higher than expected and their exit options much narrower than advertised. That was not because the cloud failed. Architectural dependency eventually became financial dependency.

Generative AI is repeating that pattern, only faster. The integration barrier is lower, the pressure to adopt is higher, and the pace of enterprise experimentation is far greater. As a result, companies are wiring remote LLMs into applications, workflows, and agentic systems with very little thought about how these costs will behave in the next five to 10 years.

Agentic AI makes things worse

The more enterprises move from simple prompt-response systems to agentic architectures, the more dangerous the token trap becomes. Agents are not single-call systems. They plan, deliberate, retrieve information, invoke tools, evaluate results, retry steps, and often coordinate with other agents. Each of those actions consumes tokens. Costs no longer rise in a neat linear fashion. They compound.

This matters because agentic AI is increasingly being presented as the future of enterprise automation. It’s true in many cases. But if an enterprise builds agentic systems primarily on remotely hosted intelligence, it is also building future business processes on top of someone else’s pricing model. That is a major strategic risk. The more successful those systems become, the harder they are to replace. The harder they are to replace, the more pricing power shifts to the provider.

This is how businesses end up operationally dependent on a cost structure they do not control.

The appeal of AI sovereignty

The answer is not to reject public models or pretend that external providers play no role. They clearly do. There will always be cases where renting frontier AI capabilities makes sense. But enterprises need to stop assuming that renting is the default for every workload.

AI sovereignty is the alternative that deserves much more attention. That means building, tuning, deploying, and governing models inside the enterprise for use cases where long-term control matters more than access to the absolute frontier. Enterprises need to recognize that most business applications do not need a world-class general-purpose model. They need a model that is good enough for a specific purpose, aligned to the enterprise’s data, governed by the enterprise’s rules, and operated at a predictable cost.

It’s a very different way of thinking.

A self-hosted or enterprise-controlled model may not match the rich feature set of the largest public offerings. It may lack the same breadth, polish, or marketing appeal. But for many internal business tasks, those factors do not matter.

Here’s the most critical question to guide your architectural direction: Can a sovereign AI model solve the problem reliably, securely, and economically over time? If the answer is yes, owning that capability may be far more strategic than forever renting something with more power than you need. In effect, the enterprise becomes its own provider for the workloads that matter most.

Prepare for changing markets

Too many companies still treat generative AI architecture as a tactical IT issue. It is not. These decisions directly affect cost structure, operating flexibility, data control, and long-term competitiveness. If AI becomes a force multiplier across the business, the economics of AI become strategic to the business itself.

The companies that get this right will not necessarily be the fastest adopters. They will understand the difference between experimentation and dependency. They will use external models when it makes sense, but they will also invest in sovereign capabilities where ownership matters. They will think like architects, not consumers.

Here’s the takeaway: Cheap tokens come with strings. They are a gateway to a dependency model that will typically look very different once providers stop pricing for growth and start pricing for leverage. Enterprises cannot keep mistaking today’s bargain for tomorrow’s reality. Boards and executive teams need to act now to get ahead of this issue. The key question is not whether generative AI creates value. It clearly does. The real question is whether the enterprise can still afford and control the value it creates once the market matures.