// Part One · Chapter 2
The Experimental Trap
Why chasing models instead of solving problems leads to failure.
The Model Chaser's Dilemma
Every year, a new model is announced. Every year, organizations pivot: 2020, GPT-3; 2022, generative AI; 2024, agentic systems; 2025, the latest model. The technology keeps changing. The organizational chaos keeps repeating.
The specific model matters far less than you think. What matters is:
- Can it integrate with your systems?
- Can you satisfy regulatory requirements?
- Can you explain decisions to auditors?
- Can you maintain it over time?
The Gap Between Lab and Production
In controlled environments, an AI system handles 100 requests with 95% accuracy. In production, it faces:
- Data quality issues — real-world data is messy. Missing fields, inconsistent formats. Accuracy drops.
- Scale variations — 100 requests fine; 10,000 requests crash the system.
- User behavior — real users do unexpected things.
- Integration failures — each integration point is a potential failure mode.
- Regulatory requirements — the demo didn't need audit trails. Production does.
Breaking Free of the Trap
Step 1 — Define success first. What business outcome? How will you measure it?
Step 2 — Start simple. Begin with the simplest solution that could work.
Step 3 — Design for operations. How will you monitor, handle failures, and satisfy regulators?