Summary
The author is experimenting with new SaaS architectures for AI-native applications, observing that traditional frontend/backend/database models struggle when Large Language Models (LLMs) can modify application structure. The core issue isn't the initial generation of an AI app, but rather managing the evolution of its state and schema over multiple iterations, leading to problems in subsequent versions.
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