The condition produced when AI-scale replica generation makes a formal sequence appear exhausted before its genuine possibilities have been explored through sequential immersion — a saturation of positions without the depth of understanding that only slow entrance produces.
Every formal sequence has a natural pace of exploration that allows for what Kubler implicitly called latent discovery — the recognition of formal possibilities that become visible only through sustained attention. A maker working slowly through a sequence encounters dead ends that turn out to be side channels, follows variations that lead nowhere and backtracks, and in the backtracking discovers connections to other parts of the sequence that the direct path would never have revealed. The detours are not inefficiencies; they are the mechanism by which sequences reveal their full structure. Premature sequence exhaustion is what happens when AI fills sequences at a pace that eliminates the detours. Every position the training distribution implies is occupied. The sequence appears complete. The completeness is an artifact of the exploration method — statistical inference rather than sequential immersion — rather than a property of the sequence itself.