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Despite claims that AI has created permanent structural demand, the history of cyclical industries like semiconductors suggests caution. The commodity nature of these products and massive capital inflows make a future supply glut and subsequent price collapse almost unavoidable. Such "this time is different" claims often mark the cycle's peak.

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Unlike past cycles driven solely by new demand (e.g., mobile phones), the current AI memory super cycle is different. The new demand driver, HBM, actively constrains the supply of traditional DRAM by competing for the same limited wafer capacity, intensifying and prolonging the shortage.

Major investment cycles like railroads and the internet didn't cause credit weakness because the technology failed, but because capacity was built far ahead of demand. This overbuilding crushed investment returns. The current AI cycle is different because strong, underlying demand is so far keeping pace with new capacity.

AI software models advance every few months, creating exponential demand. However, the hardware infrastructure like chip fabs operates on two-to-four-year development cycles. This timeline disconnect between software's rapid pace and hardware's slow build-out creates a persistent supply crunch that money alone cannot instantly solve.

The current semiconductor boom is a unique, long-term "super cycle," not a typical memory cycle. The transition to an agentic AI economy is projected to increase processing token demand 24-fold by 2030, creating a prolonged supply shortage that fuels chipmakers' pricing power and profitability for years to come.

Despite soaring AI demand, chip fab TSMC is conservatively expanding capacity. This is a rational move to avoid the catastrophic downside of overcapacity, where fixed costs sink profitability for years. However, this decision is creating a massive, predictable chip shortage for the AI industry.

The semiconductor supply chain has extremely long lead times. Even with unprecedented demand signals for AI hardware, new memory fabrication plants ordered today will not come online until 2027 or 2028. This multi-year lag guarantees that supply bottlenecks and high prices for components like DRAM will persist.

The current GPU shortage is a temporary state. In any commodity-like market, a shortage creates a glut, and vice-versa. The immense profits generated by companies like NVIDIA are a "bat signal" for competition, ensuring massive future build-out and a subsequent drop in unit costs.

Historical technology cycles suggest that the AI sector will almost certainly face a 'trough of disillusionment.' This occurs when massive capital expenditure fails to produce satisfactory short-term returns or adoption rates, leading to a market correction. The expert would be 'shocked' if this cycle avoided it.

Large-cap tech's massive spending and debt accumulation to win the AI race is analogous to past commodity supercycles, like gold mining in the early 2010s. This type of over-investment in infrastructure often leads to poor returns and can trigger a prolonged bear market for the sector.

The economic principle that 'shortages create gluts' is playing out in AI. The current scarcity of specialized talent and chips creates massive profit incentives for new supply to enter the market, which will eventually lead to an overcorrection and a future glut, as seen historically in the chip industry.

Claims of an End to Semiconductor Cycles Due to AI Ignore the Inevitability of a Supply Response | RiffOn