The largest tech firms are spending hundreds of billions on AI data centers. This massive, privately-funded buildout means startups can leverage this foundation without bearing the capital cost or risk of overbuild, unlike the dot-com era's broadband glut.

Related Insights

The massive capital expenditure by hyperscalers on AI will likely create an oversupply of capacity. This will crash prices, creating a golden opportunity for a new generation of companies to build innovative applications on cheap AI, much like Amazon utilized the cheap bandwidth left after the dot-com bust.

While high capex is often seen as a negative, for giants like Alphabet and Microsoft, it functions as a powerful moat in the AI race. The sheer scale of spending—tens of billions annually—is something most companies cannot afford, effectively limiting the field of viable competitors.

Unlike debt-laden startups, tech giants are funding AI buildouts with cash and can weather a downturn. They fully expect smaller, leveraged competitors to go bankrupt, creating a strategic opportunity to purchase their data center assets for pennies on the dollar, thereby reducing their own future capital expenditures.

The current AI infrastructure build-out is structurally safer than the late-90s telecom boom. Today's spending is driven by highly-rated, cash-rich hyperscalers, whereas the telecom boom was fueled by highly leveraged, barely investment-grade companies, creating a wider and safer distribution of risk today.

Unlike the dot-com era's speculative infrastructure buildout for non-existent users, today's AI CapEx is driven by proven demand. Profitable giants like Microsoft and Google are scrambling to meet active workloads from billions of users, indicating a compute bottleneck, not a hype cycle.

The massive capital expenditure in AI infrastructure is analogous to the fiber optic cable buildout during the dot-com bubble. While eventually beneficial to the economy, it may create about a decade of excess, dormant infrastructure before traffic and use cases catch up, posing a risk to equity valuations.

Unlike the speculative overcapacity of the dot-com bubble's 'dark fiber' (unused internet cables), the current AI buildout shows immediate utilization. New AI data centers reportedly run at 100% capacity upon coming online, suggesting that massive infrastructure spending is meeting real, not just anticipated, demand.

Silver Lake cofounder Glenn Hutchins contrasts today's AI build-out with the speculative telecom boom. Unlike fiber optic networks built on hope, today's massive data centers are financed against long-term, pre-sold contracts with creditworthy counterparties like Microsoft. This "built-to-suit" model provides a stable commercial foundation.

Private credit is a major funding source for the AI buildout, particularly for data centers. Lenders are attracted to long-term, 'take-or-pay' contracts with high-quality tech companies (hyperscalers), viewing these as safe, investment-grade assets that offer a significant spread over public bonds.

Unlike the dot-com era's speculative buildout, AI's massive infrastructure investment is met with immediate, global demand. AI leverages existing internet and mobile distribution, reaching billions of users 5.5 times faster than Google Search did, justifying the capital expenditure.