Author: Bruce
We are living in an exciting era, with the AI revolution permeating every corner of life at an astonishing pace, promising a more efficient and intelligent future. However, a worrying signal has recently emerged: OpenAI, one of the world's most prominent AI companies, has publicly requested federal loan guarantees from the US government to support its massive infrastructure expansion, which could cost over one trillion dollars. This is not just an astronomical figure, but a stark warning. If the financial blueprint supporting this AI boom bears a striking resemblance to the structure of the 2008 financial crisis, which nearly devastated the global economy over a decade ago, how should we interpret this?
While the prospects of the AI industry and its potential for technological revolution are exciting, recent market activity has revealed unsettling signals of financial stress. The underlying structure of its capital operations bears a striking resemblance to several historical financial crises, particularly the 2008 subprime mortgage crisis. This article will delve into the capital cycles, leverage operations, and risk transfer issues behind these warning signs, penetrating the market narrative to stress-test the financial structure supporting current AI valuations. Ultimately, we will assess the nature of the risks, their potential outcomes, and propose investor strategies.
In the current boom led by AI technology, market sentiment is generally optimistic, and the stock prices of tech giants are hitting new highs. However, just as experienced miners would take a canary down the mine to warn of toxic gases, in a seemingly bright market, abnormal financial indicators of individual companies can often become the "canary in the mine" that reveals potential systemic risks to the entire industry.
The canary in the mine
Oracle, a long-established tech giant, is making a high-stakes gamble. To challenge Amazon, Microsoft, and Google's dominance in the AI data center field, it is investing hundreds of billions of dollars in expansion at the cost of extremely high debt, including the "Stargate" super data center project in partnership with OpenAI. Its debt-to-equity ratio has reached a staggering 500%, meaning its total debt is five times its net assets. In comparison, Amazon's debt-to-equity ratio is only 50%, and Microsoft's is even lower. Simply put, Oracle is betting almost its entire fortune and even its future value in this AI race.
Debt levels of US tech giants
This alarm is known as Credit Default Swap (CDS). The most critical recent signal is the surge in CDS spreads—the premiums insured against the potential fire of Oracle's "debt default"—reaching their highest levels in years. We can think of a CDS as a form of financial insurance: Imagine your neighbor (Oracle) is constantly piling up flammable materials in his basement (mountains of debt). You're very worried that his house will catch fire, potentially affecting yours. So, you find an insurance company and buy fire insurance for your neighbor's house out of your own pocket. In the financial world, this insurance contract is a CDS, and the premium you pay is the price (spread) of the CDS. A surge in premiums means the insurance company believes the risk of fire has increased dramatically.
This phenomenon sends a clear message: the market's top and most astute financial institutions generally believe that Oracle's default risk is rising sharply, rooted in the "mountain of debt, like dynamite," on its balance sheet. Oracle's debt alarm is like a small crack in the earth's surface, but it hints at violent tectonic shifts deep beneath. What structural risks are hidden within this capital operation model that drives the entire AI industry?
The financial pressure on a single company is merely the tip of the iceberg. When we broaden our perspective from Oracle to the entire AI ecosystem, a deeper, structural risk emerges. The real risk lies in a unique capital operation model among AI industry giants—a financial game that appears to be able to turn lead into gold, but is in fact extremely fragile. This is the closed-loop capital game known as the "infinite money cycle," which inflates revenue bubbles out of thin air, constructing a seemingly prosperous but ultimately vulnerable financial system.
To understand this model more clearly, we can simplify it into a "three friends starting a business" model:
Unlimited funds game
After this cycle, the 100 yuan returned to Nvidia. However, although the funds were merely circulating internally without any actual purchases from external customers, the financial statements of the three companies all "magically" generated 100 yuan in revenue each. This made their financial reports exceptionally impressive, thus strongly supporting their high stock prices and market valuations.
The fatal flaw of this model lies in the fact that the entire game is not built on solid customer demand, but rather relies entirely on the promises made by the participants and ever-expanding credit. Once any link in the cycle breaks—for example, if Oracle becomes unable to repay its loans due to excessive debt—the entire seemingly prosperous system could collapse instantly. This closed-loop capital cycle, which collectively inflates income bubbles through insider trading, is not a financial innovation; its structure bears a striking resemblance to certain pre-financial crisis practices, inevitably reminding us of that storm that nearly destroyed the global economy.
Current financial phenomena are not isolated. When we piece together Oracle's debt warnings with the capital cycles among AI giants, market observers who experienced the 2008 financial crisis will feel a sense of déjà vu. The following systematic analysis dissects five key commonalities between current financial operations in the AI field and the core elements that led to the 2008 global financial crisis, revealing that history may be repeating itself in a new form.
Comparing the 2008 subprime mortgage crisis with the current AI bubble
These five striking similarities paint a disturbing picture. However, history never simply repeats itself. Before we hastily equate the AI bubble with the subprime crisis, we must answer a core question: At the heart of this storm, are the "assets" used as collateral fundamentally different in nature?
2008 subprime mortgage crisis
While the aforementioned similarities are alarming, it would be simplistic to equate the current AI wave with the 2008 subprime mortgage crisis. History may have its rhythms, but it doesn't simply repeat itself. Beneath the striking similarities lie three fundamental differences that could determine the ultimate trajectory and scope of this potential crisis.
The core assets were fundamentally different: In 2008, the core assets were non-productive residential real estate. For the vast majority of homeowners, the property itself did not generate cash flow to repay the loan. The entire game was sustained by a fragile belief: "House prices will always rise." Once this belief was shattered, the entire credit chain collapsed.
The core assets of AI today are productive data centers and GPUs. Data centers and GPUs are typical productive assets, veritable "golden geese." Their sole purpose is to generate direct cash flow by providing computing power services. Therefore, the key question has shifted from "whether asset prices will fall" to "whether the speed at which assets generate cash flow can outpace their financing and operating costs." This fundamental shift is the crucial dividing line that downgrades this potential crisis from a "systemic risk threatening the global banking system" to a "devastating internal reshuffling of the technology industry."
The creditworthiness of the borrowers differed: In 2008, borrowers were subprime individuals. The powder keg that ignited the crisis consisted of individual borrowers with unstable incomes and extremely poor credit records, who lacked the genuine ability to repay their debts from the outset.
Current AI lenders: Top tech companies. The current frenzy of lending in the AI field is primarily driven by the world's wealthiest and most profitable companies, such as Amazon, Microsoft, and Google. Their debt repayment capabilities far surpass those of subprime borrowers of the past.
The Difference in Regulatory Environments: We live in a "post-2008" world. Following that global crisis, the global financial regulatory system has been patched with a series of significant measures. Banks are required to hold more capital to address potential risks, and central banks and other regulatory bodies are now more inclined to "intervene proactively" rather than reacting reactively as they did back then.
Based on the above three key differences, we can draw an important conclusion: even if the AI bubble eventually bursts, its outcome is unlikely to be a systemic financial crisis like the one that destroyed the global banking system in 2008. Instead, it is more likely to evolve into another famous crisis pattern in history: a "2000 dot-com bubble 2.0" for the technology industry.
Based on the preceding analysis of the similarities and differences between the AI financial structure and the 2008 crisis, we can make a more accurate qualitative assessment and forecast of the potential risks in the current AI field. The conclusion is that if a crisis does occur, its pattern will be closer to the bursting of the dot-com bubble in 2000 than the global financial tsunami of 2008.
Based on this assessment, the ultimate outcome of this potential crisis is more likely to be a crisis primarily confined to the technology industry. Once the bubble bursts, we may see a large number of AI companies relying on "stories" and debt collapse; tech stocks will experience a painful decline; and countless investors' wealth will vanish. The pain will be intense, but it is highly unlikely to drag the entire world down with it. Its impact is relatively limited because the risk is mainly concentrated on equity investors and the technology supply chain, rather than penetrating the balance sheets of the global banking system through complex financial derivatives as in 2008, thus avoiding a systemic credit freeze.
Having clarified the nature of the risk and its possible outcomes, the most critical question for investors now is no longer "whether it will collapse," but rather "how to cope."
Faced with a potential industry crisis, the core task for investors is not panic selling and exiting the market, but rather rational risk management and portfolio optimization. Now is not the time to run away, but rather to carefully prune the portfolio like a shrewd gardener. The following three specific and actionable strategies aim to help investors remain vigilant while protecting existing gains and positioning themselves for the future.
Strategy 1: Review and categorize your AI stock holdings:
Strategy Two: Think like a bank and "insure" your investment portfolio:
Strategy 3: Diversify your investments and avoid putting all your eggs in one basket:
AI is undoubtedly a technological revolution that will profoundly change all of us—that much is certain. However, its current trajectory is supported by some fragile financial structures. This places us at a critical crossroads. The real question is: do we build this bright future on the foundation of genuine innovation and sound finances, or on a fragile sandcastle built from revolving credit and financial illusions? The answer to this question will not only determine the ultimate direction of this AI feast but will also profoundly impact the financial destiny of each and every one of us in the coming years.
In summary, the AI industry is showing signs of debt-driven financial vulnerability, and its capital operation model bears disturbing similarities to historical financial bubbles. This necessitates an immediate shift in our investment strategy from "opportunity-driven" to "risk management-first." Remain vigilant, but do not panic. Our primary tasks now are to optimize portfolio structure, lock in realized profits, and comprehensively improve the quality and resilience of our holdings.


