Fortune | FORTUNE 09月28日
AI投资热潮与2000年互联网泡沫的相似与不同
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文章深入探讨了当前人工智能(AI)投资热潮与2000年互联网泡沫的惊人相似之处,特别是在巨额投资、对未来潜力的追逐以及基础设施的过度建设方面。然而,文章也指出了关键区别,例如当前AI公司已具备可观的收入,而非像许多早期互联网公司那样缺乏盈利能力。通过回顾 dot-com 泡沫的成因,如美联储加息、全球经济衰退以及商业模式的缺陷,文章为理解AI行业的未来发展提供了历史借鉴,并强调了经济规律在技术变革中的重要性,警示投资者需关注短期回报的可行性,以避免重蹈覆辙。

📈 **巨额投资与未来潜力追逐:** 当前AI行业吸引了史无前例的巨额投资,全球企业AI投资额高达2523亿美元,科技巨头也纷纷承诺投入巨资建设AI基础设施。这种现象与20年前互联网公司基于转型潜力而非当前盈利能力吸引投资的模式高度相似。

🏗️ **基础设施的过度建设与风险:** 2000年互联网泡沫破裂前,通信行业曾出现大规模光纤网络过度投资,导致大量“暗光纤”闲置。如今,AI领域也出现了类似的大规模数据中心建设潮,如Meta计划建造覆盖曼哈顿大部分区域的数据中心,以及旨在建立全国性AI数据中心网络的“星际之门”项目。这引发了对未来需求是否能支撑如此庞大投资的担忧。

💰 **商业模式与盈利能力是关键:** dot-com 泡沫的重要教训在于许多互联网公司缺乏可持续的商业模式,导致估值虚高。尽管当前AI巨头如微软和OpenAI已实现可观收入,但文章指出,AI投资与AI相关收入之间仍存在巨大差距,且大量AI试点项目未能产生预期效果。这表明,AI公司最终仍需证明其商业价值和盈利能力,以应对市场“现实检验”。

💡 **历史借鉴与审慎投资:** 文章强调,AI作为一项变革性技术,其发展不可避免,但其实现速度和市场接受度可能不如早期乐观者预期。回顾互联网泡沫的经验,投资者应关注AI公司能否通过短期回报来证明其高估值和基础设施投资的合理性,避免盲目追逐热点,认识到即使是颠覆性技术也需遵循经济规律。

The similarities are striking. Like the internet companies of two decades ago, AI firms today attract massive investments based on transformative potential rather than current profitability. Global corporate AI investment reached $252.3 billion in 2024, according to research from Stanford University, with the sector growing thirteenfold since 2014. Meanwhile, America’s biggest tech companies—Amazon, Google, Meta, and Microsoft—have pledged to spend a record $320 billion on capital expenditures this year alone, much of it for AI infrastructure.

Even OpenAI CEO Sam Altman, whose company is valued at approximately $500 billion despite launching ChatGPT just two years ago, acknowledges the parallels. “

Are we in a phase where investors as a whole are overexcited about AI? My opinion is yes,” Altman said in August. “Is AI the most important thing to happen in a very long time? My opinion is also yes.”

But what actually caused the dot-com bubble to burst in March 2000, and what lessons does it offer for today’s AI boom? Let’s take a stroll down memory lane—or, if you weren’t born yet, some plain ole history.

The perfect storm of 2000

The dot-com crash wasn’t triggered by a single event, but rather a convergence of factors that exposed fundamental weaknesses in the late 1990s tech economy. The first critical blow came from the Federal Reserve, which raised interest rates multiple times throughout 1999 and 2000. The federal funds rate climbed from around 4.7% in early 1999 to 6.5% by May 2000, making speculative investments less attractive as investors could earn higher returns from safer bonds.

The second catalyst was a broader economic recession that began in Japan in March 2000, triggering global market fears and accelerating the flight from risky assets. This one-two punch of higher rates and global uncertainty caused investors to reassess the astronomical valuations of internet companies.

But the underlying problem ran much deeper: Most dot-com companies had fundamentally flawed business models. Commerce One reached a $21 billion valuation despite minimal revenue. TheGlobe.com, founded by two Cornell students with $15,000 in startup capital, saw its stock price jump 606% on its first day of trading to $63.50, despite having no revenue beyond venture funding. Pets.com burned through $300 million in just 268 days before declaring bankruptcy.

Infrastructure overbuild

Perhaps the most instructive parallel for today’s AI boom lies in the massive infrastructure overinvestment that preceded the dot-com crash. Telecommunications companies laid more than 80 million miles of fiber optic cables across the U.S., driven by WorldCom’s wildly inflated claim that internet traffic was doubling every 100 days—far beyond the actual annual doubling rate.

Companies like Global Crossing, Level 3, and Qwest raced to build massive networks to capture anticipated demand that never materialized. The result was catastrophic overcapacity. Even four years after the bubble burst, 85% to 95% of the fiber laid in the 1990s remained unused, earning the nickname “dark fiber.”

Corning, the world’s largest optical-fiber producer, saw its stock crash from nearly $100 in 2000 to about $1 by 2002. Ciena’s revenue fell from $1.6 billion to $300 million almost overnight, with its stock plunging 98% from its peak.

The parallels to today’s AI infrastructure buildout are unmistakable. Meta CEO Mark Zuckerberg announced plans this year for an AI data center “so large it could cover a significant part of Manhattan”. The Stargate Project, backed by OpenAI, SoftBank, Oracle, and MGX, aims to develop a $500 billion nationwide network of AI data centers.

Yet, crucial differences exist. Unlike many dot-com companies that had no revenue, major AI players are generating substantial income. Microsoft’s Azure cloud service, heavily focused on AI, grew 39% year-over-year to an $86 billion run rate. OpenAI projects $20 billion in annualized revenue by the end of the year, according to The Information, up from around $6 billion at the start of the year.

The big reality check

The dot-com crash ultimately came down to a harsh reality: Most internet companies couldn’t justify their valuations with actual business results. Companies were valued based on website traffic and growth metrics rather than traditional measures like cash flow and profitability.

Today’s AI companies face a similar test. While AI investment has reached historic levels, the revenue gap remains substantial. According to tech writer Ed Zitron, Microsoft, Meta, Tesla, Amazon, and Google will have invested about $560 billion in AI infrastructure over the last two years, but have brought in just $35 billion in AI-related revenue combined.

A recent MIT study found that 95% of AI pilot projects fail to yield meaningful results, despite more than $40 billion in generative AI investment. This disconnect between investment and returns echoes the fundamental problem that ultimately doomed the dot-com bubble.

The question facing investors today isn’t whether AI will transform the economy—most experts agree it will. The question is whether current valuations and infrastructure investments can be justified by near-term returns, or whether, like the fiber-optic cables of the 1990s, much of today’s AI infrastructure will sit unused while the market awaits demand to catch up with supply. As history shows, even transformative technologies can’t escape the gravitational pull of economics—so while the internet did change the world, it didn’t happen as quickly as some of its early champions promised, and several of those people who got ahead of themselves were humbled in the process.

For this story, Fortune used generative AI to help with an initial draft. An editor verified the accuracy of the information before publishing.

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AI投资 互联网泡沫 dot-com crash 科技投资 人工智能 AI 经济规律 估值 基础设施 科技泡沫
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