U.S. concern over a potential artificial intelligence bubble is rising, with Google searches for the term “AI bubble” surging 950% year-over-year.
The search popularity has climbed from a reading of 8 a year ago to 84 by the week ending November 15, after briefly hitting peak interest at 100 during the week ending November 1. According to Google Trends data retrieved by Finbold on November 16.
Notably, the surge is most pronounced in influential policy and tech regions. The District of Columbia leads the nation in search interest, followed by Washington state, Massachusetts, Maryland, and New York.

The acceleration reflects growing anxiety over whether AI’s financial boom resembles the early stages of the Dot-com bubble, or whether the technology’s fundamentals are strong enough to produce a different outcome.
The spike also aligns with a wave of warnings from economists, investors, and central banks. Many argue that parts of the AI ecosystem have become detached from business fundamentals.
Valuations for AI startups have soared despite limited and often experimental revenue streams, and corporations are pouring vast sums into data centers and compute infrastructure without clear evidence of near-term returns.
Several analyses indicate that most companies deploying generative AI have yet to see meaningful productivity gains or cost savings, echoing the mismatch between hype and profit that characterized the late 1990s.
Is AI bubble possible?
However, while the parallels to the Dot-com era are notable, the AI boom led by companies such as Nvidia (NASDAQ: NVDA) and Palantir (NASDAQ: PLTR) differs in several key ways. The internet bubble was driven largely by unproven business ideas and a rush to establish online presence before monetization models existed.
By contrast, AI’s core capabilities are already embedded in search, cloud platforms, enterprise software, and consumer applications.
Major technology companies investing heavily in AI today are profitable, cash-rich, and operating established businesses, unlike the speculative startups that dominated the dot-com period.
Additionally, AI infrastructure, such as semiconductors and data centers, supports real and growing demand rather than purely theoretical future value.
Yet these strengths don’t eliminate risk. Economists warn that even if AI proves transformative over the long term, today’s spending pace may be unsustainable and could trigger a painful correction if revenue fails to keep up. The concern is that companies may be overbuilding compute capacity and overestimating how quickly businesses can adopt and monetize advanced AI systems.
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Source: https://finbold.com/u-s-google-searches-for-ai-bubble-skyrockets-950/