Billionaire investor Ray Dalio has warned that an AI bubble is forming — and that the dynamics pushing it could pose risks to broader markets. Speaking to Bloomberg Television, Dalio said that while every major technological revolution spawns speculative excess, AI is no different: companies today may be forced to overspend to keep up or risk being left behind. He accepts that AI will reshape the world, but cautioned that buying into the companies building the tech may not be a lucrative play. In Dalio’s view, a bubble popping would amount to a revaluation where “paper money” gets converted into “real money.” Dalio’s caution joins a growing chorus of high-profile skeptics. Michael Burry, famous for predicting the 2008 housing crash, warned the current environment echoes the dot-com bubble and has taken concrete action by opening short positions against Tesla and Nvidia. That concern isn’t limited to individual investors. The Bank for International Settlements (BIS) flagged systemic risks if the AI boom fades: debt-fueled spending on AI data centers, opaque financing structures and growing private credit exposure could create contagion that threatens the global financial order. Voices from China’s hedge fund community have been equally alarmed. Wealspring Asset called the trend a “super bubble,” with founder Yang Dong warning “the collapse point may not be far away.” Shanghai Banxia went further, saying “the trigger for the AI bubble to burst has already appeared.” Still, there are important distinctions between today’s AI surge and the 1990s dot-com excess. Unlike many speculative internet plays from that era, the firms leading the current rally are delivering tangible products and profits and are responding to clear, high public demand. The flood of new AI platforms, proponents argue, stems from genuine market need — a factor that could help cushion the industry from a classic bubble implosion. For crypto markets and traders watching macro liquidity and risk appetite, the debate matters. A sharp unwind in AI valuations or stress in related financing channels could ripple through risk-on assets, while continued real-world adoption might justify current investments. Either way, the conversation around AI’s economic footprint is shifting from hype to hard questions about leverage, profitability and systemic exposure. Read more AI-generated news on: undefined/news
