人工智能末日报告震撼美国市场
An AI doomsday report shook US markets

原始链接: https://www.theguardian.com/technology/2026/feb/24/feedback-loop-no-brake-how-ai-doomsday-report-rattled-markets

## 人工智能颠覆情景:摘要 近期分析描绘了一幅人工智能驱动的经济崩溃图景,始于人工智能代理能力的快速飞跃。这些代理自动化了以前由软件公司(如项目管理和工作流程工具)和中间商(旅行、房地产)处理的任务,消除了“摩擦”并降低了价格。消费者采用个人人工智能代理,进一步颠覆了优步、DoorDash等成熟企业,以及Visa等支付处理商,转而青睐更便宜的加密货币交易。 这种效率是以高昂的代价换来的:大规模白领失业。失业工人涌入零工经济,压低工资并减少消费者支出。这引发了负面反馈循环——公司投资*更多人工智能*,而不是人,加剧了失业。 影响延伸至金融市场,通过私人信贷违约(对现在被认为不稳定的软件公司的贷款)和随之而来的抵押贷款危机,因为工人失去收入。预计2027年可能发生的崩溃可能会抹去标准普尔500指数超过一半的市值,尽管表面上“幽灵GDP” 仍然强劲,这得益于盈利的人工智能公司。这种差距可能导致社会动荡,类似于“占领华尔街”,因为核心经济问题——大量廉价智能取代人力劳动—— 挑战了传统解决方案。核心警告:现有的经济框架尚未为人类智能唾手可得且经济价值降低的世界做好准备。

``` Hacker News新帖 | 过去 | 评论 | 提问 | 展示 | 招聘 | 提交登录 一份人工智能末日报告震撼美国市场 (theguardian.com) 19点 由geox 1小时前 | 隐藏 | 过去 | 收藏 | 2评论 帮助 vivzkestrel 12分钟前 | 下一个 [–] 还有那篇帖子是什么? 某个家伙在推特上写了一些吓唬人的东西,获得了1亿次浏览量,我不记得了回复 kittikitti 26分钟前 | 上一个 [–] 我对2026年人工智能的预测自信地包括了末日内容的激增。 至少“Citrini情景”没有让人工智能引发核战争。回复 指南 | 常见问题 | 列表 | API | 安全 | 法律 | 申请YC | 联系 搜索: ```
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原文

  • 1. AI agents remove all ‘friction’ in the economy

    The scenario begins with AI agents undergoing a “jump in capability”. This has already happened. Citrini refers to Anthropic’s Claude Code and OpenAI’s Codex, both of which have wowed users with their performance in recent months.

    The agents dent software-as-a-service companies such as Monday.com, Zapier and Asana, because they offer businesses a cheaper way to do in-house tasks , for example, managing databases and organising workflows. This forces businesses such as Oracle that rely on long-term contracts with customers into “a race to the bottom” on pricing.

    Meanwhile the AI agents wreak havoc elsewhere. The scenario imagines every consumer deciding to use their own personal agent to transact and conduct business. This completely sidelines companies that monetise “friction” in the economy, such as travel and estate agencies that operate as middlemen in processes such as booking holidays or buying property.

    Instead of using DoorDash, developers – and civilians – code up their own food delivery apps, all of which compete, fragment the market, and destroy the margins of legacy businesses. Business for Uber and other ride-sharing apps also evaporates. Instead of using Visa and Mastercard, AI agents decide to do all business in cryptocurrency, because transaction costs are cheaper. This guts traditional payment providers.

    To Citrini, this is a logical endpoint for tireless AI agents that have the time and capability to optimise everything. “Habitual app loyalty, the entire basis of the business model, simply didn’t exist for a machine,” it writes.

    In the real world, Uber, DoorDash, Mastercard and American Express shares have all fallen this week on the back of this scenario.

    An Uber cab in Manhattan, New York City. Photograph: Andrew Kelly/Reuters

  • 2. Mass white-collar unemployment

    Traditional narratives about progress envision the latest technologies creating new jobs as they destroy others. Not so with AI.

    “AI is now a general intelligence that improves at the very tasks humans would redeploy to. Displaced coders cannot simply move to “AI management” because AI is already capable of that,” Citrini writes.

    Instead, white-collar workers redeploy en masse into unstable, gig-economy jobs – the writers describe a hypothetical friend of theirs laid off from Salesforce driving for Uber. This in turn suppresses wages in the sector. The layoffs meanwhile drive down consumer spending. Companies, suffering from weakening demand, decide to invest not in workers but in more AI.

    This is “a feedback loop with no natural brake”, Citrini writes. The consequences are far-reaching when the wallets of the 10% of US workers who account for 50% of consumer spending suddenly snap shut.


  • 3. Ripples out into the broader economy

    The scenario imagines that job losses and the evisceration of software companies will ripple out into broader markets in two ways: through defaults in private credit and a mortgage crisis.

    Private credit firms, or lenders that are not banks, have been involved in restructuring a number of software businesses in recent years, taking out loans based on those businesses’ predicted annual revenue far into the future. The example Citrini gives is how Hellman & Friedman and Permira, an asset manager, took Zendesk, a software company, private in 2022 for $10.2bn (£7.6bn). The acquisition included a loan structured around the assumption that Zendesk’s revenue would be stable.

    After AI agents, that assumption is no longer holds.

    This leads to “the largest private credit software default” in history. It should be contained to software, writes Citrini, but it isn’t, because the capital on the balance sheets of the asset managers includes life insurance policies and “the savings of American households”.

    Regulators downgrade this software debt, which contributes to a 2027 crash.

    Meanwhile, there is a mortgage crisis. White-collar workers no longer have white-collar jobs and are unable make repayments on their home loans. “People borrowed against a future they can no longer believe in,” writes Citrini.


  • 4. Downward spirals

    All this makes the negative feedback loop worse.

    The first-order spiral is companies laying off workers, which weakens demand and consumer spending, which in turn leads companies to invest in more AI and lay off more workers.

    The second-order spiral is that the private credit turmoil and mortgage concerns mean that markets tighten, consumer confidence is shaken, there are more layoffs and more mortgage impairment. “Each reinforces the other,” writes Citrini.

    No financial policy tools exist to address this, because the crisis that is happening in the real economy – job losses and suppressed wages and spending – is not a result of tight financial conditions that central banks can address, but of investment in AI, which makes “human intelligence less scarce and less valuable”.

    The upshot is a crash in late 2027, driven by the mortgage markets. It wipes out 57% of the S&P.


  • 5. Occupy Silicon Valley and Ghost GDP

    Protesters take part in an Occupy Wall Street rally near the New York Stock Exchange in November 2011. Photograph: Justin Lane/EPA

    Citrini imagines the crash will throw governments into a crisis they will be unable to manage.

    “The system wasn’t designed for a crisis like this. The federal government’s revenue base is essentially a tax on human time. People work, firms pay them, the government takes a cut,” it writes.

    “The government needs to transfer more money to households at precisely the moment it is collecting less money from them in taxes.”

    AI companies, however, are doing well. The big-tech players who build and sell AI models are making fabulous sums. Because their companies make up a large share of the markets, the economy looks great on paper.

    Citrini has a term for this: ghost GDP, that is “output that shows up in the national accounts but never circulates through the real economy”.

    The social fabric frays and a movement styled after Occupy Wall Street blockades the offices of AI firms for weeks on end.

    Citrini’s scenario ends with a caution: “This is the first time in history the most productive asset in the economy has produced fewer, not more, jobs. Nobody’s framework fits, because none were designed for a world where the scarce input became abundant. So we have to make new frameworks. Whether we build them in time is the only question that matters.”

    The impact of the Citrini scenario has startled some commentators, including experts who say AI tools are not yet capable of enacting it. Stephen Innes, a managing partner at SPI Asset Management, says AI thought pieces have become market movers.

    “We have watched this market absorb wars, sticky inflation, banking tremors and tariff theatrics with a shrug, yet a widely circulated Substack thought piece is enough to knock it sideways,” he said.

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