Signal/Noise
Signal/Noise
2025-11-02
AI’s productivity revolution is creating a new class system where automation serves the powerful while displacing everyone else. From Fed Chair Powell’s warning about white-collar job losses to Meta’s $20 billion spending spree producing no clear product, we’re witnessing the fundamental reorganization of economic power—not innovation that benefits humanity.
The Great White-Collar Purge Begins
Jerome Powell just said the quiet part out loud. The Fed Chair’s warning that AI is driving corporate layoffs reveals what everyone suspected but few wanted to acknowledge: the productivity revolution isn’t creating abundance—it’s creating unemployment.
Amazon’s 14,000 white-collar cuts aren’t about efficiency. They’re about capturing AI productivity gains as pure profit rather than sharing them through wages or lower prices. When Shopify’s CEO demands employees prove why AI can’t do their job before getting resources, he’s not optimizing—he’s extracting. The same productivity tools that could reduce everyone’s working hours are instead being deployed to eliminate paychecks entirely.
The pattern is becoming undeniable. Companies like Microsoft and Intel are laying off staff while profits rise, using AI as justification for what amounts to a wealth transfer from labor to capital. Powell’s observation that ‘job creation is pretty close to zero’ while corporate executives talk constantly about AI capabilities isn’t coincidence—it’s strategy.
This isn’t the natural evolution of technology displacing workers, which historically created new categories of employment. This is deliberate policy to ensure AI’s benefits flow upward. When the productivity gains from automation could theoretically support universal basic income or dramatically reduced working hours, we’re instead seeing corporate consolidation of those gains.
The white-collar recession Powell identified isn’t a bug in the AI revolution—it’s the feature.
Meta’s $200 Billion Question Mark
Mark Zuckerberg just lost $200 billion in market cap trying to answer a simple question: what is Meta actually building? His rambling earnings call revealed the dirty secret of AI spending—nobody knows what they’re buying.
Meta’s spending $20 billion quarterly on AI infrastructure and talent, yet Zuckerberg couldn’t point to a single product that justifies the investment. Meta AI has a billion users, but only because it’s force-fed to Facebook’s existing audience. Ray-Ban glasses are interesting but hardly revolutionary. When pressed by analysts, Zuckerberg could only promise ‘novel capabilities’ and ‘massive latent opportunity’—Silicon Valley speak for ‘trust me, bro.’
This isn’t unique to Meta. The entire AI infrastructure boom resembles the dot-com era’s ‘build it and they will come’ mentality, except the capital requirements are exponentially higher. Companies are spending hundreds of billions on compute capacity based on theoretical future demand that may never materialize.
What makes this particularly dangerous is that unlike previous tech bubbles, AI infrastructure spending is justified as defensive necessity. Companies can’t afford not to invest, even without clear use cases, because being left behind could be existential. This creates a prisoner’s dilemma where rational individual behavior (massive AI spending) produces irrational collective outcomes (industry-wide capital misallocation).
The market’s violent reaction to Meta’s earnings call—a $200 billion wipeout—suggests investors are starting to question the AI spending orthodoxy. When companies can’t articulate what they’re building or when it will generate revenue, ‘trust me, bro’ stops being enough.
The Automation Paradox of Power
While AI eliminates jobs for workers, it’s creating entirely new categories of power for those who control it. Saudi Arabia’s Humain initiative and OpenAI’s safety panels reveal how AI is becoming the ultimate geopolitical and corporate weapon.
Saudi Arabia isn’t just building data centers—it’s attempting to become the world’s third-largest AI power by leveraging cheap energy to undercut competitors. Meanwhile, OpenAI has handed a Carnegie Mellon professor the authority to halt AI releases globally, effectively giving one academic more power over technological progress than most governments possess.
This concentration of AI control is unprecedented in technological history. Unlike previous innovations that eventually democratized, AI’s enormous capital requirements and specialized knowledge create natural monopolies. The companies and countries that establish early dominance may be impossible to dislodge.
The automation paradox is becoming clear: AI makes human labor obsolete while making AI controllers indispensable. Kevin Rose’s observation about entrepreneurs building billion-dollar companies from high school is only half the story. Yes, AI lowers barriers to creation—but it raises barriers to control. Those ‘vibe coding’ high schoolers will still need access to training data, compute infrastructure, and distribution networks controlled by a handful of entities.
What we’re witnessing isn’t technological progress but institutional capture. AI isn’t making society more efficient—it’s making power more concentrated. The same tools that could democratize capability are instead being deployed to centralize control.
Questions
- If AI productivity gains justified universal basic income instead of corporate layoffs, would we even need the current employment system?
- When trillion-dollar companies can’t explain what their AI investments are building, are we in a bubble or witnessing the birth of something too complex to understand?
- Is the real AI revolution not about making humans more productive, but about making humans unnecessary?
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