Jiang predicts the AI bubble will eventually burst but says insiders can prolong it for years and still secure a government bailout because the game is rigged and capital is concentrated.
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Government bailout
A transcript-matched topic anchored by excerpts such as "ceasefire um between um the united states and iran this ceasefire it's all theater i mean like it's all to buy time um they're..."
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Topic Scope And Freshness
A transcript-matched topic anchored by excerpts such as "ceasefire um between um the united states and iran this ceasefire it's all theater i mean like it's all to buy time um they're..."
Key Notes
Timestamped Evidence
"ceasefire um between um the united states and iran this ceasefire it's all theater i mean like it's all to buy time um they're..."
"has been controlled by a few group of people a few select group of people right so what is so what if the bubble..."
"...a revolution in America. AI can actually be saved. Okay? With government bailout. And that's what I imagine will happen. Okay? AI and finance,..."
"...sector and the tech sector, and they are all looking for government bailouts when their bubble bursts. But the government doesn't have infinite money...."
Relevant Lectures And Readings
This first founding-members stream matters less as a news recap than as a method demonstration.
The midterm turns a ceasefire into a world model: history moves like a river, eschatology makes prophecy into a plan, and the people who survive collapse are not the ones with the best machines...
The lecture names the law of proximity: people and nations play many games at once, but the nearest game is the one that governs action.
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