Elon Musk predicts AI will create abundance and make work optional. 'Big Short' Michael Burry sees 'revolution' first.
THE SO WHAT
When one camp is talking universal high incomes and optional work while another warns of revolution, you’re looking at a massive expectations gap around AI’s distributional effects. Leaders deploying automation at scale need a labor and social-risk thesis on paper—not just a cost-savings model.
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