I’m trying to use AI to build new economic models.

Reddit r/ArtificialInteligence News

Summary

The author proposes using AI to scan signals from power grids, datacenters, and other sources to extract changes in power dynamics and generate better questions about the AI economy, rather than just answering existing questions.

Not “AI writes economics content.” Something more interesting. AI scans signals from: power grids, datacenters, chips, compute, capital, labor, institutions. Then extracts: what changed, who gains power, who loses power, what breaks, what questions matter. That becomes the raw material for new models of the AI economy. Basically: AI should not just answer questions. It should help us manufacture better questions.
Original Article

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