Fields Medal winning mathematician Timothy Gowers used GPT5.5 Pro to solve open problems, believes mathematical research will face a ‘crisis’ very soon with current rate of progress
Summary
Fields Medalist Timothy Gowers reports using GPT5.5 Pro to solve open mathematical problems and predicts an imminent crisis in mathematical research due to rapid AI progress.
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@wtgowers: I've recently got in on the act of getting AI to solve open problems in mathematics. More precisely, I gave some questi…
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