@Prathkum: Everyone is chasing self-improving models. The bigger opportunity is self-improving products. Your users generate the b…
Summary
A perspective that the real opportunity in AI lies not in building self-improving models, but in self-improving products that leverage user learning signals for competitive advantage.
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Cached at: 06/28/26, 04:00 AM
Everyone is chasing self-improving models.
The bigger opportunity is self-improving products. Your users generate the best learning signal every single day.
I think that’s where the real competitive advantage will come from. https://t.co/sJz0nfyH3X
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