@FinanceYF5: Bin Yu built the PCS framework so trustworthy AI stops being a slogan and becomes something you can actually verify. As…
Summary
Bin Yu has developed the PCS framework to make trustworthy AI verifiable, addressing the challenge of increasingly opaque models.
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Cached at: 07/05/26, 02:33 PM
@agisummitai @UCBerkeley Bin Yu built the PCS framework so trustworthy AI stops being a slogan and becomes something you can actually verify. As models get more powerful and more opaque at the same time, having someone who has spent a career asking can we verify this feels less like a nice-to-have.
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