Anthropic calls for top AI labs to weigh slowing or temporarily pausing development, suggesting that self-improving AI systems may soon pose societal risks (Wall Street Journal)
THE SO WHAT
A frontier lab publicly floating a slowdown because of self-improving systems is a line in the sand — capability risk is now a board-level variable, not a Twitter debate. If your roadmap assumes uninterrupted model scaling, you’re exposed to a regime change in both regulation and upstream model access.
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