
Import AI 464: Fables writes GPU kernels; AI automation; and analog computation
THE SO WHAT
If models can reliably write GPU kernels, the bottleneck in high-performance AI work shifts from low-level optimization to problem framing and verification. Teams doing custom acceleration should start experimenting with AI-assisted kernel generation now, but keep a tight human review loop around performance and correctness.
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