@Diyi_Yang: The next frontier of AI is not only more capable model; it is an AI that *humans* can meaningfully live and work with :…
Summary
A Stanford class on Human-Centered LLMs releases a 60+ page report covering design, data sourcing, training, evaluation, and deployment for developing AI that humans can meaningfully work with.
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Cached at: 05/21/26, 03:42 PM
The next frontier of AI is not only more capable model; it is an AI that humans can meaningfully live and work with :)
With all students in my cs329x Human-Centered LLM class, we present 60+ pages of insights for developing Human-Centered LLMs (HCLLMs), from design & data sourcing to training, eval & deployment
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