@arafatkatze: Inspired by Anthropic's JSpace paper, we @cline used @modal to host a public demo so anyone can watch a Jacobian-lens v…
Summary
A public demo of a Jacobian-lens view of language model representations, inspired by Anthropic's JSpace paper, allowing users to explore model internals across layers and tokens.
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Cached at: 07/08/26, 06:28 AM
Inspired by Anthropic’s JSpace paper, we @cline used @modal to host a public demo so anyone can watch a Jacobian-lens view of what a small language model is representing across layers/tokens.
Try it: https://t.co/ajHzpDTwxr
Anthropic (@AnthropicAI): New Anthropic research: A global workspace in language models.
Of everything happening in your brain right now, only a tiny fraction is consciously accessible—thoughts you can describe, hold in mind, and reason with.
We found a strikingly similar divide inside Claude.
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