Anthropic's new "J-lens" reveals a silent workspace inside Claude that mirrors a leading theory of consciousness
THE SO WHAT
If J-lens can reliably surface a “silent workspace” inside Claude that tracks global workspace theory, interpretability just got a concrete handle on model internals. For enterprises, this opens the door to audits that look at what the model considered—not just what it said—when decisions carry real risk.
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