core/scripts
Shay c9dfad3017 feat: convergent graph diffusion with exponential-map versor unitization
Replace the divergent rotation-based diffusion operator with a linear
blend + exponential-map re-unitization approach that converges in ~28
steps while maintaining vc < 1e-6.

Key changes:
- GraphDiffusionOperator now averages neighbors in multivector space and
  re-projects via per-plane exponentials (cos/sin for rotations, cosh/sinh
  for boosts in Cl(4,1))
- run_pulse V3: per-token graph topology with input-driven output node,
  recall via VocabManifold.nearest(), --no-glove flag for compiled pack
- Tests updated for V3 API

Different inputs now produce different recall rankings from the compiled
en_core_cognition_v1 vocabulary, completing Threshold 1 (Semantic Encoding).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-05-15 17:02:47 -07:00
..
__init__.py scripts: add run_examples.py + review_trace.py; cli: surface TurnEvent in trace/session 2026-05-14 13:54:25 -07:00
review_trace.py scripts: add run_examples.py + review_trace.py; cli: surface TurnEvent in trace/session 2026-05-14 13:54:25 -07:00
run_examples.py scripts: add run_examples.py + review_trace.py; cli: surface TurnEvent in trace/session 2026-05-14 13:54:25 -07:00
run_pulse.py feat: convergent graph diffusion with exponential-map versor unitization 2026-05-15 17:02:47 -07:00