core/generate
Shay 83443bd071 feat(adr-0046): PropositionGraph as forward constraint + industry demos
Closes the structural gap identified in the 2026-05-17 assessment:
the PropositionGraph was a post-hoc descriptor of what the field walk
already produced.  It is now a forward constraint that shapes what the
walk is ALLOWED to produce.

== generate/graph_constraint.py (new) ==

GraphConstraint — converts a PropositionGraph into an AdmissibilityRegion
before generate() runs, not after.  The region's allowed_indices are the
intersection of:
  - subject versor neighbourhood (top-k by CGA inner product)
  - object versor neighbourhood (top-k by CGA inner product)
  - any explicitly named node surfaces already in-vocabulary

This is the Pillar 1 → Pillar 2 coupling that was missing:
  geometry (CGA) → structure (graph) → propagation (generate)

build_graph_constraint(graph, vocab, *, top_k) is the public entry.
The region label encodes the graph's root node IDs so the admissibility
trace identifies the constraint source.

== generate/stream.py (updated) ==

generate() already accepts an AdmissibilityRegion.  No new API needed —
graph_constraint.build_graph_constraint() produces one.

== evals/industry_demos/ (new) ==

Four standalone demo scripts that each make ONE falsifiable claim no
transformer-LLM wrapper can reproduce.  Each script runs independently
via `python -m evals.industry_demos.<name>` and exits 0 on pass / 1 on
fail.  Each prints structured evidence to stdout.

  demo_01_forward_constraint.py
    Claim: When the PropositionGraph names subject=light, obj=truth, the
    generation walk is constrained to the CGA neighbourhood of those
    versors BEFORE any tokens are produced.  The allowed_indices set is
    computed from geometry, not from a prompt filter.  Demonstrated by
    showing the AdmissibilityRegion is non-trivial (< full vocab) and
    that all generated tokens score positive CGA inner product against
    the constraint field.

  demo_02_geometry_drives_identity.py
    Claim: Swapping the identity pack (precision_first vs generosity_first)
    on identical input produces structurally different surfaces via the
    manifold alignment path — not via a system-prompt swap.  Demonstrated
    by running two ChatRuntime instances with different identity_pack IDs
    on the same text, showing hedge_rate and identity_score.alignment
    differ, and that the manifold alignment_threshold differs at the
    algebra level (not just the text level).

  demo_03_deterministic_audit.py
    Claim: Three independently constructed ChatRuntime instances on the
    same input produce byte-identical JSONL audit lines.  Demonstrated
    by attaching JsonlBufferSink to each, running chat(), and asserting
    hash equality of the emitted lines (modulo the 'turn' field which is
    per-instance sequential).  This is architectural determinism — not
    seeded randomness.

  demo_04_exact_recall_scale.py
    Claim: CGA vault recall is exact (100%) at N=100, N=1_000, N=10_000.
    The needle versor is recovered at rank-1 by cga_inner scan regardless
    of vault size.  No approximate nearest-neighbour index.  No FAISS.
    No degradation curve.  Demonstrated inline with timing so the
    linear-scan cost is visible alongside the 100% recall.

== tests/test_graph_constraint.py (new) ==

8 tests:
  - build_graph_constraint returns an AdmissibilityRegion
  - allowed_indices is a strict subset of vocab (non-trivial constraint)
  - all constraint indices score positive cga_inner against at least
    one node versor
  - empty graph returns unconstrained region (safe fallback)
  - two-node graph unions both neighbourhoods
  - constraint label encodes root node IDs
  - round-trip: constraint region feeds generate() without raising
  - forward vs post-hoc: constrained walk produces tokens in the
    region; unconstrained walk may not (statistical, seeded vocab)

Co-Authored-By: Perplexity AI
2026-05-17 23:58:30 -07:00
..
__init__.py feat(generate): export SentenceAssembler, SentencePlan, assemble_surface from __init__ 2026-05-14 13:24:19 -07:00
admissibility.py feat(adr-0026): Phase 3 — ranked admissibility with margin 2026-05-17 15:03:03 -07:00
articulation.py
attention.py
dialogue.py Fix test suite errors across core physics and generation 2026-05-14 13:02:32 -07:00
exhaustion.py feat(adr-0025): Phase 4 — rotor / frame admissibility at the seam 2026-05-17 15:16:32 -07:00
graph_constraint.py feat(adr-0046): PropositionGraph as forward constraint + industry demos 2026-05-17 23:58:30 -07:00
graph_planner.py feat(realizer): extend to all 13 English v1 constructions 2026-05-16 05:55:49 -07:00
intent.py feat(compositionality): compose_relations operator lifts lane 68.8% → 100% 2026-05-16 22:44:06 -07:00
intent_bridge.py fix(generate): wire intent-aware realizer into chat hot path 2026-05-16 08:38:59 -07:00
intent_ratifier.py feat(adr-0022): Forward Semantic Control — Accepted 2026-05-17 12:10:20 -07:00
morphology.py fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
operators.py feat(compositionality): compose_relations operator lifts lane 68.8% → 100% 2026-05-16 22:44:06 -07:00
proposition.py feat(adr-0022): Forward Semantic Control — Accepted 2026-05-17 12:10:20 -07:00
realizer.py feat(benchmarks): discourse_paragraph lane + pipeline profiler + word-selection tracer 2026-05-16 21:53:46 -07:00
render.py
result.py feat(adr-0023): Forward Semantic Control proof evidence — Accepted 2026-05-17 12:55:19 -07:00
rotor_admissibility.py feat(adr-0025): Phase 4 — rotor / frame admissibility at the seam 2026-05-17 15:16:32 -07:00
salience.py
semantic_templates.py feat: vault recall index, Rust versor parity, cognitive pack expansion 2026-05-15 15:34:39 -07:00
stream.py feat(adr-0025): Phase 4 — rotor / frame admissibility at the seam 2026-05-17 15:16:32 -07:00
surface.py feat(surface): ADR-0031 — score-decomposition surface (per-axis hedges) 2026-05-17 20:16:22 -07:00
templates.py fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00