core/evals
Shay 257a27c105 feat(benchmarks): discourse_paragraph lane + pipeline profiler + word-selection tracer
Closes the user-flagged scope gap: every previous fluency lane (Phase
5.1 + 5.4-5.7 + grammatical_coverage) operates on 3-word SVO probes.
These three pieces stress paragraph-scale generation, give per-stage
latency visibility, and expose the realizer's word-choice geometry —
all on top of the existing deterministic infrastructure.

# discourse_paragraph lane (paragraph-scale fluency)

Forces the realizer to emit multi-sentence paragraphs from a
multi-step ArticulationTarget with rhetorical moves (ASSERT, SEQUENCE,
ELABORATE, CONTRAST).  Same realizer, much richer input — every case
is 3-5 sentences with deterministic discourse markers.

Public 12 cases / holdouts 5 / dev 1 across 12 + 5 topic chains
(epistemic, scientific method, creation arc, logical dependency,
ethical grounding, linguistic layers, mathematical chain, narrative,
biology, physics, two contrast-shaped, musical, social, computational,
psychological, economic).

Sub-metrics per case:
  - sentence count (within min..max window)
  - subject coverage rate
  - discourse marker presence (next / furthermore / in contrast)
  - sentence-initial capitalization
  - replay determinism (run twice, surfaces match)

Result: 12/12 public + 5/5 holdouts at 100%, replay rate 100%, mean
sentence count 4.

# Realizer capitalization (G4, addresses user-flagged concern)

generate/realizer.py gains `_capitalize_sentence` + `_join_as_paragraph`
helpers.  Sentence-initial alphabetic characters are now uppercased
(skipping leading whitespace/punctuation).  Surfaces went from
"wisdom grounds knowledge. next, knowledge requires evidence."
to
"Wisdom grounds knowledge. Next, knowledge requires evidence."

The discourse_paragraph runner ships a strict per-sentence
capitalization check so future regressions get caught.

# Pipeline-stage profiler (benchmarks/pipeline_profiler.py)

External monkey-patch wrapper around CognitiveTurnPipeline.run() that
records per-stage ns budgets without editing any pipeline source.
Stages: intent, graph_planner, realize_semantic, runtime_chat,
maybe_transitive_walk, fold_walk_into_surface, run_teaching,
trace_hash.

API: `profile_turn(pipeline, text) -> ProfileReport` with
`.stages: dict`, `.total_ns: int`, `.as_dict()`.

Empirical: runtime_chat dominates >99% on the runtime hot path (which
is correct — that's where ingest + propagate + recall + articulate
all happen).  Future optimisation work has a clear per-stage signal.

# Word-selection tracer (benchmarks/word_selection_tracer.py)

External wrapper around generate.articulation._resolve_slot that
records every nearest-neighbor lookup as a WordSelectionStep:
  - slot (subject/predicate/object)
  - input versor (32-d copy)
  - top-K candidate words by CGA inner product
  - chosen word + morphology
  - output language

Top-K scoring uses the diagonal Cl(4,1) metric kernel from
algebra.backend (same vectorised path vault_recall uses), not a
per-word Python loop over cga_inner.  No approximation, exact
deterministic ranking, bit-identical to a scalar scan.

API: `trace_realization(pipeline, text) -> RealizationTrace` with
`.steps`, `.realization_steps`, `.surface`, `.as_dict()`.

# CLI lane registration

Cognition suite now sweeps the benchmark profiler/tracer tests
(test_benchmarks_profiler.py) so any future regression in the
instrumentation surfaces immediately.

# Constraints honoured

- Zero edits to core/, chat/, vault/, teaching/, language_packs/, or
  the algebra hot path.  All instrumentation is external monkey-patch
  with originals restored in finally.
- discourse_paragraph runner bypasses ChatRuntime grounding (named v2
  gap) so paragraph capability is isolated to the realizer.
- No semantic changes; no hidden normalisation; no approximate
  recall.

# Lane health

smoke 55, runtime 19, teaching 17, packs 6, cognition 105 (was 103),
algebra 132.  All Phase 5 fluency lanes still 100% with the
capitalised surfaces (rubric is case-insensitive).  discourse_paragraph
100%.

# What ships next (named v2)

- Round-trip: discourse_paragraph through ChatRuntime end-to-end,
  not just realize_target.
- Per-sentence grammatical_coverage rubric on each emitted sentence.
- Longer chains (10/20/50 sentences) with per-sentence determinism
  scaling curves.
- compose_relations operator to lift compositionality recall from
  68.8% toward 100%.
2026-05-16 21:53:46 -07:00
..
adversarial_identity docs(identity): empirical finding — fix #3 needs upstream ingest-gate work 2026-05-16 14:23:20 -07:00
calibration fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
classical_literature_ood fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
cognition feat(evals): Phase 0 — benchmark methodology lock-in and eval framework 2026-05-15 22:36:53 -07:00
compositionality feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
cross_domain_transfer feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
discourse_paragraph feat(benchmarks): discourse_paragraph lane + pipeline profiler + word-selection tracer 2026-05-16 21:53:46 -07:00
elementary_mathematics_ood fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
english_fluency_ood fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
foundational_biology_ood fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
foundational_physics_ood fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
grammatical_coverage fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
hebrew_fluency feat(phase5): land 5.2–5.7 — six new fluency lanes, parallel sweep 2026-05-16 20:59:31 -07:00
identity_divergence feat(evals): identity-divergence lane v1 - 93 curriculum events, two axis profiles (Precision/Generosity), divergence/coherence/causal metrics (all pass) 2026-05-16 06:48:13 -07:00
inference_closure feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
introspection feat(phase3): core/cognition/explain.py — close Gap 3 introspection 2026-05-16 15:09:48 -07:00
koine_greek_fluency feat(phase5): land 5.2–5.7 — six new fluency lanes, parallel sweep 2026-05-16 20:59:31 -07:00
long_context_cost feat(phase4): long-context-cost lane + ADR-0019 Stage 1 vault recall vectorisation 2026-05-16 16:39:30 -07:00
monotonic_learning feat(evals): v3 lanes — monotonic-learning passes, adversarial-identity reveals gap 2026-05-16 13:42:47 -07:00
multi_agent_composition fix(gaps): close G1+G2+G3 + identity vocab + pipeline safety-stub honour 2026-05-16 21:21:06 -07:00
multi_step_reasoning feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
provenance feat(evals): parallel runner + adversarial-identity v2 2026-05-16 13:10:26 -07:00
reports
sample_efficiency feat(phase4): sample-efficiency v1 — first quantitative-curve lane 2026-05-16 15:39:28 -07:00
symbolic_logic feat(evals): v2 lanes for calibration and symbolic-logic 2026-05-16 13:17:41 -07:00
zero_code_domain_acquisition feat began creation of zero code domain acquisition. did not complete yet. 2026-05-16 06:31:01 -07:00
__init__.py
baseline_runner.py feat(evals): frontier structural-zero baselines for Phase 2 v1 lanes 2026-05-16 12:45:28 -07:00
cognition_cases.jsonl
framework.py feat(evals): Phase 0 — benchmark methodology lock-in and eval framework 2026-05-15 22:36:53 -07:00
holdout_runner.py feat(evals): Phase 0 — benchmark methodology lock-in and eval framework 2026-05-15 22:36:53 -07:00
metrics.py
parallel.py feat(evals): parallel runner + adversarial-identity v2 2026-05-16 13:10:26 -07:00
run_cognition_eval.py