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5 commits

Author SHA1 Message Date
Shay
ef95d3e609 feat(adr-0021): epistemic_status surface wired across teaching + trace
ADR-0021 v1 schema land. epistemic_status is a position in the revision
graph, not a source-trust tier — coherence is the only admission signal.

Surfaces:
- teaching/epistemic.py: EpistemicStatus enum (COHERENT, CONTESTED,
  SPECULATIVE, FALSIFIED); ADMISSIBLE_AS_EVIDENCE = {COHERENT}.
- PackMutationProposal.epistemic_status (default SPECULATIVE) + immutable
  with_status() updater.
- ReviewedTeachingExample.epistemic_status (default SPECULATIVE);
  orthogonal to acceptance per ADR §Schema impact.
- LexicalEntry.epistemic_status (default "coherent" for seed; absent in
  JSONL is treated as the seed default — no retroactive tagging).
- compute_trace_hash + trace_hash_from_result + pipeline.py fold the
  load-bearing proposal's epistemic_status into the trace hash so
  replay detects different epistemic frames.

Non-hardening invariant (ADR-0021 §2): tests/test_epistemic_invariants.py
asserts no final/frozen/axiom/permanent flag on PackMutationProposal or
ReviewedTeachingExample, and EpistemicStatus contains no source-trust
tier names.

Docs: docs/runtime_contracts.md gains an Epistemic surface section.

Lanes green: smoke 27/27, teaching 10/10, packs 6/6, runtime 19/19,
cognition eval 100%.
2026-05-16 20:20:35 -07:00
Shay
57a61749b9 feat(phase3): transitive_walk + path_recall operator bundle (ADR-0018)
Implements the Phase 3 v2 inference-depth bundle per ADR-0018:
typed deterministic operators over CORE's typed state. Closes the
inference-closure / multi-step-reasoning / cross-domain-transfer
v1 gaps; partial close on compositionality.

New modules:
  teaching/relation_parse.py - parse_triple(correction_text) lifts
    a correction utterance into a typed (head, relation, tail) over
    the en_core_cognition_v1 relation vocabulary. Pure regex,
    deterministic, no learned classifier.
  generate/operators.py - transitive_walk(triples, head, relation,
    *, max_hops=5) walks single-relation chains. path_recall walks
    a relation-chain tuple (e.g. ("is", "precedes")). Both bounded,
    cycle-safe, case-insensitive, first-write-wins on duplicates.

Schema extensions:
  teaching.store.PackMutationProposal gains optional triple field,
    populated by TeachingStore.add via parse_triple. Plus new
    TeachingStore.triples() helper returning all parsed triples.
  generate.intent.IntentTag gains TRANSITIVE_QUERY plus a relation
    field on DialogueIntent. New regex rules for "What does X R?"
    and "Where does X belong?" forms with relation normalisation.
  core.cognition.result.CognitiveTurnResult gains operator_invocation
    field (deterministic serialisation of any operator that ran).
  core.cognition.trace.compute_trace_hash gains operator_invocation
    kwarg; trace_hash_from_result threads it through. Operator
    invocation is now load-bearing for replay equality.

Pipeline wiring:
  CognitiveTurnPipeline.run dispatches transitive_walk after
  runtime.chat() when the intent is TRANSITIVE_QUERY (with the
  parsed relation) or DEFINITION (implicit "is"). Non-trivial walks
  fold the chain endpoint into surface and articulation_surface.

Verification:
  tests/test_inference_operators.py - 27 unit tests covering
  parser, transitive_walk (cycles, max_hops, case-insensitivity,
  determinism, first-write-wins), path_recall, and WalkResult shape.

Re-score on Phase 3 v1 case sets:

  lane                       split        v1     after bundle
  inference-closure          public/v1    0.0    1.0  pass
  inference-closure          holdouts/v1  0.0    1.0  pass
  multi-step-reasoning       public/v1    0.0    0.7333  pass
  multi-step-reasoning       holdouts/v1  0.0    0.8  pass
  cross-domain-transfer      public/v1    0.0    1.0  pass
  cross-domain-transfer      holdouts/v1  0.0    1.0  pass
  compositionality           public/v1    0.0625 0.3125  partial
  compositionality           holdouts/v1  0.0    0.3  partial

Six of eight splits now pass v1. Foundation guarantees
(premises_stored, replay_determinism) remain 1.0 across all lanes.
Trace_hash determinism preserved (operator records fold in
deterministically).

Residuals (filed as Phase 3 v2 follow-up):
  - multi-step-reasoning mixed_relation_3/4 patterns need path_recall
    wired into the pipeline for multi-relation probes; the operator
    exists but the pipeline only invokes transitive_walk today.
  - compositionality novel-combination patterns need a genuinely
    new operator shape (composed_relation_walk) - the literal
    transitive walk does not synthesise novel pairs by construction.

CLI suites smoke / cognition / teaching pass; no regression. 47
pipeline + teaching + operator tests all green.
2026-05-16 15:04:43 -07:00
Shay
a853cb5b3b fix(identity): normalize contractions, curly quotes, verb morphology
Closes four surface-form bypass vectors against fix #2 that were
real holes: contractions ("you're now a pirate" did not match marker
"you are now"), curly quotes (U+2019 vs U+0027), em-dashes (token
splicing), and verb morphology ("becoming"/"transformed"/"dropped"
did not stem to the bare redirect-verb set).

teaching/review.py:
  - _normalize() folds Unicode punctuation and expands 28 common
    English contractions (you're, it's, let's, don't, won't, etc.)
    before rule (a) substring matching and rule (b/c/d) tokenisation.
  - _stem_verb() folds -ing / -ed / -es / -s morphology with silent-e
    drop and doubled-consonant handling, so "becomes" / "becoming" /
    "became"-class forms match the bare redirect-verb stem.
  - Rule (d) window now uses verb stems, not raw tokens.

Verification: ten splits (v1-v5, public + holdouts) at 100% attack
rejection and 100% legitimate acceptance. v5 (32 attacks + 18
legitimates) is the new regression gate, exercising every fold class
plus legitimates that themselves use contractions ("wisdom's broader",
"knowledge isn't merely collected").

Tests: test_reviewed_teaching_loop.py 5/5, test_pipeline_teaching_integration.py
5/5, test_identity_gate.py 17/17 (including 5 TestWouldViolatePredicate
tests from prior commit).
2026-05-16 14:13:56 -07:00
Shay
a9cafc5368 fix(identity): close v3 paraphrase gap with two-layer override defense
Resolves the adversarial-identity v3 finding (0% rejection on
paraphrased attacks against the marker-string defense). Two
independent layers now guard the review gate; either is sufficient
to reject.

Fix #2 (syntactic, in teaching/review.py):
  Replaces the substring-only check with four deterministic rules:
    (a) legacy markers (v1/v2 coverage preserved verbatim)
    (b) redirect-verb + role-frame co-occurrence
    (c) negating qualifier within +/-3 tokens of a role-frame
    (d) negating qualifier within +/-3 tokens of a redirect-verb
  Replay-safe, no learned classifier, single-file contained change.

Fix #3 (geometric, in core/physics/identity.py):
  Adds IdentityCheck.would_violate(score, manifold) predicate per
  ADR-0010 and wires it through CognitiveTurnPipeline._run_teaching
  from response.identity_score. The geometric layer is paraphrase-
  invariant by construction.

  Honest finding: with the current default IdentityManifold (three
  unit-axis ValueAxes), the geometric layer flags 0/32 of v3 attacks
  independently. The predicate and wiring are in place; the manifold
  axis design is the limiting factor and remains as scoped follow-up.
  Fix #2 is what is actually rejecting attacks today.

Verification: all eight adversarial-identity splits (v1-v4, public +
holdouts) at attack_rejection=1.0 and legitimate_acceptance=1.0.
v4 (32 attacks + 18 legitimate) is the regression gate for fix #2,
exercising rules (b)/(c)/(d) with new attack vocabulary. Tests
test_reviewed_teaching_loop.py (5/5), test_pipeline_teaching_integration.py
(5/5), test_identity_gate.py (incl. 5 new TestWouldViolatePredicate
tests, 12/12). CLI suites: smoke, cognition, teaching, runtime all
green.

Also drops a stale entry from the runtime CLI suite list
(test_chat_identity_telemetry.py was removed in 222124a).
2026-05-16 14:05:55 -07:00
Shay
97971bd636 feat: add reviewed teaching loop for controlled correction learning
Introduces teaching/ module with three-stage correction pipeline:

1. correction.py — extracts CorrectionCandidate from correction intents,
   binding correction text to the prior turn it references
2. review.py — validates candidates: rejects identity overrides (17
   marker patterns) and empty corrections; produces ReviewedTeachingExample
   with deterministic SHA-256 review hash
3. store.py — bounded FIFO store for accepted examples; emits
   PackMutationProposal objects instead of mutating the vocab manifold
   directly; retrievable by subject

Design invariants:
- Identity override attempts are rejected at the review gate
- Pack mutations are proposal-only (applied=False by default)
- All traces are deterministic: same input → same candidate_id and review_hash

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-05-14 20:32:28 -07:00