* docs(ADR-0172): math-domain corpus-decomposition mechanism (Learning Arc analog)
Scoping ADR for the math-domain analog of cognition's
`teaching/contemplation.py` corpus-decomposition loop (Learning Arc
milestone 2026-05-25).
## What this ADR scopes
A mechanism that reads the math audit corpus and emits
`MathReaderRefusalShapeProposal` records — structural commonalities
across N refusal cases, paired with the candidate mechanism change
that would resolve them (matcher extension, injector sub-shape,
vocabulary addition, frame reclassification).
Today the operator does this decomposition by hand (reads
audit_brief_11.md, identifies the commonality across 21 DCS
refusals, scopes the matcher/injector extension, files a focused PR).
ADR-0172 shifts the decomposition to the engine, with HITL
ratification preserved.
## Sequencing — explicit
ADR-0172 ships AFTER ADR-0170 (injector contract widening),
ADR-0168 (FrameClaim handler), and ADR-0169 (CompositionClaim
handler — reserved). Without those substrates, the decomposer can
identify patterns but cannot route them to a ratification handler
that knows how to materialize them. Cognition's learning arc
followed this same sequencing: substrate first, then decomposer.
## Why this matters
ADR-0167 LexicalClaim shipped the math-domain wire from refusal →
evidence → operator-ratification. ADR-0172 closes the gap to the
engine-decomposes loop — the moment cognition's learning arc
qualitatively shifted from "engine refuses + operator authors" to
"engine teaches itself through reviewed correction."
The Learning Arc memory entry (2026-05-25) names that moment as
when measurable progress accelerated. ADR-0172 makes the math-domain
trajectory toward the same loop explicit in the queue.
## Hard invariants preserved
- wrong=0 by construction (proposals are evidence-only)
- ADR-0166: no new eval lanes
- No teaching-store / pack mutation
- No non-deterministic mechanism (rule-based grouping, not learned
classification)
- Cross-domain partition (ADR-0167 W2-C) preserves cognition
contemplation behavior
No code, no test, no eval, no pack change in this PR.
## Cross-references
- ADR-0056/0057 — cognition contemplation/proposal substrate (template)
- ADR-0167 + FOLLOWUPS §1 — parent evidence wire
- ADR-0168 + ADR-0168.1 — FrameClaim (ratification target)
- ADR-0169 (reserved) — CompositionClaim (ratification target)
- ADR-0170 — injector contract widening (substrate prerequisite)
- Memory: Learning Arc Milestone 2026-05-25 — the moment to recreate
- Thesis: decoding, not generating — the principle preserved
* amend(ADR-0172): add Tier 2 — intensional contemplation with test-and-learn loop
Per operator feedback during ADR-0172 review: the corpus-decomposition
mechanism should not only emit explicit rules (extensional) but also
develop inference (intensional) — recognizing structural equivalence
classes across surface variations without enumerating them.
## Tier 2 — intensional contemplation
Engine recognizes that 'Sam has 5 apples' and 'Sam collected 5 apples'
carry the same canonical proposition structure, without an explicit
verb-list extension. Emits MathReaderInferenceProposal records that
name structural equivalence classes rather than enumerable rules.
This is the thesis word the original draft missed: rationalization.
Tier 1 ratifies rules; Tier 2 ratifies inference.
## Test-and-learn loop
Tier 2 proposals carry held-out test evidence:
1. Decomposer surfaces hypothesis
2. Held-out subset of corpus reserved
3. Bridge applied to held-out cases; admissibility gates run
4. Outcome scored (positive / negative / neutral)
5. Negative-evidence proposals auto-rejected before HITL
6. Operator reviews proposal + test result, not bare claim
This makes Tier 2 thesis-coherent: engine decodes a structural
pattern, tests it against unseen corpus cases, surfaces the test
result. Wrong=0 cannot leak through — held-out test failures reject
internally.
## Updated implementation outline
Tier 1 wave: W1-W4 (schema, decomposer, CLI, workbench integration)
Tier 2 wave: W5-W9 (schema, equivalence-class recognizer, test-and-learn
loop, HITL integration, bridge application path)
## Hard invariants preserved at both tiers
- wrong=0 by construction (Tier 1: evidence-only proposals; Tier 2:
held-out test rejects wrong-admitting bridges internally)
- ADR-0166: no new eval lanes
- No non-deterministic mechanism (rule-based grouping + deterministic
test-and-learn, not learned classification)
- Cross-domain partition preserves cognition contemplation behavior
* amend(ADR-0172): split Tier 2 test-and-learn into two-arm confirmation
Per operator feedback during ADR-0172 review: 'confirm against known
facts/prior solutions' is the missing arm. The Tier 2 test-and-learn
loop now has BOTH:
- Arm 1 (negative / wrong=0 on held-out refusals) — already drafted
- Arm 2 (positive / known-good preservation) — NEW
Arm 2 inherits ADR-0057's replay-equivalence contract: any
inferential bridge that would change a currently-correct outcome is
REJECTED INTERNALLY before reaching HITL, even if the new outcome is
defensible. Existing truth survives; new truth is gated.
Both arms must PASS or be neutral. Either arm rejecting → proposal
does not reach the operator. This makes the engine's reasoning
provably conservative: it confirms against truth it already knows AND
truth it hasn't yet decided.
The 5-step proposal lifecycle is updated to reflect both arms +
test-set partition + per-case verdict tables in the emitted proposal.
No code change. No runtime effect.
* amend(ADR-0172): add foundational reasoning-articulation substrate
Per operator feedback: for the engine to infer/test/learn from
feedback, it must first be able to ARTICULATE its own reasoning in a
structured, persistent, replayable form.
Articulation is the project thesis's 5th anchor ("listen → comprehend
→ recall → think → articulate → learn from reviewed correction →
replay"). Today CORE articulates SURFACE (templated realizer output)
but does not articulate REASONING — the inference chain that took the
engine from refusal corpus to hypothesis to proposal.
Without reasoning-articulation, none of the three loops can work:
- Loop 1 (self-test) has nothing to record about what it tested or why
- Loop 2 (HITL review) sees a black-box conclusion, not inference chain
- Loop 3 (feedback) has no specific step the operator can target with
a rejection rationale
## Substrate: ReasoningTrace schema
Every proposal carries a typed, content-addressable
ReasoningTrace recording each inference step:
ReasoningStep:
step_kind: observation | grouping | abstraction | hypothesis |
test_design | test_application | test_result | conclusion
input_pointers: prior steps + evidence rows
claim: human-readable assertion at this step
justification: why the engine made the claim
output_payload: type-discriminated by step_kind
The trace is byte-identical across replays of the same corpus +
verdict history. Inherits CORE's existing determinism discipline.
## Sequencing
Articulation ships FIRST (new W0 wave) — it is the prerequisite for
Tier 1 and Tier 2 and Loop 3. Each downstream wave emits or consumes
ReasoningTraces.
## Hard invariants preserved
- Deterministic-replay (trace byte-identical under same inputs)
- ADR-0057 replay-equivalence (trace IDs stable across reruns)
- No non-determinism added (rule-based step emission, not learning)
- ADR-0166: no new eval lanes
No code, no test, no eval, no pack change in this PR.
DCS-S1 (proper-noun possession sub-shape expansion) investigation
revealed that the recognizer-injector path's `CandidateInitial`-only
return type is a substrate-level constraint blocking four Wave-Next
sub-shape categories — not just one.
## Two artifacts
1. **`docs/handoff/DCS-S1-FINDING.md`** — investigation result. Of
the 21 DCS-refused GSM8K cases, zero are pure S1-only blockers.
Acquisition-verb expansion (`collected`, etc.) conflicts with
ADR-0131.G.1's branch-disagreement discipline. The right fix is
the DCS injector emitting `CandidateOperation(add)`, but the
`inject_from_match` return type doesn't allow that.
2. **`docs/decisions/ADR-0170-injector-contract-widening.md`** —
scoping ADR. Names the contract change, the four categories it
unblocks (DCS-S1 acquisition, A1 currency, A3 multiplicative,
A4 temporal), the three load-bearing rules it must preserve
(ADR-0131.G.1, SentenceChoice union, admissibility gates), and
a 5-step implementation outline.
## Pattern recognised
Wave-Next surfaced four schema gaps. All four trace to the same
constraint: per-category injectors can only emit `CandidateInitial`.
The right next-capability work is ADR-0170 ratification, then a
small no-behavior-change PR widening the contract, then per-injector
follow-up PRs against the widened contract.
That is the actual lift-per-risk path for GSM8K Round-1 closure.
## Test plan
Docs-only. No code, no test, no eval, no pack change.
## Cross-references
- ADR-0163.D.2 — original parsed_anchors → solver-state ADR
- ADR-0131.G.1 — branch-disagreement discipline ADR-0170 preserves
- ADR-0167 — parallel teaching-corridor mechanism (independent)
- ADR-0167-FOLLOWUPS §7 — Wave-Next findings backlog
- WAVE-NEXT-REVISED — parent plan; ADR-0170 is the upstream blocker
- PR #369 — A2's schema-refusal artifact (first observation of gap)
Two docs-only updates capturing the day's work:
1. Appended a "Status update — 2026-05-27 EOD" footer to the Brief 11
handoff doc with the completion table (11A/11B-step-1/11B-step-2
docs+lexicon/11D merged; 11C absorbed into W3-A; 11D candidate E ADR
merged) and the current post-#348 baseline taxonomy.
2. New session doc SESSION-2026-05-27-adr-0167-parallel-dispatch.md
alongside the existing SESSION-2026-05-26-comprehension-reader.md.
Captures the architectural pivot (audit-as-teaching-evidence vs the
rejected refusal-class dispatch table), the parallel-dispatch
experiment (5 operators / 3 waves / 6 PRs), what worked, what
surfaced as load-bearing (case 0050 hazard), and what's deferred.
No code changes. No runtime effect.
* docs(ADR-0167): audit-as-teaching-evidence (math reader → contemplation wire)
Scoping ADR for Brief 11D Candidate E. Routes math-reader refusal audit
rows into the existing contemplation/HITL teaching corridor as a new
candidate source (`MathReaderRefusalEvidence`).
Key decisions:
- Evidence-only — never directly admits a math fact; only ratification
through HITL queue can change runtime behaviour
- Five sub-types proposed (Lexical / Frame / Composition / Reference /
Slot claims) mapping to the audit taxonomy
- Scope first to LexicalClaim — lowest-risk, highest-count
- Six open questions called out for the implementation ADR
ADR-0166 three-question test passes; implementation passes only when
the six open questions are answered with LexicalClaim-first scope.
No code in this PR.
* docs(ADR-0167): parallel work plan — 6-PR/3-wave dispatch across 5 model operators
Closes the Brief 11 sequence with a decision artifact (not a roadmap)
selecting the next capability after GSM8K Phase 2 reader closure.
Four candidates compared against ADR-0166's three-question test:
- A. Continued GSM8K operator closure
- B. Cross-domain reader generalization
- C. Tool-use trace integration
- D. Workbench demo hardening
Recommendation: continued GSM8K operator closure, starting with the
`lexicon_entry` row of the Brief 11B audit. The only candidate that
passes Q1/Q2/Q3 cleanly today and has an explicit Round-3 finish line.
Docs-only. No code, no test, no eval, no pack change.
Extend the comprehension reader from question-only scope to whole-
problem scope. Phase 1 (Brief 8 / #326) implemented question_frame;
this brief implements initial_state_frame, operation_frame, and
descriptive_frame, plus finalize() projection into a strict
ADR-0115 MathProblemGraph.
Architecturally correct under ADR-0164.3; not yet productive on
GSM8K train_sample. Below-floor measurement documented; specific
bottlenecks tabled for Phase 2.1 follow-up.
What landed
- Frame-opener dispatch in lifecycle.py for the three new statement
frames, plus rule handlers (_rule_op_*, _rule_preframe_*,
_rule_descriptive_*).
- finalize(state) -> MathProblemGraph | ReaderRefusal: pure
projection with closure checks (entity registry non-empty,
unknown target bound, every op/initial references a known entity,
Decimal precision projects losslessly).
- _classify extended to 3-tuple (category, surface, decimal_value)
with possessive strip retry. Brief 8.2's sentence-initial
lookup-first + gender-skip preserved AND extended to mid-sentence
(gender is enrichment everywhere, never admission).
- Whole-problem coexistence dispatch in math_candidate_graph.py
(config.comprehension_reader_questions=True): reader attempts the
whole problem; on any ReaderRefusal falls through to existing
regex parser. All-or-nothing per the brief.
- Lexicon expansion (carried into renamed proper_noun_gender_*
files): +2 accumulation_verb (adopt, invest), +2 currency_unit_noun
(dollar, cent), +6 capacity_verb (fill, lift, play, work, finish,
drive), +5 female names (allison, brooke, jan, marion, sidney),
+14 male names (bart, fernando, georgie, jake, jed, jeremie, jose,
orlando, rex, rudolph, steve, troy, xavier, yun), +numerous
count_unit_noun, drain_token, time_unit_noun.
- ADR-0164.4-phase2-statement-frame-reader.md — the architectural
rationale and acceptance contract.
Measurement (reader_phase2_delta.json):
flag-OFF: correct=3 refused=47 wrong=0
flag-ON: correct=3 refused=47 wrong=0
delta: 0/0/0
Below the brief's floor of correct >= 4. Architecture is sound — the
reader admits cases as graphs when the structure resolves, refuses
cleanly otherwise, preserves wrong=0 across both flag states.
Bottleneck table (from per-case attribution):
count refusal_class dominant cause
----- ---------------------- ------------------------------------
18 incomplete_operation multi-quantity ops; no-quantity op
11 unknown_word "hundred", "presently", "one-hour",
non-math verbs (compound numerics,
lexicon gaps)
6 unexpected_category fraction / percentage literals;
multi-subject sentences
6 unresolved_pronoun "them", "their", "his" with no
compatible entity
5 unattached_quantity quantity never bound to a unit
1 no_question_target question parsed but slot never set
Closing the gate to mixed-bounded [4, 24] is Phase 2.1 scope: extend
composition rules for multi-quantity ops, add fraction/percentage
primitives (per ADR-0164.1 amendment), expand lexicon for the
remaining unknown_word cases, extend pronoun resolution.
Invariants preserved
- wrong = 0 in both flag states ✓
- flag-OFF byte-identical to today ✓
- determinism (50/50 identical runs) ✓
- Capability axes G1-G5, S1 unchanged ✓
- Reader tests: 19 (Phase 2) + 18 (Phase 1, post-update) + 53 (pack)
+ 76 (lexicon + primitives) = 166 specific to this change; all pass
- core test --suite smoke -q: 67 passed
Rebase note
This PR was authored against an older base; rebased onto current
main to incorporate #333 (Brief 8.2 universal proper_noun_token
primitive) and #334 (ADR-0166 measurement discipline). The rebase
required:
- Lexicon files renamed proper_noun_entity_* -> proper_noun_gender_*
(with the Phase 2 additions merged into the gender_* files)
- Compiled lexicon.jsonl unchanged from #333's 207-entry state
(Phase 2's per-category additions are runtime-visible via the
source loader, not via the compiled file)
- _classify reconciled with Brief 8.2's sentence-initial dispatch +
Phase 2's 3-tuple decimal-value return
- All dispatch tables and category checks updated to reference
proper_noun_token (singular) instead of proper_noun_entity_{f,m}
- Three Phase 1 test expectations updated to reflect Phase 2
behavior (proper noun at position 0 now opens statement pre-frame
instead of refusing; pronoun resolution applies per ADR-0164.2)
Per ADR-0166's three-question test, this PR is honest measurement:
capability exists, at least one case admits, lane distinguishes
presence from absence — which the bottleneck table demonstrates.
Refs ADR-0164.3 §Phasing Phase 2, ADR-0164.1 amendment (Brief 8.2),
ADR-0166 §"Mixed (notable but not blocking)" — except here, below
floor.
Add the fourth governing principle to the family of structural-
invariant ADRs (alongside ADR-0114a anti-overfitting, ADR-0165 regex
scope rule, CLAUDE.md versor invariant). The rule, stated negatively:
do not author eval lanes ahead of the operators those lanes test, and
do not expand the eval surface ahead of the capability that produces
signal on it.
Three-question test for new eval lanes:
1. Does the capability this lane probes exist on main today?
2. Has at least one case admitted end-to-end through that capability?
3. Will running this lane distinguish capability-presence from
capability-absence?
A "no" on any defers the lane until the capability lands. Tier 3 TBD
rows are data debt; running existing lanes to populate them is
permitted (snapshot of current capability) but is NOT a substitute for
capability work.
Why now: a strategic-analysis exchange this session proposed authoring
spatial_geometry_ood, historical_sequence_ood, and other new lanes
while GSM8K-math sits at 3/47/0 and the comprehension reader (ADR-0164)
is mid-build. The proposal's "most impactful next commit is to run all
Tier 3 lanes" framing would have generated noise (lanes refusing
uniformly because their underlying operators don't exist) rather than
the diagnostic signal that justifies prioritization. ADR-0166 mechanizes
the constraint that prevents that pattern.
Session log SESSION-2026-05-27-tier3-sequencing.md captures the
narrative: what the analysis got right (geometry-first as strategic
bet, sequencing instincts), what it missed (GSM8K-math treated as
solved; comprehension reader pivot not in context), and the honest
re-sequence (Brief 10 first; Tier 3 snapshot in parallel; cross-domain
transfer after verifying whether the reader IS the requested
structural-pattern recognizer under a different name).
The session also surfaced a mid-flight diagnostic from PR #332: the
actual GSM8K bottleneck is the ADR-0163 recognizer injector emitting
incomplete graphs, which the reader correctly refuses to admit
(wrong=0 by construction via the new guard). Brief 10 (Phase 2 reader)
dominates here because it replaces the inadequate injector surface
entirely.
No code changes. ADRs only.
Refs ADR-0114a, ADR-0165, CLAUDE.md §"Non-Negotiable Field Invariant".
Proposed sub-ADR under ADR-0164 resolving Open question #3.
- Reviews existing _resolve_question_entity heuristic in
generate/math_candidate_parser.py: refuse-on-ambiguity is correct,
but flat-document whitelist scan misses recency, kinship entities,
group antecedents from conjunction, and names absent from the
closed name lists.
- Specifies EntityRegistry as a field on ProblemReadingState
(ADR-0164.3 companion): append-only entries with canonical name,
inferred gender + source, mention positions, and relational anchor
for kinship entities.
- Two refusal-first ambiguity rules: ambiguous_pronoun_referent (R1,
recency tiebreaker within RECENCY_GAP_MIN refuses) and
unresolved_pronoun (R2).
- Worked walk-through on five GSM8K train_sample cases (0001 Tina,
0010 Yun/Marion, 0027 Malcolm, 0017 Jason/Eric, 0033 Rachel + kin).
- Three policy-vs-heuristic disagreements (D1 Jason/Eric him; D2
Georgie he via single-salient back-fill; D3 Aaron/Carson they via
GROUP entry) all turn refusals into correct resolutions, plus one
counter-direction D4 where new policy is principled-conservative.
- Preserves wrong = 0 by construction at every branch.
Closes ADR-0164 §Open question #1. Enumerates the 8-primitive seed
registry for en_core_math_v1 (decimal-currency, currency, percentage,
fraction, time-amount, numeric, ordinal, mass-noun-token), fixes the
record schema (name/pattern/emits/extracted_fields/provenance/priority),
documents pairwise overlap precedence with rationale, and records 4
rejected temptations (rate phrases, compound entities, question stems,
compound numerics) so the ADR-0165 grammar/lexeme boundary doesn't get
relitigated by future authors.
Two-level state model for the incremental comprehension reader:
ProblemReadingState (outer, problem-scoped) carries the entity registry,
accumulated initial possessions, accumulated operations, the unknown
target slot, and the pronoun resolution history. SentenceReadingState
(inner, sentence-scoped) carries the current frame, expectation,
pending quantities, pending entity reference, pending verb, lookback
window, and the partial frame payload under construction.
Lifecycle API (signatures only): begin_sentence, apply_word,
end_sentence. All three pure / deterministic / no I/O. apply_word
reads from problem_state for pronoun resolution per ADR-0164.2 but
does not mutate it; only end_sentence produces a new
ProblemReadingState that folds in the just-closed sentence's
contribution.
Closed READER_REFUSAL_REASONS vocabulary across three lifetime
groupings (token-level, sentence-level, problem-level), mirroring
ADR-0134's admissibility-reason discipline.
Canonical-bytes serialization for both state levels matches existing
trace_hash and MathProblemGraph.canonical_bytes discipline.
Sorted-keys JSON, compact separators, Decimal-as-string for
precision, optional-None fields omitted.
Worked example: gsm8k-train-sample-v1-0001. Sentence 1 ("Tina makes
$18.00 an hour.") admits as a rate apply_rate operation; sentences 2
and 3 refuse at the leading "If" with unexpected_category
(conditional_frame is Phase-1 out-of-scope). The example demonstrates
the state model — that even when the reader refuses, the state at
the moment of refusal is what makes the refusal honest, typed, and
file-able as a teaching candidate.
Termination predicate is_terminable + finalize specified pure: a
ProblemReadingState becomes a strict ADR-0115 MathProblemGraph only
when entity registry is non-empty, unknown_target_slot is bound,
every accumulated op/initial references a known entity, and every
partial payload projects losslessly into the strict types.
Naming reconciliation: ADR-0164's sketched ComprehensionState is the
inner level under this ADR (SentenceReadingState). Brief 5 will
produce both types.
No code. ADR doc only.
Refs ADR-0164 §Open question #4.
Replace the regex sentence-template front-end of the math admissibility
layer with an incremental compositional reader. Lock the architectural
boundary that regex is permitted only at the lexeme level, never as
sentence-structure templates.
ADR-0164 (Proposed) — Incremental Comprehension Reader. Word-by-word
state accumulation over a closed set of semantic categories, with the
operational lexicon living as a pack-shaped data artifact under
language_packs/data/en_core_math_v1/. Reader output type matches the
existing regex parser's output, so the binding-graph admissibility
(ADR-0132/0133/0134/0135), the solver (ADR-0116), and the verifier
(ADR-0117) stay unchanged. wrong=0 is preserved by construction —
the reader produces inputs to the existing admissibility gate, not a
bypass around it. Phased coexistence with the regex layer during
transition; regex sentence templates removed in Phase 3.
ADR-0165 (Proposed) — Regex Scope Rule. Structural invariant: regex
matches one piece of orthographic material with a closed rule
(currency literal, fraction literal, percentage, time-amount, closed
unit-noun sets), never a sentence shape. Lexeme-primitive registry is
closed and grown through the same contemplation -> proposal -> HITL
review corridor that grows vocabulary (ADR-0150 / 0152 / 0155 / 0161).
The engine acquires new recognition tools through reviewed teaching,
not through operator edits to parser code.
ADR-0163's diagnosis (front-end is the bottleneck) is reaffirmed.
Its Phase B-E prescription (regex DerivedRecognizers via
recognizer_match.py) is partially superseded by ADR-0164. ADR-0136
and its S-family (S.1 / S.2 / S.3 / S.4) have the same disposition:
regex sentence-template prescription superseded; empirical refusal
taxonomies and closed-set vocabulary preserved as lexicon seed.
The HITL corridor architecture is preserved; what flows through it
changes from regex recognizers to lexicon entries, categories, and
lexeme primitives.
Session log SESSION-2026-05-26-comprehension-reader.md captures the
narrative of how this decision emerged from the post-D.2 train-sample
baseline review (correct=3 refused=47 wrong=0, 34/47 refusals at the
question gate).
No runtime code changes. ADRs only.
First PR plumbing recognizer parsed_anchors into the candidate-graph as
typed CandidateInitial primitives. Scope limited to discrete_count_statement;
other five round-2 categories route to the round-2 skip-only fallback until
follow-up D.2.x PRs.
Five-layer wrong=0 safety net:
1. Matcher narrowness — _try_extract_discrete_count_anchor refuses on any
ambiguity (multi-subject, pronoun subject, non-possession verb,
multi-count, clause-split, unobserved counted_noun, unobserved
count_kind).
2. Extraction correctness — refusal-preferring; populated parsed_anchors
only when ALL narrowness rules hold.
3. Injection correctness — _initial_admissible gates every constructed
CandidateInitial; failure to ground returns () (under-admit).
4. Replay gate — propose-time admissibility_replay_gate auto-rejects any
matcher change that would lift GSM8K wrong count.
5. Multi-branch decision rule — injected candidate disagreeing with
another branch triggers refuse path.
Re-baseline (GSM8K train_sample v1):
- Old (#309 alone): correct=3 refused=47 wrong=0
- New (#309 + D.2 v1): correct=3 refused=47 wrong=0
- Empirical lift in v1 = 0 cases; framework operational. No GSM8K
train_sample case has a discrete_count statement that simultaneously
meets all narrowness rules AND is missed by the existing parser.
Bottleneck moves to other recognizer categories (D.2.2+).
Validation:
- tests/test_adr_0163_d2_discrete_count_injection.py: 34 passed
- tests/test_recognizer_match.py + test_candidate_graph_recognizer_wiring
+ test_admissibility_replay_gate: 27 passed
- adr_0131_* (G1..G5 + S1 wrong=0 invariant): 222 passed / 2 pre-existing
report-comparison failures / 3 skipped — byte-identical to pre-D.2
- Solver code: unchanged
Operator caveat: round-1's ratified discrete_count_statement spec is
unchanged. Matcher behavior on the spec's canonical_pattern has been
extended from detection-only to populated parsed_anchors. Re-ratification
is not required; if policy requires it on matcher-behavior changes, the
registry digest provides byte-stable provenance.
Adds two pre-gate checks to propose_from_candidate that fire after the
Step 2 capacity check and before the replay gate. No log entry is
written on either refusal — the append-only invariant holds.
Check order at function entry (ADR-0161 §3):
1. Capacity (Step 2) → RefusedAtCapacity
2. Duplicate → RefusedAsDuplicate
3. Dependent_on_pending → RefusedAsDependent
4. Replay gate → auto-reject on regression
New frozen dataclasses:
@dataclass(frozen=True, slots=True)
class RefusedAsDuplicate:
proposal_id: str
existing_state: str # covers all states: pending/accepted/rejected/withdrawn
reason: str = "duplicate"
@dataclass(frozen=True, slots=True)
class RefusedAsDependent:
candidate_id: str
dependent_on: tuple[str, ...] # pending proposal_ids that block
overlapping_lemmas: tuple[str, ...] # normalised lemmas that triggered
reason: str = "dependent_on_pending"
Lemma-overlap rule: case-insensitive exact-match on strip().lower().
Conservative — over-reject rather than admit-with-hidden-dependency.
False positives are recoverable (re-emit after blocker is ratified);
false negatives silently couple ratification choices.
CLI surfaces both outcomes in cmd_teaching_propose and
cmd_teaching_propose_from_exemplars (exit code 1).
Step 2 backpressure tests updated: made pre-populated candidates use
unique objects to avoid triggering the new dependency check, and
updated idempotency assertions to reflect the new RefusedAsDuplicate
return for re-submitted content.
Co-references: ADR-0161 §3, Step 1 PR #296, Step 2 PR #311,
ADR-0057, ADR-0151.
Captures today's end-to-end closure of the math architecture corridor
(ADR-0163 Phase A → B → C → D + operator ratification, 15 PRs, first
non-zero GSM8K correct count: 0 → 3 with wrong = 0 preserved) and the
workbench surface (W-026 API + ADR-0162 design system + W-027 shell +
W-028 chat surface) becoming operational end-to-end.
Added:
- docs/sessions/SESSION-2026-05-26-corridor-closure.md — full session
ledger, per-fork accomplishments, three lifted GSM8K cases,
unexpected-positive observation about skip-only wiring, deferred
work, architectural state at close.
Updated:
- docs/master-plan-post-substrate-audit.md — 2026-05-26 amendment
banner pointing to the session recap; historical 2026-05-24 plan
preserved below.
- docs/PROGRESS.md — appended a new section capturing the day's 15
PRs by fork (math, workbench, HITL), the first-lift counts, and
what stays open.
- docs/decisions/ADR-0163-gsm8k-path-to-mastery.md — Round 1
amendment with the actual lift evidence, the three lifted cases,
the capability-axis preservation, and the unexpected-positive note
about skip-only wiring doing more than projected.
Scope: docs-only. No runtime, no tests, no code changes.
* chore(ADR-0163.C): land three Phase C pending proposals in live log
Phase C (#301) shipped the CLI but its PR dry-run wrote to a tmp log
path. This commit moves the three Phase C proposals into the live
teaching/proposals/proposals.jsonl so the Phase B→C audit trail is
visible in the proposal log and the proposals are ready for the
operator to ratify after Phase D ships.
Proposals (all state=pending, kind="exemplar_corpus"):
- 59223f13722f906a1cf9b65d9b01c990 — descriptive_setup_no_quantity
- 46ce297f797ff16da12db5de422ca3c9 — rate_with_currency
- a3b892546977c5f0f64c578d6052adbd — temporal_aggregation
Produced by `core teaching propose-from-exemplars --all` against the
live Phase B corpora. No ratification (ADR-0161 §5 — only the repo
owner ratifies). The Phase D admissibility-replay gate confirmed
replay_equivalent=true, wrong_count_delta=0 for all three.
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
* feat(ADR-0163.D): wire ratified RecognizerSpecs into math_candidate_graph admissibility surface
Phase D is the first PR to extend the math admission surface. The
audit (#294) said the gap was admission, not operators, algebra,
substrate, or packs. Phase A measured the refusal taxonomy. Phase B
authored seeds. Phase C synthesized recognizers. Phase D wires
those recognizers into generate/math_candidate_graph.py.
Modules
- generate/recognizer_registry.py — pure projection over the proposal
log. Only proposals with source.kind="exemplar_corpus" AND
review_state="accepted" enter the tuple. Sorted by
(review_date, proposal_id). In-process cache keyed on log
(mtime, sha256) — no filesystem cache (ADR-0161 §1). Malformed
accepted specs raise RegistryLoadError citing the offending
proposal_id; silent drops are forbidden.
- generate/recognizer_match.py — per-category rules-only matchers
(no LLM, no embedding, no learned classifier). Honors the Phase C
synthesizer's narrowness rule: out-of-corpus currency symbols,
window units, and per-unit values do NOT match. Three matchers:
_match_descriptive_setup_no_quantity (zero-quantity surface),
_match_temporal_aggregation (event_count_per_window with
observed_window_units/quantifiers honored), _match_rate_with_currency
(currency_per_unit_rate with observed currency/per-unit/amount-kind
honored).
- generate/math_candidate_graph.py — narrowest-edit guard at the
per-statement choice loop. Before the existing
"no admissible candidate for statement" refusal, consult the
ratified registry. Recognized statements are dropped from
per_sentence_choices (zero math state) so the Cartesian product is
identical to "this statement was never there." Empty registry is
a no-op — backward compatibility preserved byte-identically.
Downstream consumption of parsed_anchors (turning recognized
rate/temporal surfaces into solver state that produces concrete
answers) is Phase E follow-up.
Tests (32 new)
- tests/_phase_d_fixture.py — synthetic in-memory ratified registry
built from the three Phase C pending proposals' content. Per
ADR-0161 §5 the agent does NOT ratify the live log; the synthetic
registry round-trips the real RecognizerSpec bytes the operator
will ratify after Phase D ships.
- tests/test_recognizer_registry.py (9) — empty/pending/wrong-kind
filtering, sort order, malformed-spec rejection, cache hit +
invalidation, live-log Phase C audit check.
- tests/test_recognizer_match.py (14) — per-category positive cases,
narrowness (out-of-corpus surface forms rejected), no-LLM import
check.
- tests/test_candidate_graph_recognizer_wiring.py (7) — empty registry
preserves existing refusal; synthetic registry: recognized
statements no longer trigger per-statement refusal;
wrong_count_delta == 0 on GSM8K train_sample; capability axes G1..
G5+S1 wrong=0 unchanged; per-category admission counts on the
refused-set; unrecognized statements still refuse with the
existing reason.
- tests/test_phase_d_replay_evidence.py (2) — full admissibility
replay gate under synthetic registry: replay_equivalent=true,
wrong_count_delta=0, every capability axis wrong=0; each
ratified recognizer admits >= 1 train_sample statement (wiring
is consequential).
Per-category fixture-based admission counts (synthetic registry vs
GSM8K train_sample refused-set sentences):
- descriptive_setup_no_quantity: 40
- rate_with_currency: 2
- temporal_aggregation: 7
Narrowness-invariant negative case results (matcher correctly
returns None on out-of-corpus / load-bearing-math surfaces):
- rate_with_currency: "She paid $5 for the book." (no per-unit)
- temporal_aggregation: "On Saturday she went to the store." (single day token)
- descriptive_setup_no_quantity: "There are some kids in camp." (indefinite quantifier)
Candidates for Phase B round 2 (3 of 20 temporal seeds match the
spec's structural commitment but not my surface regex — author_notes
explicitly flagged these as schema-gap edge cases):
- ta-v1-0004 "Mark does a gig every other day for 2 weeks."
- ta-v1-0012 "Robin walks 4 dogs every other day around the park."
- ta-v1-0019 "The pump fills the tank with 80 gallons over 6 hours."
Three landed wirings DO NOT shift the GSM8K train_sample baseline
counts under fixture (correct=3, wrong=0, refused=47 unchanged) —
Phase D's narrow wiring is wrong=0 safe by construction; lift to
"correct" requires Phase E's downstream parser-side consumption of
parsed_anchors. Capability axes G1..G5+S1 wrong=0 unchanged.
Cross-refs: ADR-0163 (Phase D), ADR-0057 (proposal review),
ADR-0151 (auto-proposal), ADR-0161 §5 (ratification boundary),
Phase A PR #297, Phase B PR #298, Phase C PR #301.
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
---------
Co-authored-by: Claude Opus 4.7 <noreply@anthropic.com>
* docs(math): ADR-0163 — path to GSM8K mastery via candidate-graph admissibility (proposed)
Audit reframes the math roadmap entirely.
State of main: every named math capability axis (G1..G5, S1) passes
at 100% with wrong=0 on its controlled lane. binding_graph,
math_versor_arithmetic, math_symbolic_equivalence, math_parser,
math_candidate_parser, math_solver, math_verifier, math_realizer,
math_problem_graph — all landed. The worktrees on disk are stale
forks.
State of GSM8K (50-case train sample): correct=0, refused=50, wrong=0.
Every refusal reason is identical: "candidate_graph: no admissible
candidate for statement: <STATEMENT>".
The reframe: the gap is NOT in operator algebra, NOT in binding graph
internals, NOT in symbolic equivalence. The gap is in
generate/math_candidate_graph.py — the admissibility surface that
turns a natural-language statement into a candidate the downstream
pipeline can consume. The capability axes pass at 100% because they
test statement shapes the candidate-graph already admits. GSM8K
refuses at 100% because its statements span shapes the candidate-graph
has never been taught.
Six-phase plan to lift GSM8K under the thesis "decodes, not generates":
A. Refusal taxonomy (measure before building)
B. Exemplar corpora per shape category (≤20 statements each, ≤3 per round)
C. Contemplation runner ingests exemplars; emits DerivedRecognizer
proposals
D. Operator ratifies through ADR-0161 HITL queue (no new surface)
E. Re-baseline GSM8K train sample. Round 1 exit: correct ≥ 10, wrong = 0.
Round 2: ≥ 25. Round 3: ≥ 35.
F. Scale to public/v1 (200 cases, target correct ≥ 100), then
holdout (measurement-only — never tune against).
Three non-negotiables:
- wrong = 0 at every phase. Auto-rejected by replay gate, not by
operator vigilance.
- No hand-rolled recognizers in generate/. Every recognizer lands
via contemplation → proposal → review corridor.
- Active corpus mutation only via accept_proposal.
Status: proposed. Implementation lands as three PRs starting with
Phase A scaffolding.
Scope discipline: docs-only. No code, no eval changes, no corpus
mutation.
* feat(ADR-0161.1): core teaching queue list|show — read-only queue projection
* fix(ADR-0161.1): restore gap-queue CLI + rename new commands to hitl-queue + R1..R5 refinements
Audit reframes the math roadmap entirely.
State of main: every named math capability axis (G1..G5, S1) passes
at 100% with wrong=0 on its controlled lane. binding_graph,
math_versor_arithmetic, math_symbolic_equivalence, math_parser,
math_candidate_parser, math_solver, math_verifier, math_realizer,
math_problem_graph — all landed. The worktrees on disk are stale
forks.
State of GSM8K (50-case train sample): correct=0, refused=50, wrong=0.
Every refusal reason is identical: "candidate_graph: no admissible
candidate for statement: <STATEMENT>".
The reframe: the gap is NOT in operator algebra, NOT in binding graph
internals, NOT in symbolic equivalence. The gap is in
generate/math_candidate_graph.py — the admissibility surface that
turns a natural-language statement into a candidate the downstream
pipeline can consume. The capability axes pass at 100% because they
test statement shapes the candidate-graph already admits. GSM8K
refuses at 100% because its statements span shapes the candidate-graph
has never been taught.
Six-phase plan to lift GSM8K under the thesis "decodes, not generates":
A. Refusal taxonomy (measure before building)
B. Exemplar corpora per shape category (≤20 statements each, ≤3 per round)
C. Contemplation runner ingests exemplars; emits DerivedRecognizer
proposals
D. Operator ratifies through ADR-0161 HITL queue (no new surface)
E. Re-baseline GSM8K train sample. Round 1 exit: correct ≥ 10, wrong = 0.
Round 2: ≥ 25. Round 3: ≥ 35.
F. Scale to public/v1 (200 cases, target correct ≥ 100), then
holdout (measurement-only — never tune against).
Three non-negotiables:
- wrong = 0 at every phase. Auto-rejected by replay gate, not by
operator vigilance.
- No hand-rolled recognizers in generate/. Every recognizer lands
via contemplation → proposal → review corridor.
- Active corpus mutation only via accept_proposal.
Status: proposed. Implementation lands as three PRs starting with
Phase A scaffolding.
Scope discipline: docs-only. No code, no eval changes, no corpus
mutation.
The design substrate that W-027..W-031 will inherit. Pins tokens,
typography, motion, semantic state mapping, the StableJsonViewer
trust-surface invariants, empty/error/loading contracts, the
keyboard-first contract, the five-region shell, the v1 component map,
and an explicit no-go list — before any frontend code exists.
Headline decisions:
- Semantic tokens only. `--color-surface-base`, not `--color-zinc-900`.
- Inter (UI) + JetBrains Mono (hash/JSON/trace), self-hosted.
- Badges bound 1:1 to ratified Python enums:
EpistemicState (15), NormativeClearance (4), ReviewState (4),
grounding source (6). No aspirational badges; adding an enum
value to the engine without a badge fails the test.
- Motion: reveals structure, not cognition. Allowed set is small
and tokenised; reduced-motion collapses everything to instant.
- StableJsonViewer ships six tested invariants (deterministic order,
lossless strings, no semantic auto-format, copy-path as JSON
Pointer, structural diff, large-doc / oversize safety).
- Every route ships empty / error / loading states from day one,
each following an explicit contract. No empty-empty, no
"Thinking…", no indefinite shimmer.
- Five-region shell; routes may collapse the right inspector but
not the top bar, left nav, or status footer.
- v1 must-ship component map is narrower than the vision; named
follow-ups are anticipated but not committed.
No-go list is explicit: no chat-clone styling, no animated cognition
theater, no glassmorphism, no purple gradients, no accept buttons,
no dashboard soup, no color-only encoding.
Status: proposed. Implementation lands in Branch 1
(workbench-ui/ scaffold + design tokens + StableJsonViewer +
badges + empty/error/loading + a /preview page) before W-027
starts.
Scope discipline: docs-only. No code, no UI, no API changes.
Answers all eight L11 sub-questions by selecting the narrowest
commitment compatible with existing ADR-0057 / 0151 / 0152 / 0155
machinery and the ratify-proposal workflow.
Headline decisions:
- Queue is a DERIVED VIEW over teaching/proposals/proposals.jsonl
∪ contemplation/runs/*.json. No new persistence file.
- Queue identifier = proposal_id (deterministic over content per
ADR-0151). States: ADR-0057's existing alphabet.
- Three operator surfaces: GitHub PR (inspect-only, mobile),
workflow_dispatch (accept|reject|withdraw, mobile),
local CLI (audit-grade authority). PR-merge admits; it does
not ratify.
- Engine keeps serving turns while items are pending; pending
proposals are observable but never active truth; proposal-on-
proposal dependencies forbidden.
- Pending cap 256. Dedup by deterministic proposal_id. No
wall-clock expiry — staleness is measured in proposals, not
seconds. Full queue emits a typed `queue_full` report instead
of silently dropping.
- Only the repo owner ratifies; workflow path enforces an actor
allow-list and fails closed. Every transition records
ratifier_kind, actor, commit_sha, workflow_run_id, review_date.
Five-step implementation plan included; each step is small,
self-contained, and ships its own ADR-compatibility test.
Status: proposed. Closes W-009 once implementation lands.
Scope discipline: docs-only. No code, no workflow changes, no
tests, no ADR ratification yet. Pure prose contract.
* feat(W-024): reboot_event audit trail entry (L10b.3, ADR-0158)
L10 scope §Sub-question 3: a reboot_event analog of TurnEvent, written
to the telemetry JSONL, lets future audit reconstruct when this engine
instance lost and regained its lifetime.
- serialize_reboot_event / format_reboot_event_jsonl in chat/telemetry.py
emit type="reboot" with restored_turn_count, stored/current revisions,
revision_matched, recognizers_count, candidates_count
- ChatRuntime._load_engine_state() buffers the JSONL line in
_pending_reboot_payload (str|None); ChatRuntime.attach_telemetry_sink()
flushes it exactly once when a sink is first attached
- Reboot event precedes all turn events in the session audit stream
- Pinned by 11 tests: serializer structure, determinism, revision_matched
logic, runtime integration (emit-once, no-checkpoint, no-load-state,
revision match, ordering)
Closes L10b: W-022 (atomic writes) + W-023 (revision warning) + W-024
together satisfy ADR-0146's atomic/observable/auditable checkpoint triad.
* fix(W-024): expose cached public git revision helper
* feat(W-022): ratify-proposal workflow_dispatch for mobile ratification
Adds .github/workflows/ratify-proposal.yml — a manually triggered
workflow that lets the operator ratify engine-authored proposals from
the GitHub mobile app without needing terminal access.
Inputs: proposal_id (required), review_date (default: today UTC),
operator_note (optional). Runs `core teaching review --accept`,
commits the updated corpus + proposal log to main, and posts a
job summary with the accepted chain_id.
Shared CONTEMPLATION_ENABLED kill switch disables the entire
learning-arc loop (contemplation + ratification) with one toggle.
ADR-0155 / ADR-0057
* feat(W-023): revision-mismatch warning on engine-state load (L10b.2, ADR-0157)
ADR-0146 §Risks line 127 specified that load_manifest() should compare
written_at_revision against the current git SHA and warn if they differ,
but never refuse to load (reboot is recovery, not control flow).
- EngineStateStore.load_manifest() emits RuntimeWarning when stored and
current revisions are both known and do not match
- Suppresses warning when either side is "unknown" (offline/packaged builds)
- Always returns the manifest; no state is cleared or rejected
- Pinned by 8 tests covering match, mismatch, unknown suppression, and
missing/empty manifest edge cases
ADR-0156 §Out of scope closes; L10b.3 (reboot_event audit entry, W-024) remains.
Adds a scheduled GitHub Actions workflow that runs
`core demo learning-arc --json`, writes the report to
contemplation/runs/<stamp>.json, and opens a PR against main.
Operator review on the PR is the ratification gate — preserves the
HITL invariant from ADR-0150/0152.
Workflow stays disabled until repo variable CONTEMPLATION_ENABLED
is set to "true" (soft kill switch in repo settings). Default
cadence is nightly; ADR includes a budget table for the 3000
Linux minutes/month available on GitHub Pro.
CI never:
- commits to main directly
- mutates corpora/ or packs/
- ratifies proposals
- registers recognizers
CI only writes a report file under contemplation/runs/ and proposes
the diff via PR. Determinism check (first-run verification): local
+ CI runs at same SHA must byte-match on proposal_id / trace_hash.
Out of scope (noted in ADR): persisted engine_state across CI runs,
auto-merge, cross-runner determinism, recognizer growth from CI
synthetic traffic.
To enable:
1. Repo Settings → Variables → CONTEMPLATION_ENABLED=true
2. Actions → contemplation → Run workflow
3. Review the resulting PR before merging
W-007/ADR-0149 wired the consumer side of the recognizer registry
(first_admitted_recognizer → graph derivation, opt-in via
recognition_grounded_graph). The producer side — capturing
(tokens, bundle) from admitted turns so derive_recognizer at
checkpoint can anti-unify them — had no production caller.
record_recognition_example existed but was only invoked by tests,
so _pending_recognizer_examples stayed empty in live sessions and
the registry could never grow from traffic.
Observed: 103-turn session wrote recognizers.jsonl empty even with
recognition running.
- CognitiveTurnPipeline.run calls runtime.record_recognition_example
at the admitted-recognition boundary
- Producer fires unconditionally; consumer (derive_recognizer at
checkpoint) stays opt-in behind the same flag — flipping it later
is no longer a cold start
- hasattr guard keeps the pipeline tolerant of non-ChatRuntime
runtimes
Validated: tests/test_adr_0154_recognizer_producer_wiring.py (5
tests covering admit/refuse, flag-off producer, end-to-end loop,
accumulation); core test --suite cognition/smoke + recognition
phase 1/2/refusal-propagation all green.
Out of scope: bootstrap of the first recognizer from operator
review (substrate-liveness audit scope); bounded growth of the
producer queue when consumer flag stays off (future LRU cap).
TurnEvent had no trace_hash field, so teaching/discovery._trace_hash
always returned "" via getattr default. Every persisted DiscoveryCandidate
had source_turn_trace="" — provenance gap observed in a real 103-turn
session.
- Add trace_hash: str = "" to TurnEvent
- runtime.finalize_turn_trace_hash back-stamps last TurnEvent and
unstamped tail of _pending_candidates, then re-persists
- CognitiveTurnPipeline.process calls finalize_turn_trace_hash after
compute_trace_hash, before constructing CognitiveTurnResult
Invariants: empty hash is a no-op; back-walk halts at first already-
stamped candidate (no overwrite of prior turns); trace_hash bytes are
unchanged for any given turn.
Validated: tests/test_adr_0153_trace_hash_backstamp.py (6 tests),
core test --suite cognition/smoke/runtime/teaching all green.
Out of scope: OOV candidate trace_hash (same root cause, line-streamed
sink requires different fix); telemetry-sink trace_hash exposure.
Two-session arc where engine derives connective+object from corpus
decomposition; operator ratifies rather than authors. Distinguishes
from learning-loop (operator-authored) and directly exercises W-018
checkpoint contemplation and W-017 auto-proposal provenance path.
Wires contemplation-enriched DiscoveryCandidates into the ADR-0057 proposal
gate at _load_engine_state(). Proposals land in ProposalLog with
source.kind="contemplation"; operator ratification via existing
core teaching review path unchanged.
* feat(W-003): wire VaultPromotionPolicy into turn boundary (ADR-0148)
VaultPromotionPolicy had zero callers; vault entries never crystallized
from SPECULATIVE to COHERENT. This PR wires the policy at the turn
boundary so settled entries can promote automatically.
Changes:
- core/config.py: add vault_promotion_enabled flag (default False, null-drop)
- vault/store.py: add promote_eligible_entries(policy) — metadata-only scan,
versors unchanged, _matrix_cache not invalidated
- session/context.py: persist energy_raw/energy_class/coherence_residual in
vault payload inside finalize_turn so the policy has data to decide on
- chat/runtime.py: call promote_eligible_entries after each finalize_turn,
gated on vault_promotion_enabled; import VaultPromotionPolicy
- docs/decisions/ADR-0148-vault-promotion-policy-wiring.md: decision record
- tests/test_adr_0148_vault_promotion.py: 6 tests, all green
Unlocks W-007 (DerivedRecognizer derivation from COHERENT vault entries).
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
* fix(W-003): resolve Pyright errors on vault promotion wiring
- vault/store.py: add TYPE_CHECKING guard to import VaultPromotionPolicy
only at type-check time, avoiding circular import at runtime while
making the name resolvable to Pyright.
- session/context.py:262: suppress union-attr false positive — self.state
is guarded non-None by the raise at line 256 when input_versor is also
None, but Pyright cannot narrow through the nested ternary structure.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
---------
Co-authored-by: Claude Sonnet 4.6 <noreply@anthropic.com>
W-006 (operator decision: delete):
- Remove dormant packs/en/el/grc/he/readback_rules.py (4 files, 0 live
production callers). generate/realizer.py superseded the per-language
readback path; per [[feedback-cleanup-as-you-find]], superseded code
is removed rather than preserved.
- Remove _gate_readback from packs/common/validator.py and drop it from
the validate_pack_dir gate sequence. Add language to the report dict
so the param remains non-vacuous.
W-010 (operator decision: intentional token-level):
- Amend ADR-0143 with "Vocabulary isolation is intentional" section.
Token-level anti-unification derives its own structural vocabulary;
importing VocabManifold adds no information at that level. Confirmed
intentional by operator review 2026-05-25.
W-014 (operator decision: evals-only):
- Add deployment-scope note to core/cognition/provenance.py docstring:
evals-only infrastructure, no live runtime caller. Confirmed
evals-only by operator review 2026-05-25.
Names the missing prerequisite that recognizer-storage v2 and
substrate-liveness-audit v2 both flagged: the process shape in which
the engine accumulates capability over its lifetime, survives reboot
as recovery, and presents a narrow async HITL ratification entrypoint.
Cross-reference discipline applied up-front (per
feedback-adr-cross-reference-discipline memory entry — fourth
iteration; this time grep BEFORE draft). Existing ADRs identified
as load-bearing: ADR-0040 (telemetry sink, persistent audit trail),
ADR-0041/0042 (operator surface + audit-tour), ADR-0055 (four-tier
memory: T1 session vault → T4 ratified packs; explicitly names
"what survives across all sessions and reboots"), ADR-0056/0080
(contemplation loop), ADR-0057 (proposal review machinery this
scope must build on), ADR-0014 (vault promotion gate, currently
dormant — L2 audit will verify), ADR-0027/0029/0033 (identity/
safety/ethics packs, currently startup-loaded).
Current state honestly mapped: every entry is a one-shot CLI
command via argparse in core/cli.py; ChatRuntime is per-invocation;
no long-lived process exists.
Four sub-questions framed:
1. Process shape — long-lived daemon vs. hybrid (state externalized
+ restored) vs. one-shot CLI with audit-trail-as-lifetime.
2. State partitioning — session-state (ephemeral) / engine-state
(live, persistent across reboot) / substrate-state (cold,
persistent).
3. Reboot recovery — what verifies, what reloads vs. rederives, what
records.
4. HITL async entrypoint — queue shape, backpressure, operator
interaction model.
Cross-references shelved project-engine-identity-candidate (DNA-
analog EngineIdentity) as potential primitive if sub-question 3
demands cross-reboot identity verification. Does NOT un-shelve it;
flags trigger.
Explicit rejections: database persistence (per ADR-0055 north-star);
network primary entrypoint (per user-circumstances memory entry,
always-on-internet unsafe to assume); multi-tenant; re-architecting
ChatRuntime.
Constraints inherited from CLAUDE.md: deterministic replay, no
hidden state, HITL is narrow entrypoint, reboot is recovery not
control flow, append-only artifacts stay append-only, no drift
repair / hot-path normalization.
This is a scope, not a decision. Spike/ADR decides; audit findings
(L4-L9) inform.
* docs(audit): scope substrate liveness audit (system-of-systems closure)
The recognizer-storage v1→v2 revision surfaced a pattern: CORE
contains ~140 ADRs, many marked Implemented, but several have
spec-in-code that nothing live calls (e.g., VaultPromotionPolicy in
core/physics/learning.py — imported by no module outside its package).
The engine today executes a subset of its own design.
Per the operator's system-of-systems framing (human body / universe /
ecosystem: subsystems achieve closure together; a half-built layer
degrades the whole organism silently): this scope defines a layered
audit that walks from the foundation outward to identify, per ADR
and per module, which subsystems are closed (designed + wired +
exercised + cross-layer consistent), which are partial, and which
are open.
The audit method is mechanical: grep + caller-trace + end-to-end test
verification + cross-layer contract check. Two reviewers running the
audit should produce identical verdicts. No refactoring, no new ADRs,
no subjective judgment — just evidence.
The output is two artifacts: a closure registry (per-layer, per-ADR
verdicts with evidence) and a ratchet plan (wiring sequence in
dependency order). Both append-only / revisable; both committed to
the repo as audit artifacts.
First-pass layering (L0 algebra primitives → L11 forever-running
engine, with L10 runtime model named as the missing prerequisite)
is a hypothesis the audit will refine. Layers L0–L3 are expected to
be closed (foundation); L4–L9 are expected to be partial; L10–L11
are explicitly open and depend on the audit + the runtime-model
scope.
Applies feedback-adr-cross-reference-discipline (the memory entry
this revision flagged): explicit cross-references to ADR-0006/0014/
0055/0056/0057/0142/0143/0144 and the existing scope docs.
This is a scope, not an audit. Audit deliverables (registry, ratchet)
are separate work.
* docs(audit): revise substrate-liveness-audit scope to v2 (self-review fixes)
Self-review surfaced two HIGH, three MEDIUM gaps in v1. Notably,
v1 of the scope that creates cross-reference discipline still
committed the documented mistake — third consecutive iteration of
the same failure mode in one session (recognizer-storage v1
substrate overclaim → recognizer-storage v2 drop-off invention →
audit-scope v1 ADR range mis-grouping). New "Self-review
acknowledgment" section records the pattern's durability and
states the structural mitigation: the audit's mechanical
deliverables make the discipline impossible to skip silently,
which is more rigorous than the memory entry alone.
HIGH-1 — ADR range mis-grouping. v1 layering table listed
"ADR-0055..0064" as L7 (teaching loop); verification showed
ADR-0058-0064 are predominantly L6 (surface composition,
correction telemetry, cross-pack resolution). Fixed L7 to cite
only ADR-0057; added explicit note that ADR-range citations
are starting points and the audit's first act per layer is
re-enumeration.
HIGH-2 — Audit tractability buried in risks. ~140 ADRs requires
structural handling, not just a risk warning. Promoted "per-layer
commits + per-layer handoff to subagents + progress tracking in
registry + optional per-layer file splitting" to a first-class
Step 0 in the audit method. The audit is explicitly framed as the
archetypal parallel-agent handoff candidate.
MEDIUM-1 — Expected-status column anchored the auditor. v1's
table had my predictions ("Closed (foundation)", "Live but
session-bounded"). Removed; replaced with a "Where to look first"
column. Explicit note: "No expected-status column intentionally
— predictions are the failure mode this scope was meant to
prevent."
MEDIUM-2 — "End-to-end test" criterion maps awkwardly onto CORE's
suite-lane organization. Reframed Step 4 to "Identify the
exercising suite lane" with concrete `core test --suite {…}` /
`core eval …` invocations. A module whose only test coverage is
in `tests/` files not reached by any suite lane is a closure gap.
MEDIUM-3 — Cross-layer contract check was hand-wavy. Made
Step 5 explicitly two-pass: mechanical (grep for at least one
consumer per exposed field/method) carries full verdict authority;
judgment-required semantic mismatches are flagged for operator
review rather than verdicted mechanically.
LOW fixes: softened "two reviewers identical" claim; L10/L11
explicitly marked not-audit-targets; per-layer file splitting
flagged as auditor's choice; closure-criteria item 4 wording
aligned with new Step 4.
Frontmatter status bumped to "Draft v2"; date line records
revision provenance.
* docs(recognition): scope recognizer storage against existing thermodynamic substrate
Two changes:
1. New scope: docs/decisions/recognizer-storage-scope.md (draft v1).
Reframes the recognizer-storage question against ADR-0006 (field
energy operator) and ADR-0014 (vault promotion policy) — the
thawed ↔ crystallized lattice already implemented under
core/physics/{energy,learning}.py. The three-candidate framing
(pack / vault / substrate) was drafted without acknowledging this
substrate; once it's in view, the storage question collapses to:
how does a derived recognizer participate in the existing
excitation / cooling / coherence-settling / promotion / re-thaw
dynamics, and what extension is needed for HITL-gated drop-off.
Names three measurements that need definition (recognizer
excitation, coherence residual, promotion criteria), one sibling
ADR (drop-off / deprecation), and the forever-running runtime
principle. Explicitly rejects pack-as-recognizer-container,
vault-without-substrate-reframe, per-session re-derivation, and
approximate match.
2. Amendment to docs/decisions/teaching-derived-recognition-scope.md.
Appends a "Connection to existing thermodynamic substrate" section
acknowledging the three-candidate omission, citing ADR-0006/0014,
and pointing forward to the recognizer-storage scope. The original
framing is preserved for history.
Neither doc proposes a decision. Both define the question.
Process note: the omission this corrects motivated saving a project
memory (feedback-adr-cross-reference-discipline) to prevent
independent reinvention in future ADR work.
* docs(recognition): revise recognizer-storage scope to v2 (self-review fixes)
Self-review surfaced two HIGH and two MEDIUM gaps in v1.
HIGH-1 — Substrate liveness overclaim. v1 described the entire
field-energy + vault-promotion lattice as live. Verified: only the
energy half is wired (FieldEnergyOperator called by ingest/gate.py,
field/propagate.py, language_packs/compiler.py); core/physics/learning.py
(VaultPromotionPolicy) is imported by no module outside core/physics/.
Added "Substrate liveness audit" subsection that honestly accounts for
which pieces are live vs. dormant, and explicitly states that the
recognizer-storage ADR must deliver both wiring the dormant promotion
path AND extending it for recognizers as content type.
HIGH-2 — Meta-irony: v1's drop-off section invented a HITL ratification
path without cross-referencing ADR-0057's existing teaching-chain
review/replay/append-only-log machinery — exactly the failure mode the
new feedback-adr-cross-reference-discipline memory was meant to prevent.
Added explicit cross-reference: drop-off reuses ADR-0057's review-and-log
plumbing; load-bearing originality is the recency-driven trigger and
the (non-replay-equivalence) gate. Plus HITL latency named as a
load-bearing architectural constraint, not just queue plumbing.
MEDIUM-1 — "Forever-running runtime" was framed as an assumption. Honest
status: current runtime is session-bounded (core chat is a CLI; each
invocation builds a fresh ChatRuntime; no long-lived process). Reframed
as a prerequisite (own scope, gates this one), not an assumption.
MEDIUM-2 — "Substrate-resident destination" was named but never sketched,
making the IOU concrete-free. Added a one-paragraph sketch (recognizer
as versor; recognizer as null-cone region) to keep the destination
honest. Explicitly illustrative, not committed.
LOW corrections inline: recognizer-excitation temporal-direction note;
0.05 residual threshold marked as default; cold-path latency reframed
as a general vault concern recognizers inherit rather than introduce.
Frontmatter status bumped to "Draft v2"; date line records revision
provenance.
566-line scope document defining the next recognition phase after
ADR-0144's epistemic carrier. Not a decision — defines the question
the follow-up ADR must answer.
v2 reframes from v1:
- feature-bundle outputs whose type emerges from lifted features (not
pre-decided proposition categories)
- evidence-bound lifts with span pointers + contradiction detection
for adversarial robustness
- multi-resolution decoding (chunked-first / word-by-word fallback)
Companion to docs/decisions/proposition-graph-scope.md (shipped with
ADR-0144). Anchored to the decoding-not-generating thesis.
Implements the PropositionGraph epistemic carrier (ADR-0144):
recognition/carrier.py — EpistemicTransition, EpistemicNode, EpistemicGraph.
Frozen, JSON-serializable, byte-deterministic. EpistemicNode wraps a
RecognitionOutcome with an append-only provenance chain; epistemic_state
property tracks last transition's to_state or outcome.state when empty.
recognition/connector.py — epistemic_node_to_graph_node(). Maps an admitted
EpistemicNode's FeatureBundle (agent/relation/count/unit) to a GraphNode
for the generation-side articulation planner.
CognitiveTurnPipeline gains a recognizer: DerivedRecognizer | None param
(default None — all existing callers unaffected). When attached, run()
calls recognize() at the top of every turn and wraps admitted outcomes in
an EpistemicGraph. CognitiveTurnResult.epistemic_graph carries it.
RuntimeConfig.recognition_grounded_graph: bool = False — opt-in flag that
replaces the intent-derived PropositionGraph with one derived from the
admitted EpistemicNode via the connector.
RatificationOutcome gains three specific PASSTHROUGH sub-values
(PASSTHROUGH_NO_FIELD / NO_VOCAB / NO_VERSOR) for _ratify_intent
observability (ADR-0142 debt 1). All normalise to "passthrough" before
trace_hash so pre-ADR-0144 hashes are byte-identical.
24/24 acceptance tests pass; 67/67 smoke tests pass; no regressions.
Adds recognition/outcome.py: RecognitionOutcome, FeatureBundle,
BoundFeature, EvidenceSpan, NegativeEvidence, the three typed refusal
classes (ShapeRefusal, FeatureEvidenceRefusal, FeatureConsistencyRefusal),
and RecognitionProvenance. Frozen dataclasses, JSON-serializable,
byte-deterministic invariants enforced in __post_init__.
ADR-0143 commits to Mechanism D (multi-resolution anti-unification over
token sequences) and defines the two-phase acceptance test.
* feat(epistemic): populate normative_detail on TurnEvent and ChatResponse
Adds normative_detail_from_verdicts() to core.epistemic_state and wires
it into both the stub and main ChatResponse/TurnEvent construction sites.
The field carries a sorted comma-separated list of violated boundary or
commitment IDs when normative clearance is VIOLATED or SUPPRESSED; empty
string otherwise.
* docs(ADR-0142): ratify epistemic state taxonomy — 14-state vocabulary + normative clearance axis
Formalises the six-subsystem Framing 1 audit findings into a first-class
decision. Accepts the 14-state taxonomy and companion 4-value normative
clearance axis. Documents Phase 3 deliverables already landed and defers
structured provenance + cross-subsystem transition machinery to ADR-0144.
* feat(epistemic): add first-class state enums
* feat(epistemic): tag TurnEvent with state axes
* feat(epistemic): serialize turn state axes
* feat(packs): tag curated and inferred unit entries
* feat(epistemic): expose word-level state on manifold
* feat(epistemic): expose vault status mapping
* feat(epistemic): preserve pack entry states through compiler
* test(epistemic): cover phase 3 state tagging spine
* feat(runtime): wire epistemic_state + normative_clearance into ChatResponse
Add first-class epistemic_state and normative_clearance fields to
ChatResponse (defaulting to "undetermined"/"unassessable" for backward
compat). Import epistemic_state_for_grounding_source and
clearance_from_verdicts into chat/runtime.py and populate both fields on
the stub path (TurnEvent + ChatResponse) and the main path (TurnEvent +
ChatResponse). Fix the test fixture to use "euro per hour" (a genuinely
composed unit) instead of "dollars per hour" which is a curated lexicon
entry and returns DECODED, not INFERRED.
* test(cognition): update term_capture_rate baseline from 0.9167 to 1.0
unknown_logos_019 now correctly surfaces "light" as a pack-resident
token near the logos versor — producing term_capture_rate 1.0 on both
main and Phase 3. The 0.9167 pin was stale relative to a surface change
already on main; Phase 3 did not introduce this shift.
* docs(epistemic-scope): mark Framing 1 audit complete across all six subsystems
Teaching pipeline (47 pts, 0 new states), cognition pipeline (42 pts,
0 new states, 1 EPISTEMIC_STATE_NEEDED placeholder), and chat runtime
(47 pts, 0 new states, 6 provenance gaps) audits complete. Taxonomy
confirmed stable; remaining work is implementation debt and provenance,
not taxonomy extension.
Vault, language-packs, and runtime-packs audits complete. Findings:
- Ratifies INFERRED (14th epistemic state): derived from DECODED
primitives by ratified deterministic rule; composite never curated.
Grounded by language_packs composition rules (per/square/cubic unit
synthesis). Sits between DECODED and UNVERIFIED-POSSIBLE in the
epistemic progression.
- Ratifies normative clearance axis as orthogonal companion to the
epistemic axis. Safety/ethics verdicts are not epistemic states;
they answer a different question (normative compliance vs. truth-
value). Four clearance states: CLEARED, VIOLATED, UNASSESSABLE,
SUPPRESSED. Every proposition in ChatResponse/TurnEvent carries
both an epistemic_state and a normative_clearance tag.
- Closes open question 5 (identity/safety/ethics interaction):
identity grounds the epistemic axis; safety/ethics live on the
normative axis; they coexist without collapsing.
- Updates RecognitionOutcome shape with both axes.
- Marks all four subsystem audits complete in Framing 1 block;
documents vault implementation debt (_status_admits conflation)
and deferred candidate (COMPOSED_RECOGNITION).
- Records four Phase 2 implementation bugs in summary:
evidence.py empty-pairs silent-FALSIFIED, runner DECODED-
UNARTICULATED misclassification, domain_contract present=False
inconsistency, _status_admits FALSIFIED/SPECULATIVE conflation.
Taxonomy is now stable. Phase 2 (bug fixes) and Phase 3 (first-class
state tagging in ChatResponse/TurnEvent) are the remaining work.