core/chat/articulation_telemetry.py
Shay 327047ce26 feat(contemplation): Phase 5 — articulation-quality miner closes the loop
Final phase of the articulation arc.  Consumes the per-turn
``PlanMetrics`` + ``ContemplationFinding`` streams produced by
Phases 3 + 4 and aggregates across many turns to emit
SPECULATIVE ``PACK_MUTATION_CANDIDATE`` findings that the operator
reviews via the existing proposal-review-ratify chain.

This is the doctrine-aligned answer to the user's question:

  "Should we... realize a way to score whether it should use what
  it produced towards memory confidence for future use?"

Yes — and it stays inside ADR-0080: read-only, SPECULATIVE-only,
deterministic, no parallel learning path, no autonomous memory
mutation.

What it adds
------------

* New module ``chat/articulation_telemetry.py``:
    - ``ArticulationObservation`` frozen dataclass — per-turn
      bundle of (turn_id, anchor_subject, prompt_hash,
      plan_substrate_hash, metrics, findings).
    - ``format_articulation_observation_jsonl(...)`` — deterministic
      sort-keys JSONL line.
    - ``load_articulation_observations(lines)`` — schema-tolerant
      loader; malformed lines drop without aborting.
    - ``ArticulationObservationSink`` protocol — structurally
      identical to ``TurnEventSink`` but distinct named type so
      consumers can subscribe to one stream without the other.

* New module ``core/contemplation/miners/articulation_quality.py``:
    - ``mine_articulation_observations(observations, paths)`` —
      pure deterministic aggregator with three v1 rules.
    - **recurring_predicate_monotony** — when the same
      (subject, predicate) pair is flagged WEAK_SURFACE in
      >= _MIN_RECURRENCE (default 3) observations, propose
      substrate diversification with non-dominant predicates.
    - **recurring_planner_gap** — when the same subject is
      flagged PLANNER_GAP >= _MIN_RECURRENCE times across modes,
      propose substrate expansion.
    - **low_average_predicate_diversity** — when mean
      ``predicate_diversity_ratio`` < 0.5 across >= _MIN_RECURRENCE
      observations on the same anchor subject, propose
      diversification.

* Runtime wiring (``chat/runtime.py``):
    - New ``ChatRuntime.attach_articulation_sink(sink)`` method.
      Mirrors ``attach_telemetry_sink`` pattern.
    - Emission point at the end of
      ``_maybe_apply_discourse_planner``: when contemplation
      enabled + sink attached + plan engaged, builds an
      ``ArticulationObservation`` and emits one JSONL line.
      Sink errors propagate (fail-fast, no swallowing).
    - Per-runtime ``_articulation_turn_counter`` increments on
      every emission; gives downstream consumers a stable
      sequence index.

Tests
-----

* ``tests/test_articulation_quality_miner.py`` (11 tests):
    - Empty / sub-threshold cases yield no findings.
    - Each of the three rules fires at threshold.
    - Recurring_predicate_monotony separates by subject (no
      cross-subject merging).
    - Recurring_planner_gap collects distinct modes into a
      sorted comma-joined string.
    - Determinism — byte-equal finding IDs across two runs.
    - SPECULATIVE doctrine pin.
    - JSONL round-trip preserves observation identity.

* ``tests/test_articulation_quality_e2e.py`` (7 tests):
    - Sink-detached + contemplation-on → no emission.
    - Sink-attached + contemplation-off → no emission.
    - Engaged turn emits exactly one observation line.
    - BRIEF prompt emits nothing (fast-path).
    - **Full loop** — run compound prompt 3x → 3 observations →
      miner emits PACK_MUTATION_CANDIDATE with subject='truth',
      predicate='recurring_predicate_monotony', object='belongs_to'.
    - Full loop is deterministic (byte-equal finding IDs across
      two complete runs).
    - Every full-loop finding is SPECULATIVE.

Doctrine pins
-------------

| Claim                                | Pinned by                                                |
|--------------------------------------|----------------------------------------------------------|
| SPECULATIVE-only                     | test_all_findings_remain_speculative                     |
| Deterministic across runs            | test_miner_is_deterministic_across_runs                  |
| Full-loop determinism (e2e)          | test_full_loop_is_deterministic_byte_equal_finding_ids   |
| No autonomous mutation               | Sink is append-only; miner outputs ContemplationFinding  |
|                                      | objects only; nothing writes to packs/vault/teaching.    |
| Append-only stream                   | Sink protocol has emit(line: str) and nothing else.      |

Live demo (3 identical compound-prompt turns)
---------------------------------------------

Runtime emits 3 observations.  Offline miner aggregates and emits:

  [pack_mutation_candidate] subject='truth'
      predicate='recurring_predicate_monotony' object='belongs_to'
      evidence_refs: 3 observations
      proposed_action: "diversify substrate for 'truth': across 3
        observations the plan repeatedly over-concentrated on
        predicate 'belongs_to'. Candidates: add teaching chains
        rooted on 'truth' with relations OTHER than 'belongs_to'
        (grounds / requires / reveals / contrasts / precedes /
        follows) so the planner's RELATION selector has more
        variety to draw from."
      epistemic_status: speculative

The system observed its own articulation patterns across many
turns, identified the corpus expansion priority, and emitted a
specific reviewable proposal — without mutating anything.  The
operator decides whether to act on it via the existing review
chain.

Verification
------------

  pytest test_articulation_quality_miner.py       11/11 pass
  pytest test_articulation_quality_e2e.py          7/7 pass
  pytest test_plan_metrics*.py                    18/18 pass (Phase 4)
  pytest test_plan_contemplation*.py              17/17 pass (Phase 3)
  pytest test_discourse_planner_*.py              99/99 pass
  pytest test_articulation_demo.py                 all claims supported
  pytest test_narrative_example_intents.py         pass
  core test --suite smoke                         67/67 pass
  core test --suite runtime                       19/19 pass

The articulation arc is complete.  Future work documented in
``docs/sessions/SESSION-2026-05-21-articulation-arc.md`` §8:
connective rotation, generalised pronoun selection, doctrine-gated
plan revision, Phase 2.5 mid-sentence reflection.  None blocking.
2026-05-21 10:55:39 -07:00

198 lines
7 KiB
Python

"""Phase 5 — per-turn articulation observation schema + sink.
The runtime emits one structured observation per engaged turn
(``discourse_contemplation=True`` AND planner produced a multi-move
plan). Each observation bundles Phase 4 metrics and Phase 3 findings
plus identity context (turn_id, anchor subject, plan substrate hash)
so the offline contemplation miner (Phase 5) can aggregate across
many turns and emit reviewable pack-mutation candidates.
Doctrine alignment (ADR-0080 + ADR-0040):
* Read-only — observations are PROJECTIONS of plan state; nothing
is mutated when they emit.
* Append-only — sinks ONLY accept JSONL lines; observations never
rewrite or overwrite prior records.
* Deterministic — same plan + same metrics + same findings →
byte-identical JSONL line. Pinned by the
``test_observation_is_deterministic`` test.
* SPECULATIVE-only by transitivity — the findings carried inside
each observation are themselves SPECULATIVE (enforced by the
ContemplationFinding schema's __post_init__).
The sink protocol mirrors ``chat.telemetry.TurnEventSink``: any
object with ``def emit(line: str) -> None`` satisfies the contract.
Articulation observations flow through a SEPARATE sink (not the
turn-event sink) so consumers can subscribe to one stream without
the other, and the two streams' wire formats stay independent.
"""
from __future__ import annotations
import hashlib
import json
from dataclasses import dataclass
from typing import Any, Iterable, Protocol
# ---------------------------------------------------------------------------
# Schema
# ---------------------------------------------------------------------------
@dataclass(frozen=True, slots=True)
class ArticulationObservation:
"""One per-turn articulation observation.
Carries the Phase 4 metrics dict + the Phase 3 findings (compacted
to (kind, subject, predicate, object) tuples) plus identity fields.
Both inner payloads are pre-serialised via ``as_dict()`` so the
observation itself owns no live references — safe to log, archive,
or stream without keeping the runtime alive.
"""
turn_id: int
"""Sequential turn index within the emitting session (0-based)."""
anchor_subject: str
"""The plan's anchor subject lemma — the most stable aggregation
key. For a typical EXPLAIN/PARAGRAPH plan this is the prompt's
head noun; for compound prompts it is the primary part's
subject."""
prompt_hash: str
"""SHA-256-16 of the (lowercased, stripped) raw prompt text.
Lets the miner detect repeated prompts without storing raw
user input."""
plan_substrate_hash: str
"""SHA-256-16 of the plan's canonical JSON. Joins this
observation to the Phase 3 contemplation findings that share
the same substrate hash."""
metrics: dict[str, Any]
"""Phase 4 ``PlanMetrics.as_dict()`` — see
``core.contemplation.plan_metrics`` for field list and
semantics."""
findings: tuple[dict[str, str | None], ...]
"""Phase 3 finding summaries — each is
``{"kind": <FindingKind.value>, "subject": <str>,
"predicate": <str>, "object": <str|None>}``. Compacted form;
the full finding objects (with substrate_hash, finding_id,
proposed_action, evidence_refs) are recoverable from a separate
findings stream that emits via the existing
``DiscoveryCandidateSink``."""
def as_dict(self) -> dict[str, Any]:
return {
"turn_id": self.turn_id,
"anchor_subject": self.anchor_subject,
"prompt_hash": self.prompt_hash,
"plan_substrate_hash": self.plan_substrate_hash,
"metrics": dict(self.metrics),
"findings": [dict(f) for f in self.findings],
}
# ---------------------------------------------------------------------------
# Serialisation
# ---------------------------------------------------------------------------
def serialize_articulation_observation(
observation: ArticulationObservation,
) -> dict[str, Any]:
"""Return a JSON-safe deterministic dict. Field order alphabetised
by the sort_keys=True at the JSONL boundary."""
return observation.as_dict()
def format_articulation_observation_jsonl(
observation: ArticulationObservation,
) -> str:
"""One deterministic JSONL line (sort_keys; no trailing newline)."""
return json.dumps(
observation.as_dict(),
sort_keys=True,
separators=(",", ":"),
default=str,
)
def prompt_hash(prompt: str) -> str:
"""Stable 16-char prompt fingerprint.
Lowercased + whitespace-collapsed so two presentations of the
same logical prompt collapse to one hash. Hashing means the
raw prompt never has to be persisted — privacy-respecting and
storage-cheap.
"""
canonical = " ".join((prompt or "").strip().lower().split())
return hashlib.sha256(canonical.encode("utf-8")).hexdigest()[:16]
# ---------------------------------------------------------------------------
# Sink protocol
# ---------------------------------------------------------------------------
class ArticulationObservationSink(Protocol):
"""Append-only JSONL sink. Structurally identical to
``chat.telemetry.TurnEventSink`` but kept as a distinct named
type so consumers can subscribe to articulation observations
without seeing the broader turn-event stream."""
def emit(self, line: str) -> None: ...
# ---------------------------------------------------------------------------
# Loader (for the offline miner)
# ---------------------------------------------------------------------------
def load_articulation_observations(
lines: Iterable[str],
) -> tuple[ArticulationObservation, ...]:
"""Parse a JSONL stream back into ``ArticulationObservation``s.
Lines that fail to parse are SKIPPED — a malformed line in the
middle of a long stream must not bring down the miner. Caller
can re-parse manually if strict parsing is needed.
"""
out: list[ArticulationObservation] = []
for raw in lines:
raw = raw.strip()
if not raw:
continue
try:
payload = json.loads(raw)
except json.JSONDecodeError:
continue
try:
out.append(
ArticulationObservation(
turn_id=int(payload["turn_id"]),
anchor_subject=str(payload["anchor_subject"]),
prompt_hash=str(payload["prompt_hash"]),
plan_substrate_hash=str(payload["plan_substrate_hash"]),
metrics=dict(payload["metrics"]),
findings=tuple(
dict(f) for f in payload["findings"]
),
)
)
except (KeyError, TypeError, ValueError):
# Schema drift / partial record — skip rather than abort.
continue
return tuple(out)
__all__ = [
"ArticulationObservation",
"ArticulationObservationSink",
"format_articulation_observation_jsonl",
"load_articulation_observations",
"prompt_hash",
"serialize_articulation_observation",
]