feat(ml): training hygiene — system-tagged images are absent from other concepts training
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Step 2 of milestone #128. _hygiene_excluded_ids (training_data.py) is the
one shared predicate: images carrying any system tag are dropped from
every OTHER concepts head training — not positives (a rough wip tagged
as a character drags the head toward generic-sketch) and not rejection
or sampled negatives (a wip OF character X is not evidence against X).
A system tags own head trains on them unfiltered; that is what makes
auto-flagging banners work. Selection is split out of train_head as the
sklearn-free head_training_ids so CI (no sklearn) can pin the behavior.

CCIP: reference prototypes skip hygiene-tagged images — a faceless wip
figure region must never become an identity reference — and the ref
cache signature now counts hygiene applications, since tagging an image
wip changes the reference set without touching character/region counts.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
Claude-Session: https://claude.ai/code/session_01CDgx8bQS5YrGRK76v8HUnM
This commit is contained in:
2026-07-02 23:19:41 -04:00
parent e9891ee9f3
commit e6f128c894
4 changed files with 223 additions and 15 deletions
+26 -1
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@@ -62,6 +62,18 @@ def _single_character_images():
)
def _hygiene_tagged_images():
"""Subquery of image ids carrying any SYSTEM tag (wip / banner / editor
screenshot). Training hygiene (#128): such images never contribute
reference prototypes — a faceless wip's figure region would otherwise
become an identity reference for the character it's tagged with."""
return (
select(image_tag.c.image_record_id)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.is_system.is_(True))
)
async def _ref_signature(session: AsyncSession) -> tuple:
n_tags = (
await session.execute(
@@ -79,7 +91,17 @@ async def _ref_signature(session: AsyncSession) -> tuple:
)
)
).one()
return (n_tags, n_regs, max_id)
# Hygiene applications must invalidate too: tagging an image `wip` changes
# the reference set without touching character-tag or region counts.
n_hygiene = (
await session.execute(
select(func.count())
.select_from(image_tag)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.is_system.is_(True))
)
).scalar_one()
return (n_tags, n_regs, max_id, n_hygiene)
async def character_references(session: AsyncSession) -> dict[int, list]:
@@ -102,6 +124,9 @@ async def character_references(session: AsyncSession) -> dict[int, list]:
.where(ImageRegion.kind.in_(_FIGURE_KINDS))
.where(ImageRegion.ccip_embedding.is_not(None))
.where(ImageRegion.image_record_id.in_(_single_character_images()))
.where(
ImageRegion.image_record_id.not_in(_hygiene_tagged_images())
)
)
).all()
refs: dict[int, list] = {}
+48 -13
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@@ -40,6 +40,7 @@ from ...models import (
from ...models.tag import image_tag
from .training_data import (
_auto_apply_point,
_hygiene_excluded_ids,
_ids_with_tag,
_l2norm,
_load_embeddings,
@@ -150,11 +151,16 @@ def train_all_heads(
embedding_version = _embedder_version(session)
eligible = _eligible_tag_ids(session, cfg["min_positives"])
eligible_set = set(eligible)
# Computed once per run, not per head — the hygiene set is identical for
# every non-system concept.
hygiene = _hygiene_excluded_ids(session)
trained = 0
skipped = 0
for i, tag_id in enumerate(eligible):
try:
ok = train_head(session, tag_id, embedding_version, cfg, np)
ok = train_head(
session, tag_id, embedding_version, cfg, np, hygiene=hygiene
)
except Exception:
log.exception("train_head failed for tag %d", tag_id)
ok = False
@@ -174,27 +180,56 @@ def train_all_heads(
return {"n_trained": trained, "n_skipped": skipped}
def head_training_ids(
session: Session, tag_id: int, cfg: dict, hygiene: set[int] | None = None,
) -> tuple[list[int], list[int]] | None:
"""Select (pos_ids, neg_ids) for one head. Split out of train_head and
kept sklearn-free so the hygiene exclusion is testable in the CI env
(sklearn only exists in the ml image). Returns None when the concept has
too few usable positives.
Training hygiene (#128): images carrying a system tag are ABSENT from
every other concept's training — dropped as positives AND kept out of
the rejection/sampled negative pool (see _hygiene_excluded_ids). A system
tag's own head trains on them unfiltered: its positives ARE the hygiene
images."""
tag = session.get(Tag, tag_id)
if tag is not None and tag.is_system:
hygiene = set()
elif hygiene is None:
hygiene = _hygiene_excluded_ids(session)
pos_ids = [i for i in _ids_with_tag(session, tag_id) if i not in hygiene]
if len(pos_ids) < cfg["min_positives"]:
return None
pos_set = set(pos_ids)
rejected = [
i for i in _rejected_ids(session, tag_id)
if i not in pos_set and i not in hygiene
]
want_neg = max(len(pos_ids) * cfg["neg_ratio"], _EXAMPLES_MIN * 4)
sampled = _sample_unlabeled(
session, pos_set | set(rejected) | hygiene,
min(_UNLABELED_POOL, want_neg),
)
return pos_ids, rejected + [i for i in sampled if i not in pos_set]
def train_head(
session: Session, tag_id: int, embedding_version: str, cfg: dict, np
session: Session, tag_id: int, embedding_version: str, cfg: dict, np,
hygiene: set[int] | None = None,
) -> bool:
"""Fit + upsert one head. Returns True if a head was written, False if the
concept had too few usable examples to train (the row is then removed)."""
from sklearn.linear_model import LogisticRegression
from sklearn.model_selection import StratifiedKFold, cross_val_predict
pos_ids = _ids_with_tag(session, tag_id)
if len(pos_ids) < cfg["min_positives"]:
ids = head_training_ids(session, tag_id, cfg, hygiene)
if ids is None:
session.execute(delete(TagHead).where(TagHead.tag_id == tag_id))
return False
pos_set = set(pos_ids)
rejected = [i for i in _rejected_ids(session, tag_id) if i not in pos_set]
want_neg = max(len(pos_ids) * cfg["neg_ratio"], _EXAMPLES_MIN * 4)
sampled = _sample_unlabeled(
session, pos_set | set(rejected), min(_UNLABELED_POOL, want_neg)
)
neg_ids = rejected + [i for i in sampled if i not in pos_set]
pos_ids, neg_ids = ids
emb = _load_embeddings(session, pos_ids + neg_ids)
pos = [emb[i] for i in pos_ids if i in emb]
neg = [emb[i] for i in neg_ids if i in emb]
+24 -1
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@@ -17,10 +17,33 @@ from typing import Any
from sqlalchemy import func, select
from sqlalchemy.orm import Session
from ...models import ImageRecord, TagSuggestionRejection
from ...models import ImageRecord, Tag, TagSuggestionRejection
from ...models.tag import image_tag
def _hygiene_excluded_ids(session: Session) -> set[int]:
"""Ids of images carrying ANY system tag (wip / banner / editor
screenshot — milestone #128). These images are excluded from OTHER
concepts' head training entirely: not positives (a rough wip tagged as a
character drags that head toward 'generic sketch') and not sampled or
rejection negatives (a wip OF character X is not evidence against X) —
simply absent. A system tag's OWN head trains on them unchanged; that is
what makes auto-flagging banners/editor screenshots work.
Item-level by design: a wip-tagged process video contributes (or
withholds) ALL its sampled frames, though some may show the finished
piece. Operator call 2026-07-03: with enough clean data this washes out —
no per-frame handling.
"""
return set(
session.execute(
select(image_tag.c.image_record_id)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.is_system.is_(True))
).scalars().all()
)
def _ids_with_tag(session: Session, tag_id: int) -> list[int]:
return [
r[0] for r in session.execute(
+125
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@@ -0,0 +1,125 @@
"""Training hygiene (#128): system-tagged images are ABSENT from other
concepts' training data and from CCIP reference prototypes.
sklearn only exists in the ml image, so these pin head_training_ids (the
sklearn-free selection split out of train_head) rather than a full fit —
the exclusion lives entirely in that selection.
"""
import pytest
from sqlalchemy import insert, select
from backend.app.models import ImageRecord, ImageRegion, Tag, TagKind
from backend.app.models.tag import image_tag
from backend.app.services.ml import ccip
from backend.app.services.ml.heads import head_training_ids
from backend.app.services.ml.training_data import _hygiene_excluded_ids
from backend.app.services.tag_service import TagService
pytestmark = pytest.mark.integration
_CFG = {"min_positives": 2, "neg_ratio": 1}
async def _system_wip(db) -> Tag:
return (await db.execute(
select(Tag).where(Tag.is_system.is_(True), Tag.name == "wip")
)).scalar_one()
async def _img(db, sha, *, embedded=True):
rec = ImageRecord(
path=f"/images/{sha}.jpg", sha256=sha, size_bytes=1, mime="image/jpeg",
width=1, height=1, origin="imported_filesystem",
integrity_status="unknown",
siglip_embedding=([0.1] * 1152 if embedded else None),
)
db.add(rec)
await db.flush()
return rec
async def _apply(db, image_id, tag_id):
await db.execute(insert(image_tag).values(
image_record_id=image_id, tag_id=tag_id, source="manual",
))
@pytest.mark.asyncio
async def test_hygiene_excluded_ids(db):
wip = await _system_wip(db)
flagged = await _img(db, "a" * 64)
await _img(db, "b" * 64)
await _apply(db, flagged.id, wip.id)
excluded = await db.run_sync(lambda s: _hygiene_excluded_ids(s))
assert excluded == {flagged.id}
@pytest.mark.asyncio
async def test_head_selection_drops_hygiene_from_both_sides(db):
"""A wip-tagged image of concept X is neither a positive NOR a sampled
negative for X — it is absent entirely."""
wip = await _system_wip(db)
concept = await TagService(db).find_or_create("concept_x", TagKind.general)
clean_a = await _img(db, "a" * 64)
clean_b = await _img(db, "b" * 64)
flagged_pos = await _img(db, "c" * 64) # X + wip: dropped positive
negative_pool = await _img(db, "d" * 64) # untagged: legit negative
flagged_pool = await _img(db, "e" * 64) # wip only: must not be sampled
for img in (clean_a, clean_b, flagged_pos):
await _apply(db, img.id, concept.id)
await _apply(db, flagged_pos.id, wip.id)
await _apply(db, flagged_pool.id, wip.id)
ids = await db.run_sync(lambda s: head_training_ids(s, concept.id, _CFG))
assert ids is not None
pos_ids, neg_ids = ids
assert set(pos_ids) == {clean_a.id, clean_b.id}
assert negative_pool.id in neg_ids
assert flagged_pos.id not in neg_ids
assert flagged_pool.id not in neg_ids
@pytest.mark.asyncio
async def test_system_tags_own_head_keeps_hygiene_positives(db):
"""The wip head itself trains ON wip-tagged images — that's what makes
auto-flagging work."""
wip = await _system_wip(db)
one = await _img(db, "a" * 64)
two = await _img(db, "b" * 64)
await _img(db, "c" * 64) # negative pool
await _apply(db, one.id, wip.id)
await _apply(db, two.id, wip.id)
ids = await db.run_sync(lambda s: head_training_ids(s, wip.id, _CFG))
assert ids is not None
pos_ids, _ = ids
assert set(pos_ids) == {one.id, two.id}
@pytest.mark.asyncio
async def test_ccip_references_skip_hygiene_images(db):
"""A wip's figure region must never become an identity prototype, even on
a single-character image."""
ccip._REF_CACHE.update(sig=None, refs=None)
wip = await _system_wip(db)
char = await TagService(db).find_or_create("Char A", TagKind.character)
clean = await _img(db, "a" * 64)
flagged = await _img(db, "b" * 64)
for img, slot in ((clean, 0), (flagged, 1)):
vec = [0.0] * 768
vec[slot] = 1.0
db.add(ImageRegion(
image_record_id=img.id, kind="figure",
rx=0.0, ry=0.0, rw=1.0, rh=1.0,
ccip_embedding=vec, embedding_version="ccip-test",
))
await _apply(db, img.id, char.id)
await _apply(db, flagged.id, wip.id)
await db.commit()
refs = await ccip.character_references(db)
vectors = refs.get(char.id, [])
assert len(vectors) == 1
assert float(vectors[0][0]) == pytest.approx(1.0)
assert float(vectors[0][1]) == pytest.approx(0.0)