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FabledCurator/backend/app/services/ml/ccip.py
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bvandeusen e6f128c894
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feat(ml): training hygiene — system-tagged images are absent from other concepts training
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
2026-07-02 23:19:41 -04:00

206 lines
7.6 KiB
Python

"""CCIP few-shot character matcher (#114) — server-side, numpy on stored vectors.
CCIP is a FROZEN identity embedding; we don't train it. Instead the operator's
tagged characters become reference prototypes: a character tag's references are
the CCIP vectors of figure/face regions on images carrying that tag. To suggest
characters for a new image, we compare its figure-region CCIP vectors to every
character's references (multi-prototype: best match over a character's examples)
and surface the ones that clear a similarity threshold. No GPU here — the agent
already produced the vectors; this is cosine matching on what's stored.
v1 uses cosine similarity on the raw CCIP vectors with a tunable threshold; the
exact CCIP difference metric/threshold gets validated against the model during
the hands-on eval. numpy is imported lazily (API worker has it via pgvector).
"""
from sqlalchemy import func, select
from sqlalchemy.ext.asyncio import AsyncSession
from ...models import ImageRegion, MLSettings, Tag, TagKind
from ...models.tag import image_tag
# Cosine-similarity floor to call a figure the same character. The live setting
# (ml_settings.ccip_match_threshold) drives it; this is only the fallback when no
# threshold is supplied AND no settings row exists.
DEFAULT_SIM_THRESHOLD = 0.85
_FIGURE_KINDS = ("face", "figure")
async def _settings_threshold(session: AsyncSession) -> float:
val = (
await session.execute(
select(MLSettings.ccip_match_threshold).where(MLSettings.id == 1)
)
).scalar_one_or_none()
return float(val) if val is not None else DEFAULT_SIM_THRESHOLD
def _l2norm(mat, np):
n = np.linalg.norm(mat, axis=1, keepdims=True)
n[n == 0] = 1.0
return mat / n
# Single-shot cache of the (expensive) reference load, keyed on a cheap
# signature that changes exactly when references could: a character tag added/
# removed (n_char_tags) or a figure embedded (max/ n of ccip regions). Shared by
# the live matcher (every modal open) and the auto-apply sweep.
_REF_CACHE: dict = {"sig": None, "refs": None}
def _single_character_images():
"""Subquery of image ids carrying EXACTLY ONE character tag. References come
only from these — on a multi-character image the tag is image-level, so every
figure would otherwise pollute each character's prototype set (a 2-character
image tagged 'Velma' would make Daphne's figure a Velma reference)."""
return (
select(image_tag.c.image_record_id)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.kind == TagKind.character)
.group_by(image_tag.c.image_record_id)
.having(func.count() == 1)
)
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(
select(func.count())
.select_from(image_tag)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.kind == TagKind.character)
)
).scalar_one()
n_regs, max_id = (
await session.execute(
select(func.count(), func.max(ImageRegion.id)).where(
ImageRegion.kind.in_(_FIGURE_KINDS),
ImageRegion.ccip_embedding.is_not(None),
)
)
).one()
# 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]:
"""Per character-tag CCIP reference vectors: figure/face-region CCIP
embeddings on UNAMBIGUOUS (single-character) images carrying that tag.
Multi-prototype — several vectors per character. Cached on a cheap signature."""
sig = await _ref_signature(session)
if _REF_CACHE["sig"] == sig and _REF_CACHE["refs"] is not None:
return _REF_CACHE["refs"]
rows = (
await session.execute(
select(image_tag.c.tag_id, ImageRegion.ccip_embedding)
.select_from(ImageRegion)
.join(
image_tag,
image_tag.c.image_record_id == ImageRegion.image_record_id,
)
.join(Tag, Tag.id == image_tag.c.tag_id)
.where(Tag.kind == TagKind.character)
.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] = {}
for tag_id, vec in rows:
refs.setdefault(tag_id, []).append(vec)
_REF_CACHE.update(sig=sig, refs=refs)
return refs
async def _tag_names(session: AsyncSession, tag_ids: list[int]) -> dict[int, str]:
if not tag_ids:
return {}
return dict(
(
await session.execute(
select(Tag.id, Tag.name).where(Tag.id.in_(tag_ids))
)
).all()
)
async def match_image(
session: AsyncSession, image_id: int, threshold: float | None = None
) -> list[dict]:
"""Character suggestions for one image from its figure-region CCIP vectors:
[{tag_id, name, category:'character', score, source:'ccip'}], ranked.
Already-applied character tags are excluded. Empty if the image has no figure
CCIP vectors or no character references exist yet. threshold defaults to the
live ml_settings.ccip_match_threshold."""
import numpy as np
if threshold is None:
threshold = await _settings_threshold(session)
qvecs = (
await session.execute(
select(ImageRegion.ccip_embedding).where(
ImageRegion.image_record_id == image_id,
ImageRegion.kind.in_(_FIGURE_KINDS),
ImageRegion.ccip_embedding.is_not(None),
)
)
).scalars().all()
if not qvecs:
return []
refs = await character_references(session)
if not refs:
return []
applied = set(
(
await session.execute(
select(image_tag.c.tag_id).where(
image_tag.c.image_record_id == image_id
)
)
).scalars()
)
names = await _tag_names(session, [t for t in refs if t not in applied])
Q = _l2norm(np.vstack([np.asarray(v, dtype=np.float32) for v in qvecs]), np)
out = []
for tag_id, vecs in refs.items():
if tag_id in applied:
continue
R = _l2norm(np.vstack([np.asarray(v, dtype=np.float32) for v in vecs]), np)
best = float((Q @ R.T).max()) # best (query figure, reference) cosine
if best >= threshold:
out.append({
"tag_id": tag_id,
"name": names.get(tag_id, str(tag_id)),
"category": "character",
"score": round(best, 4),
"source": "ccip",
})
out.sort(key=lambda d: d["score"], reverse=True)
return out