c6f38b0dac
Lift recall on small/local concepts (glasses, cum, stomach-bulge, xray, lactation) that the whole-image SigLIP vector washes out: the GPU agent now embeds figure crops with SigLIP too, stored as kind='concept' regions, and the suggestion rail scores each image as a BAG (whole-image + every concept crop), taking each head's MAX over the bag. The whole-image vector is always in the bag, so this can never score lower than before. Model-agnostic by construction: the server ANNOUNCES the embedding model (HF name + version) in the lease, so the agent loads whatever the heads were trained in and stays in lock-step — a model swap is a server setting + a re-embed migration, never an agent change. - agent: model-agnostic CropEmbedder (torch/transformers get_image_features, fp16 on CUDA, inference-locked); worker branches on job.task — 'ccip' emits figure(CCIP)+concept(SigLIP) in one pass, 'siglip' emits concept-only so the back-catalogue backfill never churns figure/CCIP regions; torch cu124 + transformers in the image. - server: lease announces embed_model_name/embed_version; score_image is max-over-bag (version-filtered region embeddings); enqueue_gpu_backfill 'siglip' gates on a missing concept region (drains the back-catalogue, retries failures, no double-enqueue); daily siglip-backfill beat; UI button; /api/ccip/overview reports images_with_concept_siglip. - v1 scope: suggestion rail only — auto-apply stays whole-image (conservative; heads' thresholds were calibrated on whole-image). Bulk-apply bag = follow-up. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> Claude-Session: https://claude.ai/code/session_01Ttrj5P7upUTueSfoJcxEqa
200 lines
7.7 KiB
Python
200 lines
7.7 KiB
Python
"""Suggestion read-path (tagging-v2): suggestions come from trained HEADS, not
|
|
Camie predictions or centroids. Heads are inserted directly (training needs
|
|
scikit-learn, ml image only); scoring is numpy-only (available via pgvector)."""
|
|
import pytest
|
|
from sqlalchemy import select
|
|
|
|
from backend.app.models import ImageRecord, ImageRegion, MLSettings, TagHead, TagKind
|
|
from backend.app.models.tag import image_tag
|
|
from backend.app.services.ml.allowlist import AllowlistService
|
|
from backend.app.services.ml.suggestions import SuggestionService
|
|
from backend.app.services.tag_service import TagService
|
|
|
|
pytestmark = pytest.mark.integration
|
|
|
|
|
|
def _emb(slot: int, val: float = 3.0) -> list[float]:
|
|
"""An embedding pointing along axis `slot` (so its L2-normalized form is the
|
|
unit vector e_slot — a head with weights e_slot scores it sigmoid(1)≈0.73)."""
|
|
v = [0.0] * 1152
|
|
v[slot] = val
|
|
return v
|
|
|
|
|
|
async def _img(db, sha: str, emb=None) -> ImageRecord:
|
|
img = 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=emb,
|
|
)
|
|
db.add(img)
|
|
await db.flush()
|
|
return img
|
|
|
|
|
|
async def _embver(db) -> str:
|
|
s = (await db.execute(select(MLSettings).where(MLSettings.id == 1))).scalar_one()
|
|
return s.embedder_model_version
|
|
|
|
|
|
async def _head(db, tag_id: int, slot: int, suggest_threshold: float = 0.5):
|
|
weights = [0.0] * 1152
|
|
weights[slot] = 1.0
|
|
db.add(TagHead(
|
|
tag_id=tag_id, embedding_version=await _embver(db),
|
|
weights=weights, bias=0.0, suggest_threshold=suggest_threshold,
|
|
auto_apply_threshold=None, n_pos=10, n_neg=30,
|
|
ap=0.8, precision_cv=0.9, recall=0.6,
|
|
))
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_head_suggestion_surfaces_for_matching_image(db):
|
|
tag = await TagService(db).find_or_create("glasses", TagKind.general)
|
|
img = await _img(db, "a" * 64, _emb(0))
|
|
await _head(db, tag.id, slot=0)
|
|
await db.commit()
|
|
|
|
sl = await SuggestionService(db).for_image(img.id)
|
|
general = sl.by_category["general"]
|
|
assert len(general) == 1
|
|
s = general[0]
|
|
assert s.canonical_tag_id == tag.id
|
|
assert s.source == "head"
|
|
assert s.creates_new_tag is False
|
|
assert s.via_alias is False and s.raw_name is None
|
|
assert s.score > 0.5
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_no_embedding_means_no_suggestions(db):
|
|
img = await _img(db, "b" * 64, None)
|
|
tag = await TagService(db).find_or_create("cat", TagKind.general)
|
|
await _head(db, tag.id, slot=0)
|
|
await db.commit()
|
|
assert (await SuggestionService(db).for_image(img.id)).by_category == {}
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_no_heads_means_no_suggestions(db):
|
|
img = await _img(db, "c" * 64, _emb(0))
|
|
await db.commit() # no heads trained yet
|
|
assert (await SuggestionService(db).for_image(img.id)).by_category == {}
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_applied_tag_not_suggested(db):
|
|
tag = await TagService(db).find_or_create("dog", TagKind.general)
|
|
img = await _img(db, "d" * 64, _emb(0))
|
|
await _head(db, tag.id, slot=0)
|
|
await db.execute(
|
|
image_tag.insert().values(
|
|
image_record_id=img.id, tag_id=tag.id, source="manual"
|
|
)
|
|
)
|
|
await db.commit()
|
|
sl = await SuggestionService(db).for_image(img.id)
|
|
assert "general" not in sl.by_category or not sl.by_category["general"]
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_threshold_override_surfaces_below_cut(db):
|
|
# A head with a high suggest_threshold won't surface on a so-so score, but
|
|
# the dropdown's override=0 floor surfaces every head regardless.
|
|
tag = await TagService(db).find_or_create("horse", TagKind.general)
|
|
img = await _img(db, "e" * 64, _emb(1)) # orthogonal to the head → score 0.5
|
|
await _head(db, tag.id, slot=0, suggest_threshold=0.6)
|
|
await db.commit()
|
|
svc = SuggestionService(db)
|
|
assert svc and not (await svc.for_image(img.id)).by_category.get("general")
|
|
flooded = await svc.for_image(img.id, threshold_override=0.0)
|
|
assert any(s.canonical_tag_id == tag.id for s in flooded.by_category["general"])
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_concept_region_surfaces_via_max_over_bag(db):
|
|
# Max-over-bag: the whole-image vector is orthogonal to the head (scores the
|
|
# 0.5 midpoint, under a 0.7 cut → nothing), but a concept CROP that aligns
|
|
# with the head lifts the max over the bag above the cut. A small/local
|
|
# concept surfaces ONLY because of the crop.
|
|
tag = await TagService(db).find_or_create("glasses", TagKind.general)
|
|
img = await _img(db, "b1" * 32, _emb(5)) # whole-image ⟂ head
|
|
await _head(db, tag.id, slot=0, suggest_threshold=0.7)
|
|
await db.commit()
|
|
# Whole-image alone: sigmoid(0)=0.5 < 0.7 → no suggestion.
|
|
assert not (await SuggestionService(db).for_image(img.id)).by_category.get("general")
|
|
|
|
# A concept crop aligned with the head, but stamped with a STALE model
|
|
# version → filtered out of the bag, so still nothing.
|
|
db.add(ImageRegion(
|
|
image_record_id=img.id, kind="concept",
|
|
rx=0.1, ry=0.1, rw=0.3, rh=0.3,
|
|
siglip_embedding=_emb(0), embedding_version="stale-embedder-v0",
|
|
))
|
|
await db.commit()
|
|
assert not (await SuggestionService(db).for_image(img.id)).by_category.get("general")
|
|
|
|
# A matching-version concept crop → max-over-bag lifts it over the cut.
|
|
db.add(ImageRegion(
|
|
image_record_id=img.id, kind="concept",
|
|
rx=0.4, ry=0.4, rw=0.3, rh=0.3,
|
|
siglip_embedding=_emb(0), embedding_version=await _embver(db),
|
|
))
|
|
await db.commit()
|
|
general = (await SuggestionService(db).for_image(img.id)).by_category["general"]
|
|
assert any(s.canonical_tag_id == tag.id and s.score > 0.7 for s in general)
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_rejected_tag_surfaced_flagged_then_reversible(db):
|
|
# A dismissed suggestion is NOT dropped: it stays flagged rejected so the
|
|
# rail can show it + offer one-click un-reject (operator-asked 2026-06-27).
|
|
tag = await TagService(db).find_or_create("goblin", TagKind.general)
|
|
img = await _img(db, "f" * 64, _emb(0))
|
|
await _head(db, tag.id, slot=0)
|
|
await db.commit()
|
|
await AllowlistService(db).dismiss(img.id, tag.id)
|
|
await db.commit()
|
|
|
|
sl = await SuggestionService(db).for_image(img.id)
|
|
s = next(x for x in sl.by_category["general"] if x.canonical_tag_id == tag.id)
|
|
assert s.rejected is True
|
|
|
|
await AllowlistService(db).undismiss(img.id, tag.id)
|
|
await db.commit()
|
|
sl2 = await SuggestionService(db).for_image(img.id)
|
|
s2 = next(x for x in sl2.by_category["general"] if x.canonical_tag_id == tag.id)
|
|
assert s2.rejected is False
|
|
|
|
|
|
async def _figure(db, image_id, slot):
|
|
v = [0.0] * 768
|
|
v[slot] = 1.0
|
|
db.add(ImageRegion(
|
|
image_record_id=image_id, kind="figure",
|
|
rx=0.0, ry=0.0, rw=1.0, rh=1.0,
|
|
ccip_embedding=v, embedding_version="ccip-test",
|
|
))
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_ccip_character_surfaces_in_rail(db):
|
|
# A character with a CCIP reference (a tagged figure) is suggested on a new
|
|
# image whose figure matches — overlaid into the rail alongside the heads.
|
|
raven = await TagService(db).find_or_create("Raven", TagKind.character)
|
|
ref = await _img(db, "0" * 64, None) # the operator's tagged example
|
|
await _figure(db, ref.id, slot=0)
|
|
await db.execute(image_tag.insert().values(
|
|
image_record_id=ref.id, tag_id=raven.id, source="manual",
|
|
))
|
|
query = await _img(db, "1" * 64, None) # untagged, matching figure
|
|
await _figure(db, query.id, slot=0)
|
|
await db.commit()
|
|
|
|
sl = await SuggestionService(db).for_image(query.id)
|
|
m = next(
|
|
c for c in sl.by_category.get("character", [])
|
|
if c.canonical_tag_id == raven.id
|
|
)
|
|
assert m.source == "ccip"
|