Files
FabledCurator/tests/test_ccip.py
T
bvandeusen d57ca847e7
CI / lint (push) Successful in 2s
CI / frontend-build (push) Successful in 17s
CI / backend-lint-and-test (push) Successful in 26s
CI / integration (push) Successful in 3m26s
feat(ccip): few-shot character matcher (#114 slice 5)
The server-side brain that turns stored CCIP vectors into character suggestions
— no GPU. character_references() gathers each character tag's prototype vectors
(figure/face-region CCIP embeddings on images carrying that tag); match_image()
cosine-matches an image's figure vectors against every character (multi-
prototype: best over a character's examples), surfacing those above a tunable
threshold as {tag_id, name, category:'character', score, source:'ccip'},
excluding already-applied characters. v1 = cosine on raw CCIP vectors; the exact
CCIP metric/threshold gets validated against the model in the hands-on eval.

Tests (synthetic vectors): same-character match across images, no-match for an
orthogonal figure, already-applied exclusion, no-figure-vectors empty.

NEXT: merge CCIP character suggestions into the rail; the agent container that
actually produces the vectors (hands-on, GPU — not CI-verifiable).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
Claude-Session: https://claude.ai/code/session_01Ttrj5P7upUTueSfoJcxEqa
2026-06-29 11:57:39 -04:00

89 lines
3.0 KiB
Python

"""CCIP few-shot character matcher (#114). numpy cosine on stored vectors — no
model needed, so it runs in CI with synthetic CCIP vectors."""
import pytest
from backend.app.models import ImageRecord, ImageRegion, TagKind
from backend.app.models.tag import image_tag
from backend.app.services.ml.ccip import match_image
from backend.app.services.tag_service import TagService
pytestmark = pytest.mark.integration
def _ccip(slot: int) -> list[float]:
v = [0.0] * 768
v[slot] = 1.0
return v
async def _img(db, sha) -> 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",
)
db.add(img)
await db.flush()
return img
async def _figure(db, image_id, ccip):
db.add(ImageRegion(
image_record_id=image_id, kind="figure",
rx=0.0, ry=0.0, rw=1.0, rh=1.0,
ccip_embedding=ccip, embedding_version="ccip-test",
))
async def _tag_image(db, image_id, tag_id):
await db.execute(image_tag.insert().values(
image_record_id=image_id, tag_id=tag_id, source="manual",
))
@pytest.mark.asyncio
async def test_matches_same_character_across_images(db):
raven = await TagService(db).find_or_create("Raven", TagKind.character)
ref = await _img(db, "a" * 64) # a tagged example = a prototype
await _figure(db, ref.id, _ccip(0))
await _tag_image(db, ref.id, raven.id)
query = await _img(db, "b" * 64) # untagged, near-identical figure
await _figure(db, query.id, _ccip(0))
await db.commit()
matches = await match_image(db, query.id)
m = next(x for x in matches if x["tag_id"] == raven.id)
assert m["source"] == "ccip" and m["category"] == "character"
assert m["score"] > 0.9
@pytest.mark.asyncio
async def test_no_match_for_different_character(db):
raven = await TagService(db).find_or_create("Raven", TagKind.character)
ref = await _img(db, "c" * 64)
await _figure(db, ref.id, _ccip(0))
await _tag_image(db, ref.id, raven.id)
query = await _img(db, "d" * 64)
await _figure(db, query.id, _ccip(5)) # orthogonal → not Raven
await db.commit()
assert await match_image(db, query.id) == []
@pytest.mark.asyncio
async def test_excludes_already_applied_character(db):
raven = await TagService(db).find_or_create("Raven", TagKind.character)
ref = await _img(db, "e" * 64)
await _figure(db, ref.id, _ccip(0))
await _tag_image(db, ref.id, raven.id)
query = await _img(db, "f" * 64)
await _figure(db, query.id, _ccip(0))
await _tag_image(db, query.id, raven.id) # already tagged → no re-suggest
await db.commit()
assert all(m["tag_id"] != raven.id for m in await match_image(db, query.id))
@pytest.mark.asyncio
async def test_no_figure_vectors_means_no_match(db):
query = await _img(db, "g" * 64)
await db.commit()
assert await match_image(db, query.id) == []