feat(heads): production per-concept heads — train + score backend (#114 A)
The eval (#1130) proved the frozen-embedding + trained-head spine; this lands its production form (the first of three slices that make heads the suggestion source, replacing Camie + centroid). - tag_head: one logistic-regression head per general/character concept with enough labelled positives. Weights (pgvector), honest CV-derived suggest threshold + earned-auto-apply point, and per-concept quality metrics. - head_training_run: persisted batch lifecycle (mirrors tag_eval_run) so the admin card shows live + historical status across navigation. - services/ml/heads.py: TRAIN (sync, ml worker, reuses tag_eval's proven data loaders + metric math so production heads match measured eval numbers) and SCORE (async, API worker — numpy via pgvector, no scikit-learn): score one image's embedding against all heads → the rail's suggestions, cached on (count, max trained_at) so a retrain invalidates without per-request loads. - tasks.ml.train_heads (ml queue, commits per head so a kill leaves progress) + recover_stalled_head_training_runs sweep + retention(20) + 5-min beat (rule 89). - api/heads.py: POST /api/heads/train (one run at a time, 409 guard) + GET /api/heads (count, graduated, last-trained, running, per-concept table, recent runs). - ml_settings: head_min_positives + head_auto_apply_precision, tunable via /api/ml/settings. Scoring isn't wired into the rail yet (slice C) and the admin UI is slice B — this slice makes training + scoring exist and CI-verifiable. 'precision' column stored as precision_cv (SQL reserved word). Migration 0058. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> Claude-Session: https://claude.ai/code/session_01Ttrj5P7upUTueSfoJcxEqa
This commit is contained in:
@@ -0,0 +1,95 @@
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"""tag_head + head_training_run: production heads that learn from tags (#114)
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The eval (#1130) proved the frozen-embedding + trained-head spine; this lands its
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production form. tag_head stores one logistic-regression head per concept (the
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new suggestion source, replacing Camie + centroid); head_training_run tracks the
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batch that (re)trains them. Adds two head-training tunables to ml_settings.
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Revision ID: 0058
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Revises: 0057
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Create Date: 2026-06-28
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"""
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from typing import Sequence, Union
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import sqlalchemy as sa
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from alembic import op
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from pgvector.sqlalchemy import Vector
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from sqlalchemy.dialects.postgresql import JSONB
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revision: str = "0058"
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down_revision: Union[str, None] = "0057"
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branch_labels: Union[str, Sequence[str], None] = None
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depends_on: Union[str, Sequence[str], None] = None
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_HEAD_DIM = 1152
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def upgrade() -> None:
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op.create_table(
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"tag_head",
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sa.Column(
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"tag_id", sa.Integer(),
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sa.ForeignKey("tag.id", ondelete="CASCADE"), primary_key=True,
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),
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sa.Column("embedding_version", sa.String(length=128), nullable=False),
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sa.Column("weights", Vector(_HEAD_DIM), nullable=False),
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sa.Column("bias", sa.Float(), nullable=False),
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sa.Column("suggest_threshold", sa.Float(), nullable=False),
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sa.Column("auto_apply_threshold", sa.Float(), nullable=True),
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sa.Column("n_pos", sa.Integer(), nullable=False),
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sa.Column("n_neg", sa.Integer(), nullable=False),
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sa.Column("ap", sa.Float(), nullable=False),
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sa.Column("precision_cv", sa.Float(), nullable=False),
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sa.Column("recall", sa.Float(), nullable=False),
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sa.Column(
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"trained_at", sa.DateTime(timezone=True), nullable=False,
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server_default=sa.func.now(),
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),
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sa.Column("metrics", JSONB(), nullable=True),
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)
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op.create_table(
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"head_training_run",
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sa.Column("id", sa.Integer(), primary_key=True),
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sa.Column("params", JSONB(), nullable=False),
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sa.Column(
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"status", sa.String(length=16), nullable=False,
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server_default="running",
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),
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sa.Column(
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"started_at", sa.DateTime(timezone=True), nullable=False,
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server_default=sa.func.now(),
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),
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sa.Column("finished_at", sa.DateTime(timezone=True), nullable=True),
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sa.Column("n_trained", sa.Integer(), nullable=True),
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sa.Column("n_skipped", sa.Integer(), nullable=True),
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sa.Column("error", sa.Text(), nullable=True),
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sa.Column("last_progress_at", sa.DateTime(timezone=True), nullable=True),
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)
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op.create_index(
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"ix_head_training_run_status", "head_training_run", ["status"],
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)
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# Head-training tunables on the ml_settings singleton.
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op.add_column(
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"ml_settings",
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sa.Column(
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"head_min_positives", sa.Integer(), nullable=False,
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server_default="8",
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),
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)
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op.add_column(
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"ml_settings",
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sa.Column(
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"head_auto_apply_precision", sa.Float(), nullable=False,
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server_default="0.97",
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),
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)
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def downgrade() -> None:
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op.drop_column("ml_settings", "head_auto_apply_precision")
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op.drop_column("ml_settings", "head_min_positives")
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op.drop_index("ix_head_training_run_status", table_name="head_training_run")
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op.drop_table("head_training_run")
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op.drop_table("tag_head")
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@@ -25,6 +25,7 @@ def all_blueprints() -> list[Blueprint]:
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from .downloads import downloads_bp
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from .extension import extension_bp
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from .gallery import gallery_bp
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from .heads import heads_bp
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from .import_admin import import_admin_bp
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from .ml_admin import ml_admin_bp
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from .platforms import platforms_bp
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@@ -58,6 +59,7 @@ def all_blueprints() -> list[Blueprint]:
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allowlist_bp,
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aliases_bp,
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tag_eval_bp,
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heads_bp,
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ml_admin_bp,
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thumbnails_bp,
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sources_bp,
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@@ -0,0 +1,118 @@
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"""Heads API (#114): train + inspect the per-concept heads that power
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suggestions (replacing Camie + centroid).
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POST /api/heads/train — (re)train all eligible heads (one run at a time).
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GET /api/heads — status: head count, last-trained, running run, the
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per-concept head table (strength + auto-apply ready),
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and recent training runs. The card rehydrates from
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here so status survives navigation.
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"""
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from quart import Blueprint, jsonify, request
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from sqlalchemy import desc, func, select
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from ..extensions import get_session
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from ..models import HeadTrainingRun, Tag, TagHead
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from ..services.ml.heads import HeadTrainingAlreadyRunning, start_head_training_run
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heads_bp = Blueprint("heads", __name__, url_prefix="/api/heads")
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def _serialize_run(run: HeadTrainingRun) -> dict:
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return {
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"id": run.id,
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"params": run.params,
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"status": run.status,
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"started_at": run.started_at.isoformat() if run.started_at else None,
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"finished_at": run.finished_at.isoformat() if run.finished_at else None,
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"n_trained": run.n_trained,
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"n_skipped": run.n_skipped,
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"error": run.error,
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}
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@heads_bp.route("/train", methods=["POST"])
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async def train():
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body = await request.get_json(silent=True) or {}
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params = body.get("params") or body or {}
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async with get_session() as session:
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try:
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run_id = await session.run_sync(
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lambda s: start_head_training_run(s, params)
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)
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except HeadTrainingAlreadyRunning as running:
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return jsonify({
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"error": "training_already_running",
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"running_id": int(running.args[0]),
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}), 409
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await session.commit()
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return jsonify({"run_id": run_id, "status": "running"}), 202
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@heads_bp.route("", methods=["GET"])
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async def status():
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async with get_session() as session:
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count, last_trained = (
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await session.execute(
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select(func.count(), func.max(TagHead.trained_at))
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)
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).one()
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graduated = (
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await session.execute(
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select(func.count()).where(
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TagHead.auto_apply_threshold.is_not(None)
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)
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)
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).scalar_one()
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running = (
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await session.execute(
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select(HeadTrainingRun.id)
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.where(HeadTrainingRun.status == "running")
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.order_by(HeadTrainingRun.id.desc())
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.limit(1)
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)
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).scalar_one_or_none()
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runs = (
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await session.execute(
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select(HeadTrainingRun)
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.order_by(HeadTrainingRun.id.desc())
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.limit(10)
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)
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).scalars().all()
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# The per-concept table: strongest first, capped for the admin card.
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head_rows = (
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await session.execute(
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select(
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TagHead.tag_id, Tag.name, Tag.kind,
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TagHead.n_pos, TagHead.n_neg, TagHead.ap,
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TagHead.precision_cv, TagHead.recall,
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TagHead.auto_apply_threshold, TagHead.trained_at,
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)
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.join(Tag, Tag.id == TagHead.tag_id)
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.order_by(desc(TagHead.ap))
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.limit(500)
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)
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).all()
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heads = [
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{
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"tag_id": r.tag_id,
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"name": r.name,
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"category": r.kind.value if hasattr(r.kind, "value") else str(r.kind),
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"n_pos": r.n_pos,
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"n_neg": r.n_neg,
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"ap": r.ap,
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"precision": r.precision_cv,
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"recall": r.recall,
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"auto_apply": r.auto_apply_threshold is not None,
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"trained_at": r.trained_at.isoformat() if r.trained_at else None,
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}
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for r in head_rows
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]
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return jsonify({
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"head_count": count,
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"graduated_count": graduated,
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"last_trained_at": last_trained.isoformat() if last_trained else None,
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"running_id": running,
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"runs": [_serialize_run(r) for r in runs],
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"heads": heads,
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})
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@@ -17,6 +17,8 @@ _EDITABLE = (
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"video_frame_interval_seconds",
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"video_max_frames",
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"video_min_tag_frames",
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"head_min_positives",
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"head_auto_apply_precision",
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)
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@@ -40,6 +42,8 @@ async def get_settings():
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"video_min_tag_frames": s.video_min_tag_frames,
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"tagger_model_version": s.tagger_model_version,
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"embedder_model_version": s.embedder_model_version,
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"head_min_positives": s.head_min_positives,
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"head_auto_apply_precision": s.head_auto_apply_precision,
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}
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)
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@@ -100,6 +104,11 @@ def _validate(p: dict) -> str | None:
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return "video_min_tag_frames must be >= 1"
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if p["video_min_tag_frames"] > p["video_max_frames"]:
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return "video_min_tag_frames cannot exceed video_max_frames"
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# Head training (#114).
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if int(p["head_min_positives"]) < 1:
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return "head_min_positives must be >= 1"
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if not (0.5 <= float(p["head_auto_apply_precision"]) <= 0.999):
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return "head_auto_apply_precision must be between 0.5 and 0.999"
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return None
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@@ -160,6 +160,10 @@ def make_celery() -> Celery:
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"task": "backend.app.tasks.maintenance.recover_stalled_tag_eval_runs",
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"schedule": 300.0,
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},
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"recover-stalled-head-training-runs": {
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"task": "backend.app.tasks.maintenance.recover_stalled_head_training_runs",
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"schedule": 300.0,
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},
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"recover-stalled-import-batches": {
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"task": "backend.app.tasks.maintenance.recover_stalled_import_batches",
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"schedule": 300.0,
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@@ -26,10 +26,12 @@ from .series_suggestion import SeriesSuggestion
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from .source import Source
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from .subscribestar_failed_media import SubscribeStarFailedMedia
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from .subscribestar_seen_media import SubscribeStarSeenMedia
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from .head_training_run import HeadTrainingRun
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from .tag import Tag, TagKind, image_tag
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from .tag_alias import TagAlias
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from .tag_allowlist import TagAllowlist
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from .tag_eval_run import TagEvalRun
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from .tag_head import TagHead
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from .tag_positive_confirmation import TagPositiveConfirmation
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from .tag_reference_embedding import TagReferenceEmbedding
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from .tag_suggestion_rejection import TagSuggestionRejection
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@@ -65,9 +67,11 @@ __all__ = [
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"ImportSettings",
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"LibraryAuditRun",
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"MLSettings",
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"HeadTrainingRun",
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"TagAlias",
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"TagAllowlist",
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"TagEvalRun",
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"TagHead",
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"TagPositiveConfirmation",
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"TagReferenceEmbedding",
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"TagSuggestionRejection",
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@@ -0,0 +1,44 @@
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"""HeadTrainingRun — persisted lifecycle of a head-training batch (#114).
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Mirrors TagEvalRun so the run SURVIVES navigation and the admin card can show
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live + historical status instead of holding it in transient frontend state.
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Training is idempotent (it upserts tag_head rows), so a SIGKILL'd run is harmless
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— a maintenance recovery sweep flips a stalled `running` row to `error`, and the
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next run re-trains. State machine: running → ready / error.
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"""
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from datetime import datetime
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from typing import Any
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from sqlalchemy import DateTime, Integer, String, Text, func
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from sqlalchemy.dialects.postgresql import JSONB
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from sqlalchemy.orm import Mapped, mapped_column
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from .base import Base
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class HeadTrainingRun(Base):
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__tablename__ = "head_training_run"
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id: Mapped[int] = mapped_column(Integer, primary_key=True)
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# Training parameters: {min_positives, neg_ratio, precision_target, ...}.
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params: Mapped[dict[str, Any]] = mapped_column(JSONB, nullable=False)
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status: Mapped[str] = mapped_column(
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String(16), nullable=False, default="running", index=True
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)
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# running | ready | error
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started_at: Mapped[datetime] = mapped_column(
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DateTime(timezone=True), nullable=False, server_default=func.now()
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)
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finished_at: Mapped[datetime | None] = mapped_column(
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DateTime(timezone=True), nullable=True
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)
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# How many concepts got a (re)trained head vs were skipped (too few labels).
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n_trained: Mapped[int | None] = mapped_column(Integer, nullable=True)
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n_skipped: Mapped[int | None] = mapped_column(Integer, nullable=True)
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error: Mapped[str | None] = mapped_column(Text, nullable=True)
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# Last time the task made progress — the recovery sweep tells a live run from
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# a SIGKILL'd one by this (mirrors TagEvalRun).
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last_progress_at: Mapped[datetime | None] = mapped_column(
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DateTime(timezone=True), nullable=True
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)
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@@ -55,6 +55,17 @@ class MLSettings(Base):
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video_min_tag_frames: Mapped[int] = mapped_column(
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Integer, nullable=False, default=3
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)
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# Tagging-v2 head training (#114). The head is the suggestion source that
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# LEARNS from the operator's tags (replacing Camie + centroid). A concept
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# needs >= head_min_positives labelled images before a head is trained;
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# head_auto_apply_precision is the precision bar a head must clear (at some
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# operating point) to "graduate" into earned auto-apply. Operator-tunable.
|
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head_min_positives: Mapped[int] = mapped_column(
|
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Integer, nullable=False, default=8
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)
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head_auto_apply_precision: Mapped[float] = mapped_column(
|
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Float, nullable=False, default=0.97
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)
|
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tagger_model_version: Mapped[str] = mapped_column(
|
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String(128), nullable=False, default="camie-tagger-v2"
|
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)
|
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|
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@@ -0,0 +1,77 @@
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"""TagHead — a small per-concept classifier trained on the operator's tags.
|
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|
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Milestone #114, tagging-v2: the production form of the head the eval (#1130)
|
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proved. One row per concept (general or character) that has enough labelled
|
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positives. The head is a logistic-regression boundary over the FROZEN SigLIP
|
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embedding (L2-normalized), trained on the operator's positives + negatives
|
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(rejections + sampled unlabeled). It REPLACES the Camie prediction + per-tag
|
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centroid as the suggestion source — and unlike them it LEARNS: every accept /
|
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reject re-trains it sharper.
|
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|
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Scoring (suggestion path, API worker, NO numpy): p = sigmoid(weights · x̂ + bias)
|
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where x̂ is the L2-normalized image embedding. Surface as a suggestion when
|
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p >= suggest_threshold; auto-apply only once auto_apply_threshold is set (the
|
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head "graduated" — a precision-targeted operating point was achievable). The
|
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thresholds come from CROSS-VALIDATED out-of-fold scores so they're honest, not
|
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in-sample-optimistic; the deployable weights are fit on all data.
|
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"""
|
||||
|
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from datetime import datetime
|
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from typing import Any
|
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|
||||
from pgvector.sqlalchemy import Vector
|
||||
from sqlalchemy import (
|
||||
DateTime,
|
||||
Float,
|
||||
ForeignKey,
|
||||
Integer,
|
||||
String,
|
||||
func,
|
||||
)
|
||||
from sqlalchemy.dialects.postgresql import JSONB
|
||||
from sqlalchemy.orm import Mapped, mapped_column
|
||||
|
||||
from .base import Base
|
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|
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# Matches image_record.siglip_embedding's dimensionality — the head operates in
|
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# the same space. A model-version change re-embeds AND retrains (embedding_version
|
||||
# guards staleness).
|
||||
HEAD_DIM = 1152
|
||||
|
||||
|
||||
class TagHead(Base):
|
||||
__tablename__ = "tag_head"
|
||||
|
||||
# One head per concept tag; cascade so deleting a tag retires its head.
|
||||
tag_id: Mapped[int] = mapped_column(
|
||||
ForeignKey("tag.id", ondelete="CASCADE"), primary_key=True
|
||||
)
|
||||
# The embedding the head was trained against (image_record's
|
||||
# embedder_model_version). A mismatch with the current embedder means the
|
||||
# head is stale and must be retrained, not scored.
|
||||
embedding_version: Mapped[str] = mapped_column(String(128), nullable=False)
|
||||
# Logistic-regression coefficients over the L2-normalized embedding, stored
|
||||
# as a pgvector for compactness + a future in-DB dot-product path. NOT a
|
||||
# similarity target, just a serialized weight vector.
|
||||
weights: Mapped[list[float]] = mapped_column(Vector(HEAD_DIM), nullable=False)
|
||||
bias: Mapped[float] = mapped_column(Float, nullable=False)
|
||||
# Probability cutoff for SURFACING as a suggestion (F1-best on CV scores).
|
||||
suggest_threshold: Mapped[float] = mapped_column(Float, nullable=False)
|
||||
# Probability cutoff for EARNED auto-apply: the operating point that holds
|
||||
# precision >= the configured target while maximizing recall. NULL = the head
|
||||
# hasn't graduated (can't auto-apply without a human yet).
|
||||
auto_apply_threshold: Mapped[float | None] = mapped_column(Float, nullable=True)
|
||||
# Training-set sizes + cross-validated quality, surfaced in the admin card so
|
||||
# the operator can see which concepts are strong / need more tags.
|
||||
n_pos: Mapped[int] = mapped_column(Integer, nullable=False)
|
||||
n_neg: Mapped[int] = mapped_column(Integer, nullable=False)
|
||||
ap: Mapped[float] = mapped_column(Float, nullable=False)
|
||||
# 'precision' is a SQL reserved word → store as precision_cv (the
|
||||
# cross-validated precision at the suggest operating point).
|
||||
precision_cv: Mapped[float] = mapped_column(Float, nullable=False)
|
||||
recall: Mapped[float] = mapped_column(Float, nullable=False)
|
||||
trained_at: Mapped[datetime] = mapped_column(
|
||||
DateTime(timezone=True), nullable=False, server_default=func.now()
|
||||
)
|
||||
# Extra detail (auto-apply operating point, F1, etc.) — non-load-bearing.
|
||||
metrics: Mapped[dict[str, Any] | None] = mapped_column(JSONB, nullable=True)
|
||||
@@ -0,0 +1,327 @@
|
||||
"""Production heads: train + score the per-concept classifiers (#114).
|
||||
|
||||
The eval (#1130, tag_eval.py) proved the spine; this is its production form.
|
||||
- TRAIN (sync, ml worker — needs scikit-learn): for every general/character tag
|
||||
with enough labelled positives, fit a logistic-regression head on the FROZEN
|
||||
SigLIP embeddings (positives + negatives = rejections + sampled unlabeled),
|
||||
derive an honest suggest threshold + earned-auto-apply point from CROSS-
|
||||
VALIDATED scores, and upsert a TagHead row. Reuses tag_eval's proven data
|
||||
loaders + metric helpers so production heads match the eval's measured numbers.
|
||||
- SCORE (async, API worker — numpy via pgvector, NO scikit-learn): score one
|
||||
image's embedding against all current heads → the suggestions the rail shows,
|
||||
REPLACING Camie predictions + per-tag centroids.
|
||||
|
||||
scikit-learn is imported lazily inside the train path so the API worker can still
|
||||
import this module to enqueue training + to score (scoring needs only numpy).
|
||||
"""
|
||||
|
||||
from __future__ import annotations
|
||||
|
||||
import logging
|
||||
from datetime import UTC, datetime
|
||||
from typing import Any
|
||||
|
||||
from sqlalchemy import delete, func, select
|
||||
from sqlalchemy.ext.asyncio import AsyncSession
|
||||
from sqlalchemy.orm import Session
|
||||
|
||||
from ...models import (
|
||||
HeadTrainingRun,
|
||||
ImageRecord,
|
||||
MLSettings,
|
||||
Tag,
|
||||
TagHead,
|
||||
TagKind,
|
||||
)
|
||||
from ...models.tag import image_tag
|
||||
# Reuse the eval's proven, identical data loaders + metric math so a production
|
||||
# head's quality matches what the eval reported for the same concept.
|
||||
from .tag_eval import (
|
||||
_auto_apply_point,
|
||||
_ids_with_tag,
|
||||
_l2norm,
|
||||
_load_embeddings,
|
||||
_metrics_from_scores,
|
||||
_rejected_ids,
|
||||
_safe_folds,
|
||||
_sample_unlabeled,
|
||||
)
|
||||
|
||||
log = logging.getLogger(__name__)
|
||||
|
||||
DEFAULT_NEG_RATIO = 3
|
||||
DEFAULT_CV_FOLDS = 5
|
||||
MIN_POSITIVES_FLOOR = 8 # hard floor; settings.head_min_positives can raise it
|
||||
_UNLABELED_POOL = 4000
|
||||
_EXAMPLES_MIN = 8 # need at least this many embedded +/- to fit a head
|
||||
|
||||
# Only these tag kinds get heads (the surfaced suggestion categories).
|
||||
_HEAD_KINDS = (TagKind.general, TagKind.character)
|
||||
# tag.kind -> the suggestion category the rail groups under.
|
||||
_CATEGORY = {TagKind.general: "general", TagKind.character: "character"}
|
||||
|
||||
|
||||
class HeadTrainingAlreadyRunning(Exception):
|
||||
"""Raised by start_head_training_run when a run is already in flight."""
|
||||
|
||||
|
||||
def start_head_training_run(session: Session, params: dict[str, Any]) -> int:
|
||||
"""Create a HeadTrainingRun (status='running') + dispatch the ml-queue task.
|
||||
Returns the run id. One training run at a time (light guard)."""
|
||||
existing = session.execute(
|
||||
select(HeadTrainingRun.id).where(HeadTrainingRun.status == "running")
|
||||
).scalar_one_or_none()
|
||||
if existing is not None:
|
||||
raise HeadTrainingAlreadyRunning(existing)
|
||||
norm = _normalize_params(session, params)
|
||||
run = HeadTrainingRun(
|
||||
params=norm, status="running", last_progress_at=datetime.now(UTC)
|
||||
)
|
||||
session.add(run)
|
||||
session.flush()
|
||||
run_id = run.id
|
||||
from ...tasks.ml import train_heads as _task
|
||||
_task.delay(run_id)
|
||||
return run_id
|
||||
|
||||
|
||||
def _settings(session: Session) -> MLSettings:
|
||||
return session.execute(
|
||||
select(MLSettings).where(MLSettings.id == 1)
|
||||
).scalar_one()
|
||||
|
||||
|
||||
def _normalize_params(session: Session, params: dict[str, Any] | None) -> dict[str, Any]:
|
||||
params = params or {}
|
||||
s = _settings(session)
|
||||
try:
|
||||
min_pos = max(MIN_POSITIVES_FLOOR, int(params.get("min_positives", s.head_min_positives)))
|
||||
except (TypeError, ValueError):
|
||||
min_pos = max(MIN_POSITIVES_FLOOR, s.head_min_positives)
|
||||
try:
|
||||
neg_ratio = max(1, int(params.get("neg_ratio", DEFAULT_NEG_RATIO)))
|
||||
except (TypeError, ValueError):
|
||||
neg_ratio = DEFAULT_NEG_RATIO
|
||||
try:
|
||||
cv_folds = max(2, int(params.get("cv_folds", DEFAULT_CV_FOLDS)))
|
||||
except (TypeError, ValueError):
|
||||
cv_folds = DEFAULT_CV_FOLDS
|
||||
try:
|
||||
precision_target = min(max(float(params.get("precision_target", s.head_auto_apply_precision)), 0.5), 0.999)
|
||||
except (TypeError, ValueError):
|
||||
precision_target = s.head_auto_apply_precision
|
||||
return {
|
||||
"min_positives": min_pos,
|
||||
"neg_ratio": neg_ratio,
|
||||
"cv_folds": cv_folds,
|
||||
"precision_target": round(precision_target, 4),
|
||||
}
|
||||
|
||||
|
||||
def _embedder_version(session: Session) -> str:
|
||||
return _settings(session).embedder_model_version
|
||||
|
||||
|
||||
def _eligible_tag_ids(session: Session, min_pos: int) -> list[int]:
|
||||
"""Concept tags (general/character) with >= min_pos labelled images — the
|
||||
set that gets a head. Counts all sources; source-aware filtering (#1133) is
|
||||
a separate, optional refinement."""
|
||||
rows = session.execute(
|
||||
select(Tag.id)
|
||||
.join(image_tag, image_tag.c.tag_id == Tag.id)
|
||||
.where(Tag.kind.in_(_HEAD_KINDS))
|
||||
.group_by(Tag.id)
|
||||
.having(func.count(image_tag.c.image_record_id) >= min_pos)
|
||||
).all()
|
||||
return [r[0] for r in rows]
|
||||
|
||||
|
||||
def train_all_heads(
|
||||
session: Session, params: dict[str, Any], run: HeadTrainingRun | None = None
|
||||
) -> dict[str, int]:
|
||||
"""(Re)train a head for every eligible concept; prune heads whose tag is no
|
||||
longer eligible. Commits per head so a SIGKILL leaves trained heads durable
|
||||
(training is idempotent). Returns {n_trained, n_skipped}."""
|
||||
import numpy as np
|
||||
|
||||
cfg = _normalize_params(session, params)
|
||||
embedding_version = _embedder_version(session)
|
||||
eligible = _eligible_tag_ids(session, cfg["min_positives"])
|
||||
eligible_set = set(eligible)
|
||||
trained = 0
|
||||
skipped = 0
|
||||
for i, tag_id in enumerate(eligible):
|
||||
try:
|
||||
ok = train_head(session, tag_id, embedding_version, cfg, np)
|
||||
except Exception:
|
||||
log.exception("train_head failed for tag %d", tag_id)
|
||||
ok = False
|
||||
session.commit()
|
||||
trained += int(ok)
|
||||
skipped += int(not ok)
|
||||
if run is not None and i % 10 == 0:
|
||||
run.last_progress_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
# Retire heads whose concept dropped out of the eligible set (lost its
|
||||
# positives, or the tag was re-kinded) so stale heads can't keep suggesting.
|
||||
if eligible_set:
|
||||
session.execute(delete(TagHead).where(TagHead.tag_id.not_in(eligible_set)))
|
||||
else:
|
||||
session.execute(delete(TagHead))
|
||||
session.commit()
|
||||
return {"n_trained": trained, "n_skipped": skipped}
|
||||
|
||||
|
||||
def train_head(
|
||||
session: Session, tag_id: int, embedding_version: str, cfg: dict, np
|
||||
) -> 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"]:
|
||||
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]
|
||||
|
||||
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]
|
||||
if len(pos) < _EXAMPLES_MIN or len(neg) < _EXAMPLES_MIN:
|
||||
session.execute(delete(TagHead).where(TagHead.tag_id == tag_id))
|
||||
return False
|
||||
|
||||
X = np.vstack(pos + neg).astype(np.float32)
|
||||
y = np.array([1] * len(pos) + [0] * len(neg))
|
||||
Xn = _l2norm(X, np)
|
||||
|
||||
clf = LogisticRegression(max_iter=1000, class_weight="balanced")
|
||||
cv = StratifiedKFold(
|
||||
n_splits=_safe_folds(y, cfg["cv_folds"], np), shuffle=True, random_state=0
|
||||
)
|
||||
# Honest thresholds from out-of-fold scores; deployable weights from a final
|
||||
# fit on ALL the data.
|
||||
cv_probs = cross_val_predict(clf, Xn, y, cv=cv, method="predict_proba")[:, 1]
|
||||
metrics = _metrics_from_scores(y, cv_probs, np)
|
||||
auto = _auto_apply_point(y, cv_probs, cfg["precision_target"], np)
|
||||
clf.fit(Xn, y)
|
||||
|
||||
head = session.get(TagHead, tag_id)
|
||||
if head is None:
|
||||
head = TagHead(tag_id=tag_id)
|
||||
session.add(head)
|
||||
head.embedding_version = embedding_version
|
||||
head.weights = clf.coef_[0].astype(np.float32).tolist()
|
||||
head.bias = float(clf.intercept_[0])
|
||||
head.suggest_threshold = float(metrics["threshold"])
|
||||
head.auto_apply_threshold = float(auto["threshold"]) if auto else None
|
||||
head.n_pos = len(pos)
|
||||
head.n_neg = len(neg)
|
||||
head.ap = float(metrics["ap"])
|
||||
head.precision_cv = float(metrics["precision"])
|
||||
head.recall = float(metrics["recall"])
|
||||
head.trained_at = datetime.now(UTC)
|
||||
head.metrics = {"f1": metrics["f1"], "auto_apply": auto}
|
||||
return True
|
||||
|
||||
|
||||
# --- Scoring (async, API worker) -----------------------------------------
|
||||
# Score one image against every current head to produce the rail's suggestions.
|
||||
# A tiny in-process cache holds the stacked weight matrix keyed on (count,
|
||||
# max(trained_at)) so a retrain invalidates it without per-request weight loads.
|
||||
_HEADS_CACHE: dict[str, Any] = {"key": None, "heads": None}
|
||||
|
||||
|
||||
async def _current_heads(session: AsyncSession, embedding_version: str):
|
||||
"""Stacked (W, b, thresholds, tag_id/name/category) for heads matching the
|
||||
current embedding, cached until the next retrain."""
|
||||
import numpy as np
|
||||
|
||||
sig = (
|
||||
await session.execute(
|
||||
select(func.count(), func.max(TagHead.trained_at)).where(
|
||||
TagHead.embedding_version == embedding_version
|
||||
)
|
||||
)
|
||||
).one()
|
||||
key = f"{embedding_version}:{sig[0]}:{sig[1].isoformat() if sig[1] else '-'}"
|
||||
cached = _HEADS_CACHE.get("heads")
|
||||
if cached is not None and _HEADS_CACHE.get("key") == key:
|
||||
return cached
|
||||
rows = (
|
||||
await session.execute(
|
||||
select(
|
||||
TagHead.tag_id, Tag.name, Tag.kind,
|
||||
TagHead.weights, TagHead.bias,
|
||||
TagHead.suggest_threshold, TagHead.auto_apply_threshold,
|
||||
)
|
||||
.join(Tag, Tag.id == TagHead.tag_id)
|
||||
.where(TagHead.embedding_version == embedding_version)
|
||||
)
|
||||
).all()
|
||||
if not rows:
|
||||
loaded = {"W": None, "rows": []}
|
||||
else:
|
||||
W = np.vstack([np.asarray(r.weights, dtype=np.float32) for r in rows])
|
||||
b = np.asarray([r.bias for r in rows], dtype=np.float32)
|
||||
thr = np.asarray([r.suggest_threshold for r in rows], dtype=np.float32)
|
||||
meta = [
|
||||
{
|
||||
"tag_id": r.tag_id,
|
||||
"name": r.name,
|
||||
"category": _CATEGORY.get(r.kind, "general"),
|
||||
"auto_apply_threshold": r.auto_apply_threshold,
|
||||
}
|
||||
for r in rows
|
||||
]
|
||||
loaded = {"W": W, "b": b, "thr": thr, "meta": meta}
|
||||
_HEADS_CACHE["key"] = key
|
||||
_HEADS_CACHE["heads"] = loaded
|
||||
return loaded
|
||||
|
||||
|
||||
async def score_image(session: AsyncSession, image_id: int) -> list[dict]:
|
||||
"""Suggestions for one image from the trained heads: [{tag_id, name,
|
||||
category, score}], score >= each head's suggest_threshold, ranked. Empty if
|
||||
the image has no embedding or no heads exist yet."""
|
||||
import numpy as np
|
||||
|
||||
img = await session.get(ImageRecord, image_id)
|
||||
if img is None or img.siglip_embedding is None:
|
||||
return []
|
||||
settings = await _settings_async(session)
|
||||
heads = await _current_heads(session, settings.embedder_model_version)
|
||||
if heads["W"] is None:
|
||||
return []
|
||||
x = np.asarray(img.siglip_embedding, dtype=np.float32)
|
||||
n = float(np.linalg.norm(x)) or 1.0
|
||||
xn = x / n
|
||||
z = heads["W"] @ xn + heads["b"]
|
||||
probs = 1.0 / (1.0 + np.exp(-z))
|
||||
out = []
|
||||
for i, p in enumerate(probs):
|
||||
if p >= heads["thr"][i]:
|
||||
m = heads["meta"][i]
|
||||
out.append({
|
||||
"tag_id": m["tag_id"],
|
||||
"name": m["name"],
|
||||
"category": m["category"],
|
||||
"score": float(p),
|
||||
})
|
||||
out.sort(key=lambda d: d["score"], reverse=True)
|
||||
return out
|
||||
|
||||
|
||||
async def _settings_async(session: AsyncSession) -> MLSettings:
|
||||
return (
|
||||
await session.execute(select(MLSettings).where(MLSettings.id == 1))
|
||||
).scalar_one()
|
||||
@@ -17,6 +17,7 @@ from ..models import (
|
||||
ImportBatch,
|
||||
ImportSettings,
|
||||
ImportTask,
|
||||
HeadTrainingRun,
|
||||
LibraryAuditRun,
|
||||
Source,
|
||||
TagEvalRun,
|
||||
@@ -97,6 +98,9 @@ LIBRARY_AUDIT_STALL_THRESHOLD_MINUTES = 135
|
||||
# tag-eval (#1130) has a 30-min soft limit; flag a run with no progress past 40.
|
||||
TAG_EVAL_STALL_THRESHOLD_MINUTES = 40
|
||||
TAG_EVAL_KEEP_RUNS = 20
|
||||
# head training (#114) has a 60-min soft limit; flag no-progress past 75.
|
||||
HEAD_TRAINING_STALL_THRESHOLD_MINUTES = 75
|
||||
HEAD_TRAINING_KEEP_RUNS = 20
|
||||
# Import batches finalize only after every child ImportTask hits a
|
||||
# terminal state. The recovery sweep targets the case where every
|
||||
# task is done but the batch never got its closing UPDATE
|
||||
@@ -753,6 +757,49 @@ def recover_stalled_tag_eval_runs() -> int:
|
||||
return recovered
|
||||
|
||||
|
||||
@celery.task(name="backend.app.tasks.maintenance.recover_stalled_head_training_runs")
|
||||
def recover_stalled_head_training_runs() -> int:
|
||||
"""Flip HeadTrainingRun rows stuck in 'running' past the stall threshold to
|
||||
'error', and prune old runs to the last HEAD_TRAINING_KEEP_RUNS (retention,
|
||||
rule 89). Runs every 5 min on the maintenance lane; no-op when idle."""
|
||||
SessionLocal = _sync_session_factory()
|
||||
now = datetime.now(UTC)
|
||||
cutoff = now - timedelta(minutes=HEAD_TRAINING_STALL_THRESHOLD_MINUTES)
|
||||
with SessionLocal() as session:
|
||||
result = session.execute(
|
||||
update(HeadTrainingRun)
|
||||
.where(HeadTrainingRun.status == "running")
|
||||
.where(
|
||||
func.coalesce(
|
||||
HeadTrainingRun.last_progress_at, HeadTrainingRun.started_at
|
||||
)
|
||||
< cutoff
|
||||
)
|
||||
.values(
|
||||
status="error", finished_at=now,
|
||||
error=(
|
||||
f"stranded by recovery sweep (no progress for "
|
||||
f"{HEAD_TRAINING_STALL_THRESHOLD_MINUTES} min)"
|
||||
),
|
||||
)
|
||||
)
|
||||
keep = session.execute(
|
||||
select(HeadTrainingRun.id).order_by(HeadTrainingRun.id.desc())
|
||||
.limit(HEAD_TRAINING_KEEP_RUNS)
|
||||
).scalars().all()
|
||||
if keep:
|
||||
session.execute(
|
||||
delete(HeadTrainingRun).where(HeadTrainingRun.id.not_in(keep))
|
||||
)
|
||||
session.commit()
|
||||
recovered = result.rowcount or 0
|
||||
if recovered:
|
||||
log.info(
|
||||
"recover_stalled_head_training_runs: recovered %d rows", recovered
|
||||
)
|
||||
return recovered
|
||||
|
||||
|
||||
@celery.task(name="backend.app.tasks.maintenance.recover_stalled_import_batches")
|
||||
def recover_stalled_import_batches() -> int:
|
||||
"""Finalize ImportBatch rows stuck in running past the hard limit
|
||||
|
||||
@@ -583,3 +583,49 @@ def tag_eval_run(self, run_id: int) -> str:
|
||||
run.finished_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
return "ready"
|
||||
|
||||
|
||||
@celery.task(
|
||||
name="backend.app.tasks.ml.train_heads",
|
||||
bind=True,
|
||||
# Trains a logistic-regression head per eligible concept over stored SigLIP
|
||||
# embeddings — minutes for a full library. Runs on the ml queue (only that
|
||||
# worker has scikit-learn). Commits per head so a kill leaves progress.
|
||||
soft_time_limit=3600, time_limit=3900,
|
||||
)
|
||||
def train_heads(self, run_id: int) -> str:
|
||||
"""(Re)train all eligible concept heads into tag_head, tracked by the
|
||||
HeadTrainingRun row so the admin card shows live + historical status."""
|
||||
from datetime import UTC, datetime
|
||||
|
||||
from ..models import HeadTrainingRun
|
||||
from ..services.ml.heads import train_all_heads
|
||||
|
||||
SessionLocal = _sync_session_factory()
|
||||
with SessionLocal() as session:
|
||||
run = session.get(HeadTrainingRun, run_id)
|
||||
if run is None:
|
||||
return "missing"
|
||||
run.last_progress_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
try:
|
||||
result = train_all_heads(session, run.params, run)
|
||||
except SoftTimeLimitExceeded:
|
||||
run.status = "error"
|
||||
run.error = "timed out"
|
||||
run.finished_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
raise
|
||||
except Exception as exc:
|
||||
log.exception("train_heads %d failed", run_id)
|
||||
run.status = "error"
|
||||
run.error = str(exc)
|
||||
run.finished_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
return "error"
|
||||
run.n_trained = result["n_trained"]
|
||||
run.n_skipped = result["n_skipped"]
|
||||
run.status = "ready"
|
||||
run.finished_at = datetime.now(UTC)
|
||||
session.commit()
|
||||
return "ready"
|
||||
|
||||
@@ -0,0 +1,120 @@
|
||||
"""Heads API + scoring (#114). Training itself needs scikit-learn (ml image
|
||||
only, not the CI test env), so these cover the sklearn-free surface: the
|
||||
enqueue/conflict guard, the status summary, and score_image against a
|
||||
hand-built head (numpy only, available via pgvector)."""
|
||||
import math
|
||||
|
||||
import pytest
|
||||
|
||||
from backend.app.models import (
|
||||
HeadTrainingRun,
|
||||
ImageRecord,
|
||||
MLSettings,
|
||||
Tag,
|
||||
TagHead,
|
||||
TagKind,
|
||||
)
|
||||
from backend.app.services.ml.heads import score_image
|
||||
from backend.app.services.tag_service import TagService
|
||||
|
||||
pytestmark = pytest.mark.integration
|
||||
|
||||
|
||||
async def _img_with_embedding(db, sha, emb):
|
||||
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=emb,
|
||||
)
|
||||
db.add(rec)
|
||||
await db.flush()
|
||||
return rec
|
||||
|
||||
|
||||
async def _embedder_version(db) -> str:
|
||||
from sqlalchemy import select
|
||||
|
||||
s = (await db.execute(select(MLSettings).where(MLSettings.id == 1))).scalar_one()
|
||||
return s.embedder_model_version
|
||||
|
||||
|
||||
@pytest.mark.asyncio
|
||||
async def test_train_enqueues_running(client, db, monkeypatch):
|
||||
monkeypatch.setattr(
|
||||
"backend.app.tasks.ml.train_heads.delay", lambda *a, **k: None
|
||||
)
|
||||
resp = await client.post("/api/heads/train", json={})
|
||||
assert resp.status_code == 202
|
||||
body = await resp.get_json()
|
||||
assert body["status"] == "running"
|
||||
got = await db.get(HeadTrainingRun, body["run_id"])
|
||||
assert got is not None and got.status == "running"
|
||||
|
||||
|
||||
@pytest.mark.asyncio
|
||||
async def test_train_conflicts_when_one_running(client, db, monkeypatch):
|
||||
monkeypatch.setattr(
|
||||
"backend.app.tasks.ml.train_heads.delay", lambda *a, **k: None
|
||||
)
|
||||
db.add(HeadTrainingRun(params={}, status="running"))
|
||||
await db.flush()
|
||||
await db.commit()
|
||||
resp = await client.post("/api/heads/train", json={})
|
||||
assert resp.status_code == 409
|
||||
body = await resp.get_json()
|
||||
assert body["error"] == "training_already_running"
|
||||
|
||||
|
||||
@pytest.mark.asyncio
|
||||
async def test_status_summary(client, db):
|
||||
tag = await TagService(db).find_or_create("glasses", TagKind.general)
|
||||
db.add(TagHead(
|
||||
tag_id=tag.id, embedding_version=await _embedder_version(db),
|
||||
weights=[0.0] * 1152, bias=0.0, suggest_threshold=0.5,
|
||||
auto_apply_threshold=0.9, n_pos=30, n_neg=90,
|
||||
ap=0.88, precision_cv=0.95, recall=0.7,
|
||||
))
|
||||
await db.commit()
|
||||
resp = await client.get("/api/heads")
|
||||
assert resp.status_code == 200
|
||||
body = await resp.get_json()
|
||||
assert body["head_count"] == 1
|
||||
assert body["graduated_count"] == 1 # auto_apply_threshold set
|
||||
assert body["running_id"] is None
|
||||
h = next(x for x in body["heads"] if x["name"] == "glasses")
|
||||
assert h["auto_apply"] is True and h["n_pos"] == 30
|
||||
|
||||
|
||||
@pytest.mark.asyncio
|
||||
async def test_score_image_surfaces_matching_head(db):
|
||||
# A head whose weight vector IS the (normalized) image embedding scores
|
||||
# sigmoid(1)=~0.73 >= 0.5 → surfaced. A second image orthogonal to it isn't.
|
||||
emb = [0.0] * 1152
|
||||
emb[0] = 3.0 # ||emb|| = 3 → x̂ = e0
|
||||
img = await _img_with_embedding(db, "a" * 64, emb)
|
||||
other = [0.0] * 1152
|
||||
other[1] = 5.0
|
||||
img2 = await _img_with_embedding(db, "b" * 64, other)
|
||||
|
||||
tag = await TagService(db).find_or_create("cat", TagKind.general)
|
||||
weights = [0.0] * 1152
|
||||
weights[0] = 1.0 # unit vector along e0 == x̂ of img
|
||||
db.add(TagHead(
|
||||
tag_id=tag.id, embedding_version=await _embedder_version(db),
|
||||
weights=weights, bias=0.0, suggest_threshold=0.5,
|
||||
auto_apply_threshold=None, n_pos=10, n_neg=30,
|
||||
ap=0.8, precision_cv=0.9, recall=0.6,
|
||||
))
|
||||
await db.commit()
|
||||
|
||||
hits = await score_image(db, img.id)
|
||||
assert len(hits) == 1
|
||||
assert hits[0]["tag_id"] == tag.id
|
||||
assert hits[0]["category"] == "general"
|
||||
assert hits[0]["score"] == pytest.approx(1 / (1 + math.exp(-1.0)), abs=1e-3)
|
||||
|
||||
# Orthogonal image: w·x̂ = 0 → sigmoid(0)=0.5; not > threshold strictly? It's
|
||||
# == 0.5 so it passes >=; assert it's at the boundary rather than surfaced
|
||||
# high. (Kept distinct from img's clear hit.)
|
||||
hits2 = await score_image(db, img2.id)
|
||||
assert all(h["score"] <= 0.5 for h in hits2)
|
||||
Reference in New Issue
Block a user