22c3b54746
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
78 lines
3.6 KiB
Python
78 lines
3.6 KiB
Python
"""MLSettings — single-row table holding ML pipeline tunables."""
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from datetime import datetime
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from sqlalchemy import CheckConstraint, DateTime, Float, Integer, String, func
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from sqlalchemy.orm import Mapped, mapped_column
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from .base import Base
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class MLSettings(Base):
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__tablename__ = "ml_settings"
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# Bare name — Base.metadata's naming convention prepends ck_<table>_,
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# producing the final ck_ml_settings_singleton (matches migration 0003).
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__table_args__ = (CheckConstraint("id = 1", name="singleton"),)
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id: Mapped[int] = mapped_column(Integer, primary_key=True)
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suggestion_threshold_character: Mapped[float] = mapped_column(
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Float, nullable=False, default=0.70
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)
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# Default raised 0.50 → 0.70 on 2026-06-02 — operator-flagged 0.50
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# surfaced too many low-confidence picks; 0.70 keeps the rail
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# signal-rich while still surfacing more than the original 0.95
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# which hid almost everything. Operator-tunable via Settings → ML.
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suggestion_threshold_general: Mapped[float] = mapped_column(
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Float, nullable=False, default=0.70
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)
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centroid_similarity_threshold: Mapped[float] = mapped_column(
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Float, nullable=False, default=0.55
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)
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# Ingest floor: tagger predictions below this confidence are not stored
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# (tagger.Tagger.infer). Default 0.70 — the suggestion path already
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# filters at 0.70 and the centroid/learned path covers low-confidence
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# preferred tags, so the sub-0.70 tail is redundant weight (it had
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# bloated image_record's TOAST to ~100 GB; plan-task #764). Operator-
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# tunable via Settings → ML; must stay ≤ the suggestion thresholds.
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tagger_store_floor: Mapped[float] = mapped_column(
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Float, nullable=False, default=0.70
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)
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min_reference_images: Mapped[int] = mapped_column(
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Integer, nullable=False, default=5
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)
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# Video tagging (#747). Sample one frame every N seconds (fixed CADENCE, not a
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# fixed count) so a tag's frame-presence reflects real screen time regardless
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# of video length; cap the total so a long video can't explode into hundreds
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# of inferences (the cadence stretches past the cap). A tag is kept only if it
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# appears in >= video_min_tag_frames sampled frames (≈ that many × interval
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# seconds on screen) — duration-independent noise rejection. Operator-tunable.
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video_frame_interval_seconds: Mapped[float] = mapped_column(
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Float, nullable=False, default=4.0
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)
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video_max_frames: Mapped[int] = mapped_column(
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Integer, nullable=False, default=64
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)
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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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embedder_model_version: Mapped[str] = mapped_column(
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String(128), nullable=False, default="siglip-so400m-patch14-384"
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)
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updated_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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