revert(ml): keep head auto-apply precision at 0.97 (operator: general tuning was fine)
Milestone 139 raised head_auto_apply_precision 0.97→0.98; operator confirmed the general-tag confidence was already well tuned, so revert that. The support floor (min_positives 30→50) and CCIP match confidence (0.92→0.95) stay. Migration 0081 (not yet deployed) edited to drop the precision bump. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> Claude-Session: https://claude.ai/code/session_01CDgx8bQS5YrGRK76v8HUnM
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@@ -1,10 +1,11 @@
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"""stricter auto-apply defaults (milestone 139) — cut graduate/auto-apply misfires
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"""stricter auto-apply defaults (milestone 139) — cut auto-apply misfires
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head_auto_apply_precision 0.97→0.98, head_auto_apply_min_positives 30→50,
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ccip_auto_apply_threshold 0.92→0.95 (operator-asked 2026-07-06). The model
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defaults change for fresh installs; here we bump the existing singleton row IFF
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it is still at the previous default, so a deliberate operator change is NOT
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clobbered.
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head_auto_apply_min_positives 30→50 and ccip_auto_apply_threshold 0.92→0.95
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(operator-asked 2026-07-06). The head graduation precision bar stays 0.97 — the
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operator confirmed the general-tag confidence was already well tuned; only the
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support floor + the CCIP match confidence are raised. The model defaults change
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for fresh installs; here we bump the existing singleton row IFF it is still at
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the previous default, so a deliberate operator change is NOT clobbered.
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Revision ID: 0081
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Revises: 0080
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@@ -21,10 +22,6 @@ depends_on: Union[str, Sequence[str], None] = None
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def upgrade() -> None:
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op.execute(
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"UPDATE ml_settings SET head_auto_apply_precision = 0.98 "
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"WHERE head_auto_apply_precision = 0.97"
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)
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op.execute(
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"UPDATE ml_settings SET head_auto_apply_min_positives = 50 "
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"WHERE head_auto_apply_min_positives = 30"
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@@ -36,10 +33,6 @@ def upgrade() -> None:
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def downgrade() -> None:
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op.execute(
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"UPDATE ml_settings SET head_auto_apply_precision = 0.97 "
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"WHERE head_auto_apply_precision = 0.98"
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)
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op.execute(
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"UPDATE ml_settings SET head_auto_apply_min_positives = 30 "
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"WHERE head_auto_apply_min_positives = 50"
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@@ -51,10 +51,7 @@ class MLSettings(Base):
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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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# Stricter graduation bar (was 0.97) to cut auto-apply misfires
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# (operator-asked 2026-07-06): a higher precision target → fewer heads
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# graduate and those that do get a higher per-head auto_apply_threshold.
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Float, nullable=False, default=0.98
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Float, nullable=False, default=0.97
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)
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# Earned auto-apply (#114). A graduated head fires (tags images without a
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# human) when this master switch is on AND the head has at least
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