fix(migration): 0045 backfill filters to >= store floor (supersedes #764 prune)
The #764 in-place prune (rewrite tagger_predictions to >=0.70) is too slow on 100 GB of TOAST and fails at its soft limit (interrupts a query mid-flight -> 'another command is already in progress'). #768 supersedes it: extract only the >=floor predictions into image_prediction via this set-based backfill, then drop the column (step 3) — reading 100 GB once + writing ~840k small rows beats rewriting 100 GB in place. So this backfill no longer assumes the prune ran: it filters by ml_settings.tagger_store_floor (default 0.70) itself, handling the full or partially-pruned JSON identically. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
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@@ -51,6 +51,10 @@ def upgrade() -> None:
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# Backfill from the JSON blob. json_each expands {name: {category,
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# confidence}} into one row per prediction. category defaults to 'general'
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# to mirror the suggestion read path; rows with no confidence are skipped.
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# Filter to >= the store floor (ml_settings.tagger_store_floor, default
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# 0.70) right here so this is self-sufficient — it does NOT depend on the
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# #764 prune having run, and extracting only the >=floor tail keeps
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# image_prediction small (~tens of rows/image) even from the full JSON.
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op.execute(
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"""
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INSERT INTO image_prediction (image_record_id, raw_name, category, score)
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@@ -62,6 +66,11 @@ def upgrade() -> None:
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json_each(ir.tagger_predictions) je
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WHERE ir.tagger_predictions IS NOT NULL
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AND je.value ->> 'confidence' IS NOT NULL
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AND (je.value ->> 'confidence')::double precision
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>= COALESCE(
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(SELECT tagger_store_floor FROM ml_settings WHERE id = 1),
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0.70
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)
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ON CONFLICT (image_record_id, raw_name) DO NOTHING
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"""
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)
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