Files
minstrel/internal/db/queries/recommendation_metrics.sql
T
bvandeusen 1a7515e6ea
test-go / test (push) Successful in 33s
test-web / test (push) Successful in 41s
test-go / integration (push) Successful in 4m24s
feat(taste): phase 4 — recommendation observability (#796)
Per-source play outcomes so the operator can see whether each recommendation
surface is landing and tune the now-operator-tunable taste weights.

Server:
- query RecommendationSourceMetricsForUser: groups the user's play_events by
  source (system-playlist surface), reporting plays / skips / avg completion
  over a window; NULL-source (library/radio) plays excluded.
- GET /api/me/recommendation-metrics?days=30 (default 30, capped 365) →
  {window_days, sources:[{source, plays, skips, skip_rate, avg_completion}]}.
- handler test: 401 unauth; per-source aggregation + NULL-source exclusion +
  skip_rate / avg_completion math.

Web:
- lib/api/metrics.ts: query + friendly source labels.
- settings page gains a "Recommendation metrics" card (table of surface / plays
  / skip rate / avg completion), with loading/error/empty states.
- settings tests mock the new query (manual subscribe-store, hoisting-safe).

Note: You-might-like plays aren't source-tagged (it's a Home row, not a system
playlist), so this covers For-You / Discover / the mixes. Tagging YML plays
would be a client follow-up.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-12 00:28:30 -04:00

23 lines
1012 B
SQL

-- Recommendation observability (#796 phase 4). Per-source play outcomes so the
-- operator can see whether each recommendation surface is landing and tune the
-- taste weights. Source is stamped on play_events when a play is launched from
-- a system-playlist surface ('for_you' | 'discover' | the discovery mixes);
-- NULL for library / radio / user-playlist plays, which are excluded here.
-- name: RecommendationSourceMetricsForUser :many
-- $1 user_id, $2 window_days. plays/skips are counts; avg_completion is the
-- mean completion ratio over plays that recorded one (0 when none did).
SELECT
pe.source,
count(*)::bigint AS plays,
count(*) FILTER (WHERE pe.was_skipped)::bigint AS skips,
COALESCE(
avg(pe.completion_ratio) FILTER (WHERE pe.completion_ratio IS NOT NULL),
0)::float8 AS avg_completion
FROM play_events pe
WHERE pe.user_id = $1
AND pe.source IS NOT NULL
AND pe.started_at > now() - ($2::float8 * INTERVAL '1 day')
GROUP BY pe.source
ORDER BY plays DESC;