- Promote egreedy-v1 to active serving policy (ADR-0007): /score/egreedy + /reward/egreedy
replaces linucb-v1 endpoints after offline sim shows +10.7% mean reward (−0.548 vs −0.606)
- Replace explicit helpful/not_helpful feedback with dwell-time inferred reward (inferReward):
dismiss=−1.0, snooze=+0.1, done<15s=−0.3, done 15s–2min=+1.0, done 2–10min=+0.6, done>10min=+0.3
- Add ml/serving ε-greedy endpoints: /score/egreedy, /reward/egreedy, /stats/egreedy/{user_id}
with d=7 feature vector (base 5 + sin/cos day-of-week encoding)
- Add offline simulation framework (ml/experiments/sim): rule/LLM/claude-code judges,
two-phase score+reward, synthetic personas, task generator; results stored in sim_runs/sim_events
- Add /admin/simulations page: start runs, live-poll status, reward curve SVG, action/persona tables
- Fix egreedy day_of_week training skew: reward endpoint now uses actual dow instead of hardcoded 0
- Fix runner.py proxy bypass: httpx.Client(trust_env=False) for localhost ML calls
- Add dwellMs to TipFeedbackEvent contract and bus.test.ts fixture
- Schema: sim_runs, sim_events tables; tip_feedback gains dwell_ms, reward_milli columns
- ADR-0006: admin console framework; ADR-0007: egreedy-v1 policy selection rationale
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
30 lines
552 B
JSON
30 lines
552 B
JSON
{
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"$schema": "https://turbo.build/schema.json",
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"ui": "tui",
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"tasks": {
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"build": {
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"dependsOn": ["^build"],
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"inputs": ["$TURBO_DEFAULT$", ".env*"],
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"outputs": [".next/**", "!.next/cache/**", "dist/**"]
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},
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"dev": {
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"cache": false,
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"persistent": true
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},
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"type-check": {
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"dependsOn": ["^build"]
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},
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"lint": {},
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"test": {
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"dependsOn": ["^build"]
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},
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"test:e2e": {
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"dependsOn": ["build"],
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"cache": false
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},
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"clean": {
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"cache": false
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}
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}
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}
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